18F-FDG in Positron Emission Tomography (PET) medical imaging modality. In this work an a'/> SVM-based diagnosis of the Alzheimer's disease using 18F-FDG PET with Fisher discriminant rate
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SVM-based diagnosis of the Alzheimer's disease using 18F-FDG PET with Fisher discriminant rate

机译:使用具有Fisher判别率的18F-FDG PET基于SVM的阿尔茨海默氏病诊断

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Alzheimer's disease (AD) is characterized by impaired glucose metabolism. It can be detected using 18F-FDG in Positron Emission Tomography (PET) medical imaging modality. In this work an automatic method for diagnosis of AD based on region of interest (ROI) is presented. Brain image of subject is automatically parcellated into 116 pre-defined ROIs using Montreal Neurological Imaging (MNI) atlas. Discovering the most discriminative regions in atlas-based approach of AD is very important. Because of the t-test, feature selection scheme widely used in medical science, is not a sensitive measure, in this study Fisher linear discriminant ratio (FDR) is evaluated. Base on features extracted from most discriminative regions, a support vector machine is adapted to discriminant normal control (NC) from AD (or mild cognitive impairment (MCI)). For classifying AD from NC, our proposed method achieves 88.1% of classification accuracy, while the accuracy of voxel-wise and t-test methods are only 79.2% and 84.4% respectively. Also proposed method yields a higher diagnostic accuracy in discriminate NC and MCI.
机译:阿尔茨海默氏病(AD)的特征是葡萄糖代谢受损。可以在正电子发射断层扫描(PET)医学成像模式中使用 18 F-FDG进行检测。在这项工作中,提出了一种基于关注区域(ROI)的AD诊断的自动方法。使用蒙特利尔神经影像学(MNI)地图集将受试者的脑图像自动分成116个预定义的ROI。在基于图集的AD方法中发现最有区别的区域非常重要。由于进行了t检验,医学领域中广泛使用的特征选择方案并不是一种敏感的测量方法,因此在本研究中对Fisher线性判别率(FDR)进行了评估。基于从大多数区分区域中提取的特征,支持向量机适用于区分AD(或轻度认知障碍(MCI))的正常对照(NC)。对于从NC中对AD进行分类,我们提出的方法可达到88.1%的分类精度,而体素法和t检验方法的准确性分别仅为79.2%和84.4%。还提出的方法在区分NC和MCI方面具有更高的诊断准确性。

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