DNA Genetics Announces Agreement With Green Peak To Make The Most Of Michigan Adult-Use Cannabis Market – Benzinga

OG DNA Genetics recently disclosed a licensing agreement in conjunction with Green Peak Innovations, a medical cannabis producer and distributor in the Michigan market.

This arrangement will concede Green Peak Innovations consent to the DNA brand and access to their genetics portfolio for use at the companys cannabis cultivation and processing plant in Harvest Park, Michigan. Additionally to growing DNA genetics, Green Peak has entered the retail sector, with several locations around the state.

The recent permit of adult-use cannabis police in Michigan will enable Green Peak to supply recreational and medical users high-quality strains.

Want to hear exclusive updates on the adult-use licensing process? Check out the next meetup with MRA Executive Director, Andrew Brisbo on Dec. 18 at the Benzinga Headquarters! Get your tickets here before they sell out!

"By partnering with Green Peak Innovations, we position ourselves to expand into the rapidly developing Michigan cannabis market alongside a proven and trusted cannabis producer and distributor," said Charles Phillips, CEO of DNA Genetics.

Jeff Radway, CEO of Green Peak Innovations said, "We appreciate what DNA has accomplished for the cannabis industry and are excited to partner with them. We believe that by incorporating DNAs library of best-in-class cultivars and award-winning genetics into our facility, we can further enhance our ability to deliver the highest-quality products to Michigan and eventually the entire United States."

2019 Benzinga.com. Benzinga does not provide investment advice. All rights reserved.

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DNA Genetics Announces Agreement With Green Peak To Make The Most Of Michigan Adult-Use Cannabis Market - Benzinga

Were Living In The DNA Future, But Its Not The One We Were Promised – BuzzFeed News

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Genetics just got personal. So boasted the website of 23andMe in 2008, just after launching its DNA testing service.

As we entered this decade, a small cohort of companies 23andMe, its Silicon Valley neighbor Navigenics, and Icelandic competitor deCODE Genetics were selling a future of personalized medicine: Patients would hold the keys to longer and healthier lives by understanding the risks written into their DNA and working with their doctors to reduce them.

We all carry this information, and if we bring it together and democratize it, we could really change health care, 23andMe cofounder Anne Wojcicki told Time magazine when it dubbed the companys DNA test 2008s invention of the year, beating out Elon Musks Tesla Roadster.

But in reality, the 2010s would be when genetics got social. As the decade comes to a close, few of us have discussed our genes with our doctors, but millions of us have uploaded our DNA profiles to online databases to fill in the details of our family trees, explore our ethnic roots, and find people who share overlapping sequences of DNA.

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Its become like Facebook for genes, driven by the same fundamental human desire to connect. And, as with Mark Zuckerbergs social media behemoth, this is the decade we reckoned with what it really means to hand over some of our most personal data in the process.

A 23andMe saliva collection kit for DNA testing.

It all panned out differently from the way I imagined in 2009, when I paid $985 to deCODE and $399 to 23andMe to put my DNA into the service of science journalism. (I spared my then-employer, New Scientist magazine, the $2,500 charge for the boutique service offered by Navigenics.)

I was intrigued by the potential of DNA testing for personalized medicine, but from the beginning, I was also concerned about privacy. I imagined a future in which people could steal our medical secrets by testing the DNA we leave lying around on discarded tissues and coffee cups. In 2009, a colleague and I showed that all it took to hack my genome in this way was a credit card, a private email account, a mailing address, and DNA testing companies willing to do business without asking questions.

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Much of the rest of what I wrote about DNA testing back then reflected pushback from leading geneticists who argued that the companies visions of personalized medicine werent ready for primetime.

As I explored the reports offered by 23andMe and deCODE, I couldnt help but agree especially when deCODE wrongly concluded that I carry two copies of a variant of a gene that would give me a 40% lifetime chance of developing Alzheimers. (Luckily, it wasnt cause for panic. Id pored over my DNA in enough detail by then to know that I carry only one copy, giving me a still-elevated but much less scary lifetime risk of about 13%.)

Despite such glitches, it still seemed that medicine was where the payoffs of mainstream genetic testing were going to be. As costs to sequence the entire genome plummeted, I expected gene-testing firms to switch from using gene chips that scan hundreds of thousands of genetic markers to new sequencing technology that would allow them to record all 3 billion letters of our DNA.

So in 2012, eager to provide our readers with a preview of what was to come, New Scientist paid $999 for me to have my exome sequenced in a pilot project offered by 23andMe. This is the 1.5% of the genome that is read to make proteins and is where the variants that affect our health are most likely to lurk.

Experts at the Medical College of Wisconsin in Milwaukee analyzed my exome. While they werent at that point able to tell me much of medical significance that I didnt already know, the article I wrote from the experience in 2013 predicted a future in which doctors would routinely scour their patients genomes for potential health problems and prescribe drugs that have been specifically designed to correct the biochemical pathways concerned.

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Im glad I included an important caveat: This may take several decades.

By then, the revolution promised by 23andMe and its competitors was faltering. Navigenics and deCODE had both been acquired by bigger companies and stopped selling DNA tests directly to the public.

23andMe, backed by the deep pockets of Google and other Silicon Valley investors, had enough cash to continue. But it fell foul of the FDA, which had decided that the company was selling medical devices that needed official approval to be put on the market. In a 2013 warning letter, the FDA said that 23andMe had failed to provide adequate evidence that its tests produced accurate results. By the end of 2013, 23andMe had stopped offering assessments of health risks to new customers.

Since then, the company has slowly clawed its way back into the business of health. In 2015, it was given FDA approval to tell customers whether they were carriers for a number of inherited diseases; in 2017, it started providing new customers with assessments of health risks once more.

I recently updated my 23andMe account, getting tested on the latest version of its chip. My results included reports on my genetic risk of experiencing 13 medical conditions. Back in 2013, there were more than 100 such reports, plus assessments of my likely responses to a couple dozen drugs.

In the lab, discovery has continued at a pace, but relatively few findings have found their way into the clinic.

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If youve recently been pregnant, you were probably offered blood tests to tell whether your fetus had a serious genetic abnormality. And if youve been diagnosed with cancer, a biopsy may have been sequenced to look for mutations that make some drugs a good bet and other ones a bust. Neither would have been common a decade ago.

But the wider health care revolution envisaged by Wojcicki remains far off.

A few weeks ago, I saw my doctor to discuss my moderately high blood cholesterol and had a conversation that Id once predicted would be common by now. I had signed up for a project called MyGeneRank, which took my 23andMe data and calculated my genetic risk of experiencing coronary artery disease based on 57 genetic markers, identified in a 2015 study involving more than 180,000 people.

My genetic risk turns out to be fairly low. After I pulled out my phone and showed my doctor the app detailing my results, we decided to hold off on taking a statin for now, while I make an effort to improve my diet and exercise more. But it was clear from her reaction that patients dont usually show up wanting to talk about their DNA.

We have all these naysayers and an immense body of research that is not being used to help patients, said Eric Topol, director of the Scripps Research Translational Institute in La Jolla, California, which runs the MyGeneRank project.

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Joseph James DeAngelo, the suspected "Golden State Killer," appears in court for his arraignment in Sacramento, April 27, 2018.

23andMes collision with the FDA wound up being a turning point in ways I didnt anticipate at the time. From the start, the company included an assessment of customers ancestries as part of the package. But after the FDA cracked down, it pivoted to make ancestry and finding genetic relatives its main focus. Offering the test at just $99, 23andMe went on a marketing blitz to expand its customer base competing with a new rival.

Ancestry.com launched its genome-scanning service in May 2012 and has since gone head-to-head with 23andMe through dueling TV ads and Black Friday discount deals.

DNA tests became an affordable stocking filler, as millions of customers were sold a journey of self-discovery and human connection. We were introduced to new genetic relatives. And we were told that the results might make us want to trade in our lederhosen for a kilt or connect us to distant African ancestors.

Today, Ancestrys database contains some 15 million DNA profiles; 23andMes more than 10 million. Family Tree DNA and MyHeritage, the two other main players, have about 3.5 million DNA profiles between them. And for the most dedicated family history enthusiasts, there is GEDmatch, where customers can upload DNA profiles from any of the main testing companies and look for potential relatives. It contains about 1.2 million DNA profiles.

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So far, so much fun. But DNA testing can reveal uncomfortable truths, too. Families have been torn apart by the discovery that the man they call Dad is not the biological father of his children. Home DNA tests can also be used to show that a relative is a rapist or a killer.

That possibility burst into the public consciousness in April 2018, with the arrest of Joseph James DeAngelo, alleged to be the Golden State Killer responsible for at least 13 killings and more than 50 rapes in the 1970s and 1980s. DeAngelo was finally tracked down after DNA left at the scene of a 1980 double murder was matched to people in GEDmatch who were the killer's third or fourth cousins. Through months of painstaking work, investigators working with the genealogist Barbara Rae-Venter built family trees that converged on DeAngelo.

Genealogists had long realized that databases like GEDmatch could be used in this way, but had been wary of working with law enforcement fearing that DNA test customers would object to the idea of cops searching their DNA profiles and rummaging around in their family trees.

But the Golden State Killers crimes were so heinous that the anticipated backlash initially failed to materialize. Indeed, a May 2018 survey of more than 1,500 US adults found that 80% backed police using public genealogy databases to solve violent crimes.

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I was very surprised with the Golden State Killer case how positive the reaction was across the board, CeCe Moore, a genealogist known for her appearances on TV, told BuzzFeed News a couple of months after DeAngelos arrest.

