Self-Attention-Based Deep Convolutional Sparse Dense Autoencoder Model With Chebyshev-Based Osprey Algorithm for Cardiovascular Disease Detection

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS
N. J. Divya, N. Suresh Kumar, R. Kanniga Devi
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引用次数: 0

Abstract

Cardiovascular disease (CVD) refers to disorders affecting the heart and blood arteries. Automated screening methods can be used to identify CVDs, the leading cause of death worldwide. Electrocardiogram (ECG)-based techniques are widely utilized to detect CVDs since they are both noninvasive and efficient. This paper presents a deep convolutional neural network (CNN) for categorizing five CVDs using conventional 12-lead ECG data. The proposed approach comprises three steps: preprocessing, feature extraction, and classification. Initially, input signals are collected from a publicly available dataset; then, pre-processing is performed using a windowed infinite impulse response notch filter (W-I2RNF) to remove unwanted noise. The appropriate features are extracted from the preprocessed signals using the mel frequency cepstrum coefficient (MFCC) and modified discrete wavelet transform (Mod-DWT). CVDs are detected and classified based on the retrieved features using a new self-attention-based deep convolutional sparse dense autoencoder (SA_DC_SDAE) model. A deep CNN is combined with a sparse dense autoencoder (AE) technique to enable classification tasks. Also, the parameters of the proposed deep learning model are optimized using the Chebyshev-based Osprey Algorithm (C-OA). Therefore, the proposed model efficiently classifies CVDs with an accuracy range of 98.75%, sensitivity of 97.9%, precision of 95%, F1 score of 96%, and specificity of 99% for the PTB-XL dataset. The proposed model outperforms the state-of-the-art models in terms of performance.

Abstract Image

基于chebyhev - Osprey算法的深度卷积稀疏密集自编码器模型用于心血管疾病检测
心血管疾病(CVD)是指影响心脏和动脉的疾病。自动筛选方法可用于识别心血管疾病,这是世界范围内的主要死亡原因。基于心电图(ECG)的技术被广泛用于检测心血管疾病,因为它们既无创又有效。本文提出了一种深度卷积神经网络(CNN),用于利用传统的12导联心电图数据对五种心血管疾病进行分类。该方法包括预处理、特征提取和分类三个步骤。最初,输入信号从公开可用的数据集收集;然后,使用加窗无限脉冲响应陷波滤波器(W-I2RNF)进行预处理,以去除不需要的噪声。利用频率倒谱系数(MFCC)和改进的离散小波变换(Mod-DWT)从预处理后的信号中提取合适的特征。采用一种新的基于自关注的深度卷积稀疏密集自编码器(SA_DC_SDAE)模型,根据检索到的特征对cvd进行检测和分类。深度CNN与稀疏密集自编码器(AE)技术相结合,实现分类任务。采用chebyhev -based Osprey算法(C-OA)对深度学习模型的参数进行优化。因此,该模型对PTB-XL数据集的cvd分类精度范围为98.75%,灵敏度为97.9%,精度为95%,F1评分为96%,特异性为99%。所提出的模型在性能方面优于最先进的模型。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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