Learning a Sampling-Free Variational DNN Plugin from Tiny Training Sets to Refine OOD Segmentation With Uncertainty Estimation

Jimut B. Pal1Orcid, Suyash P. Awate1,2Orcid
1: Centre for Machine Intelligence and Data Science (C-MInDS), Indian Institute of Technology (IIT) Bombay, Mumbai, 2: Computer Science and Engineering (CSE) Department, Indian Institute of Technology (IIT) Bombay, Mumbai
Publication date: 2026/06/14
https://doi.org/10.59275/j.melba.2026-6d54
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Abstract

Deep neural networks (DNNs) frequently fail to generalize to out-of-distribution (OOD) medical images because of variations in scanners and acquisition protocols. Retraining DNN models to address these distribution shifts is often impractical due to the high cost of acquiring and annotating new medical datasets. To address this, we introduce VarDeepPCA, a novel lightweight variational DNN framework designed to restore/refine degraded segmentation maps by leveraging intrinsic geometric priors. Unlike existing approaches that require target-domain data or extensive pre-training, our VarDeepPCA explicitly learns a distribution of valid anatomical geometries using only small in-distribution (ID) datasets. Theoretically, our novel variational learning framework leverages a reinterpretation of the softmax mapping to implicitly perform exact distribution modeling, thereby enabling computationally efficient, sampling-free learning and inference. This also enables VarDeepPCA to provide uncertainty estimates associated with its restored segmentation maps. We empirically validate our framework across 4 distinct clinical applications, using 14 publicly available datasets, involving segmentation of the myocardium, neuroretinal rim, prostate, and fetal head. Comparisons against 15 existing methods demonstrate that VarDeepPCA consistently restores segmentation maps produced by the existing methods on OOD data to (i) significantly improve anatomical plausibility of geometries and clinical utility of the segmentations, and (ii) significantly reduce errors, without needing any more training data than that used by existing methods.

Keywords

Out-of-distribution images · segmentation refinement · plugin · geometric prior learning · small training set · sampling-free variational learning · uncertainty

Bibtex @article{melba:2026:017:pal, title = "Learning a Sampling-Free Variational DNN Plugin from Tiny Training Sets to Refine OOD Segmentation With Uncertainty Estimation", author = "Pal, Jimut B. and Awate, Suyash P.", journal = "Machine Learning for Biomedical Imaging", volume = "2026", issue = "June 2026 issue", year = "2026", pages = "327--358", issn = "2766-905X", doi = "https://doi.org/10.59275/j.melba.2026-6d54", url = "https://melba-journal.org/2026:017" }
RISTY - JOUR AU - Pal, Jimut B. AU - Awate, Suyash P. PY - 2026 TI - Learning a Sampling-Free Variational DNN Plugin from Tiny Training Sets to Refine OOD Segmentation With Uncertainty Estimation T2 - Machine Learning for Biomedical Imaging VL - 2026 IS - June 2026 issue SP - 327 EP - 358 SN - 2766-905X DO - https://doi.org/10.59275/j.melba.2026-6d54 UR - https://melba-journal.org/2026:017 ER -

2026:017 cover