基于脑电图的潜在情绪障碍的机器学习识别

Yaling Deng, Fan Wu, Lei Du, R. Zhou, Lihong Cao
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引用次数: 4

摘要

情绪在很大程度上影响着我们的日常生活,尤其是那些情绪不好、情绪障碍风险高的人。很难识别它们,但非常重要,这样我们就可以在它们恶化之前进行干预。这项研究使用脑电图信号来识别情绪障碍的高风险人群,而不仅仅是情绪类型。提出的机器学习方法结合多个皮层区域和频带的特征,通过核支持向量机分类器发现情绪障碍的高风险群体。在所有皮质区域和所有频带下,准确率达到95.20%。结果表明,额叶皮层、中央皮层和颞叶皮层对情绪障碍的识别有主要影响,可作为专业诊断的参考信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG-Based Identification of Latent Emotional Disorder Using the Machine Learning Approach
Emotion influences our daily life to a large extent, especially for those who are undergoing bad mood and have high risk for emotional disorders. It is hard to recognize them, but very important so that we can provide intervention before them getting worse. This study used EEG signals to recognize who has high risk for emotional disorders instead of emotion type only. The proposed machine learning method combined the features of multiple cortex areas and frequency bands to find the high risky group for emotional disorders through a kernel SVM classifier. It achieved the accuracy of 95.20%, with all cortex areas and all frequency bands. Results showed that the frontal cortex, central cortex and temporal cortex have a primary influence on identifying emotional disorder and can be used for the reference information for professional diagnose.
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