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与失眠相关的脑电图微状态的线性和非线性特征。

Linear and nonlinear features of EEG microstate associated with insomnia.

作者信息

Weng Linman, Jülich Simon Theodor, Lei Xu

机构信息

Sleep and NeuroImaging Center, Faculty of Psychology, Southwest University, Chongqing, 400715, China; Key Laboratory of Cognition and Personality (Southwest University), Ministry of Education, Chongqing, 400715, China.

Sleep and NeuroImaging Center, Faculty of Psychology, Southwest University, Chongqing, 400715, China; Key Laboratory of Cognition and Personality (Southwest University), Ministry of Education, Chongqing, 400715, China.

出版信息

Sleep Med. 2025 Sep;133:106645. doi: 10.1016/j.sleep.2025.106645. Epub 2025 Jun 16.

Abstract

BACKGROUND

Numerous studies have revealed abnormalities in EEG microstate in insomnia, primarily quantified using linear features, whereas nonlinear metrics remain underexplored. This study aimed to compare linear and nonlinear features and further assess their contributions to insomnia classification using machine learning.

METHODS

Five minutes of resting-state EEG was recorded from 55 patients with insomnia (IN, 32 females, 20.057 ± 1.499 years) and 67 healthy controls (HC, 40 females, 20.138 ± 1.944 years). Microstate analysis was performed, and both linear (duration, occurrence, coverage, transition probability, and adjusted transition probability) and nonlinear (excess entropy, entropy rate, Lempel-Ziv complexity, and Hurst exponents) features were extracted for between-group comparisons. Additionally, these features were used to train a support vector machine to classify patients with insomnia and HC.

RESULTS

For linear features, compared with HC, patients with insomnia showed a shorter duration of microstate B, lower occurrence and coverage of microstate B and C, and higher occurrence and coverage of microstate D and E. Moreover, they exhibited abnormal microstate transition dynamics. For nonlinear features, the IN group showed a higher entropy rate and lower excess entropy in the full microstate sequences, whereas a lower entropy rate was observed in the jump sequences. When both linear and nonlinear microstate features were integrated for machine learning-based classification, the model achieved satisfactory performance, yielding an accuracy of 82.8 %.

CONCLUSIONS

In summary, both linear and nonlinear EEG microstate features reflect abnormal brain network dynamics in insomnia and may serve as reliable biomarkers for distinguishing patients from HC.

摘要

背景

大量研究揭示了失眠患者脑电图微状态的异常,主要通过线性特征进行量化,而非线性指标仍未得到充分探索。本研究旨在比较线性和非线性特征,并进一步评估它们在使用机器学习进行失眠分类中的作用。

方法

记录了55例失眠患者(IN组,32名女性,年龄20.057±1.499岁)和67名健康对照者(HC组,40名女性,年龄20.138±1.944岁)的5分钟静息态脑电图。进行了微状态分析,并提取了线性(持续时间、出现率、覆盖率、转移概率和调整后的转移概率)和非线性(过剩熵、熵率、Lempel-Ziv复杂度和赫斯特指数)特征进行组间比较。此外,这些特征被用于训练支持向量机,以对失眠患者和健康对照者进行分类。

结果

对于线性特征,与HC组相比,失眠患者的微状态B持续时间较短,微状态B和C的出现率和覆盖率较低,微状态D和E的出现率和覆盖率较高。此外,他们表现出异常的微状态转移动力学。对于非线性特征,IN组在整个微状态序列中显示出较高的熵率和较低的过剩熵,而在跳跃序列中观察到较低的熵率。当将线性和非线性微状态特征整合用于基于机器学习的分类时,模型取得了令人满意的性能,准确率达到82.8%。

结论

总之,线性和非线性脑电图微状态特征均反映了失眠患者脑网络动力学的异常,可作为区分患者与健康对照者的可靠生物标志物。

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