Image Reconstruction for Proton Therapy Range Verification via U-NETs
L. M. Setterdahl (Western Norway University of Applied Sciences)
William R.B. Lionheart (The University of Manchester)
Sean Holman (The University of Manchester)
Kyrre Skjerdal (Western Norway University of Applied Sciences)
Hunter N. Ratliff (Western Norway University of Applied Sciences)
Kristian Smeland Ytre-Hauge (University of Bergen)
D. Lathouwers (TU Delft - RST/Reactor Physics and Nuclear Materials)
Ilker Meric (Western Norway University of Applied Sciences)
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Abstract
This study aims to investigate the capability of U-Nets in improving image reconstruction accuracy for proton range verification within the framework of the NOVO (Next generation imaging for real-time dose verification enabling adaptive proton therapy) project. NOVO aims to enhance the accuracy of proton range verification by imaging the distribution of prompt gamma-rays (PGs) and fast neutrons (FNs) produced by nuclear interactions within tissue. In this work, focus lies on FNs, leaving PGs as future work. A dataset consisting of Monte Carlo-based simple back-projection and ground truth images of FN production distributions in a homogeneous water phantom was utilized. Various U-Net models were trained to predict FN distributions, and a set of range landmark (RL) metrics were computed for evaluation. Linear regression models were established to correlate shifts in mean RL with true range shift magnitudes. Our findings demonstrate a strong linear correlation between the shifts in mean RL in U-Net predictions and the true range shift magnitudes. Multiple RL metrics, including weighted average, inflection point, edge, and peak, were explored. This study highlights the potential utility of U-Nets in enhancing image reconstruction accuracy for proton range verification. The observed correlations between RL shifts and true range shifts provide evidence of the ability of U-Nets to accurately predict images containing range information. Future research will focus on generating more realistic training data incorporating more clinically relevant phantoms, including tissue heterogeneities.