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Discovery of Rare Phenotypes in Cellular Images Using Weakly Supervised Deep Learning
2017
2017 IEEE International Conference on Computer Vision Workshops (ICCVW)
High-throughput microscopy generates a massive amount of images that enables the identification of biological phenotypes resulting from thousands of different genetic or pharmacological perturbations. However, the size of the data sets generated by these studies makes it almost impossible to provide detailed image annotations, e.g. by object bounding box. Furthermore, the variability in cellular responses often results in weak phenotypes that only manifest in a subpopulation of cells. To
doi:10.1109/iccvw.2017.13
dblp:conf/iccvw/SailemABZR17
fatcat:aw3rhzrernhwzmi33qn64bsjbm