Anomaly detection for treatment planning and a learning health system in radiotherapy
Last updated: 05/11/2018 6:00
Summary
The project goal is to create the framework for a learning health system that can that can identify potentially erroneous data with statistical anomaly detection. The system will allow the implementation of unique integrity check classes from the user.
Students: Daniel Yuan, Vincent Qi
Mentor(s): Dr. Todd McNutt, Pranav Lakshminarayanan
Background, Specific Aims, and Significance
The final objective of the entire project is to improve quality of clinical data available to physicians in order to minimize the risk involved with radiotherapy for cancer patients. The target goal for the time period given is to improve the integrity of the contour model data using a learning health system by implementing tools that can help identify potentially erroneous data with statistical anomaly detection. We aim to build a framework that allows modular insertion of various detection rules in order to allow active approach using constantly updated clinical databases. Previous integrity checking focused on pre-analyzed methods across a set of patients for standardized integrity and treatments.
Deliverables
Maximum: (May 7th, 2018)
Develop and implement numerous new integrity checks
Implement compatibility packet to allow other programs access to results easily
Technical Approach
We will be developing the framework in python.
Below are diagrams of our design
Dependencies
Milestones and Status
Milestone name: Presentation
Planned Date: February 20th, 2018
Expected Date: February 20th, 2018
Status: Complete
Milestone name: Proposal
Planned Date: February 26th, 2018
Expected Date: February 26th, 2018
Status: Complete
Milestone name: Framework Design
Planned Date: March 15th, 2018
Expected Date: March 15th, 2018
Status: Complete
Milestone name: Existing module implementation
Planned Date: March 25th, 2018
Expected Date: March 25th, 2018
Status: Complete
Milestone name: Statistical module
Planned Date: April 7th, 2018
Expected Date: April 7th, 2018
Status: Complete
Milestone name: First new module
Planned Date: April 7th, 2018
Expected Date: April 7th, 2018
Status: Complete
Milestone name: More complex modules
Planned Date: April 23rd, 2018
Expected Date: April 23rd, 2018
Status: In-progress
Milestone name: Final presentation
Planned Date: May 11th, 2018
Expected Date: May 11th, 2018
Status: Complete
Reports and presentations
Project Bibliography
Other Resources and Project Files