LIP-CAR: contrast agent reduction by a deep learned inverse problem
Davide Bianchi, Sonia Colombo Serra, Davide Evangelista, Pengpeng Luo,, Elena Morotti, Giovanni Valbusa

TL;DR
This paper proposes a novel deep learning-based inverse problem approach for reducing contrast agent dosage in medical imaging, aiming to maintain image quality while minimizing potential risks and costs.
Contribution
It introduces a learned inverse problem framework for contrast agent reduction, combining regularization with deep learning for improved stability and accuracy.
Findings
Enhanced stability in low-dose image simulation
Improved accuracy over existing methods
Effective in pre-clinical medical images
Abstract
The adoption of contrast agents in medical imaging protocols is crucial for accurate and timely diagnosis. While highly effective and characterized by an excellent safety profile, the use of contrast agents has its limitation, including rare risk of allergic reactions, potential environmental impact and economic burdens on patients and healthcare systems. In this work, we address the contrast agent reduction (CAR) problem, which involves reducing the administered dosage of contrast agent while preserving the visual enhancement. The current literature on the CAR task is based on deep learning techniques within a fully image processing framework. These techniques digitally simulate high-dose images from images acquired with a low dose of contrast agent. We investigate the feasibility of a ``learned inverse problem'' (LIP) approach, as opposed to the end-to-end paradigm in the…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Medical Imaging Techniques and Applications · Image Processing Techniques and Applications
