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Efficient Conformal Volumetry for Template-Based Segmentation

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Template-based segmentation, a widely used paradigm in medical imaging, propagates anatomical labels via deformable registration from a labeled atlas to a target image, and is often used to compute volumetric biomarkers for downstream decision-making. While conformal prediction (CP) provides finite-sample valid intervals for scalar metrics, existing segmentation-based uncertainty quantification (UQ) approaches either rely on learned model features, often unavailable in classic template-based pipelines, or treat the registration process as a black box, resulting in overly conservative intervals when applied directly in output space. We introduce ConVOLT, a CP framework that achieves efficient volumetric UQ by conditioning calibration on properties of the estimated deformation field from template-based segmentation. ConVOLT calibrates a learned volumetric scaling factor from deformation space features. We evaluate ConVOLT on template-based segmentation tasks involving global, regional, and label volumetry across multiple datasets and registration methods. ConVOLT achieves target coverage while producing substantially tighter intervals than output-space conformal baselines. Our work paves way to exploit the registration process for efficient UQ in medical imaging pipelines.

Matt Y. Cheung, Ashok Veeraraghavan, Guha Balakrishnan• 2026

Related benchmarks

TaskDatasetResultRank
Global volume change estimationThoraxCBCT 10/15/5 (test)
Coverage93
8
Regional Volume Change EstimationThoraxCBCT
Coverage95
8
Volume EstimationOASIS 0.4 0.4 0.2 (test)
Coverage91
8
Global volume change estimationNLST 0.4/0.4/0.2 split (test)
Coverage92
8
Regional Volume Change EstimationNLST
Coverage91
8
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