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Artificial intelligence-based gastric cancer detection in the gastric submucosal dissection method via hyperspectral imaging
  • Park, Inyoung ;
  • Roh, Jin ;
  • Son, Dohyeon ;
  • Noh, Choong Kyun ;
  • Yoon, Jonghee
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Publication Year
2025-07-15
Journal
Sensors and Actuators B: Chemical
Publisher
Elsevier B.V.
Citation
Sensors and Actuators B: Chemical, Vol.435
Keyword
Artificial intelligenceEndoscopyGastric cancerHyperspectral imagingIntrinsic optical property
Mesh Keyword
Cancer detectionDiagnostics toolsGastric cancersHyperSpectralHyperspectral imaging systemsIntelligence modelsIntrinsic optical propertiesOptical-PropertyTumor extents
All Science Classification Codes (ASJC)
Electronic, Optical and Magnetic MaterialsInstrumentationCondensed Matter PhysicsSurfaces, Coatings and FilmsMetals and AlloysElectrical and Electronic EngineeringMaterials Chemistry
Abstract
Although endoscopy is a standard diagnostic tool for detecting gastric cancer, challenges persist in identifying cancer and assessing tumor extent, particularly in stomachs with atrophy and intestinal metaplasia. To address this issue, we aimed to introduce a novel, compact hyperspectral imaging system with artificial intelligence (AI) that utilizes structured illumination and hyperspectral imaging to diagnose gastric cancer based on intrinsic tissue optical properties. The optical properties of three types of gastric tissue (normal, adenoma, and gastric cancer) obtained from nine patients collected via endoscopic submucosal dissection were analyzed. Our findings reveal that cancer tissue displays unique optical properties, such as low reduced scattering coefficients and distinct reflectance spectral profiles when compared to normal and adenoma tissues. However, it was challenging to diagnose gastric cancer accurately using optical properties with conventional analysis methods due to their heterogeneity. Therefore, we employed a Vision Transformer model with a supervised learning approach to accurately classify tissue types based on intrinsic optical properties. To accurately train the AI model, we devised a novel image processing method to obtain single-pixel level ground-truth labeling data by aligning pathology results and imaging data. The trained AI model successfully demonstrated its ability to diagnose gastric cancer accurately in the nine patients studied. Given its compact design and rapid imaging capabilities, the proposed optical system can be a versatile clinical tool for on-site endoscopic diagnosis and could potentially aid in complete endoscopic tumor removal.
Language
eng
URI
https://aurora.ajou.ac.kr/handle/2018.oak/38182
https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=105000787143&origin=inward
DOI
https://doi.org/10.1016/j.snb.2025.137630
Journal URL
https://www.sciencedirect.com/science/journal/09254005
Type
Article
Funding
This research was supported by Ajou University and the National Research Foundation (NRF) of Korea (no. 2021R1C1C1011047). This research was supported by Learning & Academic research institution for Master's\u00B7PhD students, and Postdocs(LAMP) Program of the National Research Foundation of Korea (NRF) grant funded by the Ministry of Education (No. RS-2023-00285390). This work was supported by Electronics and Telecommunications Research Institute (ETRI) grant funded by the Korean government [24ZR1220, DNA based National Intelligent Core Technology Development, 24RR1520, Development of advanced digital convergence technology for a convenient and healthy future world]. We thank Woohyun Cho (Medical information & media center, Ajou university school of medicine) for providing editing services for images and illustrations. JY and CN conceived the study. IP, JY, and DS designed and performed experiments. IP, JR, and JY analyzed the data. CN performed endoscopy and collected human gastric tissue. JR performed pathological analysis of patient tissue. All authors wrote the manuscript.
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