Abstract
The epicardial adipose tissue volume (EATV) was quantitatively measured by deep learning-based computed tomography (CT) images, and its correlation with coronary heart disease (CHD) was investigated in this study. 150 patients who underwent coronary artery CT examination in hospital were taken as research objects. Besides, patients from the observation group (group A) suffered from vascular stenosis, while patients from the control group (group B) had no vascular stenosis. The deep convolutional neural network model was applied to construct deep learning algorithm, and deep learning-based CT images were adopted to quantitatively measure EATV. The results showed that the sensitivity, specificity, accuracy, and area under the curve (AUC) of the deep learning algorithm were 0.8512, 0.9899, 0.9623, and 0.9813, respectively. By comparison, the correlation results of the traditional George algorithm, Aslani algorithm, and Lahiri algorithm were all lower than those of the deep learning algorithm, and the difference was statistically substantial ( P < 0.05 ). The epicardial adipose tissue volume of the observation group (114.23 ± 55.46) was higher markedly than the volume of the control group (92.65 ± 43.28), with a statistically huge difference ( P < 0.05 ). The r values of EATV with plaque properties and the number of stenosed coronary vessels were 0.232 and 0.268 in turn, both showing significant positive correlation. In conclusion, the sensitivity and other index values of deep learning algorithm were improved greatly compared with traditional algorithm. CT images based on deep learning algorithm achieved good blood vessel segmentation effects. In addition, EATV was closely related to the development of CHD.
Highlights
coronary heart disease (CHD) is a heart disease in which coronary atherosclerosis causes stenosis or complete blockage of the lumen and the spasm of the coronary arteries, which in turn leads to myocardial ischemic necrosis
Existing studies have believed that the application of coronary artery percutaneous catheter digital subtraction radiography (DSA) for CHD has the best diagnostic effect, but DSA detection has many shortcomings, which causes wounds and brings expensive testing costs. ere are a lot of burdens, and these shortcomings greatly limit its wide application [2]
In the noninvasive examination of CHD, computed tomography (CT) imaging quantitatively measures the volume of epicardial fat to diagnose CHD. e detection effect is good, and it is necessary to further promote the application
Summary
CHD is a heart disease in which coronary atherosclerosis causes stenosis or complete blockage of the lumen and the spasm of the coronary arteries, which in turn leads to myocardial ischemic necrosis. Existing studies have believed that the application of coronary artery percutaneous catheter digital subtraction radiography (DSA) for CHD has the best diagnostic effect, but DSA detection has many shortcomings, which causes wounds and brings expensive testing costs. Multislice spiral CT coronary angiography is a new technology applied in DSA detection, which is noninvasive, simple to operate, high in image resolution, and effective in diagnosis. It is not suitable for clinical application due to the need to inject a larger dose of contrast agent during testing, which will adversely affect human kidney health
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