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PsychoAge and SubjAge: Development of Deep Markers of Psychological and Subjective Age Using Artificial Intelligence

Overview
Specialty Geriatrics
Date 2020 Dec 11
PMID 33303702
Citations 12
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Abstract

Aging clocks that accurately predict human age based on various biodata types are among the most important recent advances in biogerontology. Since 2016 multiple deep learning solutions have been created to interpret facial photos, omics data, and clinical blood parameters in the context of aging. Some of them have been patented to be used in commercial settings. However, psychological changes occurring throughout the human lifespan have been overlooked in the field of "deep aging clocks". In this paper, we present two deep learning predictors trained on social and behavioral data from Midlife in the United States (MIDUS) study: (a) PsychoAge, which predicts chronological age, and (b) SubjAge, which describes personal aging rate perception. Using 50 distinct features from the MIDUS dataset these models have achieved a mean absolute error of 6.7 years for chronological age and 7.3 years for subjective age. We also show that both PsychoAge and SubjAge are predictive of all-cause mortality risk, with SubjAge being a more significant risk factor. Both clocks contain actionable features that can be modified using social and behavioral interventions, which enables a variety of aging-related psychology experiment designs. The features used in these clocks are interpretable by human experts and may prove to be useful in shifting personal perception of aging towards a mindset that promotes productive and healthy behaviors.

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References
1.
Mitina M, Young S, Zhavoronkov A . Psychological aging, depression, and well-being. Aging (Albany NY). 2020; 12(18):18765-18777. PMC: 7585090. DOI: 10.18632/aging.103880. View

2.
Levy B . Stereotype Embodiment: A Psychosocial Approach to Aging. Curr Dir Psychol Sci. 2010; 18(6):332-336. PMC: 2927354. DOI: 10.1111/j.1467-8721.2009.01662.x. View

3.
Mamoshina P, Volosnikova M, Ozerov I, Putin E, Skibina E, Cortese F . Machine Learning on Human Muscle Transcriptomic Data for Biomarker Discovery and Tissue-Specific Drug Target Identification. Front Genet. 2018; 9:242. PMC: 6052089. DOI: 10.3389/fgene.2018.00242. View

4.
Bobrov E, Georgievskaya A, Kiselev K, Sevastopolsky A, Zhavoronkov A, Gurov S . PhotoAgeClock: deep learning algorithms for development of non-invasive visual biomarkers of aging. Aging (Albany NY). 2018; 10(11):3249-3259. PMC: 6286834. DOI: 10.18632/aging.101629. View

5.
Jylhava J, Pedersen N, Hagg S . Biological Age Predictors. EBioMedicine. 2017; 21:29-36. PMC: 5514388. DOI: 10.1016/j.ebiom.2017.03.046. View