Structural characterization of the Extended Frontal Aslant Tract trajectory: A ML-validated laterality study in 3T and 7T

Autor: Jose R. Pineda, Saül Pascual-Diaz, Alberto Prats-Galino, Federico Varriano
Jazyk: angličtina
Rok vydání: 2020
Předmět:
Adult
Male
Dissecció humana
Cognitive Neuroscience
Dissecció
Orthogonal plane
050105 experimental psychology
Lateralization of brain function
Functional Laterality
Automated fiber quantification
lcsh:RC321-571
White matter
Machine Learning
03 medical and health sciences
0302 clinical medicine
Neural Pathways
Lòbul frontal
Aprenentatge automàtic
Machine learning
medicine
Connectome
Humans
0501 psychology and cognitive sciences
lcsh:Neurosciences. Biological psychiatry. Neuropsychiatry
Mathematics
Human Connectome Project
Motor area
Lateralization
Dissection
05 social sciences
Laterality
Motor Cortex
Anatomy
White Matter
Human dissection
medicine.anatomical_structure
Diffusion Tensor Imaging
Neurology
Frontal lobe
Lateralitat
Extended Frontal Aslant Tract
Female
030217 neurology & neurosurgery
Tractography
Zdroj: Dipòsit Digital de la UB
Universidad de Barcelona
NeuroImage, Vol 222, Iss, Pp 117260-(2020)
Popis: The Extended Frontal Aslant Tract (exFAT) is a recently described tractography-based extension of the Frontal Aslant Tract connecting Broca’s territory to both supplementary and pre-supplementary motor areas, and more anterior prefrontal regions. In this study, we aim to characterize the microstructural properties of the exFAT trajectories as a means to perform a laterality analysis to detect interhemispheric structural differences along the tracts using the Human Connectome Project (HCP) dataset. To that end, the bilateral exFAT was reconstructed for 3T and 7T HCP acquisitions in 120 randomly selected subjects. As a complementary exploration of the exFAT anatomy, we performed a white matter dissection of the exFAT trajectory of two ex-vivo left hemispheres that provide a qualitative assessment of the tract profiles. We assessed the lateralization structural differences in the exFAT by performing: (i) a laterality comparison between the mean microstructural diffusion-derived parameters for the exFAT trajectories, (ii) a laterality comparison between the tract profiles obtained by applying the Automated Fiber Quantification (AFQ) algorithm, and (iii) a cross-validated Machine Learning (ML) classifier analysis using single and combined tract profiles parameters for single-subject classification. The mean microstructural diffusion-derived parameter comparison showed statistically significant differences in mean FA values between left and right exFATs in the 3T sample. The diffusion parameters studied with the AFQ technique suggest that the inferiormost half of the exFAT trajectory has a hemispheric-dependent fingerprint of microstructural properties, with an increased measure of tissue hindrance in the orthogonal plane and a decreased measure of orientational dispersion along the main tract direction in the left exFAT compared to the right exFAT. The classification accuracy of the ML models showed a high agreement with the magnitude of those differences.
Databáze: OpenAIRE