作者
Yanshan Jing, Weiming Zeng, Nizhuan Wang, Tianlong Ren, Yingchao Shi, Jun Yin, Qi Xu
发表日期
2015/4/1
期刊
computer methods and programs in biomedicine
卷号
119
期号
1
页码范围
9-16
出版商
Elsevier
简介
The goal of our study is to develop a fast parallel implementation of group independent component analysis (ICA) for functional magnetic resonance imaging (fMRI) data using graphics processing units (GPU). Though ICA has become a standard method to identify brain functional connectivity of the fMRI data, it is computationally intensive, especially has a huge cost for the group data analysis. GPU with higher parallel computation power and lower cost are used for general purpose computing, which could contribute to fMRI data analysis significantly. In this study, a parallel group ICA (PGICA) on GPU, mainly consisting of GPU-based PCA using SVD and Infomax-ICA, is presented. In comparison to the serial group ICA, the proposed method demonstrated both significant speedup with 6–11 times and comparable accuracy of functional networks in our experiments. This proposed method is expected to perform the …
引用总数
2015201620172018201920202021243141
学术搜索中的文章
Y Jing, W Zeng, N Wang, T Ren, Y Shi, J Yin, Q Xu - computer methods and programs in biomedicine, 2015