Automated atrial fibrillation prediction using a hybrid long short-term memory network with enhanced whale optimization algorithm on electrocardiogram datasets

IF 0.2 Q4 MEDICINE, GENERAL & INTERNAL International Journal of Noncommunicable Diseases Pub Date : 2021-11-01 DOI:10.4103/2468-8827.330654
Chocko Valliappa, Revathi Kalyanasundaram, Sathiyabhama Balasubramaniam, Sankar Sennan, Nirmalesh K. Sampath Kumar
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Abstract

Background: Cardiac arrhythmias are one of the leading causes of heart failure. In particular, atrial fibrillation (AFib) is a kind of arrhythmia that can lead to heart stroke and myocardial infarction. It is very important and crucial to predict AFib at an early stage to prevent heart disease. Electrocardiogram is one of the premium diagnostic tools which is used by most of the researchers for predicting irregular heartbeats. There are many works carried out in finding heart disease using machine learning classifiers. Aims and Objectives: Deep learning based hybrid Long Short Term Memory (LSTM) network is hybridized with Enhanced Whale Optimization (EWO) to minimize the network optimization and configuration issues faced in the existing models and proposed to increases the accuracy of predicting AFib. Materials and Methods: The proposed LSTM network is hybridized with a EWO technique for predicting AFib. This study uses a hybrid LSTM EWO network for classifying the various output labels of heart disease. EWO is used to predict the most relevant features from the raw dataset. Then, the LSTM model is used to predict the AFib of a patient from normal ECG data. Results: The DL based LSTM EWO achieves better results in all the performance metrics by analyzing the optimized features in feature space, training, and testing phase and successfully obtains better performance in an effective manner. LSTM improves the accuracy by reducing the number of units in the hidden layer which optimizes the network configuration. The proposed model achieves 96.12% accuracy which is 12.81% higher than RF, 15.01% higher than GB, 28.04% higher than CART, and 16.92% higher than SVM. Conclusion: The proposed model hybrid LSTM network integrated EWO for predicting the AFib. The EWO is applied for selecting the most appropriate features needed for the model to learn and produce improvised performance. The optimization and network configuration problems faced in the existing studies are avoided by choosing the suitable number of LSTM units and the size of the time window. This has been implemented through LSTM units and their window size. In addition, we made a statistical examination to prove the importance of proposed work against other models. It is observed that the experimental results attained with 96% of accuracy, better than conventional models.
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自动房颤预测使用混合长短期记忆网络与增强鲸鱼优化算法对心电图数据集
背景:心律失常是心力衰竭的主要原因之一。特别是心房颤动(AFib)是一种心律失常,可导致心脏中风和心肌梗死。早期预测心房纤颤对于预防心脏病的发生是非常重要和关键的。心电图是一种优质的诊断工具,被大多数研究人员用于预测心律不齐。在使用机器学习分类器寻找心脏病方面进行了许多工作。目的和目标:基于深度学习的混合长短期记忆(LSTM)网络与增强型鲸鱼优化(EWO)相结合,以最大限度地减少现有模型中面临的网络优化和配置问题,并提出提高预测AFib的准确性。材料和方法:提出的LSTM网络与EWO技术相结合,用于预测AFib。本研究使用混合LSTM EWO网络对心脏病的各种输出标签进行分类。EWO用于从原始数据集中预测最相关的特征。然后,利用LSTM模型从正常心电图数据中预测患者心房纤颤。结果:基于DL的LSTM EWO通过分析特征空间、训练阶段和测试阶段的优化特征,在所有性能指标上都取得了更好的结果,并成功地以有效的方式获得了更好的性能。LSTM通过减少隐藏层单元的数量来提高准确率,从而优化网络配置。该模型的准确率为96.12%,比RF高12.81%,比GB高15.01%,比CART高28.04%,比SVM高16.92%。结论:提出的模型混合LSTM网络集成了EWO预测AFib。EWO用于选择模型学习和产生即兴表演所需的最合适的特征。通过选择合适的LSTM单元数量和时间窗大小,避免了现有研究中面临的优化和网络配置问题。这是通过LSTM单元及其窗口大小实现的。此外,我们进行了统计检验,以证明所提出的工作对其他模型的重要性。实验结果表明,该模型的准确率为96%,优于传统模型。
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