Biagioli Bonizella, Scolletta Sabino, Cevenini Gabriele, Barbini Emanuela, Giomarelli Pierpaolo, Barbini Paolo
Department of Surgery and Bioengineering, University of Siena, Viale Bracci, 53100 Siena, Italy.
Crit Care. 2006;10(3):R94. doi: 10.1186/cc4951. Epub 2006 Jul 17.
Although most risk-stratification scores are derived from preoperative patient variables, there are several intraoperative and postoperative variables that can influence prognosis. Higgins and colleagues previously evaluated the contribution of preoperative, intraoperative and postoperative predictors to the outcome. We developed a Bayes linear model to discriminate morbidity risk after coronary artery bypass grafting and compared it with three different score models: the Higgins' original scoring system, derived from the patient's status on admission to the intensive care unit (ICU), and two models designed and customized to our patient population.
We analyzed 88 operative risk factors; 1,090 consecutive adult patients who underwent coronary artery bypass grafting were studied. Training and testing data sets of 740 patients and 350 patients, respectively, were used. A stepwise approach enabled selection of an optimal subset of predictor variables. Model discrimination was assessed by receiver operating characteristic (ROC) curves, whereas calibration was measured using the Hosmer-Lemeshow goodness-of-fit test.
A set of 12 preoperative, intraoperative and postoperative predictor variables was identified for the Bayes linear model. Bayes and locally customized score models fitted according to the Hosmer-Lemeshow test. However, the comparison between the areas under the ROC curve proved that the Bayes linear classifier had a significantly higher discrimination capacity than the score models. Calibration and discrimination were both much worse with Higgins' original scoring system.
Most prediction rules use sequential numerical risk scoring to quantify prognosis and are an advanced form of audit. Score models are very attractive tools because their application in routine clinical practice is simple. If locally customized, they also predict patient morbidity in an acceptable manner. The Bayesian model seems to be a feasible alternative. It has better discrimination and can be tailored more easily to individual institutions.
尽管大多数风险分层评分是根据术前患者变量得出的,但有几个术中及术后变量会影响预后。希金斯及其同事之前评估了术前、术中和术后预测因素对预后的影响。我们开发了一种贝叶斯线性模型来判别冠状动脉搭桥术后的发病风险,并将其与三种不同的评分模型进行比较:希金斯的原始评分系统,该系统基于患者入住重症监护病房(ICU)时的状况得出;以及另外两种针对我们的患者群体设计和定制的模型。
我们分析了88个手术风险因素;研究了1090例连续接受冠状动脉搭桥手术的成年患者。分别使用了740例患者和350例患者的训练数据集和测试数据集。采用逐步方法来选择预测变量的最佳子集。通过受试者操作特征(ROC)曲线评估模型判别能力,而使用霍斯默 - 莱梅肖拟合优度检验来测量校准情况。
为贝叶斯线性模型确定了一组12个术前、术中和术后预测变量。根据霍斯默 - 莱梅肖检验,贝叶斯模型和局部定制的评分模型拟合良好。然而,ROC曲线下面积的比较证明,贝叶斯线性分类器的判别能力明显高于评分模型。希金斯的原始评分系统在校准和判别方面都差得多。
大多数预测规则使用顺序数值风险评分来量化预后,是一种先进的审计形式。评分模型是非常有吸引力的工具,因为它们在常规临床实践中的应用很简单。如果进行局部定制,它们也能以可接受的方式预测患者的发病率。贝叶斯模型似乎是一种可行的替代方案。它具有更好的判别能力,并且可以更轻松地针对个别机构进行定制。