A pharmacogenomic method for individualized prediction of drug sensitivity |
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Authors: | Ryan Wilcox Bryan E Welm Jeffrey T Chang Evan Johnson Avrum Spira Stefanie S Jeffrey Andrea H Bild |
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Affiliation: | 1. Department of Pharmacology and Toxicology, University of Utah, , Salt Lake City, UT, USA;2. Department of Surgery, University of Utah, , Salt Lake City, UT, USA;3. Department of Integrative Biology and Pharmacology, University of Texas Health Science Center at Houston, , Houston, TX, USA;4. Department of Statistics, Brigham Young University, , Provo, UT, USA;5. Department of Computational Biomedicine, Boston University School of Medicine, , Boston, MA, USA;6. Department of Surgery, Stanford University School of Medicine, , Stanford, CA, USA |
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Abstract: | Identifying the best drug for each cancer patient requires an efficient individualized strategy. We present MATCH (M erging genomic and pharmacologic A nalyses for T herapy CH oice), an approach using public genomic resources and drug testing of fresh tumor samples to link drugs to patients. Valproic acid (VPA) is highlighted as a proof‐of‐principle. In order to predict specific tumor types with high probability of drug sensitivity, we create drug response signatures using publically available gene expression data and assess sensitivity in a data set of >40 cancer types. Next, we evaluate drug sensitivity in matched tumor and normal tissue and exclude cancer types that are no more sensitive than normal tissue. From these analyses, breast tumors are predicted to be sensitive to VPA. A meta‐analysis across breast cancer data sets shows that aggressive subtypes are most likely to be sensitive to VPA, but all subtypes have sensitive tumors. MATCH predictions correlate significantly with growth inhibition in cancer cell lines and three‐dimensional cultures of fresh tumor samples. MATCH accurately predicts reduction in tumor growth rate following VPA treatment in patient tumor xenografts. MATCH uses genomic analysis with in vitro testing of patient tumors to select optimal drug regimens before clinical trial initiation. |
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Keywords: | biomarkers cancer pharmacogenomics |
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