A model for identifying potentially inappropriate medication used in older people with dementia: a machine learning study.

IF 2.6 4区 医学 Q2 PHARMACOLOGY & PHARMACY
Qiaozhi Hu, Mengnan Zhao, Fei Teng, Gongchao Lin, Zhaohui Jin, Ting Xu
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引用次数: 0

Abstract

Background: Older adults with dementia often face the risk of potentially inappropriate medication (PIM) use. The quality of PIM evaluation is hindered by researchers' unfamiliarity with evaluation criteria for inappropriate drug use. While traditional machine learning algorithms can enhance evaluation quality, they struggle with the multilabel nature of prescription data.

Aim: This study aimed to combine six machine learning algorithms and three multilabel classification models to identify correlations in prescription information and develop an optimal model to identify PIMs in older adults with dementia.

Method: This study was conducted from January 1, 2020, to December 31, 2020. We used cluster sampling to obtain prescription data from patients 65 years and older with dementia. We assessed PIMs using the 2019 Beers criteria, the most authoritative and widely recognized standard for PIM detection. Our modeling process used three problem transformation methods (binary relevance, label powerset, and classifier chain) and six classification algorithms.

Results: We identified 18,338 older dementia patients and 36 PIMs types. The classifier chain + categorical boosting (CatBoost) model demonstrated superior performance, with the highest accuracy (97.93%), precision (95.39%), recall (94.07%), F1 score (95.69%), and subset accuracy values (97.41%), along with the lowest Hamming loss value (0.0011) and an acceptable duration of the operation (371s).

Conclusion: This research introduces a pioneering CC + CatBoost warning model for PIMs in older dementia patients, utilizing machine-learning techniques. This model enables a quick and precise identification of PIMs, simplifying the manual evaluation process.

Abstract Image

识别老年痴呆症患者潜在用药不当的模型:一项机器学习研究。
背景:患有痴呆症的老年人经常面临潜在用药不当(PIM)的风险。由于研究人员不熟悉不适当用药的评估标准,因此影响了不适当用药评估的质量。本研究旨在结合六种机器学习算法和三种多标签分类模型来识别处方信息中的相关性,并开发一种最佳模型来识别老年痴呆症患者的 PIM:本研究于 2020 年 1 月 1 日至 2020 年 12 月 31 日进行。我们采用集群抽样的方式获取 65 岁及以上痴呆症患者的处方数据。我们使用 2019 Beers 标准对 PIM 进行了评估,该标准是最权威、最广为人知的 PIM 检测标准。我们的建模过程使用了三种问题转换方法(二元相关性、标签幂集和分类器链)和六种分类算法:我们确定了 18338 名老年痴呆症患者和 36 种 PIMs 类型。分类器链+分类提升(CatBoost)模型表现优异,准确率(97.93%)、精确率(95.39%)、召回率(94.07%)、F1得分(95.69%)和子集准确率值(97.41%)最高,汉明损失值(0.0011)最低,操作时间(371s)可接受:本研究利用机器学习技术,针对老年痴呆症患者的 PIMs 引入了一种开创性的 CC + CatBoost 预警模型。该模型可快速、准确地识别 PIM,简化人工评估过程。
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来源期刊
CiteScore
4.10
自引率
8.30%
发文量
131
审稿时长
4-8 weeks
期刊介绍: The International Journal of Clinical Pharmacy (IJCP) offers a platform for articles on research in Clinical Pharmacy, Pharmaceutical Care and related practice-oriented subjects in the pharmaceutical sciences. IJCP is a bi-monthly, international, peer-reviewed journal that publishes original research data, new ideas and discussions on pharmacotherapy and outcome research, clinical pharmacy, pharmacoepidemiology, pharmacoeconomics, the clinical use of medicines, medical devices and laboratory tests, information on medicines and medical devices information, pharmacy services research, medication management, other clinical aspects of pharmacy. IJCP publishes original Research articles, Review articles , Short research reports, Commentaries, book reviews, and Letters to the Editor. International Journal of Clinical Pharmacy is affiliated with the European Society of Clinical Pharmacy (ESCP). ESCP promotes practice and research in Clinical Pharmacy, especially in Europe. The general aim of the society is to advance education, practice and research in Clinical Pharmacy . Until 2010 the journal was called Pharmacy World & Science.
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