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mQC: A Heuristic Quality-Control Metric for High-Throughput Drug Combination Screening

Authors :
Lu Chen
Sam Michael
Rajarshi Guha
Richard T. Eastman
Paul Shinn
Bryan T. Mott
Crystal McKnight
Ian S. Goldlust
Michael V. Gormally
John K. Simmons
Kelli M. Wilson
Xiaohu Zhang
Craig J. Thomas
Carleen Klumpp-Thomas
Mindy I. Davis
Marc Ferrer
Source :
Scientific Reports
Publication Year :
2016
Publisher :
Nature Publishing Group, 2016.

Abstract

Quality control (QC) metrics are critical in high throughput screening (HTS) platforms to ensure reliability and confidence in assay data and downstream analyses. Most reported HTS QC metrics are designed for plate level or single well level analysis. With the advent of high throughput combination screening there is a need for QC metrics that quantify the quality of combination response matrices. We introduce a predictive, interpretable, matrix-level QC metric, mQC, based on a mix of data-derived and heuristic features. mQC accurately reproduces the expert assessment of combination response quality and correctly identifies unreliable response matrices that can lead to erroneous or misleading characterization of synergy. When combined with the plate-level QC metric, Z’, mQC provides a more appropriate determination of the quality of a drug combination screen. Retrospective analysis on a number of completed combination screens further shows that mQC is able to identify problematic screens whereas plate-level QC was not able to. In conclusion, our data indicates that mQC is a reliable QC filter that can be used to identify problematic drug combinations matrices and prevent further analysis on erroneously active combinations as well as for troubleshooting failed screens. The R source code of mQC is available at http://matrix.ncats.nih.gov/mQC.

Details

Language :
English
ISSN :
20452322
Database :
OpenAIRE
Journal :
Scientific Reports
Accession number :
edsair.doi.dedup.....c1357728d5c7c1c71b5b4539b3313e2f
Full Text :
https://doi.org/10.1038/srep37741