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XProspeCT: CT Volume Generation from Paired X-Rays

Authors :
Paulson, Benjamin
Goldshteyn, Joshua
Balboni, Sydney
Cisler, John
Crisler, Andrew
Bukowski, Natalia
Kalish, Julia
Colwell, Theodore
Publication Year :
2024

Abstract

Computed tomography (CT) is a beneficial imaging tool for diagnostic purposes. CT scans provide detailed information concerning the internal anatomic structures of a patient, but present higher radiation dose and costs compared to X-ray imaging. In this paper, we build on previous research to convert orthogonal X-ray images into simulated CT volumes by exploring larger datasets and various model structures. Significant model variations include UNet architectures, custom connections, activation functions, loss functions, optimizers, and a novel back projection approach.<br />Comment: Originally submitted as part of the MICS 2023 Undergraduate Paper Competition

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.00771
Document Type :
Working Paper