McMahon Marcus, Goldin Jeremy, Kealy Elizabeth Susan, Wicks Darrel Joseph, Zilberg Eugene, Freeman Warwick, Aliahmad Behzad
Department of Respiratory and Sleep Medicine, Epworth Hospital, Richmond, Victoria, Australia and Department of Respiratory and Sleep Medicine, Austin Health, Heidelberg, Victoria, Australia.
Department of Respiratory and Sleep Medicine, Royal Melbourne Hospital, Parkvile, Victoria, Australia.
Nat Sci Sleep. 2024 Jul 22;16:1027-1043. doi: 10.2147/NSS.S463026. eCollection 2024.
To investigate accuracy of the sleep staging algorithm in a new miniaturized home sleep monitoring device - Compumedics® Somfit. Somfit is attached to patient's forehead and combines channels specified for a pulse arterial tonometry (PAT)-based home sleep apnea testing (HSAT) device with the neurological signals. Somfit sleep staging deep learning algorithm is based on convolutional neural network architecture.
One hundred and ten participants referred for sleep investigation with suspected or preexisting obstructive sleep apnea (OSA) in need of a review were enrolled into the study involving simultaneous recording of full overnight polysomnography (PSG) and Somfit data. The recordings were conducted at three centers in Australia. The reported statistics include standard measures of agreement between Somfit automatic hypnogram and consensus PSG hypnogram.
Overall percent agreement across five sleep stages (N1, N2, N3, REM, and wake) between Somfit automatic and consensus PSG hypnograms was 76.14 (SE: 0.79). The percent agreements between different pairs of sleep technologists' PSG hypnograms varied from 74.36 (1.93) to 85.50 (0.64), with interscorer agreement being greater for scorers from the same sleep laboratory. The estimate of kappa between Somfit and consensus PSG was 0.672 (0.002). Percent agreement for sleep/wake discrimination was 89.30 (0.37). The accuracy of Somfit sleep staging algorithm varied with increasing OSA severity - percent agreement was 79.67 (1.87) for the normal subjects, 77.38 (1.06) for mild OSA, 74.83 (1.79) for moderate OSA and 72.93 (1.68) for severe OSA.
Agreement between Somfit and PSG hypnograms was non-inferior to PSG interscorer agreement for a number of scorers, thus confirming acceptability of electrode placement at the center of the forehead. The directions for algorithm improvement include additional arousal detection, integration of motion and oximetry signals and separate inference models for individual sleep stages.
研究一种新型小型家用睡眠监测设备——Compumedics® Somfit中睡眠分期算法的准确性。Somfit附着于患者前额,将基于脉搏动脉张力测定法(PAT)的家用睡眠呼吸暂停测试(HSAT)设备所指定的通道与神经信号相结合。Somfit睡眠分期深度学习算法基于卷积神经网络架构。
110名因疑似或已存在阻塞性睡眠呼吸暂停(OSA)而需要复查的睡眠调查参与者被纳入该研究,研究内容包括同时记录整夜全夜多导睡眠图(PSG)和Somfit数据。记录在澳大利亚的三个中心进行。报告的统计数据包括Somfit自动睡眠图与共识PSG睡眠图之间的标准一致性测量。
Somfit自动睡眠图与共识PSG睡眠图在五个睡眠阶段(N1、N2、N3、快速眼动睡眠期和清醒期)的总体一致性百分比为76.14(标准误:0.79)。不同睡眠技术人员的PSG睡眠图之间的一致性百分比在74.36(1.93)至85.50(0.64)之间,同一睡眠实验室的评分者之间的评分者间一致性更高。Somfit与共识PSG之间的kappa估计值为0.672(0.002)。睡眠/清醒辨别一致性百分比为89.30(0.37)。Somfit睡眠分期算法的准确性随OSA严重程度增加而变化——正常受试者的一致性百分比为79.67(1.87),轻度OSA为77.38(1.06),中度OSA为74.83(1.79),重度OSA为72.93(1.68)。
对于许多评分者而言,Somfit与PSG睡眠图之间的一致性不低于PSG评分者间的一致性,从而证实了在前额中心放置电极的可接受性。算法改进方向包括额外的觉醒检测、运动和血氧饱和度信号的整合以及针对各个睡眠阶段的单独推理模型。