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Autori principali: Zhao, Yinjun, Tatonetti, Nicholas, Wang, Yuanjia
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.08532
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author Zhao, Yinjun
Tatonetti, Nicholas
Wang, Yuanjia
author_facet Zhao, Yinjun
Tatonetti, Nicholas
Wang, Yuanjia
contents Electronic health records (EHRs) linked with familial relationship data offer a unique opportunity to investigate the genetic architecture of complex phenotypes at scale. However, existing heritability and coheritability estimation methods often fail to account for the intricacies of familial correlation structures, heterogeneity across phenotype types, and computational scalability. We propose a robust and flexible statistical framework for jointly estimating heritability and genetic correlation among continuous and binary phenotypes in EHR-based family studies. Our approach builds on multi-level latent variable models to decompose phenotypic covariance into interpretable genetic and environmental components, incorporating both within- and between-family variations. We derive iteration algorithms based on generalized equation estimations (GEE) for estimation. Simulation studies under various parameter configurations demonstrate that our estimators are consistent and yield valid inference across a range of realistic settings. Applying our methods to real-world EHR data from a large, urban health system, we identify significant genetic correlations between mental health conditions and endocrine/metabolic phenotypes, supporting hypotheses of shared etiology. This work provides a scalable and rigorous framework for coheritability analysis in high-dimensional EHR data and facilitates the identification of shared genetic influences in complex disease networks.
format Preprint
id arxiv_https___arxiv_org_abs_2511_08532
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-level Latent Variable Models for Coheritability Analysis in Electronic Health Records
Zhao, Yinjun
Tatonetti, Nicholas
Wang, Yuanjia
Methodology
Electronic health records (EHRs) linked with familial relationship data offer a unique opportunity to investigate the genetic architecture of complex phenotypes at scale. However, existing heritability and coheritability estimation methods often fail to account for the intricacies of familial correlation structures, heterogeneity across phenotype types, and computational scalability. We propose a robust and flexible statistical framework for jointly estimating heritability and genetic correlation among continuous and binary phenotypes in EHR-based family studies. Our approach builds on multi-level latent variable models to decompose phenotypic covariance into interpretable genetic and environmental components, incorporating both within- and between-family variations. We derive iteration algorithms based on generalized equation estimations (GEE) for estimation. Simulation studies under various parameter configurations demonstrate that our estimators are consistent and yield valid inference across a range of realistic settings. Applying our methods to real-world EHR data from a large, urban health system, we identify significant genetic correlations between mental health conditions and endocrine/metabolic phenotypes, supporting hypotheses of shared etiology. This work provides a scalable and rigorous framework for coheritability analysis in high-dimensional EHR data and facilitates the identification of shared genetic influences in complex disease networks.
title Multi-level Latent Variable Models for Coheritability Analysis in Electronic Health Records
topic Methodology
url https://arxiv.org/abs/2511.08532