TY - JOUR
T1 - Large-Scale Profiling of Kinase Dependencies in Cancer Cell Lines
AU - Campbell, James
AU - Ryan, Colm J.
AU - Brough, Rachel
AU - Bajrami, Ilirjana
AU - Pemberton, Helen N.
AU - Chong, Irene Y.
AU - Costa-Cabral, Sara
AU - Frankum, Jessica
AU - Gulati, Aditi
AU - Holme, Harriet
AU - Miller, Rowan
AU - Postel-Vinay, Sophie
AU - Rafiq, Rumana
AU - Wei, Wenbin
AU - Williamson, Chris T.
AU - Quigley, David A.
AU - Tym, Joe
AU - Al-Lazikani, Bissan
AU - Fenton, Timothy
AU - Natrajan, Rachael
AU - Strauss, Sandra J.
AU - Ashworth, Alan
AU - Lord, Christopher J.
N1 - Publisher Copyright:
© 2016 The Authors.
PY - 2016/3/15
Y1 - 2016/3/15
N2 - One approach to identifying cancer-specific vulnerabilities and therapeutic targets is to profile genetic dependencies in cancer cell lines. Here, we describe data from a series of siRNA screens that identify the kinase genetic dependencies in 117 cancer cell lines from ten cancer types. By integrating the siRNA screen data with molecular profiling data, including exome sequencing data, we show how vulnerabilities/genetic dependencies that are associated with mutations in specific cancer driver genes can be identified. By integrating additional data sets into this analysis, including protein-protein interaction data, we also demonstrate that the genetic dependencies associated with many cancer driver genes form dense connections on functional interaction networks. We demonstrate the utility of this resource by using it to predict the drug sensitivity of genetically or histologically defined subsets of tumor cell lines, including an increased sensitivity of osteosarcoma cell lines to FGFR inhibitors and SMAD4 mutant tumor cells to mitotic inhibitors.
AB - One approach to identifying cancer-specific vulnerabilities and therapeutic targets is to profile genetic dependencies in cancer cell lines. Here, we describe data from a series of siRNA screens that identify the kinase genetic dependencies in 117 cancer cell lines from ten cancer types. By integrating the siRNA screen data with molecular profiling data, including exome sequencing data, we show how vulnerabilities/genetic dependencies that are associated with mutations in specific cancer driver genes can be identified. By integrating additional data sets into this analysis, including protein-protein interaction data, we also demonstrate that the genetic dependencies associated with many cancer driver genes form dense connections on functional interaction networks. We demonstrate the utility of this resource by using it to predict the drug sensitivity of genetically or histologically defined subsets of tumor cell lines, including an increased sensitivity of osteosarcoma cell lines to FGFR inhibitors and SMAD4 mutant tumor cells to mitotic inhibitors.
UR - http://www.scopus.com/inward/record.url?scp=84960407495&partnerID=8YFLogxK
U2 - 10.1016/j.celrep.2016.02.023
DO - 10.1016/j.celrep.2016.02.023
M3 - Article
C2 - 26947069
AN - SCOPUS:84960407495
SN - 2211-1247
VL - 14
SP - 2490
EP - 2501
JO - Cell Reports
JF - Cell Reports
IS - 10
ER -