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Matching for Several Sparse Nominal Variables in a Case-Control Study of Readmission Following Surgery

机译:手术后再入病例对照研究中几个稀疏名义变量的匹配

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Matching for several nominal covariates with many levels has usually been thought to be difficult because these covariates combine to form an enormous number of interaction categories with few if any people in most such categories. Moreover, because nominal variables are not ordered, there is often no notion of a "close substitute" when an exact match is unavailable. In a case-control study of the risk factors for read-mission within 30 days of surgery in the Medicare population, we wished to match for 47 hospitals, 15 surgical procedures grouped or nested within 5 procedure groups, two genders, or 47×15×2=1410 categories. In addition, we wished to match as closely as possible for the continuous variable age (65-80 years). There were 1380 readmitted patients or cases. A fractional factorial experiment may balance main effects and low-order interactions without achieving balance for high-order interactions. In an analogous fashion, we balance certain main effects and low-order interactions among the covariates; moreover, we use as many exactly matched pairs as possible. This is done by creating a match that is exact for several variables, with a close match for age, and both a "near-exact match" and a "finely balanced match" for another nominal variable, in this case a 47 × 5 = 235 category variable representing the interaction of the 47 hospitals and the five surgical procedure groups. The method is easily implemented in R.
机译:通常认为匹配具有多个级别的几个名义协变量是困难的,因为这些协变量组合起来形成了巨大的交互作用类别,而大多数此类类别中的人很少。此外,由于没有对名义变量进行排序,因此当没有精确匹配时,通常没有“近似替代”的概念。在一项针对Medicare人群在手术后30天内再次通读危险因素的病例对照研究中,我们希望为47所医院,15个手术程序分组或嵌套在5个程序组,两个性别或47×15中进行匹配×2 = 1410个类别。此外,我们希望尽可能地匹配连续可变年龄(65-80岁)。有1380例再入院患者或病例。分数阶乘实验可能会平衡主要效果和低阶交互,而不会达到高阶交互的平衡。以类似的方式,我们在协变量之间平衡了某些主要影响和低阶相互作用。此外,我们使用尽可能多的完全匹配的对。这是通过创建一个与多个变量完全匹配的匹配项,并与年龄紧密匹配,并为另一个名义变量(在这种情况下为47×5 = 235个类别变量,代表47家医院和五个手术程序组之间的相互作用。该方法很容易在R中实现。

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