Looking beyond the cancer cell for effective drug combinations
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[1] Ravi Iyengar,et al. Quantitative and Systems Pharmacology in the Post-genomic Era : New Approaches to Discovering Drugs and Understanding Therapeutic , 2011 .
[2] Aleksandra Markovets,et al. Acquired EGFR C797S mediates resistance to AZD9291 in advanced non-small cell lung cancer harboring EGFR T790M , 2015, Nature Medicine.
[3] F. Hodi,et al. Inhibition of Immune Checkpoints and Vascular Endothelial Growth Factor as Combination Therapy for Metastatic Melanoma: An Overview of Rationale, Preclinical Evidence, and Initial Clinical Data , 2015, Front. Oncol..
[4] Ying Chen,et al. IBM Watson: How Cognitive Computing Can Be Applied to Big Data Challenges in Life Sciences Research. , 2016, Clinical therapeutics.
[5] M. Belvin,et al. MAP Kinase Inhibition Promotes T Cell and Anti-tumor Activity in Combination with PD-L1 Checkpoint Blockade. , 2016, Immunity.
[6] F. Ginhoux,et al. Anticancer immunotherapy by CTLA-4 blockade relies on the gut microbiota , 2015, Science.
[7] Karen A. Ryall,et al. Systems biology approaches for advancing the discovery of effective drug combinations , 2015, Journal of Cheminformatics.
[8] Andreas Bender,et al. Modelling of compound combination effects and applications to efficacy and toxicity: state-of-the-art, challenges and perspectives. , 2016, Drug discovery today.
[9] J. Settleman,et al. EMT, cancer stem cells and drug resistance: an emerging axis of evil in the war on cancer , 2010, Oncogene.
[10] M. Birtwistle,et al. Network pharmacodynamic models for customized cancer therapy , 2015, Wiley interdisciplinary reviews. Systems biology and medicine.
[11] J. Taube,et al. Mechanism-driven biomarkers to guide immune checkpoint blockade in cancer therapy , 2016, Nature Reviews Cancer.
[12] Olivier Gevaert,et al. Oncogenic transformation of diverse gastrointestinal tissues in primary organoid culture , 2014, Nature Medicine.
[13] Susan E. Abbatiello,et al. Erratum: Synergistic drug combinations tend to improve therapeutically relevant selectivity , 2009, Nature Biotechnology.
[14] Jerome Kagan,et al. Two Is Better Than One , 2009, Perspectives on psychological science : a journal of the Association for Psychological Science.
[15] A. Reynolds,et al. Anti-angiogenic therapy for cancer: current progress, unresolved questions and future directions , 2014, Angiogenesis.
[16] Chris Sander,et al. Perturbation biology nominates upstream–downstream drug combinations in RAF inhibitor resistant melanoma cells , 2015, eLife.
[17] Lijun Qian,et al. Integrating Multiscale Modeling with Drug Effects for Cancer Treatment , 2015, Cancer informatics.
[18] Christian Jutten,et al. Multimodal Data Fusion: An Overview of Methods, Challenges, and Prospects , 2015, Proceedings of the IEEE.
[19] Yang Xie,et al. A community computational challenge to predict the activity of pairs of compounds Citation , 2015 .
[20] C. Shun,et al. Androgen-Induced TMPRSS2 Activates Matriptase and Promotes Extracellular Matrix Degradation, Prostate Cancer Cell Invasion, Tumor Growth, and Metastasis. , 2015, Cancer research.
[21] Nir Piterman,et al. Toward Synthesizing Executable Models in Biology , 2014, Front. Bioeng. Biotechnol..
[22] C. Drake,et al. Immune checkpoint blockade: a common denominator approach to cancer therapy. , 2015, Cancer cell.
[23] D. Longo,et al. Tumor heterogeneity and personalized medicine. , 2012, The New England journal of medicine.
[24] R. Vonderheide,et al. Mitigating the toxic effects of anticancer immunotherapy , 2014, Nature Reviews Clinical Oncology.
[25] Hayley E. Francies,et al. Prospective Derivation of a Living Organoid Biobank of Colorectal Cancer Patients , 2015, Cell.
[26] klaguia. International Network of Cancer Genome Projects , 2010 .
[27] G. Lahav,et al. Cell-to-Cell Variation in p53 Dynamics Leads to Fractional Killing , 2016, Cell.
[28] Galit Lahav,et al. Two is better than one; toward a rational design of combinatorial therapy. , 2016, Current opinion in structural biology.
[29] Hinrich W. H. Göhlmann,et al. Transcriptional Characterization of Compounds: Lessons Learned from the Public LINCS Data. , 2016, Assay and drug development technologies.
[30] Christopher M. Overall,et al. Validating matrix metalloproteinases as drug targets and anti-targets for cancer therapy , 2006, Nature Reviews Cancer.
[31] Denis Thieffry,et al. Discovery of Drug Synergies in Gastric Cancer Cells Predicted by Logical Modeling , 2015, PLoS Comput. Biol..
[32] P. Sorger,et al. Sequential Application of Anticancer Drugs Enhances Cell Death by Rewiring Apoptotic Signaling Networks , 2012, Cell.
[33] Jonathan R. Karr,et al. A Whole-Cell Computational Model Predicts Phenotype from Genotype , 2012, Cell.
[34] Zinnia P. Parra-Guillen,et al. Modeling Tumor Response after Combined Administration of Different Immune-Stimulatory Agents , 2013, The Journal of Pharmacology and Experimental Therapeutics.
[35] Pornpimol Charoentong,et al. Computational genomics tools for dissecting tumour–immune cell interactions , 2016, Nature Reviews Genetics.
