Abad-Grau María M, Ierache Jorge, Cervino Claudio, Sebastiani Paola
Department of Computer Languages and Systems, University of Granada, c/Periodista Daniel Saucedo Aranda, 18071 Granada, Spain.
J Biomed Inform. 2008 Jun;41(3):432-41. doi: 10.1016/j.jbi.2008.01.007. Epub 2008 Feb 5.
Compared with expert systems for specific disease diagnosis, knowledge-based systems to assist decision making in triage usually try to cover a much wider domain but can use a smaller set of variables due to time restrictions, many of them subjective so that accurate models are difficult to build. In this paper, we first study criteria that most affect the performance of systems for triage assistance. Such criteria include whether principled approaches from machine learning can be used to increase accuracy and robustness and to represent uncertainty, whether data and model integration can be performed or whether temporal evolution can be modeled to implement retriage or represent medication responses. Following the most important criteria, we explore current systems and identify some missing features that, if added, may yield to more accurate triage systems.
与用于特定疾病诊断的专家系统相比,基于知识的系统在分诊中辅助决策通常试图覆盖更广泛的领域,但由于时间限制,可能会使用较少的变量集,其中许多变量是主观的,因此难以构建准确的模型。在本文中,我们首先研究对分诊辅助系统性能影响最大的标准。这些标准包括是否可以使用机器学习的原则性方法来提高准确性和鲁棒性以及表示不确定性,是否可以进行数据和模型集成,或者是否可以对时间演变进行建模以实施重新分诊或表示药物反应。根据最重要的标准,我们探索当前的系统,并识别一些缺失的特征,如果添加这些特征,可能会产生更准确的分诊系统。