Verduijn Marion, Peek Niels, Rosseel Peter M J, de Jonge Evert, de Mol Bas A J M
Department of Medical Informatics, Academic Medical Center (AMC), P.O. box 22700, 1100 DE Amsterdam, The Netherlands.
J Biomed Inform. 2007 Dec;40(6):609-18. doi: 10.1016/j.jbi.2007.07.003. Epub 2007 Jul 25.
Prognostic models are tools to predict the future outcome of disease and disease treatment, one of the fundamental tasks in clinical medicine. This article presents the prognostic Bayesian network (PBN) as a new type of prognostic model that builds on the Bayesian network methodology, and implements a dynamic, process-oriented view on prognosis. A PBN describes the mutual relationships between variables that come into play during subsequent stages of a care process and a clinical outcome. A dedicated procedure for inducing these networks from clinical data is presented. In this procedure, the network is composed of a collection of local supervised learning models that are recursively learned from the data. The procedure optimizes performance of the network's primary task, outcome prediction, and handles the fact that patients may drop out of the process in earlier stages. Furthermore, the article describes how PBNs can be applied to solve a number of information problems that are related to medical prognosis.
预后模型是预测疾病及疾病治疗未来结果的工具,是临床医学的基本任务之一。本文介绍了预后贝叶斯网络(PBN),它是一种基于贝叶斯网络方法构建的新型预后模型,并对预后实现了动态的、面向过程的观点。PBN描述了在护理过程后续阶段发挥作用的变量与临床结果之间的相互关系。本文提出了一种从临床数据中归纳这些网络的专门程序。在此程序中,网络由从数据中递归学习的一组局部监督学习模型组成。该程序优化了网络的主要任务——结果预测的性能,并处理了患者可能在早期阶段退出治疗过程这一情况。此外,本文还描述了PBN如何应用于解决一些与医学预后相关的信息问题。