Your browser doesn't support javascript.
loading
Gastric Section Correlation Network for Gastric Precancerous Lesion Diagnosis.
Jhang, Jyun-Yao; Tsai, Yu-Ching; Hsu, Tzu-Chun; Huang, Chun-Rong; Cheng, Hsiu-Chi; Sheu, Bor-Shyang.
Affiliation
  • Jhang JY; Department of Computer Science and EngineeringNational Chung Hsing University Taichung 402 Taiwan.
  • Tsai YC; Department of Internal MedicineTainan Hospital, Ministry of Health and Welfare Tainan 701 Taiwan.
  • Hsu TC; Department of Internal Medicine, National Cheng Kung University Hospital, College of MedicineNational Cheng Kung University Tainan 701 Taiwan.
  • Huang CR; Department of Computer Science and EngineeringNational Chung Hsing University Taichung 402 Taiwan.
  • Cheng HC; Cross College Elite Program, and Academy of Innovative Semiconductor and Sustainable ManufacturingNational Cheng Kung University Tainan 701 Taiwan.
  • Sheu BS; Department of Computer Science and EngineeringNational Chung Hsing University Taichung 402 Taiwan.
IEEE Open J Eng Med Biol ; 5: 434-442, 2024.
Article in En | MEDLINE | ID: mdl-38899022
ABSTRACT
Goal Diagnosing the corpus-predominant gastritis index (CGI) which is an early precancerous lesion in the stomach has been shown its effectiveness in identifying high gastric cancer risk patients for preventive healthcare. However, invasive biopsies and time-consuming pathological analysis are required for the CGI diagnosis.

Methods:

We propose a novel gastric section correlation network (GSCNet) for the CGI diagnosis from endoscopic images of three dominant gastric sections, the antrum, body and cardia. The proposed network consists of two dominant modules including the scaling feature fusion module and section correlation module. The front one aims to extract scaling fusion features which can effectively represent the mucosa under variant viewing angles and scale changes for each gastric section. The latter one aims to apply the medical prior knowledge with three section correlation losses to model the correlations of different gastric sections for the CGI diagnosis.

Results:

The proposed method outperforms competing deep learning methods and achieves high testing accuracy, sensitivity, and specificity of 0.957, 0.938 and 0.962, respectively.

Conclusions:

The proposed method is the first method to identify high gastric cancer risk patients with CGI from endoscopic images without invasive biopsies and time-consuming pathological analysis.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: IEEE Open J Eng Med Biol Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: IEEE Open J Eng Med Biol Year: 2024 Document type: Article