IALH Research Fellow Marie-Eve Tremblay and IALH Student Affiliate Colin J. Murray have co-authored a new research article entitled A comparison of microglial morphological complexity in adult mouse brain samples using 2-dimensional and 3-dimensional image analysis tools. Collaborating authors include Eva D. Tunderman, Haley A. Vecchiarelli, and Fernando Gonzalez Ibanez. The article was published in Glial Health Research.
Abstract:
Characterizing cell morphology has been an important aspect of neuroscience for over a century to provide essential insights into cellular function and dysfunction. Microglia, the resident innate immune cells of the central nervous system, undergo drastic changes in morphology in response to various stimuli, with many classifications proposed in recent years. Increased availability of advanced analysis software to study microglial morphology represents a step forward in the field. However, whether the use of advanced analysis tools provides equivalent or varied outcomes remains undetermined. This work re-analyzed raw data—previously processed using a standard 2D microglial morphology analysis method—using 3D analysis methods. Our previously published article observed significant changes in microglial morphology using the 2D analysis method in the mouse ventral hippocampus after administration of a ketogenic diet and exposure to repeated social defeat stress in young adult male mice. Overall, we observed different statistical outcomes in the 3D dataset compared to the previously published 2D results, with both maintained and new findings. However, overall conclusions on microglial morphology changes remain consistent between methods. Lastly, we highlight the difference between a nested statistical design, which considers between animal variability and the dependency of within animal measurements, and a non-nested design. When a nested design is employed, many of the statistically significant post hoc comparisons are lost. Overall, we highlight and discuss differences between 2D and 3D microglial morphology analysis and explore the contribution of individual cell and animal variability to statistical outcomes.
To read the full article, see https://doi.org/10.1016/j.ghres.2025.100007