Brown Devin L, He Kevin, Kim Sehee, Hsu Chia-Wei, Case Erin, Chervin Ronald D, Lisabeth Lynda D
Stroke Program, University of Michigan, United States.
Department of Biostatistics, School of Public Health, University of Michigan, United States.
Sleep Med. 2020 Nov;75:1-6. doi: 10.1016/j.sleep.2020.05.004. Epub 2020 May 15.
OBJECTIVE/BACKGROUND: Sleep-disordered breathing (SDB) is highly prevalent after stroke and is associated with poor outcomes. Currently, after stroke, objective testing must be used to differentiate patients with and without SDB. Within a large, population-based study, we evaluated the usefulness of a flexible statistical model based on baseline characteristics to predict post-stroke SDB.
PATIENTS/METHODS: Within a population-based study, participants (2010-2018) underwent SDB screening, shortly after ischemic stroke, with a home sleep apnea test. The respiratory event index (REI) was calculated as the number of apneas and hypopneas per hour of recording; values ≥10 defined SDB. The distributed random forest classifier (a machine learning technique) was applied to predict SDB with the following as predictors: demographics, stroke risk factors, stroke severity (NIHSS), neck and waist circumference, palate position, and pre-stroke symptoms of snoring, apneas, and sleepiness.
Within the total sample (n = 1330), median age was 65 years; 47% were women; 32% non-Hispanic white, 62% Mexican American, and 6% African American. SDB was found in 891 (67%). The area under the receiver operating characteristic curve, a measure of predictive ability, applied to the validation sample was 0.75 for the random forest model. Random forest correctly classified 72.5% of validation samples.
In this large, ethnically diverse, population-based sample of ischemic stroke patients, prediction models based on baseline characteristics and clinical measures showed fair rather than clinically reliable performance, even with use of advanced machine learning techniques. Results suggest that objective tests are still needed to differentiate ischemic stroke patients with and without SDB.
目的/背景:睡眠呼吸紊乱(SDB)在卒中后极为常见,且与不良预后相关。目前,卒中后必须采用客观测试来区分有无SDB的患者。在一项大型的基于人群的研究中,我们评估了一种基于基线特征的灵活统计模型预测卒中后SDB的效用。
患者/方法:在一项基于人群的研究中,参与者(2010 - 2018年)在缺血性卒中后不久接受了家庭睡眠呼吸暂停测试以进行SDB筛查。呼吸事件指数(REI)计算为每小时记录的呼吸暂停和低通气次数;REI值≥10定义为SDB。应用分布式随机森林分类器(一种机器学习技术)以以下因素作为预测指标来预测SDB:人口统计学特征、卒中危险因素、卒中严重程度(美国国立卫生研究院卒中量表)、颈围和腰围、腭位置以及卒中前打鼾、呼吸暂停和嗜睡症状。
在总样本(n = ¹³³⁰)中,中位年龄为65岁;47%为女性;32%为非西班牙裔白人,62%为墨西哥裔美国人,6%为非裔美国人。891例(67%)存在SDB。应用于验证样本的受试者工作特征曲线下面积(一种预测能力的衡量指标),随机森林模型为0.75。随机森林正确分类了72.5%的验证样本。
在这个大型的、种族多样的、基于人群的缺血性卒中患者样本中,基于基线特征和临床指标的预测模型表现出一般而非临床可靠的性能,即使使用了先进的机器学习技术。结果表明,仍需要客观测试来区分有无SDB的缺血性卒中患者。