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Active NON-SBIR/STTR RPGS NIH (US)

Understanding dynamics of brain network in TDP-43 related neurodegeneration

$2.39M USD

Funder NATIONAL INSTITUTE ON AGING
Recipient Organization University of Maryland Baltimore
Country United States
Start Date Sep 15, 2024
End Date Jun 30, 2026
Duration 653 days
Number of Grantees 1
Roles Principal Investigator
Data Source NIH (US)
Grant ID 10980494
Grant Description

Mislocalization of TDP-43 is a common pathological feature of several neurodegenerative diseases, including Alzheimer’s disease, amyotrophic lateral sclerosis, and frontotemporal dementia. Many studies support the loss-of-function mechanism caused by TDP-43 nuclear clearance as a major pathogenesis pathway toward

neurodegeneration. It is of great importance to understand the dynamics of disease progression in TDP-43 knockout mouse models. Functional microcircuits are at the heart of the information processing capability of the brain. Calcium imaging is a powerful tool to study functional microcircuits. Calcium imaging can generate high-dimensional longitudinal

datasets, which are collected at multiple time points over a temporal process (each observation time point is a wave). Longitudinal analysis models the evolving temporal process. However, existing analysis methods are primarily designed to process cross-sectional data, which provides a static view of the brain network. As a

result, existing methods have limited capability to model complex dynamic network patterns for high- dimensional data. Lack of advanced longitudinal analysis methods is a bottleneck for using calcium imaging to study the dynamics of brain networks in TDP-43 knockout mouse models. This project seeks to develop a Bayesian computational system to model longitudinal functional microcircuits

and use it to examine microcircuit changes in a TDP-43 knockout mouse model. The developed system is referred to as Bayesian Longitudinal Microcircuit Analysis (BLMA). The Specific Aims are: Aim 1. Develop a computational system for longitudinal microcircuit modeling. The proposed system, BLMA, will include these

components: preprocessing, microcircuit construction, feature extraction, and Bayesian multivariate mixed modeling. Aim 2. Understand microcircuit changes in a TDP-43 knockout mouse model. We will apply BLMA to an existing longitudinal calcium imaging dataset of pyramidal neurons of the prefrontal cortex (PFC) from

awake behaving Tdp-43F/F mice. We will compare the control and knockout groups to determine whether the knockout group exhibits abnormal PFC microcircuit trajectories. This project will develop BLMA to advance the state-of-the-art in data analysis and modeling for longitudinal calcium imaging. It leverages Bayesian machine learning to address critical challenges in longitudinal calcium

imaging data analysis: shared information across waves and high dimensionality. This project is innovative because it will develop a novel Bayesian system to model microcircuit changes based on calcium imaging data and delineate a unique brain network mechanism leading to TDP-43 related neurodegeneration. At the

completion of this project, we will have delineated a unique brain network mechanism in TDP-43 related neurodegeneration.

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University of Maryland Baltimore

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