We construct a graph representation for the topology and geometry of the vasculature presenting across the whole mouse brain (dataset: Knife-Edge Scanning Microscope Brain Atlas India Ink). We use our graph representation to calculate preliminary estimates of the average radius as 4:8 μm, total vascular volume as 1:1000 mm, total vascular surface area as 6:5511 cm, and total vascular length of 2866:6567 cm. We then isolate a posterior cerebral region, derive its graph representation, and then import that representation to a Neo4j graph database. We then detail how researchers can query this database online to isolate specific vascular networks for further analysis and reconstruction.

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http://dx.doi.org/10.1109/EMBC.2019.8857961DOI Listing

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