CVMar 31

Clinical DVH metrics as a loss function for 3D dose prediction in head and neck radiotherapy

arXiv:2603.2967011.2
AI Analysis

This work addresses the problem of improving clinical relevance in automated radiotherapy planning for head and neck cancer patients, offering an incremental but practical enhancement to existing methods.

The study tackled the misalignment between voxel-wise regression losses and clinical dose-volume histogram (DVH) metrics in deep-learning-based 3D dose prediction for head and neck radiotherapy, resulting in a clinical DVH metric loss that reduced the PTV Score from 1.544 to 0.491 while cutting training time by 83%.

Purpose: Deep-learning-based three-dimensional (3D) dose prediction is widely used in automated radiotherapy workflows. However, most existing models are trained with voxel-wise regression losses, which are poorly aligned with clinical plan evaluation criteria based on dose-volume histogram (DVH) metrics. This study aims to develop a clinically guided loss formulation that directly optimizes clinically used DVH metrics while remaining computationally efficient for head and neck (H\&N) dose prediction. Methods: We propose a clinical DVH metric loss (CDM loss) that incorporates differentiable \textit{D-metrics} and surrogate \textit{V-metrics}, together with a lossless bit-mask region-of-interest (ROI) encoding to improve training efficiency. The method was evaluated on 174 H\&N patients using a temporal split (137 training, 37 testing). Results: Compared with MAE- and DVH-curve based losses, CDM loss substantially improved target coverage and satisfied all clinical constraints. Using a standard 3D U-Net, the PTV Score was reduced from 1.544 (MAE) to 0.491 (MAE + CDM), while OAR sparing remained comparable. Bit-mask encoding reduced training time by 83\% and lowered GPU memory usage. Conclusion: Directly optimizing clinically used DVH metrics enables 3D dose predictions that are better aligned with clinical treatment planning criteria than conventional voxel-wise or DVH-curve-based supervision. The proposed CDM loss, combined with efficient ROI bit-mask encoding, provides a practical and scalable framework for H\&N dose prediction.

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