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Dive into the research topics where Nora Bayani is active.

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Featured researches published by Nora Bayani.


Cancer Research | 2009

Basal Subtype and MAPK/ERK Kinase (MEK)-Phosphoinositide 3-Kinase Feedback Signaling Determine Susceptibility of Breast Cancer Cells to MEK Inhibition

Olga K. Mirzoeva; Debopriya Das; Laura M. Heiser; Sanchita Bhattacharya; Doris R. Siwak; Rina Gendelman; Nora Bayani; Nicholas Wang; Richard M. Neve; Yinghui Guan; Zhi Hu; Zachary A. Knight; Heidi S. Feiler; Philippe Gascard; Bahram Parvin; Paul T. Spellman; Kevan M. Shokat; Andrew J. Wyrobek; Mina J. Bissell; Frank McCormick; Wen Lin Kuo; Gordon B. Mills; Joe W. Gray; W. Michael Korn

Specific inhibitors of mitogen-activated protein kinase/extracellular signal-regulated kinase (ERK) kinase (MEK) have been developed that efficiently inhibit the oncogenic RAF-MEK-ERK pathway. We used a systems-based approach to identify breast cancer subtypes particularly susceptible to MEK inhibitors and to understand molecular mechanisms conferring resistance to such compounds. Basal-type breast cancer cells were found to be particularly susceptible to growth inhibition by small-molecule MEK inhibitors. Activation of the phosphatidylinositol 3-kinase (PI3K) pathway in response to MEK inhibition through a negative MEK-epidermal growth factor receptor-PI3K feedback loop was found to limit efficacy. Interruption of this feedback mechanism by targeting MEK and PI3K produced synergistic effects, including induction of apoptosis and, in some cell lines, cell cycle arrest and protection from apoptosis induced by proapoptotic agents. These findings enhance our understanding of the interconnectivity of oncogenic signal transduction circuits and have implications for the design of future clinical trials of MEK inhibitors in breast cancer by guiding patient selection and suggesting rational combination therapies.


Proceedings of the National Academy of Sciences of the United States of America | 2012

Subtype and pathway specific responses to anticancer compounds in breast cancer

Laura M. Heiser; Anguraj Sadanandam; Wen-Lin Kuo; Stephen Charles Benz; Theodore C. Goldstein; Sam Ng; William J. Gibb; Nicholas Wang; Safiyyah Ziyad; Frances Tong; Nora Bayani; Zhi Hu; Jessica Billig; Andrea Dueregger; Sophia Lewis; Lakshmi Jakkula; James E. Korkola; Steffen Durinck; Francois Pepin; Yinghui Guan; Elizabeth Purdom; Pierre Neuvial; Henrik Bengtsson; Kenneth W. Wood; Peter G. Smith; Lyubomir T. Vassilev; Bryan T. Hennessy; Joel Greshock; Kurtis E. Bachman; Mary Ann Hardwicke

Breast cancers are comprised of molecularly distinct subtypes that may respond differently to pathway-targeted therapies now under development. Collections of breast cancer cell lines mirror many of the molecular subtypes and pathways found in tumors, suggesting that treatment of cell lines with candidate therapeutic compounds can guide identification of associations between molecular subtypes, pathways, and drug response. In a test of 77 therapeutic compounds, nearly all drugs showed differential responses across these cell lines, and approximately one third showed subtype-, pathway-, and/or genomic aberration-specific responses. These observations suggest mechanisms of response and resistance and may inform efforts to develop molecular assays that predict clinical response.


Breast Cancer Research | 2010

The expression level of HJURP has an independent prognostic impact and predicts the sensitivity to radiotherapy in breast cancer

Zhi Hu; Ge Huang; Anguraj Sadanandam; Shenda Gu; Marc E. Lenburg; Melody Pai; Nora Bayani; Eleanor A. Blakely; Joe W. Gray; Jian-Hua Mao

