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首页> 外文期刊>International Journal of Neural Systems >Ensemble Deep Learning on Large, Mixed-Site fMRI Datasets in Autism and Other Tasks
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Ensemble Deep Learning on Large, Mixed-Site fMRI Datasets in Autism and Other Tasks

机译:在自闭症和其他任务中的大型混合网站FMRI数据集的集合深度学习

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摘要

Deep learning models for MRI classification face two recurring problems: they are typically limited by low sample size, and are abstracted by their own complexity (the "black box problem"). In this paper, we train a convolutional neural network (CNN) with the largest multi-source, functional MRI (fMRI) connectomic dataset ever compiled, consisting of 43,858 datapoints. We apply this model to a cross-sectional comparison of autism spectrum disorder (ASD) versus typically developing (TD) controls that has proved difficult to characterize with inferential statistics. To contextualize these findings, we additionally perform classifications of gender and task versus rest. Employing class-balancing to build a training set, we trained 3 x 300 modified CNNs in an ensemble model to classify fMRI connectivity matrices with overall AUROCs of 0.6774, 0.7680, and 0.9222 for ASD versus TD, gender, and task versus rest, respectively. Additionally, we aim to address the black box problem in this context using two visualization methods. First, class activation maps show which functional connections of the brain our models focus on when performing classification. Second, by analyzing maximal activations of the hidden layers, we were also able to explore how the model organizes a large and mixed-center dataset, finding that it dedicates specific areas of its hidden layers to processing different covariates of data (depending on the independent variable analyzed), and other areas to mix data from different sources. Our study finds that deep learning models that distinguish ASD from TD controls focus broadly on temporal and cerebellar connections, with a particularly high focus on the right caudate nucleus and paracentral sulcus.
机译:MRI分类的深度学习模型面临两个经常性问题:它们通常受到低样本大小的限制,并通过自己的复杂性(“黑匣子问题”)抽象。在本文中,我们培训了卷积神经网络(CNN),其中包含了最大的多源,功能MRI(FMRI)Connectomic数据集,由43,858个数据点组成。我们将该模型应用于自闭症谱系障碍(ASD)的横截面比较,而且通常开发(TD)对照已经证明难以具有推断统计数据。为了上下文化这些调查结果,我们还在执行性别和任务与休息的分类。使用类平衡来构建培训集,我们在集合模型中培训了3 x 300修改的CNN,分别为ASD,0.7680和0.9222的整体菌音的FMRI连接矩阵分别分别为TD,性别和任务与休息。此外,我们的目标是使用两个可视化方法在此上下文中解决黑盒子问题。首先,类激活图显示了我们模型在执行分类时关注的大脑的功能连接。其次,通过分析隐藏层的最大激活,我们还能够探索模型如何组织一个大型和混合中心数据集,发现它将其隐藏层的特定区域致力于处理不同的数据协变量(取决于独立的数据可变分析),以及混合来自不同来源的数据的其他区域。我们的研究发现,深入学习模型,将ASD从TD控制区分开,广泛地关注时间和小脑连接,右侧尾部和副气囊的右侧特别高。

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