3D Auto-Context-Based Locality Adaptive Multi-Modality GANs for PET Synthesis
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Dinggang Shen | Xi Wu | Chen Zu | Luping Zhou | Lei Wang | Jiliu Zhou | Weili Lin | Yan Wang | Biting Yu | David S Lalush | D. Lalush | Weili Lin | D. Shen | Jiliu Zhou | Yan Wang | Xi Wu | C. Zu | Luping Zhou | Lei Wang | Biting Yu
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