The new science of forensic genetic genealogy quickly became a burgeoning business, as a company in Virginia called Parabon NanoLabs, which already had access to more than 100 crime scene samples through its efforts to produce facial reconstructions from DNA, teamed up with Moore to work cold cases through genealogy.

Before long, Parabon and Moore were identifying suspected killers and rapists at the rate of about one a week. Intrigued, my editor and I decided to see how easy it would be to identify 10 BuzzFeed employees from their DNA profiles, mimicking Parabons methods. In the end, I found four through matches to their relatives DNA profiles and another two thanks to their distinctive ancestry. It was clear that genetic genealogy was already a powerful investigative tool and would only get more so as DNA databases continued to grow.

A backlash did come, however, after two developments revealed by BuzzFeed News in 2019. In January, Family Tree DNA disclosed that it had allowed the FBI to search its database for partial matches to crime-scene samples since the previous fall without telling its customers. I feel they have violated my trust, Leah Larkin, a genetic genealogist based in Livermore, California, told BuzzFeed News at the time.

Then, in May, BuzzFeed News reported that police in Centerville, Utah, had convinced Curtis Rogers, a retired Florida businessperson who cofounded GEDmatch, to breach the sites own terms and conditions, which were supposed to restrict law enforcement use to investigations of homicides or sexual assaults. That allowed Parabon to use matches in the database to identify the perpetrator of a violent assault.

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Larkin and other genealogists condemned the move, calling it the start of a slippery slope that would see the method being used to investigate more trivial crimes.

As barbs flew between genealogists working with law enforcement and those who advocate for genetic privacy, GEDmatch responded with new terms of service that extended the definition of violent crime, but also required users to explicitly opt in for their DNA profiles to be included in law enforcement searches.

Overnight, GEDmatch became useless for criminal investigations. Since then, the number of users opting in for matching to crime-scene samples has slowly increased, and now stands at more than 200,000. But progress in cracking criminal cases has remained slow.

Now that cops have seen the power of forensic genetic genealogy, however, they dont want to let it go. In November, the New York Times revealed that a detective in Florida had obtained a warrant to search the entirety of GEDmatch, regardless of opt-ins. It seems only a matter of time before someone tries to serve a warrant to search the huge databases of 23andMe or Ancestry, which dont give cops access sparking legal battles that could go all the way to the Supreme Court.

Genetic privacy, barely mentioned as millions of us signed up to connect with family across the world and dig into our ancestral roots, is suddenly front and center.

This week, Rogers and the other cofounder of GEDmatch, John Olson, removed themselves from the heat when they sold GEDmatch to Verogen, a company in San Diego that makes equipment to sequence crime-scene DNA. Verogen CEO Brett Williams told BuzzFeed News that he sees a business opportunity in charging police for access to the database but promised to respect users privacy. Were not going to force people to opt in, he said.

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But it isnt just whether cops can run searches against your DNA. 23andMe may not share your information with law enforcement, but customers are asked when they signed up whether if they are OK with their de-identified DNA being used for genetic research.

It might not be obvious when you fill in the consent form, but this lies at the heart of 23andMes business model. The reason the company pushed so hard to expand its database of DNA profiles is to use this data in research to develop new drugs, either by itself or by striking deals with pharmaceutical companies.

Ancestry has also asked its users to consent to participate in research, teaming up with partners that have included Calico, a Google spinoff researching ways to extend human lifespan.

You might be comfortable with all of this. You might not. You should definitely think about it because when the information is your own DNA, there really is no such thing as de-identified data.

That DNA profile is inextricably tied to your identity. It might be stripped of your name and decoupled from the credit card you used to pay for the test. But as 23andMe warns in its privacy policy: In the event of a data breach it is possible that your data could be associated with your identity, which could be used against your interests.

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And because you share a large part of your genome with close relatives, when you put your DNA profile into a companys database, you arent only making a decision for yourself: Their privacy is on the line, too.

Whether its due to concerns about privacy, a saturated market, or just that the novelty has worn off, sales of DNA ancestry tests are slowing. Ancestry has responded by offering a new product focused on health risks. Unlike 23andMe, it requires that tests are ordered through PWNHealth, a national network of doctors and genetic counselors.

Will this be the development that takes us back to the future I once imagined? Maybe so, but if the roller coaster of the past decade has taught me anything, its to be wary about making any predictions about our genetic future.

Peter Aldhous is a Science Reporter for BuzzFeed News and is based in San Francisco.

Contact Peter Aldhous at peter.aldhous@buzzfeed.com.

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Penn Team Finds Genetic Variant Largely Found in Patients of African Descent that Increases Heart Failure Risk – Clinical OMICs News

A genetic variant found in about 3% of people of African ancestry is a more significant cause of heart failure than previously believed, according to a multi-institution study led by researchers at Penn Medicine. The researchers also found that this type of heart failure is underdiagnosed. According to their study, 44% of TTR V122Ivariant carriers older than age 50 had heart failure, but only 11% of these individuals had been diagnosed with hATTR-CM. The average time to diagnosis was three years, indicating both high rates of underdiagnoses and prolonged time to appropriate diagnosis

This study suggests that workup for amyloid cardiomyopathy and genetic testing of TTR should be considered, when appropriate, to identify patients at risk for the disease and intervene before they develop more severe symptoms or heart failure, said the studys lead author Scott Damrauer, M.D., an assistant professor of Surgery at Penn Medicine and a vascular surgeon at the Corporal Michael J. Crescenz VA Medical Center. (Penn Medicine consists of the Raymond and Ruth Perelman School of Medicine at the University of Pennsylvania and the University of Pennsylvania Health System.)

In this study, researchers from Penn Medicine and the Icahn School of Medicine at Mount Sinai used a genome-first approach, performing DNA sequencing of 9,694 individuals of African and Latino ancestry enrolled in either the Penn Medicine BioBank (PMBB) or the Icahn School of Medicine at Mount Sinai BioMe biobank (BioMe). Researchers identified TTR V122I carriers and then examined longitudinal electronic health record-linked genetic data to determine which of the carriers had evidence of heart failure.

The findings, which were published today in JAMA, are particularly important given the US Food and Drug Administrations (FDA) approval of the first therapy (tafamidis) for ATTR-CM in May 2019. Prior to tafamidiss approval, treatment was largely limited to supportive care for heart failure symptoms and, in rare cases, heart transplant.

Our findings suggest that hATTR-CM is a more common cause of heart failure than its perceived to be, and that physicians are not sufficiently considering the diagnosis in certain patients who present with heart failure, said the studys corresponding author Daniel J. Rader, M.D., chair of the Department of Genetics at Penn Medicine. With the recent advances in treatment, its critical to identify patients at risk for the disease and, when appropriate, perform the necessary testing to produce an earlier diagnosis and make the effective therapy available.

hATTR-CM, also known as cardiac amyloidosis, typically manifests in older patients and is caused by the buildup of abnormal deposits of a specific transthyretin protein known as amyloid in the walls of the heart. The heart walls become stiff, resulting in the inability of the left ventricle to properly relax and adequately pump blood out of the heart. However, this type of heart failurewhich presents similar to hypertensive heart disease is common, and the diagnosis of hATTR-CM is often not considered.

Tafamidis meglumine is a non-NSAID benzoxazole derivative that binds to TTR with high affinity and selectivity. TTR acts by transporting the retinol-binding protein-vitamin A complex. It is also a minor transporter of thyroxine in blood. Its tetrameric structure can become amyloidogenic by undergoing rate-limiting dissociation and monomer misfolding.

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The many ancestral genetic lines of India – Hyderus Cyf

The first study resulting from the GenomeAsia 100K project has revealed that Asia has at least ten distinct genetic ancestral lines, compared to the single genetic lineage found in northern Europe.

The results were found from the genomic sequencing of 598 individuals belonging to 55 ethnic groups from India. The project is set to expand to cover the genomes of 100,000 individuals across southeast Asia.

To put it into context, imagine we looked at all people of European descent and based on the level of their genetic diversity, observed that they could all be grouped into just one ancestral lineage or population, said Stephan C. Schuster, professor at Nanyang Technological University in Singapore.

Now, if we took that same approach with our new data from people of Asian descent, then based on the much higher levels of genetic diversity observed we would say that there are ten different ancestral groups or lineages in Asia.

India has long been underrepresented in global genetic databanks. India represents almost twenty percent of the worlds population and is on track to become the worlds most populous nation in the coming decades. Despite this, only 0.2 percent of fully mapped genomes in global databanks are of Indian origin.

In adding genetic diversity to the global databanks, the GenomeAsia project, therefore, is vital as it allows for the analysis of diseases and conditions linked to a genetic origin that is unique among the ethnic groups present in Asia.

Despite low coverage in global databanks, current information on Indian genetics has identified six genes that are unique among the Indian population. These genes all present unique risk factors in the development of diabetes. To an extent, this explains part of the increase in prevalence of diabetes within India, with the unique genetic risk factors combining with increasingly unhealthy lifestyles to rapidly increase the rates of diabetes.

We have a great opportunity to apply genomics in India to understand, manage and treat diseases. Genomic analysis of our unique population groups and disease cohorts will lead to identification of genetic mutations and drug targets not just for India but for the whole world, said Sam Santhosh, chief executive officer of genomics-driven research and diagnostics company MedGenome and one of the study authors.

This is a position also held by the Indian government, with increased investment into genome sequencing sourced from the Centre. The potential benefits to the healthcare system are both considerable and multifaceted. Knowledge of unique risks among Indias population can allow for considerable improvements to preventative healthcare, as well as drug targeting in order to make use of the most effective drugs for the individual.

