Department of Psychiatry, University of Pittsburgh, Pittsburgh, PA, USA.
Department of Statistics, University of Pittsburgh, Pittsburgh, PA, USA.
J Sleep Res. 2021 Dec;30(6):e13386. doi: 10.1111/jsr.13386. Epub 2021 May 15.
Clarifying whether physiological sleep measures predict mortality could inform risk screening; however, such investigations should account for complex and potentially non-linear relationships among health risk factors. We aimed to establish the predictive utility of polysomnography (PSG)-assessed sleep measures for mortality using a novel permutation random forest (PRF) machine learning framework. Data collected from the years 1995 to present are from the Sleep Heart Health Study (SHHS; n = 5,734) and the Wisconsin Sleep Cohort Study (WSCS; n = 1,015), and include initial assessments of sleep and health, and up to 15 years of follow-up for all-cause mortality. We applied PRF models to quantify the predictive abilities of 24 measures grouped into five domains: PSG-assessed sleep (four measures), self-reported sleep (three), health (eight), health behaviours (four), and sociodemographic factors (five). A 10-fold repeated internal validation (WSCS and SHHS combined) and external validation (training in SHHS; testing in WSCS) were used to compute unbiased variable importance metrics and associated p values. We observed that health, sociodemographic factors, and PSG-assessed sleep domains predicted mortality using both external validation and repeated internal validation. The PSG-assessed sleep efficiency and the percentage of sleep time with oxygen saturation <90% were among the most predictive individual measures. Multivariable Cox regression also revealed the PSG-assessed sleep domain to be predictive, with very low sleep efficiency and high hypoxaemia conferring the highest risk. These findings, coupled with the emergence of new low-burden technologies for objectively assessing sleep and overnight oxygen saturation, suggest that consideration of physiological sleep measures may improve risk screening.
阐明生理睡眠指标是否可预测死亡率可以为风险筛查提供信息;然而,此类研究应该考虑健康风险因素之间复杂且潜在的非线性关系。我们旨在使用新颖的排列随机森林(PRF)机器学习框架,建立多导睡眠图(PSG)评估的睡眠指标对死亡率的预测效用。数据来自于 1995 年至目前的睡眠心脏健康研究(SHHS;n=5734)和威斯康星睡眠队列研究(WSCS;n=1015),包括睡眠和健康的初始评估,以及所有原因死亡率的长达 15 年的随访。我们应用 PRF 模型来量化 24 个指标的预测能力,这些指标分为五个领域:PSG 评估的睡眠(四个指标)、自我报告的睡眠(三个)、健康(八个)、健康行为(四个)和社会人口统计学因素(五个)。10 折重复内部验证(SHHS 和 WSCS 合并)和外部验证(在 SHHS 中进行训练;在 WSCS 中进行测试)用于计算无偏变量重要性指标和相关的 p 值。我们观察到,健康、社会人口统计学因素和 PSG 评估的睡眠领域通过外部验证和重复内部验证都可以预测死亡率。PSG 评估的睡眠效率和睡眠期间氧饱和度<90%的时间百分比是最具预测性的个体指标之一。多变量 Cox 回归还揭示了 PSG 评估的睡眠领域具有预测性,睡眠效率非常低和高低氧血症的风险最高。这些发现,加上用于客观评估睡眠和夜间氧饱和度的新的低负担技术的出现,表明考虑生理睡眠指标可能会改善风险筛查。