Zhang Dandan, Peng Zheng, Van Pul Carola, Overeem Sebastiaan, Chen Wei, Dudink Jeroen, Andriessen Peter, Aarts Ronald M, Long Xi
Department of Electrical Engineering, Eindhoven University of Technology, 5612 AP Eindhoven, The Netherlands.
Department of Personal and Preventive Care, Philips Research, 5556 AE Eindhoven, The Netherlands.
Children (Basel). 2023 Nov 7;10(11):1792. doi: 10.3390/children10111792.
The classification of sleep state in preterm infants, particularly in distinguishing between active sleep (AS) and quiet sleep (QS), has been investigated using cardiorespiratory information such as electrocardiography (ECG) and respiratory signals. However, accurately differentiating between AS and wake remains challenging; therefore, there is a pressing need to include additional information to further enhance the classification performance. To address the challenge, this study explores the effectiveness of incorporating video-based actigraphy analysis alongside cardiorespiratory signals for classifying the sleep states of preterm infants. The study enrolled eight preterm infants, and a total of 91 features were extracted from ECG, respiratory signals, and video-based actigraphy. By employing an extremely randomized trees (ET) algorithm and leave-one-subject-out cross-validation, a kappa score of 0.33 was achieved for the classification of AS, QS, and wake using cardiorespiratory features only. The kappa score significantly improved to 0.39 when incorporating eight video-based actigraphy features. Furthermore, the classification performance of AS and wake also improved, showing a kappa score increase of 0.21. These suggest that combining video-based actigraphy with cardiorespiratory signals can potentially enhance the performance of sleep-state classification in preterm infants. In addition, we highlighted the distinct strengths and limitations of video-based actigraphy and cardiorespiratory data in classifying specific sleep states.
早产婴儿睡眠状态的分类,尤其是区分主动睡眠(AS)和安静睡眠(QS),已经通过使用诸如心电图(ECG)和呼吸信号等心肺信息进行了研究。然而,准确区分AS和清醒状态仍然具有挑战性;因此,迫切需要纳入额外信息以进一步提高分类性能。为应对这一挑战,本研究探讨了将基于视频的活动记录仪分析与心肺信号相结合用于早产婴儿睡眠状态分类的有效性。该研究招募了8名早产婴儿,共从心电图、呼吸信号和基于视频的活动记录仪中提取了91个特征。通过采用极端随机树(ET)算法和留一法交叉验证,仅使用心肺特征对AS、QS和清醒状态进行分类时,kappa评分达到了0.33。当纳入8个基于视频的活动记录仪特征时,kappa评分显著提高到0.39。此外,AS和清醒状态的分类性能也有所改善,kappa评分提高了0.21。这些结果表明,将基于视频的活动记录仪与心肺信号相结合可能会提高早产婴儿睡眠状态分类的性能。此外,我们强调了基于视频的活动记录仪和心肺数据在特定睡眠状态分类中的独特优势和局限性。