PROJECT SUMMARY Alzheimer's disease (AD) is an age-related neurodegenerative disease characterized by progressive cognitive decline and dementia. It accounts for approximately two-thirds of all dementia cases, and its pathogenesis may predate its clinical manifestations by decades. With ~44 million patients worldwide, AD is placing an everincreasing burden on long-term well-being, healthcare costs, and family life. Despite more than fifty years of research, no cures exist, and the standard of treatment remains unsatisfactory; available therapies only partially alleviate select clinical symptoms. Decades of genetic research have demonstrated the high heritability of AD, and identified dozens of genetic variants that are associated with AD, but it has not been straightforward to connect these to disease mechanisms. Disentangling the impact of the normal aging process on disease risk and progression is not straightforward and has hampered efforts to develop effective treatment or prevention strategies for AD. In the R21 phase of this proposal, we will leverage and integrate large-scale epigenomic and transcriptomic datasets from multiple consortia and projects to develop a cell-type specific regulatory network model for normal brain aging and AD brain aging (Aim 1), while we simultaneously generate the first empirical dataset to resolve AD risk regulatory loci with differential activity in donor-matched "young" and "old" human neurons and microglia (Aim 2). Reciprocal use of computational and experimental models will benchmark the extent to which we can recapitulate the hallmarks of AD brain aging in silica and in vitro (.R21 Milestone). In the R33 phase of this proposal we will model the epigenetic regulation of gene expression changes in brain aging and AD progression (Aim 3) and conduct an unbiased examination of the role of human brain cell aging in AD risk, validating age-dependent regulatory activity and resolving convergent downstream impacts of ADassociated variants and drivers of aging (Aim 4). Our objective is to couple emerging computational and experimental approaches to refine in silica and in vitro experimental models of aging, towards resolving how aging processes initiate and/or increase genetic risk for AD (R33 milestone). Overall, we test the hypothesis that aging-related processes and AD-associated risk variants independently alter chromatin accessibility and gene expression, acting in a combinatorial manner to drive aberrant cell type-specific function in AD. We propose to predict and measure the molecular and functional effects of aging on neural and glia function. Our hope is that this work may identify novel therapeutic points of intervention, in order to prevent or slow disease course in individuals with AD.