CT sinogram-consistency learning for metal-induced beam hardening correction
Hyung Suk Park, Sung Min Lee, Hwa Pyung Kim, and Jin Keun Seo

TL;DR
This paper introduces a deep learning approach to correct sinogram inconsistencies caused by metal-induced beam hardening in CT scans, improving image quality by removing artifacts.
Contribution
It is the first to apply deep learning for sinogram correction specifically targeting beam hardening artifacts in CT imaging.
Findings
Successfully corrected sinogram inconsistencies in real CT data
Extracted beam-hardening features using patient-type specific models
Demonstrated effectiveness across different anatomical areas
Abstract
This paper proposes a sinogram consistency learning method to deal with beam-hardening related artifacts in polychromatic computerized tomography (CT). The presence of highly attenuating materials in the scan field causes an inconsistent sinogram, that does not match the range space of the Radon transform. When the mismatched data are entered into the range space during CT reconstruction, streaking and shading artifacts are generated owing to the inherent nature of the inverse Radon transform. The proposed learning method aims to repair inconsistent sinograms by removing the primary metal-induced beam-hardening factors along the metal trace in the sinogram. Taking account of the fundamental difficulty in obtaining sufficient training data in a medical environment, the learning method is designed to use simulated training data and a patient-type specific learning model is used to…
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