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Polygenic Risk of Psychiatric Disorders Exhibits Cross-trait Associations in Electronic Health Record Data From European Ancestry Individuals

Authors :
Rachel L. Kember
Alison K. Merikangas
Shefali S. Verma
Anurag Verma
Renae Judy
Scott M. Damrauer
Marylyn D. Ritchie
Daniel J. Rader
Maja Bućan
Goncalo Abecasis
Aris Baras
Michael Cantor
Giovanni Coppola
Aris Economides
Luca Lotta
John D. Overton
Jeffrey G. Reid
Alan Shuldiner
Christina Beechert
Caitlin Forsythe
Erin D. Fuller
Zhenhua Gu
Michael Lattari
Alexander Lopez
Thomas D. Schleicher
Maria Sotiropoulos Padilla
Karina Toledo
Louis Widom
Sarah E. Wolf
Manasi Pradhan
Kia Manoochehri
Ricardo H. Ulloa
Xiaodong Bai
Suganthi Balasubramanian
Leland Barnard
Andrew Blumenfeld
Gisu Eom
Lukas Habegger
Young Hahn
Alicia Hawes
Shareef Khalid
Evan K. Maxwell
William Salerno
Jeffrey C. Staples
Ashish Yadav
Marcus B. Jones
Lyndon J. Mitnaul
Source :
Biol Psychiatry
Publication Year :
2020

Abstract

Background Prediction of disease risk is a key component of precision medicine. Common traits such as psychiatric disorders have a complex polygenic architecture, making the identification of a single risk predictor difficult. Polygenic risk scores (PRSs) denoting the sum of an individual’s genetic liability for a disorder are a promising biomarker for psychiatric disorders, but they require evaluation in a clinical setting. Methods We developed PRSs for 6 psychiatric disorders (schizophrenia, bipolar disorder, major depressive disorder, cross disorder, attention-deficit/hyperactivity disorder, and anorexia nervosa) and 17 nonpsychiatric traits in more than 10,000 individuals from the Penn Medicine Biobank with accompanying electronic health records. We performed phenome-wide association analyses to test their association across disease categories. Results Four of the 6 psychiatric PRSs were associated with their primary phenotypes (odds ratios from 1.2 to 1.6). Cross-trait associations were identified both within the psychiatric domain and across trait domains. PRSs for coronary artery disease and years of education were significantly associated with psychiatric disorders, largely driven by an association with tobacco use disorder. Conclusions We demonstrated that the genetic architecture of electronic health record–derived psychiatric diagnoses is similar to ascertained research cohorts from large consortia. Psychiatric PRSs are moderately associated with psychiatric diagnoses but are not yet clinically predictive in naive patients. Cross-trait associations for these PRSs suggest a broader effect of genetic liability beyond traditional diagnostic boundaries. As identification of genetic markers increases, including PRSs alongside other clinical risk factors may enhance prediction of psychiatric disorders and associated conditions in clinical registries.

Details

ISSN :
18732402
Volume :
89
Issue :
3
Database :
OpenAIRE
Journal :
Biological psychiatry
Accession number :
edsair.doi.dedup.....fcae4d9b81d3bbf0536f99f86413b7f7