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A Multichannel 2D Convolutional Neural Network Model for Task-Evoked fMRI Data Classification

机译:用于任务诱发的FMRI数据分类的多通道2D卷积神经网络模型

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Deep learning models have been successfully applied to the analysis of various functional MRI data. Convolutional neural networks (CNN), a class of deep neural networks, have been found to excel at extracting local meaningful features based on their shared-weights architecture and space invariance characteristics. In this study, we propose M2D CNN, a novel multichannel 2D CNN model, to classify 3D fMRI data. The model uses sliced 2D fMRI data as input and integrates multichannel information learned from 2D CNN networks. We experimentally compared the proposed M2D CNN against several widely used models including SVM, 1D CNN, 2D CNN, 3D CNN, and 3D separable CNN with respect to their performance in classifying task-based fMRI data. We tested M2D CNN against six models as benchmarks to classify a large number of time-series whole-brain imaging data based on a motor task in the Human Connectome Project (HCP). The results of our experiments demonstrate the following: (i) convolution operations in the CNN models are advantageous for high-dimensional whole-brain imaging data classification, as all CNN models outperform SVM; (ii) 3D CNN models achieve higher accuracy than 2D CNN and 1D CNN model, but 3D CNN models are computationally costly as any extra dimension is added in the input; (iii) the M2D CNN model proposed in this study achieves the highest accuracy and alleviates data overfitting given its smaller number of parameters as compared with 3D CNN.
机译:深度学习模型已成功应用于对各种功能MRI数据的分析。卷积神经网络(CNN)是一类深神经网络,在基于它们的共享体系结构和空间不变性特征提取局部有意义的特征时被发现。在本研究中,我们提出了一种新型多通道2D CNN模型的M2D CNN,用于对3D FMRI数据进行分类。该模型使用切片的2D FMRI数据作为输入,并集成了从2D CNN网络中学习的多声道信息。我们通过在基于任务的FMRI数据分类方面的性能方面,通过实验将所提出的M2D CNN与包括SVM,1D CNN,2D CNN,3D CNN和3D可分离的CNN相比,包括SVM,1D CNN,2D CNN,3D CNN和3D可分离的CNN。我们将M2D CNN测试为六种模型作为基准,根据人类连接项目(HCP)中的电机任务来分类大量时间序列全脑成像数据。我们的实验结果证明了以下内容:(i)CNN模型中的卷积操作对于高维全脑成像数据分类是有利的,因为所有CNN型号都优于SVM; (ii)3D CNN型号比2D CNN和1D CNN模型实现更高的精度,但3D CNN模型在输入中添加了任何额外的尺寸时,CNN型号昂贵代价高昂; (iii)本研究中提出的M2D CNN模型实现了最高的精度,并减轻了与3D CNN相比的较少数量的参数给出的数据过度拟合。

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