Prediction of treatment response in major depressive disorder using a hybrid of convolutional recurrent deep neural networks and effective connectivity based on EEG signal.

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-06-01 Epub Date: 2024-02-15 DOI:10.1007/s13246-024-01392-2
Seyed Morteza Mirjebreili, Reza Shalbaf, Ahmad Shalbaf
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Abstract

In this study, we have developed a novel method based on deep learning and brain effective connectivity to classify responders and non-responders to selective serotonin reuptake inhibitors (SSRIs) antidepressants in major depressive disorder (MDD) patients prior to the treatment using EEG signal. The effective connectivity of 30 MDD patients was determined by analyzing their pretreatment EEG signals, which were then concatenated into delta, theta, alpha, and beta bands and transformed into images. Using these images, we then fine tuned a hybrid Convolutional Neural Network that is enhanced with bidirectional Long Short-Term Memory cells based on transfer learning. The Inception-v3, ResNet18, DenseNet121, and EfficientNet-B0 models are implemented as base models. Finally, the models are followed by BiLSTM and dense layers in order to classify responders and non-responders to SSRI treatment. Results showed that the EfficiencyNet-B0 has the highest accuracy of 98.33, followed by DensNet121, ResNet18 and Inception-v3. Therefore, a new method was proposed in this study that uses deep learning models to extract both spatial and temporal features automatically, which will improve classification results. The proposed method provides accurate identification of MDD patients who are responding, thereby reducing the cost of medical facilities and patient care.

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利用基于脑电信号的卷积递归深度神经网络和有效连接的混合方法预测重度抑郁症的治疗反应。
在这项研究中,我们开发了一种基于深度学习和大脑有效连接性的新方法,利用脑电图信号对重度抑郁症(MDD)患者在治疗前对选择性血清素再摄取抑制剂(SSRIs)抗抑郁药的应答者和非应答者进行分类。通过分析 30 名重度抑郁症患者治疗前的脑电信号,确定了他们的有效连通性,然后将这些信号串联成 delta、theta、alpha 和 beta 波段并转换成图像。利用这些图像,我们微调了混合卷积神经网络,该网络在迁移学习的基础上增强了双向长短期记忆单元。我们将 Inception-v3、ResNet18、DenseNet121 和 EfficientNet-B0 模型作为基础模型。最后,这些模型由 BiLSTM 和密集层跟进,以便对 SSRI 治疗的应答者和非应答者进行分类。结果显示,EfficiencyNet-B0 的准确率最高,达到 98.33,其次是 DensNet121、ResNet18 和 Inception-v3。因此,本研究提出了一种新方法,利用深度学习模型自动提取空间和时间特征,从而提高分类结果。所提出的方法可以准确识别有反应的 MDD 患者,从而降低医疗设施和患者护理的成本。
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CiteScore
8.40
自引率
4.50%
发文量
110
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