A proof-of-concept study of direct magnetic resonance imaging-based proton dose calculation for brain tumors via neural networks with Monte Carlo-comparable accuracy

一项基于神经网络的直接磁共振成像质子剂量计算在脑肿瘤治疗中的概念验证研究,其精度可与蒙特卡罗方法相媲美。

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Abstract

BACKGROUND AND PURPOSE: Proton therapy currently relies on computed tomography (CT) imaging despite magnetic resonance imaging's (MRI) superior soft-tissue contrast. While synthetic CTs can be generated from magnetic resonance (MR) images, this introduces additional complexity. We present a deep learning-based dose engine enabling direct proton dose calculation from MR images to streamline workflows while maintaining Monte Carlo (MC)-level accuracy. MATERIALS AND METHODS: Using paired MR-CT scans from 39 brain tumor patients (29/3/7 for training/validation/testing), we developed a deep learning framework using various sequence models for individual proton pencil beam dose prediction. The framework processes beam-eye-view patches from 2000 random beam configurations per patient, varying in angles and energy, with corresponding MC dose distributions pre-calculated on CT. Models using CT images were trained for comparison. RESULTS: The xLSTM architecture performed best for both MR and CT-based scenarios among the evaluated sequence models. For full treatment plans, our model achieved gamma pass rates with median 99.8 % (range: 98.6 %-99.9 %, 1 mm/1%), and median percentage dose errors of 0.2 % (range: 0.1 %-0.4 %) within patient bodies and 1.3 % (range: 0.8 %-3.7 %) in high-dose regions (>90 % prescription dose). The model required only 3 ms per beam prediction compared to 2 s for MC simulation. CONCLUSION: This study demonstrated the feasibility of MC-quality proton dose calculations directly from MR images for brain tumor patients, achieving comparable accuracy with faster computation and simplified implementation.

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