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基于药物使用和社会人口统计学变量的慢性病患病率映射:在荷兰医疗保健中使用 LASSO 对行政数据来源的应用。

Mapping chronic disease prevalence based on medication use and socio-demographic variables: an application of LASSO on administrative data sources in healthcare in the Netherlands.

机构信息

RIVM (National Institute for Public Health and the Environment), Centre for Nutrition, Prevention and Health Services, P.O. Box 1, 3720, BA, Bilthoven, The Netherlands.

Groningen University, UMCG, Department of Epidemiology, Groningen, The Netherlands.

出版信息

BMC Public Health. 2021 Jun 2;21(1):1039. doi: 10.1186/s12889-021-10754-4.

Abstract

BACKGROUND

Policymakers generally lack sufficiently detailed health information to develop localized health policy plans. Chronic disease prevalence mapping is difficult as accurate direct sources are often lacking. Improvement is possible by adding extra information such as medication use and demographic information to identify disease. The aim of the current study was to obtain small geographic area prevalence estimates for four common chronic diseases by modelling based on medication use and socio-economic variables and next to investigate regional patterns of disease.

METHODS

Administrative hospital records and general practitioner registry data were linked to medication use and socio-economic characteristics. The training set (n = 707,021) contained GP diagnosis and/or hospital admission diagnosis as the standard for disease prevalence. For the entire Dutch population (n = 16,777,888), all information except GP diagnosis and hospital admission was available. LASSO regression models for binary outcomes were used to select variables strongly associated with disease. Dutch municipality (non-)standardized prevalence estimates for stroke, CHD, COPD and diabetes were then based on averages of predicted probabilities for each individual inhabitant.

RESULTS

Adding medication use data as a predictor substantially improved model performance. Estimates at the municipality level performed best for diabetes with a weighted percentage error (WPE) of 6.8%, and worst for COPD (WPE 14.5%)Disease prevalence showed clear regional patterns, also after standardization for age.

CONCLUSION

Adding medication use as an indicator of disease prevalence next to socio-economic variables substantially improved estimates at the municipality level. The resulting individual disease probabilities could be aggregated into any desired regional level and provide a useful tool to identify regional patterns and inform local policy.

摘要

背景

政策制定者通常缺乏足够详细的健康信息来制定本地化的健康政策计划。由于缺乏准确的直接来源,慢性病患病率的绘制较为困难。通过添加药物使用和人口统计信息等额外信息来识别疾病,情况可能会得到改善。本研究的目的是通过基于药物使用和社会经济变量的建模来获得四个常见慢性病在小地理区域的患病率估计,并进一步研究疾病的区域模式。

方法

将医院行政记录和全科医生登记数据与药物使用和社会经济特征相关联。训练集(n=707021)包含全科医生诊断和/或医院入院诊断作为疾病患病率的标准。对于整个荷兰人口(n=16777888),除了全科医生诊断和医院入院诊断外,所有信息均可获得。用于二元结果的 LASSO 回归模型用于选择与疾病强烈相关的变量。然后,根据每个个体居民的预测概率平均值,为荷兰市(非)标准化的中风、CHD、COPD 和糖尿病患病率估计数。

结果

添加药物使用数据作为预测因子可显著提高模型性能。基于每个居民的预测概率平均值,在市一级进行的估计对糖尿病的表现最佳(加权百分比误差(WPE)为 6.8%),对 COPD 的表现最差(WPE 为 14.5%)。疾病患病率表现出明显的区域模式,即使在标准化年龄后也是如此。

结论

在社会经济变量之外添加药物使用作为疾病患病率的指标,可显著提高市一级的估计数。由此产生的个体疾病概率可以聚合到任何所需的区域水平,并为识别区域模式和为地方政策提供有用的工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b10d/8170948/91e74faca98c/12889_2021_10754_Fig1_HTML.jpg

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