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首页> 外文期刊>Medical care >Predicting Risk-Adjusted Mortality for CABG Surgery: Logistic Versus Hierarchical Logistic Models.
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Predicting Risk-Adjusted Mortality for CABG Surgery: Logistic Versus Hierarchical Logistic Models.

机译:预测CABG手术的风险调整后死亡率:逻辑与分层逻辑模型。

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摘要

BACKGROUND:: In recent years, several studies in the medical and health service research literature have advocated the use of hierarchical statistical models (multilevel models or random-effects models) to analyze data that are nested (eg, patients nested within hospitals). However, these models are computer-intensive and complicated to perform. There is virtually nothing in the literature that compares the results of standard logistic regression to those of hierarchical logistic models in predicting future provider performance. OBJECTIVE:: We sought to compare the ability of standard logistic regression relative to hierarchical modeling in predicting risk-adjusted hospital mortality rates for coronary artery bypass graft (CABG) surgery in New York State. DESIGN, SETTING AND PATIENTS:: New York State CABG Registry data from 1994 to 1999 were used to relate statistical predictions from a given year to hospital performance 2 years hence. MAIN OUTCOME MEASURES:: Predicted and observed hospital mortality rates 2 years hence were compared using root mean square errors, the mean absolute difference, and the number of hospitals whose predicted mortality rate data was within a 95% confidence interval around the observed mortality rate. RESULTS:: In these data, standard logistic regression performed similarly to hierarchical models, both with and without a second level covariate Differences in the criteria used for comparison were minimal, and when the differences could be statistically tested no significant differences were identified. CONCLUSIONS:: It is instructive to compare the predictive abilities of alternative statistical models in the process of assessing their relative performance on a specific database and application.
机译:背景:近年来,医学和卫生服务研究文献中的一些研究提倡使用分层统计模型(多级模型或随机效应模型)来分析嵌套的数据(例如,嵌套在医院内的患者)。但是,这些模型是计算机密集型的,执行起来很复杂。几乎没有什么文献可以将标准逻辑回归的结果与分层逻辑模型的结果进行比较,以预测未来的提供商绩效。目的::我们试图比较标准逻辑回归与分层建模在预测纽约州冠状动脉搭桥术(CABG)手术的风险调整后的医院死亡率方面的能力。设计,地点和患者:1994年至1999年的纽约州CABG注册中心数据用于将给定年份的统计预测与2年后的医院绩效进行关联。主要观察指标:使用均方根误差,平均绝对差和预测死亡率数据在观察死亡率附近95%置信区间内的医院数量,比较2年的预测和观察医院死亡率。结果:在这些数据中,标准逻辑回归的执行与分层模型相似,有和没有第二级协变量。用于比较的标准中的差异很小,并且当可以对差异进行统计学检验时,没有发现显着差异。结论:在评估替代统计模型在特定数据库和应用程序上的相对性能的过程中,比较替代统计模型的预测能力是有益的。

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