Artificial Intelligence in Esophagectomy: A Systematic Review
Vladimir Aleksiev, Daniel Markov, Kristian Bechev, Desislav Stanchev, Filip Shterev, Galabin Markov

TL;DR
This paper reviews how artificial intelligence can help during esophagectomy surgery by improving visualization and safety, but more research is needed before it can be widely used.
Contribution
The paper provides the first systematic review of AI applications in esophagectomy, highlighting current capabilities and limitations.
Findings
AI systems can recognize anatomical structures and detect nerve traction during surgery, performing as well as expert surgeons.
AI detected nerve traction earlier than traditional monitoring in one study.
Most studies were limited in scope and lacked strong clinical validation.
Abstract
Background: Esophagectomy remains a technically demanding oncologic procedure with substantial morbidity, despite ongoing advances in minimally invasive and robotic techniques. Limitations in intraoperative visualization and anatomical recognition contribute to complications such as nerve injury and bleeding. Artificial intelligence (AI)-based intraoperative video analysis has emerged as a potential adjunct to enhance surgical perception and safety, but its application in esophagectomy has not been comprehensively reviewed. Methods: A systematic review was conducted in accordance with PRISMA guidelines. PubMed, Scopus, and Web of Science were searched without a lower date limit to identify eligible studies published up to January 2026, capturing early and contemporary applications of intraoperative AI in esophagectomy. Human studies involving any surgical approach were included. Data on…
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Taxonomy
TopicsEsophageal Cancer Research and Treatment · Surgical Simulation and Training · Artificial Intelligence in Healthcare and Education
