Genetic Algorithm to Optimize Design of Micro-Surgical Scissors
Fatemeh Norouziani, Veerash Palanichamy, Shivam Gupta, Onaizah, Onaizah

TL;DR
This paper uses an evolutionary algorithm to optimize the magnetic configuration of micro-surgical scissors, significantly increasing their cutting force and enhancing their potential for minimally invasive surgeries.
Contribution
It introduces a novel optimization method for micro-surgical tool design, improving force output and adaptability for medical applications.
Findings
Cutting force increased by 65% after optimization.
Optimized magnetic configuration enhances micro-surgical tool performance.
Algorithm can be adapted for other microrobotic systems.
Abstract
Microrobotics is an attractive area of research as small-scale robots have the potential to improve the precision and dexterity offered by minimally invasive surgeries. One example of such a tool is a pair of micro-surgical scissors that was developed for cutting of tumors or cancerous tissues present deep inside the body such as in the brain. This task is often deemed difficult or impossible with conventional robotic tools due to their size and dexterity. The scissors are designed with two magnets placed a specific distance apart to maximize deflection and generate cutting forces. However, remote actuation and size requirements of the micro-surgical scissors limits the force that can be generated to puncture the tissue. To address the limitation of small output forces, we use an evolutionary algorithm to further optimize the performance of the scissors. In this study, the design of the…
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Taxonomy
TopicsBiomedical and Engineering Education
