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Efficient strategies for screening large-scale genetic interaction networks

Authors :
Scott W. Simpkins
Raamesh Deshpande
Jeff S. Piotrowski
Charles Boone
Michael Costanzo
Chad L. Myers
Justin Nelson
Sheena C. Li
Publication Year :
2017
Publisher :
Cold Spring Harbor Laboratory, 2017.

Abstract

Large-scale genetic interaction screening is a powerful approach for unbiased characterization of gene function and understanding systems-level cellular organization. While genome-wide screens are desirable as they provide the most comprehensive interaction profiles, they are resource and time-intensive and sometimes infeasible, depending on the species and experimental platform. For these scenarios, optimal methods for more efficient screening while still producing the maximal amount of information from the resulting profiles are of interest.To address this problem, we developed an optimal algorithm, called COMPRESS-GI, which selects a small but informative set of genes that captures most of the functional information contained within genome-wide genetic interaction profiles. The utility of this algorithm is demonstrated through an application of the approach to define a diagnostic mutant set for large-scale chemical genetic screens, where more than 13,000 compound screens were achieved through the increased throughput enabled by the approach. COMPRESS-GI can be broadly applied for directing genetic interaction screens in other contexts, including in species with little or no prior genetic-interaction data.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....26d73fb3551a4a146ff7b0339376da67