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首页> 外文期刊>International Journal of Population Data Science >Analysing complex linked administrative data in health services research: Issues and solutions
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Analysing complex linked administrative data in health services research: Issues and solutions

机译:在卫生服务研究中分析复杂的链接行政数据:问题和解决方案

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IntroductionLinked administrative data are increasingly being used to evaluate the impact of health policy on health-service use/cost because they can comprehensively capture whole of population interactions with the health system. These analyses are complex comprising unbalanced panels and are at risk of endogeneity and associated problems. Objectives and ApproachWe evaluated the impact of changes in regularity of general practitioner contact on diabetes related hospitalisation before and after care coordination policies using whole of population, person-level linked primary care, hospital, Electoral Roll and death records. Complex panel random-effects modelling techniques were required due to the unbalanced structure of the data (individuals could exit and re-enter the study repeatedly), over-dispersion and high proportion of zeros, changes in availability of tests (ascertainment bias), the likelihood of prior health service use influencing the dependent variable (initial conditions and simultaneity/reverse causality bias) and likely correlation of observed and unobserved variables. ResultsMultivariable zero-inflated negative binomial and Cragg-hurdle clustered robust regression, which include separate components to model zero and non-zero outcomes, were required for these data. Mundlak variables (group-means of time-varying variables) were used to relax the assumption in the random-effects estimator that the observed variables were uncorrelated with the unobserved ones. Prior health service use was adjusted for using 4-year lags of GP contact and one-year lag of hospitalisation. The initial value of the dependent variable resolved the “initial condition” problem. Ascertainment bias was addressed using the number of years available for identification for each person as a covariate. AIC/BIC values were used to identify the best model. We found that more regular GP contact was associated with fewer hospitalisations, however this attenuated over time. Conclusion/ImplicationsAvailability of linked data, together with increases in computing power, has vastly increased its potential for use. This has also increased the complexity of analyses being undertaken necessitating recognizing and addressing problems, such as endogeneity, that arise due to the observational nature of the studies undertaken.
机译:简介越来越多地使用链接的行政数据来评估卫生政策对卫生服务使用/成本的影响,因为它们可以全面捕获整个人群与卫生系统的互动。这些分析非常复杂,包括不平衡的面板,并且存在内生性和相关问题的风险。目的和方法我们使用人口总数,个人水平相联系的初级保健,医院,选举记录和死亡记录评估了全科医师接触规律变化对护理相关政策前后的糖尿病相关住院的影响。由于数据结构不平衡(个人可能会反复退出并重新进入研究),过度分散和零比例高,测试可用性的变化(确定性偏倚),先前使用卫生服务的可能性影响因变量(初始条件和同时性/反向因果关系偏差)以及观察到的和未观察到的变量的可能相关性。结果这些数据需要多变量零膨胀负二项式和Cragg-hurdle聚类鲁棒回归,其中包括分别建模零和非零结果的组件。 Mundlak变量(时变变量的组均值)用于放宽随机效应估计量中的假设,即观察到的变量与未观察到的变量不相关。调整了先前的医疗服务使用时间,以使用全科医生联系的4年延迟和住院的一年延迟。因变量的初始值解决了“初始条件”问题。确定性偏倚是通过可用于识别每个人的年数作为协变量来解决的。 AIC / BIC值用于确定最佳模型。我们发现,更规律的全科医生联系减少了住院次数,但是随着时间的流逝,这种情况有所减少。结论/含义链接数据的可用性以及计算能力的提高,极大地提高了其使用潜力。这也增加了进行分析的复杂性,使得必须认识和解决由于所进行研究的观察性而产生的问题,例如内生性。

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