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Alzheimer's disease diagnosis via interested structure selection in MRIs

机译:Alzheimer在MRIS中受感兴趣的结构选择的疾病诊断

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Diagnosing Alzheimer's disease (AD) with MRI has attracted more and more attention. This paper proposed a new feature selection method which selected interested structures in MRI brain images based on P-Value. The P-Value can help to obtain the independent principal features. P-Value for every voxel was calculated by T-test between different image classes, then the average value of P-Value for every brain tissue was calculated. The structures which have large value were selected as interested structures, then the AD diagnosis was completed by the collaborative representation based classification (CRC) using these features. The classification accuracy between normal controls (NC) and AD is 92.2%, between NC and Mild Cognitive Impairment (MCI) is 75.0%, between AD and MCI is 83.5%. Compared with existing single mode methods, the proposed classification achieved a better performance.
机译:诊断Alzheimer的疾病(AD)与MRI越来越受到关注。本文提出了一种新的特征选择方法,在基于P值的MRI脑图像中选择了感兴趣的结构。 p值可以帮助获得独立的主体特征。通过不同图像类之间的T检验计算每个体素的p值,然后计算每个脑组织的p值的平均值。选择具有大值的结构作为感兴趣的结构,然后使用这些特征通过基于协作表示的分类(CRC)完成了AD诊断。正常控制(NC)和AD之间的分类准确性为92.2 %,NC和轻度认知障碍(MCI)之间是75.0 %,在AD和MCI之间是83.5 %。与现有的单模方法相比,所提出的分类实现了更好的性能。

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