AI-Assisted Quality Control of CTD Data

Revision as of 11:01, 22 December 2022 by Lee.croft (talk | contribs)


Use Case Objectives

  • Machine Learning Task: Flag in advance the scans to be deleted during CTD quality control
  • Business Value: Flagged scans allow the analyst to quickly focus attention on crucial areas, reducing the time and effort required to delete scans
  • Measures of Success:
 * Accuracy of model predictions
 * Client feedback on quality control speed-ups
  • Aspirational Goals:
 * Mitigation of uncertainty in human decisions
 * Semi or full automation of scan deletions


 

Machine Learning Pipeline

 


Experimental Model Performance

 


Model Deployment and Integration

 


Next Steps