Abstract

Myocardial infarction (MI), or commonly known as heart attack, is a life-threatening health problem worldwide from which 32.4 million people suffer each year. Early diagnosis and treatment of MI are crucial to prevent further heart tissue damages or death. The earliest and most reliable sign of ischemia is regional wall motion abnormality (RWMA) of the affected part of the ventricular muscle. Echocardiography can easily, inexpensively, and non-invasively exhibit the RWMA. In this article, we introduce a three-phase approach for early MI detection in low-quality echocardiography: 1) segmentation of the entire left ventricle (LV) wall using a state-of-the-art deep learning model, 2) analysis of the segmented LV wall by feature engineering, and 3) early MI detection. The main contributions of this study are highly accurate segmentation of the LV wall from low-quality echocardiography, pseudo labeling approach for ground-truth formation of the unannotated LV wall, and the first public echocardiographic dataset (HMC-QU)* for MI detection. Furthermore, the outputs of the proposed approach can significantly help cardiologists for a better assessment of the LV wall characteristics. The proposed approach has achieved 95.72% sensitivity and 99.58% specificity for the LV wall segmentation, and 85.97% sensitivity, 74.03% specificity, and 86.85% precision for MI detection on the HMC-QU dataset. *The benchmark HMC-QU dataset is publicly shared at the repository https://www.kaggle.com/aysendegerli/hmcqu-dataset

Highlights

  • Myocardial infarction (MI) is the major cause of death in the world [1]

  • According to the studies of the World Health Organization (WHO), the diagnostic indicators, such as pathological results, biochemical marker values, electrocardiography (ECG) findings, and various imaging techniques are used by cardiologists to diagnose MI in patients [1]

  • The ECG relatively depicts the MI with a significant delay compared to the imaging technique so that non-diagnostic ECG still maintains as an unsolved problem [4]

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Summary

Introduction

In the United States, nearly 4 million people suffering from cardiac pain go to the emergency every year; and more than half of the accepted patients are treated in the hospitals for their recovery [2]. This process increases the expenses for the treatment and limits the medical resources needed for all patients. According to the studies of the World Health Organization (WHO), the diagnostic indicators, such as pathological results, biochemical marker values, electrocardiography (ECG) findings, and various imaging techniques are used by cardiologists to diagnose MI in patients [1].

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