Faculté de pharmacie, Université Laval, Québec, QC, Canada; Institut national de santé publique du Québec, Québec, QC, Canada; VITAM-Centre de recherche en santé durable, Centre intégré de santé et de services sociaux de la Capitale Nationale, Québec, QC, Canada.
Faculté de pharmacie, Université Laval, Québec, QC, Canada; Institut national de santé publique du Québec, Québec, QC, Canada; VITAM-Centre de recherche en santé durable, Centre intégré de santé et de services sociaux de la Capitale Nationale, Québec, QC, Canada; Centre de recherche du CHU de Québec-Université Laval, Québec, QC, Canada.
Value Health. 2024 Oct;27(10):1393-1399. doi: 10.1016/j.jval.2024.06.005. Epub 2024 Jul 6.
Machine learning methods have gained much attention in health sciences for predicting various health outcomes but are scarcely used in pharmacoepidemiology. The ability to identify predictors of suboptimal medication use is essential for conducting interventions aimed at improving medication outcomes. It remains uncertain whether machine learning methods could enhance the identification of potentially inappropriate medication use among older adults compared with traditional methods. This study aimed to (1) to compare the performances of machine learning models in predicting use of potentially inappropriate medications and (2) to quantify and compare the relative importance of predictors in a population of community-dwelling older adults (>65 years) in the province of Québec, Canada.
We used the Québec Integrated Chronic Disease Surveillance System and selected a cohort of 1 105 295 older adults of whom 533 719 were potentially inappropriate medication users. Potentially inappropriate medications were defined according to the Beers list. We compared performances between 5 popular machine learning models (gradient boosting machines, logistic regression, naive Bayes, neural networks, and random forests) based on receiver operating characteristic curves and other performance criteria, using a set of sociodemographic and medical predictors.
No model clearly outperformed the others. All models except neural networks were in agreement regarding the top predictors (sex and anxiety-depressive disorders and schizophrenia) and the bottom predictors (rurality and social and material deprivation indices).
Including other types of predictors (eg, unstructured data) may be more useful for increasing performance in prediction of potentially inappropriate medication use.
机器学习方法在预测各种健康结果方面在健康科学中受到了广泛关注,但在药物流行病学中却很少使用。识别药物使用不当的预测因素对于开展旨在改善药物治疗结果的干预措施至关重要。目前尚不确定与传统方法相比,机器学习方法是否能提高识别老年人药物使用不当的能力。本研究旨在:(1)比较机器学习模型在预测潜在不适当药物使用方面的性能;(2)在加拿大魁北克省的一个社区居住的老年人(>65 岁)人群中,量化和比较预测因素的相对重要性。
我们使用了魁北克综合慢性疾病监测系统,并选择了一个由 1105295 名老年人组成的队列,其中 533719 人是潜在不适当药物使用者。潜在不适当药物是根据 Beers 清单来定义的。我们根据接收者操作特征曲线和其他性能标准,比较了 5 种流行的机器学习模型(梯度提升机、逻辑回归、朴素贝叶斯、神经网络和随机森林)之间的性能,使用了一组社会人口统计学和医学预测因素。
没有一种模型明显优于其他模型。除了神经网络之外,所有模型在顶级预测因素(性别和焦虑抑郁障碍和精神分裂症)和最低预测因素(农村和社会物质匮乏指数)方面都达成了一致。
纳入其他类型的预测因素(例如非结构化数据)可能更有助于提高预测潜在不适当药物使用的性能。