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Deep learning applied to electroencephalogram data in mental disorders: A systematic review

机译:深度学习应用于精神障碍中的脑电图数据:系统评价

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摘要

In recent medical research, tremendous progress has been made in the application of deep learning (DL) techniques. This article systematically reviews how DL techniques have been applied to electroencephalogram (EEG) data for diagnostic and predictive purposes in conducting research on mental disorders. EEG-studies on psychiatric diseases based on the ICD-10 or DSM-V classification that used either convolutional neural networks (CNNs) or long-short-term-memory (LSTMs) networks for classification were searched and examined for the quality of the information they contained in three domains: clinical, EEG-data processing, and deep learning. Although we found that the description of EEG acquisition and pre-processing was sufficient in most of the studies, we found, that many of them lacked a systematic characterization of clinical features. Furthermore, many studies used misguided model selection procedures or flawed testing. It is recommended that the study of psychiatric disorders using DL in the future must improve the quality of clinical data and follow state of the art model selection and testing procedures so as to achieve a higher research standard and head toward a clinical significance.
机译:在最近的医学研究中,在深度学习(DL)技术中的应用中取得了巨大进展。本文系统地评估DL技术如何应用​​于脑电图(EEG)数据以进行诊断和预测目的在对精神障碍进行研究中的诊断和预测目的。搜索和研究基于ICD-10或DSM-V分类的基于ICD-10或DSM-V分类的精神疾病研究,并针对信息的质量进行了用于分类的卷积神经网络或长期记忆它们包含在三个域名:临床,脑电图数据处理和深度学习中。虽然我们发现,在大多数研究中,我们发现EEG采集和预处理的描述足够,但其中许多人缺乏对临床特征的系统性质。此外,许多研究使用误导模型选择程序或缺陷的测试。建议将来使用DL的精神疾病研究必须提高临床数据的质量,并遵循艺术模型选择和测试程序的状态,以实现更高的研究标准和头部朝向临床意义。

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