Integrating transcriptomic datasets across neurological disease identifies unique myeloid subpopulations driving disease-specific signatures.

Wishart, Claire L; Spiteri, Alanna G; Locatelli, Giuseppe; King, Nicholas J C (2023). Integrating transcriptomic datasets across neurological disease identifies unique myeloid subpopulations driving disease-specific signatures. GLIA, 71(4), pp. 904-925. Wiley-Blackwell 10.1002/glia.24314

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Microglia and bone marrow-derived monocytes are key elements of central nervous system (CNS) inflammation, both capable of enhancing and dampening immune-mediated pathology. However, the study-specific focus on individual cell types, disease models or experimental approaches has limited our ability to infer common and disease-specific responses. This meta-analysis integrates bulk and single-cell transcriptomic datasets of microglia and monocytes from disease models of autoimmunity, neurodegeneration, sterile injury, and infection to build a comprehensive resource connecting myeloid responses across CNS disease. We demonstrate that the bulk microglial and monocyte program is highly contingent on the disease environment, challenging the notion of a universal microglial disease signature. Integration of six single-cell RNA-sequencing datasets revealed that these disease-specific signatures are likely driven by differing proportions of unique myeloid subpopulations that were individually expanded in different disease settings. These subsets were functionally-defined as neurodegeneration-associated, inflammatory, interferon-responsive, phagocytic, antigen-presenting, and lipopolysaccharide-responsive cellular states, revealing a core set of myeloid responses at the single-cell level that are conserved across CNS pathology. Showcasing the predictive and practical value of this resource, we performed differential expression analysis on microglia and monocytes across disease and identified Cd81 as a new neuroinflammatory-stable gene that accurately identified microglia and distinguished them from monocyte-derived cells across all experimental models at both the bulk and single-cell level. Together, this resource dissects the influence of disease environment on shared immune response programmes to build a unified perspective of myeloid behavior across CNS pathology.

Item Type:

Journal Article (Original Article)

Division/Institute:

04 Faculty of Medicine > Pre-clinic Human Medicine > Theodor Kocher Institute

UniBE Contributor:

Locatelli, Giuseppe

Subjects:

600 Technology > 610 Medicine & health

ISSN:

0894-1491

Publisher:

Wiley-Blackwell

Language:

English

Submitter:

Pubmed Import

Date Deposited:

19 Dec 2022 10:52

Last Modified:

16 Feb 2023 00:14

Publisher DOI:

10.1002/glia.24314

PubMed ID:

36527260

Uncontrolled Keywords:

central nervous system pathology high parameter data integration microglia monocyte-derived cells single-cell RNA-sequencing

BORIS DOI:

10.48350/176034

URI:

https://boris.unibe.ch/id/eprint/176034

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