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An Ensemble of Classifiers Guided by the AAL Brain Atlas for Alzheimer's Disease Detection

机译:由AAL脑图集指导的分类器用于阿尔茨海默氏病的检测

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Detection of Alzheimer's disease based on Magnetic Resonance Imaging (MRI) still is one of the most sought goals in the neuroscientific community. Here, we evaluate a ensemble of classifiers each independently trained with disjoint data extracted from a partition of the brain data volumes performed according to the 116 regions of the Anatomical Automatic Labeling (AAL) brain atlas. Grey-matter probability values from 416 subjects (316 controls and 100 patients) of the OASIS database are estimated, partitioned into AAL regions, and summary statistics per region are computed to create the feature sets. Our objective is to discriminate between control subjects and Alzheimer's disease patients. For validation we performed a leave-one-out process. Elementary classifiers are linear Support Vector Machines (SVM) with model parameter estimated by grid search. The ensemble is composed of one SVM per AAL region, and we test 6 different methods to make the collective decision. The best performance achieved with this approach is 83.6% accuracy, 91.0% sensitivity, 81.3% specificity and 0.86 of area under the ROC curve. Most discriminant regions for some of the collective decision methods are also provided.
机译:基于磁共振成像(MRI)的阿尔茨海默氏病检测仍然是神经科学界最追求的目标之一。在这里,我们评估了分类器的整体,每个分类器都根据从解剖学自动标记(AAL)脑图集的116个区域执行的大脑数据量分区中提取的不相交数据进行了独立训练。估计来自OASIS数据库的416位受试者(316位对照和100位患者)的灰色概率值,将其划分为AAL区域,并计算每个区域的摘要统计信息以创建特征集。我们的目标是区分对照对象和阿尔茨海默氏病患者。为了进行验证,我们执行了留一法的过程。基本分类器是线性支持向量机(SVM),其模型参数由网格搜索估算。该集合由每个AAL区域一个SVM组成,我们测试了6种不同的方法来做出集体决策。用这种方法获得的最佳性能是ROC曲线下的准确度为83.6%,灵敏度为91.0%,特异性为81.3%,面积为0.86。还提供了一些集体决策方法的大多数判别区域。

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