Department of Pediatrics and Emergency Medicine, University of Ottawa, Ottawa, ON, Canada.
J Med Syst. 2010 Aug;34(4):551-62. doi: 10.1007/s10916-009-9268-7. Epub 2009 Mar 11.
This paper describes the development of a tree-based decision model to predict the severity of pediatric asthma exacerbations in the emergency department (ED) at 2 h following triage. The model was constructed from retrospective patient data abstracted from the ED charts. The original data was preprocessed to eliminate questionable patient records and to normalize values of age-dependent clinical attributes. The model uses attributes routinely collected in the ED and provides predictions even for incomplete observations. Its performance was verified on independent validating data (split-sample validation) where it demonstrated AUC (area under ROC curve) of 0.83, sensitivity of 84%, specificity of 71% and the Brier score of 0.18. The model is intended to supplement an asthma clinical practice guideline, however, it can be also used as a stand-alone decision tool.
本文描述了一种基于树的决策模型的开发,用于预测分诊后 2 小时内急诊科(ED)儿童哮喘恶化的严重程度。该模型是根据从 ED 图表中提取的回顾性患者数据构建的。原始数据经过预处理,以消除可疑的患者记录并对依赖年龄的临床属性值进行归一化。该模型使用 ED 中常规收集的属性,甚至可以为不完整的观察结果提供预测。它在独立验证数据(分割样本验证)上的性能得到了验证,其中 AUC(ROC 曲线下面积)为 0.83,灵敏度为 84%,特异性为 71%,Brier 分数为 0.18。该模型旨在补充哮喘临床实践指南,但也可以用作独立的决策工具。