Bulgiba A M, Razaz M
Department of Social and Preventive Medicine, Faculty of Medicine, University of Malaya, Kuala Lumpur 50603, Malaysia.
Int J Cardiol. 2005 Jun 22;102(1):87-93. doi: 10.1016/j.ijcard.2004.04.002.
The aim of the study was to use data from an electronic medical record system (EMR) to look for factors that would help us diagnose acute myocardial infarction (AMI) with the ultimate aim of using these factors in a decision support system for chest pain. We extracted 887 records from the electronic medical record system (EMR) in Selayang Hospital, Malaysia. We cleaned the data, extracted 69 possible variables and performed univariate and multivariate analysis. From the univariate analysis we find that 22 variables are significantly associated with a diagnosis of AMI. However, multiple logistic regression reveals that only 9 of these 22 variables are significantly related to a diagnosis of AMI. Race (Indian), male sex, sudden onset of persistent crushing pain, associated sweating and a history of diabetes mellitus are significant predictors of AMI. Pain that is relieved by other means and history of heart disease on treatment are important predictors of a diagnosis other than AMI. The degree of accuracy is high at 80.5%. There are 13 factors that are significant in the univariate analysis but are not among the nine significant factors in the multivariate analysis. These are location of pain, associated palpitations, nausea and vomiting; pain relieved by rest, pain aggravated by posture, cough, inspiration and exertion; age more than 40, being a smoker and abnormal chest wall and face examination. We believe that these findings can have important applications in the design of an intelligent decision support system for use in medical care as the predictive capability can be further refined with the use of intelligent computational techniques.
本研究的目的是利用电子病历系统(EMR)中的数据寻找有助于诊断急性心肌梗死(AMI)的因素,最终目标是将这些因素应用于胸痛决策支持系统。我们从马来西亚士拉央医院的电子病历系统(EMR)中提取了887条记录。我们对数据进行了清理,提取了69个可能的变量,并进行了单变量和多变量分析。从单变量分析中我们发现,22个变量与AMI诊断显著相关。然而,多元逻辑回归显示,这22个变量中只有9个与AMI诊断显著相关。种族(印度人)、男性、持续性压榨性疼痛突然发作、伴有出汗以及糖尿病史是AMI的显著预测因素。通过其他方式缓解的疼痛以及治疗时的心脏病史是除AMI之外其他诊断的重要预测因素。准确率高达80.5%。有13个因素在单变量分析中显著,但不在多变量分析的9个显著因素之中。这些因素包括疼痛部位、伴有心悸、恶心和呕吐;休息可缓解的疼痛、姿势、咳嗽、吸气和运动可加重的疼痛;年龄超过40岁、吸烟以及胸壁和面部检查异常。我们相信,这些发现可在医疗保健中智能决策支持系统的设计中具有重要应用,因为通过使用智能计算技术,预测能力可进一步优化。