Comparing Bayesian Models for Organ Contouring in Head and Neck Radiotherapy
Prerak Mody, Nicolas Chaves-de-Plaza, Klaus Hildebrandt, Rene van, Egmond, Huib de Ridder, Marius Staring

TL;DR
This paper compares Bayesian models DropOut and FlipOut for organ contouring in radiotherapy, focusing on their uncertainty estimates to improve automated quality assessment and streamline clinical QA processes.
Contribution
It introduces a combined quantitative and qualitative evaluation framework for Bayesian models, highlighting FlipOut-CE's superior uncertainty coverage in inaccurate regions.
Findings
DropOut-DICE has the highest ECE, indicating lower trustworthiness.
Dropout-CE and FlipOut-CE have the lowest ECE, suggesting better calibration.
FlipOut-CE shows better uncertainty coverage in inaccurate regions.
Abstract
Deep learning models for organ contouring in radiotherapy are poised for clinical usage, but currently, there exist few tools for automated quality assessment (QA) of the predicted contours. Using Bayesian models and their associated uncertainty, one can potentially automate the process of detecting inaccurate predictions. We investigate two Bayesian models for auto-contouring, DropOut and FlipOut, using a quantitative measure - expected calibration error (ECE) and a qualitative measure - region-based accuracy-vs-uncertainty (R-AvU) graphs. It is well understood that a model should have low ECE to be considered trustworthy. However, in a QA context, a model should also have high uncertainty in inaccurate regions and low uncertainty in accurate regions. Such behaviour could direct visual attention of expert users to potentially inaccurate regions, leading to a speed up in the QA process.…
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Taxonomy
TopicsAdvanced Radiotherapy Techniques · Medical Imaging and Analysis · Radiomics and Machine Learning in Medical Imaging
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Dropout
