Robust organ mapped dose: using multiple image registrations to identify deformation uncertainty in radiation dose mapping.

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All Authors

Thompson, C.
Svensson, S.
Prestwich, R.
Pagett, C.
Lilley, J.
Murray, LJ.
Appelt, AL.
Nix, M.

LTHT Author

Thompson, Christopher
Prestwich, Robin
Pagett, Christopher
Lilley, John
Appelt, Ane
Nix, Michael

LTHT Department

Oncology
Medical Physics & Engineering
Radiotherapy Physics
Leeds Cancer Centre

Non Medic

Clinical Scientist
Radiotherapy Physicist
Consultant Physicist
Physicist

Publication Date

2026

Item Type

Journal Article

Language

Subject

HOSPITALISATION , DOSE-RESPONSE RELATIONSHIP, RADIATION , NUCLEAR MEDICINE

Subject Headings

Abstract

Abstract Objective To assist with reirradiation (reRT) treatment planning, we propose a robust organ-mapped dose (ROAD) method for cumulative dose estimation within critical organs-at-risk (OARs), incorporating deformable image registration (DIR) uncertainty via a dose resampling kernel derived from organ-specific independent DIRs. Approach The discordance among three distinct DIRs, each of unknown accuracy, was used to estimate spatial uncertainty. For each voxel within an OAR, the discordance generated a per-voxel dose-resampling kernel. Two additional kernel expansions incorporated uncertainties not captured by inter-DIR discordance: the first ensured all returned dose originated within the OAR, while the second ensured all OAR dose voxels were sampled. The maximum dose within the kernel-OAR intersection was assigned to each voxel to yield a robust dose map. The approach was demonstrated for pelvic, head-and-neck, and thoracic reRT cases using DIR-mapped background doses. Kernel generation was analysed by tracking kernel magnitude (KM) and its correlation with mean distance to agreement (MDA) and Hausdorff distance (HD). Resulting dose distributions were compared with baseline mapped doses and a fixed-kernel robustness method. Main Results Analysis confirmed generally well-chosen DIRs but revealed residual errors beyond DIR discordance, detected by the additional kernel expansions. ROAD produced dose distributions comparable to fixed-kernel methods under low deformation uncertainty but demonstrated greater robustness in regions with large anatomical variation, particularly in the pelvis. ROAD reduced instances where mapped near-maximum doses underestimated original values, without increasing overall dose, by capturing uncertainty from organ filling and positional changes missed by fixed-kernel accumulation. Significance Accurate cumulative dose estimation is critical for safe and effective reirradiation planning. The proposed ROAD framework explicitly incorporates voxel-level DIR uncertainty, providing a more reliable OAR dose estimate in regions with substantial anatomical change. This enhances confidence in reirradiation dose assessment and offers a practical, robust tool for clinical evaluation of cumulative organ doses.&#xD.

Journal

Physics in Medicine & Biology