使用药物分配数据来识别老年痴呆症患者中具有相似处方模式的集群。

IF 3.8 3区 医学 Q2 GERIATRICS & GERONTOLOGY
Drugs & Aging Pub Date : 2025-10-01 Epub Date: 2025-09-10 DOI:10.1007/s40266-025-01228-y
Abby Emdin, Therese A Stukel, Jennifer Bethell, Xuesong Wang, Andrea Iaboni, Susan E Bronskill
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引用次数: 0

摘要

背景和目的:老年痴呆症患者是一个异质性群体,这使得研究最佳药物管理具有挑战性。无监督机器学习是一组依赖于未标记数据的计算方法,也就是说,算法本身发现模式,而不需要研究人员用已知结果标记数据。这些方法可以帮助我们更好地理解这一人群复杂的处方模式。本研究的目的是使用聚类方法来确定加拿大安大略省新确诊为痴呆症的老年人中是否存在常见的处方聚类,并检查个体临床和人口统计学特征与这些聚类之间的关系。方法:数据来源于基于人群的卫生管理数据库,包括药物分配数据。分层聚类算法从每个个体开始,将处方模式最相似的个体合并为一组,逐步继续这一过程,直到只剩下一个集群。通过临床评价和拟合统计选择最佳聚类数。我们使用二元多项式模型检验了个体特征与处方簇之间的关联。结果:在99,046例新发痴呆患者中,我们确定了具有共同药物亚类模式的六个流行个体群:血管紧张素转换酶特异性心血管(占人口的22.6%),中枢神经系统活跃(21.3%),甲状腺功能减退(22.9%),呼吸(3.9%)和血管紧张素受体阻滞剂特异性心血管(6.1%),以及一般药物分配较低的组(23.1%)。特定的人口统计学、临床和卫生服务使用特征与指定的群集相关。结论:在痴呆患者中,处方簇反映了临床和人口学特征的有意义的差异。结果表明,将聚类方法应用于药理学数据可能有助于估计复杂的共病模式,以更好地描述痴呆患者的异质人群。未来的研究可以检验与其他测量方法相比,这些聚类是否能更好地预测卫生服务使用、疾病进展或药物相关不良事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Medication Dispensation Data to Identify Clusters with Similar Prescribing Patterns in Older Adults Living with Dementia.

Background and objectives: Older adults living with dementia are a heterogeneous group, which can make studying optimal medication management challenging. Unsupervised machine learning is a group of computing methods that rely on unlabeled data-that is, where the algorithm itself is discovering patterns without the need for researchers to label the data with a known outcome. These methods may help us to better understand complex prescribing patterns in this population. The objective of our study was to use clustering methods to determine whether common prescribing clusters exist in older adults newly identified as living with dementia in Ontario, Canada and to examine the association between individual clinical and demographic characteristics and those clusters.

Methods: Data were derived from population-based health administrative databases, including medication dispensation data. The hierarchical clustering algorithm started with each individual and merged individuals with the most similar prescribing patterns into a group, continuing this process stepwise until only one cluster remained. The optimal number of clusters was selected through clinical review and fit statistics. We examined the association between individual characteristics and prescribing clusters using bivariate multinomial models.

Results: In 99,046 individuals living with new dementia, we identified six prevalent clusters of individuals with common medication subclass patterns: higher dispensation of angiotensin-converting enzyme-specific cardiovascular (22.6% of the population), central nervous system-active (21.3%), hypothyroidism (22.9%), respiratory (3.9%), and angiotensin receptor blocker-specific cardiovascular (6.1%), as well as a group with lower dispensation of medications in general (23.1%). Specific demographic, clinical, and health-service-use characteristics were associated with assigned clusters.

Conclusions: Within individuals living with dementia, prescribing clusters reflected meaningful differences in clinical and demographic characteristics. The results suggest that applying clustering methods to pharmacological data may be useful in estimating complex comorbidity patterns to better describe a heterogeneous population of people living with dementia. Future studies could examine whether these clusters better predict health service use, disease progression, or medication-related adverse events compared with other measures.

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来源期刊
Drugs & Aging
Drugs & Aging 医学-老年医学
CiteScore
5.50
自引率
7.10%
发文量
68
审稿时长
6-12 weeks
期刊介绍: Drugs & Aging delivers essential information on the most important aspects of drug therapy to professionals involved in the care of the elderly. The journal addresses in a timely way the major issues relating to drug therapy in older adults including: the management of specific diseases, particularly those associated with aging, age-related physiological changes impacting drug therapy, drug utilization and prescribing in the elderly, polypharmacy and drug interactions.
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