Design of Novel Loss Functions for Deep Learning in X-ray CT
Obaidullah Rahman, Ken D. Sauer, Madhuri Nagare, Charles A. Bouman,, Roman Melnyk, Jie Tang, and Brian Nett

TL;DR
This paper introduces innovative loss functions for deep learning in X-ray CT that better align with radiologists' subjective preferences by focusing on frequency content and reconstruction characteristics.
Contribution
It proposes new loss functions that go beyond traditional norms to improve DL-based CT reconstruction quality, considering domain-specific image features.
Findings
Enhanced preservation of frequency content in reconstructions
Improved image quality aligned with subjective preferences
Flexible application of loss functions in data and image domains
Abstract
Deep learning (DL) shows promise of advantages over conventional signal processing techniques in a variety of imaging applications. The networks' being trained from examples of data rather than explicitly designed allows them to learn signal and noise characteristics to most effectively construct a mapping from corrupted data to higher quality representations. In inverse problems, one has options of applying DL in the domain of the originally captured data, in the transformed domain of the desired final representation, or both. X-ray computed tomography (CT), one of the most valuable tools in medical diagnostics, is already being improved by DL methods. Whether for removal of common quantum noise resulting from the Poisson-distributed photon counts, or for reduction of the ill effects of metal implants on image quality, researchers have begun employing DL widely in CT. The selection…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Medical Imaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging
MethodsFocus
