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Sparse inverse covariance network-based modeling for mild cognitive impairment classification

机译:基于稀疏逆协方差网络的轻度认知障碍分类建模

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Recent advances in neuroimaging techniques have provided great potential for studying mild cognitive impairments (MCI). Brain function connectivity networks constructed from resting-state functional magnetic resonance imaging (rs-fMRI), have been widely used for classifying MCI from normal controls (NC). In this paper, a sparse representation-based method called sparse inverse covariance estimation (SICE) constructs functional brain connectivity and distinguishes MCI patients from NC. One limitation of SICE methodology is its sensitivity to regularization parameters. To address this issue, a nested-cross validation framework was added to tune the regularization parameter through the machine learning process. After acquiring the optimal regularization parameter, a two-stage feature selection approach is performed on the brain network-based feature matrix to select the most discriminative features. Next, a linear support vector machine (SVM) classifier is trained for classification using these selected optimal features. The experiment results indicated a cross-validation accuracy of 91.89% with a sensitivity of 83.3%, and a specificity of 96%. The positive results illustrate the excellent diagnostic power of the SICE method. The proposed method found comparative differences between brain regions in MCI patients versus NC patients, which is consistent with findings in reported literatures.
机译:神经影像技术的最新进展为研究轻度认知障碍(MCI)提供了巨大的潜力。由静止状态功能磁共振成像(rs-fMRI)构建的脑功能连接网络已广泛用于对正常对照(NC)的MCI进行分类。在本文中,一种称为稀疏逆协方差估计(SICE)的基于稀疏表示的方法构造了功能性大脑连通性,并将MCI患者与NC区别开来。 SICE方法的局限性之一是它对正则化参数的敏感性。为了解决此问题,添加了嵌套交叉验证框架,以通过机器学习过程调整正则化参数。在获取最佳正则化参数之后,对基于脑网络的特征矩阵执行两阶段特征选择方法,以选择最具区分性的特征。接下来,使用这些选定的最佳特征训练线性支持向量机(SVM)分类器进行分类。实验结果表明,交叉验证的准确性为91.89%,灵敏度为83.3%,特异性为96%。积极的结果说明了SICE方法的出色诊断能力。所提出的方法发现了MCI患者和NC患者的大脑区域之间的比较差异,这与报道的文献中的发现是一致的。

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