Literature DB >> 22563067

Two effective methods for correcting experimental high-throughput screening data.

Plamen Dragiev1, Robert Nadon, Vladimir Makarenkov.   

Abstract

MOTIVATION: Rapid advances in biomedical sciences and genetics have increased the pressure on drug development companies to promptly translate new knowledge into treatments for disease. Impelled by the demand and facilitated by technological progress, the number of compounds evaluated during the initial high-throughput screening (HTS) step of drug discovery process has steadily increased. As a highly automated large-scale process, HTS is prone to systematic error caused by various technological and environmental factors. A number of error correction methods have been designed to reduce the effect of systematic error in experimental HTS (Brideau et al., 2003; Carralot et al., 2012; Kevorkov and Makarenkov, 2005; Makarenkov et al., 2007; Malo et al., 2010). Despite their power to correct systematic error when it is present, the applicability of those methods in practice is limited by the fact that they can potentially introduce a bias when applied to unbiased data. We describe two new methods for eliminating systematic error from HTS data based on a prior knowledge of the error location. This information can be obtained using a specific version of the t-test or of the χ(2) goodness-of-fit test as discussed in Dragiev et al. (2011). We will show that both new methods constitute an important improvement over the standard practice of not correcting for systematic error at all as well as over the B-score correction procedure (Brideau et al., 2003) which is widely used in the modern HTS. We will also suggest a more general data preprocessing framework where the new methods can be applied in combination with the Well Correction procedure (Makarenkov et al., 2007). Such a framework will allow for removing systematic biases affecting all plates of a given screen as well as those relative to some of its individual plates.

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Mesh:

Year:  2012        PMID: 22563067     DOI: 10.1093/bioinformatics/bts262

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  8 in total

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Authors:  Rui Zhong; Min Soo Kim; Michael A White; Yang Xie; Guanghua Xiao
Journal:  Bioinformatics       Date:  2013-06-28       Impact factor: 6.937

2.  Rank ordering plate data facilitates data visualization and normalization in high-throughput screening.

Authors:  Chand S Mangat; Amrita Bharat; Sebastian S Gehrke; Eric D Brown
Journal:  J Biomol Screen       Date:  2014-05-14

3.  Development and validation of a high-content bimolecular fluorescence complementation assay for small-molecule inhibitors of HIV-1 Nef dimerization.

Authors:  Jerrod A Poe; Laura Vollmer; Andreas Vogt; Thomas E Smithgall
Journal:  J Biomol Screen       Date:  2013-11-26

4.  Screen Targeting Lung and Prostate Cancer Oncogene Identifies Novel Inhibitors of RGS17 and Problematic Chemical Substructures.

Authors:  Christopher R Bodle; Josephine H Schamp; Joseph B O'Brien; Michael P Hayes; Meng Wu; Jonathan A Doorn; David L Roman
Journal:  SLAS Discov       Date:  2018-01-19       Impact factor: 3.341

5.  Identification and correction of spatial bias are essential for obtaining quality data in high-throughput screening technologies.

Authors:  Bogdan Mazoure; Robert Nadon; Vladimir Makarenkov
Journal:  Sci Rep       Date:  2017-09-20       Impact factor: 4.379

Review 6.  Data-driven approaches used for compound library design, hit triage and bioactivity modeling in high-throughput screening.

Authors:  Shardul Paricharak; Oscar Méndez-Lucio; Aakash Chavan Ravindranath; Andreas Bender; Adriaan P IJzerman; Gerard J P van Westen
Journal:  Brief Bioinform       Date:  2018-03-01       Impact factor: 11.622

7.  Fluorescence Polarization Screening Assays for Small Molecule Allosteric Modulators of ABL Kinase Function.

Authors:  Prerna Grover; Haibin Shi; Matthew Baumgartner; Carlos J Camacho; Thomas E Smithgall
Journal:  PLoS One       Date:  2015-07-29       Impact factor: 3.240

8.  Impact of normalization methods on high-throughput screening data with high hit rates and drug testing with dose-response data.

Authors:  John-Patrick Mpindi; Potdar Swapnil; Bychkov Dmitrii; Saarela Jani; Khalid Saeed; Krister Wennerberg; Tero Aittokallio; Päivi Östling; Olli Kallioniemi
Journal:  Bioinformatics       Date:  2015-08-07       Impact factor: 6.937

  8 in total

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