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首页> 外文期刊>Pharmacoepidemiology and drug safety >Confounding adjustment via a semi-automated high-dimensional propensity score algorithm: an application to electronic medical records.
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Confounding adjustment via a semi-automated high-dimensional propensity score algorithm: an application to electronic medical records.

机译:通过半自动的高维倾向评分算法进行的混淆调整:电子病历的应用。

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摘要

PURPOSE: A semi-automated high-dimensional propensity score (hd-PS) algorithm has been proposed to adjust for confounding in claims databases. The feasibility of using this algorithm in other types of healthcare databases is unknown. METHODS: We estimated the comparative safety of traditional non-steroidal anti-inflammatory drugs (NSAIDs) and selective COX-2 inhibitors regarding the risk of upper gastrointestinal bleeding (UGIB) in The Health Improvement Network, an electronic medical record (EMR) database in the UK. We compared the adjusted effect estimates when the confounders were identified using expert knowledge or the semi-automated hd-PS algorithm. RESULTS: Compared with the 411,616 traditional NSAID initiators, the crude odds ratio (OR) of UGIB was 1.50 (95%CI: 0.98, 2.28) for the 43,569 selective COX-2 inhibitor initiators. The OR dropped to 0.81 (0.52, 1.27) upon adjustment for known risk factors for UGIB that are typically available in both claims and EMR databases. The OR remained similar when further adjusting for covariates-smoking, alcohol consumption, and body mass index-that are not typically recorded in claims databases (OR 0.81; 0.51, 1.26) or adding 500 empirically identified covariates using the hd-PS algorithm (OR 0.78; 0.49, 1.22). Adjusting for age and sex plus 500 empirically identified covariates produced an OR of 0.87 (0.56, 1.34). CONCLUSIONS: The hd-PS algorithm can be implemented in pharmacoepidemiologic studies that use primary care EMR databases such as The Health Improvement Network. For the NSAID-UGIB association for which major confounders are well known, further adjustment for covariates selected by the algorithm had little impact on the effect estimate. Copyright (c) 2011 John Wiley & Sons, Ltd.
机译:目的:提出了一种半自动的高维倾向评分(hd-PS)算法,以针对索赔数据库中的混淆进行调整。在其他类型的医疗数据库中使用此算法的可行性尚不清楚。方法:我们估算了传统非甾体抗炎药(NSAIDs)和选择性COX-2抑制剂在健康改善网络中的上消化道出血风险(UGIB)的相对安全性,该网络是美国电子病历(EMR)数据库英国。当使用专家知识或半自动hd-PS算法识别混杂因素时,我们比较了调整后的效果估算值。结果:与411,616份传统NSAID引发剂相比,43,569种选择性COX-2抑制剂引发剂的UGIB的原油比值比(OR)为1.50(95%CI:0.98,2.28)。在调整了已知在UGIB和EMR数据库中均可找到的UGIB的已知风险因素后,OR降至0.81(0.52,1.27)。在进一步调整协变量(吸烟,酒精消耗和体重指数)时,OR保持相似,而这些变量通常未记录在索赔数据库中(OR 0.81; 0.51、1.26),或者使用hd-PS算法添加了500个根据经验确定的协变量(OR 0.78; 0.49,1.22)。调整年龄和性别,再加上500个根据经验确定的协变量,得出的OR为0.87(0.56,1.34)。结论:hd-PS算法可以在使用流行性疾病EMR数据库(如健康改善网络)的药物流行病学研究中实施。对于众所周知的主要混杂因素的NSAID-UGIB关联,对算法选择的协变量的进一步调整对效果估算的影响很小。版权所有(c)2011 John Wiley&Sons,Ltd.

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