基于区域的主动学习方法减少心电波形分割的标注工作量

Qiao Xiao, Changyong Yang, Xiaoyan Zhu, Chaofeng Wang, Yaping Wan, Can Liu
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引用次数: 0

摘要

心电图信号由多种心跳形态组成,包括P波、QRS复合体和T波。波形分割识别心电信号中的波形对监测心脏健康状况至关重要,可以用于心脏相关疾病的自动诊断。本文研究了一种基于主动学习(AL)的心电波形分割方法,通过训练学习模型来自动标注心电波形,从而减少了标注工作量。为了将人工智能应用于心电波形分割,我们引入了一种基于区域的人工智能方法,迭代选择心电帧内包含较少连续信号样本的多个信号区域进行人工标注,而不是在帧级进行查询。在QT数据库上验证了该方法的性能,与基于随机查询和帧级查询策略的基准方案相比,该方法具有更快的收敛速度和更高的标注精度。此外,与基准方案相比,该方法平均减少了25%的标注工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Region-based Active Learning for Reducing Annotation Effort of ECG Waveform Segmentation
Electrocardiogram (ECG) signals consists of various beat morphologies including P wave, QRS complex, and T wave. Waveform segmentation to identify those waves in ECG signals is critical to monitor heart health status and can be leveraged for automatic diagnosis of heart-related diseases. Instead of manually annotating those waves, this work studies an active learning (AL)-based ECG waveform segmentation method to reduce the annotation effort where a learning model is trained to automatically annotate ECG waves. To adapt AL for ECG waveform segmentation, we introduce a region-based AL method where multiple signal regions containing fewer consecutive signal samples within ECG frames are selected iteratively for human annotation instead of querying at the frame level. The performance of the proposed method is validated on the QT database, as it has a faster convergence rate and higher annotation accuracy compared to benchmark schemes which are based on random query and frame-level query strategies. In addition, the proposed method consumes 25% less annotation effort in average compared to the benchmark schemes.
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