Automatic classification of cognitive states

C. Cabral, M. Silveira, P. Figueiredo
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引用次数: 0

Abstract

Functional Magnetic Resonance Imaging has established itself as the most powerful technique available today to measure brain activity induced by a perceptual or cognitive state. The inverse problem is considered in this study; given the measured brain activity, our goal is to predict the perceptual state. Machine Learning algorithms were used to address this problem in this work. Multi-subject fMRI data analysis poses a great challenge for the machine learning paradigm, by its characteristics: the low Signal to Noise Ratio (SNR), high dimensionality, small number of examples and inter-subject variability. To address this problem, several methods of classification and feature selection were tested. The main criterion of feature selection was mutual information in a univariate method, but a multivariate feature selection was also proposed. Both a single classifier and an ensemble of classifiers were tested. The ensemble of classifiers approach consisted on training an optimized classifier for each class and then the combination was made. The data analysed was obtained from three multi-subject experiments of visual stimulation with 4 classes of stimuli, at different magnetic field strengths. The ensemble of classifiers performs best for most data sets and methods of feature selection. In summary, the results suggest that a combination of classifiers can perform better than a single classifier, particularly when decoding stimuli associated with specific brain areas.
认知状态的自动分类
功能性磁共振成像已经成为当今最强大的技术,可以用来测量由感知或认知状态引起的大脑活动。本研究考虑了逆问题;根据测量到的大脑活动,我们的目标是预测感知状态。在这项工作中,机器学习算法被用来解决这个问题。多学科fMRI数据分析具有低信噪比(SNR)、高维数、样本数量少、学科间可变性等特点,对机器学习范式提出了巨大挑战。为了解决这个问题,测试了几种分类和特征选择方法。在单变量特征选择的基础上,提出了一种基于互信息的多变量特征选择方法。对单个分类器和集成分类器进行了测试。分类器集成方法是先对每个类别训练一个优化的分类器,然后再进行组合。所分析的数据来自3个多受试者的视觉刺激实验,在不同的磁场强度下,有4类刺激。对于大多数数据集和特征选择方法,分类器的集成表现最好。总之,结果表明,分类器组合比单一分类器表现更好,特别是在解码与特定大脑区域相关的刺激时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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