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Multiple Imputation to Deal with Missing Clinical Data in Rheumatologic Surveys: an Application in the WHO-ILAR COPCORD Study in Iran

机译:风湿病学调查中使用多种插补方法来处理临床数据缺失的问题:在伊朗WHO-ILAR COPCORD研究中的应用

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Background:The aim of the article is demonstrating an application of multiple imputation (MI) for handling missing clinical data in the setting of rheumatologic surveys using data derived from 10291 people participating in the first phase of the Community Oriented Program for Control of Rheumatic Disorders (COPCORD) in Iran.Methods:Five data subsets were produced from the original data set. Certain demographics were selected as complete variables. In each subset, we created a univariate pattern of missingness for knee osteoarthritis status as the outcome variable (disease) using different mechanisms and percentages. The crude disease proportion and its standard error were estimated separately for each complete data set to be used as true (baseline) values for percent bias calculation. The parameters of interest were also estimated for each incomplete data subset using two approaches to deal with missing data including complete case analysis (CCA) and MI with various imputation numbers. The two approaches were compared using appropriate analysis of variance.Results:With CCA, percent bias associated with missing data was 8.67 (95% CI: 7.81–9.53) for the proportion and 13.67 (95% CI: 12.60–14.74) for the standard error. However, they were 6.42 (95% CI: 5.56–7.29) and 10.04 (95% CI: 8.97–11.11), respectively using the MI method (M=15). Percent bias in estimating disease proportion and its standard error was significantly lower in missing data analysis using MI compared with CCA (P< 0.05).Conclusion:To estimate the prevalence of rheumatic disorders such as knee osteoarthritis, applying MI using available demographics is superior to CCA.
机译:背景:本文的目的是演示一种多重插补(MI)在风湿病学调查中处理缺失的临床数据的应用,该数据使用的是来自参与风湿性疾病社区控制计划第一阶段的10291人的数据(方法:从原始数据集中产生五个数据子集。某些人口统计被选为完整变量。在每个子集中,我们使用不同的机制和百分比创建了膝盖骨关节炎状态的单变量缺失模式,作为结果变量(疾病)。对于每个完整的数据集,分别估计了原始疾病的比例及其标准误,以用作百分比偏差计算的真实(基准)值。还使用两种方法(包括完整案例分析(CCA)和具有各种插补编号的MI)处理缺失数据,为每个不完整数据子集估计了感兴趣的参数。结果:使用CCA,与缺失数据相关的百分比偏差的标准比例是8.67(95%CI:7.81–9.53)和标准的13.67(95%CI:12.60–14.74)。错误。但是,使用MI方法(M = 15),它们分别为6.42(95%CI:5.56-7.29)和10.04(95%CI:8.97-11.11)。与CCA相比,使用MI进行的缺失数据分析估计疾病比例及其标准误的百分率显着更低(P <0.05)。结论:为了评估风湿性疾病(如膝骨关节炎)的患病率,使用现有人口统计学方法进行MI评估优于CCA。

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