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Understanding Alzheimer disease’s structural connectivity through explainable AI

机译:了解Alzheimer的疾病结构连通性通过可解释的ai

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In the following work, we use a modified version of deep BrainNet convolutional neural network (CNN) trained on the diffusion weighted MRI (DW-MRI) tractography connectomes of patients with Alzheimer’s Disease (AD) and Mild Cognitive Impairment (MCI) to better understand the structural connectomics of that disease. We show that with a relatively simple connectomic BrainNetCNN used to classify brain images and explainable AI techniques, one can underline brain regions and their connectivity involved in AD. Results reveal that the connected regions with high structural differences between groups are those also reported in previous AD literature. Our findings support that deep learning over structural connectomes is a powerful tool to leverage the complex structure within connectomes derived from diffusion MRI tractography. To our knowledge, our contribution is the first explainable AI work applied to structural analysis of a degenerative disease.
机译:在下面的工作中,我们使用在扩散加权MRI(DW-MRI)患者患者(AD)和轻度认知障碍(MCI)的患者的扩散加权MRI(DW-MRI)牵引器CONCHINGOMS(MCI)进行修改版本。这种疾病的结构助核科。我们表明,使用相对简单的Connectomic BrainnetCNN,用于对脑图像进行分类并说明AI技术,可以强调脑区域及其涉及AD的连接。结果表明,在以前的广告文献中,群体之间具有高结构差异的连接区域。我们的调查结果支持,通过结构Connectmes的深度学习是一种强大的工具,可以利用来自扩散MRI牵引的Connectomes内的复杂结构。据我们所知,我们的贡献是第一个可解释的AI工作,适用于对退行性疾病的结构分析。

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