Unsupervised deep learning model for fast energy layer pre-selection of delivery-efficient proton arc therapy plan optimization of nasopharyngeal carcinoma
Bohan Yang, Gang Liu, Yang Zhong, Rirao Dao, Yujia Qian, Ke Shi, Anke Tang, Yong Luo, Qi Kong, Jingnan Liu

TL;DR
This paper introduces an unsupervised deep learning model that rapidly pre-selects energy layers in proton arc therapy, significantly improving plan quality and delivery efficiency for nasopharyngeal carcinoma.
Contribution
It presents a novel spot-count data representation and a U-Net based model for fast, high-quality energy layer pre-selection in proton therapy planning.
Findings
Enhances plan conformity index by 0.1 (p<0.01)
Reduces homogeneity index by 0.71 (p<0.01)
Shortens energy layer switch time by 37.2% (p<0.01)
Abstract
Proton arc therapy (PAT) is an emerging and promising modality in radiotherapy, offering improved dose distribution and treatment robustness over intensity-modulated proton therapy. Yet, identifying the optimal energy layer (EL) sequence remains challenging due to the intensive computational demand and prolonged treatment delivery time. This study proposes an unsupervised deep learning model for fast EL pre-selection that minimizes EL switch (ELS) time while maintaining high plan quality. We introduce a novel data representation method, spot-count representation, which encodes the number of proton spots intersecting the target and organs at risk (OAR) in a matrix structured by sorted gantry angles and energy layers. This representation serves as the input of an U-Net style architecture, SPArc_dl, which is trained using a tri-objective function: maximizing spot-counts on target,…
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Taxonomy
TopicsRadiation Therapy and Dosimetry · Advanced Radiotherapy Techniques · Radiation Effects in Electronics
