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- Title
Improved prediction of PARP inhibitor response and identification of synergizing agents through use of a novel gene expression signature generation algorithm.
- Authors
McGrail, Daniel J.; Lin, Curtis Chun-Jen; Garnett, Jeannine; Liu, Qingxin; Mo, Wei; Dai, Hui; Lu, Yiling; Yu, Qinghua; Ju, Zhenlin; Yin, Jun; Vellano, Christopher P.; Hennessy, Bryan; Mills, Gordon B.; Lin, Shiaw-Yih
- Abstract
Despite rapid advancement in generation of large-scale microarray gene expression datasets, robust multigene expression signatures that are capable of guiding the use of specific therapies have not been routinely implemented into clinical care. We have developed an iterative resampling analysis to predict sensitivity algorithm to generate gene expression sensitivity profiles that predict patient responses to specific therapies. The resultant signatures have a robust capacity to accurately predict drug sensitivity as well as the identification of synergistic combinations. Here, we apply this approach to predict response to PARP inhibitors, and show it can greatly outperforms current clinical biomarkers, including BRCA1/2 mutation status, accurately identifying PARP inhibitor-sensitive cancer cell lines, primary patient-derived tumor cells, and patient-derived xenografts. These signatures were also capable of predicting patient response, as shown by applying a cisplatin sensitivity signature to ovarian cancer patients. We additionally demonstrate how these drug-sensitivity signatures can be applied to identify novel synergizing agents to improve drug efficacy. Tailoring therapeutic interventions to improve patient prognosis is of utmost importance, and our drug sensitivity prediction signatures may prove highly beneficial for patient management. Personalized medicine: Signature-guided cancer therapy Personalized cancer therapy is one of the holy grails of oncology, as the ability to determine what treatment would best benefit a patient would serve not only to improve outcomes, but also mitigate side effects from less effective treatments. Here, we develop algorithms to predict what patients will respond to a given therapeutic modality, as well as ways to specifically target any observed phenotype, by integrating large scale data sets that profile cancer cell line gene expression and sensitivity to hundreds of drugs. Furthermore, we show how these gene expression signatures can be used to predict novel synergizing agents to further enhance the efficacy of these therapeutics. Taken together, this work stands to advance the era of personalized medicine by enabling precision medicine approaches in the clinic.
- Subjects
POLYMERASES; ENZYME inhibitors; GENE expression; DRUG synergism; RESAMPLING (Statistics); BIOMARKERS
- Publication
NPJ Systems Biology & Applications, 2017, Vol 3, Issue 1, pN.PAG
- ISSN
2056-7189
- Publication type
Article
- DOI
10.1038/s41540-017-0011-6