Physics-Informed Deep Learning for Improved Input Function Estimation in Motion-Blurred Dynamic [${}^{18}$F]FDG PET Images
Christian Salomonsen, Kristoffer K. Wickstr{\o}m, Samuel Kuttner, Elisabeth Wetzer

TL;DR
This paper introduces a physics-informed deep learning model for estimating arterial input functions in motion-blurred dynamic PET images, improving robustness and accuracy by integrating physiological constraints during training.
Contribution
The study presents a novel physics-informed deep learning approach that enhances input function estimation in motion-affected PET images by incorporating kinetic modeling constraints.
Findings
The physics-informed model performs comparably to non-physics models on clean data.
It maintains high performance even with severe image blurring due to motion.
The approach improves robustness by enforcing physiological consistency.
Abstract
Kinetic modeling enables \textit{in vivo} quantification of tracer uptake and glucose metabolism in [F]Fluorodeoxyglucose ([F]FDG) dynamic positron emission tomography (dPET) imaging of mice. However, kinetic modeling requires the accurate determination of the arterial input function (AIF) during imaging, which is time-consuming and invasive. Recent studies have shown the efficacy of using deep learning to directly predict the input function, surpassing established methods such as the image-derived input function (IDIF). In this work, we trained a physics-informed deep learning-based input function prediction model (PIDLIF) to estimate the AIF directly from the PET images, incorporating a kinetic modeling loss during training. The proposed method uses a two-tissue compartment model over two regions, the myocardium and brain of the mice, and is trained on a dataset of…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging · Medical Image Segmentation Techniques
