Department of Medical and Surgical Science, University of Foggia, Foggia, Italy.
Respiratory Medicine Unit, "Policlinico Riuniti" University Hospital, Foggia, Italy.
Inform Health Soc Care. 2022 Jul 3;47(3):274-282. doi: 10.1080/17538157.2021.1990300. Epub 2021 Nov 8.
Continuous positive airway pressure (CPAP) is the "gold-standard" therapy for obstructive sleep apnea (OSA), but the main problem is the poor adherence. Therefore, we have searched for the causes of poor adherence to CPAP therapy by applying predictive machine learning (ML) methods. The study was conducted on OSAs in nighttime therapy with CPAP. An outpatient follow-up was planned at 3, 6, 12 months. We collected several parameters at the baseline visit and after dividing all patients into two groups (Adherent and Non-adherent) according to therapy adherence, we compared them. Statistical differences between the two groups were not found according to baseline characteristics, except gender (< .01). Therefore, we applied ML to predict CPAP adherence, and these predictive models showed an accuracy and sensitivity of 68.6% and an AUC (area under the curve) of 72.9% through the SVM (support vector machine) classification method. The identification of factors predictive of long-term CPAP adherence is complex, but our proof of concept seems to demonstrate the utility of ML to identify subjects poorly adherent to therapy. Therefore, application of these models to larger samples could aid in the careful identification of these subjects and result in important savings in healthcare spending.
持续气道正压通气(CPAP)是阻塞性睡眠呼吸暂停(OSA)的“金标准”疗法,但主要问题是顺应性差。因此,我们通过应用预测性机器学习(ML)方法来寻找 CPAP 治疗顺应性差的原因。该研究针对夜间 CPAP 治疗的 OSA 进行。计划在 3、6、12 个月进行门诊随访。我们在基线就诊时收集了几个参数,并根据治疗顺应性将所有患者分为两组(依从组和不依从组),然后对它们进行了比较。根据基线特征,两组之间没有发现统计学差异,除了性别(<.01)。因此,我们应用 ML 来预测 CPAP 的依从性,这些预测模型通过 SVM(支持向量机)分类方法显示出 68.6%的准确性和 72.9%的灵敏度。长期 CPAP 依从性的预测因素的识别很复杂,但我们的概念验证似乎证明了 ML 识别治疗依从性差的受试者的实用性。因此,将这些模型应用于更大的样本可以帮助仔细识别这些受试者,并在医疗保健支出方面节省重要资金。