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The Importance of Tubular Function in Chronic Kidney Disease | IJNRD – Dove Medical Press

Maria A Risso,1 Sofa Sallustio,1 Valentin Sueiro,1 Victoria Bertoni,1 Henry Gonzalez-Torres,2,3 Carlos G Musso1,2

1Human Physiology Department, Instituto Universitario del Hospital Italiano de Buenos Aires, Buenos Aires, Argentina; 2Facultad de Ciencias de la Salud, Universidad Simon Bolivar, Barranquilla, Colombia; 3Ciencias Biomdicas, Universidad del Valle, Cali, Colombia

Correspondence: Carlos G MussoHuman Physiology Department, Instituto Universitario del Hospital Italiano de Buenos Aires, Buenos Aires, ArgentinaEmail carlos.musso@hospitalitaliano.org.ar

Abstract: Glomerular filtration rate (GFR) and proteinuria-albuminuria are the renal functional parameters currently used to evaluate chronic kidney disease (CKD) severity. However, tubular secretion is another important renal functional parameter to be taken into accountsince proximal tubule (PT) secretion, in particular, is a crucial renal mechanism for endogenous organic cations, anions and drug elimination. The residual diuresis is a relevant survival predictor in patients on dialysis, since their urine is produced by the glomerular and tubular functions. It has been hypothesized that drugs which up-regulate some renal tubular transporters could contribute to uremic toxin excretion, and nephroprevention. However, if tubular transporters down-regulation observed in CKD patients and experimental models is a PT adaptation to avoid intracellular accumulation and damage from uremic toxins, consequently the increase of toxin removal by inducing tubular transporters up-regulation could be deleterious to the kidney. Therefore, a deeper understanding of this phenomenon is currently needed. In conclusion, tubular function has an important role for endogenous organic cations, anions and drug excretion in CKD patients, and a deeper understanding of its multiple mechanisms could provide new therapeutic alternatives in this population.

Keywords: tubular function, chronic kidney disease, drugs

This work is published and licensed by Dove Medical Press Limited. The full terms of this license are available at https://www.dovepress.com/terms.php and incorporate the Creative Commons Attribution - Non Commercial (unported, v3.0) License.By accessing the work you hereby accept the Terms. Non-commercial uses of the work are permitted without any further permission from Dove Medical Press Limited, provided the work is properly attributed. For permission for commercial use of this work, please see paragraphs 4.2 and 5 of our Terms.

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Sleep helps the brain consolidate information stored in long-term memory – News-Medical.net

A review of more than 130 studies explains how sleep helps people learn new information and plays an important role in storing learned content for future use. The review is published in the January 2020 issue of Physiology.

Forming memories consists of learning new information, consolidating it in areas of the brain for long-term storage and the ability to recall the learned content later. The reviewers looked at studies in humans and animals that suggested that sleep helps the brain consolidate information stored in long-term memory. Earlier findings were based on the concept that different stages of sleep strengthened different types of memory retention. While brain activity during certain sleep states, such as slow wave activity, may be more beneficial for storing specific types of memory, it is now clear that consolidation in sleep has many facets.

Examining electrical activity in the brain can define various stages of sleep and the patterns of sleep architecture (structural organization of sleep). Looking at research that explores these patterns helps scientists understand how the brain consolidates memories during sleep and while awake. Several studies in the review found that learning a task increases subsequent slow-wave activity and sleep spindles-;neural movements (oscillations) that are abundant during sleep-;in the brain. The increase in these activities has been associated with improved performance of the task after sleeping. Other studies showed that enhancing slow-wave activity and spindles during sleep boosted retention of certain types of memories.

More recent research also investigates processes of forming false memories and generalizing previously learned content. "Overall, the specific modulation of brain oscillations of sleep to impact memory consolidation is a relatively new area, but provides substantial potential in unraveling the role of neural oscillations in the process of memory consolidation," the review's authors wrote.

Scientific research continues to develop tools that link neural activity to sleep behavior, the authors explained. "Future research should utilize these tools to scrutinize present and newly evolving concepts of memory consolidation," they wrote.

Source:

Journal reference:

Marshall, L., et al. (2019) Brain Rhythms During Sleep and Memory Consolidation: Neurobiological Insights. Physiology. doi.org/10.1152/physiol.00004.2019.

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Sleep helps the brain consolidate information stored in long-term memory - News-Medical.net

Rising CO2 drives divergence in water use efficiency of evergreen and deciduous plants – Science Advances

Abstract

Intrinsic water use efficiency (iWUE), defined as the ratio of photosynthesis to stomatal conductance, is a key variable in plant physiology and ecology. Yet, how rising atmospheric CO2 concentration affects iWUE at broad species and ecosystem scales is poorly understood. In a field-based study of 244 woody angiosperm species across eight biomes over the past 25 years of increasing atmospheric CO2 (~45 ppm), we show that iWUE in evergreen species has increased more rapidly than in deciduous species. Specifically, the difference in iWUE gain between evergreen and deciduous taxa diverges along a mean annual temperature gradient from tropical to boreal forests and follows similar observed trends in leaf functional traits such as leaf mass per area. Synthesis of multiple lines of evidence supports our findings. This study provides timely insights into the impact of Anthropocene climate change on forest ecosystems and will aid the development of next-generation trait-based vegetation models.

Climate change will likely alter future carbon and hydrologic cycles (1). These cycles are closely tied to plant assimilation of atmospheric CO2 through photosynthesis by the regulation of CO2 and water vapor exchange via small pores on the leaf surface, called stomata. CO2 uptake is necessarily accompanied by water loss through stomata, and this carbon gain to water loss metric is generally referred to as water use efficiency (2). At the leaf level, variation in the photosynthesis (A)tostomatal conductance (gs) ratio over a leaf life span represents a time-integrative or averaged estimate of the intrinsic water use efficiency (iWUE), operating at a common evaporative demand (2). Thus, iWUE, a form of water use efficiency, is an important measure of the potential water cost of maintaining a given rate of carbon assimilation per unit leaf area.

A primary response of plants to increasing CO2 is to increase A and is often accompanied by reducing diffusive gs to minimize transpirational water loss (3). As a result, iWUE is generally known to increase with rising atmospheric CO2 (4). However, the magnitude and direction of iWUE responses to elevated CO2 at broad ecosystem and species ranges in natural ecosystems are poorly understood. Specifically, the decadal responses of two key plant functional groups, evergreen and deciduous, are not clear; this is important given that these functional groups occur across many taxonomic groups, and their relative proportions largely define global ecosystems and ecosystem functions and services (5, 6). It is hypothesized that evergreen plants are more sensitive in their iWUE response to elevated atmospheric CO2 than deciduous plants (7). However, to date, experimental CO2 enrichment studies, which were based on limited species and ecosystem type, are equivocal (7).

Here, we assessed the impact of human-driven increases in atmospheric CO2 [~45 parts per million (ppm)] over the past ~25 years on the iWUE of deciduous versus evergreen plants (244 species; table S1). We focus on iWUE responses of woody taxa from 20 field sites spanning eight biomes between two time periods: 19881991 and 20132015 (Fig. 1A and table S2). To compare the iWUE response of contemporary (20132015) to historical plants (19881991), we used a unique georeferenced herbarium collection of C3 woody flowering species, known as Climate-Leaf Analysis Multivariate Programme (CLAMP) (8), to represent historical samples. We compared these to contemporary leaves collected 25 years later by our team from the same species at the same sites (which we will refer to as species sites) and biomes (which we will refer to as species biomes). We inferred iWUE using leaf stable carbon isotopes (13C). To minimize variability in leaf 13C between historical and contemporary samplesdue to possible differences in phenology, seasonality, and field protocolswe operated the same field sampling protocol as CLAMP (8) and sampled during approximately the same collection season or month as the historical leaves.

(A) Major study areas. (B) Historical and contemporary iWUE at 355 and 400 ppm atmospheric CO2 concentration respectively arranged by increasing averaged iWUE values. Boxplots show median (center line), mean (red dot), interquartile range (IQR), 1.5 times of IQR (whiskers), and outliers (black dots). Numbers in brackets are the number of leaves. All iWUE gains are likely to be larger than zero.

A total of 2031 historical and contemporary leaves were analyzed for leaf 13C, leaf mass per area (LMA), carbon per mass (Cmass), and nitrogen per mass (Nmass). There is no likely difference in average total LMA and Nmass between the historical and contemporary samples [LMA = 0.4 g m2; 95% credible interval (CI95%), 1.4 to 0.6; Nmass = 0.06%; CI95%, 0.12 to 0.27] and the slopes of regression between the two time periods through the origin are close to 1 (LMA slope = 0.97; CI95%, 0.96 to 0.98; r2 = 0.92; Nmass slope = 0.97; CI95%, 0.94 to 1.00; r2 = 0.93) (fig. S1). Average evergreen LMA is likely higher than deciduous within each biome in both the historical and contemporary samples (table S3).

