» Articles » PMID: 35007286

Interpretable Machine Learning for High-dimensional Trajectories of Aging Health

Overview
Specialty Biology
Date 2022 Jan 10
PMID 35007286
Authors
Affiliations
Soon will be listed here.
Abstract

We have built a computational model for individual aging trajectories of health and survival, which contains physical, functional, and biological variables, and is conditioned on demographic, lifestyle, and medical background information. We combine techniques of modern machine learning with an interpretable interaction network, where health variables are coupled by explicit pair-wise interactions within a stochastic dynamical system. Our dynamic joint interpretable network (DJIN) model is scalable to large longitudinal data sets, is predictive of individual high-dimensional health trajectories and survival from baseline health states, and infers an interpretable network of directed interactions between the health variables. The network identifies plausible physiological connections between health variables as well as clusters of strongly connected health variables. We use English Longitudinal Study of Aging (ELSA) data to train our model and show that it performs better than multiple dedicated linear models for health outcomes and survival. We compare our model with flexible lower-dimensional latent-space models to explore the dimensionality required to accurately model aging health outcomes. Our DJIN model can be used to generate synthetic individuals that age realistically, to impute missing data, and to simulate future aging outcomes given arbitrary initial health states.

Citing Articles

Longitudinal Fragility Phenotyping Predicts Lifespan and Age-Associated Morbidity in C57BL/6 and Diversity Outbred Mice.

Luciano A, Robinson L, Garland G, Lyons B, Korstanje R, Di Francesco A bioRxiv. 2024; .

PMID: 38370707 PMC: 10871234. DOI: 10.1101/2024.02.06.579096.


Dynamical Network Stability Analysis of Multiple Biological Ages Provides a Framework for Understanding the Aging Process.

Pridham G, Rutenberg A J Gerontol A Biol Sci Med Sci. 2024; 79(10).

PMID: 38206765 PMC: 11639168. DOI: 10.1093/gerona/glae021.


Network dynamical stability analysis reveals key "mallostatic" natural variables that erode homeostasis and drive age-related decline of health.

Pridham G, Rutenberg A Sci Rep. 2023; 13(1):22140.

PMID: 38092834 PMC: 10719307. DOI: 10.1038/s41598-023-49129-7.


Longitudinal machine learning uncouples healthy aging factors from chronic disease risks.

Mendelson Cohen N, Lifshitz A, Jaschek R, Rinott E, Balicer R, Shlush L Nat Aging. 2023; 4(1):129-144.

PMID: 38062254 DOI: 10.1038/s43587-023-00536-5.


Measuring healthy ageing: current and future tools.

Silva N, Rajado A, Esteves F, Brito D, Apolonio J, Roberto V Biogerontology. 2023; 24(6):845-866.

PMID: 37439885 PMC: 10615962. DOI: 10.1007/s10522-023-10041-2.


References
1.
Fisher C, Smith A, Walsh J . Machine learning for comprehensive forecasting of Alzheimer's Disease progression. Sci Rep. 2019; 9(1):13622. PMC: 6754403. DOI: 10.1038/s41598-019-49656-2. View

2.
Mitnitski A, Graham J, Mogilner A, Rockwood K . Frailty, fitness and late-life mortality in relation to chronological and biological age. BMC Geriatr. 2002; 2:1. PMC: 88955. DOI: 10.1186/1471-2318-2-1. View

3.
Liu Y, Li S, Li F, Song L, Rehg J . Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression. Adv Neural Inf Process Syst. 2016; 28:3599-3607. PMC: 4804157. View

4.
Friston K, Harrison L, Penny W . Dynamic causal modelling. Neuroimage. 2003; 19(4):1273-302. DOI: 10.1016/s1053-8119(03)00202-7. View

5.
Yashin A, Arbeev K, Akushevich I, Kulminski A, Ukraintseva S, Stallard E . The quadratic hazard model for analyzing longitudinal data on aging, health, and the life span. Phys Life Rev. 2012; 9(2):177-88. PMC: 3392540. DOI: 10.1016/j.plrev.2012.05.002. View