A New and Lightweight R-Peak Detector Using the TEDA Evolving Algorithm

Author:

Silva Lucileide M. D. da12ORCID,Silva Sérgio N.2ORCID,Souza Luísa C. de2ORCID,Azevedo Karolayne S. de2ORCID,Guedes Luiz Affonso3ORCID,Fernandes Marcelo A. C.234ORCID

Affiliation:

1. Federal Institute of Education, Science and Technology of Rio Grande do Norte, Paraiso, Santa Cruz 59200-000, RN, Brazil

2. InovAI Lab, nPITI/IMD, Federal University of Rio Grande do Norte, Natal 59078-970, RN, Brazil

3. Department of Computer and Automation Engineering, Federal University of Rio Grande do Norte, Natal 59078-970, RN, Brazil

4. Bioinformatics Multidisciplinary Environment (BioME), Federal University of Rio Grande do Norte, Natal 59078-970, RN, Brazil

Abstract

The literature on ECG delineation algorithms has seen significant growth in recent decades. However, several challenges still need to be addressed. This work aims to propose a lightweight R-peak-detection algorithm that does not require pre-setting and performs classification on a sample-by-sample basis. The novelty of the proposed approach lies in the utilization of the typicality eccentricity detection anomaly (TEDA) algorithm for R-peak detection. The proposed method for R-peak detection consists of three phases. Firstly, the ECG signal is preprocessed by calculating the signal’s slope and applying filtering techniques. Next, the preprocessed signal is inputted into the TEDA algorithm for R-peak estimation. Finally, in the third and last step, the R-peak identification is carried out. To evaluate the effectiveness of the proposed technique, experiments were conducted on the MIT-BIH arrhythmia database (MIT-AD) for R-peak detection and validation. The results of the study demonstrated that the proposed evolutive algorithm achieved a sensitivity (Se in %), positive predictivity (+P in %), and accuracy (ACC in %) of 95.45%, 99.61%, and 95.09%, respectively, with a tolerance (TOL) of 100 milliseconds. One key advantage of the proposed technique is its low computational complexity, as it is based on a statistical framework calculated recursively. It employs the concepts of typicity and eccentricity to determine whether a given sample is normal or abnormal within the dataset. Unlike most traditional methods, it does not require signal buffering or windowing. Furthermore, the proposed technique employs simple decision rules rather than heuristic approaches, further contributing to its computational efficiency.

Funder

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior

Publisher

MDPI AG

Reference35 articles.

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4. Vieau, S., and Iaizzo, P.A. (2015). Handbook of Cardiac Anatomy, Physiology, and Devices, Springer International Publishing.

5. Rahul, J., Sora, M., and Sharma, L.D. (2021). A novel and lightweight P, QRS, and T peaks detector using adaptive thresholding and template waveform. Comput. Biol. Med., 132.

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