An unequivocal increase in average iWUE (iWUE) was observed in all eight biomes investigated, ranging from highest in the tropical seasonal moist forest [TSF(M)] (17.2 mol mol1; CI95%, 14.3 to 20.0) to lowest in the tropical rainforest (TF) (5.2 mol mol1; CI95%, 1.6 to 8.3) (Fig. 1B and table S4). Among the seven biomes with both evergreen and deciduous groups, evergreen species generally demonstrated a greater iWUE in response to ~45 ppm rise in CO2 than deciduous plants, within cooler biomes (Fig. 2A and table S5): this trend also prevailed when data were further grouped into growth habit (tree versus shrub) or high- and low-light habitat (understory subcanopy versus open canopy) (figs. S2 and S3 and tables S6 and S7). A substantial decrease in the ratio of leaf intercellular CO2 (ci) to ambient atmospheric CO2 (ca), ci/ca, in evergreens compared with deciduous taxa resulted in a higher calculated iWUE gain (fig. S4). Our results agree well with published studies that have reported either a decrease in ci/ca (9, 10) or a near constant ci/ca (11, 12) for tree species. Differences between average iWUE gain in evergreen and deciduous taxa (iWUEe-d) widened, however, with decreasing mean annual temperature (MAT) from the tropical toward the boreal biomes (slope = 0.395; CI95%, 0.770 to 0.004; r2 = 0.70; Fig. 2B).

Dotplots represent mean of posterior distributions (n = 6000 samples), CI95%. Red line is the fitted regression. (A) iWUE of deciduous and evergreen plants in biomes arranged by increasing MAT. (B) Differences between evergreen and deciduous iWUE (iWUEe-d) versus MAT, iWUEe-d = 11 0.4MAT, r2 = 0.70. (C) iWUEe-d versus average difference of evergreen and deciduous LMA (LMAe-d), iWUEe-d = 2.0 + 0.14 LMAe-d, r2 = 0.80. (D) Boxplots of deciduous and evergreen LMA across biomes for combined historical and contemporary samples arranged by increasing MAT. All P(LMAevergreen > LMAdeciduous) 0.95. (E) Comparison of the rate of iWUE gain per unit of CO2 concentration (iWUE/CO2) for total deciduous and evergreen samples [P(iWUE/CO2 evergreen > iWUE/CO2 deciduous) = 0.87]. (F) Scatter plot of LMA versus MAT of evergreen and deciduous plants for combined historical and contemporary samples, n = 2031 leaves.

In this study, atmospheric CO2 is likely a dominant factor for iWUE gain because of the likely difference in atmospheric CO2 concentration between the two time periods (Mauna Loa station; CI95%, 43.60 to 45.89 ppm). In contrast with this, other influential climatic variables, such as air temperature and vapor pressure deficit (VPD) showed only small changes with no likely difference statistically within biomes at CI95% (table S8). Furthermore, our result demonstrated that the small changes in MAT (MAT) and VPD (VPD) between historical and contemporary periods in this study were unlikely to affect iWUEe-d, as the differences in iWUE between evergreen and deciduous within the same biome were not highly influenced by MAT or VPD (fig. S5).

In relation to leaf functional traits, iWUEe-d also varied increasing tightly (r2 = 0.80) with the biome average difference between LMA in evergreen and in deciduous species (LMAe-d; slope = 0.14; CI95%, 0.05 to 0.23; Fig. 2, C and D). The total average iWUE value for each deciduous and evergreen group, with all biomes combined, was quantified by normalizing iWUE with VPD, temperature, precipitation, and altitude using models developed in this study (table S9). We found that average iWUE was higher in evergreen than in deciduous species [P(iWUEevergreen > iWUEdeciduous) = 1] with gains of ~39% (17.1 mol mol1; CI95%, 13.8 to 20.5) and ~15% (7.8 mol mol1; CI95%, 5.0 to 10.4), respectively. These correspond to an iWUE gain of 0.39 mol mol1 ppm1 (CI95%, 0.30 to 0.46) in evergreen and 0.18 mol mol1 ppm1 (CI95%, 0.12 to 0.25) in deciduous species [P(iWUE/CO2evergreen > iWUE/CO2deciduous) = 0.99] (Fig. 2E).

The divergence of evergreen and deciduous iWUE along a MAT gradient (1.4 to 26.7C) parallels those observed for LMA (Fig. 2F) and Nmass (fig. S6). The LMA divergence in functional groups from warmer to colder sites (27.5 to 16C) was observed in a previous study (13) and was associated with LMA increment with leaf life span; this divergent trend is related to the requirement of leaves with longer life spans to maximize carbon gain in shorter growing seasons, i.e., in colder biomes (14). Our results demonstrated how this well-studied trend (13, 14), in LMA divergence from warmer to colder biomes, also manifests in the differential response of evergreen and deciduous taxa to anthropogenic CO2 rise. The smaller differences in LMA between the leaf habit classes in the warmer biomes compared with the colder biomes contributed to the observed trend. High LMA generally occurs in woody evergreens because of their robust leaf structure, which can incur resistance to CO2 diffusion and, hence, lower mesophyll conductance (gm) (7, 15, 16). Therefore, evergreen leaves, in general, are likely to operate at lower gm values than deciduous leaves (16, 17).

Under elevated CO2, leaves with low gm may show a higher increase in A than high gm taxa, and their A is less sensitive to reduction in gsthis, in turn, leads to strong iWUE gain (iWUE = A/gs) (7). At a given gs, A of leaves with low gm (i.e., evergreens) is more limited by lower chloroplast CO2 concentration (cc) and, thus, responds more strongly to rising CO2. The reason for this is that the higher cc gets, the less CO2 affects photosynthesis because of the saturation of the A versus cc relationship (7). We did not measure gm, but we did observe greater average LMA and iWUE responses in evergreens than in deciduous species, suggesting increased CO2 diffusion limitations in the former. LMA and gm are inversely correlated, but the relationship is confounded by mesophyll cell wall thickness and chloroplast surface area that can vary across environmental gradients and species (15, 18). Therefore, in this study, high LMA was associated with greater iWUE response to a ~45-ppm rise in atmospheric CO2 concentration in evergreen compared with deciduous leaves (Fig. 2, C and E).

To validate our results from the two time periods, we used published tree ring 13C datasets (19702013) and leaf 13C datasets (19812005) (1921) containing continuous recent sampling points to track iWUE trends along a rising atmospheric CO2 gradient (iWUE/CO2). The meta-analysis of tree ring iWUE data showed higher average iWUE response in evergreen (0.29 mol mol1 ppm1; CI95%, 0.27 to 0.33) than deciduous (0.21 mol mol1 ppm1; CI95%, 0.18 to 0.24) trees (Fig. 3A, fig. S7, and table S10). Evergreen trees in the boreal-temperate region(s), which were all gymnosperms in the published datasets (seven species), showed a greater average rate of iWUE gain (0.33 mol mol1 ppm1; CI95%, 0.30 to 0.36) than their angiosperm and gymnosperm deciduous counterparts (four species) (0.14 mol mol1 ppm1; CI95%, 0.11 to 0.17), but in the tropics, this disparity was not observed (Fig. 3B). This result corroborated with published studies that showed the average gm of temperate evergreen gymnosperm was onefold lower than temperate deciduous angiosperms (15, 16). Furthermore, a tree ring study at 23 sites across Europe showed that evergreen gymnosperm trees (four species) increased their iWUE substantially more than deciduous angiosperm trees (two species) in the last c. 100 years at ~22 and ~14%, respectively (10). Our meta-analysis of published leaf 13C data from woody angiosperm species showed the same trend of higher collective iWUE increase (iWUEc/CO2) in evergreen (0.76 mol mol1 ppm1; CI95%, 0.62 to 0.91) than in deciduous (0.51 mol mol1 ppm1; CI95%, 0.32 to 0.70) leaves (Fig. 3C and fig. S8). These results confirm our original observations from the two time periods: There is an overall stronger iWUE gain in evergreen compared with deciduous species (Fig. 2, A and E) in response to rising atmospheric CO2.

Dotplots represent mean of posterior distributions (n = 6000 samples), CI95%. (A) iWUE/CO2 from published tree ring 13C data for the various time intervals between 1970 and 2013 for evergreen (n = 29 trees) and deciduous trees (n = 23 trees). (B) Result from (A) separated into bioclimatic zones showing higher average iWUE gain in evergreen (n = 24 trees) than in deciduous trees (14 trees) in the boreal-temperate zone, but the opposite in the tropical zone (deciduous n = 9 trees; evergreen n = 5 trees) [P(iWUE/CO2 deciduous > iWUE/CO2 evergreen) = 0.95]. (C) iWUEc/CO2 calculated from published leaf 13C data collected between 1981 and 2005 for deciduous (n = 470 species sites) and evergreen (n = 1053 species sites) species.

To further test this differential evergreen/deciduous response to ~45-ppm rise in CO2, we used data from a field infrared gas exchange analysis (IRGA) experiment conducted in situ on a subset of the same leaves used for this 13C study. Leaf A and gs responses to ~355- and ~400-ppm cuvette CO2 concentration were measured, referencing values for the historical and contemporary period, respectively. The responses measured with the gas analyzer were instantaneous responses to CO2 concentration rather than long-term responses (decadal) that are most likely influenced by acclimation. This experiment showed that average gain in leaf iWUE in evergreen leaves (0.22 mol mol1 ppm1; CI95%, 0.20 to 0.25) was likely higher than that in deciduous leaves (0.20 mol mol1 ppm1; CI95%, 0.17 to 0.23) [P(iWUE/CO2evergreen > iWUE/CO2deciduous) = 0.92] (Fig. 4A). Results from our in situ gas exchange study showed that an increase in A can largely contribute to an increase in iWUE under a ~45-ppm CO2 rise with higher average A gain in evergreen (22.4%; CI95%, 19.1 to 25.7) than in deciduous leaves (16.7%; CI95%, 13.4 to 20.1) (Fig. 4B). However, gs instantaneous responses showed no likely change in both groups (evergreen: 0.2%; CI95%, 2.3 to 1.8; deciduous: 1.0%; CI95%, 1.1 to 3.2) (Fig. 4C). Evergreen ci/ca showed a likely decrease, but no change was observed in deciduous leaves (evergreen: 0.015 Pa; CI95%, 0.019 to 0.010; deciduous: 0.001 Pa; CI95%, 0.003 to 0.006).

