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Identification of the Early Stage of Alzheimers Disease Using Structural MRI and Resting-State fMRI

机译:使用结构MRI和静态功能MRI识别阿尔茨海默氏病的早期阶段

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Accurate prediction of the early stage of Alzheimer's disease (AD) is important but very challenging. The goal of this study was to utilize predictors for diagnosis conversion to AD based on integrating resting-state functional MRI (rs-fMRI) connectivity analysis and structural MRI (sMRI). We included 177 subjects in this study and aimed at identifying patients with mild cognitive impairment (MCI) who progress to AD, MCI converter (MCI-C), patients with MCI who do not progress to AD, MCI non-converter (MCI-NC), patients with AD, and healthy controls (HC). The graph theory was used to characterize different aspects of the rs-fMRI brain network by calculating measures of integration and segregation. The cortical and subcortical measurements, e.g., cortical thickness, were extracted from sMRI data. The rs-fMRI graph measures were combined with the sMRI measures to construct input features of a support vector machine (SVM) and classify different groups of subjects. Two feature selection algorithms [i.e., the discriminant correlation analysis (DCA) and sequential feature collection (SFC)] were used for feature reduction and selecting a subset of optimal features. Maximum accuracy of 67 and 56% for three-group (“AD, MCI-C, and MCI-NC” or “MCI-C, MCI-NC, and HC”) and four-group (“AD, MCI-C, MCI-NC, and HC”) classification, respectively, were obtained with the SFC feature selection algorithm. We also identified hub nodes in the rs-fMRI brain network which were associated with the early stage of AD. Our results demonstrated the potential of the proposed method based on integration of the functional and structural MRI for identification of the early stage of AD.
机译:准确预测阿尔茨海默氏病(AD)的早期阶段很重要,但非常具有挑战性。这项研究的目的是在整合静息状态功能性MRI(rs-fMRI)连接性分析和结构性MRI(sMRI)的基础上,利用预测因子将诊断转化为AD。我们纳入了这项研究的177名受试者,旨在确定患有AD的轻度认知障碍(MCI),MCI转化者(MCI-C),未发展为AD的MCI患者,MCI非转化者(MCI-NC) ),AD患者和健康对照者(HC)。使用图论通过计算整合和隔离措施来表征rs-fMRI脑网络的不同方面。从sMRI数据中提取皮质和皮质下测量值,例如皮质厚度。将rs-fMRI图形测度与sMRI测度结合起来,以构建支持向量机(SVM)的输入特征,并对不同的受试者组进行分类。两种特征选择算法[即判别相关分析(DCA)和顺序特征收集(SFC)]用于特征约简和选择最佳特征子集。三组(“ AD,MCI-C和MCI-NC”或“ MCI-C,MCI-NC和HC”)和四组(“ AD,MCI-C,使用SFC特征选择算法分别获得了MCI-NC和HC”)分类。我们还确定了rs-fMRI脑网络中与AD早期有关的枢纽节点。我们的结果证明了基于功能性和结构性MRI集成的拟议方法在识别AD早期阶段中的潜力。

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