Synthetic PET via Domain Translation of 3D MRI
Abhejit Rajagopal, Yutaka Natsuaki, Kristen Wangerin, Mahdjoub Hamdi,, Hongyu An, John J. Sunderland, Richard Laforest, Paul E. Kinahan, Peder E.Z., Larson, Thomas A.Hope

TL;DR
This paper presents a deep learning method to generate realistic synthetic PET data from MRI scans, enabling algorithm development without extensive patient data collection.
Contribution
The authors introduce a 3D residual UNet that predicts physiologic PET uptake from MRI and produces synthetic PET sinograms suitable for validation and comparison of PET reconstruction methods.
Findings
Synthetic PET data closely mimics real physiologic uptake patterns.
The method achieves ≤7.6% error in SUV comparison with real PET data.
Synthetic data effectively supports PET quantification tasks.
Abstract
Historically, patient datasets have been used to develop and validate various reconstruction algorithms for PET/MRI and PET/CT. To enable such algorithm development, without the need for acquiring hundreds of patient exams, in this paper we demonstrate a deep learning technique to generate synthetic but realistic whole-body PET sinograms from abundantly-available whole-body MRI. Specifically, we use a dataset of 56 F-FDG-PET/MRI exams to train a 3D residual UNet to predict physiologic PET uptake from whole-body T1-weighted MRI. In training we implemented a balanced loss function to generate realistic uptake across a large dynamic range and computed losses along tomographic lines of response to mimic the PET acquisition. The predicted PET images are forward projected to produce synthetic PET time-of-flight (ToF) sinograms that can be used with vendor-provided PET reconstruction…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging · Advanced MRI Techniques and Applications
