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用于从心电图信号中早期检测心肌梗死的优化深度残差网络。

Optimized deep residual networks for early detection of myocardial infarction from ECG signals.

作者信息

A Pon Bharathi, R Madavan, E Sakthivel

机构信息

Department of Electronics and Communication Engineering, Amrita College of Engineering and Technology, Nagercoil, Kanyakumari, Tamil Nadu, 629901, India.

Department of Electrical and Electronics Engineering, K. Ramakrishnan College of Technology, Trichy, Tamil Nadu, India.

出版信息

BMC Cardiovasc Disord. 2025 May 17;25(1):371. doi: 10.1186/s12872-025-04739-z.

Abstract

Globally, the high number of deaths are happening due to Myocardial infarction (MI). MI is considered as a life-threatening disease, which leads to an increase number of deaths or damage to the heart, and hence, prompt detection of MI is critical to decrease the mortality rate. Though, numerous works have addressed MI identification, an increased number suffer from over fitting and high computational burden in real-time scenarios. The proposed system introduces a novel MI detection technique using a Deep Residual Network (DRN), where the solution is optimized by the proposed Social Ski-Spider (SSS) Optimization algorithm is the novel combination of both Social Ski-driver (SSD) Optimization and the Spider Monkey Optimization (SMO). This model highly prevents the overfitting and computational burden, which increases the MI detection accuracy. Here, the proposed SSS-DRN performs detection by filtering the electrocardiography (ECG) signals. Later, the signal feature, transform feature, medical feature and statistical feature are extracted by the feature extraction phase followed by data augmentation that consists of permutation, random generation and re-sampling processes and finally, detection is accomplished by the SSS-DRN. Moreover, the developed SSS-DRN is researched for its efficiency considering metrics like accuracy, sensitivity, and specificity and observed 0.916, 0.921, and 0.926. Here, when considering the accuracy metrics, the performance gain observed by the devised model is 13.96%, 12.61%, 10.37%, 7.95%, 5%, 2.21%, and 2% higher than the traditional schemes. This indicates the devised model has high detection accuracy, which could be embedded in real-time clinical settings like hospital ECG machines, wearable ECG monitors, and mobile health applications. This improves the clinical decision-making process with increased patient outcomes.

摘要

在全球范围内,心肌梗死(MI)导致了大量死亡。MI被认为是一种危及生命的疾病,会导致死亡人数增加或心脏受损,因此,及时检测MI对于降低死亡率至关重要。尽管已有许多工作致力于MI识别,但在实时场景中,越来越多的方法存在过拟合和高计算负担的问题。所提出的系统引入了一种使用深度残差网络(DRN)的新型MI检测技术,其中通过所提出的社会滑雪蜘蛛(SSS)优化算法对解决方案进行优化,该算法是社会滑雪驱动(SSD)优化和蜘蛛猴优化(SMO)的新颖组合。该模型极大地防止了过拟合和计算负担,提高了MI检测的准确性。在这里,所提出的SSS-DRN通过过滤心电图(ECG)信号来进行检测。随后,通过特征提取阶段提取信号特征、变换特征、医学特征和统计特征,接着进行由排列、随机生成和重采样过程组成的数据增强,最后由SSS-DRN完成检测。此外,对所开发的SSS-DRN的效率进行了研究,考虑了准确性、敏感性和特异性等指标,结果分别为0.916、0.921和0.926。在这里,考虑准确性指标时,所设计模型观察到的性能增益比传统方案分别高13.96%、12.61%、10.37%、7.95%、5%、2.21%和2%。这表明所设计的模型具有很高的检测准确性,可以嵌入到医院心电图机、可穿戴心电图监测器和移动健康应用等实时临床环境中。这改善了临床决策过程,提高了患者的治疗效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4d5a/12085857/ce9cfc6a0134/12872_2025_4739_Fig1_HTML.jpg

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