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Spatial Heart Simulation and Analysis Using Unified Neural Network

机译:统一神经网络的空间心脏仿真与分析

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This paper presents a new way to solve the inverse problem of electrocardiography in terms of heart model parameters. The developed event estimation and recognition method uses a unified neural network (UNN)-based optimization system to determine the most relevant heart model parameters. A UNN-based preliminary ECG analyzer system has been created to reduce the searching space of the optimization algorithm. The optimal model parameters were determined by a relation between objective function minimization and robustness of the solution. The final evaluation results, validated by physicians, were about 96% correct. Starting from the fact that input ECGs contained various malfunction cases, such as Wolff-Parkinson-White (WPW) syndrome, atrial and ventricular fibrillation, these results suggest this approach provides a robust inverse solution, circumventing most of the difficulties of the ECG inverse problem.
机译:本文提出了一种从心模型参数出发解决心电图逆问题的新方法。开发的事件估计和识别方法使用基于统一神经网络(UNN)的优化系统来确定最相关的心脏模型参数。已经创建了一个基于UNN的初步ECG分析器系统,以减少优化算法的搜索空间。最佳模型参数由目标函数最小化和解决方案的鲁棒性之间的关系确定。经医生确认的最终评估结果正确率为96%。从输入的ECG包含各种故障案例(例如Wolff-Parkinson-White(WPW)综合征,心房和心室纤颤)的事实开始,这些结果表明,该方法提供了一种可靠的逆解决方案,从而规避了ECG逆问题的大部分困难。

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