Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality

Abstract Background Synthetic lethality describes a genetic interaction between two perturbations, leading to cell death, whereas neither event alone has a significant effect on cell viability. This concept can be exploited to specifically target tumor cells. CRISPR viability screens have been widel...

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Main Authors: Salvatore Benfatto, Özdemirhan Serçin, Francesca R. Dejure, Amir Abdollahi, Frank T. Zenke, Balca R. Mardin
Format: Article
Language:English
Published: BMC 2021-08-01
Series:Molecular Cancer
Online Access:https://doi.org/10.1186/s12943-021-01405-8
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spelling doaj-ff8c47867c32418e8423c70dbf2b4ab12021-08-29T11:03:36ZengBMCMolecular Cancer1476-45982021-08-0120112210.1186/s12943-021-01405-8Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethalitySalvatore Benfatto0Özdemirhan Serçin1Francesca R. Dejure2Amir Abdollahi3Frank T. Zenke4Balca R. Mardin5BioMed X Institute (GmbH)BioMed X Institute (GmbH)BioMed X Institute (GmbH)Division of Molecular and Translational Radiation Oncology, National Centre for Tumour Diseases (NCT), Heidelberg University HospitalTranslational Innovation Platform Oncology & Immuno-OncologyBioMed X Institute (GmbH)Abstract Background Synthetic lethality describes a genetic interaction between two perturbations, leading to cell death, whereas neither event alone has a significant effect on cell viability. This concept can be exploited to specifically target tumor cells. CRISPR viability screens have been widely employed to identify cancer vulnerabilities. However, an approach to systematically infer genetic interactions from viability screens is missing. Methods Here we describe PAn-canceR Inferred Synthetic lethalities (PARIS), a machine learning approach to identify cancer vulnerabilities. PARIS predicts synthetic lethal (SL) interactions by combining CRISPR viability screens with genomics and transcriptomics data across hundreds of cancer cell lines profiled within the Cancer Dependency Map. Results Using PARIS, we predicted 15 high confidence SL interactions within 549 DNA damage repair (DDR) genes. We show experimental validation of an SL interaction between the tumor suppressor CDKN2A, thymidine phosphorylase (TYMP) and the thymidylate synthase (TYMS), which may allow stratifying patients for treatment with TYMS inhibitors. Using genome-wide mapping of SL interactions for DDR genes, we unraveled a dependency between the aldehyde dehydrogenase ALDH2 and the BRCA-interacting protein BRIP1. Our results suggest BRIP1 as a potential therapeutic target in ~ 30% of all tumors, which express low levels of ALDH2. Conclusions PARIS is an unbiased, scalable and easy to adapt platform to identify SL interactions that should aid in improving cancer therapy with increased availability of cancer genomics data.https://doi.org/10.1186/s12943-021-01405-8
collection DOAJ
language English
format Article
sources DOAJ
author Salvatore Benfatto
Özdemirhan Serçin
Francesca R. Dejure
Amir Abdollahi
Frank T. Zenke
Balca R. Mardin
spellingShingle Salvatore Benfatto
Özdemirhan Serçin
Francesca R. Dejure
Amir Abdollahi
Frank T. Zenke
Balca R. Mardin
Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality
Molecular Cancer
author_facet Salvatore Benfatto
Özdemirhan Serçin
Francesca R. Dejure
Amir Abdollahi
Frank T. Zenke
Balca R. Mardin
author_sort Salvatore Benfatto
title Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality
title_short Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality
title_full Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality
title_fullStr Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality
title_full_unstemmed Uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality
title_sort uncovering cancer vulnerabilities by machine learning prediction of synthetic lethality
publisher BMC
series Molecular Cancer
issn 1476-4598
publishDate 2021-08-01
description Abstract Background Synthetic lethality describes a genetic interaction between two perturbations, leading to cell death, whereas neither event alone has a significant effect on cell viability. This concept can be exploited to specifically target tumor cells. CRISPR viability screens have been widely employed to identify cancer vulnerabilities. However, an approach to systematically infer genetic interactions from viability screens is missing. Methods Here we describe PAn-canceR Inferred Synthetic lethalities (PARIS), a machine learning approach to identify cancer vulnerabilities. PARIS predicts synthetic lethal (SL) interactions by combining CRISPR viability screens with genomics and transcriptomics data across hundreds of cancer cell lines profiled within the Cancer Dependency Map. Results Using PARIS, we predicted 15 high confidence SL interactions within 549 DNA damage repair (DDR) genes. We show experimental validation of an SL interaction between the tumor suppressor CDKN2A, thymidine phosphorylase (TYMP) and the thymidylate synthase (TYMS), which may allow stratifying patients for treatment with TYMS inhibitors. Using genome-wide mapping of SL interactions for DDR genes, we unraveled a dependency between the aldehyde dehydrogenase ALDH2 and the BRCA-interacting protein BRIP1. Our results suggest BRIP1 as a potential therapeutic target in ~ 30% of all tumors, which express low levels of ALDH2. Conclusions PARIS is an unbiased, scalable and easy to adapt platform to identify SL interactions that should aid in improving cancer therapy with increased availability of cancer genomics data.
url https://doi.org/10.1186/s12943-021-01405-8
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