| Literature DB >> 31844486 |
Lei Du1, Kefei Liu2, Xiaohui Yao2, Shannon L Risacher3, Lei Guo1, Andrew J Saykin3, Li Shen2.
Abstract
Brain imaging genetics use the imaging quantitative traits (QTs) as intermediate endophenotypes to identify the genetic basis of the brain structure, function and abnormality. The regression and canonical correlation analysis (CCA) coupled with sparsity regularization are widely used in imaging genetics. The regression only selects relevant features for predictors. SCCA overcomes this but is unsupervised and thus could not make use of the diagnosis information. We propose a novel method integrating regression and SCCA together to construct a supervised sparse bi-multivariate learning model. The regression part plays a role of providing guidance for imaging QTs selection, and the SCCA part is focused on selecting relevant genetic markers and imaging QTs. We propose an efficient algorithm based on the alternative search method. Our method obtains better feature selection results than both regression and SCCA on both synthetic and real neuroimaging data. This demonstrates that our method is a promising bi-multivariate tool for brain imaging genetics.Entities:
Keywords: Brain imaging genetics; Lasso; sparse canonical correlation analysis; sparse learning
Year: 2019 PMID: 31844486 PMCID: PMC6914314 DOI: 10.1109/ISBI.2019.8759489
Source DB: PubMed Journal: Proc IEEE Int Symp Biomed Imaging ISSN: 1945-7928