Sheth Kashvi Ankitbhai, Upreti Charvi, Prusty Manas Ranjan, Satapathy Sandeep Kumar, Mishra Shruti, Cho Sung-Bae
School of Computer Science and Engineering, Vellore Institute of Technology, Chennai, 600127, India.
Centre for Cyber-Physical Systems, Vellore Institute of Technology, Chennai, 600127, India.
BMC Med Imaging. 2024 Dec 2;24(1):326. doi: 10.1186/s12880-024-01502-2.
Myocardial infarction (MI) is a life-threatening medical condition that necessitates both timely and precise diagnosis. The enhancement of automated method to detect MI diseases from Normal patients can play a crucial role in healthcare. This paper presents a novel approach that utilizes the Discrete Wavelet Transform (DWT) for the detection of myocardial signals. The DWT is employed to break down ECG signals into distinct frequency components and subsequently to selectively filter out noise by thresholding the high-frequency details, resulting in denoised ECG signals for myocardial signal detection. These denoised signals are fed into lightweight one-dimensional Convolutional Neural Networks (CNN) for binary classification into Myocardial Infarction (MI) and Normal categories. The paper explores three distinct approaches: utilizing all signals, incorporating under-sampling and up-sampling to address class imbalances, with both noised and denoised signals. Evaluation of the suggested model is done with the help of two publicly available datasets: PTB-XL, a large publicly available electrocardiography dataset and PTB Diagnostic ECG Database. Results obtained through 5-fold cross-validation on the trained model show that the model has achieved an accuracy of 96%, precision of 97% and F1 score of 95%. On cross-validation with the PTB-ECG dataset, this paper achieved an accuracy of 91.18%.
心肌梗死(MI)是一种危及生命的病症,需要及时且精确的诊断。增强从正常患者中检测MI疾病的自动化方法在医疗保健中可发挥关键作用。本文提出了一种利用离散小波变换(DWT)检测心肌信号的新颖方法。DWT用于将心电图信号分解为不同的频率成分,随后通过对高频细节进行阈值处理来选择性地滤除噪声,从而得到用于心肌信号检测的去噪心电图信号。这些去噪信号被输入到轻量级的一维卷积神经网络(CNN)中,以进行心肌梗死(MI)和正常类别之间的二元分类。本文探索了三种不同的方法:利用所有信号、结合欠采样和过采样来解决类别不平衡问题,同时使用有噪声和去噪信号。借助两个公开可用的数据集对所提出的模型进行评估:PTB-XL,一个大型公开可用的心电图数据集和PTB诊断心电图数据库。通过对训练模型进行5折交叉验证获得的结果表明,该模型的准确率达到了96%,精确率为97%,F1分数为95%。在与PTB-ECG数据集进行交叉验证时,本文实现了91.18%的准确率。