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Regional analysis of FDG-PET for use in the classification of Alzheimer'S Disease

机译:FDG-PET用于阿尔茨海默氏病分类的区域分析

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We present the first use of multi-region FDG-PET data for classification of subjects from the Alzheimer's Disease Neuroimaging Initiative. Image data were obtained from 69 healthy controls, 71 AD patients, and 147 patients with a baseline diagnosis of MCI. Anatomical segmentations were automatically generated in the native MRI-space of each subject, and the mean signal intensity per cubic millimetre in each region was extracted from the FDG-PET images. Using a support vector machine classifier, we achieve excellent discrimination between AD patients and HC (accuracy 82%), and good discrimination between MCI patients and HC (accuracy 70%). Using FDG-PET, a technique which is often used clinically in the workup of dementia patients, we achieve results which are comparable with those obtained using data from research-quality MRI, or biomarkers obtained invasively from the cerebrospinal fluid.
机译:我们首次使用多区域FDG-PET数据,用于分类来自阿尔茨海默病神经影像序列的受试者。从69例健康对照,71名AD患者获得图像数据,147例MCI的基线诊断患者。在每个受试者的天然MRI空间中自动产生解剖分割,并且从FDG-PET图像中提取每个区域中的每个立方毫米的平均信号强度。使用支持向量机分类器,我们在AD患者和HC(精度82%)之间实现了良好的歧视,并且MCI患者和HC之间的良好歧视(精度为70%)。使用FDG-PET,一种经常在痴呆症患者的掉临床上临床使用的技术,我们实现了与使用研究质量MRI的数据获得的结果相当的结果,或从脑脊液中侵入地获得的生物标志物。

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