Uncovering cancer gene regulation by accurate regulatory network inference from uninformative data

Author:

Seçilmiş DenizORCID,Hillerton Thomas,Morgan DanielORCID,Tjärnberg AndreasORCID,Nelander Sven,Nordling Torbjörn E. M.ORCID,Sonnhammer Erik L. L.ORCID

Abstract

Abstract The interactions among the components of a living cell that constitute the gene regulatory network (GRN) can be inferred from perturbation-based gene expression data. Such networks are useful for providing mechanistic insights of a biological system. In order to explore the feasibility and quality of GRN inference at a large scale, we used the L1000 data where ~1000 genes have been perturbed and their expression levels have been quantified in 9 cancer cell lines. We found that these datasets have a very low signal-to-noise ratio (SNR) level causing them to be too uninformative to infer accurate GRNs. We developed a gene reduction pipeline in which we eliminate uninformative genes from the system using a selection criterion based on SNR, until reaching an informative subset. The results show that our pipeline can identify an informative subset in an overall uninformative dataset, allowing inference of accurate subset GRNs. The accurate GRNs were functionally characterized and potential novel cancer-related regulatory interactions were identified.

Funder

Stiftelsen för Strategisk Forskning

Ministry of Science and Technology, Taiwan

Publisher

Springer Science and Business Media LLC

Subject

Applied Mathematics,Computer Science Applications,Drug Discovery,General Biochemistry, Genetics and Molecular Biology,Modelling and Simulation

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