Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:7530-7534. doi: 10.1109/EMBC46164.2021.9630977.
Wearable actigraphy sensors have been useful tools for unobtrusive monitoring of sleep. The influence of the composition and characteristics of study groups such as normal sleep versus sleep disorders affecting the efficacy of sleep assessment using actigraphy has not been fully examined. In this study, we present multi-variate sleep models using actigraphy features obtained from wrist-worn sensors and evaluate the efficacy of sleep detection compared to the overnight polysomnography from two unique datasets: overnight actigraphy recordings in a control population of young healthy individuals (n=31) and 24-hour actigraphy recordings in a more heterogeneous population (n=27) comprised of normal and abnormal sleepers. We evaluate the performance of actigraphy derived logistic regression (LR) and random forest (RF) sleep models for both intra-dataset and inter-dataset training and cross-validation. Both the LR and RF sleep models for the healthy sleep dataset show an area under the receiver operating characteristic (AUROC) of 0.85±0.02 in the control sleep dataset among 50 random splits of training and testing evaluations. We find the AUROC performance from the heterogeneous sleep dataset involving sleep disorders to be relatively lower as 0.74±0.05 and 0.80±0.03 for LR and RF sleep models, respectively. Optimal sleep models trained using heterogeneous datasets perform very well when tested with the normal sleep dataset producing accuracy of ∼92%. Our study supports that using a more diverse training set benefits the sleep classifier model to be more generalizable for both healthy and abnormal sleepers.
可穿戴活动传感器是一种用于非侵入性监测睡眠的有用工具。但是,对于使用活动记录仪评估睡眠的功效,研究组的组成和特征(例如正常睡眠与睡眠障碍)的影响尚未得到充分研究。在这项研究中,我们使用从腕戴式传感器获得的活动记录仪特征提出了多变量睡眠模型,并评估了与整夜多导睡眠图相比的睡眠检测功效,该研究使用了两个独特的数据集:来自年轻健康个体的对照人群的整夜活动记录仪记录(n=31)和由正常和异常睡眠者组成的更异质人群的 24 小时活动记录仪记录(n=27)。我们评估了源自活动记录仪的逻辑回归(LR)和随机森林(RF)睡眠模型在数据集内和数据集间训练和交叉验证中的性能。对于健康睡眠数据集,LR 和 RF 睡眠模型在 50 次训练和测试评估的随机拆分中,在对照睡眠数据集中的受试者工作特征曲线下面积(AUROC)分别为 0.85±0.02。我们发现,涉及睡眠障碍的异质睡眠数据集的 AUROC 性能相对较低,LR 和 RF 睡眠模型分别为 0.74±0.05 和 0.80±0.03。使用异质数据集训练的最佳睡眠模型在使用正常睡眠数据集进行测试时表现非常出色,准确率约为 92%。我们的研究支持使用更多样化的训练集使睡眠分类器模型更具通用性,从而适用于健康和异常睡眠者。