Issue 4, 2010

An integrated one-step system to extract, analyze and annotate all relevant information from image-based cell screening of chemical libraries

Abstract

Here we report the development and validation of a complete solution to manage and analyze the data produced by image-based phenotypic screening campaigns of small-molecule libraries. In one step initial crude images are analyzed for multiple cytological features, statistical analysis is performed and molecules that produce the desired phenotypic profile are identified. A naïve Bayes classifier, integrating chemical and phenotypic spaces, is built and utilized during the process to assess those images initially classified as “fuzzy”—an automated iterative feedback tuning. Simultaneously, all this information is directly annotated in a relational database containing the chemical data. This novel fully automated method was validated by conducting a re-analysis of results from a high-content screening campaign involving 33 992 molecules used to identify inhibitors of the PI3K/Akt signaling pathway. Ninety-two percent of confirmed hits identified by the conventional multistep analysis method were identified using this integrated one-step system as well as 40 new hits, 14.9% of the total, originally false negatives. Ninety-six percent of true negatives were properly recognized too. A web-based access to the database, with customizable data retrieval and visualization tools, facilitates the posterior analysis of annotated cytological features which allows identification of additional phenotypic profiles; thus, further analysis of original crude images is not required.

Graphical abstract: An integrated one-step system to extract, analyze and annotate all relevant information from image-based cell screening of chemical libraries

Supplementary files

Article information

Article type
Paper
Submitted
24 Sep 2009
Accepted
24 Nov 2009
First published
21 Jan 2010

Mol. BioSyst., 2010,6, 711-720

An integrated one-step system to extract, analyze and annotate all relevant information from image-based cell screening of chemical libraries

O. Rabal, W. Link, B. G. Serelde, J. R. Bischoff and J. Oyarzabal, Mol. BioSyst., 2010, 6, 711 DOI: 10.1039/B919830J

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