a review of statistical-learning imaging genetics
发表时间:2020-03-23 点击次数:
所属单位:计算机科学与技术学院/人工智能学院/软件学院
发表刊物:zidonghua xuebao acta auto. sin.
摘要:the past decade has witnessed the increasing development of multimodal neuroimaging and genomic techniques. imaging genetics, an interdisciplinary field, aims to evaluate and characterize genetic variants in individuals that influence phenotypic measures derived from structural and functional brain images. this strategy is able to reveal the complex mechanisms via macroscopic intermediates from genetic level to cognition and psychiatric disorders in humans. on the other hand, statistical learning methods, as a powerful tool in the data-driven based association study, can make full use of priori-knowledge (inter correlated structure information among imaging and genetic data) for correlation modelling. therefore, the association study can address the correlations between risk gene and brain structure or function, so as to help explore a better mechanistic understanding of behaviors or disordered brain functions. this paper firstly reviews the related background and fundamental work in imaging genetics and then shows the univariate statistical learning approaches for correlation analysis. subsequently, it summarizes the main idea and modeling in gene-imaging association studies based on multivariate statistical learning. finally, this paper presents some prospects of future work. k8凯发集团 copyright © 2018 acta automatica sinica. all rights reserved.
issn号:0254-4156
是否译文:否
发表时间:2018-01-01
合写作者:hao, xiao-ke,li, chan-xiu,yan, jing-wen,shen, li
通讯作者:张道强
发表时间:2018-01-01