个人信息Personal Information
教授
博士生导师
硕士生导师
主要任职:人力资源处处长(党委教师工作部部长、党委人才办公室主任)【兼党委组织部副部长】
性别:男
毕业院校:上海交通大学
学位:博士
所在单位:生物医学工程学院
学科:生物医学工程. 信号与信息处理. 模式识别与智能系统
电子邮箱:cong@dlut.edu.cn
How to validate similarity in linear transform models of event-related Potentials between experimental conditions?
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论文类型:期刊论文
发表时间:2014-10-30
发表刊物:JOURNAL OF NEUROSCIENCE METHODS
收录刊物:SCIE、PubMed、Scopus
卷号:236
页面范围:76-85
ISSN号:0165-0270
关键字:Event-related potentials; Independent component analysis; Linear transform model; Mapping coefficient
摘要:Background: It is well-known that data of event-related potentials (ERPs) conform to the linear transform model (LTM). For group-level ERP data processing using principal/independent component analysis (PCA/ICA), ERP data of different experimental conditions and different participants are often concatenated. It is theoretically assumed that different experimental conditions and different participants possess the same LTM. However, how to validate the assumption has been seldom reported in terms of signal processing methods.
New method: When ICA decomposition is globally optimized for ERP data of one stimulus, we gain the ratio between two coefficients mapping a source in brain to two points along the scalp. Based on such a ratio, we defined a relative mapping coefficient (RMC). If RMCs between two conditions for an ERP are not significantly different in practice, mapping coefficients of this ERP between the two conditions are statistically identical.
Results: We examined whether the same LTM of ERP data could be applied for two different stimulus types of fearful and happy facial expressions. They were used in an ignore oddball paradigm in adult human participants. We found no significant difference in LTMs (based on ICASSO) of N170 responses to the fearful and the happy faces in terms of RMCs of N170.
Comparison with existing method(s): We found no methods for straightforward comparison.
Conclusions: The proposed RMC in light of ICA decomposition is an effective approach for validating the similarity of LTMs of ERPs between experimental conditions. This is very fundamental to apply group-level PCA/ICA to process ERP data. (C) 2014 Elsevier B.V. All rights reserved.