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Deep learning reveals that multidimensional social status drives population variation in 11,875 US participant cohort

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Listed:
  • Justin Marotta
  • Shambhavi Aggarwal
  • Nicole Osayande
  • Karin Saltoun
  • Jakub Kopal
  • Avram J Holmes
  • Sarah W Yip
  • Danilo Bzdok

Abstract

As an increasing realization, many behavioral relationships are interwoven with inherent variations in human populations. Presently, there is no clarity in the biomedical community on which sources of population variation are most dominant. The recent advent of population-scale cohorts like the Adolescent Brain Cognitive DevelopmentSM Study (ABCD Study®) are now offering unprecedented depth and width of phenotype profiling that potentially explains interfamily differences. Here, we leveraged a deep learning framework (conditional variational autoencoder) on the totality of the ABCD Study® phenome (8,902 candidate phenotypes in 11,875 participants) to identify and characterize major sources of population stratification. 80% of the top 5 sources of explanatory stratifications were driven by distinct combinations of 202 available socioeconomic status (SES) measures; each in conjunction with a unique set of non-overlapping social and environmental factors. Several sources of variation across this cohort flagged geographies marked by material poverty interlocked with mental health and behavioral correlates. Deprivation emerged in another top stratification in relation to urbanicity and its ties to immigrant and racial and ethnic minoritized groups. Conversely, two other major sources of population variation were both driven by indicators of privilege: one highlighted measures of access to educational opportunity and income tied to healthy home environments and good behavior, the other profiled individuals of European ancestry leading advantaged lifestyles in desirable neighborhoods in terms of location and air quality. Overall, the disclosed social stratifications underscore the importance of treating SES as a multidimensional construct and recognizing its ties into social determinants of health.

Suggested Citation

  • Justin Marotta & Shambhavi Aggarwal & Nicole Osayande & Karin Saltoun & Jakub Kopal & Avram J Holmes & Sarah W Yip & Danilo Bzdok, 2025. "Deep learning reveals that multidimensional social status drives population variation in 11,875 US participant cohort," PLOS ONE, Public Library of Science, vol. 20(8), pages 1-35, August.
  • Handle: RePEc:plo:pone00:0327729
    DOI: 10.1371/journal.pone.0327729
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