A plethora of neuroscience studies shows mounting evidence that neurodegenerative diseases manifest distinct network dysfunction patterns much earlier prior to the onset of clinical symptoms. Since the subject-specific longitudinal network changes are more relevant to the neuropathological process than topological patterns derived from cross-sectional data, recognizing the subtle and dynamic longitudinal network biomarkers from noisy network data is of great demand to enhance the sensitivity and specificity of computer-assisted diagnosis in neurodegenerative diseases. However, current popular statistical inference or machine learning approaches used for neuroimages (in a regular data structure such as grid and lattice) are not fully optimized for the learning task on brain network data which is often encoded in a high dimensional graph (an irregular and non-linear data structure). Such gross adaption is partially responsible for the lack of reliable biomarkers that can be used to predict cognitive decline in routine clinical practice. To address this challenge, we aim to (1) develop a novel GNN (graph neural network) based learning framework to hierarchically discover the multi-scale network biomarkers that can recognize the disease-relevant network alterations over time, and (2) examine the diagnostic power of the new network biomarkers derived from our GNN-based machine learning engine across neurodegenerative diseases such as Alzheimer?s disease, Parkinson?s disease, and frontotemporal dementia. The success of this project will allow us to integrate the novel GNN-based learning component into our current longitudinal network analysis toolbox and release the AI (artificial intelligence) based network analysis software to the neuroscience and neuroimaging community.

Public Health Relevance

The goal of this project is to continue the tool development of longitudinal network analysis for neurodegenerative diseases with the focus on the machine learning component. To do so, we will first develop the GNN (graph neural network) based learning framework to discover the multi-scale network biomarkers from the population of brain network data. After examining the diagnostic value of the network biomarkers discovered by our learning- based method across neurodegenerative diseases such as Alzheimer?s disease, Parkinson?s disease, and frontotemporal dementia, we will integrate the machine learning component into our current longitudinal network analysis software and release to the neuroscience and neuroimaging community.

Agency
National Institute of Health (NIH)
Institute
National Institute on Aging (NIA)
Type
Small Research Grants (R03)
Project #
1R03AG070701-01
Application #
10109509
Study Section
Emerging Imaging Technologies in Neuroscience Study Section (EITN)
Program Officer
Hsiao, John
Project Start
2021-03-01
Project End
2023-02-28
Budget Start
2021-03-01
Budget End
2022-02-28
Support Year
1
Fiscal Year
2021
Total Cost
Indirect Cost
Name
University of North Carolina Chapel Hill
Department
Psychiatry
Type
Schools of Medicine
DUNS #
608195277
City
Chapel Hill
State
NC
Country
United States
Zip Code
27599