Author:
Xiao Yu,Song Zhigang,Zou Shuangmei,You Yan,Cui Jie,Wang Shuhao,Ku Calvin,Wu Xi,Xue Xiaowei,Han Wenqi,Zhou Weixun
Abstract
BackgroundEndoscopic submucosal dissection (ESD), a minimally invasive surgery used to treat early gastrointestinal malignancies, has been widely embraced around the world. The gross reconstruction of ESD specimens can facilitate a more precise pathological diagnosis and allow endoscopists to explore lesions thoroughly. The traditional method of mapping is time-consuming and inaccurate. We aim to design a topographic mapping system via artificial intelligence to perform the job automatically.MethodsThe topographic mapping system was built using computer vision techniques. We enrolled 23 ESD cases at the Peking Union Medical College Hospital from September to November 2019. The reconstruction maps were created for each case using both the traditional approach and the system.ResultsUsing the system, the time saved per case ranges from 34 to 3,336 s. Two approaches revealed no significant variations in the shape, size, or tumor area.ConclusionWe developed an AI-assisted system that would help pathologists complete the ESD topographic mapping process rapidly and accurately.
Funder
Chinese Academy of Medical Sciences
Cited by
1 articles.
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