基于并行多尺度卷积的心电短拍分类原型网络

Zicong Li, Henggui Zhang
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引用次数: 0

摘要

心电图(ECG)是通过放置在体表上的电极测量心脏电活动的基本信息,是诊断心律失常的重要方法。尽管各种基于深度学习的模型已经被用于心律失常的自动分类,但有限的临床数据仍然阻碍了自动诊断的进展。本文提出了一种基于并行多尺度卷积的原型网络(PM-CNN ProtoNet),用于处理心电心跳分类的短时学习任务。通过在MIT-BIH心律失常数据库上对所提出的模型进行评估,PM-CNN ProtoNet在双向10次任务中达到了令人满意的91.6%的准确率。PM-CNN ProtoNet模型与其他先进模型的对比结果也证明了我们所提出模型的有效性。综上所述,PM-CNN结构可以在少量学习任务中提高原型网络的分类性能,同时在少量医疗数据下具有自动分类的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel Multi-scale convolution based prototypical network for few-shot ECG beats classification
The electrocardiogram (ECG) presents essential information of the electrical activity of the heart measured by electrodes placed on the body surface, forming an important approach to diagnosing cardiac arrhythmias. Although various deep-learning based models have been implemented for auto-classification of arrhythmias, limited clinical data still impedes the progress of auto-diagnosis. This study presented a parallel multi-scale convolution based prototypical network (PM-CNN ProtoNet) for processing the few-shot learning tasks of ECG beats classification. By evaluating the proposed model on the MIT-BIH arrhythmia database, the PM-CNN ProtoNet achieves a satisfying accuracy of 91.6% in a 2-way 10 shot task. The comparative results between the PM-CNN ProtoNet and other state-of-art models also demonstrate the efficiency of our proposed model. In conclusion, the PM-CNN structure can improve the classification performance of the prototypical network in few-shot learning tasks while having the potential for auto-classification under a small amount of medical data.
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