(780.6) Analytical Needs for Machine Learning-based Image Analysis of Brainstem Astrocyte Cell Function
Tuesday, April 5, 2022
10:15 AM – 12:15 PM
Location: Exhibit/Poster Hall A-B - Pennsylvania Convention Center
Poster Board Number: C42 Introduction: AAA has separate poster presentation times for odd and even posters. Odd poster #s – 10:15 am – 11:15 am Even poster #s – 11:15 am – 12:15 pm
Jessica Blackburn (The Ohio State University), Catherine Czeisler (The Ohio State University), José Otero (The Ohio State University)
Reactive astrogliosis represents a neuropathogical finding in most brain diseases across the lifespan. Despite its near ubiquitous presence in CNS pathologies, the consequences of reactive astrogliosis on cell function are poorly characterized. We address the capability gap within the glial biology community by applying machine learning image segmentation and multivariate analyses to understand the consequences of gliosis on astrocyte cell function. We utilized live cell imaging of astrocytic intracellular calcium transients as a measure of physiological responses to external stimuli (i.e., exposure to lipopolysaccharide and/or hypoxic (100% N2) gas challenges). After obtaining 300 GBytes of live cell imaging footage, we developed an efficient, unbiased image segmentation workflow to capture astrocytes during physiological challenges. In contrast to prior methodologies which extracted only mean fluorescence intensity of segmented objects, we utilized pixel textures and fluorescent propagation in our analysis. Following the recommendations set forth by the recent consensus statement (Escartin et al., 2021), we performed multivariate and clustering analyses to identify distinct groups based on intracellular calcium transients waveforms under physiological challenges. These analyses reveal a diversity of cellular processes amongst brainstem astrocytes.
Support or Funding Information
This work was supported by NIH/NHLBI (R01HL132355 for CMC, JJO).