Department of Computer Science and Information Engineering, National University of Kaohsiung, Kaohsiung 811, Taiwan, ROC.
Biomed Eng Online. 2012 Aug 21;11:52. doi: 10.1186/1475-925X-11-52.
Approximately one-third of the human lifespan is spent sleeping. To diagnose sleep problems, all-night polysomnographic (PSG) recordings including electroencephalograms (EEGs), electrooculograms (EOGs) and electromyograms (EMGs), are usually acquired from the patient and scored by a well-trained expert according to Rechtschaffen & Kales (R&K) rules. Visual sleep scoring is a time-consuming and subjective process. Therefore, the development of an automatic sleep scoring method is desirable.
The EEG, EOG and EMG signals from twenty subjects were measured. In addition to selecting sleep characteristics based on the 1968 R&K rules, features utilized in other research were collected. Thirteen features were utilized including temporal and spectrum analyses of the EEG, EOG and EMG signals, and a total of 158 hours of sleep data were recorded. Ten subjects were used to train the Discrete Hidden Markov Model (DHMM), and the remaining ten were tested by the trained DHMM for recognition. Furthermore, the 2-fold cross validation was performed during this experiment.
Overall agreement between the expert and the results presented is 85.29%. With the exception of S1, the sensitivities of each stage were more than 81%. The most accurate stage was SWS (94.9%), and the least-accurately classified stage was S1 (<34%). In the majority of cases, S1 was classified as Wake (21%), S2 (33%) or REM sleep (12%), consistent with previous studies. However, the total time of S1 in the 20 all-night sleep recordings was less than 4%.
The results of the experiments demonstrate that the proposed method significantly enhances the recognition rate when compared with prior studies.
人类寿命的大约三分之一用于睡眠。为了诊断睡眠问题,通常会从患者身上获取整夜多导睡眠图(PSG)记录,包括脑电图(EEG)、眼电图(EOG)和肌电图(EMG),并由经过良好训练的专家根据雷切夫斯基和卡尔斯(R&K)规则进行评分。视觉睡眠评分是一个耗时且主观的过程。因此,开发一种自动睡眠评分方法是可取的。
测量了二十名受试者的 EEG、EOG 和 EMG 信号。除了根据 1968 年 R&K 规则选择睡眠特征外,还收集了其他研究中使用的特征。共利用了 13 种特征,包括 EEG、EOG 和 EMG 信号的时间和频谱分析,共记录了 158 小时的睡眠数据。其中 10 名受试者用于训练离散隐马尔可夫模型(DHMM),其余 10 名受试者则由训练好的 DHMM 进行测试以进行识别。此外,在实验过程中还进行了 2 倍交叉验证。
专家和所提出方法之间的总体一致性为 85.29%。除了 S1 之外,每个阶段的灵敏度均超过 81%。最准确的阶段是 SWS(94.9%),分类准确率最低的阶段是 S1(<34%)。在大多数情况下,S1 被分类为觉醒(21%)、S2(33%)或 REM 睡眠(12%),与之前的研究一致。然而,在 20 次整夜睡眠记录中,S1 的总时间不到 4%。
实验结果表明,与之前的研究相比,所提出的方法显著提高了识别率。