School of Psychological Sciences and Turner Institute for Brain and Mental Health, Monash University, Melbourne, Australia.
Cooperative Research Centre for Alertness, Safety and Productivity, Melbourne, Australia.
Sci Adv. 2024 Mar 8;10(10):eadj6834. doi: 10.1126/sciadv.adj6834.
Sleep deprivation enhances risk for serious injury and fatality on the roads and in workplaces. To facilitate future management of these risks through advanced detection, we developed and validated a metabolomic biomarker of sleep deprivation in healthy, young participants, across three experiments. Bi-hourly plasma samples from 2 × 40-hour extended wake protocols (for train/test models) and 1 × 40-hour protocol with an 8-hour overnight sleep interval were analyzed by untargeted liquid chromatography-mass spectrometry. Using a knowledge-based machine learning approach, five consistently important variables were used to build predictive models. Sleep deprivation (24 to 38 hours awake) was predicted accurately in classification models [versus well-rested (0 to 16 hours)] (accuracy = 94.7%/AUC 99.2%, 79.3%/AUC 89.1%) and to a lesser extent in regression ( = 86.1 and 47.8%) models for within- and between-participant models, respectively. Metabolites were identified for replicability/future deployment. This approach for detecting acute sleep deprivation offers potential to reduce accidents through "fitness for duty" or "post-accident analysis" assessments.
睡眠剥夺会增加在道路和工作场所发生严重伤害和死亡的风险。为了通过先进的检测来更好地管理这些风险,我们在三个实验中开发并验证了一种健康年轻参与者睡眠剥夺的代谢组学生物标志物。对来自 2×40 小时延长清醒方案(用于训练/测试模型)和 1×40 小时方案(有 8 小时夜间睡眠间隔)的每两小时一次的血浆样本进行非靶向液相色谱-质谱分析。使用基于知识的机器学习方法,选择五个始终重要的变量来构建预测模型。在分类模型中(与休息良好(0 至 16 小时)相比),准确预测了睡眠剥夺(24 至 38 小时清醒)(准确率=94.7%/AUC99.2%,79.3%/AUC89.1%),在个体内和个体间模型中,回归模型的预测效果略差(分别为=86.1%和 47.8%)。已确定代谢物的可重复性/未来部署方案。这种检测急性睡眠剥夺的方法有可能通过“履行职责能力”或“事故后分析”评估来减少事故。