Open Access
CC BY-NC-ND 4.0 · Endoscopy 2023; 55(08): 719-727
DOI: 10.1055/a-2034-3803
Original article

Artificial intelligence for diagnosing neoplasia on digital cholangioscopy: development and multicenter validation of a convolutional neural network model

1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Jorge Baquerizo-Burgos
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Juan Alcivar-Vasquez
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
2   Gastroenterology, Robert Wood Johnson Medical School Rutgers University, New Brunswick, New Jersey, United States
,
Isaac Raijman
3   Houston Methodist Hospital, Houston, Texas, United States
4   Baylor Saint Luke’s Medical Center, Houston, Texas, United States
,
5   Department of Advanced Interventional Endoscopy, Universitair Ziekenhuis Brussel (UZB)/Vrije Universiteit Brussel (VUB), Brussels, Belgium
,
Miguel Puga-Tejada
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Maria Egas-Izquierdo
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Martha Arevalo-Mora
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Juan C. Mendez
6   mdconsgroup, Artificial Intelligence Department, Guayaquil, Ecuador
,
Amy Tyberg
2   Gastroenterology, Robert Wood Johnson Medical School Rutgers University, New Brunswick, New Jersey, United States
,
Avik Sarkar
2   Gastroenterology, Robert Wood Johnson Medical School Rutgers University, New Brunswick, New Jersey, United States
,
Haroon Shahid
2   Gastroenterology, Robert Wood Johnson Medical School Rutgers University, New Brunswick, New Jersey, United States
,
Raquel del Valle-Zavala
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Jorge Rodriguez
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Ruxandra C. Merfea
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Jonathan Barreto-Perez
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Gabriela Saldaña-Pazmiño
7   Gastroenterology, Hospital Clínico San Carlos, Madrid, Spain
,
Daniel Calle-Loffredo
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Haydee Alvarado
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
,
Hannah P. Lukashok
1   Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas (IECED), Guayaquil, Ecuador
› Author Affiliations
Trial Registration: ClinicalTrials.gov Registration number (trial ID): NCT05147389 Type of study: Prospective, Multi-Center Study
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Abstract

Background We aimed to develop a convolutional neural network (CNN) model for detecting neoplastic lesions during real-time digital single-operator cholangioscopy (DSOC) and to clinically validate the model through comparisons with DSOC expert and nonexpert endoscopists.

Methods In this two-stage study, we first developed and validated CNN1. Then, we performed a multicenter diagnostic trial to compare four DSOC experts and nonexperts against an improved model (CNN2). Lesions were classified into neoplastic and non-neoplastic in accordance with Carlos Robles-Medranda (CRM) and Mendoza disaggregated criteria. The final diagnosis of neoplasia was based on histopathology and 12-month follow-up outcomes.

Results In stage I, CNN2 achieved a mean average precision of 0.88, an intersection over the union value of 83.24 %, and a total loss of 0.0975. For clinical validation, a total of 170 videos from newly included patients were analyzed with the CNN2. Half of cases (50 %) had neoplastic lesions. This model achieved significant accuracy values for neoplastic diagnosis, with a 90.5 % sensitivity, 68.2 % specificity, and 74.0 % and 87.8 % positive and negative predictive values, respectively. The CNN2 model outperformed nonexpert #2 (area under the receiver operating characteristic curve [AUC]-CRM 0.657 vs. AUC-CNN2 0.794, P < 0.05; AUC-Mendoza 0.582 vs. AUC-CNN2 0.794, P < 0.05), nonexpert #4 (AUC-CRM 0.683 vs. AUC-CNN2 0.791, P < 0.05), and expert #4 (AUC-CRM 0.755 vs. AUC-CNN2 0.848, P < 0.05; AUC-Mendoza 0.753 vs. AUC-CNN2 0.848, P < 0.05).

Conclusions The proposed CNN model distinguished neoplastic bile duct lesions with good accuracy and outperformed two nonexpert and one expert endoscopist.

Supplementary material



Publication History

Received: 10 June 2022

Accepted after revision: 13 February 2023

Accepted Manuscript online:
13 February 2023

Article published online:
18 April 2023

© 2023. The Author(s). This is an open access article published by Thieme under the terms of the Creative Commons Attribution-NonDerivative-NonCommercial License, permitting copying and reproduction so long as the original work is given appropriate credit. Contents may not be used for commercial purposes, or adapted, remixed, transformed or built upon. (https://creativecommons.org/licenses/by-nc-nd/4.0/)

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