基于希尔伯特-黄变换和稀疏编码分类从脑电图信号中自动检测强迫症

Yuntao Hong
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摘要

强迫症(OCD)是一种慢性疾病和社会心理障碍,严重降低患者的生活质量,影响其个人和社会关系。因此,这种疾病的早期诊断尤为重要,也引起了研究人员的关注。本研究采用了新的统计差分特征,它适用于脑电图信号,且计算量小。对 26 名强迫症患者和 30 名健康受试者记录的脑电图进行希尔伯特-黄变换,提取瞬时振幅和相位。然后,根据振幅和相位数据计算出修正平均值、方差、中位数、峰度和偏度。接着,计算不同脑电图通道对之间这些统计特征的差异。最后,使用稀疏非负最小二乘分类器检验了特征分类的不同情况。结果显示,根据半球间通道对的振幅和相位计算出的修正平均特征的准确率高达 95.37%。在其他脑叶中,大脑额叶区分两组的准确率也最高,达到 90.52%。此外,与其他脑网络相比,从额叶-顶叶网络提取的特征分类准确率最高(93.42%)。本文提出的方法显著提高了强迫症患者与健康人脑电图分类的准确性,与之前的机器学习技术相比,效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic detection of obsessive-compulsive disorder from EEG signals based on Hilbert-Huang transform and sparse coding classification
Obsessive-compulsive disorder (OCD) is a chronic disease and psychosocial disorder that significantly reduces the quality of life of patients and affects their personal and social relationships. Therefore, early diagnosis of this disorder is of particular importance and has attracted the attention of researchers. In this research, new statistical differential features are used, which are suitable for EEG signals and have little computational load. Hilbert-Huang transform was applied to EEGs recorded from 26 OCD patients and 30 healthy subjects to extract instant amplitude and phase. Then, modified mean, variance, median, kurtosis and skewness were calculated from amplitude and phase data. Next, the difference of these statistical features between various pairs of EEG channels was calculated. Finally, different scenarios of feature classification were examined using the sparse nonnegative least squares classifier. The results showed that the modified mean feature calculated from the amplitude and phase of the interhemispheric channel pairs produces a high accuracy of 95.37%. The frontal lobe of the brain also created the most distinction between the two groups among other brain lobes by producing 90.52% accuracy. In addition, the features extracted from the frontal-parietal network produced the best classification accuracy (93.42%) compared to the other brain networks examined. The method proposed in this paper dramatically improves the accuracy of EEG classification of OCD patients from healthy individuals and produces much better results compared to previous machine learning techniques.
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