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Dive into the research topics where Armand Bankhead is active.

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Featured researches published by Armand Bankhead.


Cancer Research | 2013

Kinase pathway dependence in primary human leukemias determined by rapid inhibitor screening.

Jeffrey W. Tyner; Wayne F. Yang; Armand Bankhead; Guang Fan; Luke B. Fletcher; Jade Bryant; Jason Glover; Bill H. Chang; Stephen E. Spurgeon; William H. Fleming; Tibor Kovacsovics; Jason Gotlib; Stephen T. Oh; Michael W. Deininger; Christian M. Zwaan; Monique L. den Boer; Marry M. van den Heuvel-Eibrink; Thomas O'Hare; Brian J. Druker; Marc Loriaux

Kinases are dysregulated in most cancers, but the frequency of specific kinase mutations is low, indicating a complex etiology in kinase dysregulation. Here, we report a strategy to rapidly identify functionally important kinase targets, irrespective of the etiology of kinase pathway dysregulation, ultimately enabling a correlation of patient genetic profiles to clinically effective kinase inhibitors. Our methodology assessed the sensitivity of primary leukemia patient samples to a panel of 66 small-molecule kinase inhibitors over 3 days. Screening of 151 leukemia patient samples revealed a wide diversity of drug sensitivities, with 70% of the clinical specimens exhibiting hypersensitivity to one or more drugs. From this data set, we developed an algorithm to predict kinase pathway dependence based on analysis of inhibitor sensitivity patterns. Applying this algorithm correctly identified pathway dependence in proof-of-principle specimens with known oncogenes, including a rare FLT3 mutation outside regions covered by standard molecular diagnostic tests. Interrogation of all 151 patient specimens with this algorithm identified a diversity of kinase targets and signaling pathways that could aid prioritization of deep sequencing data sets, permitting a cumulative analysis to understand kinase pathway dependence within leukemia subsets. In a proof-of-principle case, we showed that in vitro drug sensitivity could predict both a clinical response and the development of drug resistance. Taken together, our results suggested that drug target scores derived from a comprehensive kinase inhibitor panel could predict pathway dependence in cancer cells while simultaneously identifying potential therapeutic options.


Journal of Virology | 2011

Host Regulatory Network Response to Infection with Highly Pathogenic H5N1 Avian Influenza Virus

Chengjun Li; Armand Bankhead; Amie J. Eisfeld; Yasuko Hatta; Sophia Jeng; Jean H. Chang; Lauri D. Aicher; Sean Proll; Amy L. Ellis; G. Lynn Law; Katrina M. Waters; Gabriele Neumann; Michael G. Katze; Shannon McWeeney; Yoshihiro Kawaoka

ABSTRACT During the last decade, more than half of humans infected with highly pathogenic avian influenza (HPAI) H5N1 viruses have died, yet virus-induced host signaling has yet to be clearly elucidated. Airway epithelia are known to produce inflammatory mediators that contribute to HPAI H5N1-mediated pathogenicity, but a comprehensive analysis of the host response in this cell type is lacking. Here, we leveraged a system approach to identify and statistically validate signaling subnetworks that define the dynamic transcriptional response of human bronchial epithelial cells after infection with influenza A/Vietnam/1203/2004 (H5N1, VN1203). Importantly, we validated a subset of transcripts from one subnetwork in both Calu-3 cells and mice. A more detailed examination of two subnetworks involved in the immune response and keratinization processes revealed potential novel mediators of HPAI H5N1 pathogenesis and host response signaling. Finally, we show how these results compare to those for a less virulent strain of influenza virus. Using emergent network properties, we provide fresh insight into the host response to HPAI H5N1 virus infection and identify novel avenues for perturbation studies and potential therapeutic interventions for fatal HPAI H5N1 disease.


