alan-turing-institute/grace
Graph Representation Analysis for Connected Embeddings
This tool helps researchers in cryo-electron microscopy (cryoEM) automatically identify and locate filamentous proteins and associated binding proteins within imaging datasets. You input cryoEM image data and bounding box detections of potential objects, and it outputs identified connected regions of interest, such as protein filaments. It's designed for scientists and researchers working with complex microscopy images.
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Use this if you need to automatically find and connect specific biological structures, like protein filaments, within large cryo-electron microscopy images.
Not ideal if you're not working with imaging data that requires identifying connected patterns or if you prefer entirely manual annotation without machine learning assistance.
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Oct 10, 2024
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