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Classifying Alzheimer's disease using probability distribution distance of fractional anisotropy and trace from diffusion tensor imaging in combination with whole-brain segmentations

机译:使用分数各向异性的概率分布和痕量与全脑细分结合的概率分布概率分布概率分布距离

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Using diffusion tensor imaging (DTI), we developed and validated an automated classification procedure for Alzheimer's disease (AD); specifically, DTI-derived fractional anisotropy (FA) and trace images from 22 AD subjects and 15 healthy control (HC) subjects were used. A total of four types of region of interest (ROI)-based features were tested, including the probability distribution distances of FA and trace images, within each of 162 whole-brain segmented ROIs, under both discrete and continuous intensity distribution modeling. The continuous modeling was conducted through a mixture of Gaussians, the parameters of which were estimated using maximum likelihood estimation via the expectation-maximization algorithm. We used principal component analysis (PCA) to reduce the dimension of the feature space and then linear discriminant analysis and support vector machine (SVM) for automated classification. According to our 10-times 10-fold cross-validation experiments, using the combination of PCA and linear SVM, the continuous distance of the trace image yielded the best classification performance with the accuracy being 87.84%±3.43% and the area under the receiver operating characteristic curve being 0.9121±0.0176. indicating its great potential as an effective AD biomarker.
机译:使用扩散张量成像(DTI),我们开发并验证了Alzheimer疾病的自动分类程序(AD);具体地,使用来自22个AD受试者和15个健康对照(HC)受试者的DTI衍生的分数各向异性(FA)和痕量图像。测试了总共有四种感兴趣的感兴趣区域(ROI)的特征,包括FA和跟踪图像的概率分布距离,在162个全脑细分的ROI中的每一个,包括离散和连续的强度分布模拟。连续建模通过高斯的混合物,其参数通过期望最大化算法使用最大似然估计来估计。我们使用了主成分分析(PCA)来减少特征空间的尺寸,然后是线性判别分析和支持向量机(SVM)进行自动分类。根据我们的10倍10倍的交叉验证实验,采用PCA和线性SVM的组合,迹线图像的连续距离产生了最佳分类性能,精度为87.84%±3.43%和接收器下的区域操作特性曲线为0.9121±0.0176。表示其具有有效广告生物标志物的巨大潜力。

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