Deep Learning-Based Electrocardiogram Signal Analysis for Abnormalities Detection Using Hybrid Cascade Feed Forward Backpropagation with Ant Colony Optimization Technique

C. Ganesh, B. Sathiyabhama
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引用次数: 0

Abstract

In this paper, a time series data mining models is introduced for analysis of ECG data for prior identification of heart attacks. The ECG data sets extracted from Physionet are simulated in MATLAB. The Data used for model are preprocessed so that missing data are fulfilled. In this work cascade feedforward NN which is similar to Multilayer Perceptron (MLP) architecture is proposed along with Swarm Intelligence. A hybrid method combining cascade-Forward NN Classifier and Ant colony optimization is proposed in this paper. The swarm-based intelligence method optimizes the weight adjustment of neural network and enhances the convergence behavior. The novelty is on the optimization of the NN parameters for narrowing down the convergence with ACO implementation. Ant colony optimization is used here for choosing the optimized hidden node. The combined use of machine learning algorithm with neural network enhances the performance of the system. The performance is evaluated using parameters like True Positive (TP), True Negative (TN), False Positive (FP), and False Negative (FN) respectively. The Improved accuracy of proposed Classifier model raises the speed. In addition, the proposed method uses minimum memory. The implementation was done in MATLAB tool. Real time data was used.
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基于深度学习的心电图信号分析与蚁群优化技术
本文介绍了一种时间序列数据挖掘模型,用于心电数据的分析,以提前识别心脏病发作。利用MATLAB对从Physionet中提取的心电数据集进行仿真。对用于建模的数据进行预处理,以弥补缺失的数据。本文结合群智能,提出了一种类似多层感知器(MLP)结构的级联前馈神经网络。提出了一种将级联前向神经网络分类器与蚁群优化相结合的混合方法。基于群体的智能方法优化了神经网络的权值调整,增强了神经网络的收敛性。新颖之处在于对神经网络参数的优化,以缩小蚁群算法的收敛性。本文采用蚁群算法选择优化后的隐节点。机器学习算法与神经网络的结合使用提高了系统的性能。性能分别使用真阳性(TP)、真阴性(TN)、假阳性(FP)和假阴性(FN)等参数进行评估。该分类器模型精度的提高提高了分类速度。此外,该方法使用最小的内存。在MATLAB工具中实现。采用实时数据。
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来源期刊
Journal of Medical Imaging and Health Informatics
Journal of Medical Imaging and Health Informatics MATHEMATICAL & COMPUTATIONAL BIOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Journal of Medical Imaging and Health Informatics (JMIHI) is a medium to disseminate novel experimental and theoretical research results in the field of biomedicine, biology, clinical, rehabilitation engineering, medical image processing, bio-computing, D2H2, and other health related areas. As an example, the Distributed Diagnosis and Home Healthcare (D2H2) aims to improve the quality of patient care and patient wellness by transforming the delivery of healthcare from a central, hospital-based system to one that is more distributed and home-based. Different medical imaging modalities used for extraction of information from MRI, CT, ultrasound, X-ray, thermal, molecular and fusion of its techniques is the focus of this journal.
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