ECG Feature Extraction Based on Multiresolution Wavelet Transform
Overview
Affiliations
In this work, we have developed and evaluated an electrocardiogram (ECG) feature extraction system based on the multi-resolution wavelet transform. ECG signals from Modified Lead II (MLII) are chosen for processing. The result of applying two wavelet filters (D4 and D6) of different length on the signal is compared. The wavelet filter with scaling function more closely to the shape of the ECG signal achieved better detection. In the first step, the ECG signal was de-noised by removing the corresponding wavelet coefficients at higher scales. Then, QRS complexes are detected and each complex is used to locate the peaks of the individual waves, including onsets and offsets of the P and T waves which are present in one cardiac cycle. We evaluated the algorithm on MIT-BIH Database, the manually annotated database, for validation purposes. The proposed QRS detector achieved sensitivity of 75. 2 % 18 . 99 .. and a positive predictivity of 45 . 4 % 00 . 98 .. over the validation database.
Artificial Intelligence in the Screening, Diagnosis, and Management of Aortic Stenosis.
Zhang Y, Wang M, Zhang E, Wu Y Rev Cardiovasc Med. 2024; 25(1):31.
PMID: 39077660 PMC: 11262349. DOI: 10.31083/j.rcm2501031.
Predicting and Recognizing Drug-Induced Type I Brugada Pattern Using ECG-Based Deep Learning.
Calburean P, Pannone L, Monaco C, Della Rocca D, Sorgente A, Almorad A J Am Heart Assoc. 2024; 13(10):e033148.
PMID: 38726893 PMC: 11179812. DOI: 10.1161/JAHA.123.033148.
Yun D, Lee H, Jung C, Kwon S, Lee S, Kim K Sci Rep. 2022; 12(1):19638.
PMID: 36385144 PMC: 9669048. DOI: 10.1038/s41598-022-19495-9.
A wavelet-based VCG QRS loop boundaries and isoelectric coordinates detector.
Kijonka J, Vavra P, Zonca P, Penhaker M Front Physiol. 2022; 13:941827.
PMID: 36338495 PMC: 9634758. DOI: 10.3389/fphys.2022.941827.
Pradhan B, Jarzebski M, Gramza-Michalowska A, Pal K Nutrients. 2022; 14(4).
PMID: 35215531 PMC: 8875083. DOI: 10.3390/nu14040885.