ASTRA: a deep learning algorithm for fast semantic segmentation of large-scale astrocytic networks

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Abstract

Changes in the intracellular calcium concentration are a fundamental fingerprint of astrocytes, the main type of glial cell. Astrocyte calcium signals can be measured with two-photon microscopy, occur in anatomically restricted subcellular regions, and are coordinated across astrocytic networks. However, current analytical tools to identify the astrocytic subcellular regions where calcium signals occur are time-consuming and extensively rely on user-defined parameters. These limitations limit reproducibility and prevent scalability to large datasets and fields-of-view. Here, we present Astrocytic calcium Spatio-Temporal Rapid Analysis (ASTRA), a novel software combining deep learning with image feature engineering for fast and fully automated semantic segmentation of two-photon calcium imaging recordings of astrocytes. We applied ASTRA to several two-photon microscopy datasets and found that ASTRA performed rapid detection and segmentation of astrocytic cell somata and processes with performance close to that of human experts, outperformed state-of-the-art algorithms for the analysis of astrocytic and neuronal calcium data, and generalized across indicators and acquisition parameters. We also applied ASTRA to the first report of two-photon mesoscopic imaging of hundreds of astrocytes in awake mice, documenting large-scale redundant and synergistic interactions in extended astrocytic networks. ASTRA is a powerful tool enabling closed-loop and large-scale reproducible investigation of astrocytic morphology and function.

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  1. mportantly, the functional domains of individual astrocytes identified by ASTRA can then be used302to seed the event-based analysis performed by AQuA 28. This was demonstrated in (Fig. S6), where303we show examples of astrocytic domain identified by ASTRA, which were used as priors to instruct304cell-specific AQuA analysis

    This integration of ASTRA to determine morphological features and AQuA to quantify event-based fluorescence features seems particularly useful and exciting. It would be really interesting to hear more about cases you've observed where this does and doesn't work well, and your hypotheses for why; this could help others in understanding the best use-cases for analytical tool integration.