Dotplots represent means of posterior distributions (n = 6000 samples), CI95%. Evergreen n = 135 leaf samples (33 species); deciduous n = 119 leaf samples (31 species). (A) Dotplots of iWUE in evergreen and deciduous leaves. (B) Dotplots of A in evergreen and deciduous leaves. (C) Dotplots showing average gs in evergreen and deciduous are unlikely to be higher than zero at CI95%.

Currently, these experimental results (Fig. 4C) do not account for possible anatomical adaptions in stomatal density and/or size that could influence gs. Stomatal density in most plant species is well known to decrease with increasing atmospheric CO2 concentration that could lead to a general decrease in maximum stomatal conductance (22). Work is therefore ongoing to assess anatomical adaptations at the species and functional group level to test these conclusions further. Results from the in situ IRGA measurements, which estimate the instantaneous responses to CO2, lend support to the long-term observations from our extensive biome-level field-based 13C study and suggest that the magnitude of iWUE change observed here is due to a substantial increase in A coupled with little or no change in gs. Together, these results suggest that notable adjustment of photosynthetic biochemistry has occurred in woody vegetation with ~45-ppm CO2 rise.

Our biome-wide field study of iWUE responses to a mere 45-ppm CO2 rise between 1988 and 2015 suggests greater average iWUE gain in evergreen than in deciduous species, particularly in the cooler climate biomes. The diverging trend in iWUE gain highlights a strong link between LMA, MAT, and plant-CO2 responses in woody evergreen and deciduous taxa: This is strongly associated with the more distinct differences in LMA and leaf phenological traits observed between evergreen and deciduous taxa in colder biomes than in warmer biomes. This knowledge has the potential to enhance development of new-generation trait-based vegetation models, of which temperature, photosynthetic water use, and LMA are important components. That the differential response of evergreen and deciduous leaf habits in natural ecosystems has been given little attention to date is unexpected given that such a profound physiological response occurring at a continental scale could incur a substantial shift in natural forest and woodland ecology (e.g., forest fraction of evergreeness and deciduousness) and alter seasonal energy, water, and carbon balance and dynamics. Our results indicate that future increases in atmospheric CO2 may confer a competitive advantage to woody angiosperm evergreens over their deciduous neighbors to a greater extent in cooler biomes than in warmer biomes. Therefore, understanding of the differential physiological response induced by climate change in evergreen and deciduous taxa will improve our ability to build more mechanistic and predictive models on vegetation response to future climate change. While our field study covered a substantial number of woody angiosperm species, and was supported by published tree ring 13C data that included gymnosperm species (seven evergreen and two deciduous species), future research may benefit by including more gymnosperm species to confirm the differential response of leaf habits within this group to rising atmospheric CO2, particularly in the conifer-dominated boreal biome. Further profound increases in atmospheric CO2 are projected by the year 2050 under all representative concentration pathway (RCP) scenarios [RCP 2.5 = 443 ppm; RCP 4.5 = 487 ppm; RCP 6.0 = 478 ppm; RCP 8.5 = 541 ppm (23, 24)]. In this context, higher iWUE under elevated CO2 atmospheres may have contributed to evergreen expansion in past greenhouse intervals such as the Eocene (ca. 55 million years ago), particularly in seasonally dry areas of the mid latitudes (25), rather than to elevated temperatures alone, which is the current paradigm (26).

Historical herbarium samples from the CLAMP collected using the same protocol and person (Wolfe) (8) in 19881991 were recollected in 20132015 by our team (W.K.S., M.M., and J.C.M.). This yielded contemporary leaf samples of the same species from the same sites/biomes. The same standard collection protocol was used for both historical and contemporary samples. This approach was used to minimize variability of leaf 13C. To our knowledge, CLAMP, a unique georeferenced global inventory of C3 woody angiosperm leaf physiognomic data (8, 27), is the only herbarium archive that was collected by the same person (Wolfe) using the same protocol over several biomes with each including many species (average, 25 species per site). In this study, field sites in each biome were selected from the CLAMP archive. Of the original 173 sites sampled by Wolfe (8), we selected 20 to represent eight of Whittakers vegetation biomes (28): boreal forest (BF), temperate rainforest, temperate deciduous forest (TDF), Mediterranean (MED), subtropical desert, tropical seasonal dry forest [TSF(D)], TSF(M), and TF (table S2). We restricted selection to sites below 700 m above sea level to limit the influence of lower CO2 partial pressure and atmospheric pressure on leaf traits and carbon isotope composition (13C) at higher altitudes. Site selection was based on individual site accessibility within the planned data gathering schedule and acquisition of the required scientific collection permits. Where possible, we selected three sampling sites in each biome, except in the TF of Fiji (two sites) and TSF(D) in Puerto Rico (one site). As a result of using CLAMP herbarium samples, sites in the boreal and temperate biomes are restricted to Northern America, with tropical biomes in Puerto Rico [TSF(D) and TSF(M)] and Fiji (TF). Although all the tropical biome sites are situated on islands, the plants species sampled here are from areas that experience tropical climate. We are confident that our tropical sites are representative tropical biomes as there is no evidence to suggest that the physiology of tropical island vegetation differs from that on a tropical mainland, especially at the leaf level. For instance, one of the best studied tropical forests in the world is Barro Colorado Island in Panama. Only evergreen plants were sampled in Fiji, and therefore, this biome was not used to quantify iWUEe-d. To obtain a representative sample of C3 woody angiosperm species within the BF, which is usually dominated by conifers, our sampling was conducted within the interior BF zone of Alaska, which has extensive areas of open and closed deciduous forests (29). Regarding our BF sites, deciduous trees make up virtually all of the native angiosperm tree population, while the gymnosperms are mostly evergreen trees. Since we are making a direct comparison of the historical CLAMP samples with contemporary samples of exactly the same species from the same locations, we were prohibited from including gymnosperms. As a result, our fieldwork study on BF only covered angiosperms of three leaf habit and growth habit groups without evergreen trees. These included deciduous trees, deciduous shrubs, and evergreen shrubs.

Contemporary leaf samples were collected in the field between 2013 and 2015 from the same species as those in the historical CLAMP herbarium collected between 1988 and 1991 from the same sites or biomes. All fieldwork was carried out in the growing season (table S2), corresponding as closely as possible to the collection month of historical samples. Tree and shrub growth habits were sampled in all biomes and were largely represented in both evergreen and deciduous plant groups. Our sampling focused on outer-canopy leaves, meaning sun leaves for plants growing in relatively open environments, and leaves exposed to sun flecks when sampling naturally shade-dwelling species. We sampled fully expanded leaves, the developmental stage at which many leaf traits are relatively stable. In one aspect of the statistical analyses in this study (see section on Statistical analysis), we divided our dataset into two broadly defined habitat groups based on our field observations to reflect high- and low-light habitat: open canopy and understory subcanopy. For this study, open canopy refers to plants that are located either in open areas or at the forest canopy edge and receiving direct sunlight. By contrast, understory subcanopy refers to plants occurring within the forest canopy, in shade but receiving sun flecks. In all biomes, we sampled both the open-canopy and understory-subcanopy habitats for evergreen and deciduous plants, except for the BF and TDF biomes, there were no evergreen plant samples in the open-canopy habitat, and in the subtropical desert biome, all habitats were classified as open canopy. In the historical CLAMP samples, sun-exposed twigs were collected that may be directly exposed to the sun or sun fleck subjected to a species natural habitat. On each herbarium specimen, we had carefully selected leaves that were fully expanded (i.e., visually mature) and thick to increase the chance of including mature sun-exposed leaves.

To minimize the potentially confounding influence of height on leaf 13C and LMA, leaves from tall trees were collected at basal-exterior canopy level within arms reach, up to 3 m in line with CLAMP historical collection methods. This protocol standardized collection height with historical samples. Before collection, the leaves gathered for trait analysis were also used for physiological measurements (see section on In situ field IRGA experiments). Our sampling protocol is in accordance with the collection methods used by Wolfe (8) following the CLAMP protocol. That is, our protocol standardizes historical and contemporary sampling methods, with the aim of reducing trait variability caused by sampling method and relevant biotic and abiotic factors that may have differed between contemporary and historical sampling periods.

Only broadleaf woody C3 angiosperm species were sampled for this study (gymnosperms, grasses, and crops were not included). A total of 1550 contemporary leaf samples, each from individual plants, were collected in the contemporary fieldwork. A total of 481 historical leaf samples were subsampled from the CLAMP herbarium collection. The entire dataset used in this study comprises 244 matching historical and contemporary woody angiosperm species from 64 families (table S1). All specimens were identified to species level. Taxonomic nomenclature was updated using the online Taxonomic Name Resolution Service v 4.0.

Mean monthly precipitation, mean monthly air temperature, maximum monthly air temperature, and vapor pressure over time periods (19881991 and 20132015) for each study site were obtained from 0.5 0.5 resolution Climate Research Unit data (CRU TS v.4.0) (30) gridded dataset via The Royal Netherlands Meteorological Institute (KNMI) Climate Explorer. Monthly saturated vapor pressure was calculated from maximum monthly air temperature. These were then subtracted with monthly vapor pressure to obtain monthly VPD (31) and used to infer leaf-to-air VPD. MAT and mean annual precipitation (MAP) were calculated from the monthly data.

