4.6 Article

Classification of Microglial Morphological Phenotypes Using Machine Learning

Journal

FRONTIERS IN CELLULAR NEUROSCIENCE
Volume 15, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fncel.2021.701673

Keywords

microglia; morphology; machine learning; stroke; hippocampus; cortex

Categories

Funding

  1. Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) - Deutsche Diabetes Gesellschaft: DDG [SFB 1052, 209933838, SFB-1052/A9, 934300-002]
  2. European Social Fund (ESF) [100270131]

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The study developed a new method for classifying microglial morphology using a convolutional neuronal network, based on manually selected cells and traditional morphological parameters. The classification method was validated in a mouse model of ischemic stroke by studying ramified, rod-like, activated, and amoeboid microglia. This machine learning approach may provide a time-saving and objective tool for characterizing microglial changes in both healthy and disease mouse models, as well as in human brain autopsy samples.
Microglia are the brain's immunocompetent macrophages with a unique feature that allows surveillance of the surrounding microenvironment and subsequent reactions to tissue damage, infection, or homeostatic perturbations. Thereby, microglia's striking morphological plasticity is one of their prominent characteristics and the categorization of microglial cell function based on morphology is well established. Frequently, automated classification of microglial morphological phenotypes is performed by using quantitative parameters. As this process is typically limited to a few and especially manually chosen criteria, a relevant selection bias may compromise the resulting classifications. In our study, we describe a novel microglial classification method by morphological evaluation using a convolutional neuronal network on the basis of manually selected cells in addition to classical morphological parameters. We focused on four microglial morphologies, ramified, rod-like, activated and amoeboid microglia within the murine hippocampus and cortex. The developed method for the classification was confirmed in a mouse model of ischemic stroke which is already known to result in microglial activation within affected brain regions. In conclusion, our classification of microglial morphological phenotypes using machine learning can serve as a time-saving and objective method for post-mortem characterization of microglial changes in healthy and disease mouse models, and might also represent a useful tool for human brain autopsy samples.

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