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Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity

Approximately 20 drugs have been approved by the FDA for breast cancer treatment, yet predictive biomarkers are known for only a few of these. The identification of additional biomarkers would be useful both for drugs currently approved for breast cancer treatment and for new drug development. Using...

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Autores principales: Timpe, Leslie C, Li, Dian, Yen, Ten-Yang, Wong, Judi, Yen, Roger, Macher, Bruce A, Piryatinska, Alexandra
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4621756/
https://www.ncbi.nlm.nih.gov/pubmed/26516301
http://dx.doi.org/10.4172/jpb.1000370
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author Timpe, Leslie C
Li, Dian
Yen, Ten-Yang
Wong, Judi
Yen, Roger
Macher, Bruce A
Piryatinska, Alexandra
author_facet Timpe, Leslie C
Li, Dian
Yen, Ten-Yang
Wong, Judi
Yen, Roger
Macher, Bruce A
Piryatinska, Alexandra
author_sort Timpe, Leslie C
collection PubMed
description Approximately 20 drugs have been approved by the FDA for breast cancer treatment, yet predictive biomarkers are known for only a few of these. The identification of additional biomarkers would be useful both for drugs currently approved for breast cancer treatment and for new drug development. Using glycoprotein expression data collected via mass spectrometry, in conjunction with statistical models constructed by elastic net or lasso regression, we modeled quantitatively the responses of breast cancer cell lines to ~90 drugs. Lasso and elastic net regression identified HER2 as a predictor protein for lapatinib, afatinib, gefitinib and erlotinib, which target HER2 or the EGF receptor, thus providing an internal control for the approach. Two additional protein datasets and two RNA datasets were also tested as sources of predictor proteins for modeling drug sensitivity. Protein expression measured by mass spectrometry gave models with higher coefficients of determination than did reverse phase protein array (RPPA) predictor data. Further, cross validation of the elastic net models shows that, for many drugs, the prediction error is lower when the predictor data is from proteins, rather than mRNA expression measured on microarrays. Drugs that could be modeled effectively include PI3K inhibitors, Akt inhibitors, paclitaxel and docetaxel, rapamycin, everolimus and temsirolimus, gemcitabine and vinorelbine. Strikingly, this modeling approach with protein predictors often succeeds for drugs that are targeted agents, even when the nominal target is not in the dataset.
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spelling pubmed-46217562015-10-27 Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity Timpe, Leslie C Li, Dian Yen, Ten-Yang Wong, Judi Yen, Roger Macher, Bruce A Piryatinska, Alexandra J Proteomics Bioinform Article Approximately 20 drugs have been approved by the FDA for breast cancer treatment, yet predictive biomarkers are known for only a few of these. The identification of additional biomarkers would be useful both for drugs currently approved for breast cancer treatment and for new drug development. Using glycoprotein expression data collected via mass spectrometry, in conjunction with statistical models constructed by elastic net or lasso regression, we modeled quantitatively the responses of breast cancer cell lines to ~90 drugs. Lasso and elastic net regression identified HER2 as a predictor protein for lapatinib, afatinib, gefitinib and erlotinib, which target HER2 or the EGF receptor, thus providing an internal control for the approach. Two additional protein datasets and two RNA datasets were also tested as sources of predictor proteins for modeling drug sensitivity. Protein expression measured by mass spectrometry gave models with higher coefficients of determination than did reverse phase protein array (RPPA) predictor data. Further, cross validation of the elastic net models shows that, for many drugs, the prediction error is lower when the predictor data is from proteins, rather than mRNA expression measured on microarrays. Drugs that could be modeled effectively include PI3K inhibitors, Akt inhibitors, paclitaxel and docetaxel, rapamycin, everolimus and temsirolimus, gemcitabine and vinorelbine. Strikingly, this modeling approach with protein predictors often succeeds for drugs that are targeted agents, even when the nominal target is not in the dataset. 2015 /pmc/articles/PMC4621756/ /pubmed/26516301 http://dx.doi.org/10.4172/jpb.1000370 Text en http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Article
Timpe, Leslie C
Li, Dian
Yen, Ten-Yang
Wong, Judi
Yen, Roger
Macher, Bruce A
Piryatinska, Alexandra
Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity
title Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity
title_full Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity
title_fullStr Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity
title_full_unstemmed Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity
title_short Mining the Breast Cancer Proteome for Predictors of Drug Sensitivity
title_sort mining the breast cancer proteome for predictors of drug sensitivity
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4621756/
https://www.ncbi.nlm.nih.gov/pubmed/26516301
http://dx.doi.org/10.4172/jpb.1000370
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