Donati A, Ruzzi M, Adrario E, Pelaia P, Coluzzi F, Gabbanelli V, Pietropaoli P
Department of Neuroscience, Anaesthesia and Intensive Care Unit, Marche Polytechnic University, Ancona, Italy.
Br J Anaesth. 2004 Sep;93(3):393-9. doi: 10.1093/bja/aeh210. Epub 2004 Jun 25.
Although the POSSUM (Physiological and Operative Severity Score for the enumeration of Mortality and Morbidity) score can be used to calculate operative risk, its complexity makes its use unfeasible in the immediate clinical setting. The aim of this study was to create a new model, based on ASA status, to predict mortality.
Data were collected in two hospitals. All types of surgery were included except for cardiac surgery and Caesarean delivery. Age, sex and preoperative information, including the presence of cardiocirculatory and/or lung disease, renal failure, diabetes mellitus, hepatic disease, cancer, Glasgow Coma Score, ASA grade, surgical diagnosis, severity of the procedure and type of surgery (elective, urgent or emergency), were recorded for each patient. The model was developed using a data set incorporating data from 1936 surgical patients, and validated using data from a further 1849 patients. Forward stepwise logistic regression was used to build the model. Goodness of fit was examined using the Hosmer-Lemeshow test and receiver operating characteristic (ROC) curve analyses were performed on both data sets to test calibration and discrimination. In the validation data set, the new model was compared with POSSUM and P-POSSUM for both calibration and discrimination, and with ASA alone to compare discrimination.
The following variables were included in the new model: ASA status, age, type of surgery (elective, urgent, emergency) and degree of surgery (minor, moderate or major). Calibration and discrimination of the new model were good in both development and validation data sets. This new model was better calibrated in the validation data set (Hosmer-Lemeshow goodness-of-fit test: chi(2)=6.8017, P=0.7440) than either P-POSSUM (chi(2)=14.4643, P=0.1528) or POSSUM, which was not calibrated (chi(2)=31.8147, P=0.0004). POSSUM and P-POSSUM had better discrimination than the new model, although this was not statistically significant. Comparing the two ROC curves, the new model had better discrimination than ASA alone (difference between areas, 0.077, SE 0.034, 95% confidence interval 0.012-0.143, P=0.021).
This new, ASA status-based model is simple to use and can be performed routinely in the operating room to predict operative risk for both elective and emergency surgery.
尽管POSSUM(用于计算死亡率和发病率的生理和手术严重程度评分)评分可用于计算手术风险,但其复杂性使其在即时临床环境中无法使用。本研究的目的是创建一种基于美国麻醉医师协会(ASA)分级的新模型来预测死亡率。
在两家医院收集数据。除心脏手术和剖宫产外,纳入所有类型的手术。记录每位患者的年龄、性别和术前信息,包括是否存在心血管和/或肺部疾病、肾衰竭、糖尿病、肝病、癌症、格拉斯哥昏迷评分、ASA分级、手术诊断、手术严重程度和手术类型(择期、紧急或急诊)。该模型使用包含1936例手术患者数据的数据集进行开发,并使用另外1849例患者的数据进行验证。采用向前逐步逻辑回归构建模型。使用Hosmer-Lemeshow检验检查拟合优度,并对两个数据集进行受试者工作特征(ROC)曲线分析以测试校准和区分度。在验证数据集中,将新模型与POSSUM和P-POSSUM在校准和区分度方面进行比较,并与单独的ASA分级在区分度方面进行比较。
新模型纳入了以下变量:ASA分级、年龄、手术类型(择期、紧急、急诊)和手术程度(小、中或大)。新模型在开发数据集和验证数据集中的校准和区分度均良好。在验证数据集中,该新模型的校准效果优于P-POSSUM(Hosmer-Lemeshow拟合优度检验:χ²=14.4643,P=0.1528)或未校准的POSSUM(χ²=31.8147,P=0.0004)。POSSUM和P-POSSUM的区分度优于新模型,尽管这在统计学上不显著。比较两条ROC曲线,新模型的区分度优于单独的ASA分级(曲线下面积差异为0.077,标准误为0.034,95%置信区间为0.012 - 0.143,P=0.021)。
这种基于ASA分级的新模型使用简单,可在手术室常规应用,以预测择期和急诊手术的手术风险。