Issue 3, 2015

Compound signature detection on LINCS L1000 big data

Abstract

The Library of Integrated Network-based Cellular Signatures (LINCS) L1000 big data provide gene expression profiles induced by over 10 000 compounds, shRNAs, and kinase inhibitors using the L1000 platform. We developed csNMF, a systematic compound signature discovery pipeline covering from raw L1000 data processing to drug screening and mechanism generation. The csNMF pipeline demonstrated better performance than the original L1000 pipeline. The discovered compound signatures of breast cancer were consistent with the LINCS KINOMEscan data and were clinically relevant. The csNMF pipeline provided a novel and complete tool to expedite signature-based drug discovery leveraging the LINCS L1000 resources.

Graphical abstract: Compound signature detection on LINCS L1000 big data

Supplementary files

Article information

Article type
Method
Submitted
21 Nov 2014
Accepted
12 Jan 2015
First published
12 Jan 2015

Mol. BioSyst., 2015,11, 714-722

Author version available

Compound signature detection on LINCS L1000 big data

C. Liu, J. Su, F. Yang, K. Wei, J. Ma and X. Zhou, Mol. BioSyst., 2015, 11, 714 DOI: 10.1039/C4MB00677A

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