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比较最小二乘法和分位数回归方法分析医院中位数收费。

Comparing least-squares and quantile regression approaches to analyzing median hospital charges.

机构信息

Department of Pediatrics, University of Utah School of Medicine, Salt Lake City, UT, USA.

出版信息

Acad Emerg Med. 2012 Jul;19(7):866-75. doi: 10.1111/j.1553-2712.2012.01388.x.

Abstract

BACKGROUND

Emergency department (ED) and hospital charges obtained from administrative data sets are useful descriptors of injury severity and the burden to EDs and the health care system. However, charges are typically positively skewed due to costly procedures, long hospital stays, and complicated or prolonged treatment for few patients. The median is not affected by extreme observations and is useful in describing and comparing distributions of hospital charges. A least-squares analysis employing a log transformation is one approach for estimating median hospital charges, corresponding confidence intervals (CIs), and differences between groups; however, this method requires certain distributional properties. An alternate method is quantile regression, which allows estimation and inference related to the median without making distributional assumptions.

OBJECTIVES

The objective was to compare the log-transformation least-squares method to the quantile regression approach for estimating median hospital charges, differences in median charges between groups, and associated CIs.

METHODS

The authors performed simulations using repeated sampling of observed statewide ED and hospital charges and charges randomly generated from a hypothetical lognormal distribution. The median and 95% CI and the multiplicative difference between the median charges of two groups were estimated using both least-squares and quantile regression methods. Performance of the two methods was evaluated.

RESULTS

In contrast to least squares, quantile regression produced estimates that were unbiased and had smaller mean square errors in simulations of observed ED and hospital charges. Both methods performed well in simulations of hypothetical charges that met least-squares method assumptions. When the data did not follow the assumed distribution, least-squares estimates were often biased, and the associated CIs had lower than expected coverage as sample size increased.

CONCLUSIONS

Quantile regression analyses of hospital charges provide unbiased estimates even when lognormal and equal variance assumptions are violated. These methods may be particularly useful in describing and analyzing hospital charges from administrative data sets.

摘要

背景

从管理数据集获取的急诊部 (ED) 和医院收费可用于描述伤害严重程度以及对 ED 和医疗保健系统的负担。然而,由于少数患者的昂贵程序、长时间住院和复杂或延长的治疗,收费通常呈正偏态分布。中位数不受极端观测值的影响,可用于描述和比较医院收费分布。采用对数变换的最小二乘分析是估计中位数医院收费、相应置信区间 (CI) 和组间差异的一种方法;然而,这种方法需要某些分布特性。另一种方法是分位数回归,它允许在不做出分布假设的情况下对中位数进行估计和推断。

目的

本研究旨在比较对数变换最小二乘法与分位数回归方法,以估计中位数医院收费、组间中位数收费差异以及相关的置信区间。

方法

作者通过对观察到的全州 ED 和医院收费以及从假设的对数正态分布中随机生成的收费进行重复抽样,进行了模拟研究。使用最小二乘法和分位数回归方法分别估计中位数和 95%CI 以及两组中位数收费的乘法差异。评估了这两种方法的性能。

结果

与最小二乘法相比,分位数回归产生的估计值在观察到的 ED 和医院收费模拟中无偏且均方误差较小。两种方法在满足最小二乘法假设的假设收费模拟中表现良好。当数据不符合假定分布时,最小二乘估计值通常存在偏差,并且随着样本量的增加,相关置信区间的覆盖范围低于预期。

结论

即使违反对数正态和等方差假设,分位数回归分析也可提供无偏的医院收费估计值。这些方法在描述和分析来自管理数据集的医院收费时可能特别有用。

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