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Deep Variational Autoencoder for Modeling Functional Brain Networks and ADHD Identification

机译:用于功能性大脑网络建模和ADHD识别的深度变分自动编码器

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In the neuroimaging and brain mapping communities, researchers have proposed a variety of computational methods and tools to learn functional brain networks (FBNs). Recently, it has already been proven that deep learning can be applied on fMRI data with superb representation power over traditional machine learning methods. Limited by the high-dimension of fMRI volumes, deep learning suffers from the lack of data and overfitting. Generative models are known to have intrinsic ability of modeling small dataset and a Deep Variational Autoencoder (DVAE) is proposed in this work to tackle the challenge of insufficient data and incomplete supervision. The FBNs learned from fMRI were examined to be interpretable and meaningful and it was proven that DVAE has better performance on neuroimaging dataset over traditional models. With an evaluation on ADHD-200 dataset, DVAE performed excellent on classification accuracies on 4 sites.
机译:在神经影像和大脑作图界,研究人员提出了多种计算方法和工具来学习功能性大脑网络(FBN)。最近,已经证明深度学习可以以优于传统机器学习方法的强大表示能力应用于fMRI数据。受限于功能磁共振成像的高维度,深度学习因缺乏数据和过拟合而遭受痛苦。已知生成模型具有对小型数据集进行建模的内在能力,并且在这项工作中提出了深度变分自动编码器(DVAE),以解决数据不足和监管不完善的挑战。经检查,从功能磁共振成像中学到的FBN具有可解释性和意义,并且已证明DVAE在神经影像数据集上的性能优于传统模型。通过对ADHD-200数据集的评估,DVAE在4个站点上的分类精度均表现出色。

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