2020
DOI: 10.48550/arxiv.2010.00427
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Proton path reconstruction for pCT using Neural Networks

T. Ackernley,
G. Casse,
M. Cristoforetti

Abstract: The Most Likely Path formalism (MLP) is widely established as the most statistically precise method for proton path reconstruction in proton computed tomography (pCT). However, while this method accounts for small-angle Multiple Coulomb Scattering (MCS) and energy loss, inelastic nuclear interactions play an influential role in a significant number of proton paths. By applying cuts based on energy and direction, tracks influenced by nuclear interactions are largely discarded from the MLP analysis. In this work… Show more

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