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EEG‑based deep learning model for the automatic detection of clinical depression

机译:基于EEG的自动检测临床抑郁的深度学习模型

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Clinical depression is a neurological disorder that can be identified by analyzing the Electroencephalography (EEG) signals. However, the major drawback in using EEG to accurately identify depression is the complexity and variation that exist in the EEG of a depressed individual. There are several strategies for automated depression diagnosis, but they all have flaws, which make the diagnostic task inaccurate. In this paper, a deep model is designed in which an integration of Convolution Neural Network (CNN) and Long Short Term Memory (LSTM) is implemented for the detection of depression. CNN and LSTM are used to learn the local characteristics and the EEG signal sequence, respectively. In the deep learning model, filters in the convolution layer are convolved with the input signal to generate feature maps. All the extracted features are given to the LSTM for it to learn the different patterns in the signal, after which the classification is performed using fully connected layers. LSTM has memory cells to remember the essential features for a long time. It also has different functions to update the weights during training. Testing of the model was done by random splitting technique and obtained 99.07% and 98.84% accuracies for the right and left hemispheres EEG signals, respectively.
机译:临床抑郁是通过分析脑电图(EEG)信号来鉴定的神经障碍。然而,使用EEG来准确识别抑郁症的主要缺点是抑郁个体的脑电图中存在的复杂性和变化。自动抑郁症诊断有几种策略,但它们都有缺陷,使诊断任务不准确。在本文中,设计了深度模型,其中卷积神经网络(CNN)和长短短期存储器(LSTM)的集成用于检测抑郁症。 CNN和LSTM分别用于学习本地特征和EEG信号序列。在深度学习模型中,卷积层中的过滤器与输入信号卷积以生成特征映射。所有提取的特征都被给予LSTM,以便在信号中学习不同的模式,之后使用完全连接的层进行分类。 LSTM有很长时间记住基本特征的内存单元。它还具有不同的功能来更新培训期间的权重。通过随机分裂技术进行模型的测试,并分别获得右侧和左半球的99.07%和98.84%的精度。

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