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Conformal coronary calcification volume estimation with conditional coverage via histogram clustering

arXiv:2506.04030 - [arXiv,PDF]
Authors
  • Name
    Olivier Jaubert
  • Name
    Salman Mohammadi
  • Name
    Keith A. Goatman
  • Name
    Shadia S. Mikhael
  • Name
    Conor Bradley
  • Name
    Rebecca Hughes
  • Name
    Richard Good
  • Name
    John H. Hipwell
  • Name
    Sonia Dahdouh
  • Affiliation
Incidental detection and quantification of coronary calcium in CT scans could lead to the early introduction of lifesaving clinical interventions. However, over-reporting could negatively affect patient wellbeing and unnecessarily burden the medical system. Therefore, careful considerations should be taken when automatically reporting coronary calcium scores. A cluster-based conditional conformal prediction framework is proposed to provide score intervals with calibrated coverage from trained segmentation networks without retraining. The proposed method was tuned and used to calibrate predictive intervals for 3D UNet models (deterministic, MCDropout and deep ensemble) reaching similar coverage with better triage metrics compared to conventional conformal prediction. Meaningful predictive intervals of calcium scores could help triage patients according to the confidence of their risk category prediction.