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一个用于解读心电图的可靠决策支持系统。

A confident decision support system for interpreting electrocardiograms.

作者信息

Holst H, Ohlsson M, Peterson C, Edenbrandt L

机构信息

Department of Clinical Physiology, Lund University, Sweden.

出版信息

Clin Physiol. 1999 Sep;19(5):410-8. doi: 10.1046/j.1365-2281.1999.00195.x.

DOI:10.1046/j.1365-2281.1999.00195.x
PMID:10516892
Abstract

Computer-aided interpretation of electrocardiograms (ECGs) is widespread but many physicians hesitate to rely on the computer, because the advice is presented without information about the confidence of the advice. The purpose of this work was to develop a method to validate the advice of a computer by estimating the error of an artificial neural network output. A total of 1249 ECGs, recorded with computerized electrocardiographs, on patients who had undergone diagnostic cardiac catheterization were studied. The material consisted of two groups, 414 patients with and 835 without anterior myocardial infarction. The material was randomly divided into three data sets. The first set was used to train an artificial neural network for the diagnosis of anterior infarction. The second data set was used to calculate the error of the network outputs. The last data set was used to test the network performance and to estimate the error of the network outputs. The performance of the neural network, measured as the area under the receiver operating characteristic (ROC) curve, was 0.887 (0.845-0.922). The 25% test ECGs with the lowest error estimates had an area under the ROC curve as high as 0.995 (0.982-1.000), i.e. almost all of these ECGs were correctly classified. Neural networks can therefore be trained to diagnose myocardial infarction and to signal when the advice is given with great confidence or when it should be considered more carefully. This method increases the possibility that artificial neural networks will be accepted as reliable decision support systems in clinical practice.

摘要

心电图(ECG)的计算机辅助解读已广泛应用,但许多医生仍对依赖计算机心存犹豫,因为给出的建议未附带关于该建议可信度的信息。这项工作的目的是开发一种方法,通过估计人工神经网络输出的误差来验证计算机给出的建议。共研究了1249份使用计算机化心电图仪记录的、已接受诊断性心导管检查患者的心电图。材料分为两组,414例有前壁心肌梗死患者和835例无前壁心肌梗死患者。材料被随机分为三个数据集。第一组用于训练诊断前壁梗死的人工神经网络。第二组数据集用于计算网络输出的误差。最后一组数据集用于测试网络性能并估计网络输出的误差。以受试者工作特征(ROC)曲线下面积衡量的神经网络性能为0.887(0.845 - 0.922)。误差估计最低的25%的测试心电图的ROC曲线下面积高达0.995(0.982 - 1.000),即几乎所有这些心电图都被正确分类。因此,可以训练神经网络来诊断心肌梗死,并在给出的建议可信度高或应更谨慎考虑时发出信号。这种方法增加了人工神经网络在临床实践中被接受为可靠决策支持系统的可能性。

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