Title |
Deep biomarkers of human aging: Application of deep neural networks to biomarker development
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Published in |
Aging, May 2016
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DOI | 10.18632/aging.100968 |
Pubmed ID | |
Authors |
Evgeny Putin, Polina Mamoshina, Alexander Aliper, Mikhail Korzinkin, Alexey Moskalev, Alexey Kolosov, Alexander Ostrovskiy, Charles Cantor, Jan Vijg, Alex Zhavoronkov |
Abstract |
One of the major impediments in human aging research is the absence of a comprehensive and actionable set of biomarkers that may be targeted and measured to track the effectiveness of therapeutic interventions. In this study, we designed a modular ensemble of 21 deep neural networks (DNNs) of varying depth, structure and optimization to predict human chronological age using a basic blood test. To train the DNNs, we used over 60,000 samples from common blood biochemistry and cell count tests from routine health exams performed by a single laboratory and linked to chronological age and sex. The best performing DNN in the ensemble demonstrated 81.5 % epsilon-accuracy r = 0.90 with R(2) = 0.80 and MAE = 6.07 years in predicting chronological age within a 10 year frame, while the entire ensemble achieved 83.5% epsilon-accuracy r = 0.91 with R(2) = 0.82 and MAE = 5.55 years. The ensemble also identified the 5 most important markers for predicting human chronological age: albumin, glucose, alkaline phosphatase, urea and erythrocytes. To allow for public testing and evaluate real-life performance of the predictor, we developed an online system available at http://www.aging.ai. The ensemble approach may facilitate integration of multi-modal data linked to chronological age and sex that may lead to simple, minimally invasive, and affordable methods of tracking integrated biomarkers of aging in humans and performing cross-species feature importance analysis. |
X Demographics
Geographical breakdown
Country | Count | As % |
---|---|---|
United States | 5 | 10% |
Hong Kong | 2 | 4% |
Russia | 2 | 4% |
Namibia | 1 | 2% |
Switzerland | 1 | 2% |
Australia | 1 | 2% |
Austria | 1 | 2% |
Spain | 1 | 2% |
Sweden | 1 | 2% |
Other | 0 | 0% |
Unknown | 33 | 69% |
Demographic breakdown
Type | Count | As % |
---|---|---|
Members of the public | 42 | 88% |
Scientists | 3 | 6% |
Science communicators (journalists, bloggers, editors) | 2 | 4% |
Practitioners (doctors, other healthcare professionals) | 1 | 2% |
Mendeley readers
Geographical breakdown
Country | Count | As % |
---|---|---|
Russia | 2 | <1% |
Brazil | 1 | <1% |
Canada | 1 | <1% |
United Kingdom | 1 | <1% |
Japan | 1 | <1% |
United States | 1 | <1% |
Unknown | 365 | 98% |
Demographic breakdown
Readers by professional status | Count | As % |
---|---|---|
Researcher | 72 | 19% |
Student > Ph. D. Student | 70 | 19% |
Student > Master | 45 | 12% |
Other | 30 | 8% |
Student > Bachelor | 29 | 8% |
Other | 61 | 16% |
Unknown | 65 | 17% |
Readers by discipline | Count | As % |
---|---|---|
Biochemistry, Genetics and Molecular Biology | 74 | 20% |
Agricultural and Biological Sciences | 49 | 13% |
Computer Science | 46 | 12% |
Medicine and Dentistry | 31 | 8% |
Engineering | 20 | 5% |
Other | 69 | 19% |
Unknown | 83 | 22% |