Mbio | 2013

Mechanisms of Severe Acute Respiratory Syndrome Coronavirus-Induced Acute Lung Injury

Lisa E. Gralinski; Armand Bankhead; Sophia Jeng; Vineet D. Menachery; Sean Proll; Sarah E. Belisle; Melissa M. Matzke; Bobbie Jo M Webb-Robertson; Maria L. Luna; Anil K. Shukla; Martin T. Ferris; Meagan Bolles; Jean Chang; Lauri D. Aicher; Katrina M. Waters; Richard D. Smith; Thomas O. Metz; G. Lynn Law; Michael G. Katze; Shannon McWeeney; Ralph S. Baric

ABSTRACT Systems biology offers considerable promise in uncovering novel pathways by which viruses and other microbial pathogens interact with host signaling and expression networks to mediate disease severity. In this study, we have developed an unbiased modeling approach to identify new pathways and network connections mediating acute lung injury, using severe acute respiratory syndrome coronavirus (SARS-CoV) as a model pathogen. We utilized a time course of matched virologic, pathological, and transcriptomic data within a novel methodological framework that can detect pathway enrichment among key highly connected network genes. This unbiased approach produced a high-priority list of 4 genes in one pathway out of over 3,500 genes that were differentially expressed following SARS-CoV infection. With these data, we predicted that the urokinase and other wound repair pathways would regulate lethal versus sublethal disease following SARS-CoV infection in mice. We validated the importance of the urokinase pathway for SARS-CoV disease severity using genetically defined knockout mice, proteomic correlates of pathway activation, and pathological disease severity. The results of these studies demonstrate that a fine balance exists between host coagulation and fibrinolysin pathways regulating pathological disease outcomes, including diffuse alveolar damage and acute lung injury, following infection with highly pathogenic respiratory viruses, such as SARS-CoV. IMPORTANCE Severe acute respiratory syndrome coronavirus (SARS-CoV) emerged in 2002 and 2003, and infected patients developed an atypical pneumonia, acute lung injury (ALI), and acute respiratory distress syndrome (ARDS) leading to pulmonary fibrosis and death. We identified sets of differentially expressed genes that contribute to ALI and ARDS using lethal and sublethal SARS-CoV infection models. Mathematical prioritization of our gene sets identified the urokinase and extracellular matrix remodeling pathways as the most enriched pathways. By infecting Serpine1-knockout mice, we showed that the urokinase pathway had a significant effect on both lung pathology and overall SARS-CoV pathogenesis. These results demonstrate the effective use of unbiased modeling techniques for identification of high-priority host targets that regulate disease outcomes. Similar transcriptional signatures were noted in 1918 and 2009 H1N1 influenza virus-infected mice, suggesting a common, potentially treatable mechanism in development of virus-induced ALI. Severe acute respiratory syndrome coronavirus (SARS-CoV) emerged in 2002 and 2003, and infected patients developed an atypical pneumonia, acute lung injury (ALI), and acute respiratory distress syndrome (ARDS) leading to pulmonary fibrosis and death. We identified sets of differentially expressed genes that contribute to ALI and ARDS using lethal and sublethal SARS-CoV infection models. Mathematical prioritization of our gene sets identified the urokinase and extracellular matrix remodeling pathways as the most enriched pathways. By infecting Serpine1-knockout mice, we showed that the urokinase pathway had a significant effect on both lung pathology and overall SARS-CoV pathogenesis. These results demonstrate the effective use of unbiased modeling techniques for identification of high-priority host targets that regulate disease outcomes. Similar transcriptional signatures were noted in 1918 and 2009 H1N1 influenza virus-infected mice, suggesting a common, potentially treatable mechanism in development of virus-induced ALI.


Journal of Virology | 2013

Release of Severe Acute Respiratory Syndrome Coronavirus Nuclear Import Block Enhances Host Transcription in Human Lung Cells

Amy C. Sims; Susan C. Tilton; Vineet D. Menachery; Lisa E. Gralinski; Alexandra Schäfer; Melissa M. Matzke; Bobbie Jo M Webb-Robertson; Jean Chang; Maria L. Luna; Casey E. Long; Anil K. Shukla; Armand Bankhead; Susan E. Burkett; Gregory A. Zornetzer; Chien Te K Tseng; Thomas O. Metz; Raymond J. Pickles; Shannon McWeeney; Richard D. Smith; Michael G. Katze; Katrina M. Waters; Ralph S. Barica

