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The ANN as a technique to solve the inverse problem of electrocardiography: the effect of the training margin on the errors caused by geometric uncertainties in an eccentric homogenous spherical model

机译:ANN作为一种解决心电图逆问题的技术:训练余量对偏心均匀球形模型中几何不确定性引起的误差的影响

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Artificial neural networks (ANN) were previously proposed by the author as a technique for solving the inverse problem of electrocardiography. The aim of the paper is to find the training limits of the input data for this problem and the related probability of output errors. Using a model of a homogeneous spherical body, the cardiac source was represented by six current dipoles located on the surface of an eccentric heart sphere. Body surface potentials were calculated at 26 measuring points for (19/spl times/64) cases representing the all possible combinations of dipole status (64) in the following (19) cases; the basic case, 8 cases of uncertainty in heart radius r/sub o/, 8 cases of angular uncertainty in /spl theta/, and 2 cases in /spl phi/ of the spherical coordinates. The data base for 64/spl times/19 cases was used to test the response of the ANN for each group of training. The statistical output error E was calculated in each case (E=Nf/spl times/100/64/spl times/6, where Nf is the number of false outputs). The obtained results showed that the ANN accepted the training data within a limited margin, beyond which the data would appear to be contradictory.
机译:作者先前提出了人工神经网络(ANN)作为解决心电图逆问题的技术。本文的目的是找到针对该问题的输入数据的训练极限以及相关的输出错误概率。使用均质球体模型,心脏源由位于偏心球表面上的六个电流偶极子表示。在(19 / spl次/ 64)情况下的26个测量点处计算了体表电位,代表了以下(19)情况下偶极子状态(64)的所有可能组合;在基本情况下,球坐标的心半径r / sub o /不确定性8例,/ spl theta /角度不确定性8例,在/ spl phi /中球坐标2例。使用64 / spl次/ 19个案例的数据库来测试每组训练的ANN响应。在每种情况下计算统计输出误差E(E = Nf / spl乘以/ 100/64 / spl乘以/ 6,其中Nf是错误输出的数量)。获得的结果表明,人工神经网络在有限的余量内接受了训练数据,超过该数据似乎是矛盾的。

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