Department of Health Sciences, Helsana Insurance Group, P,O, Box, 8081 Zürich, Switzerland.
BMC Public Health. 2013 Oct 30;13:1030. doi: 10.1186/1471-2458-13-1030.
Quantifying population health is important for public health policy. Since national disease registers recording clinical diagnoses are often not available, pharmacy data were frequently used to identify chronic conditions (CCs) in populations. However, most approaches mapping prescribed drugs to CCs are outdated and unambiguous. The aim of this study was to provide an improved and updated mapping approach to the classification of medications. Furthermore, we aimed to give an overview of the proportions of patients with CCs in Switzerland using this new mapping approach.
The database included medical and pharmacy claims data (2011) from patients aged 18 years or older. Based on prescription drug data and using the Anatomical Therapeutic Chemical (ATC) classification system, patients with CCs were identified by a medical expert review. Proportions of patients with CCs were calculated by sex and age groups. We constructed multiple logistic regression models to assess the association between patient characteristics and having a CC, as well as between risk factors (diabetes, hyperlipidemia) for cardiovascular diseases (CVD) and CVD as one of the most prevalent CCs.
A total of 22 CCs were identified. In 2011, 62% of the 932'612 subjects enrolled have been prescribed a drug for the treatment of at least one CC. Rheumatologic conditions, CVD and pain were the most frequent CCs. 29% of the persons had CVD, 10% both CVD and hyperlipidemia, 4% CVD and diabetes, and 2% suffered from all of the three conditions. The regression model showed that diabetes and hyperlipidemia were strongly associated with CVD.
Using pharmacy claims data, we developed an updated and improved approach for a feasible and efficient measure of patients' chronic disease status. Pharmacy drug data may be a valuable source for measuring population's burden of disease, when clinical data are missing. This approach may contribute to health policy debates about health services sources and risk adjustment modelling.
量化人口健康状况对公共卫生政策很重要。由于记录临床诊断的国家疾病登记册往往不可用,因此经常使用药房数据来确定人群中的慢性疾病(CCs)。然而,大多数将处方药与 CCs 进行映射的方法已经过时且不明确。本研究的目的是提供一种改进和更新的药物分类映射方法。此外,我们旨在使用这种新的映射方法概述瑞士患有 CCs 的患者比例。
该数据库包括来自年龄在 18 岁或以上的患者的医疗和药房索赔数据(2011 年)。基于处方药物数据并使用解剖治疗化学(ATC)分类系统,由医学专家审查确定患有 CCs 的患者。通过性别和年龄组计算患有 CCs 的患者比例。我们构建了多个逻辑回归模型来评估患者特征与患有 CC 之间的关联,以及心血管疾病(CVD)的危险因素(糖尿病、高血脂症)与 CVD 之间的关联,以及 CVD 作为最常见的 CC 之一。
共确定了 22 种 CCs。在 2011 年,932612 名入组患者中,有 62%的患者开了至少一种治疗 CC 的药物。风湿性疾病、CVD 和疼痛是最常见的 CCs。29%的人患有 CVD,10%的人同时患有 CVD 和高血脂症,4%的人患有 CVD 和糖尿病,2%的人患有这三种疾病。回归模型表明,糖尿病和高血脂症与 CVD 密切相关。
我们使用药房索赔数据开发了一种更新和改进的方法,用于可行且有效的衡量患者慢性病状况。当缺乏临床数据时,药房药物数据可能是衡量人群疾病负担的宝贵资源。这种方法可能有助于关于卫生服务来源和风险调整建模的卫生政策辩论。