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Machine learning for proton path tracking in proton computed tomography
Journal article   Open access  Peer reviewed

Machine learning for proton path tracking in proton computed tomography

Dimitrios Lazos, Charles-Antoine Collins-Fekete, Miroslaw Bober, Philip M Evans and Nikolaos Dikaios
Physics in medicine & biology
25/03/2021
PMID: 33765674

Abstract

proton path tracking multiple Coulomb scattering proton stopping power Geant4 Monte Carlo proton Computed Tomography Machine Learning
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