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Prediction of adverse outcomes of Acute Coronary Syndrome using intelligent fusion of triage information with HUMINT

机译:使用分类信息与HUMINT的智能融合来预测急性冠脉综合征的不良结局

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Faculty from the University of Tennessee at Chattanooga and the University of Tennessee College of Medicine, Chattanooga Unit, have used data mining techniques and neural networks to examine a set of fourteen features, data items, and HUMINT assessments for 2,148 emergency room patients with symptoms possibly indicative of Acute Coronary Syndrome. Specifically, the authors have generated Bayesian networks describing linkages and causality in the data, and have compared them with neural networks. The data includes objective information routinely collected during triage and the physician's initial case assessment, a HUMINT appraisal. Both the neural network and the Bayesian network were used to fuse the disparate types of information with the goal of forecasting thirty-day adverse patient outcome. This paper presents details of the methods of data fusion including both the data mining techniques and the neural network. Results are compared using Receiver Operating Characteristic curves describing the outcomes of both methods, both using only objective features and including the subjective physician's assessment. While preliminary, the results of this continuing study are significant both from the perspective of potential use of the intelligent fusion of biomedical informatics to aid the physician in prescribing treatment necessary to prevent serious adverse outcome from ACS and as a model of fusion of objective data with subjective HUMINT assessment. Possible future work includes extension of successfully demonstrated intelligent fusion methods to other medical applications, and use of decision level fusion to combine results from data mining and neural net approaches for even more accurate outcome prediction.
机译:田纳西大学查塔努加分校和田纳西大学医学院查塔努加分校的教职员工已经使用数据挖掘技术和神经网络对2148名可能出现症状的急诊室患者进行了14个特征,数据项和HUMINT评估检查指示急性冠状动脉综合征。具体来说,作者已经生成了描述数据中链接和因果关系的贝叶斯网络,并将其与神经网络进行了比较。数据包括在分诊期间常规收集的客观信息以及医生的初始病例评估(HUMINT评估)。神经网络和贝叶斯网络都被用来融合不同类型的信息,以预测30天患者的不良结局。本文介绍了数据融合方法的详细信息,包括数据挖掘技术和神经网络。使用描述两种方法结果的接收器操作特征曲线比较结果,这两种方法都仅使用客观特征,还包括主观医师的评估。虽然是初步的,但从可能利用生物医学信息学的智能融合来帮助医师开具预防ACS严重不良后果所必需的治疗方法以及将客观数据与ACS融合的模型的角度来看,这项持续研究的结果均具有重要意义。 HUMINT主观评估。未来可能的工作包括将成功证明的智能融合方法扩展到其他医学应用,以及使用决策级融合来结合数据挖掘和神经网络方法的结果,以进行更准确的结果预测。

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