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用于自动睡眠分期的专家知识与遗传模糊推理系统的结合

Combination of Expert Knowledge and a Genetic Fuzzy Inference System for Automatic Sleep Staging.

作者信息

Liang Sheng-Fu, Kuo Chih-En, Shaw Fu-Zen, Chen Ying-Huang, Hsu Chia-Hu, Chen Jyun-Yu

出版信息

IEEE Trans Biomed Eng. 2016 Oct;63(10):2108-18. doi: 10.1109/TBME.2015.2510365. Epub 2015 Dec 18.

Abstract

OBJECTIVE

In this paper, the genetic fuzzy inference system based on expert knowledge for automatic sleep staging was developed.

METHODS

Eight features, including temporal and spectrum analyses of the EEG and EMG signals, were utilized as the input variables. The fuzzy rules and the fuzzy sets were constructed based on expert knowledge and the distributions of feature values at different sleep stages. Three experiments were designed to develop and evaluate the proposed system. PSGs of 32 healthy subjects and 16 subjects with insomnia were included in the experiment to develop and evaluate the proposed method. Finally, a complete sleep scoring system integrating two fuzzy inference models with robust performance on various subject groups is developed.

RESULTS

The overall agreement and kappa coefficient of this integrated system applied to PSG data from 8 subjects with good sleep efficiency, 8 subjects with poor sleep efficiency and 8 subjects with insomnia were 86.44 % and 0.81, respectively.

CONCLUSION

Due to the high performance of the proposed system, it is expected to integrate the proposed method with various PSG systems for sleep monitoring in clinical or homecare applications in the future.

SIGNIFICANCE

An automatic sleep staging system integrating knowledge of the experts in scoring of PSG data and the elasticity of fuzzy systems in reasoning and decision making is proposed and the robustness and clinical applicability of the proposed method is demonstrated on data from healthy subjects and subjects with insomnia.

摘要

目的

本文开发了基于专家知识的用于自动睡眠分期的遗传模糊推理系统。

方法

利用脑电图(EEG)和肌电图(EMG)信号的时间和频谱分析等八个特征作为输入变量。基于专家知识以及不同睡眠阶段特征值的分布构建模糊规则和模糊集。设计了三个实验来开发和评估所提出的系统。实验纳入了32名健康受试者和16名失眠受试者的多导睡眠图(PSG)数据,以开发和评估所提出的方法。最后,开发了一个完整的睡眠评分系统,该系统整合了两个在不同受试者群体上具有稳健性能的模糊推理模型。

结果

该集成系统应用于8名睡眠效率良好的受试者、8名睡眠效率较差的受试者和8名失眠受试者的PSG数据时,总体一致性和kappa系数分别为86.44%和0.81。

结论

由于所提出系统的高性能,预计未来可将所提出的方法与各种PSG系统集成,用于临床或家庭护理应用中的睡眠监测。

意义

提出了一种整合PSG数据评分方面专家知识以及模糊系统在推理和决策方面灵活性的自动睡眠分期系统,并在健康受试者和失眠受试者的数据上证明了所提出方法的稳健性和临床适用性。

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