Liu Jingyu, Ghassemi Mohammad M, Michael Andrew M, Boutte David, Wells William, Perrone-Bizzozero Nora, Macciardi Fabio, Mathalon Daniel H, Ford Judith M, Potkin Steven G, Turner Jessica A, Calhoun Vince D
The Mind Research Network, Albuquerque NM, USA.
Front Hum Neurosci. 2012 Feb 22;6:21. doi: 10.3389/fnhum.2012.00021. eCollection 2012.
To address the statistical challenges associated with genome-wide association studies, we present an independent component analysis (ICA) with reference approach to target a specific genetic variation and associated brain networks. First, a small set of single nucleotide polymorphisms (SNPs) are empirically chosen to reflect a feature of interest and these SNPs are used as a reference when applying ICA to a full genomic SNP array. After extracting the genetic component maximally representing the characteristics of the reference, we test its association with brain networks in functional magnetic resonance imaging (fMRI) data. The method was evaluated on both real and simulated datasets. Simulation demonstrates that ICA with reference can extract a specific genetic factor, even when the variance accounted for by such a factor is so small that a regular ICA fails. Our real data application from 48 schizophrenia patients (SZs) and 40 healthy controls (HCs) include 300K SNPs and fMRI images in an auditory oddball task. Using SNPs with allelic frequency difference in two groups as a reference, we extracted a genetic component that maximally differentiates patients from controls (p < 4 × 10(-17)), and discovered a brain functional network that was significantly associated with this genetic component (p < 1 × 10(-4)). The regions in the functional network mainly locate in the thalamus, anterior and posterior cingulate gyri. The contributing SNPs in the genetic factor mainly fall into two clusters centered at chromosome 7q21 and chromosome 5q35. The findings from the schizophrenia application are in concordance with previous knowledge about brain regions and gene function. All together, the results suggest that the ICA with reference can be particularly useful to explore the whole genome to find a specific factor of interest and further study its effect on brain.
为应对全基因组关联研究相关的统计挑战,我们提出一种带参考的独立成分分析(ICA)方法,以针对特定基因变异及相关脑网络。首先,根据经验选择一小部分单核苷酸多态性(SNP)来反映感兴趣的特征,在将ICA应用于全基因组SNP阵列时,这些SNP用作参考。在提取出最大程度代表参考特征的遗传成分后,我们在功能磁共振成像(fMRI)数据中测试其与脑网络的关联。该方法在真实数据集和模拟数据集上均进行了评估。模拟结果表明,带参考的ICA能够提取特定遗传因素,即便该因素所解释的方差小到常规ICA无法提取。我们对48例精神分裂症患者(SZ)和40例健康对照(HC)的真实数据应用,包括在听觉oddball任务中的30万个SNP和fMRI图像。以两组中等位基因频率有差异的SNP作为参考,我们提取出一个能最大程度区分患者与对照的遗传成分(p < 4 × 10(-17)),并发现一个与该遗传成分显著相关的脑功能网络(p < 1 × 10(-4))。功能网络中的区域主要位于丘脑、前扣带回和后扣带回。遗传因素中起作用的SNP主要分为两个簇,分别以染色体7q21和染色体5q35为中心。精神分裂症应用的研究结果与先前关于脑区和基因功能的知识一致。总体而言,结果表明带参考的ICA对于探索全基因组以找到感兴趣的特定因素并进一步研究其对大脑的影响可能特别有用。