Synthetic PET generated from CT via 3D Pix2Pix GAN and fused in MINT framework raises NSCLC subtype classification AUC from 0.489 to 0.591 on 714 multi-center patients.
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Virtual Scanning for NSCLC Histology: Investigating the Discriminatory Power of Synthetic PET
Synthetic PET generated from CT via 3D Pix2Pix GAN and fused in MINT framework raises NSCLC subtype classification AUC from 0.489 to 0.591 on 714 multi-center patients.