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Sparse representation based biomarker selection for schizophrenia with integrated analysis of fMRI and SNP data

机译:基于稀疏表示的精神分裂症的生物标志物选择,具有FMRI和SNP数据的综合分析

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We propose a novel sparse representation based variable selection algorithm (SRVS), which improves the variable selection ability of a traditional sparse regression model in that it performs variable selection at different significance levels, and gives groups of selected variables of different sizes. As an example, we applied the algorithm to a joint analysis of 759075 SNPs and 153594 functional magnetic resonance imaging (fMRI) voxels in 208 subjects (92 cases/116 controls) to identify biomarkers for schizophrenia (SZ). To evaluate the selected biomarkers, a 10-fold cross validation was performed. The results between SRVS method and a previously reported variable selection method were compared, which showed that our method, especially with a sparse regression model penalized with norm, gave significantly higher classification accuracy of discriminating SZ patients from healthy controls.
机译:我们提出了一种基于新的基于稀疏表示的可变选择算法(SRV),其提高了传统稀疏回归模型的可变选择能力,因为它在不同意义水平下执行变量选择,并给出不同大小的选定变量组。作为示例,我们将该算法应用于208个受试者(92例/ 116对照)的759075 SNP和153594个功能磁共振成像(FMRI)体素的联合分析,以鉴定精神分裂症(SZ)的生物标志物。为了评估所选择的生物标志物,进行10倍的交叉验证。比较SRVS方法与先前报道的可变选择方法的结果表明,我们的方法,特别是具有劣兰常数的稀疏回归模型,对鉴别SZ患者免受健康对照的显着较高的分类准确性。

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