Liu Jingyu, Pearlson Godfrey, Windemuth Andreas, Ruano Gualberto, Perrone-Bizzozero Nora I, Calhoun Vince
The Mind Research Network, Albuquerque, New Mexico, USA.
Hum Brain Mapp. 2009 Jan;30(1):241-55. doi: 10.1002/hbm.20508.
There is current interest in understanding genetic influences on both healthy and disordered brain function. We assessed brain function with functional magnetic resonance imaging (fMRI) data collected during an auditory oddball task--detecting an infrequent sound within a series of frequent sounds. Then, task-related imaging findings were utilized as potential intermediate phenotypes (endophenotypes) to investigate genomic factors derived from a single nucleotide polymorphism (SNP) array. Our target is the linkage of these genomic factors to normal/abnormal brain functionality. We explored parallel independent component analysis (paraICA) as a new method for analyzing multimodal data. The method was aimed to identify simultaneously independent components of each modality and the relationships between them. When 43 healthy controls and 20 schizophrenia patients, all Caucasian, were studied, we found a correlation of 0.38 between one fMRI component and one SNP component. This fMRI component consisted mainly of parietal lobe activations. The relevant SNP component was contributed to significantly by 10 SNPs located in genes, including those coding for the nicotinic alpha-7 cholinergic receptor, aromatic amino acid decarboxylase, disrupted in schizophrenia 1, among others. Both fMRI and SNP components showed significant differences in loading parameters between the schizophrenia and control groups (P = 0.0006 for the fMRI component; P = 0.001 for the SNP component). In summary, we constructed a framework to identify interactions between brain functional and genetic information; our findings provide a proof-of-concept that genomic SNP factors can be investigated by using endophenotypic imaging findings in a multivariate format.
目前人们对了解基因对健康和紊乱大脑功能的影响很感兴趣。我们使用在听觉奇偶数任务(即在一系列频繁出现的声音中检测不常出现的声音)期间收集的功能磁共振成像(fMRI)数据来评估大脑功能。然后,将与任务相关的成像结果用作潜在的中间表型(内表型),以研究来自单核苷酸多态性(SNP)阵列的基因组因素。我们的目标是将这些基因组因素与正常/异常大脑功能联系起来。我们探索了并行独立成分分析(paraICA)作为一种分析多模态数据的新方法。该方法旨在同时识别每种模态的独立成分及其之间的关系。当对43名健康对照者和20名精神分裂症患者(均为白种人)进行研究时,我们发现一个fMRI成分与一个SNP成分之间的相关性为0.38。这个fMRI成分主要由顶叶激活组成。相关的SNP成分主要由位于基因中的10个SNP贡献,这些基因包括编码烟碱型α-7胆碱能受体、芳香族氨基酸脱羧酶、精神分裂症1中破坏的基因等。fMRI和SNP成分在精神分裂症组和对照组之间的负荷参数上均显示出显著差异(fMRI成分P = 0.0006;SNP成分P = 0.001)。总之,我们构建了一个框架来识别大脑功能和遗传信息之间的相互作用;我们的发现提供了一个概念验证,即可以通过使用多变量形式的内表型成像结果来研究基因组SNP因素。