ABSTRACT The severe acute respiratory syndrome coronavirus accessory protein ORF6 antagonizes interferon signaling by blocking karyopherin-mediated nuclear import processes. Viral nuclear import antagonists, expressed by several highly pathogenic RNA viruses, likely mediate pleiotropic effects on host gene expression, presumably interfering with transcription factors, cytokines, hormones, and/or signaling cascades that occur in response to infection. By bioinformatic and systems biology approaches, we evaluated the impact of nuclear import antagonism on host expression networks by using human lung epithelial cells infected with either wild-type virus or a mutant that does not express ORF6 protein. Microarray analysis revealed significant changes in differential gene expression, with approximately twice as many upregulated genes in the mutant virus samples by 48 h postinfection, despite identical viral titers. Our data demonstrated that ORF6 protein expression attenuates the activity of numerous karyopherin-dependent host transcription factors (VDR, CREB1, SMAD4, p53, EpasI, and Oct3/4) that are critical for establishing antiviral responses and regulating key host responses during virus infection. Results were confirmed by proteomic and chromatin immunoprecipitation assay analyses and in parallel microarray studies using infected primary human airway epithelial cell cultures. The data strongly support the hypothesis that viral antagonists of nuclear import actively manipulate host responses in specific hierarchical patterns, contributing to the viral pathogenic potential in vivo. Importantly, these studies and modeling approaches not only provide templates for evaluating virus antagonism of nuclear import processes but also can reveal candidate cellular genes and pathways that may significantly influence disease outcomes following severe acute respiratory syndrome coronavirus infection in vivo.


Scientific Data | 2014

A comprehensive collection of systems biology data characterizing the host response to viral infection

Brian D. Aevermann; Brett E. Pickett; Sanjeev Kumar; Edward B. Klem; Sudhakar Agnihothram; Peter S. Askovich; Armand Bankhead; Meagen Bolles; Victoria S. Carter; Jean Chang; Therese R. Clauss; Pradyot Dash; Alan H. Diercks; Amie J. Eisfeld; Amy B. Ellis; Shufang Fan; Martin T. Ferris; Lisa E. Gralinski; Richard Green; Marina A. Gritsenko; Masato Hatta; Robert A. Heegel; Jon M. Jacobs; Sophia Jeng; Laurence Josset; Shari M. Kaiser; Sara Kelly; G. Lynn Law; Chengjun Li; Jiangning Li

The Systems Biology for Infectious Diseases Research program was established by the U.S. National Institute of Allergy and Infectious Diseases to investigate host-pathogen interactions at a systems level. This program generated 47 transcriptomic and proteomic datasets from 30 studies that investigate in vivo and in vitro host responses to viral infections. Human pathogens in the Orthomyxoviridae and Coronaviridae families, especially pandemic H1N1 and avian H5N1 influenza A viruses and severe acute respiratory syndrome coronavirus (SARS-CoV), were investigated. Study validation was demonstrated via experimental quality control measures and meta-analysis of independent experiments performed under similar conditions. Primary assay results are archived at the GEO and PeptideAtlas public repositories, while processed statistical results together with standardized metadata are publically available at the Influenza Research Database (www.fludb.org) and the Virus Pathogen Resource (www.viprbrc.org). By comparing data from mutant versus wild-type virus and host strains, RNA versus protein differential expression, and infection with genetically similar strains, these data can be used to further investigate genetic and physiological determinants of host responses to viral infection.


Pharmacological Reviews | 2018

Current Challenges and Opportunities in Treating Glioblastoma

Andrea Shergalis; Armand Bankhead; Urarika Luesakul; Nongnuj Muangsin; Nouri Neamati

