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On the Use of Summary Comorbidity Measures for Prognosis and Survival Treatment Effect Estimation

机译:汇总合并症措施在预后和生存治疗效果评估中的应用

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摘要

Prognostic scores have been proposed as outcome based confounder adjustment scores akin to propensity scores. However, prognostic scores have not been widely used in the substantive literature. Instead, comorbidity scores, which are limited versions of prognostic scores, have been used extensively by clinical and health services researchers. A comorbidity is an existing disease an individual has in addition to a primary condition of interest, such as cancer. Comorbidity scores are used to reduce the dimension of a vector of comorbidity variables into a single scalar variable. Such scores are often added to regression models with other non-comorbidity variables such as age and sex, both for analyzing prognosis and for confounder adjustment when analyzing treatment effects. Despite their widespread use, the properties of and conditions under which comorbidity scores are valid dimension reduction tools in statistical models is largely unknown. In this article, we show that under relatively standard assumptions, comorbidity scores can have equal prognostic and confounder-adjustment abilities as the individual comorbidity variables, but that biases can occur if there are additional effects, such as interactions, of covariates beyond that captured by the comorbidity score. Simulations were performed to illustrate empirical properties and a data example using breast cancer data from the SEER Medicare Database demonstrates the application of these results.
机译:已提出预后评分,作为基于结果的混杂因素调整评分,类似于倾向评分。但是,预后评分在实体文献中并未得到广泛使用。相反,合并症评分是预后评分的有限版本,已被临床和卫生服务研究人员广泛使用。合并症是个人除了主要的主要疾病外还患有的疾病,例如癌症。共病评分用于将共病变量向量的维数减小为单个标量变量。通常将此类评分与其他非合并症变量(例如年龄和性别)一起添加到回归模型中,以分析预后和分析治疗效果时的混杂因素调整。尽管它们被广泛使用,但合并症评分在统计模型中是有效的降维工具的性质和条件在很大程度上尚不清楚。在本文中,我们表明,在相对标准的假设下,合并症评分的预后和混杂调整能力与各个合并症变量相同,但是如果协变量存在其他影响(例如相互作用),且超出了所捕获的变量,则可能会产生偏差。合并症评分。进行了仿真以说明经验特性,使用来自SEER Medicare数据库的乳腺癌数据的数据示例证明了这些结果的应用。

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