Endoscopy 2019; 51(12): 1121-1129
DOI: 10.1055/a-0981-6133
Original article
© Georg Thieme Verlag KG Stuttgart · New York

Automated classification of gastric neoplasms in endoscopic images using a convolutional neural network

Bum-Joo Cho
1   Department of Ophthalmology, Hallym University College of Medicine, Chuncheon, Korea
2   Interdisciplinary Program in Medical Informatics, Seoul National University College of Medicine, Seoul, Korea
3   Institute of New Frontier Research, Hallym University College of Medicine, Chuncheon, Korea
,
Chang Seok Bang
3   Institute of New Frontier Research, Hallym University College of Medicine, Chuncheon, Korea
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
,
Se Woo Park
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
,
Young Joo Yang
3   Institute of New Frontier Research, Hallym University College of Medicine, Chuncheon, Korea
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
,
Seung In Seo
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
,
Hyun Lim
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
,
Woon Geon Shin
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
,
Ji Taek Hong
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
,
Yong Tak Yoo
6   Dudaji Inc., Seoul, Korea
,
Seok Hwan Hong
6   Dudaji Inc., Seoul, Korea
,
Jae Ho Choi
3   Institute of New Frontier Research, Hallym University College of Medicine, Chuncheon, Korea
,
Jae Jun Lee
3   Institute of New Frontier Research, Hallym University College of Medicine, Chuncheon, Korea
7   Department of Anesthesiology and Pain medicine, Hallym University College of Medicine, Chuncheon, Korea
,
Gwang Ho Baik
4   Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea
5   Institute for Liver and Digestive Diseases, Hallym University, Chuncheon, Korea
› Author Affiliations
Supported by: Bio & Medical Technology Development Program of the National Research Foundation (NRF) and funded by the Korean government, Ministry of Science and ICT (MSIT) NRF2017M3A9E8033207
Further Information

Publication History

submitted 27 November 2018

accepted after revision 19 June 2019

Publication Date:
23 August 2019 (online)

Abstract

Background Visual inspection, lesion detection, and differentiation between malignant and benign features are key aspects of an endoscopist’s role. The use of machine learning for the recognition and differentiation of images has been increasingly adopted in clinical practice. This study aimed to establish convolutional neural network (CNN) models to automatically classify gastric neoplasms based on endoscopic images.

Methods Endoscopic white-light images of pathologically confirmed gastric lesions were collected and classified into five categories: advanced gastric cancer, early gastric cancer, high grade dysplasia, low grade dysplasia, and non-neoplasm. Three pretrained CNN models were fine-tuned using a training dataset. The classifying performance of the models was evaluated using a test dataset and a prospective validation dataset.

Results A total of 5017 images were collected from 1269 patients, among which 812 images from 212 patients were used as the test dataset. An additional 200 images from 200 patients were collected and used for prospective validation. For the five-category classification, the weighted average accuracy of the Inception-Resnet-v2 model reached 84.6 %. The mean area under the curve (AUC) of the model for differentiating gastric cancer and neoplasm was 0.877 and 0.927, respectively. In prospective validation, the Inception-Resnet-v2 model showed lower performance compared with the endoscopist with the best performance (five-category accuracy 76.4 % vs. 87.6 %; cancer 76.0 % vs. 97.5 %; neoplasm 73.5 % vs. 96.5 %; P  < 0.001). However, there was no statistical difference between the Inception-Resnet-v2 model and the endoscopist with the worst performance in the differentiation of gastric cancer (accuracy 76.0 % vs. 82.0 %) and neoplasm (AUC 0.776 vs. 0.865).

Conclusion The evaluated deep-learning models have the potential for clinical application in classifying gastric cancer or neoplasm on endoscopic white-light images.

Supplementary material

 
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