scholarly journals Translating genetic risk variants in disease‐associated enhancers into novel mouse models of Alzheimer’s disease

2020 ◽  
Vol 16 (S2) ◽  
Author(s):  
Christoph Preuss ◽  
Xi Chen ◽  
Kathleen Chen ◽  
Chandra Theesfeld ◽  
Evan Cofer ◽  
...  
2006 ◽  
Vol 14 (7S_Part_29) ◽  
pp. P1534-P1534
Author(s):  
Julia Kofler ◽  
Kang-Hsien Fan ◽  
Qi Yan ◽  
Robert A. Sweet ◽  
Eleanor Feingold ◽  
...  

2016 ◽  
Vol 12 ◽  
pp. P637-P638
Author(s):  
Jesse Mez ◽  
Jessica R. Marden ◽  
Shubhabrata Mukherjee ◽  
Paul Brewster ◽  
Jamie L. Hamilton ◽  
...  

Author(s):  
Jesse Mez ◽  
Jessica R. Marden ◽  
Shubhabrata Mukherjee ◽  
Stefan Walter ◽  
Laura E. Gibbons ◽  
...  

2021 ◽  
Author(s):  
Anna Rubinski ◽  
Simon Frerich ◽  
Rainer Malik ◽  
Nicolai Franzmeier ◽  
Alfredo Ramirez ◽  
...  

Progression of fibrillar tau is a key driver of dementia symptoms in Alzheimer's disease (AD), but predictors of the rate of tau accumulation at patient-level are missing. Here we combined the to-date largest number of genetic risk variants of AD (n=85 lead SNPs) from recent GWAS to generate a polygenic score (PGS) predicting the rate of change in fibrillar tau. We found that a higher PGS was associated with higher rates of PET-assessed fibrillar-tau accumulation over a mean of 1.8 yrs (range = 0.6 - 4 yrs). This, in turn, mediated the effects of the PGS on faster rates of cognitive decline. Sensitivity analysis showed that the effects were similar for men and women but pronounced in individuals with elevated levels of beta-amyloid and strongest for lead SNPs expressed in microglia. Together, our results demonstrate that the PGS predicts tau progression in Alzheimer's disease, which could afford sample size savings by up to 34% when used alone and up to 61% when combined with APOE ϵ4 genotype in clinical trials targeting tau pathology.


2019 ◽  
Vol 14 (1) ◽  
Author(s):  
Ravi S. Pandey ◽  
Leah Graham ◽  
Asli Uyar ◽  
Christoph Preuss ◽  
Gareth R. Howell ◽  
...  

Abstract Background New genetic and genomic resources have identified multiple genetic risk factors for late-onset Alzheimer’s disease (LOAD) and characterized this common dementia at the molecular level. Experimental studies in model organisms can validate these associations and elucidate the links between specific genetic factors and transcriptomic signatures. Animal models based on LOAD-associated genes can potentially connect common genetic variation with LOAD transcriptomes, thereby providing novel insights into basic biological mechanisms underlying the disease. Methods We performed RNA-Seq on whole brain samples from a panel of six-month-old female mice, each carrying one of the following mutations: homozygous deletions of Apoe and Clu; hemizygous deletions of Bin1 and Cd2ap; and a transgenic APOEε4. Similar data from a transgenic APP/PS1 model was included for comparison to early-onset variant effects. Weighted gene co-expression network analysis (WGCNA) was used to identify modules of correlated genes and each module was tested for differential expression by strain. We then compared mouse modules with human postmortem brain modules from the Accelerating Medicine’s Partnership for AD (AMP-AD) to determine the LOAD-related processes affected by each genetic risk factor. Results Mouse modules were significantly enriched in multiple AD-related processes, including immune response, inflammation, lipid processing, endocytosis, and synaptic cell function. WGCNA modules were significantly associated with Apoe−/−, APOEε4, Clu−/−, and APP/PS1 mouse models. Apoe−/−, GFAP-driven APOEε4, and APP/PS1 driven modules overlapped with AMP-AD inflammation and microglial modules; Clu−/− driven modules overlapped with synaptic modules; and APP/PS1 modules separately overlapped with lipid-processing and metabolism modules. Conclusions This study of genetic mouse models provides a basis to dissect the role of AD risk genes in relevant AD pathologies. We determined that different genetic perturbations affect different molecular mechanisms comprising AD, and mapped specific effects to each risk gene. Our approach provides a platform for further exploration into the causes and progression of AD by assessing animal models at different ages and/or with different combinations of LOAD risk variants.


