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Relevance of the C-statistic when evaluating risk-adjustment models in surgery

机译:评估手术风险调整模型时C统计量的相关性

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Background: The measurement of hospital quality based on outcomes requires risk adjustment. The c-statistic is a popular tool used to judge model performance, but can be limited, particularly when evaluating specific operations in focused populations. Our objectives were to examine the interpretation and relevance of the c-statistic when used in models with increasingly similar case mix and to consider an alternative perspective on model calibration based on a graphical depiction of model fit. Study Design: From the American College of Surgeons National Surgical Quality Improvement Program (2008-2009), patients were identified who underwent a general surgery procedure, and procedure groups were increasingly restricted: colorectal-all, colorectal-elective cases only, and colorectal-elective cancer cases only. Mortality and serious morbidity outcomes were evaluated using logistic regression-based risk adjustment, and model c-statistics and calibration curves were used to compare model performance. Results: During the study period, 323,427 general, 47,605 colorectal-all, 39,860 colorectal-elective, and 21,680 colorectal cancer patients were studied. Mortality ranged from 1.0% in general surgery to 4.1% in the colorectal-all group, and serious morbidity ranged from 3.9% in general surgery to 12.4% in the colorectal-all procedural group. As case mix was restricted, c-statistics progressively declined from the general to the colorectal cancer surgery cohorts for both mortality and serious morbidity (mortality: 0.949 to 0.866; serious morbidity: 0.861 to 0.668). Calibration was evaluated graphically by examining predicted vs observed number of events over risk deciles. For both mortality and serious morbidity, there was no qualitative difference in calibration identified between the procedure groups. Conclusions: In the present study, we demonstrate how the c-statistic can become less informative and, in certain circumstances, can lead to incorrect model-based conclusions, as case mix is restricted and patients become more homogenous. Although it remains an important tool, caution is advised when the c-statistic is advanced as the sole measure of a model performance.
机译:背景:根据结果评估医院质量需要进行风险调整。 c统计量是用于判断模型性能的流行工具,但可能会受到限制,尤其是在评估重点人群中的特定操作时。我们的目标是检查c统计量在具有越来越相似的案例组合的模型中使用时的解释和相关性,并考虑基于模型拟合的图形描述考虑模型校准的替代观点。研究设计:从美国外科医师学会国家外科手术质量改善计划(2008-2009年)中,识别出接受了一般外科手术的患者,并且手术组越来越多:所有结直肠癌患者,仅选择结直肠癌患者以及结直肠癌患者仅选癌病例。使用基于逻辑回归的风险调整来评估死亡率和严重发病率结果,并使用模型c统计量和校准曲线来比较模型性能。结果:在研究期间,共研究了323,427名普通患者,全部47,605名大肠直肠癌患者,39,860名大肠直肠癌患者和21,680名大肠癌患者。死亡率在普通外科手术中为1.0%,在所有结直肠癌组中为4.1%,严重发病率在普通外科手术中是3.9%,在所有结直肠癌手术组中为12.4%。由于病例混合受到限制,因此从死亡率到严重发病率(死亡率:0.949至0.866;严重发病率:0.861至0.668)的c统计量从一般到大肠癌手术队列逐渐下降。通过检查超过风险指标的事件预测数量与观察数量,以图形方式评估校准。对于死亡率和严重的发病率,在程序组之间确定的校准没有质量上的差异。结论:在本研究中,我们证明了c统计量如何变得信息量较少,并且在某些情况下,由于病例混合受到限制并且患者变得更加同质,可能导致基于模型的结论不正确。尽管它仍然是重要的工具,但是当将c统计量作为模型性能的唯一度量时,建议谨慎行事。

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