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Age and life expectancy clocks based on machine learning analysis of mouse frailty

Medicine and Health

Age and life expectancy clocks based on machine learning analysis of mouse frailty

M. B. Schultz, A. E. Kane, et al.

Discover how Frailty Indices in mice can revolutionize our understanding of aging and longevity. This research, conducted by a team including Michael B Schultz, Alice E Kane, and David A Sinclair, introduces innovative machine learning models to predict life expectancy and the efficacy of lifespan-extending interventions, propelling forward the quest for aging solutions.

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Playback language: English
Abstract
The identification of genes and interventions that slow or reverse aging is hampered by the lack of non-invasive metrics that can predict the life expectancy of pre-clinical models. Frailty Indices (FIs) in mice are composite measures of health that are cost-effective and non-invasive, but whether they can accurately predict health and lifespan is not known. Here, mouse FIs are scored longitudinally until death and machine learning is employed to develop two clocks. A random forest regression is trained on FI components for chronological age to generate the FRIGHT (Frailty Inferred Geriatric Health Timeline) clock, a strong predictor of chronological age. A second model is trained on remaining lifespan to generate the AFRAID (Analysis of Frailty and Death) clock, which accurately predicts life expectancy and the efficacy of a lifespan-extending intervention up to a year in advance. Adoption of these clocks should accelerate the identification of longevity genes and aging interventions.
Publisher
Nature Communications
Published On
Sep 15, 2020
Authors
Michael B Schultz, Alice E Kane, Sarah J Mitchell, Michael R MacArthur, Elisa Warner, David S Vogel, James R Mitchell, Susan E Howlett, Michael S Bonkowski, David A Sinclair
Tags
Frailty Indices
aging
machine learning
life expectancy
longevity genes
interventions
health prediction
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