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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >A New Constrained Spatiotemporal ICA Method Based on Multi-Objective Optimization for fMRI Data Analysis
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A New Constrained Spatiotemporal ICA Method Based on Multi-Objective Optimization for fMRI Data Analysis

机译:基于多目标优化的约束时空ICA新方法用于fMRI数据分析

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摘要

Compared with independent component analysis (ICA), constrained ICA (CICA) has unique advantages in functional magnetic resonance image (fMRI) data analysis by introducing some priori information into the estimation process. However, there are still some controversies in the current CICA methods, such as how to choose the threshold parameter to restrain the similarity, and how to reduce the accuracy requirements forna priorininformation. In this paper, we propose a new constrained spatiotemporal ICA (CSTICA) method based on the framework of multi-objective optimization, where the inequality constraint of the traditional CICA method is transformed into the objective optimization function of the CSTICA, and both temporal and spatialna priorininformation are included simultaneously. The simulated, hybrid, and real fMRI data experiments are designed to evaluate the performance of the proposed CSTICA method in comparison with the classical ICA and CICA methods. Compared with the traditional CICA methods, the CSTICA has circumvented the problem of threshold parameter selection. Furthermore, the experimental results demonstrate that the source recovery ability of the CSTICA has been improved to a certain extent especially in the cases ofna priorininformation with low accuracies. Meanwhile, the results also indicate that the CSTICA reduces dependency on the accuracy ofna priorininformation.
机译:与独立成分分析(ICA)相比,受约束ICA(CICA)通过在估计过程中引入一些先验信息,在功能磁共振图像(fMRI)数据分析中具有独特的优势。但是,当前的CICA方法仍然存在一些争议,例如如何选择阈值参数来限制相似性,以及如何降低n 先验信息。本文在多目标优化框架的基础上,提出了一种新的约束时空ICA(CSTICA)方法,将传统CICA方法的不等式约束转化为CSTICA的目标优化函数,并在时间和空间上进行了优化。 先验信息同时包含在内。设计了模拟,混合和真实fMRI数据实验,以评估与经典ICA和CICA方法相比,所提出的CSTICA方法的性能。与传统的CICA方法相比,CSTICA避免了阈值参数选择的问题。此外,实验结果表明,特别是在n 准确性较低的先验信息。同时,结果还表明,CSTICA减少了对n 先验信息。

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