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Network-based investigation of genetic modules associated with functional brain networks in schizophrenia

机译:基于网络的精神分裂症功能性脑网络相关遗传模块研究

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We developed a new sparse multivariate regression method, collaborative sparse reduced rank regression(C-sRRR) for detecting genetic networks associated with brain functional networks in schizophrenia (SZ). Our study: 1) introduced both genetic and brain network structure to group single nucleotide polymorphism (SNP) and voxels simultaneously for utilizing the interacting effects implied in both features; 2) used collaborative sparse group lasso to perform genetic variants selection and nuclear norm penalty to address the interrelationship among voxels; 3) developed an efficient algorithm for solving the non-smooth optimization. In real data analysis, we constructed 8605 genetic sub-networks (modules) from 722177 SNPs with a median module size of 9. A functional brain network was extracted which also showed significant discriminative characteristics between SZ and healthy controls. A sub sampling strategy was applied to identify 57 highly ranked genes from 14 high-ranking modules. 14 of them are SZ susceptibility genes and 6 genes were consistent with the findings in previous study.
机译:我们开发了一种新的稀疏多元回归方法,协作稀疏降秩回归(C-sRRR),用于检测与精神分裂症(SZ)的脑功能网络相关的遗传网络。我们的研究:1)引入了遗传和大脑网络结构,以同时对单核苷酸多态性(SNP)和体素进行分组,以利用这两个特征中暗示的相互作用。 2)使用稀疏协作组套索进行遗传变异选择和核规范惩罚,以解决体素之间的相互关系; 3)开发了一种有效的算法来解决非平滑优化问题。在真实数据分析中,我们从722177个SNP中构建了8605个遗传子网络(模块),模块中位数为9。提取了一个功能性大脑网络,该网络也显示出SZ与健康对照之间的显着区别特征。应用子采样策略从14个高级模块中识别57个高级基因。其中有14个是SZ易感基因,有6个基因与以前的研究结果一致。

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