PT - JOURNAL ARTICLE AU - Timothy Shin Heng Mak AU - Robert Milan Porsch AU - Shing Wan Choi AU - Xueya Zhou AU - Pak Chung Sham TI - Polygenic scores via penalized regression on summary statistics AID - 10.1101/058214 DP - 2017 Jan 01 TA - bioRxiv PG - 058214 4099 - http://biorxiv.org/content/early/2017/03/22/058214.short 4100 - http://biorxiv.org/content/early/2017/03/22/058214.full AB - Polygenic scores (PGS) summarize the genetic contribution of a person’s genotype to a disease or phenotype. They can be used to group participants into different risk categories for diseases, and are also used as covariates in epidemiological analyses. A number of possible ways of calculating polygenic scores have been proposed, and recently there is much interest in methods that incorporate information available in published summary statistics. As there is no inherent information on linkage disequilibrium (LD) in summary statistics, a pertinent question is how we can make use of LD information available elsewhere to supplement such analyses. To answer this question we propose a method for constructing PGS using summary statistics and a reference panel in a penalized regression framework, which we call lassosum. We also propose a general method for choosing the value of the tuning parameter in the absence of validation data. In our simulations, we showed that pseudovalidation often resulted in prediction accuracy that is comparable to using a dataset with validation phenotype and was clearly superior to the conservative option of setting the tuning parameter of lassosum to its lowest value. We also showed that lassosum achieved better prediction accuracy than simple clumping and p-value thresholding in almost all scenarios. It was also substantially faster and more accurate than the recently proposed LDpred.