Leaf samples were oven dried at 50 to 60C for 2 days. One half of each dried leaf blade was used for LMA analysis and the other half for 13C, carbon (C), and nitrogen (N) elemental analyses. To standardize LMA data collection from both historical and contemporary leaves, all leaves were rehydrated. Leaf area shrinkage from drying can be reversed by rehydration (32). LMA was determined by dividing the dry leaf mass by the rehydrated leaf area. For the 13C, N, and C elemental analyses, dried leaf fragments were placed with a tungsten bead in Eppendorf tubes and finely ground in a mixer mill (Tissue Lyser, Qiagen Inc., Valencia, CA, USA). Each sample (~3 mg) was then enclosed in a tin capsule using a crimper plate. Samples were analyzed for 13C, C, and N using a PDZ Europa ANCA-GSL elemental analyzer interfaced with a PDZ Europa 20-20 isotope ratio mass spectrometer (Sercon Ltd., Cheshire, UK) at UC Davis Stable Isotope Facility, University of California, Davis, USA. Instrumental error was 0.18 (per mil) for 13C (SD). Carbon isotope composition was calculated as13C()=(RsampleRstandard)/Rstandard1000(Eq. 1)where Rsample and Rstandard are the 13C/12C ratio of the sample and the international standards Vienna Pee Dee Belemnite, respectively. Carbon isotopic discrimination (plant) is given asplant=(13Cair13Cplant)/1+(13Cplant/1000)(Eq. 2)

In relation to the intercellular CO2 (ci) and ambient CO2 (ca) partial pressures, plant in C3 leaves is given as follows (33)plant=a+(ba)(ci/ca)(Eq. 3)where a is the fractionation due to diffusion in air (4.4) and b is the net fractionation caused by carboxylation (27). Equation 3 is widely used and assumes that the effects of boundary layer, internal conductance, photorespiration, day respiration, and allocation are negligible. Atmospheric CO2 concentration (ca) and 13Cair information were taken from a published instrumental dataset (19802015) from the Mauna Loa station (3436) corresponding to the historical and contemporary collection months (table S2). The full equation of plant includes several elements such as photorespiration, day respiration, and the CO2 mole fractions in the ambient air, at the leaf surface, in the intercellular air spaces, and at the chloroplast (cc) (37, 38). Photorespiration and cc are known to influence plant (38), and therefore, it is desirable to include these traits. However, we did not measure photorespiration and gm; the latter is required for estimating cc. In this study, we were interested in quantifying the differences between evergreen and deciduous iWUE (iWUEe-d) rather than their absolute values. On the basis of this reasoning, the use of the simplified linear model of Farquhar et al. (33) (Eq. 3) as an approximation to plant is appropriate for the purpose of this study.

iWUE can be expressed as the ratio of photosynthesis (A) and leaf conductance to water vapor transfer (g) in Eq. 4 below (33) using ci/ca calculated from Eq. 3 and caiWUE=A/g=ca(1ci/ca)/1.6=ca(1(a)/(ba))/1.6(Eq. 4)

iWUE inferred from 13C is an average estimate of iWUE over a leaf life span, i.e., time integrated.

All statistical analysis was undertaken using JAGS 4.1.0. (39) and R statistical software (40). Bayesian models using JAGS, through the R package rjags (41) interface, were used: Inference of each parameter was made from Markov Chain Monte Carlo (MCMC) sampling from 6000 samples of the posterior distribution from three chains, each with 10,000 iterations with a burn-in of 2000 and a thin rate of 4 (42). Normal distribution priors with mean zero and variance 100 were used for intercept and slope parameters, while a uniform (0, 10) prior was used for the SD on the variance terms. Convergence was checked by visual assessment of MCMC chains and using the Gelman-Rubin statistic (42). Mean of trait or group was calculated from posterior distributions. CI95%s of parameter estimates were calculated as the 2.5 and 97.5% quantile of posterior distributions. The 50% credible interval (CI50%) of parameter estimates were calculated as 25 and 75% quantile of posterior distributions. The CI95% represents the interval that captures 95% of the posterior distribution, e.g., when the CI95% for a statistics score is between a and b, this means that we have a 95% chance of having a score between a and b (note that credible interval is different from confidence interval). A CI50% statistics score between a and b implies a 50% chance of having a score between these two values. Therefore, the extent of CI overlapping with zero determines how likely a value is close to zero. Statistical comparisons between groups were made by examining value of CI95% and/or by probability of group differences bigger than or smaller than zero, e.g., P(x > y) = z denotes that the probability of variable x being bigger than variable y, given the data, is z.

To evaluate the robustness of our sampling method in minimizing the variability between the historical and contemporary samples, we first statistically test the difference in the mean of LMA and Nmass in the two time points. Second, we plotted historical and contemporary samples through the origin each for LMA and Nmass. A regression slope that is close to 1 would indicate a general level of uniformity between the historical and contemporary samples. LMA and Nmass are well known to vary with plant height, sun and shade leaf morphotypes, and age (43, 44).

We aggregate across biomes the iWUE at each time point (historical versus contemporary) to calculate the total gain in iWUE (iWUE) for the deciduous and evergreen species groups, using statistical models incorporating environmental variables (environment-normalized model) (Fig. 2E). However, samples from the TF biome (Fiji) were excluded because of the absence of deciduous plant samples. The environment-normalized model standardizes the aggregated iWUE values when calculating the total gain in iWUE: Leaf 13C or its derived variables (e.g., iWUE and ci/ca) are widely known to be confounded by latitude (20), altitude (19, 20), and site climatic variables such as VPD (45), temperature (1921, 45), and precipitation (1921). Using our own dataset, we examined the relationship between iWUE and environmental variables such as altitude, latitude, and bioclimatic variables (precipitation, temperature, and VPD). Our aim was to generate an equation that could be used to normalize iWUE values against environmental variables when aggregating data across biomes (see Fig. 2E).

For evergreen species, we averaged site monthly precipitation, temperature, VPD, and atmospheric CO2 concentration by 12 months up to and including the collection month to match the average period of photosynthetic opportunities. One meta-analysis study showed that mean annual climate parameters were more likely to match evergreen photosynthetic windows for carbon isotope discrimination of C3 plants (21). Although photosynthesis of evergreens is reduced during winter time with small winter carbon gain (46, 47), this may still influence the average carbon isotope discrimination in a leaf life span. The leaf life span of evergreen angiosperms in the boreal-temperate and tropical biomes each showed a skewed distribution with central tendencies (median) of approximately 18 and 15 months (48), respectively (fig. S9). Therefore, our approach of averaging site climatic data by a period of 12 months up to and including the collection month was a reasonable approximation of evergreen leaf life span collected at the time. This approximation took into consideration the fact that we sampled only fully expanded leaves that were neither young nor too old (i.e., visibly unhealthy). For deciduous species, we averaged these climate variables from the start of growing months up to and including the collection month.

The correlation matrix between iWUE and the foregoing environmental variables are presented in table S11. VPD shows the strongest correlation with iWUE (r2 = 0.26) followed by precipitation (r2 = 0.24), altitude (r2 = 0.20), and absolute latitude (r2 = 0.10). Temperature shows the weakest correlation with iWUE (r2 = 0.05) but is instead strongly correlated with absolute latitude (r2 = 0.93), precipitation (r2 = 0.65), and VPD (r2 = 0.53), and weakly correlated with altitude (r2 = 0.10). Therefore, temperature was not included in our model because of the extreme collinearity between covariates, which could lead to high correlation in some of the posterior parameter estimates. Last, our statistical model consists of iWUE as the dependent variable, while time (factor), altitude, averaged site VPD, and precipitation are the independent variables (Model 1). Latitude was excluded from the model because its coefficient was subsequently shown to likely contain zero at CI95% when included in the regression. To calculate the rate of iWUE change in relation to atmospheric CO2 concentration, the same model was used with time factor replaced by CO2 concentration (Model 2). In the following models, each i represents one leaf. See table S9 for coefficient values.iWUEi=j(i)+j(i)Timei+1VPDi+2PREPi+3ALTi+i(Model 1)where iWUEi is the iWUE of individual i; Timei is the categorical time variable (historic and contemporary) corresponding to individual i; VPDi is the VPD corresponding to individual i; PREPi is the precipitation corresponding to individual i; ALTi is the altitude corresponding to individual i; j(i) is the intercept of the iWUE-time relationship in categorical leaf habit j (deciduous and evergreen); j(i) is the slope of the iWUE-time relationship in categorical leaf habit j (deciduous and evergreen), this is iWUE; 1 is the slope of the iWUE-VPD relationship; 2 is the slope of the iWUE-PREP relationship; 3 is the slope of the iWUE-ALT relationship; and i is the residual of individual i.iWUEi=j(i)+j(i)(CO2)i+1VPDi+2PREPi+3ALTi+i(Model 2)where, iWUEi is the iWUE of individual i; (CO2)i is the atmospheric carbon dioxide concentration corresponding to individual i; VPDi is the atmospheric VPD corresponding to individual i; PREPi is the precipitation corresponding to individual i; ALTi is the altitude corresponding to individual i; j(i) is the intercept of the iWUE-CO2 relationship in categorical leaf habit j (deciduous and evergreen); j(i) is the slope of the iWUE-CO2 relationship in categorical leaf habit j (deciduous and evergreen), this is iWUE/CO2; 1 is the slope of the iWUE-VPD relationship; 2 is the slope of the iWUE-PREP relationship; 3 is the slope of the iWUE-ALT relationship; and i is the residual of individual i.

