Literature DB >> 25344583

Pharmacological profiling of kinase dependency in cell lines across triple-negative breast cancer subtypes.

Lauren S Fink1, Alexander Beatty1, Karthik Devarajan2, Suraj Peri2, Jeffrey R Peterson3.   

Abstract

Triple-negative breast cancers (TNBC), negative for estrogen receptor, progesterone receptor, and ERBB2 amplification, are resistant to standard targeted therapies and exhibit a poor prognosis. Furthermore, they are highly heterogeneous with respect to genomic alterations, and common therapeutic targets are lacking though substantial evidence implicates dysregulated kinase signaling. Recently, six subtypes of TNBC were identified based on gene expression and were proposed to predict sensitivity to a variety of therapeutic agents including kinase inhibitors. To test this hypothesis, we screened a large collection of well-characterized, small molecule kinase inhibitors for growth inhibition in a panel of TNBC cell lines representing all six subtypes. Sensitivity to kinase inhibition correlated poorly with TNBC subtype. Instead, unsupervised clustering segregated TNBC cell lines according to clinically relevant features including dependence on epidermal growth factor signaling and mutation of the PTEN tumor suppressor. We further report the discovery of kinase inhibitors with selective toxicity to these groups. Overall, however, TNBC cell lines exhibited diverse sensitivity to kinase inhibition consistent with the lack of common driver mutations in this disease. Although our findings support specific kinase dependencies in subsets of TNBC, they are not associated with gene expression-based subtypes. Instead, we find that mutation status can be an effective predictor of sensitivity to inhibition of particular kinase pathways for subsets of TNBC. ©2014 American Association for Cancer Research.

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Year:  2014        PMID: 25344583      PMCID: PMC4297247          DOI: 10.1158/1535-7163.MCT-14-0529

Source DB:  PubMed          Journal:  Mol Cancer Ther        ISSN: 1535-7163            Impact factor:   6.261


  52 in total

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5.  Fes tyrosine kinase expression in the tumor niche correlates with enhanced tumor growth, angiogenesis, circulating tumor cells, metastasis, and infiltrating macrophages.

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Authors:  Tongrui Liu; Rami Yacoub; LaTonia D Taliaferro-Smith; Shi-Yong Sun; Tisheeka R Graham; Ryan Dolan; Christine Lobo; Mourad Tighiouart; Lily Yang; Amy Adams; Ruth M O'Regan
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Journal:  Breast Dis       Date:  2010

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10.  Frequent PTEN genomic alterations and activated phosphatidylinositol 3-kinase pathway in basal-like breast cancer cells.

Authors:  Bérengère Marty; Virginie Maire; Eléonore Gravier; Guillem Rigaill; Anne Vincent-Salomon; Marion Kappler; Ingrid Lebigot; Fathia Djelti; Audrey Tourdès; Pierre Gestraud; Philippe Hupé; Emmanuel Barillot; Francisco Cruzalegui; Gordon C Tucker; Marc-Henri Stern; Jean-Paul Thiery; John A Hickman; Thierry Dubois
Journal:  Breast Cancer Res       Date:  2008-12-03       Impact factor: 6.466

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Review 2.  Metabolic advantages and vulnerabilities in brain metastases.

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4.  An integrated bioinformatics analysis to dissect kinase dependency in triple negative breast cancer.

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6.  Differential responses to kinase inhibition in FGFR2-addicted triple negative breast cancer cells: a quantitative phosphoproteomics study.

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7.  Analysis of PIK3CA Mutations and Activation Pathways in Triple Negative Breast Cancer.

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8.  Network modeling of kinase inhibitor polypharmacology reveals pathways targeted in chemical screens.

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9.  Progress towards a public chemogenomic set for protein kinases and a call for contributions.

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  9 in total

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