Cargando…

Harnessing synthetic lethality to predict the response to cancer treatment

While synthetic lethality (SL) holds promise in developing effective cancer therapies, SL candidates found via experimental screens often have limited translational value. Here we present a data-driven approach, ISLE (identification of clinically relevant synthetic lethality), that mines TCGA cohort...

Descripción completa

Detalles Bibliográficos
Autores principales: Lee, Joo Sang, Das, Avinash, Jerby-Arnon, Livnat, Arafeh, Rand, Auslander, Noam, Davidson, Matthew, McGarry, Lynn, James, Daniel, Amzallag, Arnaud, Park, Seung Gu, Cheng, Kuoyuan, Robinson, Welles, Atias, Dikla, Stossel, Chani, Buzhor, Ella, Stein, Gidi, Waterfall, Joshua J., Meltzer, Paul S., Golan, Talia, Hannenhalli, Sridhar, Gottlieb, Eyal, Benes, Cyril H., Samuels, Yardena, Shanks, Emma, Ruppin, Eytan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6026173/
https://www.ncbi.nlm.nih.gov/pubmed/29959327
http://dx.doi.org/10.1038/s41467-018-04647-1
_version_ 1783336400522838016
author Lee, Joo Sang
Das, Avinash
Jerby-Arnon, Livnat
Arafeh, Rand
Auslander, Noam
Davidson, Matthew
McGarry, Lynn
James, Daniel
Amzallag, Arnaud
Park, Seung Gu
Cheng, Kuoyuan
Robinson, Welles
Atias, Dikla
Stossel, Chani
Buzhor, Ella
Stein, Gidi
Waterfall, Joshua J.
Meltzer, Paul S.
Golan, Talia
Hannenhalli, Sridhar
Gottlieb, Eyal
Benes, Cyril H.
Samuels, Yardena
Shanks, Emma
Ruppin, Eytan
author_facet Lee, Joo Sang
Das, Avinash
Jerby-Arnon, Livnat
Arafeh, Rand
Auslander, Noam
Davidson, Matthew
McGarry, Lynn
James, Daniel
Amzallag, Arnaud
Park, Seung Gu
Cheng, Kuoyuan
Robinson, Welles
Atias, Dikla
Stossel, Chani
Buzhor, Ella
Stein, Gidi
Waterfall, Joshua J.
Meltzer, Paul S.
Golan, Talia
Hannenhalli, Sridhar
Gottlieb, Eyal
Benes, Cyril H.
Samuels, Yardena
Shanks, Emma
Ruppin, Eytan
author_sort Lee, Joo Sang
collection PubMed
description While synthetic lethality (SL) holds promise in developing effective cancer therapies, SL candidates found via experimental screens often have limited translational value. Here we present a data-driven approach, ISLE (identification of clinically relevant synthetic lethality), that mines TCGA cohort to identify the most likely clinically relevant SL interactions (cSLi) from a given candidate set of lab-screened SLi. We first validate ISLE via a benchmark of large-scale drug response screens and by predicting drug efficacy in mouse xenograft models. We then experimentally test a select set of predicted cSLi via new screening experiments, validating their predicted context-specific sensitivity in hypoxic vs normoxic conditions and demonstrating cSLi’s utility in predicting synergistic drug combinations. We show that cSLi can successfully predict patients’ drug treatment response and provide patient stratification signatures. ISLE thus complements existing actionable mutation-based methods for precision cancer therapy, offering an opportunity to expand its scope to the whole genome.
format Online
Article
Text
id pubmed-6026173
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-60261732018-07-02 Harnessing synthetic lethality to predict the response to cancer treatment Lee, Joo Sang Das, Avinash Jerby-Arnon, Livnat Arafeh, Rand Auslander, Noam Davidson, Matthew McGarry, Lynn James, Daniel Amzallag, Arnaud Park, Seung Gu Cheng, Kuoyuan Robinson, Welles Atias, Dikla Stossel, Chani Buzhor, Ella Stein, Gidi Waterfall, Joshua J. Meltzer, Paul S. Golan, Talia Hannenhalli, Sridhar Gottlieb, Eyal Benes, Cyril H. Samuels, Yardena Shanks, Emma Ruppin, Eytan Nat Commun Article While synthetic lethality (SL) holds promise in developing effective cancer therapies, SL candidates found via experimental screens often have limited translational value. Here we present a data-driven approach, ISLE (identification of clinically relevant synthetic lethality), that mines TCGA cohort to identify the most likely clinically relevant SL interactions (cSLi) from a given candidate set of lab-screened SLi. We first validate ISLE via a benchmark of large-scale drug response screens and by predicting drug efficacy in mouse xenograft models. We then experimentally test a select set of predicted cSLi via new screening experiments, validating their predicted context-specific sensitivity in hypoxic vs normoxic conditions and demonstrating cSLi’s utility in predicting synergistic drug combinations. We show that cSLi can successfully predict patients’ drug treatment response and provide patient stratification signatures. ISLE thus complements existing actionable mutation-based methods for precision cancer therapy, offering an opportunity to expand its scope to the whole genome. Nature Publishing Group UK 2018-06-29 /pmc/articles/PMC6026173/ /pubmed/29959327 http://dx.doi.org/10.1038/s41467-018-04647-1 Text en © The Author(s) 2018 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Lee, Joo Sang
Das, Avinash
Jerby-Arnon, Livnat
Arafeh, Rand
Auslander, Noam
Davidson, Matthew
McGarry, Lynn
James, Daniel
Amzallag, Arnaud
Park, Seung Gu
Cheng, Kuoyuan
Robinson, Welles
Atias, Dikla
Stossel, Chani
Buzhor, Ella
Stein, Gidi
Waterfall, Joshua J.
Meltzer, Paul S.
Golan, Talia
Hannenhalli, Sridhar
Gottlieb, Eyal
Benes, Cyril H.
Samuels, Yardena
Shanks, Emma
Ruppin, Eytan
Harnessing synthetic lethality to predict the response to cancer treatment
title Harnessing synthetic lethality to predict the response to cancer treatment
title_full Harnessing synthetic lethality to predict the response to cancer treatment
title_fullStr Harnessing synthetic lethality to predict the response to cancer treatment
title_full_unstemmed Harnessing synthetic lethality to predict the response to cancer treatment
title_short Harnessing synthetic lethality to predict the response to cancer treatment
title_sort harnessing synthetic lethality to predict the response to cancer treatment
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6026173/
https://www.ncbi.nlm.nih.gov/pubmed/29959327
http://dx.doi.org/10.1038/s41467-018-04647-1
work_keys_str_mv AT leejoosang harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT dasavinash harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT jerbyarnonlivnat harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT arafehrand harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT auslandernoam harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT davidsonmatthew harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT mcgarrylynn harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT jamesdaniel harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT amzallagarnaud harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT parkseunggu harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT chengkuoyuan harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT robinsonwelles harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT atiasdikla harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT stosselchani harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT buzhorella harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT steingidi harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT waterfalljoshuaj harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT meltzerpauls harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT golantalia harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT hannenhallisridhar harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT gottliebeyal harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT benescyrilh harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT samuelsyardena harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT shanksemma harnessingsyntheticlethalitytopredicttheresponsetocancertreatment
AT ruppineytan harnessingsyntheticlethalitytopredicttheresponsetocancertreatment