MRI方案对阿尔茨海默病检测的影响

Saruar Alam, Len Hamey, K. Ho-Shon
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引用次数: 0

摘要

阿尔茨海默病(AD)可以使用基于磁共振成像(MRI)的特征和监督分类器来检测。阿尔茨海默病患者的皮质下和心室容积变化。这些体积可以通过FreeSurfer和基于多图集的似然融合(MALF)算法等工具从MRI中提取。研究使用许多医学成像中心的核磁共振成像。然而,各个中心通常使用不同的MRI协议进行脑部扫描。协议差异包括具有不同操作参数的不同扫描仪模型。有些扫描器型号有不同的场强。对具有不同协议的多中心MR主题图像进行分类的一个关键因素是不同的扫描仪模型如何影响特征的提取,以及随后监督分类器的分类性能。我们研究了FreeSurfer和基于MALF的体积特征以及径向基函数支持向量机和极限学习机在不同成像协议下的分类性能。我们还对FreeSurfer和MALF进行了研究,在不同的方案下,哪个大脑区域对疾病的检测最有效。我们的研究结果表明,在区分AD、轻度认知障碍和正常对照时,具有相同或不同场强的扫描仪模型在分类性能上存在微小差异。我们还观察到在最有效的大脑区域排名顺序上的差异。
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Impact of MRI Protocols on Alzheimer's Disease Detection
Alzheimer's disease (AD) can be detected using magnetic resonance imaging (MRI) based features and supervised classifiers. The subcortical and ventricular volumes change for AD patients. These volumes can be extracted from MRI by tools such as FreeSurfer and the multi-atlas-based likelihood fusion (MALF) algorithm. Studies use MRI from many medical imaging centers. However, individual centers typically use distinctive MRI protocols for brain scanning. The protocol differences include different scanner models with various operating parameters. Some scanner models have different field strengths. A key factor in classifying multicentric MR subject images having different protocols is how different scanner models affect the extraction of feature, and the subsequent classification performance of a supervised classifier. We have investigated the classification performance of FreeSurfer and MALF based volume features together with Radial Basis Function Support Vector Machine and Extreme Learning Machine across different imaging protocols. We have also investigated for both FreeSurfer and MALF, which brain regions are most effective for the detection of the disease under different protocols. Our study result indicates marginal differences in classification performance across scanner models with the same or different field strengths when differentiating AD, Mild Cognitive Impairment, and Normal Controls. We have also observed differences in ranking order of the most effective brain regions.
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