Moran John L, Solomon Patricia J, Peisach Aaron R, Martin Jeffrey
Department of Intensive Care Medicine, The Queen Elizabeth Hospital, Woodville, South Australia, Australia.
J Eval Clin Pract. 2007 Jun;13(3):381-9. doi: 10.1111/j.1365-2753.2006.00711.x.
Generalized linear models (GLMs) have recently been introduced into cost data analysis. GLMs, transformations of the linear regression model, are characterized by a particular response distribution from one of the exponential family of distributions and monotonic link function which relates the response mean to a scale on which additive model effects operate.
This study compared GLMs and ordinary least squares regression (OLS) in predicting individual patient costs in adult intensive care units (ICUs) and sought to define the utility of the inverse Gaussian distribution family within GLMs.
A prospective 'ground-up' utilization costing study was performed in three adult university associated ICUs, enrolling consecutive ICU admissions over a 6-month period in 1991. ICU utilization, patient demographic and ICU admission day data were recorded by dedicated data collectors. Model performance was assessed by prediction error [mean absolute error (MAE), root mean squared error (RMSE)] and residual analysis.
The cohort, 1098 patients surviving ICU, was of mean (SD) age 56 (19.5) years and 41% female. Patient costs per ICU episode (1991 A$) were A$6311 (9689), with range A$106 to A$95602. Prediction error for mean costs was minimal (MAE 4780; RMSE 8965) with OLS using heteroscedastic retransformation of log costs and GLM with Gaussian family and log link (MAE 4798; RMSE 8907). Residual analysis suggested optimal overall performance for the above two models and a GLM with inverse Gaussian family and log link.
Traditional cost models of OLS with (log) cost transformation may be supplemented by appropriately specified GLM which more closely model the error structure.
广义线性模型(GLMs)最近已被引入成本数据分析。GLMs是线性回归模型的变换,其特征在于来自指数分布族之一的特定响应分布以及将响应均值与加法模型效应作用的尺度相关联的单调链接函数。
本研究比较了GLMs和普通最小二乘法回归(OLS)在预测成人重症监护病房(ICU)个体患者成本方面的效果,并试图确定GLMs中逆高斯分布族的效用。
在三所与大学相关的成人ICU中进行了一项前瞻性“自下而上”的使用成本研究,纳入了1991年6个月期间连续入住ICU的患者。由专门的数据收集人员记录ICU的使用情况、患者人口统计学和ICU入院日数据。通过预测误差[平均绝对误差(MAE)、均方根误差(RMSE)]和残差分析评估模型性能。
该队列包括1098名在ICU存活的患者,平均(标准差)年龄为56(19.5)岁,女性占41%。每次ICU住院期间的患者成本(1991年澳元)为6311澳元(9689澳元),范围为106澳元至95602澳元。使用对数成本的异方差重新变换的OLS以及具有高斯族和对数链接的GLM,平均成本的预测误差最小(MAE为4780;RMSE为8965)(MAE为4798;RMSE为8907)。残差分析表明上述两种模型以及具有逆高斯族和对数链接的GLM总体性能最佳。
传统的带有(对数)成本变换的OLS成本模型可以通过适当指定的GLM进行补充,后者能更精确地模拟误差结构。