A feasibility study of enhanced prompt gamma imaging for range verification in proton therapy using deep learning.

Journal: Physics in medicine and biology
PMID:

Abstract

. Range uncertainty is a major concern affecting the delivery precision in proton therapy. The Compton camera (CC)-based prompt-gamma (PG) imaging is a promising technique to provide 3Drange verification. However, the conventional back-projected PG images suffer from severe distortions due to the limited view of the CC, significantly limiting its clinical utility. Deep learning has demonstrated effectiveness in enhancing medical images from limited-view measurements. But different from other medical images with abundant anatomical structures, the PGs emitted along the path of a proton pencil beam take up an extremely low portion of the 3D image space, presenting both the attention and the imbalance challenge for deep learning. To solve these issues, we proposed a two-tier deep learning-based method with a novel weighted axis-projection loss to generate precise 3D PG images to achieve accurate proton range verification.: the proposed method consists of two models: first, a localization model is trained to define a region-of-interest (ROI) in the distorted back-projected PG image that contains the proton pencil beam; second, an enhancement model is trained to restore the true PG emissions with additional attention on the ROI. In this study, we simulated 54 proton pencil beams (energy range: 75-125 MeV, dose level: 1 × 10protons/beam and 3 × 10protons/beam) delivered at clinical dose rates (20 kMU minand 180 kMU min) in a tissue-equivalent phantom using Monte-Carlo (MC). PG detection with a CC was simulated using the MC-Plus-Detector-Effects model. Images were reconstructed using the kernel-weighted-back-projection algorithm, and were then enhanced by the proposed method.. The method effectively restored the 3D shape of the PG images with the proton pencil beam range clearly visible in all testing cases. Range errors were within 2 pixels (4 mm) in all directions in most cases at a higher dose level. The proposed method is fully automatic, and the enhancement takes only ∼0.26 s.. Overall, this preliminary study demonstrated the feasibility of the proposed method to generate accurate 3D PG images using a deep learning framework, providing a powerful tool for high-precisionrange verification of proton therapy.

Authors

  • Zhuoran Jiang
  • Jerimy C Polf
    Department of Radiation Oncology, University of Maryland School of Medicine, Baltimore, MD, 21201, United States of America.
  • Carlos A Barajas
    Department of Mathematics and Statistics, University of Maryland, Baltimore County, Baltimore, MD, 21250, United States of America.
  • Matthias K Gobbert
    Department of Mathematics and Statistics, University of Maryland, Baltimore County, Baltimore, MD, 21250, United States of America.
  • Lei Ren
    Department of Biomaterials, College of Materials, Xiamen University, Xiamen 361005, P.R. China.