Towards linking diffusion MRI based macro- and microstructure measures with cortico-cortical transmission in brain tumor patients

We aimed to link macro- and microstructure measures of brain white matter obtained from diffusion MRI with effective connectivity measures based on a propagation of cortico-cortical evoked potentials induced with intrasurgical direct electrical stimulation. For this, we compared streamline lengths a...

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Veröffentlicht in:NeuroImage (Orlando, Fla.) Fla.), 2021-02, Vol.226, p.117567-117567, Article 117567
Hauptverfasser: Filipiak, Patryk, Almairac, Fabien, Papadopoulo, Théodore, Fontaine, Denys, Mondot, Lydiane, Chanalet, Stéphane, Deriche, Rachid, Clerc, Maureen, Wassermann, Demian
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Sprache:eng
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Zusammenfassung:We aimed to link macro- and microstructure measures of brain white matter obtained from diffusion MRI with effective connectivity measures based on a propagation of cortico-cortical evoked potentials induced with intrasurgical direct electrical stimulation. For this, we compared streamline lengths and log-transformed ratios of streamlines computed from presurgical diffusion-weighted images, and the delays and amplitudes of N1 peaks recorded intrasurgically with electrocorticography electrodes in a pilot study of 9 brain tumor patients. Our results showed positive correlation between these two modalities in the vicinity of the stimulation sites (Pearson coefficient 0.54±0.13 for N1 delays, and 0.47±0.23 for N1 amplitudes), which could correspond to the neural propagation via U-fibers. In addition, we reached high sensitivities (0.78±0.07) and very high specificities (0.93±0.03) in a binary variant of our comparison. Finally, we used the structural connectivity measures to predict the effective connectivity using a multiple linear regression model, and showed a significant role of brain microstructure-related indices in this relation.
ISSN:1053-8119
1095-9572
DOI:10.1016/j.neuroimage.2020.117567