Biological network topology features predict gene dependencies in cancer cell-lines

Author:

Benstead-Hume Graeme12,Wooller Sarah K1,Renaut Joanna1,Dias Samantha3,Woodbine Lisa3,Carr Antony M3,Pearl Frances M G1ORCID

Affiliation:

1. Bioinformatics Lab, School of Life Sciences, University of Sussex , Brighton BN1 9QJ, UK

2. Division of Cancer Biology, The Institute of Cancer Research , London SW3 6JB, UK

3. Genome Damage and Stability Centre, University of Sussex , Brighton BN1 9RQ, UK

Abstract

Abstract Motivation Protein–protein interaction (PPI) networks have been shown to successfully predict essential proteins. However, such networks are derived generically from experiments on many thousands of different cells. Consequently, conventional PPI networks cannot capture the variation of genetic dependencies that exists across different cell types, let alone those that emerge as a result of the massive cell restructuring that occurs during carcinogenesis. Predicting cell-specific dependencies is of considerable therapeutic benefit, facilitating the use of drugs to inhibit those proteins on which the cancer cells have become specifically dependent. In order to go beyond the limitations of the generic PPI, we have attempted to personalise PPI networks to reflect cell-specific patterns of gene expression and mutation. By using 12 topological features of the resulting PPIs, together with matched gene dependency data from DepMap, we trained random-forest classifiers (DependANT) to predict novel gene dependencies. Results We found that DependANT improves the power of the baseline generic PPI models in predicting common gene dependencies, by up to 10.8% and is more sensitive than the baseline generic model when predicting genes on which only a small number of cell types are dependent. Availability and implementation Software available at https://bitbucket.org/bioinformatics_lab_sussex/dependant2 Supplementary information Supplementary data are available at Bioinformatics Advances online.

Funder

Medical Research Council studentship

Biotechnology and Biological Sciences Research Council/Oppilotech industry studentship

Publisher

Oxford University Press (OUP)

Subject

Cell Biology,Developmental Biology,Embryology,Anatomy

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