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Classification of Schizophrenia Patients and Healthy Controls Using ICA of Complex-Valued fMRI Data and Convolutional Neural Networks

机译:使用复杂值fMRI数据和卷积神经网络的ICA对精神分裂症患者和健康对照进行分类

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Deep learning has contributed greatly to functional magnetic resonance imaging (fMRI) analysis, however, spatial maps derived from fMRI data by independent component analysis (ICA), as promising biomarkers, have rarely been directly used to perform individualized diagnosis. As such, this study proposes a novel framework combining ICA and convolutional neural network (CNN) for classifying schizophrenia patients (SZs) and healthy controls (HCs). ICA is first used to obtain components of interest which have been previously implicated in schizophrenia. Functionally informative slices of these components are then selected and labelled. CNN is finally employed to learn hierarchical diagnostic features from the slices and classify SZs and HCs. We use complex-valued fMRI data instead of magnitude fMRI data, in order to obtain more contiguous spatial activations. Spatial maps estimated by ICA with multiple model orders are employed for data argumentation to enhance the training process. Evaluations are performed using 82 resting-state complex-valued fMRI datasets including 42 SZs and 40 HCs. The proposed method shows an average accuracy of 72.65% in the default mode network and 78.34% in the auditory cortex for slice-level classification. When performing subject-level classification based on majority voting, the result shows 91.32% and 98.75% average accuracy, highlighting the potential of the proposed method for diagnosis of schizophrenia and other neurological diseases.
机译:深度学习为功能磁共振成像(fMRI)分析做出了巨大贡献,但是,作为有前途的生物标志物,通过独立成分分析(ICA)从fMRI数据得出的空间图很少直接用于进行个性化诊断。因此,本研究提出了一种将ICA和卷积神经网络(CNN)相结合的新颖框架,用于对精神分裂症患者(SZs)和健康对照(HCs)进行分类。 ICA首先用于获得先前与精神分裂症有关的重要成分。然后选择并标记这些组件的功能丰富的片段。最终,使用CNN从切片中学习分级诊断功能,并对SZ和HC进行分类。为了获得更多连续的空间激活,我们使用复数值函数磁共振成像数据代替幅度函数磁共振成像数据。由ICA估计的具有多个模型阶数的空间图用于数据论证,以增强训练过程。使用包括42个SZ和40个HC的82个静止状态复数值fMRI数据集进行评估。所提出的方法在默认模式网络中显示平均准确度为72.65%,在听觉皮层中的平均准确度为切片级分类。当基于多数投票进行主题级别的分类时,结果显示平均准确性为91.32%和98.75%,突显了该方法在诊断精神分裂症和其他神经系统疾病方面的潜力。

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