Arrhythmia Classification Based on Bi-Directional Long Short-Term Memory and Multi-Task Group Method

Shaik Munawar, Geetha Angappan, Srinivas Konda
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引用次数: 1

Abstract

Early and accurate classification of arrhythmia helps the experts to select the treatment for the patient to increase the recovery rate. The deep learning method of convolution neural network (CNN) is used for classification, and this has an overfitting problem. In this research, the multi-task group bi-directional long short term memory (MTGBi-LSTM) method is proposed to increases the performance of arrhythmia classification. The multi-task learning technique learns two ECG signals in shared representation for effective learning. The global and intra LSTM method selects the relevant feature and easily escapes from local optima. The MTGBi-LSTM model learns the unique features in shared representation that helps to overcome overfitting problem and increases the learning rate of the model. The MTGBi-LSTM model in arrhythmia classification is evaluated on MIT-BIH dataset. The MTGBi-LSTM model has 96.48% accuracy, 97.73% sensitivity, existing AFibNet has 96.36% accuracy, and 93.65% sensitivity for arrhythmia classification in CPSC 2018 dataset.
基于双向长短期记忆和多任务组方法的心律失常分类
早期准确的心律失常分类有助于专家为患者选择治疗方案,提高治愈率。采用卷积神经网络(CNN)的深度学习方法进行分类,存在过拟合问题。本研究提出多任务组双向长短期记忆(MTGBi-LSTM)方法来提高心律失常分类的性能。多任务学习技术在共享表征中学习两个心电信号,实现有效学习。全局LSTM和内部LSTM方法选择相关的特征,容易摆脱局部最优。MTGBi-LSTM模型学习共享表示中的唯一特征,有助于克服过拟合问题,提高模型的学习率。在MIT-BIH数据集上对MTGBi-LSTM模型在心律失常分类中的应用进行了评估。MTGBi-LSTM模型对CPSC 2018数据集的心律失常分类准确率为96.48%,灵敏度为97.73%,现有AFibNet的准确率为96.36%,灵敏度为93.65%。
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