个人信息Personal Information
教授
博士生导师
硕士生导师
性别:女
毕业院校:大连理工大学
学位:博士
所在单位:信息与通信工程学院
学科:信号与信息处理
联系方式:84706002-3326; 84706697
电子邮箱:qhlin@dlut.edu.cn
GROUP INFORMATION GUIDED ICA SHOWS MORE SENSITIVITY TO GROUP DIFFERENCES THAN DUAL-REGRESSION
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论文类型:会议论文
发表时间:2017-04-18
收录刊物:Scopus、EI、CPCI-S
卷号:0
页面范围:362-365
关键字:functional MRI; schizophrenia; group ICA; back-reconstruction; spatio-temporal regression; group information guided ICA
摘要:Prior work has reported that brain functional networks can be utilized to differentiate healthy subjects and patients with mental disorder. Group independent component analysis (GICA) is a widely-used data-driven method for extracting brain functional networks from resting-state functional magnetic resonance imaging (fMRI) data of multiple subjects. GICA approaches estimate the group-level independent components first, then back-reconstruct the subject-specific networks and their associated time courses based on the group-level independent components. To estimate the subject-specific networks, previous studies have employed PCA-based, regression-based (e.g. dual regression or spatio-temporal regression (STR)) and group information guided ICA (GIG-ICA) methods, among which dual regression and GIG-ICA can be used to yield the subject-specific networks for additional subjects. However, it is largely unknown which GICA method is more sensitive to subtle group differences between controls and patients. This paper aims to evaluate the efficacy of identifying biomarkers from the subject-specific networks and time courses estimated from STR and GIG-ICA using fMRI data of healthy controls (HCs) and schizophrenia patients (SZs). Regarding the measures from functional network maps, GIG-ICA revealed markedly greater differences between HCs and SZs than STR. Furthermore, the interaction among networks (i.e. functional network connectivity) also showed more group differences using GIG-ICA method, compared to STR. In summary, our work suggests that while both methods provide similar overall conclusions, GIG-ICA, which estimates individually tuned components based on higher order statistics is more sensitive to group differences and biomarker detection than STR.