Glioblastoma multiforme (GBM), the most common and aggressive primary brain tumor, has a high mortality rate despite extensive efforts to develop new treatments. GBM exhibits both intra- and intertumor heterogeneity, lending to resistance and eventual tumor recurrence. Large-scale genomic and proteomic analysis of GBM tumors has uncovered potential drug targets. Effective and “druggable” targets must be validated to embark on a robust medicinal chemistry campaign culminating in the discovery of clinical candidates. Here, we review recent developments in GBM drug discovery and delivery. To identify GBM drug targets, we performed extensive bioinformatics analysis using data from The Cancer Genome Atlas project. We discovered 20 genes, BOC, CLEC4GP1, ELOVL6, EREG, ESR2, FDCSP, FURIN, FUT8-AS1, GZMB, IRX3, LITAF, NDEL1, NKX3-1, PODNL1, PTPRN, QSOX1, SEMA4F, TH, VEGFC, and C20orf166AS1 that are overexpressed in a subpopulation of GBM patients and correlate with poor survival outcomes. Importantly, nine of these genes exhibit higher expression in GBM versus low-grade glioma and may be involved in disease progression. In this review, we discuss these proteins in the context of GBM disease progression. We also conducted computational multi-parameter optimization to assess the blood-brain barrier (BBB) permeability of small molecules in clinical trials for GBM treatment. Drug delivery in the context of GBM is particularly challenging because the BBB hinders small molecule transport. Therefore, we discuss novel drug delivery methods, including nanoparticles and prodrugs. Given the aggressive nature of GBM and the complexity of targeting the central nervous system, effective treatment options are a major unmet medical need. Identification and validation of biomarkers and drug targets associated with GBM disease progression present an exciting opportunity to improve treatment of this devastating disease.


Journal of Computational Science | 2013

A simulation framework to investigate in vitro viral infection dynamics

Armand Bankhead; Emiliano Mancini; Amy C. Sims; Ralph S. Baric; Shannon McWeeney; Peter M. A. Sloot

Abstract Virus infection is a complex biological phenomenon for which in vitro experiments provide a uniquely concise view where data is often obtained from a single population of cells, under controlled environmental conditions. Nonetheless, data interpretation and real understanding of viral dynamics is still hampered by the sheer complexity of the various intertwined spatio-temporal processes. In this paper we present a tool to address these issues: a cellular automata model describing critical aspects of in vitro viral infections taking into account spatial characteristics of virus spreading within a culture well. The aim of the model is to understand the key mechanisms of SARS-CoV infection dynamics during the first 24h post infection. Using a simulated annealing algorithm we tune free parameters with data from SARS-CoV infection of cultured lung epithelial cells. We also interrogate the model using a Latin Hypercube sensitivity analysis to identify which mechanisms are critical to the observed infection of host cells and the release of measured virus particles.


Proceedings of the National Academy of Sciences of the United States of America | 2018

LSD1 activates a lethal prostate cancer gene network independently of its demethylase function

Archana Sehrawat; Lina Gao; Yuliang Wang; Armand Bankhead; Shannon McWeeney; Carly J. King; Jacob Schwartzman; Joshua Urrutia; William H. Bisson; Daniel J. Coleman; Sunil K. Joshi; Dae Hwan Kim; David A. Sampson; Sheila Weinmann; Bhaskar Kallakury; Deborah L. Berry; Reina Haque; Stephen K. Van Den Eeden; Sunil Sharma; Jared Bearss; Tomasz M. Beer; George Thomas; Laura M. Heiser; Joshi J. Alumkal

Significance Medical castration or interference with androgen receptor (AR) function is the principal treatment for advanced prostate cancer. However, progression is universal, and therapies following the emergence of castration resistance do not offer durable control of the disease. Lysine-specific demethylase 1 (LSD1) is an important regulator of gene expression, including in cancer. Here, we show that LSD1 is highly expressed in tumors of patients with lethal castration-resistant prostate cancer (CRPC) and that LSD1 promotes AR-independent survival in CRPC cells in a noncanonical, demethylase-independent manner. We determined that the drug SP-2509 acts as an allosteric inhibitor of LSD1–blocking demethylase-independent functions. Our demonstration of tumor suppression with this inhibitor in CRPC preclinical models provides the rationale for clinical trials with LSD1 inhibitors. Medical castration that interferes with androgen receptor (AR) function is the principal treatment for advanced prostate cancer. However, clinical progression is universal, and tumors with AR-independent resistance mechanisms appear to be increasing in frequency. Consequently, there is an urgent need to develop new treatments targeting molecular pathways enriched in lethal prostate cancer. Lysine-specific demethylase 1 (LSD1) is a histone demethylase and an important regulator of gene expression. Here, we show that LSD1 promotes the survival of prostate cancer cells, including those that are castration-resistant, independently of its demethylase function and of the AR. Importantly, this effect is explained in part by activation of a lethal prostate cancer gene network in collaboration with LSD1’s binding protein, ZNF217. Finally, that a small-molecule LSD1 inhibitor―SP-2509―blocks important demethylase-independent functions and suppresses castration-resistant prostate cancer cell viability demonstrates the potential of LSD1 inhibition in this disease.


