Sequential deep learning image enhancement models improve diagnostic confidence, lesion detectability, and image reconstruction time in PET
<p><strong>Background</p></strong> Investigate the potential benefits of sequential deployment of two deep learning (DL) algorithms namely DL-Enhancement (DLE) and DL-based time-of-flight (ToF) (DLT). DLE aims to enhance the rapidly reconstructed ordered-subset-expectation-m...
Main Authors: | Dedja, M, Mehranian, A, Bradley, KM, Walker, MD, Fielding, PA, Wollenweber, SD, Johnsen, R, McGowan, DR |
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Format: | Journal article |
Language: | English |
Published: |
Springer Nature
2024
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