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预测慢性疾病老年全科医学患者的不良健康结局:PROPERmed 协调个体参与者数据数据库的原理和开发。

Predicting negative health outcomes in older general practice patients with chronic illness: Rationale and development of the PROPERmed harmonized individual participant data database.

机构信息

Institute of General Practice, Goethe University Frankfurt, 60590, Frankfurt am Main, Germany; Red de Investigación en Servicios de Salud en Enfermedades Crónicas (REDISSEC), Madrid, Spain.

Institute of General Practice, Goethe University Frankfurt, 60590, Frankfurt am Main, Germany.

出版信息

Mech Ageing Dev. 2021 Mar;194:111436. doi: 10.1016/j.mad.2021.111436. Epub 2021 Jan 15.

Abstract

The prevalence of multimorbidity and polypharmacy increases significantly with age and are associated with negative health consequences. However, most current interventions to optimize medication have failed to show significant effects on patient-relevant outcomes. This may be due to ineffectiveness of interventions themselves but may also reflect other factors: insufficient sample sizes, heterogeneity of population. To address this issue, the international PROPERmed collaboration was set up to obtain/synthesize individual participant data (IPD) from five cluster-randomized trials. The trials took place in Germany and The Netherlands and aimed to optimize medication in older general practice patients with chronic illness. PROPERmed is the first database of IPD to be drawn from multiple trials in this patient population and setting. It offers the opportunity to derive prognostic models with increased statistical power for prediction of patient-relevant outcomes resulting from the interplay of multimorbidity and polypharmacy. This may help patients from this heterogeneous group to be stratified according to risk and enable clinicians to identify patients that are likely to benefit most from resource/time-intensive interventions. The aim of this manuscript is to describe the rationale behind PROPERmed collaboration, characteristics of the included studies/participants, development of the harmonized IPD database and challenges faced during this process.

摘要

多种疾病和多种药物的患病率随着年龄的增长显著增加,并与负面健康后果相关。然而,大多数旨在优化药物治疗的现有干预措施未能在患者相关结局方面显示出显著效果。这可能是由于干预措施本身无效,但也可能反映了其他因素:样本量不足、人群异质性。为了解决这个问题,国际 PROPERmed 合作组织成立,以从五项集群随机试验中获取/综合个体参与者数据 (IPD)。这些试验在德国和荷兰进行,旨在优化患有慢性病的老年全科医学患者的药物治疗。PROPERmed 是首个从该患者群体和环境中的多项试验中提取 IPD 的数据库。它提供了机会,通过增加统计功效来推导预测多种疾病和多种药物相互作用导致的患者相关结局的预后模型。这可能有助于根据风险对来自这个异质群体的患者进行分层,并使临床医生能够识别出最有可能从资源/时间密集型干预中受益的患者。本文的目的是描述 PROPERmed 合作背后的基本原理、纳入研究/参与者的特征、协调的 IPD 数据库的开发以及在此过程中面临的挑战。

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