Adelaide Institute for Sleep Health, College of Science and Engineering, Flinders University, Adelaide, Australia.
Adelaide Institute for Sleep Health, College of Medicine and Public Health, Flinders University, Adelaide, Australia.
Sleep. 2020 Oct 13;43(10). doi: 10.1093/sleep/zsaa077.
K-complexes (KCs) are a recognized electroencephalography marker of sensory processing and a defining feature of sleep stage 2. KC frequency and morphology may also be reflective of sleep quality, aging, and a range of sleep and sensory processing deficits. However, manual scoring of K-complexes is impractical, time-consuming, and thus costly and currently not well-standardized. Although automated KC detection methods have been developed, performance and uptake remain limited.
The proposed algorithm is based on a deep neural network and Gaussian process, which gives the input waveform a probability of being a KC ranging from 0% to 100%. The algorithm was trained on half a million synthetic KCs derived from manually scored sleep stage 2 KCs from the Montreal Archive of Sleep Study containing 19 healthy young participants. Algorithm performance was subsequently assessed on 700 independent recordings from the Cleveland Family Study using sleep stages 2 and 3 data.
The developed algorithm showed an F1 score (a measure of binary classification accuracy) of 0.78 and thus outperforms currently available KC scoring algorithms with F1 = 0.2-0.6. The probabilistic approach also captured expected variability in KC shape and amplitude within individuals and across age groups.
An automated probabilistic KC classification is well suited and effective for systematic KC detection for a more in-depth exploration of potential relationships between KCs during sleep and clinical outcomes such as health impacts and daytime symptomatology.
K-复合波(KCs)是一种公认的用于感官处理的脑电图标志物,也是睡眠阶段 2 的一个明确特征。KCs 的频率和形态也可能反映睡眠质量、衰老以及一系列睡眠和感官处理缺陷。然而,手动评分 KCs 不切实际、耗时且昂贵,因此目前尚未得到很好的标准化。尽管已经开发出了自动化 KC 检测方法,但性能和采用率仍然有限。
所提出的算法基于深度神经网络和高斯过程,为输入波形分配一个介于 0%到 100%之间的 KC 概率。该算法是在从蒙特利尔睡眠研究档案中手动评分的睡眠阶段 2 KC 中提取的 50 万个合成 KC 上进行训练的,该档案包含 19 名健康的年轻参与者。随后,使用睡眠阶段 2 和 3 数据,在来自克利夫兰家庭研究的 700 个独立记录上评估算法性能。
所开发的算法的 F1 分数(衡量二进制分类准确性的指标)为 0.78,因此优于目前 F1=0.2-0.6 的 KC 评分算法。概率方法还捕获了个体内和年龄组之间 KC 形状和幅度的预期变异性。
自动化概率 KC 分类非常适合用于系统的 KC 检测,以更深入地探索睡眠期间 KCs 与健康影响和日间症状等临床结果之间的潜在关系。