Edwards F H, Cohen A J, Bellamy R F, Thompson L, Weston L
F. Edward Hebert School of Medicine, Uniformed Services University of Health Sciences, Bethesda, MD.
Chest. 1990 May;97(5):1125-9. doi: 10.1378/chest.97.5.1125.
A statistical model has been developed to allow for prediction of individual patient prognosis following urgent/emergent coronary artery bypass grafting (CABG). None of the models previously described for use in coronary artery surgery has been tested with a prospective patient series that confirms the true predictive capacity of the model. Ideally, the predictive ability of such models should be validated with prospective trials. To examine the feasibility of statistical modeling in this clinical context, a computerized model based on the theorem of Bayes was developed to predict operative mortality for urgent coronary artery surgery. The presence or absence of 20 risk factors was determined for each of 405 consecutive patients undergoing urgent coronary artery surgery from January 1984 to January 1989. The first 100 patients were used to develop a database for the model, which was then used to prospectively evaluate the remaining 305 patients. There was good agreement between predicted and observed results. Models of this kind are particularly advantageous because of the ability to (1) accommodate multiple risk factors, (2) become tailored to a specific practice, and (3) determine individual rather than group prognosis. Validation with a prospective trial confirms the practical utility of this approach. This model has reliably predicted the risk associated with urgent coronary artery surgery and may provide important clinical information for the management of patients being evaluated for urgent revascularization.
已开发出一种统计模型,用于预测紧急冠状动脉旁路移植术(CABG)后个体患者的预后。先前描述的用于冠状动脉手术的模型,均未在前瞻性患者系列中进行测试以证实该模型的真正预测能力。理想情况下,此类模型的预测能力应通过前瞻性试验进行验证。为检验在此临床背景下进行统计建模的可行性,基于贝叶斯定理开发了一种计算机模型,以预测紧急冠状动脉手术的手术死亡率。对1984年1月至1989年1月连续接受紧急冠状动脉手术的405例患者中的每一例,确定了20个风险因素的存在或不存在。前100例患者用于建立该模型的数据库,然后用于前瞻性评估其余305例患者。预测结果与观察结果之间具有良好的一致性。这种模型特别有利,因为它能够:(1)容纳多个风险因素;(2)根据特定实践进行调整;(3)确定个体而非群体的预后。前瞻性试验验证证实了该方法的实际效用。该模型已可靠地预测了与紧急冠状动脉手术相关的风险,并可为正在接受紧急血运重建评估的患者管理提供重要的临床信息。