IntroductionHJURP (Holliday Junction Recognition Protein) is a newly discovered gene reported to function at centromeres and to interact with CENPA. However its role in tumor development remains largely unknown. The goal of this study was to investigate the clinical significance of HJURP in breast cancer and its correlation with radiotherapeutic outcome.MethodsWe measured HJURP expression level in human breast cancer cell lines and primary breast cancers by Western blot and/or by Affymetrix Microarray; and determined its associations with clinical variables using standard statistical methods. Validation was performed with the use of published microarray data. We assessed cell growth and apoptosis of breast cancer cells after radiation using high-content image analysis.ResultsHJURP was expressed at higher level in breast cancer than in normal breast tissue. HJURP mRNA levels were significantly associated with estrogen receptor (ER), progesterone receptor (PR), Scarff-Bloom-Richardson (SBR) grade, age and Ki67 proliferation indices, but not with pathologic stage, ERBB2, tumor size, or lymph node status. Higher HJURP mRNA levels significantly decreased disease-free and overall survival. HJURP mRNA levels predicted the prognosis better than Ki67 proliferation indices. In a multivariate Cox proportional-hazard regression, including clinical variables as covariates, HJURP mRNA levels remained an independent prognostic factor for disease-free and overall survival. In addition HJURP mRNA levels were an independent prognostic factor over molecular subtypes (normal like, luminal, Erbb2 and basal). Poor clinical outcomes among patients with high HJURP expression were validated in five additional breast cancer cohorts. Furthermore, the patients with high HJURP levels were much more sensitive to radiotherapy. In vitro studies in breast cancer cell lines showed that cells with high HJURP levels were more sensitive to radiation treatment and had a higher rate of apoptosis than those with low levels. Knock down of HJURP in human breast cancer cells using shRNA reduced the sensitivity to radiation treatment. HJURP mRNA levels were significantly correlated with CENPA mRNA levels.ConclusionsHJURP mRNA level is a prognostic factor for disease-free and overall survival in patients with breast cancer and is a predictive biomarker for sensitivity to radiotherapy.


BMC Medicine | 2009

A systems analysis of the chemosensitivity of breast cancer cells to the polyamine analogue PG-11047

Wen Lin Kuo; Debopriya Das; Safiyyah Ziyad; Sanchita Bhattacharya; William J. Gibb; Laura M. Heiser; Anguraj Sadanandam; Gerald Fontenay; Zhi Hu; Nicholas Wang; Nora Bayani; Heidi S. Feiler; Richard M. Neve; Andrew J. Wyrobek; Paul T. Spellman; Laurence J. Marton; Joe W. Gray

BackgroundPolyamines regulate important cellular functions and polyamine dysregulation frequently occurs in cancer. The objective of this study was to use a systems approach to study the relative effects of PG-11047, a polyamine analogue, across breast cancer cells derived from different patients and to identify genetic markers associated with differential cytotoxicity.MethodsA panel of 48 breast cell lines that mirror many transcriptional and genomic features present in primary human breast tumours were used to study the antiproliferative activity of PG-11047. Sensitive cell lines were further examined for cell cycle distribution and apoptotic response. Cell line responses, quantified by the GI50 (dose required for 50% relative growth inhibition) were correlated with the omic profiles of the cell lines to identify markers that predict response and cellular functions associated with drug sensitivity.ResultsThe concentrations of PG-11047 needed to inhibit growth of members of the panel of breast cell lines varied over a wide range, with basal-like cell lines being inhibited at lower concentrations than the luminal cell lines. Sensitive cell lines showed a significant decrease in S phase fraction at doses that produced little apoptosis. Correlation of the GI50 values with the omic profiles of the cell lines identified genomic, transcriptional and proteomic variables associated with response.ConclusionsA 13-gene transcriptional marker set was developed as a predictor of response to PG-11047 that warrants clinical evaluation. Analyses of the pathways, networks and genes associated with response to PG-11047 suggest that response may be influenced by interferon signalling and differential inhibition of aspects of motility and epithelial to mesenchymal transition.See the related commentary by Benes and Settleman: http://www.biomedcentral.com/1741-7015/7/78


Bioinformatics | 2014

Causal network inference using biochemical kinetics

Chris J. Oates; Frank Dondelinger; Nora Bayani; James E. Korkola; Joe W. Gray; Sach Mukherjee

Motivation: Networks are widely used as structural summaries of biochemical systems. Statistical estimation of networks is usually based on linear or discrete models. However, the dynamics of biochemical systems are generally non-linear, suggesting that suitable non-linear formulations may offer gains with respect to causal network inference and aid in associated prediction problems. Results: We present a general framework for network inference and dynamical prediction using time course data that is rooted in non-linear biochemical kinetics. This is achieved by considering a dynamical system based on a chemical reaction graph with associated kinetic parameters. Both the graph and kinetic parameters are treated as unknown; inference is carried out within a Bayesian framework. This allows prediction of dynamical behavior even when the underlying reaction graph itself is unknown or uncertain. Results, based on (i) data simulated from a mechanistic model of mitogen-activated protein kinase signaling and (ii) phosphoproteomic data from cancer cell lines, demonstrate that non-linear formulations can yield gains in causal network inference and permit dynamical prediction and uncertainty quantification in the challenging setting where the reaction graph is unknown. Availability and implementation: MATLAB R2014a software is available to download from warwick.ac.uk/chrisoates. Contact: [email protected] or [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


BMC Bioinformatics | 2012

Integrating biological knowledge into variable selection: an empirical Bayes approach with an application in cancer biology