For j(i), the slope of the iWUE-CO2 relationship, the actual full unit of WUEi/CO2 is mol CO2 mol1 H2O/mol CO2 mol1 air: For simplicity and readability, we prefer to use mol mol1 ppm1. We further investigate iWUE in evergreen and deciduous plants in each biome by dividing the dataset into growth habit (shrub versus tree) or habitat (understory-subcanopy versus open-canopy) categories. In each category, the probability of evergreen iWUE higher than deciduous iWUE was calculated.

Photosynthesis and photosynthetic water use were measured on 254 leaf samples from 64 of our 13C study species. Measurements were made with a CIRAS-2 gas analyzer (PP Systems, Amesbury, MA, USA) attached to a PLC6 (U) cuvette fitted with a 1.7-cm2 measurement window and a red/white-light light-emitting diode unit. Measurements were carried out between June and August 2014 at two BF sites (16 species, Bird Creek and Kenai, Alaska, USA), one TDF site (11 species, Smithsonian Environmental Research Center, Maryland, USA), two TSF(M) sites (15 species, Cambalache and Guajataca, Puerto Rico), and one TSF(D) site (9 species, Borinquen, Puerto Rico), all from a subset of the contemporary samples. Photosynthesis (A) and stomatal conductance (gs) were assessed on an average of four individual plants per species between 9:00 am and 13:00 pm. A sun-exposed branch was sampled from each plant using a pruner and was immediately recut under water (49). Following this, a fully expanded leaf from each branch was enclosed in the cuvette of the gas analyzer, which was running at a subambient 19881991 averaged reference CO2 concentration of 355 ppm. Stomatal conductance at subambient CO2 concentration was recorded upon stabilization of its value, which typically took less than 15 min. Subsequently, reference CO2 was established at 400 ppm (year 2016 values), and the leaf was left to equilibrate for at least 15 min before gs at contemporary ambient atmospheric CO2 was recorded. Randomization of the sequence of the two treatments was ensured; overall, about 65% of the measurements started at 400 ppm and were reduced to 355 ppm, while the rest of measurements (35%) started at 355 ppm and were increased to 400 ppm. On several occasions, the reversibility of the CO2 effects on A and gs was tested. This was done by measuring gs at a starting CO2 concentration of 400 ppm, after which CO2 was reduced to 355 ppm for several minutes before it was returned to the initial concentration of 400 ppm. The final A and gs values at 400 ppm were the same as those initially recorded.

iWUE data calculated from tree ring 13C were used to quantify the iWUE-CO2 response of individual deciduous and evergreen trees along a decadal time series of various time intervals between 1970 and 2013. Data were compiled from 17 published studies (5066) consisting of 52 trees from 22 species, of which 23 trees were deciduous (12 species) and 29 evergreen (10 species). Atmospheric CO2 concentration data were acquired from the Mauna Loa station data (3436). Annual 13Cair information was obtained from published ice-core data. iWUE values were calculated from 13C by using Eq. 3. For each study site, we obtained mean monthly precipitation, mean monthly air temperature, maximum monthly air temperature, and vapor pressure from 0.5 0.5 resolution CRU TS v.4.0 (30) gridded dataset for the period of 13C for each individual tree. VPD values were calculated as per the method described in the section Climate data. Regression slopes (iWUE/CO2) for individual trees were determined by fitting a simple linear model (using the Bayesian linear regression approach, see section on Statistical analysis) with iWUE as the dependent variable, and atmospheric CO2 concentration, VPD, and MAP as the independent variables. In the following model, each i represents a value from a growth ring as determined in a study, from a tree, jiWUEi=j(i)+j(i)(CO2)i+1VPDi+2PREPi+3ALTi+i(Model 3)where, iWUEi is the iWUE of individual i; (CO2)i is the atmospheric carbon dioxide concentration corresponding to individual i; VPDi is the atmospheric VPD corresponding to individual i; MAPi is the MAP corresponding to individual i; j(i) is the intercept of the iWUE-CO2 relationship in categorical individual tree j; j(i) is the slope of the iWUE-CO2 relationship in categorical individual tree j; 1 is the slope of the iWUE-VPD relationship; 2 is the slope of the iWUE-PREP relationship; and i is the residual of individual i.

By including VPD and MAP in the regression, we normalized the response slope of each tree with climatic variables, VPD and MAP. MAT is excluded from the model because of the strong collinearity with VPD (r2 = 0.72). The values for 1 and 2 are 5.47 (CI95%, 4.01 to 6.97) and 0.08 (CI95%, 0.09 to 0.06), respectively. On a centennial scale, a long-term iWUE fluctuation along the atmospheric CO2 gradient generally follows an exponential increase. However, we can reasonably approximate the iWUE trend with a linear model at a shorter decadal time scale. This shorter decadal time scale varies between 10 and 40 years from 1970 to 2013 depending on studies. Last, iWUE/CO2 values from posterior distributions of trees (6000 samples for each tree) were aggregated into deciduous and evergreen plant groups by averaging iWUE/CO2 values from posterior distributions. This approach therefore takes account of the uncertainty of iWUE/CO2 values of each tree. Further, we also aggregated deciduous and evergreen plant groups for two climatic zones: boreal-temperate and tropical.

Published (1921) and unpublished angiosperm leaf 13C data collected between 1981 and 2005 were used for meta-analysis. Year of data collection was added to the collated dataset based on original publications. Any data source without collection dates was assumed to be 2 years before the date of paper submission (~5% of datasets). Atmospheric CO2 concentration and 13Cair information corresponding to collection year were obtained from a published instrumental dataset (19802015) at the Mauna Loa station (3436). For 13C values without environmental data, we obtained MAT and MAP data from 0.5 0.5 resolution CRU TS v. 4.0 (30) gridded dataset. The final dataset includes 1523 species site points from 76 studies of 1000 species across eight biomes. To quantify the response of deciduous and evergreen leaves to elevated CO2, we used a linear model with iWUE as the dependent variable and atmospheric CO2 with interaction between deciduous and evergreen groups. The iWUE trend along rising atmospheric CO2 gradient across collective leaf samples from different studies in various localities may be influenced by environmental conditions of the location. To investigate the likely influential environment factor that may have contributed to the observed iWUE trend, we quantified the amount of variation contributed by atmospheric CO2 concentration, MAT, MAP, altitude, and latitude across time. We first regressed collection year against all the foregoing environmental variables and then used R package relaimpo (67) to quantify the amount of variation contributed by each environmental factor. The proportion of variance explained by the model was 99.3%, of which 98% was contributed by CO2 followed by MAT at ~1%. Therefore, we can be confident that CO2 was influential in driving iWUE trends across collection time compared with other environmental variables. We designated the iWUE gain across collective leaf samples of different species and environmental conditions/locations as iWUEc to differentiate it from iWUE. The latter is derived from iWUE gain of the same species composition and locality.

Supplementary material for this article is available at http://advances.sciencemag.org/cgi/content/full/5/12/eaax7906/DC1

Fig. S1. Historical and contemporary leaf functional trait plots through the origin.

Fig. S2. iWUE gain (iWUE) of deciduous and evergreen plants in biomes for growth habit, arranged by increasing MAT.

Fig. S3. iWUE gain (iWUE) of deciduous and evergreen plants in biomes for habitat group, arranged by increasing MAT.

Fig. S4. The changes in the ratio of leaf intercellular (ci) to ambient CO2 (ca), ci/ca, in evergreens and deciduous species in biomes, arranged by increasing MAT.

Fig. S5. iWUE change (iWUE) of deciduous and evergreen plants versus MAT change (MAT) and VPD change (VPD) in biome growth habit and habitat group.

Fig. S6. Scatter plot of Nmass versus MAT for combined historical and contemporary samples of evergreen and deciduous plants.

Fig. S7. Trend of iWUE from tree ring data along increasing atmospheric CO2 concentration between the years 1970 and 2013.

Fig. S8. Evergreen and deciduous iWUE plotted against atmospheric CO2 concentration showing slope of response.

Fig. S9. Kernel density plots of leaf life span (month) of deciduous and evergreen plants in the boreal-temperate and tropical biomes.

Table S1. List of species studied, their leaf habit (evergreen, deciduous), habitat (understory subcanopy and open canopy), and growth habit (shrub and tree).

Table S2. Summary of historical and contemporary site location, vegetation type, and collection date in alphabetical order by biome and site name.

Table S3. Historical and contemporary samples showing average LMA in evergreen and deciduous group within biome and probability of evergreen LMA larger than deciduous LMA, P* = P(LMAevergreen > LMAdeciduous).

Table S4. Average iWUE change (iWUE) in biome between two time points 19881991 and 20132015 with CI95% from posterior distributions in Bayesian analysis.

Table S5. Average iWUE gain (iWUE) in evergreen and deciduous plants within biome with CI95% from posterior distributions in Bayesian analysis.

Table S6. Shrub and tree, average iWUE gain (iWUE) in evergreen and deciduous plants within biome, with CI95% from posterior distributions in Bayesian analysis.

Table S7. Understory-subcanopy and open-canopy habitat, average iWUE gain (iWUE) in evergreen and deciduous plants within biome, with CI95% from posterior distributions in Bayesian analysis.

Table S8. Average annual air temperature change and average annual VPD change of biomes between two time periods 19881991 and 20132015 with CI95% from posterior distributions in Bayesian analysis.

Table S9. Average of coefficients of Model 1 and Model 2 with CI95% from posterior distributions in Bayesian analysis.

Table S10. Slope of iWUE response to atmospheric CO2 concentration (iWUE/CO2) for individual trees arranged by leaf habit, species, and references.

Table S11. Pearson correlation matrix (lower half panel in gray) and significance (upper half panel) between iWUE, VPD, precipitation, temperature, altitude, and latitude.

