美国医疗系统从ICD-9向ICD-10过渡中高维倾向评分程序的适应性

IF 3.4 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Clinical Epidemiology Pub Date : 2023-01-01 DOI:10.2147/CLEP.S405165
Amir Sarayani, Joshua D Brown, Christian Hampp, William T Donahoo, Almut G Winterstein
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引用次数: 0

摘要

背景:高维倾向评分程序(HDPS)是一种数据驱动的方法,以协助控制药物流行病学研究中的混杂。美国卫生系统向国际疾病分类(ICD-9/10)的过渡可能会给应用HDPS程序带来不确定性。方法:我们在MarketScan®商业索赔数据库中收集了新开始使用塞来昔布或传统非甾体抗炎药的患者的基本队列,以比较胃肠道出血风险。然后,我们根据ICD时代预定义的患者选择模式,从基础队列中创建了自举假设队列。测试了三种部署HDPS的策略:1)按ICD时代划分队列,部署两次HDPS,并汇集相对风险(合并RR); 2)将每个ICD时代的代码视为单独的数据维度,并在整个队列中部署HDPS(数据维度);3)在整个队列中部署HDPS之前,将两个时代的ICD代码映射到临床分类软件(CCS)概念(CCS映射)。我们计算了百分比偏差和均方根误差来比较这些策略。结果:在每个ICD时代的患者选择模式在暴露组之间具有可比性的队列中观察到类似的偏倚减少。在患者选择中存在相当大的差异,我们观察到数据维度策略中倾向得分的双峰分布,表明工具样协变量。此外,在这种情况下,CCS映射策略比混合RR和数据维度策略至少减少30%的偏差(RMSE分别为0.14、0.19和0.21)。结论:在跨越两个ICD时代的药物流行病学研究中部署HDPS时,将ICD代码映射到像CCS这样的稳定术语是减少残留偏差的有用策略。
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Adaptability of High Dimensional Propensity Score Procedure in the Transition from ICD-9 to ICD-10 in the US Healthcare System.

Background: High-Dimensional Propensity Score procedure (HDPS) is a data-driven approach to assist control for confounding in pharmacoepidemiologic research. The transition to the International Classification of Disease (ICD-9/10) in the US health system may pose uncertainty in applying the HDPS procedure.

Methods: We assembled a base cohort of patients in MarketScan® Commercial Claims Database who had newly initiated celecoxib or traditional NSAIDs to compare gastrointestinal bleeding risk. We then created bootstrapped hypothetical cohorts from the base cohort with predefined patient selection patterns from the ICD eras. Three strategies for HDPS deployment were tested: 1) split the cohort by ICD era, deploy HDPS twice, and pool the relative risks (pooled RR), 2) consider codes from each ICD era as a separate data dimension and deploy HDPS in the entire cohort (data dimensions) and 3) map ICD codes from both eras to Clinical Classifications Software (CCS) concepts before deploying HDPS in the entire cohort (CCS mapping). We calculated percent bias and root-mean-squared error to compare the strategies.

Results: A similar bias reduction was observed in cohorts where patient selection pattern from each ICD era was comparable between the exposure groups. In the presence of considerable disparity in patient selection, we observed a bimodal distribution of propensity scores in the data dimensions strategy, indicating instrument-like covariates. Moreover, the CCS mapping strategy resulted in at least 30% less bias than pooled RR and data dimensions strategies (RMSE: 0.14, 0.19, 0.21, respectively) in this scenario.

Conclusion: Mapping ICD codes to a stable terminology like CCS serves as a helpful strategy to reduce residual bias when deploying HDPS in pharmacoepidemiologic studies spanning both ICD eras.

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来源期刊
Clinical Epidemiology
Clinical Epidemiology Medicine-Epidemiology
CiteScore
6.30
自引率
5.10%
发文量
169
审稿时长
16 weeks
期刊介绍: Clinical Epidemiology is an international, peer reviewed, open access journal. Clinical Epidemiology focuses on the application of epidemiological principles and questions relating to patients and clinical care in terms of prevention, diagnosis, prognosis, and treatment. Clinical Epidemiology welcomes papers covering these topics in form of original research and systematic reviews. Clinical Epidemiology has a special interest in international electronic medical patient records and other routine health care data, especially as applied to safety of medical interventions, clinical utility of diagnostic procedures, understanding short- and long-term clinical course of diseases, clinical epidemiological and biostatistical methods, and systematic reviews. When considering submission of a paper utilizing publicly-available data, authors should ensure that such studies add significantly to the body of knowledge and that they use appropriate validated methods for identifying health outcomes. The journal has launched special series describing existing data sources for clinical epidemiology, international health care systems and validation studies of algorithms based on databases and registries.
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