2021 ◽  
Author(s):  
Laura Heath ◽  
John C. Earls ◽  
Andrew T. Magis ◽  
Sergey A. Kornilov ◽  
Jennifer C. Lovejoy ◽  
...  

AbstractDeeply phenotyped cohort data can elucidate differences associated with genetic risk for common complex diseases across an age spectrum. Previous work has identified genetic variants associated with Alzheimer’s disease (AD) risk from large-scale genome-wide association study meta-analyses. To explore effects of known AD-risk variants, we performed a phenome-wide association study on ~2000 clinical, proteomic, and metabolic blood-based analytes obtained from 2,831 cognitively normal adult clients of a consumer-based scientific wellness company. Results uncovered statistically significant SNP-analyte associations for five genetic variants after correction for multiple testing (for SNPs in or near NYAP1, ABCA7, INPP5D, and APOE). These effects were detectable from early adulthood. Sex modified the effects of four genetic variants, with multiple interrelated immune-modulating effects associated with the PICALM variant. Sex-stratified GWAS results from an independent AD case-control meta-analysis supported sexspecific disease effects of the PICALM variant, highlighting the importance of sex as a biological variable. These analyses support evidence from previous functional genomics studies in the identification of a causal variant within the PILRA gene. Taken together, this study highlights clues to the earliest effects of AD genetic risk variants in individuals where disease symptoms have not (yet) arisen.


2019 ◽  
Author(s):  
Ravi S. Pandey ◽  
Leah Graham ◽  
Asli Uyar ◽  
Christoph Preuss ◽  
Gareth R. Howell ◽  
...  

ABSTRACTBackgroundNew genetic and genomic resources have identified multiple genetic risk factors for late-onset Alzheimer’s disease (LOAD) and characterized this common dementia at the molecular level. Experimental studies in model organisms can validate these associations and elucidate the links between specific genetic factors and transcriptomic signatures. Animal models based on LOAD-associated genes can potentially connect common genetic variation with LOAD transcriptomes, thereby providing novel insights into basic biological mechanisms underlying the disease.MethodsWe performed RNA-Seq on whole brain samples from a panel of six-month-old female mice, each carrying one of the following mutations: homozygous deletions of Apoe and Clu; hemizygous deletions of Bin1 and Cd2ap; and a transgenic APOEε4. Similar data from a transgenic APP/PS1 model was included for comparison to early-onset variant effects. Weighted gene co-expression network analysis (WGCNA) was used to identify modules of correlated genes and each module was tested for differential expression by strain. We then compared mouse modules with human postmortem brain modules from the Accelerating Medicine’s Partnership for AD (AMP-AD) to determine the LOAD-related processes affected by each genetic risk factor.ResultsMouse modules were significantly enriched in multiple AD-related processes, including immune response, inflammation, lipid processing, endocytosis, and synaptic cell function. WGCNA modules were significantly associated with Apoe−/−, APOEε4, Clu−/−, and APP/PS1 mouse models. Apoe−/−, GFAP-driven APOEε4, and APP/PS1 driven modules overlapped with AMP-AD inflammation and microglial modules; Clu−/− driven modules overlapped with synaptic modules; and APP/PS1 modules separately overlapped with lipid-processing and metabolism modules.ConclusionsThis study of genetic mouse models provides a basis to dissect the role of AD risk genes in relevant AD pathologies. We determined that different genetic perturbations affect different molecular mechanisms comprising AD, and mapped specific effects to each risk gene. Our approach provides a platform for further exploration into the causes and progression of AD by assessing animal models at different ages and/or with different combinations of LOAD risk variants.


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