Yao Xiaohui, Yan Jingwen, Risacher Shannon, Moore Jason, Saykin Andrew, Shen Li
Radiology and Imaging Sciences, Indiana University, Indianapolis, IN, 46202, USA.
Informatics and Computing, Indiana University, Indianapolis, IN, 46202, USA.
Proc IEEE Int Conf Acoust Speech Signal Process. 2017;2017:6170-6174. doi: 10.1109/ICASSP.2017.7953342. Epub 2017 Jun 19.
Identification of functional modules from biological network is a promising approach to enhance the statistical power of genome-wide association study (GWAS) and improve biological interpretation for complex diseases. The precise functions of genes are highly relevant to tissue context, while a majority of module identification studies are based on tissue-free biological networks that lacks phenotypic specificity. In this study, we propose a module identification method that maps the GWAS results of an imaging phenotype onto the corresponding tissue-specific functional interaction network by applying a machine learning framework. Ridge regression and support vector machine (SVM) models are constructed to re-prioritize GWAS results, followed by exploring hippocampus-relevant modules based on top predictions using GWAS top findings. We also propose a GWAS top-neighbor-based module identification approach and compare it with Ridge and SVM based approaches. Modules conserving both tissue specificity and GWAS discoveries are identified, showing the promise of the proposal method for providing insight into the mechanism of complex diseases.
从生物网络中识别功能模块是一种很有前景的方法,可增强全基因组关联研究(GWAS)的统计效力,并改善对复杂疾病的生物学解释。基因的精确功能与组织背景高度相关,而大多数模块识别研究基于缺乏表型特异性的无组织生物网络。在本研究中,我们提出一种模块识别方法,通过应用机器学习框架将成像表型的GWAS结果映射到相应的组织特异性功能相互作用网络上。构建岭回归和支持向量机(SVM)模型以重新排列GWAS结果的优先级,然后使用GWAS顶级发现基于顶级预测探索与海马体相关的模块。我们还提出了一种基于GWAS顶级邻居的模块识别方法,并将其与基于岭回归和SVM的方法进行比较。识别出既保留组织特异性又保留GWAS发现的模块,表明所提出的方法有望为深入了解复杂疾病的机制提供见解。