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Classification of MRI and psychological testing data based on support vector machine

机译:基于支持向量机的MRI和心理测验数据分类

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摘要

Alzheimer’s disease (AD) is a progressive, and often fatal, brain disease that causes neurodegeneration, resulting in memory loss as well as other cognitive and behavioral problems. Here, we propose a novel multimodal method combining independent components from MRI measures and clinical assessments to distinguish Alzheimer’s patients or mild cognitive impairment (MCI) subjects from healthy elderly controls. 70 AD subjects (mean age: 77.15 ± 6.2 years), 98 MCI subjects (mean age: 76.91 ± 5.7 years), and 150 HC subjects (mean age: 75.69 ± 3.8 years) were analyzed. Our method includes the following steps: pre-processing, estimating the number of independent components from the MR image data, extracting effective voxels for classification, and classification using a support vector machine (SVM)-based classifier. As a result, with regards to classifying AD from healthy controls, we achieved a classification accuracy of 97.7%, sensitivity of 99.2%, and specificity of 96.7%; for differentiating MCI from healthy controls, we achieved a classification accuracy of 87.8%, a sensitivity of 86.0%, and a specificity of 89.6; these results are better than those obtained with clinical measurements alone (accuracy of 79.5%, sensitivity of 74.0%, and specificity of 85.1%). We found that (1) both AD patients and MCI subjects showed brain tissue loss, but the volumes of gray matter loss in MCI subjects was far less, supporting the notion that MCI is a prodromal stage of AD; and (2) combining gray matter features from MRI and three commonly used measures of mental status, cognitive function improved classification accuracy, sensitivity, and specificity compared with classification using only independent components or clinical measurements.
机译:阿尔茨海默氏病(AD)是一种进行性疾病,通常是致命的脑疾病,可引起神经退行性变,导致记忆力减退以及其他认知和行为问题。在这里,我们提出了一种新颖的多模式方法,该方法结合了MRI测量和临床评估中的独立成分,以将阿尔茨海默氏症患者或轻度认知障碍(MCI)受试者与健康的老年人对照区分开。分析了70名AD受试者(平均年龄:77.15±6.2岁),98名MCI受试者(平均年龄:76.91±5.7岁)和150名HC受试者(平均年龄:75.69±3.8岁)。我们的方法包括以下步骤:预处理,从MR图像数据中估计独立分量的数量,提取有效的体素以进行分类,以及使用基于支持向量机(SVM)的分类器进行分类。结果,关于从健康对照中对AD进行分类,我们实现了97.7%的分类准确度,99.2%的敏感性和96.7%的特异性。为了区分MCI和健康对照,我们获得了87.8%的分类准确度,86.0%的敏感性和89.6的特异性。这些结果优于仅通过临床测量获得的结果(准确性为79.5%,敏感性为74.0%和特异性为85.1%)。我们发现(1)AD患者和MCI受试者均出现脑组织丢失,但MCI受试者的灰质损失量却少得多,这支持了MCI是AD的前驱阶段的观点; (2)结合MRI的灰质特征和三种常用的精神状态指标,与仅使用独立成分或临床指标进行分类相比,认知功能提高了分类准确性,敏感性和特异性。

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