Department of Information Technology, Central University of Kashmir, Ganderbal 191201, India.
Institute of Foreign Trade, New Delhi 110016, India.
Sensors (Basel). 2024 Aug 14;24(16):5265. doi: 10.3390/s24165265.
Sleep is a vital physiological process for human health, and accurately detecting various sleep states is crucial for diagnosing sleep disorders. This study presents a novel algorithm for identifying sleep stages using EEG signals, which is more efficient and accurate than the state-of-the-art methods. The key innovation lies in employing a piecewise linear data reduction technique called the Halfwave method in the time domain. This method simplifies EEG signals into a piecewise linear form with reduced complexity while preserving sleep stage characteristics. Then, a features vector with six statistical features is built using parameters obtained from the reduced piecewise linear function. We used the MIT-BIH Polysomnographic Database to test our proposed method, which includes more than 80 h of long data from different biomedical signals with six main sleep classes. We used different classifiers and found that the K-Nearest Neighbor classifier performs better in our proposed method. According to experimental findings, the average sensitivity, specificity, and accuracy of the proposed algorithm on the Polysomnographic Database considering eight records is estimated as 94.82%, 96.65%, and 95.73%, respectively. Furthermore, the algorithm shows promise in its computational efficiency, making it suitable for real-time applications such as sleep monitoring devices. Its robust performance across various sleep classes suggests its potential for widespread clinical adoption, making significant advances in the knowledge, detection, and management of sleep problems.
睡眠对人类健康至关重要,准确检测各种睡眠状态对于诊断睡眠障碍至关重要。本研究提出了一种使用 EEG 信号识别睡眠阶段的新算法,该算法比最先进的方法更高效、准确。关键创新在于在时域中采用称为半波方法的分段线性数据简化技术。该方法将 EEG 信号简化为具有简化复杂性的分段线性形式,同时保留睡眠阶段特征。然后,使用从简化的分段线性函数中获得的参数构建具有六个统计特征的特征向量。我们使用 MIT-BIH 多导睡眠图数据库来测试我们提出的方法,该方法包括来自不同生物医学信号的超过 80 小时的长数据,具有六个主要睡眠类别。我们使用了不同的分类器,发现 K-最近邻分类器在我们提出的方法中表现更好。根据实验结果,考虑到八个记录,我们提出的算法在多导睡眠图数据库上的平均灵敏度、特异性和准确性分别估计为 94.82%、96.65%和 95.73%。此外,该算法在计算效率方面表现出色,使其适用于睡眠监测设备等实时应用。它在各种睡眠类别中的稳健性能表明它具有广泛的临床应用潜力,为睡眠问题的检测和管理提供了重要进展。