Visual Overview
Visual Abstract
Abstract
As rapid responders to their environments, microglia engage in functions that are mirrored by their cellular morphology. Microglia are classically thought to exhibit a ramified morphology under homeostatic conditions which switches to an ameboid form during inflammatory conditions. However, microglia display a wide spectrum of morphologies outside of this dichotomy, including rod-like, ramified, ameboid, and hypertrophic states, which have been observed across brain regions, neurodevelopmental timepoints, and various pathological contexts. We applied dimensionality reduction and clustering to consider contributions of multiple morphology measures together to define a spectrum of microglial morphological states in a mouse dataset that we used to demonstrate the utility of our toolset. Using ImageJ, we first developed a semiautomated approach to characterize 27 morphology features from hundreds to thousands of individual microglial cells in a brain region-specific manner. Within this pool of features, we defined distinct sets of highly correlated features that describe different aspects of morphology, including branch length, branching complexity, territory span, and circularity. When considered together, these sets of features drove different morphological clusters. Our tools captured morphological states similarly and robustly when applied to independent datasets and using different immunofluorescent markers for microglia. We have compiled our morphology analysis pipeline into an accessible, easy-to-use, and fully open-source ImageJ macro and R package that the neuroscience community can expand upon and directly apply to their own analyses. Outcomes from this work will supply the field with new tools to systematically evaluate the heterogeneity of microglia morphological states across various experimental models and research questions.
Footnotes
The authors declare no competing financial interests.
We thank the Ciernia Lab and Pavlidis Lab members for their thoughtful feedback and suggestions during lab meetings throughout the progression of this project. We also thank Wai Hang (Tom) Cheng, whose help was instrumental with learning how to image on the Axioscan slidescanner and getting started with microglia morphology analysis; Nicholas Michelson, whose help was invaluable when troubleshooting code in ImageJ for various features of MicrogliaMorphology; and Dylan Terstege, who generously provided the materials for FASTMAP alignment to the Allen Brain Atlas before they were published. We also thank Dr. Brian MacVicar for sharing his lab's Cx3cr1-GFP mice with us, which we used for the 2xLPS in vivo experiments. We are grateful for the resources made available through the Dynamic Brain Circuits cluster and the NeuroImaging and NeuroComputation Core at the UBC Djavad Mowafaghian Centre for Brain Health (RRID:SCR_019086) that supported this work.
This work was supported by the Canadian Open Neuroscience Platform Student’s Scholar Award (10901 to J.K.); University of British Columbia Four Year Doctoral Fellowship (6569 to J.K.); Canadian Institutes for Health Research (CRC-RS 950-232402 to A.V.C.); Natural Sciences and Engineering Research Council of Canada (RGPIN-2019-04450, DGECR-2019-00069 to A.V.C.); Scottish Rite Charitable Foundation (21103 to A.V.C.) and the Brain Canada Foundation (AWD-023132 to A.V.C.). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license, which permits unrestricted use, distribution and reproduction in any medium provided that the original work is properly attributed.







