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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Noninvasive Personalization of a Cardiac Electrophysiology Model From Body Surface Potential Mapping
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Noninvasive Personalization of a Cardiac Electrophysiology Model From Body Surface Potential Mapping

机译:从体表电位映射的心脏电生理模型的非侵入性个性化。

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Goal: We use noninvasive data (body surface potential mapping, BSPM) to personalize the main parameters of a cardiac electrophysiological (EP) model for predicting the response to different pacing conditions. Methods: First, an efficient forward model is proposed, coupling the Mitchell–Schaeffer transmembrane potential model with a current dipole formulation. Then, we estimate the main parameters of the cardiac model: activation onset location and tissue conductivity. A large patient-specific database of simulated BSPM is generated, from which specific features are extracted to train a machine learning algorithm. The activation onset location is computed from a Kernel Ridge Regression and a second regression calibrates the global ventricular conductivity. Results: The evaluation of the results is done both on a benchmark dataset of a patient with premature ventricular contraction (PVC) and on five nonischaemic implanted cardiac resynchonization therapy (CRT) patients with a total of 21 different pacing conditions. Good personalization results were found in terms of the activation onset location for the PVC (mean distance error, MDE = 20.3 mm), for the pacing sites (MDE = 21.7 mm) and for the CRT patients (MDE = 24.6 mm). We tested the predictive power of the personalized model for biventricular pacing and showed that we could predict the new electrical activity patterns with a good accuracy in terms of BSPM signals. Conclusion: We have personalized the cardiac EP model and predicted new patient-specific pacing conditions. Significance: This is an encouraging first step towards a noninvasive preoperative prediction of the response to different pacing conditions to assist clinicians for CRT patient selection and therapy planning.
机译:目标:我们使用非侵入性数据(体表电位映射,BSPM)来个性化心脏电生理(EP)模型的主要参数,以预测对不同起搏条件的反应。方法:首先,提出了一种有效的正向模型,将Mitchell-Schaeffer跨膜电势模型与当前的偶极子公式耦合。然后,我们估计心脏模型的主要参数:激活开始位置和组织电导率。生成了一个大型的患者特定的模拟BSPM数据库,从中提取了特定的特征以训练机器学习算法。激活起始位置由内核岭回归计算,第二次回归校准整体心室电导率。结果:结果评估是在具有早发性心室收缩(PVC)的患者的基准​​数据集上,以及在总共21种不同起搏条件下的5例非缺血性心脏再同步化治疗(CRT)患者中进行的。在PVC的激活开始位置(平均距离误差,MDE = 20.3毫米),起搏部位(MDE = 21.7毫米)和CRT患者(MDE = 24.6毫米)的激活开始位置方面,均获得了良好的个性化结果。我们测试了个性化模型对双心室起搏的预测能力,并表明我们可以根据BSPM信号准确预测新的电活动模式。结论:我们已经个性化了心脏EP模型并预测了新的患者特定起搏条件。启示:这是朝着对不同起搏条件的反应进行无创术前预测的令人鼓舞的第一步,以协助临床医生进行CRT患者选择和治疗计划。

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