Analysis of the level of polypharmacy in patients from an isolated rural area: effect of age, sex, and chronic diseases.

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-06-10 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1508505
Susana Abdala Kuri, Chaxiraxi Morales, Alexis M Oliva, Adama Peña, Sandra Dévora
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Abstract

Introduction: The increase in life expectancy and the greater number of chronic diseases have led to a greater use of medications. This polypharmacy can cause a greater number of drug-related problems and negative results on the patient's health associated with medication, which is why most health services are focused on solving these problems. Machine learning uses different techniques to generate knowledge in health, one of them is regression, whose model establishes that a prognosis is created from a dependent variable and a series of independent variables.

Materials and methods: Data collection was conducted during 2021-2022 in an isolated rural pharmacy. The screening of participants susceptible to being part of the study began at the time of dispensing, verifying that they were part of the personalized dosing system (PDS) service.

Results: The study population consisted of 78 participants, predominantly female. The sociodemographic profile was characterized by being female, between 66 and 80 years of age. The number of chronic diseases per participant was 4.25 ± 1.49. During the study phase, a total of 450 drug-related problems (DRPs) were detected, with an average of 5.64 ± 2.69 DRPs per participant.

Discussion: Age and the assigned polypharmacy level are the factors that most influence the final polypharmacy level. However, it is necessary to include the variable "chronic diseases" since in some situations it seems to be significant.

Conclusion: The factors that most influence the polypharmacy index are patient age and initial polypharmacy level and, to a lesser extent, but no less important, the number of chronic diseases.

偏远农村地区患者使用多种药物水平分析:年龄、性别和慢性病的影响
导言:预期寿命的延长和慢性病数量的增加导致了更多的药物使用。这种综合用药可能造成更多与药物有关的问题,并对与药物有关的患者健康产生负面影响,这就是为什么大多数卫生服务都侧重于解决这些问题。机器学习使用不同的技术来产生健康方面的知识,其中之一是回归,其模型建立的预测是由一个因变量和一系列自变量创建的。材料与方法:于2021-2022年在某偏远农村药房进行数据收集。在配药时开始筛选可能成为研究一部分的参与者,验证他们是个性化给药系统(PDS)服务的一部分。结果:研究人群包括78名参与者,主要是女性。社会人口特征为女性,年龄在66岁至80岁之间。每个参与者患慢性病的数量为4.25±1.49。在研究阶段,共检测到450个药物相关问题(DRPs),平均每个参与者的DRPs为5.64±2.69。讨论:年龄和指定的多药水平是影响最终多药水平的最大因素。然而,有必要包括可变的“慢性病”,因为在某些情况下,它似乎很重要。结论:对多药指数影响最大的因素是患者年龄和初始多药水平,慢性疾病数量的影响程度较低,但同样重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.20
自引率
0.00%
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审稿时长
13 weeks
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