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Diagnostic and Prognostic Classification of Brain Disorders Using Residual Learning on Structural MRI Data*

机译:使用剩余学习在结构MRI数据上使用剩余学习的诊断和预后分类 * / sup>

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In this work, we study the potential of the deep residual neural network (ResNet) architecture to learn abstract neuroanatomical alterations in the structural MRI data by evaluating its diagnostic and prognostic classification performance on two large, independent multi-group (ADNI and BSNIP) neuroimaging datasets. We conduct several binary classification tasks to assess the diagnostic/prognostic performance of the ResNet architecture through a rigorous, repeated and stratified k-fold cross-validation procedure for each of the classification tasks independently. We obtained better than state of the art performance for the clinically most important task in the ADNI dataset analysis, and significantly higher classification accuracies over a standard machine learning method (linear SVM) in each of the ADNI and BSNIP classification tasks. Overall, our results indicate the high potential of this architecture to learn effectual feature representations from structural brain imaging data.
机译:在这项工作中,我们研究了深度残差神经网络(Reset)架构的潜力,通过在两个大型独立的多组(Adni和Bsnip)神经影像上评估其诊断和预后分类性能来学习结构MRI数据中的抽象神经杀菌改变数据集。我们进行多个二进制分类任务,以便通过独立分类任务的严格,重复和分层的k折叠交叉验证程序评估Reset架构的诊断/预后性能。我们比ADNI数据集分析中的临床最重要的任务更好地获得了最重要的现实表现,并且在每个ADNI和BSNIP分类任务中的标准机器学习方法(线性SVM)上的分类精度明显更高。总体而言,我们的结果表明该架构的高潜力,用于学习来自结构脑成像数据的有效特征表示。

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