| Literature DB >> 24530838 |
Hongbao Cao1, Junbo Duan2, Dongdong Lin3, Yin Yao Shugart1, Vince Calhoun4, Yu-Ping Wang5.
Abstract
Integrative analysis of multiple data types can take advantage of their complementary information and therefore may provide higher power to identify potential biomarkers that would be missed using individual data analysis. Due to different natures of diverse data modality, data integration is challenging. Here we address the data integration problem by developing a generalized sparse model (GSM) using weighting factors to integrate multi-modality data for biomarker selection. As an example, we applied the GSM model to a joint analysis of two types of schizophrenia data sets: 759,075 SNPs and 153,594 functional magnetic resonance imaging (fMRI) voxels in 208 subjects (92 cases/116 controls). To solve this small-sample-large-variable problem, we developed a novel sparse representation based variable selection (SRVS) algorithm, with the primary aim to identify biomarkers associated with schizophrenia. To validate the effectiveness of the selected variables, we performed multivariate classification followed by a ten-fold cross validation. We compared our proposed SRVS algorithm with an earlier sparse model based variable selection algorithm for integrated analysis. In addition, we compared with the traditional statistics method for uni-variant data analysis (Chi-squared test for SNP data and ANOVA for fMRI data). Results showed that our proposed SRVS method can identify novel biomarkers that show stronger capability in distinguishing schizophrenia patients from healthy controls. Moreover, better classification ratios were achieved using biomarkers from both types of data, suggesting the importance of integrative analysis.Entities:
Keywords: SNP; Schizophrenia; Sparse representations; Variable selection; fMRI
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Year: 2014 PMID: 24530838 PMCID: PMC4130811 DOI: 10.1016/j.neuroimage.2014.01.021
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556