The impact of the project from the scientific perspective can be summarized as follows:
• The biophysical NODDI-DTI method increases the understanding of how physical DTI metrics, which are routinely used in clinical and neuroscience research, are related to biophysical properties such as the density of axons in white matter (see Figure).
• Our newly developed method for artifact correction in spinal cord DTI reduces the artifact-induced variability across subjects and thus improves the statistical power for detecting group differences. In principle, this method can be extended to other model-based qMRI techniques, such as the MPM model.
These main achievements of these Marie-Curie project are the main pillars of MWMI and built the foundation for neuroscience studies using multi-modal qMRI.
In terms of communication and results dissemination, these happened across different channels:
• The project website (
https://goo.gl/zsVcgP(se abrirá en una nueva ventana)) is part of our institutes' website, which includes news, articles and code releases.
• Tweets posts by the author (@siawooshm) and journals (e.g. @FrontNeurosci).
• Presentations at 5 international conferences, including two oral presentations: one at the SFN 2016, San Diego and at the ISMRM 2017 in Hawaii.
• Invited speaker on computational MRI, biophysical models, and MRI-based in vivo histology. 39th Annual Meeting of the Japan Neuroscience Society 2016, Yokohama, Japan.
• At the ESMRMB lecture on “Quantitative MRI for Characterising Brain Tissue Microstructure” in Leipzig, 2016, the author has given a presentation about biophysical models using diffusion MRI.
• The methods developed in this Marie-Curie project are (or will become) part of two open-source toolboxes: (a) the method for estimating a myelin biomarker (which can be calculated from the proton density maps) is part of the hMRI toolbox and available here:
b(se abrirá en una nueva ventana) the methods for artifact correction in spinal cord DTI will become available under www.diffusiontools.com after the paper has been published.