Literature DB >> 26372358

Genomic signatures for paclitaxel and gemcitabine resistance in breast cancer derived by machine learning.

Stephanie N Dorman1, Katherina Baranova1, Joan H M Knoll2, Brad L Urquhart3, Gabriella Mariani4, Maria Luisa Carcangiu5, Peter K Rogan6.   

Abstract

Increasingly, the effectiveness of adjuvant chemotherapy agents for breast cancer has been related to changes in the genomic profile of tumors. We investigated correspondence between growth inhibitory concentrations of paclitaxel and gemcitabine (GI50) and gene copy number, mutation, and expression first in breast cancer cell lines and then in patients. Genes encoding direct targets of these drugs, metabolizing enzymes, transporters, and those previously associated with chemoresistance to paclitaxel (n = 31 genes) or gemcitabine (n = 18) were analyzed. A multi-factorial, principal component analysis (MFA) indicated expression was the strongest indicator of sensitivity for paclitaxel, and copy number and expression were informative for gemcitabine. The factors were combined using support vector machines (SVM). Expression of 15 genes (ABCC10, BCL2, BCL2L1, BIRC5, BMF, FGF2, FN1, MAP4, MAPT, NFKB2, SLCO1B3, TLR6, TMEM243, TWIST1, and CSAG2) predicted cell line sensitivity to paclitaxel with 82% accuracy. Copy number profiles of 3 genes (ABCC10, NT5C, TYMS) together with expression of 7 genes (ABCB1, ABCC10, CMPK1, DCTD, NME1, RRM1, RRM2B), predicted gemcitabine response with 85% accuracy. Expression and copy number studies of two independent sets of patients with known responses were then analyzed with these models. These included tumor blocks from 21 patients that were treated with both paclitaxel and gemcitabine, and 319 patients on paclitaxel and anthracycline therapy. A new paclitaxel SVM was derived from an 11-gene subset since data for 4 of the original genes was unavailable. The accuracy of this SVM was similar in cell lines and tumor blocks (70-71%). The gemcitabine SVM exhibited 62% prediction accuracy for the tumor blocks due to the presence of samples with poor nucleic acid integrity. Nevertheless, the paclitaxel SVM predicted sensitivity in 84% of patients with no or minimal residual disease.
Copyright © 2015 Federation of European Biochemical Societies. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Breast cancer; Drug sensitivity; Gemcitabine; Genomic profiles; Paclitaxel; Resistance

Mesh:

Substances:

Year:  2015        PMID: 26372358      PMCID: PMC5528934          DOI: 10.1016/j.molonc.2015.07.006

Source DB:  PubMed          Journal:  Mol Oncol        ISSN: 1574-7891            Impact factor:   6.603


  91 in total

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Journal:  Urol Oncol       Date:  2015-05-28       Impact factor: 3.498

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Review 4.  Metastasis-suppressor genes in clinical practice: lost in translation?

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5.  DNA methylation of DKK3 modulates docetaxel chemoresistance in human nonsmall cell lung cancer cell.

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Authors:  Alice Bourdon; Limor Minai; Valérie Serre; Jean-Philippe Jais; Emmanuelle Sarzi; Sophie Aubert; Dominique Chrétien; Pascale de Lonlay; Véronique Paquis-Flucklinger; Hirofumi Arakawa; Yusuke Nakamura; Arnold Munnich; Agnès Rötig
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7.  Paclitaxel directly binds to Bcl-2 and functionally mimics activity of Nur77.

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8.  Modulation of vinblastine resistance in metastatic renal cell carcinoma with cyclosporine A or tamoxifen: a cancer and leukemia group B study.

Authors:  B L Samuels; D R Hollis; G L Rosner; D L Trump; C L Shapiro; N J Vogelzang; R L Schilsky
Journal:  Clin Cancer Res       Date:  1997-11       Impact factor: 12.531

Review 9.  Docetaxel and paclitaxel in the treatment of breast cancer: a review of clinical experience.

Authors:  John Crown; Michael O'Leary; Wei-Seong Ooi
Journal:  Oncologist       Date:  2004

10.  Tumour-promoting activity of altered WWP1 expression in breast cancer and its utility as a prognostic indicator.

Authors:  N S Nguyen Huu; W D J Ryder; N Zeps; M Flasza; M Chiu; A M Hanby; R Poulsom; R B Clarke; M Baron
Journal:  J Pathol       Date:  2008-09       Impact factor: 7.996

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  30 in total

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Authors:  Peter T Campbell; Timothy R Rebbeck; Reiko Nishihara; Andrew H Beck; Colin B Begg; Alexei A Bogdanov; Yin Cao; Helen G Coleman; Gordon J Freeman; Yujing J Heng; Curtis Huttenhower; Rafael A Irizarry; N Sertac Kip; Franziska Michor; Daniel Nevo; Ulrike Peters; Amanda I Phipps; Elizabeth M Poole; Zhi Rong Qian; John Quackenbush; Harlan Robins; Peter K Rogan; Martha L Slattery; Stephanie A Smith-Warner; Mingyang Song; Tyler J VanderWeele; Daniel Xia; Emily C Zabor; Xuehong Zhang; Molin Wang; Shuji Ogino
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4.  Bioinformatics analysis of gene expression profiles to identify causal genes in luminal B2 breast cancer.

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5.  Prediction of novel target genes and pathways involved in irinotecan-resistant colorectal cancer.

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Journal:  PLoS One       Date:  2017-07-27       Impact factor: 3.240

6.  A probabilistic pathway score (PROPS) for classification with applications to inflammatory bowel disease.

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7.  Predicting Outcomes of Hormone and Chemotherapy in the Molecular Taxonomy of Breast Cancer International Consortium (METABRIC) Study by Biochemically-inspired Machine Learning.

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8.  Influence of wound fluid on chemotherapy sensitivity in primary breast cancer cells.

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9.  Predicting ionizing radiation exposure using biochemically-inspired genomic machine learning.

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10.  Thymoquinone synergizes gemcitabine anti-breast cancer activity via modulating its apoptotic and autophagic activities.

Authors:  Hanan A Bashmail; Aliaa A Alamoudi; Abdulwahab Noorwali; Gehan A Hegazy; Ghada AJabnoor; Hani Choudhry; Ahmed M Al-Abd
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