Back to Search Start Over

Development of high‐quality artificial intelligence for computer‐aided diagnosis in determining subtypes of colorectal cancer.

Authors :
Weng, Weihao
Yoshida, Naohisa
Morinaga, Yukiko
Sugino, Satoshi
Tomita, Yuri
Kobayashi, Reo
Inoue, Ken
Hirose, Ryohei
Dohi, Osamu
Itoh, Yoshito
Zhu, Xin
Source :
Journal of Gastroenterology & Hepatology. Jun2024, p1. 8p. 4 Illustrations, 4 Charts.
Publication Year :
2024

Abstract

Background and Aim Methods Results Conclusion There are no previous studies in which computer‐aided diagnosis (CAD) diagnosed colorectal cancer (CRC) subtypes correctly. In this study, we developed an original CAD for the diagnosis of CRC subtypes.Pretraining for the CAD based on ResNet was performed using ImageNet and five open histopathological pretraining image datasets (HiPreD) containing 3 million images. In addition, sparse attention was introduced to improve the CAD compared to other attention networks. One thousand and seventy‐two histopathological images from 29 early CRC cases at Kyoto Prefectural University of Medicine from 2019 to 2022 were collected (857 images for training and validation, 215 images for test). All images were annotated by a qualified histopathologist for segmentation of normal mucosa, adenoma, pure well‐differentiated adenocarcinoma (PWDA), and moderately/poorly differentiated adenocarcinoma (MPDA). Diagnostic ability including dice sufficient coefficient (DSC) and diagnostic accuracy were evaluated.Our original CAD, named Colon‐seg, with the pretraining of both HiPreD and ImageNET showed a better DSC (88.4%) compared to CAD without both pretraining (76.8%). Regarding the attentional mechanism, Colon‐seg with sparse attention showed a better DSC (88.4%) compared to other attentional mechanisms (dual: 79.7%, ECA: 80.7%, shuffle: 84.7%, SK: 86.9%). In addition, the DSC of Colon‐seg (88.4%) was better than other types of CADs (TransUNet: 84.7%, MultiResUnet: 86.1%, Unet++: 86.7%). The diagnostic accuracy of Colon‐seg for each histopathological type was 94.3% for adenoma, 91.8% for PWDA, and 92.8% for MPDA.A deep learning‐based CAD for CRC subtype differentiation was developed with pretraining and fine‐tuning of abundant histopathological images. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
08159319
Database :
Academic Search Index
Journal :
Journal of Gastroenterology & Hepatology
Publication Type :
Academic Journal
Accession number :
178062166
Full Text :
https://doi.org/10.1111/jgh.16661