2023
DOI: 10.1002/mp.16352
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A quality‐checked and physics‐constrained deep learning method to estimate material basis images from single‐kV contrast‐enhanced chest CT scans

Abstract: Background: Single-kV CT imaging is one of the primary imaging methods in radiology practices. However, it does not provide material basis images for some subtle lesion characterization tasks in clinical diagnosis. Purpose: To develop a quality-checked and physics-constrained deep learning (DL) method to estimate material basis images from single-kV CT data without resorting to dual-energy CT acquisition schemes. Methods: Single-kV CT images are decomposed into two material basis images using a deep neural net… Show more

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Cited by 3 publications
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