4.4 Article

How to Measure Cortical Folding from MR Images: a Step-by-Step Tutorial to Compute Local Gyrification Index

期刊

出版社

JOURNAL OF VISUALIZED EXPERIMENTS
DOI: 10.3791/3417

关键词

Medicine; Issue 59; neuroimaging; brain; cortical complexity; cortical development

资金

  1. National Center of Competence in Research (NCCR) SYNAPSY - The Synaptic Bases of Mental Diseases - Swiss National Science Foundation [51AU40_125759]
  2. Swiss National Research Fund [323500-111165, 3200-063135.00/1, 3232-063134.00/1, PP0033-102864, 32473B-121996]
  3. Center for Biomedical Imaging (CIBM) of the Geneva-Lausanne Universities
  4. EPFL
  5. foundation Leenaards
  6. foundation Louis-Jeantet
  7. National Center for Research Resources (NCRR BIRN Morphometric Project) [BIRN002, U24 RR021382]
  8. National Institutes of Health through the NIH Roadmap for Medical Research [U54 EB005149]
  9. Autism & Dyslexia Project - Ellison Medical Foundation
  10. NATIONAL CENTER FOR RESEARCH RESOURCES [P41RR014075, U24RR021382] Funding Source: NIH RePORTER
  11. NATIONAL INSTITUTE OF BIOMEDICAL IMAGING AND BIOENGINEERING [U54EB005149, R01EB006758, R01EB001550] Funding Source: NIH RePORTER
  12. NATIONAL INSTITUTE OF NEUROLOGICAL DISORDERS AND STROKE [R01NS052585] Funding Source: NIH RePORTER

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Cortical folding (gyrification) is determined during the first months of life, so that adverse events occurring during this period leave traces that will be identifiable at any age. As recently reviewed by Mangin and colleagues(2), several methods exist to quantify different characteristics of gyrification. For instance, sulcal morphometry can be used to measure shape descriptors such as the depth, length or indices of interhemispheric asymmetry(3). These geometrical properties have the advantage of being easy to interpret. However, sulcal morphometry tightly relies on the accurate identification of a given set of sulci and hence provides a fragmented description of gyrification. A more fine-grained quantification of gyrification can be achieved with curvature-based measurements, where smoothed absolute mean curvature is typically computed at thousands of points over the cortical surface(4). The curvature is however not straightforward to comprehend, as it remains unclear if there is any direct relationship between the curvedness and a biologically meaningful correlate such as cortical volume or surface. To address the diverse issues raised by the measurement of cortical folding, we previously developed an algorithm to quantify local gyrification with an exquisite spatial resolution and of simple interpretation. Our method is inspired of the Gyrification Index(5), a method originally used in comparative neuroanatomy to evaluate the cortical folding differences across species. In our implementation, which we name local Gyrification Index (lGI(1)), we measure the amount of cortex buried within the sulcal folds as compared with the amount of visible cortex in circular regions of interest. Given that the cortex grows primarily through radial expansion(6), our method was specifically designed to identify early defects of cortical development. In this article, we detail the computation of local Gyrification Index, which is now freely distributed as a part of the FreeSurfer Software (http://surfer.nmr.mgh.harvard.edu/, Martinos Center for Biomedical Imaging, Massachusetts General Hospital). FreeSurfer provides a set of automated reconstruction tools of the brain's cortical surface from structural MRI data. The cortical surface extracted in the native space of the images with sub-millimeter accuracy is then further used for the creation of an outer surface, which will serve as a basis for the lGI calculation. A circular region of interest is then delineated on the outer surface, and its corresponding region of interest on the cortical surface is identified using a matching algorithm as described in our validation study(1). This process is repeatedly iterated with largely overlapping regions of interest, resulting in cortical maps of gyrification for subsequent statistical comparisons (Fig. 1). Of note, another measurement of local gyrification with a similar inspiration was proposed by Toro and colleagues(7), where the folding index at each point is computed as the ratio of the cortical area contained in a sphere divided by the area of a disc with the same radius. The two implementations differ in that the one by Toro et al. is based on Euclidian distances and thus considers discontinuous patches of cortical area, whereas ours uses a strict geodesic algorithm and include only the continuous patch of cortical area opening at the brain surface in a circular region of interest.

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