An interpretable machine learning‐based cerebrospinal fluid proteomics clock for predicting age reveals novel insights into brain aging

Author:

Melendez Justin12ORCID,Sung Yun Ju34,Orr Miranda5ORCID,Yoo Andrew6,Schindler Suzanne2,Cruchaga Carlos23,Bateman Randall12

Affiliation:

1. Tracy Family SILQ Center Washington University in St. Louis St. Louis Missouri USA

2. Department of Neurology Washington University in St. Louis St. Louis Missouri USA

3. Department of Psychiatry Washington University in St. Louis St. Louis Missouri USA

4. Department of Biostatistics Washington University in St. Louis St. Louis Missouri USA

5. Department of Internal Medicine Wake Forest School of Medicine Section of Gerontology and Geriatric Medicine Medical Center Boulevard Winston‐Salem North Carolina USA

6. Department of Developmental Biology Washington University in St. Louis St. Louis Missouri USA

Abstract

AbstractMachine learning can be used to create “biologic clocks” that predict age. However, organs, tissues, and biofluids may age at different rates from the organism as a whole. We sought to understand how cerebrospinal fluid (CSF) changes with age to inform the development of brain aging‐related disease mechanisms and identify potential anti‐aging therapeutic targets. Several epigenetic clocks exist based on plasma and neuronal tissues; however, plasma may not reflect brain aging specifically and tissue‐based clocks require samples that are difficult to obtain from living participants. To address these problems, we developed a machine learning clock that uses CSF proteomics to predict the chronological age of individuals with a 0.79 Pearson correlation and mean estimated error (MAE) of 4.30 years in our validation cohort. Additionally, we analyzed proteins highly weighted by the algorithm to gain insights into changes in CSF and uncover novel insights into brain aging. We also demonstrate a novel method to create a minimal protein clock that uses just 109 protein features from the original clock to achieve a similar accuracy (0.75 correlation, MAE 5.41). Finally, we demonstrate that our clock identifies novel proteins that are highly predictive of age in interactions with other proteins, but do not directly correlate with chronological age themselves. In conclusion, we propose that our CSF protein aging clock can identify novel proteins that influence the rate of aging of the central nervous system (CNS), in a manner that would not be identifiable by examining their individual relationships with age.

Funder

Charles F. and Joanne Knight Alzheimer Disease Research Center, Washington University in St. Louis

National Institutes of Health

Chan Zuckerberg Initiative

Clinical Center

DoD Alzheimer's Disease Neuroimaging Initiative

Michael J. Fox Foundation for Parkinson's Research

Publisher

Wiley

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