A fractal derivative model for the characterization of anomalous diffusion in magnetic resonance imaging

•A fractal derivative model is introduced to describe anomalous diffusion in MRI.•The Hausdorff dimension of the diffusion trajectory is linked to the derivative order.•Spectral entropy is considered a measure to characterize the complexity of diffusion.•The parameters α, Dα,β and spectral entropy a...

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Veröffentlicht in:Communications in nonlinear science & numerical simulation 2016-10, Vol.39, p.529-537
Hauptverfasser: Liang, Yingjie, Ye, Allen Q., Chen, Wen, Gatto, Rodolfo G., Colon-Perez, Luis, Mareci, Thomas H., Magin, Richard L.
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Sprache:eng
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Zusammenfassung:•A fractal derivative model is introduced to describe anomalous diffusion in MRI.•The Hausdorff dimension of the diffusion trajectory is linked to the derivative order.•Spectral entropy is considered a measure to characterize the complexity of diffusion.•The parameters α, Dα,β and spectral entropy are biomarkers to separate neural tissues.•The fractal model has practical advantages from the perspective of computational accuracy and efficiency. Non-Gaussian (anomalous) diffusion is wide spread in biological tissues where its effects modulate chemical reactions and membrane transport. When viewed using magnetic resonance imaging (MRI), anomalous diffusion is characterized by a persistent or ‘long tail’ behavior in the decay of the diffusion signal. Recent MRI studies have used the fractional derivative to describe diffusion dynamics in normal and post-mortem tissue by connecting the order of the derivative with changes in tissue composition, structure and complexity. In this study we consider an alternative approach by introducing fractal time and space derivatives into Fick's second law of diffusion. This provides a more natural way to link sub-voxel tissue composition with the observed MRI diffusion signal decay following the application of a diffusion-sensitive pulse sequence. Unlike previous studies using fractional order derivatives, here the fractal derivative order is directly connected to the Hausdorff fractal dimension of the diffusion trajectory. The result is a simpler, computationally faster, and more direct way to incorporate tissue complexity and microstructure into the diffusional dynamics. Furthermore, the results are readily expressed in terms of spectral entropy, which provides a quantitative measure of the overall complexity of the heterogeneous and multi-scale structure of biological tissues. As an example, we apply this new model for the characterization of diffusion in fixed samples of the mouse brain. These results are compared with those obtained using the mono-exponential, the stretched exponential, the fractional derivative, and the diffusion kurtosis models. Overall, we find that the order of the fractal time derivative, the diffusion coefficient, and the spectral entropy are potential biomarkers to differentiate between the microstructure of white and gray matter. In addition, we note that the fractal derivative model has practical advantages over the existing models from the perspective of computational accuracy and efficiency.
ISSN:1007-5704
1878-7274
DOI:10.1016/j.cnsns.2016.04.006