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Classification of SPECT Images of Normal Subjects versus Images of Alzheimer's Disease Patients

机译:正常受试者的SPECT图像与阿尔茨海默氏病患者的图像的分类

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摘要

This work aims at providing a tool to assist the interpretation of SPECT images for the diagnosis of Alzheimer's Disease (AD). Our approach is to test classifiers, which uses the intensity values of the images, without any prior information. Such a classifier is built upon a training set, containing images with two different labels (AD patients and normal subjects). It will then provide a classification for any new unknown image. The main problem to be handled is the small number of available images compared to the large number of features (here the image's voxels): the so-called small sample size problem. We evaluate here the ability of two linear classifiers to correctly label a set of 79 images. Our experiments show promising results. They also show that image classification based on intensity values only is possible and might be used for other applications as well.
机译:这项工作旨在提供一种工具,以帮助解释SPECT图像以诊断阿尔茨海默氏病(AD)。我们的方法是测试分类器,该分类器使用图像的强度值,而无需任何先验信息。这种分类器建立在训练集的基础上,其中包含带有两个不同标签(AD患者和正常受试者)的图像。然后它将为任何新的未知图像提供分类。要处理的主要问题是与大量特征(此处是图像的体素)相比,可用图像数量少:所谓的小样本量问题。我们在这里评估两个线性分类器正确标记一组79张图像的能力。我们的实验显示出令人鼓舞的结果。他们还表明仅基于强度值的图像分类是可能的,并且也可能用于其他应用程序。

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