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Developmental Dynamics 2009-03-01

Automated image-based phenotypic analysis in zebrafish embryos.

Andreas Vogt, Andrzej Cholewinski, Xiaoqiang Shen, Scott G Nelson, John S Lazo, Michael Tsang, Neil A Hukriede

文献索引:Dev. Dyn. 238(3) , 656-63, (2009)

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摘要

Presently, the zebrafish is the only vertebrate model compatible with contemporary paradigms of drug discovery. Zebrafish embryos are amenable to automation necessary for high-throughput chemical screens, and optical transparency makes them potentially suited for image-based screening. However, the lack of tools for automated analysis of complex images presents an obstacle to using the zebrafish as a high-throughput screening model. We have developed an automated system for imaging and analyzing zebrafish embryos in multi-well plates regardless of embryo orientation and without user intervention. Images of fluorescent embryos were acquired on a high-content reader and analyzed using an artificial intelligence-based image analysis method termed Cognition Network Technology (CNT). CNT reliably detected transgenic fluorescent embryos (Tg(fli1:EGFP)(y1)) arrayed in 96-well plates and quantified intersegmental blood vessel development in embryos treated with small molecule inhibitors of anigiogenesis. The results demonstrate it is feasible to adapt image-based high-content screening methodology to measure complex whole organism phenotypes.(c) 2009 Wiley-Liss, Inc.

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结构式 名称/CAS号 全部文献
SU4312 结构式 SU4312
CAS:5812-07-7