Comparative Exploration of the Contribution of Reinforcement Learning in Robotic Surgery

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Author(s)

Cheima Bouden 1,*

1. University of Constantine 2 – Abdelhamid Mehri/department of Fundamental Computer Science and its Applications, Constantine, Algeria

* Corresponding author.

DOI: https://doi.org/10.5815/ijem.2024.04.04

Received: 12 Apr. 2024 / Revised: 14 May 2024 / Accepted: 20 Jun. 2024 / Published: 8 Aug. 2024

Index Terms

Artificial Intelligence, Reinforcement Learning, Surgical Robot, Autonomy, Simulation

Abstract

Problem: The precision, efficiency, and safety of surgical procedures need significant improvements. Traditional methods are limited by human capabilities, and existing robotic systems lack the advanced adaptability required for complex surgical tasks. The integration of reinforcement learning (RL) into robotic surgery represents a potential revolution in the medical field.
Methods: This comparative review synthesizes recent progress in RL applications for robotic surgery. It highlights innovative methodologies and successful applications of RL, focusing on advanced simulations to train RL agents and the importance of human demonstrations in the learning process.
Results: Emerging trends such as the effective use of simulations and human demonstrations to enhance RL in robotic surgery are identified. The review also discusses challenges associated with RL applications, emphasizing the need for clinical validation and ensuring patient safety.
Conclusion: The transformative potential of RL in robotic surgery is evident, though challenges remain. Future work should prioritize clinical validation, patient safety, and interdisciplinary collaboration.

Cite This Paper

Cheima Bouden, "Comparative Exploration of the Contribution of Reinforcement Learning in Robotic Surgery", International Journal of Engineering and Manufacturing (IJEM), Vol.14, No.4, pp. 37-53, 2024. DOI:10.5815/ijem.2024.04.04

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