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http://dx.doi.org/10.9718/JBER.2020.41.2.101

Convolution Neural Network Based Auto Classification Model Using Endoscopic Images of Gastric Cancer and Gastric Ulcer  

Park, Ye Rang (Department of Health Sciences and Technology, Gachon Advanced Institute for Health Sciences and Technology (GAIHST), Gachon University)
Kim, Young Jae (Department of Biomedical Engineering Gachon University)
Chung, Jun-Won (Department of Gastroenterology, Gachon University Gil Hospital)
Kim, Kwang Gi (Department of Health Sciences and Technology, Gachon Advanced Institute for Health Sciences and Technology (GAIHST), Gachon University)
Publication Information
Journal of Biomedical Engineering Research / v.41, no.2, 2020 , pp. 101-106 More about this Journal
Abstract
Although benign gastric ulcers do not develop into gastric cancer, they are similar to early gastric cancer and difficult to distinguish. This may lead to misconsider early gastric cancer as gastric ulcer while diagnosing. Since gastric cancer does not have any special symptoms until discovered, it is important to detect gastric ulcers by early gastroscopy to prevent the gastric cancer. Therefore, we developed a Convolution Neural Network (CNN) model that can be helpful for endoscopy. 3,015 images of gastroscopy of patients undergoing endoscopy at Gachon University Gil Hospital were used in this study. Using ResNet-50, three models were developed to classify normal and gastric ulcers, normal and gastric cancer, and gastric ulcer and gastric cancer. We applied the data augmentation technique to increase the number of training data and examined the effect on accuracy by varying the multiples. The accuracy of each model with the highest performance are as follows. The accuracy of normal and gastric ulcer classification model was 95.11% when the data were increased 15 times, the accuracy of normal and gastric cancer classification model was 98.28% when 15 times increased likewise, and 5 times increased data in gastric ulcer and gastric cancer classification model yielded 87.89%. We will collect additional specific shape of gastric ulcer and cancer data and will apply various image processing techniques for visual enhancement. Models that classify normal and lesion, which showed relatively high accuracy, will be re-learned through optimal parameter search.
Keywords
Gastroscopy; Classification; ResNet-50; Gastric ulcer; Gastric cancer;
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