Yi Huijie, Dong Xiaosong, Shang Shaomei, Zhang Chi, Xu Liyue, Han Fang
Department of Respiratory and Sleep Medicine, Peking University People's Hospital, Beijing, China.
School of Nursing, Peking University, Beijing, China.
Front Neurol. 2022 Nov 17;13:1063461. doi: 10.3389/fneur.2022.1063461. eCollection 2022.
In this study, we aim to identify the distinct subtypes of continuous positive airway pressure (CPAP) user profiles based on the telemedicine management platform and to determine clinical and psychological predictors of various patterns of adherence. A total of 301 patients used auto-CPAP (Autoset 10, Resmed Inc.) during the treatment period. Four categories of potential predictors for CPAP adherence were examined: (1) demographic and clinical characteristics, (2) disease severity and comorbidities, (3) sleep-related health issues, and (4) psychological evaluation. Then, growth mixture modeling was conducted using Mplus 8.0 to identify the unique trajectories of adherence over time. Adherence data were collected from the telemedicine management platform (Airview, Resmed Inc.) during the treatment. Three novel subgroups were identified and labeled "adherers" (53.8% of samples, intercept = 385, slope = -51, high mean value, negative slope and moderate decline), "Improvers" (18.6%, intercept = 256, slope = 50, moderate mean value, positive slope and moderate growth) and "non-adherers" (27.6%, intercept = 176, slope = -31, low mean value, negative slope and slight decline). The comorbidities associated with OSA and the apnea-hypopnea index (AHI), which reflects the objective severity of the disease, did not differ significantly among the subgroups. However, "improvers" showed higher levels of daytime sleepiness (8.1 ± 6.0 vs. 12.1 ± 7.0 vs. 8.0 ± 6.1 in SWIFT, = 0.01), reduced daytime function (4.6 ± 1.6 vs. 3.8 ± 1.6 vs. 4.2 ± 1.8 in QSQ daytime symptoms, = 0.02), and characteristics of positive coping style (1.8 ± 0.5 vs. 1.9 ± 0.5 vs. 1.7 ± 0.5 in SCSQ positive coping index, = 0.02). Negative emotion was more pronounced in patients with "non-adherers" (12.9 ± 3.8 vs. 13.7 ± 3.3 vs. 14.6 ± 3.5, = 0.02 in the HADS depression dimension; 9.0 ± 6.1 vs. 9.8 ± 5.1 vs. 11.5 ± 6.3, = 0.01 with Negative Affectivity in DS14, and 9.3 ± 6.1 vs. 10.3 ± 5.1 vs. 11.7 ± 6.5, = 0.01 with Social Inhibition in DS14). Overall, our study demonstrated that CPAP therapy may present distinct trajectories of adherence over time in addition to the traditional binary classification. Self-reported sleep health issues (diurnal sleepiness and daytime dysfunction) as well as psychological characteristics (negative emotions and coping style) were predictors of different adherence subtypes in patients with OSA. Understanding CPAP use profiles and their predictors enable the identification of those who may require additional intervention to improve adherence and further enhance the therapeutic effect in OSA patients.
在本研究中,我们旨在基于远程医疗管理平台识别持续气道正压通气(CPAP)使用者的不同亚型,并确定各种依从模式的临床和心理预测因素。在治疗期间,共有301例患者使用自动调压CPAP(Autoset 10,瑞思迈公司)。我们考察了四类CPAP依从性的潜在预测因素:(1)人口统计学和临床特征;(2)疾病严重程度和合并症;(3)与睡眠相关的健康问题;(4)心理评估。然后,使用Mplus 8.0进行生长混合模型分析,以识别随时间推移的独特依从轨迹。在治疗期间,通过远程医疗管理平台(Airview,瑞思迈公司)收集依从性数据。识别出三个新的亚组,并分别标记为“依从者”(占样本的53.8%,截距=385,斜率=-51,均值高,斜率为负且下降适度)、“改善者”(18.6%,截距=256,斜率=50,均值中等,斜率为正且增长适度)和“不依从者”(27.6%,截距=176,斜率=-31,均值低,斜率为负且下降轻微)。与阻塞性睡眠呼吸暂停(OSA)相关的合并症以及反映疾病客观严重程度的呼吸暂停低通气指数(AHI)在各亚组之间无显著差异。然而,“改善者”表现出更高水平的日间嗜睡(SWIFT评分中分别为8.1±6.0 vs. 12.1±7.0 vs. 8.0±6.1,P = 0.01)、日间功能减退(QSQ日间症状评分中分别为4.6±1.6 vs. 3.8±1.6 vs. 4.2±1.8,P = 0.02)以及积极应对方式的特征(SCSQ积极应对指数中分别为1.8±0.5 vs. 1.9±0.5 vs. 1.7±0.5,P = 0.02)。“不依从者”患者的负面情绪更为明显(HADS抑郁维度中分别为12.9±3.8 vs. 13.7±3.3 vs. 14.6±3.5,P = 0.02;DS14中消极情感分别为9.0±6.1 vs. 9.8±5.1 vs. 11.5±6.3,P = 0.01;DS14中社交抑制分别为9.3±6.1 vs. 10.3±5.1 vs. 11.7±6.5,P = 0.01)。总体而言,我们的研究表明,除了传统的二元分类外,CPAP治疗可能随着时间呈现出不同的依从轨迹。自我报告的睡眠健康问题(日间嗜睡和日间功能障碍)以及心理特征(负面情绪和应对方式)是OSA患者不同依从亚型的预测因素。了解CPAP使用情况及其预测因素有助于识别那些可能需要额外干预以提高依从性的患者,并进一步增强OSA患者的治疗效果。