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首页> 外文期刊>Journal of the American College of Surgeons >Risk adjustment in the American College of Surgeons National Surgical Quality Improvement Program: a comparison of logistic versus hierarchical modeling.
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Risk adjustment in the American College of Surgeons National Surgical Quality Improvement Program: a comparison of logistic versus hierarchical modeling.

机译:美国外科医生学院国家外科手术质量改善计划中的风险调整:逻辑模型与层次模型的比较。

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BACKGROUND: Although logistic regression has commonly been used to adjust for risk differences in patient and case mix to permit quality comparisons across hospitals, hierarchical modeling has been advocated as the preferred methodology, because it accounts for clustering of patients within hospitals. It is unclear whether hierarchical models would yield important differences in quality assessments compared with logistic models when applied to American College of Surgeons (ACS) National Surgical Quality Improvement Program (NSQIP) data. Our objective was to evaluate differences in logistic versus hierarchical modeling for identifying hospitals with outlying outcomes in the ACS-NSQIP. STUDY DESIGN: Data from ACS-NSQIP patients who underwent colorectal operations in 2008 at hospitals that reported at least 100 operations were used to generate logistic and hierarchical prediction models for 30-day morbidity and mortality. Differences in risk-adjusted performance (ratio of observed-to-expected events) and outlier detections from the two models were compared. RESULTS: Logistic and hierarchical models identified the same 25 hospitals as morbidity outliers (14 low and 11 high outliers), but the hierarchical model identified 2 additional high outliers. Both models identified the same eight hospitals as mortality outliers (five low and three high outliers). The values of observed-to-expected events ratios and p values from the two models were highly correlated. Results were similar when data were permitted from hospitals providing < 100 patients. CONCLUSIONS: When applied to ACS-NSQIP data, logistic and hierarchical models provided nearly identical results with respect to identification of hospitals' observed-to-expected events ratio outliers. As hierarchical models are prone to implementation problems, logistic regression will remain an accurate and efficient method for performing risk adjustment of hospital quality comparisons.
机译:背景:尽管逻辑回归通常用于调整患者和病例组合中的风险差异以允许在医院之间进行质量比较,但由于建模考虑了患者在医院内的聚类问题,因此提倡分层建模是首选方法。当应用于美国外科医师学会(ACS)国家外科手术质量改善计划(NSQIP)数据时,与逻辑模型相比,分层模型是否会在质量评估上产生重要差异,目前尚不清楚。我们的目标是评估逻辑模型和层次模型之间的差异,以识别出ACS-NSQIP中结局明显的医院。研究设计:2008年在医院进行了大肠手术的ACS-NSQIP患者的数据报告了至少100次手术,这些数据用于生成30天发病率和死亡率的逻辑和分层预测模型。比较了两种模型的风险调整后绩效(观察到预期事件的比率)和异常值检测之间的差异。结果:逻辑模型和层次模型确定了25所医院作为发病率异常值(14个低异常值和11个高异常值),但是该层次模型确定了另外2个高异常值。两种模型都将相同的八家医院确定为死亡率异常值(五个较低的异常值和三个较高的异常值)。两个模型的观测事件与预期事件之比的值与p值高度相关。当允许<100名患者的医院提供数据时,结果相似。结论:在应用于ACS-NSQIP数据时,逻辑模型和层次模型在识别医院观察到的预期事件比率异常值方面提供了几乎相同的结果。由于分层模型易于实现问题,逻辑回归将仍然是执行医院质量比较风险调整的准确而有效的方法。

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