2018
DOI: 10.1093/gerona/gly005
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Population Specific Biomarkers of Human Aging: A Big Data Study Using South Korean, Canadian, and Eastern European Patient Populations

Abstract: Accurate and physiologically meaningful biomarkers for human aging are key to assessing antiaging therapies. Given ethnic differences in health, diet, lifestyle, behavior, environmental exposures, and even average rate of biological aging, it stands to reason that aging clocks trained on datasets obtained from specific ethnic populations are more likely to account for these potential confounding factors, resulting in an enhanced capacity to predict chronological age and quantify biological age. Here, we presen… Show more

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Cited by 141 publications
(145 citation statements)
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References 29 publications
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“…The decline for both elite athletes and the general population might be different for maximal performance (activities that push the organism's limits) and voluntary activity (walking speed). Precisely characterizing the age-related patterns of other molecular, cellular, or physiological "aging clocks" might also give relevance to the general population (30,31).…”
Section: Homothetic Expansionmentioning
confidence: 99%
“…The decline for both elite athletes and the general population might be different for maximal performance (activities that push the organism's limits) and voluntary activity (walking speed). Precisely characterizing the age-related patterns of other molecular, cellular, or physiological "aging clocks" might also give relevance to the general population (30,31).…”
Section: Homothetic Expansionmentioning
confidence: 99%
“…Indeed, since 2013, many aging clocks have been developed in both humans and other model organisms. The published aging clocks utilizing deep learning were developed using standard clinical blood tests 42 , facial images 43 , physical activity data, 44 and transcriptomic data 45 . These clocks were used to rank the most important features contributing to the accuracy of the prediction by using the permutation feature importance (PFI), deep feature selection (DFS) and other techniques.…”
Section: Introductionmentioning
confidence: 99%
“…These clocks were used to rank the most important features contributing to the accuracy of the prediction by using the permutation feature importance (PFI), deep feature selection (DFS) and other techniques. These clocks were also used to assess the populationspecificity of the various data types 42 .…”
Section: Introductionmentioning
confidence: 99%
“…Evolution of metrics of biological aging. First‐generation metrics of aging were based on one type of dataset (DNA methylation, [ 106 ] transcriptomic data, [ 86 ] facial images, [ 144 ] etc.) correlated with chronological age.…”
Section: Future Perspective Of Aging Assessment In Humanmentioning
confidence: 99%