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Building machine learning prediction models for well-being using predictors from the exposome and genome in a population cohort

Psychology

Building machine learning prediction models for well-being using predictors from the exposome and genome in a population cohort

D. H. M. Pelt, P. C. Habets, et al.

Discover groundbreaking insights from researchers Dirk H M Pelt, Philippe C Habets, and their team, who utilized longitudinal data from the Netherlands Twin Register to unveil how exposome factors like optimism and social support predict adult well-being. While genetic data fell short, understanding the psychosocial landscape proves essential in this compelling study.

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~3 min • Beginner • English
Abstract
Effective personalized well-being interventions require the ability to predict who will thrive or not, and the understanding of underlying mechanisms. Here, using longitudinal data of a large population cohort (the Netherlands Twin Register, collected 1991–2022), we aim to build machine learning prediction models for adult well-being from the exposome and genome, and identify the most predictive factors (N between 702 and 5874). The specific exposome was captured by parent and self-reports of psychosocial factors from childhood to adulthood, the genome was described by polygenic scores, and the general exposome was captured by linkage of participants’ postal codes to objective, registry-based exposures. Not the genome (R² = −0.007 [−0.026–0.010]), but the general exposome (R² = 0.047 [0.015–0.076]) and especially the specific exposome (R² = 0.702 [0.637–0.753]) were predictive of well-being in an independent test set. Adding the genome (P = 0.334) and general exposome (P = 0.695) independently or jointly (P = 0.029) beyond the specific exposome did not improve prediction. Risk/protective factors such as optimism, personality, social support and neighborhood housing characteristics were most predictive. Our findings highlight the importance of longitudinal monitoring and promises of different data modalities for well-being prediction.
Publisher
Nature Mental Health
Published On
Aug 14, 2024
Authors
Dirk H M Pelt, Philippe C Habets, Christiaan H Vinkers, Lannie Ligthart, Catharina E M van Beijsterveldt, René Pool, Meike Bartels
Tags
well-being
exposome
psychosocial factors
genetic data
machine learning
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