Deep neural network classification of EEG data in schizophrenia

Zhifen Guo, Lezhou Wu, Yun Li, Beilin Li
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引用次数: 4

Abstract

Schizophrenia(SZ) is a disease of unknown etiology and pathogenesis and is ranked by the World Health Organization as one of the top ten diseases contributing to the global burden of disease. Studying the internal physiological differences between EEG of schizophrenia patients and normal individuals is important for diagnosing and treating schizophrenia in order to determine objective physiological diagnostic criteria. The EEG data of patients with schizophrenia were preprocessed and markers were extracted. The convolutional neural network was used to characterize the difference of distributed structure of data for classification and the classification results were given. The accuracy of the classification was 92%, and the disease classification was effectively performed using deep learning networks.
精神分裂症脑电数据的深度神经网络分类
精神分裂症是一种病因和发病机制不明的疾病,被世界卫生组织列为造成全球疾病负担的十大疾病之一。研究精神分裂症患者脑电图与正常人的内在生理差异,对精神分裂症的诊断和治疗具有重要意义,有助于确定客观的生理诊断标准。对精神分裂症患者的脑电图数据进行预处理并提取标记物。利用卷积神经网络表征数据分布结构的差异进行分类,并给出分类结果。分类准确率为92%,利用深度学习网络进行了有效的疾病分类。
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