De Ritis G, Giovannini C, Picardo S, Pietropaoli P
Department of Anesthesiology and Intensive Care, University La Sapienza of Rome.
Minerva Anestesiol. 1995 May;61(5):173-81.
The aims of this prospective multicenter study were to identify variables associated with in-hospital mortality among patients undergoing surgical procedures, to develop a prediction rule, and to statistically validate its reliability.
Data from 24,654 consecutive informed patients over 15 years of age were collected from 22 surgical centers between January 1989 and December 1990. Using logistic regression analysis separate models were fit for seven surgical disciplines to predict the risk of 30-day in hospital mortality. Variables used to construct the regression models included age, sex, systolic blood pressure, renal dysfunction, hepatic dysfunction, concomitant diseases, severity of surgery, priority of surgery and duration of anesthesia. The performance of the prediction rule was evaluated by computing sensitivity, specificity and predictive values, analyzing the ROC curve and comparing observed with expected deaths.
The significance of the independent variables varied within each model. All models significantly predicted the occurrence of in-hospital mortality. At a 0.5 cuptoint of predicted risk sensitivity of prediction rule was 99.89%, positive predictive value 98.51%, and overall predictive value 98.41%, whereas specificity was 7.92% and negative value slightly higher than 50%. The area under the ROC curve was 0.80 (perfect, 1.0). The correlation between observed and expected deaths was 0.99.
This prediction rule, developed using multicenter data, is characterized by the following advantages: includes only nine variables; can be utilized by seven different surgical disciplines; is highly accurate, and is easily available to clinicals with access to a microcomputer or programmable calculator. This validated multivariate prediction rule would be useful both to calculate the risk of mortality for an individual surgical patient and to contrast observed and expected mortality rates for an institution or a particular clinician.
这项前瞻性多中心研究的目的是确定接受外科手术患者的院内死亡相关变量,制定预测规则,并对其可靠性进行统计学验证。
1989年1月至1990年12月期间,从22个外科中心收集了24654例15岁以上连续知情患者的数据。使用逻辑回归分析,针对七个外科学科分别建立模型,以预测30天院内死亡风险。用于构建回归模型的变量包括年龄、性别、收缩压、肾功能不全、肝功能不全、合并疾病、手术严重程度、手术优先级和麻醉持续时间。通过计算敏感性、特异性和预测值、分析ROC曲线以及比较观察到的死亡与预期死亡情况来评估预测规则的性能。
每个模型中自变量的显著性各不相同。所有模型均能显著预测院内死亡的发生。在预测风险的0.5截断点时,预测规则的敏感性为99.89%,阳性预测值为98.51%,总体预测值为98.41%,而特异性为7.92%,阴性预测值略高于50%。ROC曲线下面积为0.80(完美为1.0)。观察到的死亡与预期死亡之间的相关性为0.99。
使用多中心数据开发的该预测规则具有以下优点:仅包含九个变量;可被七个不同外科学科使用;高度准确,临床医生通过使用微型计算机或可编程计算器即可轻松获取。这种经过验证的多变量预测规则对于计算个体外科手术患者的死亡风险以及对比机构或特定临床医生观察到的死亡率与预期死亡率均有用处。