Publication:

Cellular Phenotype Recognition for High-Content RNA Interference Genome-Wide Screening

Loading...
Thumbnail Image

Date

2007

Published Version

Journal Title

Journal ISSN

Volume Title

Publisher

SAGE Publications
The Harvard community has made this article openly available. Please share how this access benefits you.

Research Projects

Organizational Units

Journal Issue

Citation

Wang, J., X. Zhou, P. L. Bradley, S.-F. Chang, N. Perrimon, and S. T.C. Wong. 2007. “Cellular Phenotype Recognition for High-Content RNA Interference Genome-Wide Screening.” Journal of Biomolecular Screening 13 (1): 29–39. https://doi.org/10.1177/1087057107311223.

Abstract

Genome-wide, cell-based screens using high-content screening (HCS) techniques and automated fluorescence microscopy generate thousands of high-content images that contain an enormous wealth of cell biological information. Such screens are key to the analysis of basic cell biological principles, such as control of cell cycle and cell morphology. However, these screens will ultimately only shed light on human disease mechanisms and potential cures if the analysis can keep up with the generation of data. A fundamental step toward automated analysis of high-content screening is to construct a robust platform for automatic cellular phenotype identification. The authors present a framework, consisting of microscopic image segmentation and analysis components, for automatic recognition of cellular phenotypes in the context of the Rho family of small GTPases. To implicate genes involved in Rac signaling, RNA interference (RNAi) was used to perturb gene functions, and the corresponding cellular phenotypes were analyzed for changes. The data used in the experiments are high-content, 3-channel, fluorescence microscopy images of Drosophila Kc167 cultured cells stained with markers that allow visualization of DNA, polymerized actin filaments, and the constitutively activated Rho protein Rac(V12). The performance of this approach was tested using a cellular database that contained more than 1000 samples of 3 predefined cellular phenotypes, and the generalization error was estimated using a cross-validation technique. Moreover, the authors applied this approach to analyze the whole high-content fluorescence images of Drosophila cells for further HCS-based gene function analysis.

Description

Other Available Sources

Research Data

Keywords

Terms of Use

Metadata Only

Endorsement

Review

Supplemented By

Related Stories