Department of Biomedical Science and Engineering (BMSE), Institute Integrated Technology (IIT), Gwangju Institute of Science and Technology (GIST), Cheomdan-gwagiro, Gwangju, South Korea.
Department of Psychiatry and Biomedical Research Institute, Pusan National University Hospital, Busan, South Korea.
PLoS One. 2021 May 14;16(5):e0251842. doi: 10.1371/journal.pone.0251842. eCollection 2021.
Electroencephalography (EEG) microstate analysis is a method wherein spontaneous EEG activity is segmented at sub-second levels to analyze quasi-stable states. In particular, four archetype microstates and their features are known to reflect changes in brain state in neuropsychiatric diseases. However, previous studies have only reported differences in each microstate feature and have not determined whether microstate features are suitable for schizophrenia classification. Therefore, it is necessary to validate microstate features for schizophrenia classification. Nineteen microstate features, including duration, occurrence, and coverage as well as thirty-one conventional EEG features, including statistical, frequency, and temporal characteristics were obtained from resting-state EEG recordings of 14 patients diagnosed with schizophrenia and from 14 healthy (control) subjects. Machine-learning based multivariate analysis was used to evaluate classification performance. EEG recordings of patients and controls showed different microstate features. More importantly, when differentiating among patients and controls, EEG microstate features outperformed conventional EEG ones. The performance of the microstate features exceeded that of conventional EEG, even after optimization using recursive feature elimination. EEG microstate features applied with conventional EEG features also showed better classification performance than conventional EEG features alone. The current study is the first to validate the use of microstate features to discriminate schizophrenia, suggesting that EEG microstate features are useful for schizophrenia classification.
脑电微状态分析是一种将自发脑电活动分段到亚秒级水平以分析准稳定状态的方法。特别是,已知四种原型微状态及其特征可以反映神经精神疾病中脑状态的变化。然而,以前的研究仅报告了每个微状态特征的差异,并没有确定微状态特征是否适合精神分裂症分类。因此,有必要验证微状态特征是否适合精神分裂症分类。本研究从 14 名被诊断为精神分裂症的患者和 14 名健康(对照)受试者的静息状态脑电图记录中获得了 19 个微状态特征,包括持续时间、出现和覆盖以及 31 个常规 EEG 特征,包括统计、频率和时间特征。基于机器学习的多元分析用于评估分类性能。患者和对照组的脑电图记录显示出不同的微状态特征。更重要的是,当区分患者和对照组时,脑电图微状态特征的表现优于常规脑电图特征。即使使用递归特征消除进行优化后,微状态特征的性能也优于常规 EEG。应用常规 EEG 特征的脑电图微状态特征也显示出比常规 EEG 特征更好的分类性能。本研究首次验证了使用微状态特征来区分精神分裂症,表明脑电图微状态特征可用于精神分裂症分类。