Cognitive resilience to Alzheimer's Disease (AD) is a phenomenon whereby individuals are resistant to its most damaging effects on cognition, despite the presence of known familial AD (FAD) mutations or advanced neuropathology. Genetic factors promoting cognitive resilience may thus provide key targets for treatment and prevention of AD. Our overall objective is to identify drivers of cognitive resilience by using network approaches to integrate data collected from mouse FAD models with human AD data. To this end, we will in Aim 1 use a novel mouse panel that incorporates high-risk human FAD mutations on a segregated background of genetic diversity (BXD panel) to identify modifiers that contribute to AD resilience in a `humanized' mouse population. High-dimensional molecular, cognitive and pathologic data from these mice will be integrated to predict resilience factors and networks using causal inference analyses.
In Aim 2, we will test two set of genes for association with resilience in humans with asymptomatic AD: 1) a previously validated list of genes identified by proteomics and behavioral analyses to be associated with exceptional cognitive longevity in mice and 2) novel genes and networks implicated by our analyses in Aim 1.
In Aim 3, we will validate resilience factors and determine their effects on memory-relevant brain networks in powerful AD mouse models, testing both novel candidates identified in Aims 1 and 2 and a priori candidates (e.g., Trpc3, Adamts17 and Hp1bp3). This project will deliver novel, validated targets for promoting healthy brain aging and resilience to AD. Moreover, we will provide mechanistic insight into AD resilience, specifically supporting or refuting our hypothesis that modifiers of cognition in FAD similarly influence late-onset AD by preserving the functional connectivity of memory relevant networks. We will annotate, curate, and rapidly disseminate the data to the broad scientific community prior to publication via the NIA-supported AMP-AD Knowledge Portal to maximize the usability of these data for meta-analysis and systems biology research.

Public Health Relevance

/RELEVANCE TO PUBLIC HEALTH Although we know of many gene mutations that cause Alzheimer's Disease, some people that carry these mutations are somehow resistant to the mental decline caused by this devastating condition. If we understand more about the genes and biological mechanisms that allow these individuals to be resistant to Alzheimer's Disease, we should be able to develop new cures and preventions that take advantage of this knowledge. Because it is very difficult to find the genes and mechanisms behind resistance to Alzheimer's Disease in humans, we will employ a strategy that uses sophisticated computational and statistical methods to merge knowledge from our mouse experiments with human data; this strategy will vastly improve our ability to find candidate Alzheimer's resistance genes and mechanisms in humans.

Agency
National Institute of Health (NIH)
Institute
National Institute on Aging (NIA)
Type
Research Project (R01)
Project #
3R01AG057914-03S1
Application #
9967444
Study Section
Program Officer
Petanceska, Suzana
Project Start
2017-09-15
Project End
2022-05-31
Budget Start
2019-09-01
Budget End
2020-05-31
Support Year
3
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Jackson Laboratory
Department
Type
DUNS #
042140483
City
Bar Harbor
State
ME
Country
United States
Zip Code
04609
Neuner, Sarah M; Wilmott, Lynda A; Burger, Corina et al. (2017) Advances at the intersection of normal brain aging and Alzheimer's disease. Behav Brain Res 322:187-190
Graves, A R; Moore, S J; Spruston, N et al. (2016) Brain-derived neurotrophic factor differentially modulates excitability of two classes of hippocampal output neurons. J Neurophysiol 116:466-71