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首页> 外文期刊>Annals of Surgery >Impact of statistical approaches for handling missing data on trauma center quality.
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Impact of statistical approaches for handling missing data on trauma center quality.

机译:统计方法处理丢失数据对创伤中心质量的影响。

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OBJECTIVE: To determine whether imputed data can be used to produce unbiased hospital quality measures. BACKGROUND: Different methods for handling missing data may influence which hospitals are designated as quality outliers. METHODS: Monte-Carlo simulation study based on 63,020 patients with no missing data in 68 hospitals using the National Trauma Data Bank (NTDB, version 6.1). Patients were assigned missing data for the motor component of the Glasgow coma scale (GCS) conditional on their observed clinical risk factors. Multiple imputation was then used to "fill in" the missing data. Hospital risk-adjusted quality measures (observed-to-expected mortality ratio) based either on (1) imputed data, (2) excluding patients with missing data (complete case analysis), or (3) excluding the predictor with missing data were compared with hospital quality based on the true data (no missing data). Pair-wise comparisons of hospital quality were performed using the intraclass correlation coefficient (ICC) and the kappa statistic. RESULTS: With 10% of the data missing, the level of agreement between multiple imputation and the true data (ICC = 0.99 and kappa = 0.87) was better compared with the level of agreement between complete case analysis and the true data (ICC = 0.93 and kappa = 0.62). Excluding the predictor (motor GCS) with missing data from the risk adjustment model resulted in the least amount of agreement with quality assessment based on the true data (ICC = 0.88 and kappa = 0.46). CONCLUSION: Multiple imputation can be used to impute missing data and yields hospital quality measures that are nearly identical to those based on the true data. Simply excluding patients with missing data or excluding risk factors with missing data from hospital quality assessment yields substantially inferior quality measures.
机译:目的:确定估算数据是否可用于产生公正的医院质量度量。背景:处理丢失数据的不同方法可能会影响哪些医院被指定为质量异常值。方法:蒙特卡洛模拟研究使用国家创伤数据库(NTDB,版本6.1)基于68所医院中的63,020名患者而没有丢失数据。根据观察到的临床危险因素,为患者分配了格拉斯哥昏迷量表(GCS)的运动成分缺失数据。然后使用多重插补来“填充”缺失的数据。根据(1)估算数据,(2)排除有缺失数据的患者(完整病例分析)或(3)排除有缺失数据的预测变量,比较医院风险调整后的质量测度(观察到的预期死亡率)基于真实数据的医院质量(无缺失数据)。使用组内相关系数(ICC)和kappa统计量进行医院质量的成对比较。结果:在缺少10%的数据的情况下,多重插补和真实数据之间的一致性(ICC = 0.99,kappa = 0.87)要比完整案例分析和真实数据之间的一致性(ICC = 0.93)更好和kappa = 0.62)。从风险调整模型中排除具有缺失数据的预测变量(运动GCS)导致与基于真实数据进行质量评估的一致性最少(ICC = 0.88,kappa = 0.46)。结论:多重插补可用于插补缺失的数据,并产生与基于真实数据的医院质量度量几乎相同的医院质量度量。从医院质量评估中简单地排除数据缺失的患者或排除数据缺失的风险因素会导致质量指标大大降低。

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