End2end-ALARA: Approaching the ALARA Law in CT Imaging with End-to-end Learning
Journal:
arXiv
Published Date:
Apr 9, 2025
Abstract
Computed tomography (CT) examination poses radiation injury to patient. A
consensus performing CT imaging is to make the radiation dose as low as
reasonably achievable, i.e. the ALARA law. In this paper, we propose an
end-to-end learning framework, named End2end-ALARA, that jointly optimizes dose
modulation and image reconstruction to meet the goal of ALARA in CT imaging.
End2end-ALARA works by building a dose modulation module and an image
reconstruction module, connecting these modules with a differentiable
simulation function, and optimizing the them with a constrained hinge loss
function. The objective is to minimize radiation dose subject to a prescribed
image quality (IQ) index. The results show that End2end-ALARA is able to preset
personalized dose levels to gain a stable IQ level across patients, which may
facilitate image-based diagnosis and downstream model training. Moreover,
compared to fixed-dose and conventional dose modulation strategies,
End2end-ALARA consumes lower dose to reach the same IQ level. Our study sheds
light on a way of realizing the ALARA law in CT imaging.