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Exploiting Discriminative Regions of Brain Slices Based on 2D CNNs for Alzheimer’s Disease Classification

机译:基于Alzheimer疾病分类的2D CNNS利用脑切片的歧视区域

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摘要

Convolutional neural networks (CNNs)-based classifiers improve the accuracy of diagnosis and prediction for Alzheimer's disease (AD). However, exploiting specific brain regions with the AD is essential to understand pathological alteration in the AD and monitor its progression. This paper aims to construct novel AD classification models which have a good performance and interpretation on AD diagnosis. We propose the three classifiers including a simple broaden plain CNNs (SBPCNNs), a major slice-assemble CNNs (SACNNs) and a multi-slice CNNs (MSCNNs), which record the slice positions but have fewer parameters. Specifically, we integrate the ranking and the random forest methods to find the discriminative region that is consistent with domain knowledge about the AD. The results of the visualization explanation of pixel and slice level deliver a clearer understanding of the AD to specialists. The experimental results indicate that the proposed models are meaningful for AD classification.
机译:卷积神经网络(CNNS)基础分类器提高了阿尔茨海默病(AD)的诊断和预测的准确性。然而,利用广告利用特定的大脑区域对于了解广告的病理改革并监测其进展至关重要。本文旨在构建新的广告分类模型,对广告诊断具有良好的性能和解释。我们提出了三个分类器,包括简单的拓宽CNNS(SBPCNNS),主要切片组装CNNS(SACNNS)和多切片CNNS(MSCNNS),其记录切片位置但具有较少的参数。具体而言,我们整合排名和随机林方法,找到与关于广告的域知识一致的歧视区域。像素和切片级别的可视化解释结果可以更清楚地了解广告给专家。实验结果表明,拟议的模型对广告分类有意义。

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