PT - JOURNAL ARTICLE AU - Douglas M. Ruderfer AU - Colin G. Walsh AU - Matthew W. Aguirre AU - Jessica D. Ribeiro AU - Joseph C. Franklin AU - Manuel A. Rivas TI - Significant shared heritability underlies suicide attempt and clinically predicted probability of attempting suicide AID - 10.1101/266411 DP - 2018 Jan 01 TA - bioRxiv PG - 266411 4099 - http://biorxiv.org/content/early/2018/02/15/266411.short 4100 - http://biorxiv.org/content/early/2018/02/15/266411.full AB - Suicide accounts for nearly 800,000 deaths per year worldwide with rates of both deaths and attempts rising. Family studies have estimated substantial heritability of suicidal behavior; however, collecting the sample sizes necessary for successful genetic studies has remained a challenge. We utilized two different approaches in independent datasets to characterize the contribution of common genetic variation to suicide attempt. The first is a patient reported suicide attempt phenotype from genotyped samples in the UK Biobank (337,199 participants, 2,433 cases). The second leveraged electronic health record (EHR) data from the Vanderbilt University Medical Center (VUMC, 2.8 million patients, 3,250 cases) and machine learning to derive probabilities of attempting suicide in 24,546 genotyped patients. We identified significant and comparable heritability estimates of suicide attempt from both the patient reported phenotype in the UK Biobank (h2SNP = 0.035, p = 7.12×10−4) and the clinically predicted phenotype from VUMC (h2SNP = 0.046, p = 1.51×10−2). A significant genetic overlap was demonstrated between the two measures of suicide attempt in these independent samples through polygenic risk score analysis (t = 4.02, p = 5.75×10−5) and genetic correlation (rg = 1.073, SE = 0.36, p = 0.003). Finally, we show significant but incomplete genetic correlation of suicide attempt with insomnia (rg = 0.34 - 0.81) as well as several psychiatric disorders (rg = 0.26 - 0.79). This work demonstrates the contribution of common genetic variation to suicide attempt. It points to a genetic underpinning to clinically predicted risk of attempting suicide that is similar to the genetic profile from a patient reported outcome. Lastly, it presents an approach for using EHR data and clinical prediction to generate quantitative measures from binary phenotypes that improved power for our genetic study.