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Automatic recognition of holistic functional brain networks using iteratively optimized convolutional neural networks (IO-CNN) with weak label initialization

机译:使用迭代优化的卷积神经网络(IO-CNN)自动识别全面函数脑网络,具有弱标签初始化

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fMRI data decomposition techniques have advanced significantly from shallow models such as Independent Component Analysis (ICA) and Sparse Coding and Dictionary Learning (SCDL) to deep learning models such Deep Belief Networks (DBN) and Convolutional Autoencoder (DCAE). However, interpretations of those decomposed networks are still open questions due to the lack of functional brain atlases, no correspondence across decomposed or reconstructed networks across different subjects, and significant individual variabilities. Recent studies showed that deep learning, especially deep convolutional neural networks (CNN), has extraordinary ability of accommodating spatial object patterns, e.g., our recent works using 3D CNN for fMRI-derived network classifications achieved high accuracy with a remarkable tolerance for mistakenly labelled training brain networks. However, the training data preparation is one of the biggest obstacles in these supervised deep learning models for functional brain network map recognitions, since manual labelling requires tedious and time-consuming labours which will sometimes even introduce label mistakes. Especially for mapping functional networks in large scale datasets such as hundreds of thousands of brain networks used in this paper, the manual labelling method will become almost infeasible. In response, in this work, we tackled both the network recognition and training data labelling tasks by proposing a new iteratively optimized deep learning CNN (IO-CNN) framework with an automatic weak label initialization, which enables the functional brain networks recognition task to a fully automatic large-scale classification procedure. Our extensive experiments based on ABIDE-II 1099 brains' fMRI data showed the great promise of our IO-CNN framework. (C) 2018 Elsevier B.V. All rights reserved.
机译:FMRI数据分解技术从浅模型(如独立分量分析(ICA)和稀疏编码和字典学习(SCDL)为深度学习模型等浅模型提出了如此深入的信仰网络(DBN)和卷积AutoEncoder(DCAE)。然而,由于缺乏功能性大脑地图集,对这些分解的网络的解释仍然是开放的问题,而在不同主题的分解或重建网络上没有对应关系,以及重大的个人变量。最近的研究表明,深度学习,尤其是深度卷积神经网络(CNN),具有适应空间物体模式的非凡能力,例如,我们最近使用3D CNN的作品用于FMRI导出的网络分类,具有显着的批判性的高精度,可误认为是错误的标记训练脑网络。然而,培训数据准备是功能脑网络地图识别的这些监督深入学习模型中最大的障碍之一,因为手动标签需要繁琐且耗时的劳动力,有时甚至会引入标签错误。特别是对于在本文中使用的数十万个脑网络中的大规模数据集中映射功能网络,手动标记方法几乎不可取。在响应中,在这项工作中,我们通过提出具有自动弱标签初始化的新的迭代优化的深度学习CNN(IO-CNN)框架来解决网络识别和培训数据标签任务,这使得功能脑网络识别任务能够成为a全自动大规模分类程序。我们基于Abide-II 1099大脑FMRI数据的广泛实验表明了我们IO-CNN框架的巨大希望。 (c)2018 Elsevier B.v.保留所有权利。

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