Data-analysis strategies for image-based cell profiling
Juan Carlos Caicedo(Broad Institute), Anne E. Carpenter(Broad Institute), Florian Heigwer(German Cancer Research Center), Csaba Molnár(Hungarian Academy of Sciences), Paul A. Clemons(Broad Institute), Scott Warchal(Institute of Genetics and Cancer), Mathias J. Wawer(Broad Institute), Lassi Paavolainen(University of Helsinki), Peng Qiu(Georgia Institute of Technology), Mohammad Hossein Rohban(Broad Institute), Harmanjit Singh Bansal(National Centre for Biological Sciences), Aliaksei Vasilevich(United Nations University – Maastricht Economic and Social Research Institute on Innovation and Technology), Joseph D. Barry(Dana-Farber Cancer Institute), Péter Horváth(University of Helsinki), Sam Cooper(Imperial College London), John Concannon, Holger Hennig(University of Rostock), Shantanu Singh(Broad Institute), Ian C. P. Smith(Universitair Ziekenhuis Leuven), Markus D. Herrmann(University Hospital Ulm), Paul Rees(Broad Institute), Oren Kraus(University of Toronto), Jane Hung(Broad Institute), Roger G. Linington(Simon Fraser University)
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