Goenka Mahesh Kumar, Afzalpurkar Shivaraj, Jejurikar Saurabh, Rodge Gajanan Ashokrao, Tiwari Awanish
Institute of Gastrosciences and Liver, Apollo Multispeciality Hospitals, Kolkata, Day Care Building, 4th Floor, AMHL, EM Bypass Road, Kolkata, 700 054, India.
Endovision Limited, Hong Kong, Hong Kong.
Indian J Gastroenterol. 2023 Feb;42(1):128-135. doi: 10.1007/s12664-022-01294-9. Epub 2023 Jan 30.
The quality of esophagogastroduodenoscopy (EGD) can have great impact on the detection of esophageal and gastric lesions, including malignancies. The aim of the study is to investigate the use of artificial intelligence (AI) during EGD by the endoscopists-in-training so that a real-time feedback can be provided, ensuring compliance to a pre-decided protocol for examination.
This is an observational pilot study. The videos of the EGD procedure performed between August 1, 2021, and September 30, 2021, were prospectively analyzed using AI system. The assessment of completeness of the procedure was done based on the visualizsation of pre-defined 29 locations. Endoscopists were divided into two categories - whether they are in the training period (category A) or have competed their endoscopy training (category B).
A total of 277 procedures, which included 114 category-A and 163 category-B endoscopists, respectively, were included. Most commonly covered areas by the endoscopists were greater curvature of antrum (97.47%), second part of duodenum (96.75%), other parts of antrum such as the anterior, lesser curvature and the posterior aspect (96.75%, 94.95%, and 94.22%, respectively). Commonly missed or inadequately seen areas were vocal cords (99.28%), epiglottis (93.14%) and posterior, anterior, and lateral aspect of incisura (78.70%, 73.65%, and 73.53%, respectively). The good quality procedures were done predominantly by categoryB endoscopists (88.68% vs. 11.32%, p < 0.00001).
AI can play an important role in assessing the quality and completeness of EGD and can be a part of training of endoscopy in future.
食管胃十二指肠镜检查(EGD)的质量对食管和胃病变(包括恶性肿瘤)的检测可能有很大影响。本研究的目的是调查实习内镜医师在EGD检查过程中使用人工智能(AI)的情况,以便提供实时反馈,确保符合预先确定的检查方案。
这是一项观察性试点研究。对2021年8月1日至2021年9月30日期间进行的EGD检查视频进行前瞻性人工智能系统分析。根据对29个预定义部位的观察来评估检查的完整性。内镜医师分为两类——处于培训期(A类)或已完成内镜培训(B类)。
共纳入277例检查,其中分别包括114名A类和163名B类内镜医师。内镜医师最常覆盖的区域是胃窦大弯(97.47%)、十二指肠第二部(96.75%)、胃窦的其他部位,如前部、小弯和后部(分别为96.75%、94.95%和94.22%)。常见遗漏或观察不充分的区域是声带(99.28%)、会厌(93.14%)以及贲门切迹的后部、前部和侧面(分别为78.70%、73.65%和73.53%)。高质量的检查主要由B类内镜医师完成(88.68%对11.32%,p<0.00001)。
人工智能在评估EGD的质量和完整性方面可发挥重要作用,未来可成为内镜培训的一部分。