School of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu 610054, China.
Department of Computer Science, National University of Computer and Emerging Sciences, Islamabad, Chiniot-Faisalabad Campus, Chiniot 35400, Pakistan.
Sensors (Basel). 2021 Dec 24;22(1):123. doi: 10.3390/s22010123.
Today, accurate and automated abnormality diagnosis and identification have become of paramount importance as they are involved in many critical and life-saving scenarios. To accomplish such frontiers, we propose three artificial intelligence models through the application of deep learning algorithms to analyze and detect anomalies in human heartbeat signals. The three proposed models include an attention autoencoder that maps input data to a lower-dimensional latent representation with maximum feature retention, and a reconstruction decoder with minimum remodeling loss. The autoencoder has an embedded attention module at the bottleneck to learn the salient activations of the encoded distribution. Additionally, a variational autoencoder (VAE) and a long short-term memory (LSTM) network is designed to learn the Gaussian distribution of the generative reconstruction and time-series sequential data analysis. The three proposed models displayed outstanding ability to detect anomalies on the evaluated five thousand electrocardiogram (ECG5000) signals with 99% accuracy and 99.3% precision score in detecting healthy heartbeats from patients with severe congestive heart failure.
如今,准确且自动化的异常诊断和识别变得至关重要,因为它们涉及到许多关键且关乎生命的场景。为了实现这些前沿目标,我们提出了三种人工智能模型,通过应用深度学习算法来分析和检测人心跳信号中的异常。这三个提出的模型包括注意力自动编码器,它将输入数据映射到具有最大特征保留的低维潜在表示,以及具有最小重塑损失的重建解码器。自动编码器在瓶颈处嵌入注意力模块,以学习编码分布的显著激活。此外,设计了变分自编码器 (VAE) 和长短时记忆 (LSTM) 网络,以学习生成重建的高斯分布和时间序列序列数据分析。这三个提出的模型在评估的五千个心电图 (ECG5000) 信号上表现出出色的异常检测能力,在检测严重充血性心力衰竭患者的健康心跳时,准确率达到 99%,精度得分达到 99.3%。