Steven M. Hill; Richard M. Neve; Nora Bayani; Wen Lin Kuo; Safiyyah Ziyad; Paul T. Spellman; Joe W. Gray; Sach Mukherjee

BackgroundAn important question in the analysis of biochemical data is that of identifying subsets of molecular variables that may jointly influence a biological response. Statistical variable selection methods have been widely used for this purpose. In many settings, it may be important to incorporate ancillary biological information concerning the variables of interest. Pathway and network maps are one example of a source of such information. However, although ancillary information is increasingly available, it is not always clear how it should be used nor how it should be weighted in relation to primary data.ResultsWe put forward an approach in which biological knowledge is incorporated using informative prior distributions over variable subsets, with prior information selected and weighted in an automated, objective manner using an empirical Bayes formulation. We employ continuous, linear models with interaction terms and exploit biochemically-motivated sparsity constraints to permit exact inference. We show an example of priors for pathway- and network-based information and illustrate our proposed method on both synthetic response data and by an application to cancer drug response data. Comparisons are also made to alternative Bayesian and frequentist penalised-likelihood methods for incorporating network-based information.ConclusionsThe empirical Bayes method proposed here can aid prior elicitation for Bayesian variable selection studies and help to guard against mis-specification of priors. Empirical Bayes, together with the proposed pathway-based priors, results in an approach with a competitive variable selection performance. In addition, the overall procedure is fast, deterministic, and has very few user-set parameters, yet is capable of capturing interplay between molecular players. The approach presented is general and readily applicable in any setting with multiple sources of biological prior knowledge.


PLOS ONE | 2015

Decoupling of the PI3K pathway via mutation necessitates combinatorial treatment in HER2+ breast cancer

James E. Korkola; Eric A. Collisson; Laura M. Heiser; Chris J. Oates; Nora Bayani; Sleiman Itani; Amanda Esch; Wallace Thompson; Obi L. Griffith; Nicholas Wang; Wen-Lin Kuo; Brian Cooper; Jessica Billig; Safiyyah Ziyad; Jenny L. Hung; Lakshmi Jakkula; Heidi S. Feiler; Yiling Lu; Gordon B. Mills; Paul T. Spellman; Claire J. Tomlin; Sach Mukherjee; Joe W. Gray

We report here on experimental and theoretical efforts to determine how best to combine drugs that inhibit HER2 and AKT in HER2+ breast cancers. We accomplished this by measuring cellular and molecular responses to lapatinib and the AKT inhibitors (AKTi) GSK690693 and GSK2141795 in a panel of 22 HER2+ breast cancer cell lines carrying wild type or mutant PIK3CA. We observed that combinations of lapatinib plus AKTi were synergistic in HER2+/PIK3CAmut cell lines but not in HER2+/PIK3CAwt cell lines. We measured changes in phospho-protein levels in 15 cell lines after treatment with lapatinib, AKTi or lapatinib + AKTi to shed light on the underlying signaling dynamics. This revealed that p-S6RP levels were less well attenuated by lapatinib in HER2+/PIK3CAmut cells compared to HER2+/PIK3CAwt cells and that lapatinib + AKTi reduced p-S6RP levels to those achieved in HER2+/PIK3CAwt cells with lapatinib alone. We also found that that compensatory up-regulation of p-HER3 and p-HER2 is blunted in PIK3CAmut cells following lapatinib + AKTi treatment. Responses of HER2+ SKBR3 cells transfected with lentiviruses carrying control or PIK3CAmut sequences were similar to those observed in HER2+/PIK3CAmut cell lines but not in HER2+/PIK3CAwt cell lines. We used a nonlinear ordinary differential equation model to support the idea that PIK3CA mutations act as downstream activators of AKT that blunt lapatinib inhibition of downstream AKT signaling and that the effects of PIK3CA mutations can be countered by combining lapatinib with an AKTi. This combination does not confer substantial benefit beyond lapatinib in HER2+/PIK3CAwt cells.


The Open Cancer Journal | 2010

ERBB receptor regulation of ESX/ELF3 promotes invasion in breast epithelial cells

Jean Philippe Coppe; Clifton Amend; Jeremy R. Semeiks; Frederick L. Baehner; Nora Bayani; Judith Campisi; Christopher C. Benz; Joe W. Gray; Richard M. Neve

ERBB2 amplification and overexpression in human breast cancer is associated with poor outcome. However, over-expression of ERBB2 alone is an early event in breast tumorigenesis, suggesting secondary events are required for progression. Here we demonstrate that the Ets transcription factor, ESX, induces an invasive phenotype in breast epithelial cells mediated through transcriptional targets of ESX. In non-transformed cells this process is regulated by EGF signaling. Expression of ERBB2 facilitates EGF-independent regulation of ESX levels, thus promoting invasion. Our data define mechanisms by which ERBB2 overexpression promotes breast cancer invasiveness and progression, and provide a model to understand the clinical behavior of this subset of human tumors and identify potential therapeutic targets to improve patient outcome.


