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Cardiac Disorder Classification by Electrocardiogram Sensing Using Deep Neural Network

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  • Ali Haider Khan
  • Muzammil Hussain
  • Muhammad Kamran Malik
  • Atif Khan

Abstract

Cardiac disease is the leading cause of death worldwide. Cardiovascular diseases can be prevented if an effective diagnostic is made at the initial stages. The ECG test is referred to as the diagnostic assistant tool for screening of cardiac disorder. The research purposes of a cardiac disorder detection system from 12-lead-based ECG Images. The healthcare institutes used various ECG equipment that present results in nonuniform formats of ECG images. The research study proposes a generalized methodology to process all formats of ECG. Single Shoot Detection (SSD) MobileNet v2-based Deep Neural Network architecture was used to detect cardiovascular disease detection. The study focused on detecting the four major cardiac abnormalities (i.e., myocardial infarction, abnormal heartbeat, previous history of MI, and normal class) with 98% accuracy results were calculated. The work is relatively rare based on their dataset; a collection of 11,148 standard 12-lead-based ECG images used in this study were manually collected from health care institutes and annotated by the domain experts. The study achieved high accuracy results to differentiate and detect four major cardiac abnormalities. Several cardiologists manually verified the proposed system’s accuracy result and recommended that the proposed system can be used to screen for a cardiac disorder.

Suggested Citation

  • Ali Haider Khan & Muzammil Hussain & Muhammad Kamran Malik & Atif Khan, 2021. "Cardiac Disorder Classification by Electrocardiogram Sensing Using Deep Neural Network," Complexity, Hindawi, vol. 2021, pages 1-8, March.
  • Handle: RePEc:hin:complx:5512243
    DOI: 10.1155/2021/5512243
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