Deep Learning and Minimally Invasive Endoscopy: Automatic Classification of Pleomorphic Gastric Lesions in Capsule Endoscopy

Author:

Mascarenhas Miguel123,Mendes Francisco12,Ribeiro Tiago12,Afonso João12,Cardoso Pedro12,Martins Miguel12,Cardoso Hélder123,Andrade Patrícia123,Ferreira João45,Mascarenhas Saraiva Miguel6,Macedo Guilherme123

Affiliation:

1. Precision Medicine Unit, Department of Gastroenterology, São João University Hospital, Alameda Professor Hernâni Monteiro, Porto, Portugal;

2. WGO Gastroenterology and Hepatology Training Center, Porto, Portugal;

3. Faculty of Medicine of the University of Porto, Alameda Professor Hernâni Monteiro, Porto, Portugal;

4. Department of Mechanical Engineering, Faculty of Engineering of the University of Porto, Porto, Portugal;

5. Digestive Artificial Intelligence Development, Porto, Portugal;

6. ManopH Gastroenterology Clinic, Porto, Portugal.

Abstract

INTRODUCTION: Capsule endoscopy (CE) is a minimally invasive examination for evaluating the gastrointestinal tract. However, its diagnostic yield for detecting gastric lesions is suboptimal. Convolutional neural networks (CNNs) are artificial intelligence models with great performance for image analysis. Nonetheless, their role in gastric evaluation by wireless CE (WCE) has not been explored. METHODS: Our group developed a CNN-based algorithm for the automatic classification of pleomorphic gastric lesions, including vascular lesions (angiectasia, varices, and red spots), protruding lesions, ulcers, and erosions. A total of 12,918 gastric images from 3 different CE devices (PillCam Crohn's; PillCam SB3; OMOM HD CE system) were used from the construction of the CNN: 1,407 from protruding lesions; 994 from ulcers and erosions; 822 from vascular lesions; and 2,851 from hematic residues and the remaining images from normal mucosa. The images were divided into a training (split for three-fold cross-validation) and validation data set. The model's output was compared with a consensus classification by 2 WCE-experienced gastroenterologists. The network's performance was evaluated by its sensitivity, specificity, accuracy, positive predictive value and negative predictive value, and area under the precision-recall curve. RESULTS: The trained CNN had a 97.4% sensitivity; 95.9% specificity; and positive predictive value and negative predictive value of 95.0% and 97.8%, respectively, for gastric lesions, with 96.6% overall accuracy. The CNN had an image processing time of 115 images per second. DISCUSSION: Our group developed, for the first time, a CNN capable of automatically detecting pleomorphic gastric lesions in both small bowel and colon CE devices.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Gastroenterology

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