Simultaneous Estimation of X-ray Back-Scatter and Forward-Scatter using Multi-Task Learning
Philipp Roser, Xia Zhong, Annette Birkhold, Alexander Preuhs,, Christopher Syben, Elisabeth Hoppe, Norbert Strobel, Markus Kowarschik,, Rebecca Fahrig, Andreas Maier

TL;DR
This paper introduces a multi-task learning approach that combines physics-based models and neural networks to simultaneously estimate back-scatter and forward-scatter in X-ray imaging, improving dose assessment and image correction.
Contribution
It presents a novel multi-task learning framework that jointly estimates back- and forward-scatter in X-ray imaging, enhancing dose quantification and image correction capabilities.
Findings
Theoretical proof of high-accuracy scatter estimation possible
Proposed method improves skin dose assessment
Framework identifies future research directions
Abstract
Scattered radiation is a major concern impacting X-ray image-guided procedures in two ways. First, back-scatter significantly contributes to patient (skin) dose during complicated interventions. Second, forward-scattered radiation reduces contrast in projection images and introduces artifacts in 3-D reconstructions. While conventionally employed anti-scatter grids improve image quality by blocking X-rays, the additional attenuation due to the anti-scatter grid at the detector needs to be compensated for by a higher patient entrance dose. This also increases the room dose affecting the staff caring for the patient. For skin dose quantification, back-scatter is usually accounted for by applying pre-determined scalar back-scatter factors or linear point spread functions to a primary kerma forward projection onto a patient surface point. However, as patients come in different shapes, the…
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