Department of Electrical Engineering, University of Technology Eindhoven, Eindhoven, The Netherlands.
Physiol Meas. 2019 Jun 4;40(5):055003. doi: 10.1088/1361-6579/ab1224.
To date, mainly obtrusive methods (e.g. adhesive electrodes in electroencephalography or electrocardiography) have been necessary to determine the preterm infant sleep states. As any obtrusive measure should be avoided in preterm infants because of their immature skin development, we investigated the possibility of automated sleep staging using electrocardiograph signals from non-adhesive capacitive electrocardiography.
Capacitive electrocardiography data from eight different patients with a mean gestational age of 30 ± 2.5 weeks are compared to manually annotated reference signals from classic adhesive electrodes. The sleep annotations were performed by two trained observers based on behavioral observations.
Based on these annotations, classification performance of the preterm infant active and quiet sleep states, based on capacitive electrocardiography signals, showed a kappa value of 0.56 ± 0.20. Adding wake and caretaking into the classification, a performance of kappa 0.44 ± 0.21 was achieved. In-between sleep state performance showed a classification performance of kappa 0.36 ± 0.12. Lastly, a performance for all sleep states of kappa 0.35 ± 0.17 was attained.
Capacitive electrocardiography signals can be utilized to classify the central preterm infant sleep states, active and quiet sleep. With further research based on our results, automated classification of sleep states can become an essential instrument in future intensive neonatal care for continuous brain maturation monitoring. In particular, being able to use capacitive electrocardiography for continuous monitoring is a significant contributor to reducing disruption and harm for this extremely fragile patient group.
迄今为止,确定早产儿睡眠状态主要需要使用侵入性方法(例如脑电图或心电图中的粘性电极)。由于早产儿的皮肤发育不成熟,任何侵入性措施都应避免,因此我们研究了使用非粘性电容心电图信号自动进行睡眠分期的可能性。
将八个不同患者的电容心电图数据与平均胎龄为 30±2.5 周的经典粘性电极的手动注释参考信号进行比较。睡眠注释由两名经过培训的观察者根据行为观察进行。
基于这些注释,基于电容心电图信号的早产儿活跃和安静睡眠状态的分类性能,kappa 值为 0.56±0.20。将清醒和护理添加到分类中,kappa 值为 0.44±0.21。中间睡眠状态的性能表现为 kappa 值 0.36±0.12。最后,所有睡眠状态的性能均达到 kappa 值 0.35±0.17。
电容心电图信号可用于分类中央早产儿的睡眠状态,即活跃睡眠和安静睡眠。根据我们的结果进行进一步研究,睡眠状态的自动分类可以成为未来新生儿重症监护中连续脑成熟监测的重要工具。特别是能够使用电容心电图进行连续监测,这对减少对这个极其脆弱的患者群体的干扰和伤害有重大意义。