在退伍军人队列中比较机器学习方法预测正压通气的依从性

Anna M. May, J. Dalton
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引用次数: 0

摘要

坚持使用气道正压疗法(PAP)治疗睡眠呼吸暂停的效果并不理想,尤其是在退伍军人群体中。准确识别那些最适合其他疗法或额外干预的患者可能会提高依从性。我们对各种机器学习算法进行了评估,以预测 90 天的依从性。退伍军人俄亥俄州东北部医疗保健系统患者队列中获得 PAP 机器的患者(2010 年 1 月 1 日至 2015 年 6 月 30 日)在进行多导睡眠图检查时的人口统计学、合并症和用药情况均来自电子健康记录。数据以 60:20:20 的比例分成训练数据集、校准数据集和验证数据集,模型开发中不使用验证数据。我们使用以下算法构建了第一个 90 天坚持期(使用时间≥4 小时的夜间百分比)的模型:线性回归、最小绝对收缩和选择算子、弹性网、脊回归、梯度提升机、支持向量机回归、基于贝叶斯的模型和神经网络。5047 名参与者的年龄为 38.3 ± 11.9 岁,96.1% 为男性,36.8% 患有冠状动脉疾病,52.6% 患有抑郁症。依从性中位数为 36.7%(四分位间范围:0%-86.7%)。梯度提升机器优于其他机器学习技术(均方根误差为 37.2)。不过,在没有 30 天数据的情况下,所有模型的性能都差不多,而且在临床上并不实用。比较了使用电子病历信息的多种预测算法,我们发现没有一种算法的性能具有临床意义。更好的依从性预测方法可为个性化定制干预措施提供机会。
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Comparison of machine learning approaches for positive airway pressure adherence prediction in a veteran cohort
Adherence to positive airway pressure (PAP) therapy for sleep apnea is suboptimal, particularly in the veteran population. Accurately identifying those best suited for other therapy or additional interventions may improve adherence. We evaluated various machine learning algorithms to predict 90-day adherence.The cohort of VA Northeast Ohio Health Care system patients who were issued a PAP machine (January 1, 2010–June 30, 2015) had demographics, comorbidities, and medications at the time of polysomnography obtained from the electronic health record. The data were split 60:20:20 into training, calibration, and validation data sets, with no use of validation data for model development. We constructed models for the first 90-day adherence period (% nights ≥4 h use) using the following algorithms: linear regression, least absolute shrinkage and selection operator, elastic net, ridge regression, gradient boosted machines, support vector machine regression, Bayes-based models, and neural nets. Prediction performance was evaluated in the validation data set using root mean square error (RMSE).The 5,047 participants were 38.3 ± 11.9 years old, and 96.1% male, with 36.8% having coronary artery disease and 52.6% with depression. The median adherence was 36.7% (interquartile range: 0%, 86.7%). The gradient boosted machine was superior to other machine learning techniques (RMSE 37.2). However, the performance was similar and not clinically useful for all models without 30-day data. The 30-day PAP data and using raw diagnoses and medications (vs. grouping by type) improved the RMSE to 24.27.Comparing multiple prediction algorithms using electronic medical record information, we found that none has clinically meaningful performance. Better adherence predictive measures may offer opportunities for personalized tailoring of interventions.
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Implementing TeleSleep at Veterans Healthcare Administration: an organizational case study of adaptation and sustainment. Editorial: Insights in sleep-related movement disorders and parasomnias Efficacy of a telehealth cognitive behavioral therapy for improving sleep and nightmares in children aged 6–17 Insomnia severity and daytime sleepiness in caregivers of advanced age Revitalizing CPAP adherence: lessons from THN study in patients with hypoglossal nerve stimulators
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