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Automatic staging model of heart failure based on deep learning

机译:基于深度学习的心力衰竭自动分期模型

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摘要

Heart failure (HF) is a disease that is harmful to human health. Recent advances in machine learning yielded new techniques to train deep neural networks, which resulted in highly successful applications in many pattern recognition tasks such as object detection and speech recognition. To improve the diagnostic accuracy of HF staging, this study evaluates the performance of deep learning-based models on combined features for its categorization. We proposed a novel deep convolutional neural network Recurrent neural network (CNN-RNN) model for automatic staging of heart failure diseases in real-time and dynamically. We employed the data segmentation and data augmentation pre-processing dataset to make the classification performance of the proposed architecture better. Specifically, this paper use convolutional neural network (CNN) as a feature extractor instead of training the entire network to extract the characteristics of the electrocardiogram (ECG) signals and form a feature set. We combine the above feature set with other clinical features, feed the combined features to RNN for classification, and finally obtain 5 classification results. Experiments shows that the CNN-RNN model proposed in this paper achieved an accuracy of 97.6%, the sensitivity of 96.3%, specificity of 97.4% and proportion of 97.1% for two seconds of ECG segments. We obtained an accuracy, sensitivity, specificity and proportion of 96.2%, 96.9%, 95.7%, and 94.3% respectively for five seconds of ECG duration. The model can be used as an aid to help clinicians confirm their diagnosis. (C) 2019 Elsevier Ltd. All rights reserved.
机译:心力衰竭(HF)是对人类健康有害的疾病。机器学习的最新进展产生了培训深度神经网络的新技术,这导致了在许多模式识别任务中的高度成功的应用,例如对象检测和语音识别。为了提高HF分期的诊断准确性,本研究评估了基于深度学习的模型对其分类的组合特征的性能。我们提出了一种新型深度卷积神经网络经常性神经网络(CNN-RNN)模型,用于实时和动态地自动分期心力衰竭疾病。我们使用数据分段和数据增强预处理数据集以更好地制作所提出的体系结构的分类性能。具体地,本文使用卷积神经网络(CNN)作为特征提取器,而不是训练整个网络以提取心电图(ECG)信号的特性并形成特征集。我们将上述功能设置与其他临床特征相结合,将组合特征馈送到RNN进行分类,最后获得5个分类结果。实验表明,本文提出的CNN-RNN模型达到了97.6%的精度,灵敏度为96.3%,特异性为97.4%,2秒的ECG段的比例为97.1%。我们获得了96.2%,96.9%,95.7%,95.7%和94.3%的准确性,敏感性,特异性和比例分别为4秒的ECG持续时间。该模型可用作帮助临床医生确认他们的诊断。 (c)2019 Elsevier Ltd.保留所有权利。

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