Genetic Algorithm to Optimize Design of Micro-Surgical Scissors
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 previously developed untethered
micro-surgical scissors has been modified and their performance is enhanced by
determining the optimal position of the magnets as well as the direction of
each magnetic moment. The developed algorithm is successfully applied to a
4-magnet configuration which results in increased net torque. This improvement
in net torque is directly translated into higher cutting forces. The new
configuration generates a cutting force of 58 mN from 80 generations of the
evolutionary algorithm which is a 1.65 times improvement from the original
design. Furthermore, the developed algorithm has the advantage that it can be
deployed with minor modifications to other microrobotic tools and systems,
opening up new possibilities for various medical procedures and applications.