1 School of Computer Information Sciences, University of the Cumberlands, USA.
2 School of Information Systems, Pacific States University, Los Angeles, USA
3 School of Business, International American University, Los Angeles, USA.
4 Masters in Data Analytics, Alliant University, USA.
International Journal of Science and Research Archive, 2025, 17(03), 1313-1319
Article DOI: 10.30574/ijsra.2025.17.3.3276
Received 06 November 2025; revised on 26 December 2025; accepted on 28 December 2025
Fast and reliable screening of the electrocardiogram helps clinicians catch cardiac problems early. We present a classical machine learning pipeline that separates myocardial infarction from confirmed normal 12-lead ECG recordings. The pipeline builds a compact set of statistical, spectral, wavelet, and heart rate variability features across the twelve leads, then trains a Support Vector Machine and a Random Forest on the PTB-XL corpus. On the held out fold we reach 0.944 accuracy with the SVM and 0.929 accuracy with the Random Forest, with AUROC values of 0.958 and 0.946. The ensemble also exposes which features drive the decision, which supports clinical interpretability. The approach stays light on compute and fits low resource settings where deep networks are hard to deploy.
Electrocardiogram; Myocardial Infarction; Support Vector Machine; Random Forest; Feature Engineering; PTB-XL
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Md Mehedi Hassan Melon, Nayem Miah, Md Mahidur Rahman and Sahadat Khandakar. ML based myocardial infarction detection from ECG. International Journal of Science and Research Archive, 2025, 17(03), 1313-1319. Article DOI: https://doi.org/10.30574/ijsra.2025.17.3.3276.






