The effect of incorporating domain knowledge with deep learning in identifying benign and malignant gastric whitish lesions: A retrospective study

Author:

Zeng Xiaoquan1234,Yang Lang5ORCID,Dong Zehua1234,Gong Dexin1234,Li Yanxia1234,Deng Yunchao1234,Du Hongliu1234,Li Xun1234,Xu Youming1234,Luo Chaijie1234,Wang Junxiao1234,Tao Xiao1234,Zhang Chenxia1234,Zhu Yijie1234,Jiang Ruiqing1234,Yao Liwen1234,Wu Lianlian1234,Jin Peng5,Yu Honggang1234ORCID

Affiliation:

1. Renmin Hospital of Wuhan University Wuhan China

2. Key Laboratory of Hubei Province for Digestive System Disease Renmin Hospital of Wuhan University Wuhan China

3. Hubei Provincial Clinical Research Center for Digestive Disease Minimally Invasive Incision Renmin Hospital of Wuhan University Wuhan China

4. Engineering Research Center for Artificial lntelligence Endoscopy Interventional Treatment of Hubei Province Wuhan China

5. Department of Gastroenterology The Seventh Medical Center of Chinese PLA General Hospital Beijing China

Abstract

AbstractBackground and AimEarly whitish gastric neoplasms can be easily misdiagnosed; differential diagnosis of gastric whitish lesions remains a challenge. We aim to build a deep learning (DL) model to diagnose whitish gastric neoplasms and explore the effect of adding domain knowledge in model construction.MethodsWe collected 4558 images from two institutions to train and test models. We first developed two sole DL models (1 and 2) using supervised and semi‐supervised algorithms. Then we selected diagnosis‐related features through literature research and developed feature‐extraction models to determine features including boundary, surface, roundness, depression, and location. Then predictions of the five feature‐extraction models and sole DL model were combined and inputted into seven machine‐learning (ML) based fitting‐diagnosis models. The optimal model was selected as ENDOANGEL‐WD (whitish‐diagnosis) and compared with endoscopists.ResultsSole DL 2 had higher sensitivity (83.12% vs 68.67%, Bonferroni adjusted P = 0.024) than sole DL 1. Adding domain knowledge, the decision tree performed best among the seven ML models, achieving higher specificity than DL 1 (84.38% vs 72.27%, Bonferroni adjusted P < 0.05) and higher accuracy than DL 2 (80.47%, Bonferroni adjusted P < 0.001) and was selected as ENDOANGEL‐WD. ENDOANGEL‐WD showed better accuracy compared with 10 endoscopists (75.70%, P < 0.001).ConclusionsWe developed a novel system ENDOANGEL‐WD combining domain knowledge and traditional DL to detect gastric whitish neoplasms. Adding domain knowledge improved the performance of traditional DL, which provided a novel solution for establishing diagnostic models for other rare diseases potentially.

Publisher

Wiley

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