BMC Systems Biology | 2016

The effect of inhibition of PP1 and TNFα signaling on pathogenesis of SARS coronavirus

Jason E. McDermott; Hugh D. Mitchell; Lisa E. Gralinski; Amie J. Eisfeld; Laurence Josset; Armand Bankhead; Gabriele Neumann; Susan C. Tilton; Alexandra Schäfer; Chengjun Li; Shufang Fan; Shannon McWeeney; Ralph S. Baric; Michael G. Katze; Katrina M. Waters

BackgroundThe complex interplay between viral replication and host immune response during infection remains poorly understood. While many viruses are known to employ anti-immune strategies to facilitate their replication, highly pathogenic virus infections can also cause an excessive immune response that exacerbates, rather than reduces pathogenicity. To investigate this dichotomy in severe acute respiratory syndrome coronavirus (SARS-CoV), we developed a transcriptional network model of SARS-CoV infection in mice and used the model to prioritize candidate regulatory targets for further investigation.ResultsWe validated our predictions in 18 different knockout (KO) mouse strains, showing that network topology provides significant predictive power to identify genes that are important for viral infection. We identified a novel player in the immune response to virus infection, Kepi, an inhibitory subunit of the protein phosphatase 1 (PP1) complex, which protects against SARS-CoV pathogenesis. We also found that receptors for the proinflammatory cytokine tumor necrosis factor alpha (TNFα) promote pathogenesis, presumably through excessive inflammation.ConclusionsThe current study provides validation of network modeling approaches for identifying important players in virus infection pathogenesis, and a step forward in understanding the host response to an important infectious disease. The results presented here suggest the role of Kepi in the host response to SARS-CoV, as well as inflammatory activity driving pathogenesis through TNFα signaling in SARS-CoV infections. Though we have reported the utility of this approach in bacterial and cell culture studies previously, this is the first comprehensive study to confirm that network topology can be used to predict phenotypes in mice with experimental validation.


international conference on conceptual structures | 2011

A Simulation Framework to Investigate in vitro Viral Infection Dynamics

Armand Bankhead; Emiliano Mancini; Amy C. Sims; Ralph S. Baric; Shannon McWeeney; Peter M. A. Sloot

Abstract Virus infection is a complex biological phenomenon for which in vitro experiments provide a uniquely concise view where data is often obtained from a single population of cells, under controlled environmental conditions. Nonetheless, data interpretation and real understanding of viral dynamics is still hampered by the sheer complexity of the various intertwined spatio-temporal processes. In this paper we present a tool to address these issues: a cellular automata model describing critical aspects of in vitro viral infections taking into account spatial characteristics of virus spreading within a culture well. The aim of the model is to understand the key mechanisms of SARS-CoV infection dynamics during the first 24hours post infection. We interrogate the model using a Latin Hypercube sensitivity analysis to identify which mechanisms are critical to the observed infection of host cells and the release of measured virus particles.

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Katrina M. Waters

Environmental Molecular Sciences Laboratory

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Lisa E. Gralinski

University of North Carolina at Chapel Hill

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Ralph S. Baric

University of North Carolina at Chapel Hill

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Amie J. Eisfeld

University of Wisconsin-Madison

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Chengjun Li

University of Wisconsin-Madison

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Jean Chang

University of Washington

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Susan C. Tilton

Pacific Northwest National Laboratory

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Alexandra Schäfer

University of North Carolina at Chapel Hill

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