- Sat 11 October 2025
- Statistics
Anytime-Valid Neural Uncertainty Quantification for SPECT Imaging
A short overview of my MSc thesis, which adapts and applies Sequential and Prior Likelihood Mixing (Kirschner et al., 2025) to anytime-valid uncertainty quantification in tomographic imaging. The work explores how to obtain statistically valid uncertainty for SPECT reconstructions using both classical estimators and modern neural predictors such as U-Net ensembles and diffusion models.