Analysis of abnormalities in cardiac arrhythmia based on 12 - LEAD electrocardiography

Q4 Engineering Measurement Sensors Pub Date : 2024-07-30 DOI:10.1016/j.measen.2024.101289
S. Jeevitha , J. Joel , N. Sathish Kumar , K. Immanuvel Arokia James
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Abstract

Myocardial Infarction otherwise called heart attack occurs in human beings when blood flow decreases or stops to a part of the heart which in turn damages the heart muscle. Prediction of abnormalities in cardio arrhythmia disease is done by using standard 12-lead Electrocardiography (ECG) signals, which also detects Posterior Myocardial Infarction (PMI). The QRS complex is the merged output of different parts of graphical deflection seen on a typical Electro Cardio Gram (Electrocardiography). The main purpose of the paper is to monitor and analyze particularly the Rpeak upward deflections from the QRS complex. Denoising the ECG signal is done by butter worth filter. The denoised signals are used to detect R peaks and image plotting is done by segmentation. R peak images are used to classify the abnormalities in Myocardial Infarction (MI) with the help of the CNN image processing technique. The publicly available PTB diagnostic dataset is used to classify the abnormalities in PMI. The detection of the R peaks is used to guide Cardiologists must advance the Percutaneous Coronary Intervention treatment. Prediction has been done using probability weighted average method. Troponin level has been calculated to evaluate a person's health condition which also supports in close prediction of diseases and abnormalities. From experimental analysis of proposed Probability weighted average method in troponin level (PWAMT), the accuracy scores in the ensemble model were found to be 86 % respectively. The running of algorithm took 250 s–300 s to execute the program and display the prediction results.

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基于 12 LEAD 心电图的心律失常异常分析
心肌梗塞又称心脏病发作,是指心脏部分血流减少或停止,进而损伤心肌。心律失常疾病的异常预测是通过标准的 12 导联心电图(ECG)信号来完成的,它还能检测后心肌梗死(PMI)。QRS 波群是典型心电图(ECG)上不同部分图形偏转的合并输出。本文的主要目的是监测和分析 QRS 波群的 Rpeak 向上偏转。通过黄油滤波器对心电图信号进行去噪处理。去噪信号用于检测 R 峰,并通过分割进行图像绘制。在 CNN 图像处理技术的帮助下,R 峰图像可用于对心肌梗死(MI)的异常情况进行分类。公开的 PTB 诊断数据集用于对 PMI 中的异常情况进行分类。对 R 峰的检测可用于指导心脏病专家推进经皮冠状动脉介入治疗。采用概率加权平均法进行预测。通过计算肌钙蛋白水平来评估一个人的健康状况,这也有助于密切预测疾病和异常情况。通过对拟议的肌钙蛋白水平概率加权平均法(PWAMT)进行实验分析,发现集合模型的准确率分别为 86%。算法的运行需要 250 秒至 300 秒来执行程序并显示预测结果。
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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