Image Guidance for Robot-Assisted Ankle Fracture Repair
- URL: http://arxiv.org/abs/2303.08105v2
- Date: Sat, 18 Mar 2023 08:51:28 GMT
- Title: Image Guidance for Robot-Assisted Ankle Fracture Repair
- Authors: Asef Islam (1, 2, 3), Anthony Wu (2), Jay Mandavilli (1,2), Wojtek
Zbijewski (1), Jeff Siewerdsen (1, 2) ((1) Johns Hopkins University,
Biomedical Engineering (2) Johns Hopkins University, Computer Science (3)
Stanford University, Computer Science)
- Abstract summary: The aim is to produce and demonstrate proper functioning of software for automatic determination of directions for fibular repositioning.
The product will not involve developing or implementing the hardware of the robot itself.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: This project concerns developing and validating an image guidance framework
for application to a robotic-assisted fibular reduction in ankle fracture
surgery. The aim is to produce and demonstrate proper functioning of software
for automatic determination of directions for fibular repositioning with the
ultimate goal of application to a robotic reduction procedure that can reduce
the time and complexity of the procedure as well as provide the benefits of
reduced error in ideal final fibular position, improved syndesmosis restoration
and reduced incidence of post-traumatic osteoarthritis. The focus of this
product will be developing and testing the image guidance software, from the
input of preoperative images through the steps of automated segmentation and
registration until the output of a final transformation that can be used as
instructions to a robot on how to reposition the fibula, but will not involve
developing or implementing the hardware of the robot itself.
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