Cyclic multiplex fluorescent immunohistochemistry and machine learning reveal distinct states of astrocytes and microglia in normal aging and Alzheimer's disease.
Clara Muñoz-CastroAyush NooriColin G MagdamoZhaozhi LiJordan D MarksMatthew P FroschSudeshna DasBradley T HymanAlberto Serrano-PozoPublished in: Journal of neuroinflammation (2022)
Cyclic multiplex fluorescent immunohistochemistry combined with machine learning models holds promise to advance our understanding of the complexity and heterogeneity of glial responses as well as inform transcriptomics studies. Three distinct phenotypes emerged with our combination of markers, thus expanding the classic binary "homeostatic vs. reactive" classification to a third state, which could represent "transitional" or "resilient" glia.