Fast Voxel-Wise Kinetic Modeling in Dynamic PET using a Physics-Informed CycleGAN
By: Christian Salomonsen , Samuel Kuttner , Michael Kampffmeyer and more
Potential Business Impact:
Predicts how drugs work in the body better.
Tracer kinetic modeling serves a vital role in diagnosis, treatment planning, tracer development and oncology, but burdens practitioners with complex and invasive arterial input function estimation (AIF). We adopt a physics-informed CycleGAN showing promise in DCE-MRI quantification to dynamic PET quantification. Our experiments demonstrate sound AIF predictions and parameter maps closely resembling the reference.
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