Learning Autonomous Surgical Irrigation and Suction with the da Vinci Research Kit Using Reinforcement Learning
Yafei Ou, Mahdi Tavakoli

TL;DR
This paper develops and tests reinforcement learning agents for automating irrigation and suction tasks in minimally invasive surgery, demonstrating promising real-world performance with simulated training and domain adaptation techniques.
Contribution
It introduces a simulation platform and vision-based RL agents for autonomous surgical irrigation and suction, advancing automation in fluid management tasks.
Findings
Agents successfully transferred from simulation to real-world with satisfactory results.
Autonomous irrigation reduced contaminant to around 2.21 grams, close to manual performance.
Autonomous suction achieved similar contaminant removal with more initial liquid.
Abstract
The irrigation-suction process is a common procedure to rinse and clean up the surgical field in minimally invasive surgery (MIS). In this process, surgeons first irrigate liquid, typically saline, into the surgical scene for rinsing and diluting the contaminant, and then suction the liquid out of the surgical field. While recent advances have shown promising results in the application of reinforcement learning (RL) for automating surgical subtasks, fewer studies have explored the automation of fluid-related tasks. In this work, we explore the automation of both steps in the irrigation-suction procedure and train two vision-based RL agents to complete irrigation and suction autonomously. To achieve this, a platform is developed for creating simulated surgical robot learning environments and for training agents, and two simulated learning environments are built for irrigation and suction…
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Taxonomy
TopicsIrrigation Practices and Water Management · Numerical Methods and Algorithms
