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Fig. 3 | Insights into Imaging

Fig. 3

From: Anatomically guided self-adapting deep neural network for clinically significant prostate cancer detection on bi-parametric MRI: a multi-center study

Fig. 3

The 3D nnU-Net model for detecting clinically significant prostate cancer. a The 3D nnU-Net was fed with T2W imaging, diffusion-weighted imaging, and apparent diffusion coefficient maps along with probabilistic prostate masks via five different channels. The model was trained on the publicly available Prostate Imaging: Cancer AI training data using the significant cancer masks provided by the organizers as the ground truth. b The 3D nnU-Net model was trained using a fivefold cross-validation approach. Then, the ensemble of five nnU-Net models was used to make the final predictions

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