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Autonomous path planning for robot‐assisted pelvic fracture closed reduction with collision avoidance

Mingzhang Pan, Yuan Chen, Zhen Li, Xiao-Lan Liao, Yawen Deng, Gui‐Bin Bian

2022International Journal of Medical Robotics and Computer Assisted Surgery16 citationsDOI

Abstract

BACKGROUND: Robot-assisted pelvic fracture closed reduction (RPFCR) positively contributes to patient treatment. However, the current path planning suffers from incomplete obstacle avoidance and long paths. METHOD: A collision detection method is proposed for applications in the pelvic environment to improve the safety of RPFCR surgery. Meanwhile, a defined orientation planning strategy (OPS) and linear sampling search (LSS) are coupled into the A* algorithm to optimise the reduction path. Subsequently, pelvic in vitro experimental platform is built to verify the augmented A*algorithm's feasibility. RESULTS: The augmented A* algorithm planned the shortest path for the same fracture model, and the paths planned by the A* algorithm and experience-based increased by 56.12% and 89.02%, respectively. CONCLUSIONS: The augmented A* algorithm effectively improves surgical safety and shortens the path length, which can be adopted as an effective model for developing RPFCR path planning.

Topics & Concepts

Motion planningComputer scienceReduction (mathematics)Collision avoidanceObstacle avoidancePath (computing)Pelvic fractureSimulationOrientation (vector space)RobotShortest path problemReal-time computingMobile robotCollisionAlgorithmArtificial intelligenceSurgeryMedicineMathematicsPelvisGraphProgramming languageTheoretical computer scienceComputer securityGeometryPelvic and Acetabular InjuriesSpinal Fractures and Fixation TechniquesOrthopaedic implants and arthroplasty
Autonomous path planning for robot‐assisted pelvic fracture closed reduction with collision avoidance | Litcius