| Literature DB >> 18087069 |
Oliver Dürr1, François Duval, Anthony Nichols, Paul Lang, Annette Brodte, Stephan Heyse, Dominique Besson.
Abstract
Recent technological advances in high-content screening instrumentation have increased its ease of use and throughput, expanding the application of high-content screening to the early stages of drug discovery. However, high-content screens produce complex data sets, presenting a challenge for both extraction and interpretation of meaningful information. This shifts the high-content screening process bottleneck from the experimental to the analytical stage. In this article, the authors discuss different approaches of data analysis, using a phenotypic neurite outgrowth screen as an example. Distance measurements and hierarchical clustering methods lead to a profound understanding of different high-content screening readouts. In addition, the authors introduce a hit selection procedure based on machine learning methods and demonstrate that this method increases the hit verification rate significantly (up to a factor of 5), compared to conventional hit selection based on single readouts only.Mesh:
Year: 2007 PMID: 18087069 DOI: 10.1177/1087057107309036
Source DB: PubMed Journal: J Biomol Screen ISSN: 1087-0571