This is an open-access article distributed under the terms of the Creative Commons Attribution-NonCommercial license, which permits use, distribution, and reproduction in any medium, so long as the resultant use is not for commercial advantage and provided the original work is properly cited.

H. G. Jones, in Water Use in Plant Biology, M. A. Bacon, Ed. (CRC Press, 2004), pp. 2741.

I. R. Cowan, G. D. Farquhar, in Integration of Activity in the Higher Plant, D. H. Jennings, Ed. (Society for Experimental Biology, 1977), pp. 471505.

Intergovernmental Panel on Climate Change, Climate Change 2014: Synthesis Report. Contribution of Working Groups I, II and III to the Fifth Assesement Report of the Intergovernmental Panel on Climate Change, Core Writing Team, R. K. Pachauri, L. A. Meyer, Eds. (Intergovernmental Panel on Climate Change, 2014).

R. H. Whittaker, Communities and Ecosystems (MacMillan, New York, ed. 2, 1975).

L. A. Viereck, C. T. Dyrness, A. R. Batten, K. J. Wenzlick, The Alaska Vegetation Classification (U.S. Department of Agriculture, Forest Service, Pacific Northwest Research Station, 1992).

R. G. Allen, L. S. Pereira, D. Raes, M. Smith, in Crop evapotranspiration: Guidelines for computing water requirement - FAO Irrigation and drainage paper 56 (Food and Agriculture Organization, 1998).

R. F. Keeling, S. C. Piper, A. F. Bollenbacher, S. J. Walker, Monthly atmospheric 13C/12C isotopic ratios for 11 SIO stations (Carbon Dioxide Information Analysis Center, Oak Ridge National Laboratory, Oak Ridge, TN, 2010).

M. Plummer, in Proceedings of the Third International Workshop on Distributed Statistical Computing (DSC 2003) (Vienna, Austria, 2003).

A. Gelman, J. Hill, Data Analysis Using Regressiion and Multi-Level/Hierarchical Models (Cambridge Univ. Press, 2007).

Acknowledgments: We are grateful to S. Wing and staff at Smithsonian NMNH for the hospitality and for access to herbarium specimens and the loan of leaves from the CLAMP collection. We are also grateful to the following people and institutions for permissions and field assistance: Smithsonian Environmental Research Center, Maryland, USA (P. Megonigal, S. McMahon, and J. Shue), Jasper Ridge Biological Preserve, California, USA (N. Chiariello and T. Corelli); The University of the South Pacific, Fiji (M. Tuiwawa, A. Naikatini, and S. Pene), Tonto National Forest (E. Hoskins and C. Denton), California State Parks (T. Hyland and J. Kerbavaz), Alaska State Parks (P. Russell and L. Ess), and Oregon State Parks (N. Bacheller). Many thanks to S. Culhane, E. Doyle, and C. Egan for field assistance. Funding: We gratefully acknowledge funding from a Science Foundation Ireland (SFI) Principal Investigator Award (PI) 11/PI/1103. A.P. was supported by SFI Career Development Award grant 17/CDA/4695 and SFI center grant SFI/12/RC/2289_P2. R.A.S. was supported by a Natural Environment Research Council grant (no. NE/P013805/1) and an XTBG International Fellowship for Visiting Scientists. Author contributions: W.K.S. led the writing, with input from J.C.M., C.Y., and M.M. J.C.M., C.Y., M.M., I.J.W., A.P., R.A.S., T.L., and R.C. discussed and commented on the manuscript. W.K.S., M.M., C.Y., and J.C.M. designed the study and organized and conducted fieldworks. W.K.S. and M.M. sampled CLAMP historical herbarium samples and curated all leaf samples. W.K.S. contributed to the LMA, Nmass, and 13C data. C.Y. and W.K.S. contributed to the IRGA experiment data. C.Y. processed the IRGA experiment data. W.K.S. and A.P. performed the statistical analysis. W.K.S. conducted meta-analysis for published tree ring and leaf 13C data. I.J.W. contributed leaf 13C data for meta-analysis. Competing interests: The authors declare that they have no competing interests. Data and materials availability: All data needed to evaluate the conclusions in the paper are present in the paper and/or the Supplementary Materials. Additional data related to this paper may be requested from the authors.

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Rising CO2 drives divergence in water use efficiency of evergreen and deciduous plants - Science Advances

Brain Circuitry Holds Key To Treating Obesity: Study – International Business Times

KEY POINTS

Overeating has been an issue for most of us at some time or the other. Some people have been able to control it, but others who havent been able to do it suffer from issues such as weight gain and obesity.

A new study has looked into how food craving affects the brain. Food craving leads to loss of self-control and eating even when your brain tells you that the foodstuff may be harmful to your health. Impulsivity is one of the reasons behind overeating, binge eating, weight gain, obesity and many psychological disorders such as drug addiction and gambling addiction.

The researchers have found that a specific circuit in the brain causes impulsivity. Because the researchers have identified this circuit, this holds hope that future medical therapies to treat overeating.

"There's underlying physiology in your brain that is regulating your capacity to say no to (impulsive eating), in experimental models, you can activate that circuitry and get a specific behavioural respons." Emily Noble, an assistant professor in the UGA College of Family and Consumer Sciences who served as lead author on the paper, stated in the findings, which were published in a paper titled Hypothalamus-hippocampus circuitry regulates impulsivity via melanin-concentrating hormone, published in the Nature journal.

The experiment was done on rats and the researchers focused on a subset of brain cells, which produce a transmitter called the melanin concentrating hormone (MCH). The researchers trained the rats so that they could press a lever to receive a high-sugar, high fat pellet and kept a timer at 20 seconds for every press. If the rat would press the lever before 20 seconds were up, the delivery of the pellet would be delayed another 20 seconds.

The researchers confirmed the findings of previous studies, which stated that MCH was responsible for increasedfood intake but also showed for the first time that it was responsible for impulsivity. They then used advanced techniques to activate MCH neural pathways between the hippocampus and hypothalamus in these mice parts of the brain responsible for learning and memory.

MCH did not interfere with the liking for the food, but rather it acted on the inhibitory control in the rats the ability to control themselves from reaching out for the pellet before 20 seconds were up. Activating the pathway increased impulsive behavior regardless of whether their body needed the calories or not.

Activating this specific pathway of MCH neurons increased impulsive behavior without affecting normal eating for caloric need or motivation to consume delicious food. Understanding that this circuit, which selectively affectsfoodimpulsivity, exists opens the door to the possibility that one day we might be able to develop therapeutics for overeating that help people stick to a diet without reducing normal appetite or making delicious foods less delicious," Noble stated.

s According to the World Population Review, Micronesian country Nauru holds the position as the most obese country in the world. Pictured: A physiotherapist (L) assists obese patients with exercises in an obesity unit at the CHU Angers teaching hospital. Photo: Getty Images/Jean-Sebastien Evrard

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Brain Circuitry Holds Key To Treating Obesity: Study - International Business Times

The Daily Show With Trevor Noah Talks About The Greys Anatomy Of Wars – Deadline

Trevor Noah and The Daily Show crew usually are up for a few laughs on the serious topics they tackle. But tonight, it was more about rueful laughter, as they discussed the Washington Posts blockbuster story that showed three different presidential administrations lied about American progress in the war in Afghanistan.

Its the Greys Anatomy of wars, said Noah. We thought it ended years ago, but somehow, its still going strong. He went on to detail that for 18 years, US officials lied about the Afghanistan war, painting a rosy picture that everything is well a tactic used by every failing couple on Instagram, he noted.

The government lied about every detail of the war, even spinning suicide bombers as a sign of success. That, Noah noted, is like touting yourself as a catch in online dating because you have your own room in moms basement.

Related Story'Good Talk With Anthony Jeselnik' Renewed For Season 2 By Comedy Central

What makes it egregious is that they lied about even having a plan, Noah said, showing clips from politicians who noted that, We didnt know why we were there or how we could get out..we didnt have the foggiest notion of what we were doing.

Not knowing who they were going to fight thats a strategy for drunk dudes in Boston, Noah said. The people in charge didnt know how to define success Like what they did with Game of Thrones.

He went on to detail the various boondoggles, including a $34 million effort to grow soybeans in a country whose soil and climate were not a fit, or $28 million for forest camouflage uniforms for the Afghan army in a country thats mostly desert.

Now, you might be thinking, Who can we be mad at?' The answer is the last three administrations. They all exaggerated American success, Noah said. In a time where partisanship has split the country, Its nice to learn that something brings leaders together: lying about war.

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The Daily Show With Trevor Noah Talks About The Greys Anatomy Of Wars - Deadline

Pink Wall review: eviscerating anatomy of a relationship from Downton’s viscount – The Telegraph

Dir: Tom Cullen. Cast: Tatiana Maslany, Jay Duplass, Sule Rimi, Ruth Ollman, Sarah Ovens, T. J. Richardson.15 cert, 82 min

Theres a bloodcurdling moment in the first scene of Pink Wall, a sharp, stinging relationship drama from actor-turned-filmmaker Tom Cullen, which pins your attention to the screen and keeps it there. The central couple, played to the hilt by Tatiana Maslany and Jay Duplass, are sat next to each other during a pub lunch in Wales, and a stray comment by her brother, whos across the table, turns the atmosphere on a dime.

Maslanys terrifyingly sudden rage at hearing the insult cuck (aimed at her boyfriend, implying he doesnt wear the trousers) is something to behold....

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Pink Wall review: eviscerating anatomy of a relationship from Downton's viscount - The Telegraph