Dynamic interactions among large sets of brain regions produce all human perception, cognition and behavior. It is increasingly recognized that most mental disorders are caused by disruptions of distributed neural circuits, the structure and function of which still remain poorly known. Therefore, mapping the anatomy and dynamics of human brain networks is critical for us to understand the mechanisms underlying a variety of human behaviors and mental illness. However, significant progress in this area is hindered by technical limitations of existing neural recording and imaging techniques. To date, there is no single non-invasive neuroimaging technique ca- pable of providing a complete spatiotemporal pattern of whole-brain neuronal interactions. There is a critical need to establish new non-invasive imaging methods with high spatial and temporal resolution to uncover neural circuit dynamics in normal vs. diseased brains. To meet this critical need, we propose to establish and validate a novel multimodal hyperspectral imaging (MHI) technique, based on simultaneous acquisition and joint analysis of functional magnetic resonance imaging (fMRI) and electroencephalography (EEG), to permit high- resolution mapping of brain activity and connectivity at specific frequencies over the full spectrum of brain dynamics. This unique technique combined with diffusion MRI (dMRI) will be immediately usable to create a significantly enriched human brain connectome that will not only depict detailed connections among anatomically specific brain regions, but also assign to each region and each connection color-coded spectral signatures indicating their differential degrees of involvement in distributed network activities over various neuronal time scales across whole-brain neural circuits. To achieve this objective, we propose to accomplish three specific aims. 1) We will develop and optimize MHI through realistic computation simulations based on the virtual brain (TVB), a neuroinformatic platform to simulate the whole-brain network dynamics. 2) We will combine MHI and dMRI tractography to create a spectrally color-coded human connectome that entails both structural and functional connectivity. 3) We will validate the cortical activity and connectivity imaged with MHI against those directly measured with electrocorticography (ECoG) from the same group of epilepsy patients undergoing neuro- surgical evaluation with implanted subdural grids. The outcome from the proposed research will provide a new imaging tool to uncover the network basis for accurately assessing brain functions and identifying biomarkers for diagnosis of mental disorders. This project will have a significantly positive impact in delineating the brain's structural and functional connectivity, paving the way for better understanding and diagnosis of mental health, and significantly aid treatment and prevention of mental disorders.

Public Health Relevance

We propose to establish and validate a novel multimodal hyperspectral imaging (MHI) technique, based on simultaneous acquisition and joint analysis of functional magnetic resonance imaging (fMRI) and electroen-cephalography (EEG), to permit high-resolution mapping of brain activity and connectivity at specific frequen- cies over the full spectrum of brain dynamics. This unique technique combined with diffusion MRI (dMRI) will be immediately usable to create a significantly enriched human brain connectome that will not only depict de- tailed connections among anatomically specific brain regions, but also assign to each region and each connection color-coded 'spectral signatures' indicating their differential degrees of involvement in distributed network activities over various neuronal time scales. The outcome from the proposed research will provide a new imaging tool to uncover the network basis for accurately assessing brain functions and identifying biomarkers for diagnosis of mental disorders.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
5R01MH104402-05
Application #
9459408
Study Section
Special Emphasis Panel (ZMH1)
Program Officer
Freund, Michelle
Project Start
2014-08-01
Project End
2019-04-30
Budget Start
2018-05-01
Budget End
2019-04-30
Support Year
5
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Purdue University
Department
Engineering (All Types)
Type
Biomed Engr/Col Engr/Engr Sta
DUNS #
072051394
City
West Lafayette
State
IN
Country
United States
Zip Code
47907
Shi, Junxing; Wen, Haiguang; Zhang, Yizhen et al. (2018) Deep recurrent neural network reveals a hierarchy of process memory during dynamic natural vision. Hum Brain Mapp 39:2269-2282
Wen, Haiguang; Shi, Junxing; Chen, Wei et al. (2018) Deep Residual Network Predicts Cortical Representation and Organization of Visual Features for Rapid Categorization. Sci Rep 8:3752
Wen, Haiguang; Shi, Junxing; Chen, Wei et al. (2018) Transferring and generalizing deep-learning-based neural encoding models across subjects. Neuroimage 176:152-163
Wen, Haiguang; Shi, Junxing; Zhang, Yizhen et al. (2018) Neural Encoding and Decoding with Deep Learning for Dynamic Natural Vision. Cereb Cortex 28:4136-4160
Cao, Jiayue; Lu, Kun-Han; Powley, Terry L et al. (2017) Vagal nerve stimulation triggers widespread responses and alters large-scale functional connectivity in the rat brain. PLoS One 12:e0189518
Marussich, Lauren; Lu, Kun-Han; Wen, Haiguang et al. (2017) Mapping white-matter functional organization at rest and during naturalistic visual perception. Neuroimage 146:1128-1141
Lu, Kun-Han; Jeong, Jun Young; Wen, Haiguang et al. (2017) Spontaneous activity in the visual cortex is organized by visual streams. Hum Brain Mapp 38:4613-4630
Zhang, Yizhen; Chen, Gang; Wen, Haiguang et al. (2017) Musical Imagery Involves Wernicke's Area in Bilateral and Anti-Correlated Network Interactions in Musicians. Sci Rep 7:17066
Lu, Kun-Han; Hung, Shao-Chin; Wen, Haiguang et al. (2016) Influences of High-Level Features, Gaze, and Scene Transitions on the Reliability of BOLD Responses to Natural Movie Stimuli. PLoS One 11:e0161797
Wen, Haiguang; Liu, Zhongming (2016) Separating Fractal and Oscillatory Components in the Power Spectrum of Neurophysiological Signal. Brain Topogr 29:13-26

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