Diffusion maps extraction (EUCAIM-SW-057_T-02-01-005)
https://bio.tools/diffusion_maps_extractionExtracts diffusion-related maps (e.g., ADC, IVIM, Kurtosis) from DWI sequences to evaluate microstructural properties of tissues, commonly used in oncology and neurology.
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