The field of cardiac electrophysiology tries to abstract, describe and finally model the electrical characteristics of a heartbeat. With recent advances in cardiac electrophysiology, models have become more powerful and descriptive as ever. However, to advance to the field of inverse electrophysiological modeling, i.e. creating models from electrical measurements such as the ECG, the less investigated field of smoothness of the simulated ECGs w.r.t. model parameters need to be further explored. The present paper discusses smoothness in terms of the whole pipeline which describes how from physiological parameters, we arrive at the simulated ECG. Employing such a pipeline, we create a test-bench of a simplified idealized left ventricle model and demonstrate the most important factors for efficient inverse modeling through smooth cost functionals. Such knowledge will be important for designing and creating inverse models in future optimization and machine learning methods.
翻译:心脏电生理学领域试图抽象、描述和最终模拟心跳的电特性。随着心脏电生理学最近的进展,模型变得比以往更强大和更具描述性。然而,为了推进反电生理模型领域,即从ECG等电子测量中创建模型,需要进一步探索模拟ECGs w.r.t.模型参数的平滑性调查较少的领域。本文件从描述生理参数的整个管道的角度讨论顺利性,我们到达模拟ECG。使用这种管道,我们创建了一个简化理想化左心室模型的测试台,并展示了通过平滑成本功能有效反向模型的最重要因素。这种知识对于设计和创建未来优化和机器学习方法的反向模型十分重要。