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Fully Bayesian VIB-DeepSSM

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arxiv 2305.05797 v2 pith:335Q4NTQ submitted 2023-05-09 cs.CV

Fully Bayesian VIB-DeepSSM

classification cs.CV
keywords uncertaintybayesianfullyimagesshapesapproachesdemonstratequantification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Statistical shape modeling (SSM) enables population-based quantitative analysis of anatomical shapes, informing clinical diagnosis. Deep learning approaches predict correspondence-based SSM directly from unsegmented 3D images but require calibrated uncertainty quantification, motivating Bayesian formulations. Variational information bottleneck DeepSSM (VIB-DeepSSM) is an effective, principled framework for predicting probabilistic shapes of anatomy from images with aleatoric uncertainty quantification. However, VIB is only half-Bayesian and lacks epistemic uncertainty inference. We derive a fully Bayesian VIB formulation and demonstrate the efficacy of two scalable implementation approaches: concrete dropout and batch ensemble. Additionally, we introduce a novel combination of the two that further enhances uncertainty calibration via multimodal marginalization. Experiments on synthetic shapes and left atrium data demonstrate that the fully Bayesian VIB network predicts SSM from images with improved uncertainty reasoning without sacrificing accuracy.

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