RT Journal Article SR Electronic T1 Multiple Confounders Correction with Regularized Linear Mixed Effect Models, with Application in Biological Processes JF bioRxiv FD Cold Spring Harbor Laboratory SP 089052 DO 10.1101/089052 A1 Haohan Wang A1 Jingkang Yang YR 2016 UL http://biorxiv.org/content/early/2016/11/22/089052.abstract AB In this paper, we inspect the performance of regularized linear mixed effect models, as an extension of linear mixed effect model, when multiple confounding factors coexist. We first review its parameter estimation algorithms before we introduce three different methods for multiple confounding factors correction, namely concatenation, sequence, and interpolation. Then we investigate the performance on variable selection task and predictive task on three different data sets, synthetic data set, semi-empirical synthetic data set based on genome sequences and brain wave data set connecting to confused mental states. Our results suggest that sequence multiple confounding factors corrections behave the best when different confounders contribute equally to response variables. On the other hand, when various confounders affect the response variable unevenly, results mainly rely on the degree of how the major confounder is corrected.