Statistical methods for structural and functional integration in multi-modal neuroimaging data
Project Number5R01EB029977-04
Former Number1R01EB029977-01
Contact PI/Project LeaderCAFFO, BRIAN SCOTT
Awardee OrganizationJOHNS HOPKINS UNIVERSITY
Description
Abstract Text
Abstract
Neuropsychiatric disorders, such as autism and schizophrenia, affect millions of people
worldwide and place a considerable burden on both patients and family members. Existing
treatments for these disorders have limited efficacy, in part due the varied clinical
manifestations, and to our narrow understanding of the impacted neural processes, particularly
at the system (i.e., network) level. Two key elements of networks are the underlying
infrastructure or physical connections between elements and the functional signaling between
entities that rides on top of this infrastructure. Recent advancements in noninvasive imaging
have given us the ability to quantify structural and functional relationships in the brain via
diffusion MRI, resting-state functional MRI, respectively. The size and scope of datasets
measuring network structure and function are increasing in neuroimaging, and other domains,
which heightens the need for new statistical frameworks that make full use of the data.
Our goal is to develop frameworks for the analysis of structure-function integration in large-scale
and complex networks, applied to neuroimaging studies, but also broadly applicable. This
proposal will introduce three analytic paradigms: Bayesian network modeling that uses a priori
structure-function knowledge for simultaneous network anomaly detection and clinical severity
prediction; density regression using optimal transport theory; and end-to-end prediction using
deep neural networks. In our application, infrastructure will be measured via dMRI, while
function will be measured rs-fMRI. Each of our frameworks will provide a unique means to
integrate these distinct imaging modalities, while also respecting the unique information
provided by each data type. We also propose a unique software development effort that creates
an application program interface to core software and implementations as software as as a
service hosted on cloud platforms.
Public Health Relevance Statement
Project narrative: We propose to develop fully specified Bayesian models, novel adaptations of
density regression and deep learning for the study of multi-modal neuroimaging data in the
student of developmental disorders.
National Institute of Biomedical Imaging and Bioengineering
CFDA Code
286
DUNS Number
001910777
UEI
FTMTDMBR29C7
Project Start Date
05-July-2021
Project End Date
31-March-2025
Budget Start Date
01-April-2024
Budget End Date
31-March-2025
Project Funding Information for 2024
Total Funding
$462,470
Direct Costs
$315,751
Indirect Costs
$146,719
Year
Funding IC
FY Total Cost by IC
2024
National Institute of Biomedical Imaging and Bioengineering
$462,470
Year
Funding IC
FY Total Cost by IC
Sub Projects
No Sub Projects information available for 5R01EB029977-04
Publications
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Clinical Studies
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