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A neural network approach for patient-specific 12-lead ECG synthesis in patient monitoring environments

机译:在患者监测环境中针对患者特定的12导联心电图合成的神经网络方法

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In recent years, there has been a growing interest in developing accurate methods for the synthesis of the 12-lead ECG from a minimal lead-set to improve patient monitoring in situations where the acquisition of the 12-lead ECG is difficult or impractical. This paper presents a method that aims to derive the standard 12-lead ECG from a pseudoorthogonal 3-lead subset via a nonlinear patient specific reconstruction method that is based on the use of artificial neural networks (ANN). We train and test the ANN over a 300 adult patients study population. We then assess the performance of the ANN based ECG synthesis method in comparison with the multiple regression based method and test for statistical differences between the two methods using the paired Student's t-test. The ANNs achieved high overall accuracies for all the testing sets. Moreover, the difference in accuracies between both methods is statistically significant (p>0.001). The encouraging results reported here suggest that the artificial neural networks represent a rather interesting and very promising approach to improve the synthesis of the 12-lead ECG.
机译:近年来,人们越来越关注从最小的引线组中合成12导联心电图的准确方法,以改善在获取12导联心电图困难或不切实际的情况下对患者的监测的兴趣。本文提出了一种方法,该方法旨在通过使用基于人工神经网络(ANN)的非线性患者特定重建方法,从伪正交3引线子集中派生标准12引线ECG。我们在300名成年患者研究人群中训练并测试了人工神经网络。然后,我们与基于多元回归的方法相比,评估了基于ANN的ECG合成方法的性能,并使用配对的Student t检验测试了这两种方法之间的统计差异。人工神经网络在所有测试装置上都获得了很高的总体精度。此外,两种方法之间的准确性差异在统计学上是显着的(p> 0.001)。此处报告的令人鼓舞的结果表明,人工神经网络代表了一种相当有趣且非常有前途的方法,可以改善12导联心电图的合成。

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