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Background: Astrocytes and microglia react to Aβ plaques, neurofibrillary tangles, and neurodegeneration in the Alzheimer's disease (AD) brain. Single-nuclei and single-cell RNA-seq have revealed multiple states or subpopulations of these glial cells but lack spatial information. We have developed a methodology of cyclic multiplex fluorescent immunohistochemistry on human postmortem brains and image analysis that enables a comprehensive morphological quantitative characterization of astrocytes and microglia in the context of their spatial relationships with plaques and tangles.
Methods: Single FFPE sections from the temporal association cortex of control and AD subjects were subjected to 8 cycles of multiplex fluorescent immunohistochemistry, including 7 astroglial, 6 microglial, 1 neuronal, Aβ, and phospho-tau markers. Our analysis pipeline consisted of: (1) image alignment across cycles; (2) background subtraction; (3) manual annotation of 5172 ALDH1L1+ astrocytic and 6226 IBA1+ microglial profiles; (4) local thresholding and segmentation of profiles; (5) machine learning on marker intensity data; and (6) deep learning on image features.
Results: Spectral clustering identified three phenotypes of astrocytes and microglia, which we termed "homeostatic," "intermediate," and "reactive." Reactive and, to a lesser extent, intermediate astrocytes and microglia were closely associated with AD pathology (≤ 50 µm). Compared to homeostatic, reactive astrocytes contained substantially higher GFAP and YKL-40, modestly elevated vimentin and TSPO as well as EAAT1, and reduced GS. Intermediate astrocytes had markedly increased EAAT2, moderately increased GS, and intermediate GFAP and YKL-40 levels. Relative to homeostatic, reactive microglia showed increased expression of all markers (CD68, ferritin, MHC2, TMEM119, TSPO), whereas intermediate microglia exhibited increased ferritin and TMEM119 as well as intermediate CD68 levels. Machine learning models applied on either high-plex signal intensity data (gradient boosting machines) or directly on image features (convolutional neural networks) accurately discriminated control vs. AD diagnoses at the single-cell level.
Conclusions: 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.
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http://dx.doi.org/10.1186/s12974-022-02383-4 | DOI Listing |
Mol Biol Rep
September 2025
Department of Pharmacology, Govt. College of Pharmacy, Rohru, Shimla, Himachal Pradesh, 171207, India.
Alzheimer's disease (AD) is the most common, complex, and untreatable form of dementia which is characterized by severe cognitive, motor, neuropsychiatric, and behavioural impairments. These symptoms severely reduce the quality of life for patients and impose a significant burden on caregivers. The existing therapies offer only symptomatic relief without addressing the underlying silent pathological progression.
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September 2025
Department of Anesthesiology, Tongren Hospital, Shanghai Jiao Tong University School of Medicine, 1111 XianXia Road, Shanghai 200336, China; Hongqiao International Institute of Medicine, Tongren Hospital, Shanghai Jiao Tong University School of Medicine, 1111 XianXia Road, Shanghai 200336, China. El
Hypoxic-ischemic brain damage (HIBD) is a severe condition leading to extensive neuronal loss and functional impairments, representing a significant challenge in neonatal care. PFGA12, a peptide derived from fibrinogen alpha chain (FGA), which is notably downregulated in the umbilical cord blood of hypoxic-ischemic encephalopathy (HIE) infants. We demonstrate that PFGA12 significantly enhances cell viability and mitigates oxygen-glucose deprivation/reperfusion (OGD/R)-induced neuronal cell death.
View Article and Find Full Text PDFNeurochem Res
September 2025
International Translational Neuroscience Research Institute, Zhejiang Chinese Medical University, Hangzhou, 310053, Zhejiang, China.
The concept of the central nervous system (CNS) reserve emerged from the mismatch often observed between the extent of brain pathology and its clinical manifestations. The cognitive reserve reflects an "active" capacity, driven by the plasticity of CNS cellular components and shaped by experience, learning, and memory processes that increase resilience. We propose that neuroglial cells are central to defining this resilience and cognitive reserve.
View Article and Find Full Text PDFBrain
September 2025
Central European Institute of Technology Masaryk University (CEITEC MU), 625 00 Brno, Czech Republic.
Mutations in the human ADAR gene encoding adenosine deaminase acting on RNA 1 (ADAR1) cause Aicardi-Goutières syndrome 6 (AGS6); a severe auto-inflammatory encephalopathy with aberrant interferon (IFN) induction. AdarΔ2-13 null mutant mouse embryos lacking ADAR1 protein die with high levels of IFN-stimulated gene (ISG) transcripts. In Adar Mavs double mutants also lacking the Mitochondrial antiviral signaling (MAVS) adaptor, the aberrant IFN induction is prevented.
View Article and Find Full Text PDFBrain Commun
August 2025
Department of Neurology, Xiangya Hospital, Central South University, Changsha 410008, China.
Myotonic dystrophy type 1 (DM1) is an inherited neuromuscular disorder characterized by muscle weakness, atrophy and myotonia, with multi-system involvement. Recent studies have highlighted the pathological heterogeneity within the CNS of DM1 patients, particularly significant changes in spinal transcriptome expression and alternative splicing. In this study, we conducted a comprehensive transcriptome analysis of the spinal cord in the muscle-specific DM1 mouse model and their wild-type controls across different life stages: young, adult and old age.
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