Deep-Learning Premature Contraction Localization Using Gaussian Based Predicted Data

Petra Novotna, Tomáš Vičar, Jakub Hejc, M. Ronzhina
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引用次数: 0

Abstract

Detection of cardiac arrhythmias is still an ongoing challenge. Here we focus on premature ventricular contraction (PVC) and premature atrial contraction (PAC) and introduce a deep-learning-based method for PVC/PAC localization in ECG. Our method is based on involving the time series with non-zero values corresponding to the ground truth PVC/PAC positions into the training process. To improve the efficiency of deep model training, the transition between the non-zero and zero areas in the train output time series was smoothed by introducing a Gaussian function. When applied to the new ECGs, the output signal (time series including Gaussians) is processed by a robust peak detector with Bayesian optimization of threshold, minimal distance and peak prominence. Positions of the detected peaks correspond to the desired PVC/PAC positions. The proposed method was evaluated on China Physiological Signal Challenge 2018 (CPSC2018) using own-created ground truth positions of PVC/PAC. The proposed method reached F1 score 0.923 and 0.688 for PAC and PVC, respectively, which is better than our previous results obtained via multiple instance learning-based method.
基于高斯预测数据的深度学习过早收缩定位
心律失常的检测仍然是一个持续的挑战。本文以室性早搏(PVC)和房性早搏(PAC)为研究对象,介绍了一种基于深度学习的心电室性早搏/房性早搏定位方法。我们的方法是基于将与PVC/PAC位置相对应的非零值时间序列纳入训练过程。为了提高深度模型训练的效率,通过引入高斯函数平滑训练输出时间序列中非零区域和零区域之间的过渡。当应用于新的ecg时,输出信号(包括高斯信号的时间序列)由一个鲁棒的峰值检测器处理,该检测器具有阈值、最小距离和峰值突出的贝叶斯优化。检测到的峰的位置对应于所需的PVC/PAC位置。该方法在中国生理信号挑战赛2018 (CPSC2018)上进行了评估,使用了自己创建的PVC/PAC接地真值位置。该方法在PAC和PVC上分别达到了0.923和0.688的F1得分,优于我们之前基于多实例学习方法的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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