4.7 Article

A tutorial and tool for exploring feature similarity gradients with MRI data

期刊

NEUROIMAGE
卷 221, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2020.117140

关键词

Gradients; Spectral clustering; Connectivity-based parcellation; Laplacian eigenmaps; Network analysis; VB Index

资金

  1. MRC programme [MR/J004146/1]
  2. EPSRC [EP/M005909/1, EP/N006771/1]
  3. BBSRC DTP studentship [BB/J014478/1]
  4. Initiative and Networking Fund of the Helmholtz Association
  5. European Union's Horizon 2020 Research and Innovation Program [785907, 945539]
  6. COST (European Cooperation in Science and Technology) [CA18106]
  7. NIH Blueprint for Neuroscience Research [1U54MH091657]
  8. McDonnell Center for Systems Neuroscience at Washington University [1U54MH091657]
  9. EPSRC [EP/M005909/1, EP/N006771/1] Funding Source: UKRI
  10. MRC [MR/R023883/1, MR/J004146/1] Funding Source: UKRI

向作者/读者索取更多资源

There has been an increasing interest in examining organisational principles of the cerebral cortex (and subcortical regions) using different MRI features such as structural or functional connectivity. Despite the widespread interest, introductory tutorials on the underlying technique targeted for the novice neuroimager are sparse in the literature. Articles that investigate various neural gradients (for example based on region studied cortical gradients, cerebellar gradients, hippocampal gradients etc ... or feature of interest functional gradients, cytoarchitectural gradients, myeloarchitectural gradients etc ...) have increased in popularity. Thus, we believe that it is opportune to discuss what is generally meant by gradient analysis. We introduce basics concepts in graph theory, such as graphs themselves, the degree matrix, and the adjacency matrix. We discuss how one can think about gradients of feature similarity (the similarity between timeseries in fMRI, or streamline in tractography) using graph theory and we extend this to explore such gradients across the whole MRI scale; from the voxel level to the whole brain level. We proceed to introduce a measure for quantifying the level of similarity in regions of interest. We propose the term the Vogt-Bailey index for such quantification to pay homage to our history as a brain mapping community. We run through the techniques on sample datasets including a brain MRI as an example of the application of the techniques on real data and we provide several appendices that expand upon details. To maximise intuition, the appendices contain a didactic example describing how one could use these techniques to solve a particularly pernicious problem that one may encounter at a wedding. Accompanying the article is a tool, available in both MATLAB and Python, that enables readers to perform the analysis described in this article on their own data. We refer readers to the graphical abstract as an overview of the analysis pipeline presented in this work.

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