基于注意的卷积递归深度神经网络预测重性抑郁症对重复经颅磁刺激的反应。

IF 6.6 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Neural Systems Pub Date : 2023-02-01 DOI:10.1142/S0129065723500077
Mohsen Sadat Shahabi, Ahmad Shalbaf, Behrooz Nobakhsh, Reza Rostami, Reza Kazemi
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引用次数: 0

摘要

重复经颅磁刺激(rTMS)被认为是治疗重度抑郁症(MDD)的有效方法。然而,由于rTMS的治疗效果不理想,预测对该技术的反应是一项至关重要的任务。我们开发了一个深度学习(DL)模型来分类响应者(R)和无响应者(NR)。为此,我们对34例重度抑郁症患者的治疗前脑电信号进行了评估,并在脑电信号的四个频段提取了所有电极之间的有效连通性(effective connectivity, EC)。将二维EC图放在一起创建一个丰富的连通性图像,并将这些图像的序列馈送到DL模型。然后,基于迁移学习(TL)模型构建深度学习框架,这些模型是预训练的卷积神经网络(CNN),命名为VGG16, Xception和EfficientNetB0。然后,在长短期记忆(LSTM)细胞的基础上增加注意机制,充分利用脑电信号的时空信息。采用留一被试交叉验证(LOSO CV), exception - blstm - attention的准确率为98.86%,特异性为97.73%。这些模型融合为一个基于优化多数投票的集成模型,准确率为99.32%,特异性为98.34%。因此,tl - lstm -注意力模型的集合可以准确预测治疗结果。
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Attention-Based Convolutional Recurrent Deep Neural Networks for the Prediction of Response to Repetitive Transcranial Magnetic Stimulation for Major Depressive Disorder.

Repetitive Transcranial Magnetic Stimulation (rTMS) is proposed as an effective treatment for major depressive disorder (MDD). However, because of the suboptimal treatment outcome of rTMS, the prediction of response to this technique is a crucial task. We developed a deep learning (DL) model to classify responders (R) and non-responders (NR). With this aim, we assessed the pre-treatment EEG signal of 34 MDD patients and extracted effective connectivity (EC) among all electrodes in four frequency bands of EEG signal. Two-dimensional EC maps are put together to create a rich connectivity image and a sequence of these images is fed to the DL model. Then, the DL framework was constructed based on transfer learning (TL) models which are pre-trained convolutional neural networks (CNN) named VGG16, Xception, and EfficientNetB0. Then, long short-term memory (LSTM) cells are equipped with an attention mechanism added on top of TL models to fully exploit the spatiotemporal information of EEG signal. Using leave-one subject out cross validation (LOSO CV), Xception-BLSTM-Attention acquired the highest performance with 98.86% of accuracy and 97.73% of specificity. Fusion of these models as an ensemble model based on optimized majority voting gained 99.32% accuracy and 98.34% of specificity. Therefore, the ensemble of TL-LSTM-Attention models can predict accurately the treatment outcome.

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来源期刊
International Journal of Neural Systems
International Journal of Neural Systems 工程技术-计算机:人工智能
CiteScore
11.30
自引率
28.80%
发文量
116
审稿时长
24 months
期刊介绍: The International Journal of Neural Systems is a monthly, rigorously peer-reviewed transdisciplinary journal focusing on information processing in both natural and artificial neural systems. Special interests include machine learning, computational neuroscience and neurology. The journal prioritizes innovative, high-impact articles spanning multiple fields, including neurosciences and computer science and engineering. It adopts an open-minded approach to this multidisciplinary field, serving as a platform for novel ideas and enhanced understanding of collective and cooperative phenomena in computationally capable systems.
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