CellCognition : time-resolved phenotype annotation in high-throughput live cell imaging

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2010-07
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Held, Michael
Schmitz, Michael H. A.
Fischer, Bernd
Walter, Thomas
Neumann, Beate
Olma, Michael H.
Peter, Matthias
Ellenberg, Jan
Gerlich, Daniel W.
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Live cell imaging
RNAi screening
GFP
Machine Learning
Image analysis
Hidden Markov model
Cdc20
Mitotic exit
Abstract
Fluorescence time-lapse imaging has become a powerful tool to investigate complex dynamic processes such as cell division or intracellular trafficking. Automated microscopes generate time-resolved imaging data at high throughput, yet tools for quantification of large-scale movie data are largely missing. Here, we present CellCognition, a computational framework to annotate complex cellular dynamics. We developed a machine learning method that combines state-of-the-art classification with hidden Markov modeling for annotation of the progression through morphologically distinct biological states. The incorporation of time information into the annotation scheme was essential to suppress classification noise at state transitions, and confusion between different functional states with similar morphology. We demonstrate generic applicability in a set of different assays and perturbation conditions, including a candidate-based RNAi screen for mitotic exit regulators in human cells. CellCognition is published as open source software, enabling live imaging-based screening with assays that directly score cellular dynamics.
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Author Posting. © The Authors, 2010. This is the author's version of the work. It is posted here by permission of Nature Publishing Group for personal use, not for redistribution. The definitive version was published in Nature Methods 7 (2010): 747-754, doi:10.1038/nmeth.1486.
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