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Gradient self-weighting linear collaborative discriminant regression classification for human cognitive states classification

机译:梯度自加权线性协作判别判别分类对人的认知状态分类

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摘要

In recent decades, huge volumes of data are available to inspect human brain activities for disease detection. Specifically, the functional magnetic resonance imaging (fMRI) is a powerful tool to enquire the brain functions. In fMRI, identifying the active patterns of the specific cognitive state is one of the emerging concerns for neuroscientists. The high-dimensional features make fMRI data difficult for mining and classification, because if the volume of the data space increases, then the acquired data become sparse, which leads to the "curse of dimensionality" problem. To address this concern, a new feature selection and classification methodology was proposed for classifying the human cognitive states from fMRI data. Initially, the fMRI data were collected from the StarPlus and Haxby datasets. Then, k-nearest neighbors algorithm (k-NN)-based genetic algorithm was developed to choose the optimal voxels from the active region of interests. The proposed approach selects the data to feature subsets based on k-NN algorithm, so the data volume was effectively reduced and the voxel information was maintained significantly. The most informative voxels were given as the input for gradient self-weighting that produces an optimal weight value. Respective weight value was added to the projection matrix of linear collaborative discriminant regression classification for identifying the future projection matrix that reduces the error between two individual voxels in subspace. The experimental outcome shows that the proposed methodology improved the accuracy in fMRI data classification up to 0.7-23% compared to the existing methods.
机译:近几十年来,巨大的数据可用于检查人体大脑活动以进行疾病检测。具体地,功能磁共振成像(FMRI)是询问大脑功能的强大工具。在FMRI中,识别特定认知状态的活动模式是神经科学家的新出现问题之一。高维特征使FMRI数据难以进行挖掘和分类,因为如果数据空间的体积增加,则获取的数据变得稀疏,从而导致“维度的诅咒”问题。为了解决这一问题,提出了一种新的特征选择和分类方法,用于将人类认知状态与FMRI数据进行分类。最初,FMRI数据从Starplus和Haxby数据集收集。然后,开发了基于K-CircleS邻居算法(K-NN)基础的遗传算法,以从活跃的感兴趣区域选择最佳体素。所提出的方法基于K-NN算法选择数据到特征子集,因此数据量有效地减少,并且体积显示了虚拟性。最具信息丰富的体素被给予梯度自重加权的输入,产生最佳的重量值。将相应的权重值添加到线性协作判别回归分类的投影矩阵中,用于识别未来投影矩阵,该投影矩阵减少了子空间中两个单个体素之间的误差。实验结果表明,与现有方法相比,所提出的方法提高了FMRI数据分类的准确性,高达0.7-23%。

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