Author:
Sato Daiki,Takamatsu Toshihiro,Umezawa Masakazu,Kitagawa Yuichi,Maeda Kosuke,Hosokawa Naoki,Okubo Kyohei,Kamimura Masao,Kadota Tomohiro,Akimoto Tetsuo,Kinoshita Takahiro,Yano Tomonori,Kuwata Takeshi,Ikematsu Hiroaki,Takemura Hiroshi,Yokota Hideo,Soga Kohei
Abstract
AbstractThe diagnosis of gastrointestinal stromal tumor (GIST) using conventional endoscopy is difficult because submucosal tumor (SMT) lesions like GIST are covered by a mucosal layer. Near-infrared hyperspectral imaging (NIR-HSI) can obtain optical information from deep inside tissues. However, far less progress has been made in the development of techniques for distinguishing deep lesions like GIST. This study aimed to investigate whether NIR-HSI is suitable for distinguishing deep SMT lesions. In this study, 12 gastric GIST lesions were surgically resected and imaged with an NIR hyperspectral camera from the aspect of the mucosal surface. Thus, the images were obtained ex-vivo. The site of the GIST was defined by a pathologist using the NIR image to prepare training data for normal and GIST regions. A machine learning algorithm, support vector machine, was then used to predict normal and GIST regions. Results were displayed using color-coded regions. Although 7 specimens had a mucosal layer (thickness 0.4–2.5 mm) covering the GIST lesion, NIR-HSI analysis by machine learning showed normal and GIST regions as color-coded areas. The specificity, sensitivity, and accuracy of the results were 73.0%, 91.3%, and 86.1%, respectively. The study suggests that NIR-HSI analysis may potentially help distinguish deep lesions.
Funder
The National Cancer Center Research and Development Fund
Publisher
Springer Science and Business Media LLC
Cited by
22 articles.
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