Research Area:  Artificial Intelligence
The introduction of automation into surgery may redefine the role of surgeons in operating rooms. While the majority of the manipulation will be performed autonomously by surgical robots, the surgeons may focus on decision-making procedures. This will drastically reduce the burden to surgeons by allowing them to instead interpret the abundant and intelligent information from the system, and will enhance the surgical outcome. To introduce the automation into surgery, the surgical robots are required to have: 1) high precision, 2) motion planning capabilities, and 3) scene understanding. Currently, surgical robots are commonly designed as cable-driven due to safety and several benefits such as low inertia. However, the cable-driven system has low precision because of cable stretch and long chains of cables. Therefore, a new control scheme of cable-driven surgical robots should be developed to overcome these limitations. Surgery is a complicated task consisting of multiple subtasks.
This dissertation addresses the three problems above. In chapter two, a hybrid control scheme which utilizes both model-based and data-driven methods is introduced to improve the precision of the cable-driven surgical robots and robustness to hand-eye calibration errors. The convergence of the controller is shown theoretically and experimentally with the Raven IV. Additionally, the efficacy of the controller to clinical tasks is shown by demonstrating the autonomous operations of needle transfer and tissue debridement tasks. In chapter three, learning-based path planning algorithms are proposed for autonomous soft tissue manipulation.
The planning algorithms learn the dynamics between the motion of a surgical tool and soft tissue, and the internal controller uses the learned dynamics to manipulate the soft tissue. The performance of developed algorithms is verified on a designed simulation and a robot experiment with the Raven IV. In chapter four, the semantic segmentation algorithm of the optical coherence tomography images for the automated lens extraction is presented. The algorithm uses the deep learning method and provides the capability of understanding the cross-sectional view of the eye anatomy. Furthermore, this segmentation algorithm is incorporated into the Intraocular Robotic Interventional and Surgical System (IRISS) to realize the semi-autonomous lens removal.
Name of the Researcher:  Shin, Changyeob
Name of the Supervisor(s):  Rosen, Jacob
Year of Completion:  2020
University:  University Of California
Thesis Link:   Home Page Url