A transcriptomic atlas of aged human microglia

Marta Olah(Broad Institute), Ellis Patrick(The University of Sydney), Alexandra–Chloé Villani(Broad Institute), Jishu Xu(Broad Institute), Charles C. White(Broad Institute), Katie J. Ryan(Brigham and Women's Hospital), Paul Piehowski(Pacific Northwest National Laboratory), Alifiya Kapasi(Pacific Northwest National Laboratory), Parham Nejad(Broad Institute), Maria Cimpean(Brigham and Women's Hospital), Sarah M. Connor(Broad Institute), Christina Yung(Columbia University Irving Medical Center), Michael Frangieh(Brigham and Women's Hospital), Allison McHenry(Brigham and Women's Hospital), Wassim Elyaman(Broad Institute), Vladislav Petyuk(Pacific Northwest National Laboratory), Julie A. Schneider(Rush University Medical Center), David A. Bennett(Rush University Medical Center), Philip L. De Jager(Broad Institute), Elizabeth M. Bradshaw(Broad Institute)
Nature Communications
February 1, 2018
Cited by 518Open Access
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Abstract

With a rapidly aging global human population, finding a cure for late onset neurodegenerative diseases has become an urgent enterprise. However, these efforts are hindered by the lack of understanding of what constitutes the phenotype of aged human microglia-the cell type that has been strongly implicated by genetic studies in the pathogenesis of age-related neurodegenerative disease. Here, we establish the set of genes that is preferentially expressed by microglia in the aged human brain. This HuMi_Aged gene set captures a unique phenotype, which we confirm at the protein level. Furthermore, we find this gene set to be enriched in susceptibility genes for Alzheimer's disease and multiple sclerosis, to be increased with advancing age, and to be reduced by the protective APOEε2 haplotype. APOEε4 has no effect. These findings confirm the existence of an aging-related microglial phenotype in the aged human brain and its involvement in the pathological processes associated with brain aging.


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