A two-dimensional feasibility study of deep learning-based feature detection and characterization directly from CT sinograms.
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Bruno De Man | Hongming Shan | Paul Fitzgerald | Ge Wang | Eri Haneda | Bernhard Claus | Mert Sabuncu | Quinten De Man | Guhan Qian | James Min | Ge Wang | M. Sabuncu | B. De Man | J. Min | P. Fitzgerald | B. Claus | Hongming Shan | Guhan Qian | E. Haneda | Quinten De Man
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