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Toward improving exercise ECG for detecting ischemic heart disease with recurrent and feedforward neural nets

机译:通过经常性和前馈神经网络改善缺血性心脏病的锻炼ECG

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This paper reports about a study evaluating the usefulness of neural networks for the early detection of heart disease based on ECG and other measurements during exercise testing. Data from 350 persons who underwent stress tests consisted of patient demographic data and fifteen time frames of measurements during stress and rest. Three different neural networks, two recurrent and one feedforward using background knowledge for preprocessing, were trained and compared to the performance of skilled cardiologists. It could be shown that the best neural networks can compete with experts in classifying tests as CAD (coronary artery disease) or normal. What concerns an index value expressing the likelihood of disease, to be used for monitoring the success of treatments, the neural networks outperformed classical statistical techniques published previously. This study has thus shown large evidence in favor of using neural nets to improve the exercise ECG as a noninvasive technique for detecting heart diseases.
机译:本文报告了一种评估神经网络在运动测试期间基于心电图和其他测量的神经网络早期检测心脏病的有用性的研究。来自350人的数据,经历压力测试的人由患者人口统计数据和压力和休息期间的十五次测量框架组成。三种不同的神经网络,两个经常性和使用背景知识进行预处理的前馈,培训并与熟练的心脏病学家的性能相比。可以表明,最好的神经网络可以与专家竞争,在分类测试中作为CAD(冠状动脉疾病)或正常的测试。有何涉及表达疾病可能性的指标值,用于监测治疗成功,神经网络以前公布的古典统计技术优于古典统计技术。因此,本研究表明了大的证据,有利于使用神经网络来改善运动ECG作为检测心脏病的非侵入性技术。

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