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Deep fMRI: AN end-to-end deep network for classification of fMRI data

机译:深fMRI:用于FMRI数据分类的端到端深网络

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With recent advancements in machine learning, the research community has made tremendous advances towards the classification of neurological disorders from time-series functional MRI signals. However, existing classification techniques rely on hand-crafted features and classical machine learning models. In this paper, we propose an end-to-end model that utilizes the representation learning capability of deep learning to classify a neurological disorder from fMRI data. The proposed DeepFMRI model is comprised of three networks, namely (1) a feature extractor, (2) a similarity network, and (3) a classification network. The model takes fMRI raw time-series signals as input and outputs the predicted labels; and is trained end-to-end using back-propagation. Experimental results on the publicly available ADHD-200 dataset demonstrate that this innovative model outperforms previous state-of-the-art.
机译:随着机器学习的最新进步,研究界对从时序功能MRI信号进行神经系统疾病的分类巨大进步。然而,现有的分类技术依赖于手工制作的特征和经典机器学习模型。在本文中,我们提出了一种端到端模型,利用深度学习的表示学习能力来分类来自FMRI数据的神经系统疾病。所提出的DeepFMRI模型由三个网络组成,即(1)特征提取器,(2)相似网络,和(3)分类网络。该模型采用FMRI原始时序信号作为输入并输出预测标签;并使用反向传播训练结束端到端。公开的ADHD-200数据集上的实验结果表明,这种创新模式优于以前的最先进。

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