Last updated: 02/26/2020
Aiming to Build a robust system to assist surgeons especially novice surgeons perform at expert-level by a simple query “Do something(task) somewhere(task context) as an expert”.
Skill is among the strongest predictors for patient outcome: The higher surgeon skill, the better the outcome
Empower novice surgeons: “Translate” beginner-level commands to expert-level proficiency
Recent deep learning algorithm is powerful but vulnerable: Deep learning algorithms dominate large amount of benchmarks but suffer from generalization issues and low interpretability.
Causality brings more robustness and interpretability: With casual relations provided and causal inference mechanisms, we might be able to make the algorithm more robust and easier to interpret.
Data: Build a suitable dataset for causal inference study in surgery area.
Understandings: Explore the difference between novice- and expert- level commands.
Algorithm: Explore methods to incorporate causal inference mechanisms into deep learning algorithms of kinematic prediction for more robustness and interpretability.
Here give list of other project files (e.g., source code) associated with the project. If these are online give a link to an appropriate external repository or to uploaded media files under this name space (2021-13).
Re-annotated and Segmented JIGSAW-KNOT-TYING dataset
Codes and Readme for annotating and segmenting/paring the dataset