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Support Vector Machine for Analyzing Contributions of Brain Regions During Task-State fMRI

机译:支持向量机用于分析任务状态功能磁共振成像期间脑区域的贡献

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摘要

The mainstream method used for the analysis of task functional Magnetic Resonance Imaging (fMRI) data, is to obtain task-related active brain regions based on generalized linear models. Machine learning as a data-driven technical method is increasingly used in fMRI data analysis. The language task data, including math task and story task, of the Human Connectome Project (HCP) was used in this work. We chose a linear support vector machine as a classifier to classify math and story tasks and compared them with the activated brain regions of a SPM statistical analysis. As a result, 13 of the 25 regions used for classification in SVM were activated regions, and 12 were non-activated regions. In particular, the right Paracentral Lobule and right Rolandic Operculum which belong to non-activated regions, contributed most to the classification. Therefore, the differences found in machine learning can provide a new understanding of the physiological mechanisms of brain regions under different tasks.
机译:用于分析任务功能磁共振成像(fMRI)数据的主流方法是基于广义线性模型获得与任务相关的活动性大脑区域。在功能磁共振成像数据分析中,越来越多地将机器学习作为一种数据驱动的技术方法。这项工作使用了人类Connectome项目(HCP)的语言任务数据,包括数学任务和故事任务。我们选择了线性支持向量机作为分类器,对数学和故事任务进行分类,并将其与SPM统计分析的激活大脑区域进行比较。结果,在SVM中用于分类的25个区域中的13个是激活区域,而12个是未激活区域。尤其是,属于未激活区域的右中旁小叶和右Rolandic小眼,对分类的贡献最大。因此,机器学习中发现的差异可以提供对不同任务下大脑区域生理机制的新认识。

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