Fitting multi-exponential models to Diffusion MRI (dMRI) data has always been
challenging due to various underlying complexities. In this work, we introduce
a novel and robust fitting framework for the standard two-compartment IVIM
microstructural model. This framework provides a significant improvement over
the existing methods and helps estimate the associated diffusion and perfusion
parameters of IVIM in an automatic manner. As a part of this work we provide
capabilities to switch between more advanced global optimization methods such
as simplicial homology (SH) and differential evolution (DE). Our experiments
show that the results obtained from this simultaneous fitting procedure
disentangle the model parameters in a reduced subspace. The proposed framework
extends the seminal work originated in the MIX framework, with improved
procedures for multi-stage fitting. This framework has been made available as
an open-source Python implementation and disseminated to the community through
the DIPY project