Objective: To develop and validate an automated method for bedside monitoring of sleep state fluctuations in neonatal intensive care units. Methods: A deep learning -based algorithm was designed and trained using 53 EEG recordings from a long-term (a)EEG monitoring in 30 near-term neonates. The results were validated using an external dataset from 30 polysomnography recordings. In addition to training and validating a single EEG channel quiet sleep detector, we constructed Sleep State Trend (SST), a bedside-ready means for visualizing classifier outputs. Results: The accuracy of quiet sleep detection in the training data was 90%, and the accuracy was comparable (85-86%) in all bipolar derivations available from the 4-electrode recordings. The algorithm generalized well to an external dataset, showing 81% overall accuracy despite different signal derivations. SST allowed an intuitive, clear visualization of the classifier output. Conclusions: Fluctuations in sleep states can be detected at high fidelity from a single EEG channel, and the results can be visualized as a transparent and intuitive trend in the bedside monitors. Significance: The Sleep State Trend (SST) may provide caregivers a real-time view of sleep state fluctuations and its cyclicity.
翻译:目标: 开发和验证新生儿特护单位睡眠状态波动的床边自动监测方法; 方法: 利用长期(a) 30个近期新生儿的EEEG监测结果,设计并培训了53个EEEG记录,使用长期(a) EEEG记录,设计并培训了53个EEEG记录; 使用30个多光谱记录的外部数据集验证了结果; 除了培训和验证单一EEEEG频道静默睡眠探测器外,我们还建造了睡眠状态趋势(SST),这是可视化分类输出的一个工具。 结果:培训数据中静默睡眠检测的准确度为90%,而所有4-电子记录中双极衍生结果的准确性(85-86%)是可比的(85-86%)。 算法普遍适用于外部数据集,显示81%的总体准确性,尽管有不同的信号衍生结果。 SST允许对分类输出结果进行直观、清晰的视觉化。 结论: 睡眠状态的构造可以从单一EEEG频道中检测出,其结果可以被视为透明、直视、直视、直观的状态。 睡眠状态显示为睡眠状态显示其真实的睡眠变化状态。