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Applied comparison of large‐scale propensity score matching and cardinality matching for causal inference in observational research

机译:大规模倾销得分匹配和基数匹配对观测研究的因果推断的应用比较

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Cardinality matching (CM), a novel matching technique, finds the largest matched sample meeting prespecified balance criteria thereby overcoming limitations of propensity score matching (PSM) associated with limited covariate overlap, which are especially pronounced in studies with small sample sizes. The current study proposes a framework for large-scale CM (LS-CM); and compares large-scale PSM (LS-PSM) and LS-CM in terms of post-match sample size, covariate balance and residual confounding at progressively smaller sample sizes. Evaluation of LS-PSM and LS-CM within a comparative cohort study of new users of angiotensin-converting enzyme inhibitor (ACEI) and thiazide or thiazide-like diuretic monotherapy identified from a U.S. insurance claims database. Candidate covariates included patient demographics, and all observed prior conditions, drug exposures and procedures. Propensity scores were calculated using LASSO regression, and candidate covariates with non-zero beta coefficients in the propensity model were defined as matching covariates for use in LS-CM. One-to-one matching was performed using progressively tighter parameter settings. Covariate balance was assessed using standardized mean differences. Hazard ratios for negative control outcomes perceived as unassociated with treatment (i.e., true hazard ratio of 1) were estimated using unconditional Cox models. Residual confounding was assessed using the expected systematic error of the empirical null distribution of negative control effect estimates compared to the ground truth. To simulate diverse research conditions, analyses were repeated within 10?%, 1 and 0.5?% subsample groups with increasingly limited covariate overlap. A total of 172,117 patients (ACEI: 129,078; thiazide: 43,039) met the study criteria. As compared to LS-PSM, LS-CM was associated with increased sample retention. Although LS-PSM achieved balance across all matching covariates within the full study population, substantial matching covariate imbalance was observed within the 1 and 0.5?% subsample groups. Meanwhile, LS-CM achieved matching covariate balance across all analyses. LS-PSM was associated with better candidate covariate balance within the full study population. Otherwise, both matching techniques achieved comparable candidate covariate balance and expected systematic error. LS-CM found the largest matched sample meeting prespecified balance criteria while achieving comparable candidate covariate balance and residual confounding. We recommend LS-CM as an alternative to LS-PSM in studies with small sample sizes or limited covariate overlap.
机译:基数匹配(CM),一种新型匹配技术,找到预先匹配的匹配标准,从而克服了与有限的协变量重叠相关的倾向分数匹配(PSM)的限制,这在具有小样本尺寸的研究中特别明显。目前的研究提出了一种大型CM(LS-CM)的框架;在逐步较小的样本尺寸下比较匹配的样本尺寸,协变量平衡和残留混淆方面,比较大规模的PSM(LS-PSM)和LS-CM。在美国保险索赔数据库中鉴定的血管紧张素转换酶抑制剂(ACEI)和噻嗪类药物和噻嗪类药物或噻嗪类药物单疗法的比较队列和LS-CM的评价。候选协变量包括患者人口统计,并且所有观察到的先前条件,药物暴露和程序。使用索索回归计算倾向分数,并且在倾向模型中具有非零β系数的候选协变量被定义为匹配的协变量,用于LS-cm。使用逐步更严格的参数设置执行一对一匹配。使用标准化平均差异评估协变量平衡。使用无条件COX模型估计,估计有关治疗(即真正的危险比为1)所感知的阴性对照结果的危险比。与地面真理相比,使用对负控制效应估计的经验零分布的预期系统误差进行评估剩余混杂。为了模拟各种研究条件,分析在10μm,1和0.5℃内重复,具有越来越有限的协变量重叠。共有172,117名患者(Acei:129,078;噻嗪:43,039)达到了研究标准。与LS-PSM相比,LS-CM与增加的样品保留相关。虽然LS-PSM在完整研究人群中实现所有匹配的协变量,但在1和0.5?%的子样本组内观察到大量匹配的协变量不平衡。同时,LS-CM在所有分析中达到了协变量平衡。 LS-PSM与完整研究人群中更好的候选人协变量平衡有关。否则,匹配技术都达到了可比的候选协变量平衡和预期的系统误差。 LS-CM发现最大的匹配样本会议预先限定的平衡标准,同时实现了可比的候选人协变量平衡和剩余混杂性。我们建议LS-CM作为LS-PSM的替代品,采用小型样本尺寸或有限的协变量重叠。

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