Open Access
CC BY-NC-ND 4.0 · Endosc Int Open 2019; 07(04): E514-E520
DOI: 10.1055/a-0849-9548
Original article
Owner and Copyright © Georg Thieme Verlag KG 2019

Endoscopic prediction of deeply submucosal invasive carcinoma with use of artificial intelligence

Thomas K.L. Lui
,
Kenneth K.Y. Wong
2   Department of Computer Science, University of Hong Kong, Hong Kong, China
,
Loey L.Y. Mak
1   Department of Medicine, Queen Mary Hospital, University of Hong Kong, Hong Kong, China
,
Michael K.L. Ko
1   Department of Medicine, Queen Mary Hospital, University of Hong Kong, Hong Kong, China
,
Stephen K.K. Tsao
3   Department of Gastroenterology, Tan Tock Seng Hospital, Singapore
,
Wai K. Leung
1   Department of Medicine, Queen Mary Hospital, University of Hong Kong, Hong Kong, China
› Author Affiliations
Further Information

Publication History

submitted 15 October 2018

accepted after revision 16 January 2019

Publication Date:
03 April 2019 (online)

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Abstract

Background and study aims We evaluated use of artificial intelligence (AI) assisted image classifier in determining the feasibility of curative endoscopic resection of large colonic lesion based on non-magnified endoscopic images

Methods AI image classifier was trained by 8,000 endoscopic images of large (≥ 2 cm) colonic lesions. The independent validation set consisted of 567 endoscopic images from 76 colonic lesions. Histology of the resected specimens was used as gold standard. Curative endoscopic resection was defined as histology no more advanced than well-differentiated adenocarcinoma, ≤ 1 mm submucosal invasion and without lymphovascular invasion, whereas non-curative resection was defined as any lesion that could not meet the above requirements. Performance of the trained AI image classifier was compared with that of endoscopists.

Results In predicting endoscopic curative resection, AI had an overall accuracy of 85.5 %. Images from narrow band imaging (NBI) had significantly higher accuracy (94.3 % vs 76.0 %; P < 0.00001) and area under the ROC curve (AUROC) (0.934 vs 0.758; P = 0.002) than images from white light imaging (WLI). AI was superior to two junior endoscopists in terms of accuracy (85.5 % vs 61.9 % or 82.0 %, P < 0.05), AUROC (0.837 vs 0.638 or 0.717, P < 0.05) and confidence level (90.1 % vs 83.7 % or 78.3 %, P < 0.05). However, there was no statistical difference in accuracy and AUROC between AI and a senior endoscopist.

Conclusions The trained AI image classifier based on non-magnified images can accurately predict probability of curative resection of large colonic lesions and is better than junior endoscopists. NBI images have better accuracy than WLI for AI prediction.