FluenceFormer: Transformer-Driven Multi-Beam Fluence mAP Regression for Radiotherapy Planning
Abstract
Fluence map prediction is central to automated radiotherapy planning but remains an ill-posed inverse problem due to the complex relationship between volumetric anatomy and beam-intensity modulation. Convolutional methods in prior work often struggle to capture long-range dependencies, which can lead to structurally inconsistent or physically unrealizable plans. We introduce FluenceFormer, a backbone-agnostic transformer framework for direct, geometry-aware fluence regression. The model uses a unified two-stage design: Stage 1 predicts a global dose prior from anatomical inputs, and Stage 2 conditions this prior on explicit beam geometry to regress physically calibrated fluence maps. Central to the approach is the Fluence-Aware Regression (FAR) loss, a physics-informed objective that integrates voxel-level fidelity, gradient smoothness, structural consistency, and beam-wise energy conservation. We evaluate the generality of the framework across multiple transformer backbones, including Swin UNETR, UNETR, nnFormer, and MedFormer, using a prostate IMRT dataset. FluenceFormer with Swin UNETR achieves the strongest performance among the evaluated models and improves over existing benchmark CNN and single-stage methods, reducing Energy Error to $\mathbf{4.5%}$ and yielding statistically significant gains in structural fidelity ($p < 0.05$).
Cite
Text
Mgboh et al. "FluenceFormer: Transformer-Driven Multi-Beam Fluence mAP Regression for Radiotherapy Planning." Proceedings of The 9th International Conference on Medical Imaging with Deep Learning, 2026.Markdown
[Mgboh et al. "FluenceFormer: Transformer-Driven Multi-Beam Fluence mAP Regression for Radiotherapy Planning." Proceedings of The 9th International Conference on Medical Imaging with Deep Learning, 2026.](https://mlanthology.org/midl/2026/mgboh2026midl-fluenceformer/)BibTeX
@inproceedings{mgboh2026midl-fluenceformer,
title = {{FluenceFormer: Transformer-Driven Multi-Beam Fluence mAP Regression for Radiotherapy Planning}},
author = {Mgboh, Ujunwa and Ibn Sultan, Rafi and Kim, Joshua and Thind, Kundan and Zhu, Dongxiao},
booktitle = {Proceedings of The 9th International Conference on Medical Imaging with Deep Learning},
year = {2026},
pages = {685-700},
volume = {315},
url = {https://mlanthology.org/midl/2026/mgboh2026midl-fluenceformer/}
}