Abstract

PurposeManagement of peptic ulcer bleeding is clinically challenging. Accurate characterization of the bleeding during endoscopy is key for endoscopic therapy. This study aimed to assess whether a deep learning model can aid in the classification of bleeding peptic ulcer disease.MethodsEndoscopic still images of patients (n = 1694) with peptic ulcer bleeding for the last 5 years were retrieved and reviewed. Overall, 2289 images were collected for deep learning model training, and 449 images were validated for the performance test. Two expert endoscopists classified the images into different classes based on their appearance. Four deep learning models, including Mobile Net V2, VGG16, Inception V4, and ResNet50, were proposed and pre-trained by ImageNet with the established convolutional neural network algorithm. A comparison of the endoscopists and trained deep learning model was performed to evaluate the model’s performance on a dataset of 449 testing images.ResultsThe results first presented the performance comparisons of four deep learning models. The Mobile Net V2 presented the optimal performance of the proposal models. The Mobile Net V2 was chosen for further comparing the performance with the diagnostic results obtained by one senior and one novice endoscopists. The sensitivity and specificity were acceptable for the prediction of “normal” lesions in both 3-class and 4-class classifications. For the 3-class category, the sensitivity and specificity were 94.83% and 92.36%, respectively. For the 4-class category, the sensitivity and specificity were 95.40% and 92.70%, respectively. The interobserver agreement of the testing dataset of the model was moderate to substantial with the senior endoscopist. The accuracy of the determination of endoscopic therapy required and high-risk endoscopic therapy of the deep learning model was higher than that of the novice endoscopist.ConclusionsIn this study, the deep learning model performed better than inexperienced endoscopists. Further improvement of the model may aid in clinical decision-making during clinical practice, especially for trainee endoscopist.

Highlights

  • Peptic ulcer bleeding is a common gastrointestinal (GI) emergency with a 10% hospital mortality rate [1–3]

  • In this study, we aimed to evaluate the performance of a deep learning model in classifying still endoscopic color images obtained from patients with bleeding peptic ulcers

  • Inclusion criteria for analysis of the images were (a) images from patients with symptoms of gastrointestinal bleeding, i.e., hematemesis, anemia, or tarry stool; (b) bleeders were attributed to a peptic ulcer disease, i.e., gastric or duodenal ulcers; and (c) endoscopy performed with the Olympus 260 or 290 series system

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Summary

Introduction

Peptic ulcer bleeding is a common gastrointestinal (GI) emergency with a 10% hospital mortality rate [1–3]. Important progress has been made in the treatment of this condition since the introduction of emergency endoscopy and the development of endoscopic therapy for hemostasis. The appearance of the ulcer base is probably the best available predictor of patient outcome. The classification of peptic GI bleeding was proposed by Forrest [4] in 1974. The classification differentiates among acute, recent (with risk of rebleeding), and almost-healed ulcerations. The goal of the Forrest classification is to make an immediate judgment of the risk of rebleeding and need for endoscopic intervention

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