Utilizing network analysis and fMRI to infer key language modules and their circuits from healthy human controls

ORAL

Abstract

Traditional task-based functional Magnetic Resonance Imaging (tb-fMRI) statistical analysis has served as a powerful tool to identify brain areas associated with language. However, it does not provide an explanation of how different functional areas interact and integrate with each other to form comprehensive language tasks.
We abstracted task-correlated areas at different anatomical locations as network modules where each voxel within the module is a network node and utilized statistical inference methods to infer the links between each node pair from their correlation matrix. We applied this network analysis to language tb-fMRI scans acquired from 9 healthy right-handed individuals.
Our results show that a robust fully-connected functional language network exists across 8 out of 9 healthy individuals, which entangles the Brocas Area, Wernickes Area, Supplementary Motor Area, and Pre-Motor Area, all in the left hemisphere. Furthermore, we uncovered the functional connectivity of the anatomical sub-divisions (pars-opercularis and pars-triangularis) of the Broca's Area.

*NIH; NIH-NIBIB 1 R01 EB022720-01; U54 CA137788; U54 CA132378; P30 CA008748; NSF; NSF-IIS 1515022, ISSNAF imaging chapter award 2018 and ESOR Bracco clinical fellowship 2018.

Presenters

  • Qiongge Li

    • Physics, City College of New York

Authors

  • Qiongge Li

    • Physics, City College of New York
  • Gino Del Ferraro

    • Radiology, Memorial Sloan Kettering Cancer Center
  • Luca Pasquini

    • Radiology, Memorial Sloan Kettering Cancer Center
  • Kyung K. Peck

    • Radiology, Memorial Sloan Kettering Cancer Center
  • Hernán A. Makse

    • Physics, City College of New York
  • Andrei I. Holodny

    • Radiology, Memorial Sloan Kettering Cancer Center