Breast Cancer Research | 2016

Genome co-amplification upregulates a mitotic gene network activity that predicts outcome and response to mitotic protein inhibitors in breast cancer

Zhi Hu; Jian-Hua Mao; Christina Curtis; Ge Huang; Shenda Gu; Laura M. Heiser; Marc E. Lenburg; James E. Korkola; Nora Bayani; Shamith Samarajiwa; Jose A. Seoane; Mark A. Dane; Amanda Esch; Heidi S. Feiler; Nicholas Wang; Mary Ann Hardwicke; Sylvie Laquerre; Jeff Jackson; Kenneth W. Wood; Barbara L. Weber; Paul T. Spellman; Samuel Aparicio; Richard Wooster; Carlos Caldas; Joe W. Gray

BackgroundHigh mitotic activity is associated with the genesis and progression of many cancers. Small molecule inhibitors of mitotic apparatus proteins are now being developed and evaluated clinically as anticancer agents. With clinical trials of several of these experimental compounds underway, it is important to understand the molecular mechanisms that determine high mitotic activity, identify tumor subtypes that carry molecular aberrations that confer high mitotic activity, and to develop molecular markers that distinguish which tumors will be most responsive to mitotic apparatus inhibitors.MethodsWe identified a coordinately regulated mitotic apparatus network by analyzing gene expression profiles for 53 malignant and non-malignant human breast cancer cell lines and two separate primary breast tumor datasets. We defined the mitotic network activity index (MNAI) as the sum of the transcriptional levels of the 54 coordinately regulated mitotic apparatus genes. The effect of those genes on cell growth was evaluated by small interfering RNA (siRNA).ResultsHigh MNAI was enriched in basal-like breast tumors and was associated with reduced survival duration and preferential sensitivity to inhibitors of the mitotic apparatus proteins, polo-like kinase, centromere associated protein E and aurora kinase designated GSK462364, GSK923295 and GSK1070916, respectively. Co-amplification of regions of chromosomes 8q24, 10p15-p12, 12p13, and 17q24-q25 was associated with the transcriptional upregulation of this network of 54 mitotic apparatus genes, and we identify transcription factors that localize to these regions and putatively regulate mitotic activity. Knockdown of the mitotic network by siRNA identified 22 genes that might be considered as additional therapeutic targets for this clinically relevant patient subgroup.ConclusionsWe define a molecular signature which may guide therapeutic approaches for tumors with high mitotic network activity.


Nature Chemical Biology | 2018

Kinome rewiring reveals AURKA limits PI3K-pathway inhibitor efficacy in breast cancer

Hayley J. Donnella; James T. Webber; Rebecca S. Levin; Roman Camarda; Olga Momcilovic; Nora Bayani; Khyati N. Shah; James E. Korkola; Kevan M. Shokat; Andrei Goga; John D. Gordan; Sourav Bandyopadhyay

AbstractDysregulation of the PI3K-AKT-mTOR signaling network is a prominent feature of breast cancers. However, clinical responses to drugs targeting this pathway have been modest, possibly because of dynamic changes in cellular signaling that drive resistance and limit drug efficacy. Using a quantitative chemoproteomics approach, we mapped kinome dynamics in response to inhibitors of this pathway and identified signaling changes that correlate with drug sensitivity. Maintenance of AURKA after drug treatment was associated with resistance in breast cancer models. Incomplete inhibition of AURKA was a common source of therapy failure, and combinations of PI3K, AKT or mTOR inhibitors with the AURKA inhibitor MLN8237 were highly synergistic and durably suppressed mTOR signaling, resulting in apoptosis and tumor regression in vivo. This signaling map identifies survival factors whose presence limits the efficacy of targeted therapies and reveals new drug combinations that may unlock the full potential of PI3K–AKT–mTOR pathway inhibitors in breast cancer.Proteomic mapping of dynamic changes in kinase signaling after drug treatment identifies that AURKA inhibition is required for drug sensitivity, representing a new co-targeting opportunity with PI3K, AKT, or mTOR inhibitors in breast cancer.

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Joe W. Gray

University of Texas MD Anderson Cancer Center

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Paul T. Spellman

Lawrence Berkeley National Laboratory

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Heidi S. Feiler

Lawrence Berkeley National Laboratory

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Zhi Hu

Lawrence Berkeley National Laboratory

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Safiyyah Ziyad

Lawrence Berkeley National Laboratory

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Wen-Lin Kuo

University of California

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Richard M. Neve

Buck Institute for Research on Aging

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