Article ID Journal Published Year Pages File Type
3072263 NeuroImage 2010 9 Pages PDF
Abstract

Fractal analysis methods are used to quantify the complexity of the human cerebral cortex. Many recent studies have focused on high resolution three-dimensional reconstructions of either the outer (pial) surface of the brain or the junction between the gray and white matter, but ignore the structure between these surfaces. This study uses a new method to incorporate the entire cortical thickness. Data were obtained from the Alzheimer's Disease (AD) Neuroimaging Initiative database (Control N = 35, Mild AD N = 35). Image segmentation was performed using a semi-automated analysis program. The fractal dimension of three cortical models (the pial surface, gray/white surface and entire cortical ribbon) were calculated using a custom cube-counting triangle-intersection algorithm. The fractal dimension of the cortical ribbon showed highly significant differences between control and AD subjects (p < 0.001). The inner surface analysis also found smaller but significant differences (p < 0.05). The pial surface dimensionality was not significantly different between the two groups. All three models had a significant positive correlation with the cortical gyrification index (r > 0.55, p < 0.001). Only the cortical ribbon had a significant correlation with cortical thickness (r = 0.832, p < 0.001) and the Alzheimer's Disease Assessment Scale cognitive battery (r = −0.513, p = 0.002). The cortical ribbon dimensionality showed a larger effect size (d = 1.12) in separating control and mild AD subjects than cortical thickness (d = 1.01) or gyrification index (d = 0.84). The methodological change shown in this paper may allow for further clinical application of cortical fractal dimension as a biomarker for structural changes that accrue with neurodegenerative diseases.

Graphical AbstractFigure optionsDownload full-size imageDownload high-quality image (220 K)Download as PowerPoint slideResearch Highlights▶ The fractal dimension of the cortical ribbon is lower for AD subjects vs controls. ▶ The entire ribbon is a better cortical model than the pial or grey/white surfaces. ▶ The cortical ribbon separates mild AD vs control better than cortical thickness. ▶ The cortical ribbon separates mild AD vs control better than gyrification index.

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Life Sciences Neuroscience Cognitive Neuroscience
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