AI Article Synopsis

  • This study presents a new method for detecting heart problems and QRS complexes using machine learning, particularly support vector machine (SVM) classifiers.
  • The method demonstrated impressive performance, achieving a low detection error rate of 0.45% for cardiac irregularities and accurately classifying four types of ECG beats.
  • The SVM classifiers showed high accuracy rates of 96.67% and 98.39%, indicating their strong potential for analyzing cardiac abnormalities and categorizing ECG signals based on specific characteristics.

Article Abstract

This study describes a modified approach for the detection of cardiac abnormalities and QRS complexes using machine learning and support vector machine (SVM) classifiers. The suggested technique overtakes prevailing approaches in terms of both sensitivity and specificity, with 0.45 percent detection error rate for cardiac irregularities. Moreover, the vector machine classifiers validated the proposed method's superiority by accurately categorising four ECG beat types: normal, LBBBs, RBBBs, and Paced beat. The technique had 96.67 percent accuracy in MLP-BP and 98.39 percent accuracy in support of vector machine classifiers. The results imply that the SVM classifier can play an important role in the analysis of cardiac abnormalities. Furthermore, the SVM classifier also categorises ECG beats using DWT characteristics collected from ECG signals.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9071933PMC
http://dx.doi.org/10.1155/2022/9023478DOI Listing

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