Abstract

This study analyzes CZT SPECT myocardial perfusion images that are collected at Chang Gung Memorial Hospital, Kaohsiung Medical Center in Kaohsiung. This study focuses on the classification of myocardial perfusion images for coronary heart diseases by convolutional neural network techniques. In these gray scale images, heart blood flow distribution contains the most important features. Therefore, data-driven preprocessing is developed to extract the area of interest. After removing the surrounding noise, the three-dimensional convolutional neural network model is utilized to classify whether the patient has coronary heart diseases or not. The prediction accuracy, sensitivity, and specificity are 87.64%, 81.58%, and 92.16%. The prototype system will greatly reduce the time required for physician image interpretation and write reports. It can assist clinical experts in diagnosing coronary heart diseases accurately in practice.

Highlights

  • Mortality rate due to coronary artery disease (CAD) is higher than other kinds of cardiovascular diseases

  • The purpose of this study is to propose a CNN-based the classification of Technetium (Tc)-99m images obtained from model based on Thallium (Tl)-201 myocardial perfusion imaging (MPI) single photon emission computed tomography (SPECT) images to predict myocardial ischemia

  • Doctors determine thewhether subject has myocardial adefect myocardial defect based on the degree of saturation for the myocardium circumbased on the degree of saturation for the myocardium circumference area in the ference area intends the image

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Summary

Introduction

Heart disease is the leading cause of death globally, and coronary artery disease (CAD). Is the most common type of heart disease. Over 20,000 people die from cardiovascular diseases annually. Mortality rate due to CAD is higher than other kinds of cardiovascular diseases. CAD occurs when the blood vessels supplying the heart muscle become hardened and narrowed. Morbidity, and mortality related to CAD is an important issue of public health given the significant burden of diseases and contribution to total costs of health care. Detection of CAD may improve life expectancy and quality of life by preventing myocardial infarction (MI) and heart failure

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