Sleep is particularly important to the health of infants, children, and adolescents, and sleep scoring is the first step to accurate diagnosis and treatment of potentially life-threatening conditions. But pediatric sleep is severely under-researched compared to adult sleep in the context of machine learning for health, and sleep scoring algorithms developed for adults usually perform poorly on infants. Here, we present the first automated sleep scoring results on a recent large-scale pediatric sleep study dataset that was collected during standard clinical care. We develop a transformer-based model that learns to classify five sleep stages from millions of multi-channel electroencephalogram (EEG) sleep epochs with 78% overall accuracy. Further, we conduct an in-depth analysis of the model performance based on patient demographics and EEG channels. The results point to the growing need for machine learning research on pediatric sleep.
翻译:睡眠对于婴儿、儿童和青少年的健康特别重要,睡眠评分是准确诊断和治疗可能危及生命的条件的第一步。但是,在机器学习健康的背景下,与成人睡眠相比,儿科睡眠严重研究不足,而为成人制定的睡眠评分算法通常对婴儿表现不佳。在这里,我们展示了最近在标准临床护理期间收集的大规模儿科睡眠研究数据集中的第一个自动睡眠评分结果。我们开发了一个基于变压器的模型,该模型将数百万个多通道电子脑图(EEEG)睡眠系统分为五个睡眠阶段,总精确度达78%。此外,我们还深入分析了基于病人人口统计学和脑脑细胞学渠道的模型表现。结果显示,对儿科睡眠进行机器学习研究的需求日益增加。