Diffusion parameter mapping with the combined intravoxel incoherent motion and kurtosis model using artificial neural networks at 3 T
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L. Schad | M. Barth | S. Domsch | Sebastian Weingärtner | K. O’Brien | J. Zapp | M. Bertleff | Kieran O’Brien
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