Kucukosmanoglu Murat, Conklin Sarah, Bansal Kanika, Kaya Sena, Anwar Yumna, Dang Quang, Kargosha Golshan, Brooks Justin, Feltch Cody, Banerjee Nilanjan
D-Prime LLC.
University of Maryland.
Res Sq. 2025 May 16:rs.3.rs-6574148. doi: 10.21203/rs.3.rs-6574148/v1.
Cortical arousals are brief brain activations that disrupt sleep continuity and contribute to cardiovascular, cognitive, and behavioral impairments. Although polysomnography is the gold standard for arousal detection, its cost and complexity limit use in long-term or home-based monitoring. This study presents a noninvasive machine learning based framework for detecting cortical arousals using the RestEaze system, a leg-worn wearable that records multimodal physiological signals including accelerometry, gyroscope, photoplethysmography (PPG), and temperature. Across multiple methods tested, including logistic regression, XGBoost, and Random Forest classifiers, we found that features related to movement intensity were the most effective in identifying cortical arousals, while heart rate variability had a comparatively lower impact. The framework was evaluated in 14 children with attention-deficit/hyperactivity disorder (ADHD) who were being assessed for possible restless leg syndrome related sleep disruption. The Random Forest model achieved the best performance, with a ROC AUC of 0.94. For the arousal class specifically, it reached a precision of 0.57, recall of 0.78, and F1-score of 0.65. These findings support the feasibility of wearable-based machine learning for real-world arousal detection, demonstrated here in a pediatric ADHD cohort with sleep-related behavioral concerns.
皮层觉醒是短暂的大脑激活,会破坏睡眠连续性,并导致心血管、认知和行为障碍。尽管多导睡眠图是觉醒检测的金标准,但其成本和复杂性限制了其在长期或家庭监测中的应用。本研究提出了一种基于无创机器学习的框架,用于使用RestEaze系统检测皮层觉醒,RestEaze系统是一种腿部佩戴式可穿戴设备,可记录多模态生理信号,包括加速度计、陀螺仪、光电容积脉搏波描记法(PPG)和温度。在测试的多种方法中,包括逻辑回归、XGBoost和随机森林分类器,我们发现与运动强度相关的特征在识别皮层觉醒方面最有效,而心率变异性的影响相对较小。该框架在14名患有注意力缺陷多动障碍(ADHD)的儿童中进行了评估,这些儿童正在接受与不安腿综合征相关的睡眠中断可能性的评估。随机森林模型表现最佳,受试者工作特征曲线下面积(ROC AUC)为0.94。对于觉醒类别,其精确率达到0.57,召回率达到0.78,F1分数达到0.65。这些发现支持了基于可穿戴设备的机器学习在现实世界中进行觉醒检测的可行性,本研究在一个有睡眠相关行为问题的儿科ADHD队列中进行了验证。