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基于心电图的自动化深度学习在心血管疾病早期识别和分类中的应用。

An automated ECG-based deep learning for the early-stage identification and classification of cardiovascular disease.

机构信息

Department of Computer Science and Application, SSET, Sharda University, Greater Noida, India.

Department of Computer Science and Engineering, Moradabad Institute of Technology, Moradabad, India.

出版信息

Technol Health Care. 2024;32(6):5025-5045. doi: 10.3233/THC-240543.

Abstract

BACKGROUND

Heart disease represents the leading cause of death globally. Timely diagnosis and treatment can prevent cardiovascular issues. An Electrocardiograms (ECG) serves as a diagnostic tool for identifying heart difficulties. Cardiovascular Disease (CVD) often gets identified through ECGs. Deep learning (DL) garners attention in healthcare due to its potential in swiftly diagnosing ECG anomalies, crucial for patient monitoring. Conversely, automatic CVD detection from ECGs poses a challenging task, wherein rule-based diagnostic models usually achieve top-notch performance. These models encounter complications in supervision vast volumes of diverse data, demanding widespread analysis and medical capability to ensure precise CVD diagnosis.

OBJECTIVE

This study aims to enhance cardiovascular disease diagnosis by combining symptom-based detection and ECG analysis.

METHODS

To enhance these experiments, we built a novel automated prediction method based on a Feed Forward Neural Network (FFNN) model. The fundamental objective of our method is to develop the accuracy of ECG diagnosis. Our strategy employs chaos theory and destruction analysis to combine optimum deep learning features with a well-organized set of ECG properties. In addition, we use the constant-Q non-stationary Gabor transform (CQNGT) to convert one-dimensional ECG data into a two-dimensional picture. A pre-trained FFNN processes this image. To identify significant features from the FFNN output that correspond with the ECG data, we employ pairwise feature proximity.

RESULTS

According to experimental findings, the suggested system, FFNN-CQNGT, surpasses other state-of-the-art systems in terms of precision of 94.89%, computational efficiency of 2.114 ms, accuracy of 95.55%, specificity of 93.77%, and sensitivity of 93.99% and MSE 40.32%.

CONCLUSION

Contributing an automated ECG-based DL system based on FFNN-CQNGT for early-stage cardiovascular disease identification and classification holds great potential for both patient care and public health.

摘要

背景

心脏病是全球首要致死原因。及时诊断和治疗可以预防心血管问题。心电图(ECG)是识别心脏问题的诊断工具。心血管疾病(CVD)通常通过心电图(ECG)来识别。深度学习(DL)在医疗保健领域引起关注,因为它在快速诊断 ECG 异常方面具有潜力,这对患者监测至关重要。相反,从 ECG 中自动检测 CVD 是一项具有挑战性的任务,其中基于规则的诊断模型通常可以达到卓越的性能。这些模型在监督大量不同数据方面存在困难,需要广泛的分析和医疗能力来确保准确的 CVD 诊断。

目的

本研究旨在通过结合基于症状的检测和 ECG 分析来增强心血管疾病的诊断。

方法

为了增强这些实验,我们构建了一种基于前馈神经网络(FFNN)模型的新型自动预测方法。我们方法的基本目标是提高 ECG 诊断的准确性。我们的策略利用混沌理论和破坏分析,将最优的深度学习特征与精心组织的一组 ECG 属性相结合。此外,我们使用恒定-Q 非平稳 Gabor 变换(CQNGT)将一维 ECG 数据转换为二维图像。一个预训练的 FFNN 处理此图像。为了从与 ECG 数据对应的 FFNN 输出中识别重要特征,我们使用成对特征接近度。

结果

根据实验结果,所提出的系统,FFNN-CQNGT,在精度为 94.89%、计算效率为 2.114ms、准确性为 95.55%、特异性为 93.77%、敏感性为 93.99%和均方误差为 40.32%方面优于其他最先进的系统。

结论

基于 FFNN-CQNGT 的自动 ECG 深度学习系统为早期心血管疾病的识别和分类提供了一种新的方法,对患者护理和公共卫生都具有重要意义。

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