A new method for network bioinformatics identifies novel drug targets for mucinous ovarian carcinoma

Author:

Craig Olivia12,Lee Samuel345,Pilcher Courtney6,Saoud Rita12,Abdirahman Suad12,Salazar Carolina12,Williams Nathan46,Ascher David B789ORCID,Vary Robert110,Luu Jennii110,Cowley Karla J110,Ramm Susanne1210,Li Mark Xiang1210,Thio Niko1,Li Jason1,Semple Tim1,Simpson Kaylene J12910,Gorringe Kylie L12ORCID,Holien Jessica K346ORCID

Affiliation:

1. Peter MacCallum Cancer Centre , 305 Grattan St , Melbourne , VIC 3052 , Australia

2. Sir Peter MacCallum Department of Oncology, The University of Melbourne , Parkville , VIC 3052 , Australia

3. The Faculty of Medicine, Dentistry and Health Science, The University of Melbourne , Carlton , VIC 3010 , Australia

4. St Vincent's Institute of Medical Research , Fitzroy , VIC 3065 , Australia

5. Bioinformatics Division, The Walter and Eliza Hall Institute of Medical Research , Parkville , VIC 3052 , Australia

6. School of Science, STEM College, RMIT University , Bundoora , VIC 3082 , Australia

7. School of Chemistry and Molecular Biosciences, The University of Queensland , St Lucia , QLD 4067 , Australia

8. Computational Biology and Clinical Informatics, Baker Heart and Diabetes Institute , Melbourne , VIC 3004 , Australia

9. Department of Biochemistry and Pharmacology, The University of Melbourne , Parkville , VIC 3010 , Australia

10. The Victorian Centre for Functional Genomics, Peter MacCallum Cancer Centre , Melbourne , VIC 3052 , Australia

Abstract

Abstract Mucinous ovarian carcinoma (MOC) is a subtype of ovarian cancer that is distinct from all other ovarian cancer subtypes and currently has no targeted therapies. To identify novel therapeutic targets, we developed and applied a new method of differential network analysis comparing MOC to benign mucinous tumours (in the absence of a known normal tissue of origin). This method mapped the protein-protein network in MOC and then utilised structural bioinformatics to prioritise the proteins identified as upregulated in the MOC network for their likelihood of being successfully drugged. Using this protein-protein interaction modelling, we identified the strongest 5 candidates, CDK1, CDC20, PRC1, CCNA2 and TRIP13, as structurally tractable to therapeutic targeting by small molecules. siRNA knockdown of these candidates performed in MOC and control normal fibroblast cell lines identified CDK1, CCNA2, PRC1 and CDC20, as potential drug targets in MOC. Three targets (TRIP13, CDC20, CDK1) were validated using known small molecule inhibitors. Our findings demonstrate the utility of our pipeline for identifying new targets and highlight potential new therapeutic options for MOC patients.

Funder

Cure Cancer Australia

Congressionally Directed Medical Research Programs

SVI Rising Star Award

RMIT Vice Chancellors Fellowship

5point Foundation Fellowship

Peter MacCallum Foundation

University of Melbourne

National Health and Medical Research Council

Victorian Centre for Functional Genomics

Australian Cancer Research Foundation

Australian Government's National Collaborative Research Infrastructure Strategy

Peter MacCallum Cancer Centre Foundation

University of Melbourne Collaborative Research Infrastructure Program

Victorian Government's Operational Infrastructure Support Program

Publisher

Oxford University Press (OUP)

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