[36] L. Zitvogel,et al. Microbiome and Anticancer Immunosurveillance , 2016, Cell.
[37] Zhongxing Liao,et al. Reducing the toxicity of cancer therapy: recognizing needs, taking action , 2012, Nature Reviews Clinical Oncology.
[38] Yongzhao Shao,et al. Mathematical Modeling of Therapy-induced Cancer Drug Resistance: Connecting Cancer Mechanisms to Population Survival Rates , 2016, Scientific Reports.
[39] W. Garrett,et al. Gut microbiota, metabolites and host immunity , 2016, Nature Reviews Immunology.
[40] Adam A. Margolin,et al. The Cancer Cell Line Encyclopedia enables predictive modeling of anticancer drug sensitivity , 2012, Nature.
[41] T. Golub,et al. Tumour micro-environment elicits innate resistance to RAF inhibitors through HGF secretion , 2012, Nature.
[42] Emanuel J. V. Gonçalves,et al. A Landscape of Pharmacogenomic Interactions in Cancer , 2016, Cell.
[43] B. Al-Lazikani,et al. Combinatorial drug therapy for cancer in the post-genomic era , 2012, Nature Biotechnology.
[44] M. Vetizou,et al. Fine-Tuning Cancer Immunotherapy: Optimizing the Gut Microbiome. , 2016, Cancer research.
[45] J. Willmann,et al. Stromal response to Hedgehog signaling restrains pancreatic cancer progression , 2014, Proceedings of the National Academy of Sciences.
[46] Mathias Uhlén,et al. Charting the human proteome: Understanding disease using a tissue-based atlas , 2015 .
[47] O. Stegle,et al. Deep learning for computational biology , 2016, Molecular systems biology.
[48] A. D. Van den Abbeele,et al. Bevacizumab plus Ipilimumab in Patients with Metastatic Melanoma , 2014, Cancer Immunology Research.
[49] P Vicini,et al. Systems Pharmacology for Drug Discovery and Development: Paradigm Shift or Flash in the Pan? , 2013, Clinical pharmacology and therapeutics.
[50] Mark E. Davis,et al. Nanoparticle therapeutics: an emerging treatment modality for cancer , 2008, Nature Reviews Drug Discovery.
[51] P. Johnston,et al. Cancer drug resistance: an evolving paradigm , 2013, Nature Reviews Cancer.
[52] H. Kuh,et al. Improving drug delivery to solid tumors: priming the tumor microenvironment. , 2015, Journal of controlled release : official journal of the Controlled Release Society.
[53] Daniel C Kirouac,et al. Computational Modeling of ERBB2-Amplified Breast Cancer Identifies Combined ErbB2/3 Blockade as Superior to the Combination of MEK and AKT Inhibitors , 2013, Science Signaling.
[54] Cathryn M. Delude. Deep phenotyping: The details of disease , 2015, Nature.
[55] P. Sorger,et al. Systems biology and combination therapy in the quest for clinical efficacy , 2006, Nature chemical biology.
[56] L. Turka,et al. Immunometabolism of regulatory T cells , 2016, Nature Immunology.
[57] Juanita Lopez,et al. Combine and conquer: challenges for targeted therapy combinations in early phase trials , 2017, Nature Reviews Clinical Oncology.
[58] B Ribba,et al. Modeling and predicting optimal treatment scheduling between the antiangiogenic drug sunitinib and irinotecan in preclinical settings , 2015, CPT: pharmacometrics & systems pharmacology.
[59] Denis Thieffry,et al. Logical Modeling and Dynamical Analysis of Cellular Networks , 2016, Front. Genet..
[60] Yiping Yang,et al. Cancer immunotherapy: harnessing the immune system to battle cancer. , 2015, The Journal of clinical investigation.
[61] V. Volpert,et al. Hybrid Modelling in Biology: a Classification Review , 2016 .
[62] J. Machiels,et al. Targeting the Tumor Environment in Squamous Cell Carcinoma of the Head and Neck , 2016, Current Treatment Options in Oncology.
[63] Bin Chen,et al. Characteristics of Drug Combination Therapy in Oncology by Analyzing Clinical Trial Data on Clinicaltrials.Gov , 2014, Pacific Symposium on Biocomputing.
[64] L. Chin,et al. Analysis of Immune Signatures in Longitudinal Tumor Samples Yields Insight into Biomarkers of Response and Mechanisms of Resistance to Immune Checkpoint Blockade. , 2016, Cancer discovery.
[65] Neil Savage,et al. Mobile data: Made to measure , 2015, Nature.
[66] Ioannis Xenarios,et al. Angiogenic Activity of Breast Cancer Patients’ Monocytes Reverted by Combined Use of Systems Modeling and Experimental Approaches , 2015, PLoS Comput. Biol..
[67] K. Flaherty,et al. Universes collide: combining immunotherapy with targeted therapy for cancer. , 2014, Cancer discovery.
[68] Joshua M. Korn,et al. High-throughput screening using patient-derived tumor xenografts to predict clinical trial drug response , 2015, Nature Medicine.
[69] P. Sharma,et al. Immune Checkpoint Targeting in Cancer Therapy: Toward Combination Strategies with Curative Potential , 2015, Cell.
[70] De WolfHans,et al. Transcriptional Characterization of Compounds: Lessons Learned from the Public LINCS Data. , 2016 .
[71] S. Brunak,et al. Network biology concepts in complex disease comorbidities , 2016, Nature Reviews Genetics.
[72] MK Morris,et al. Systematic Analysis of Quantitative Logic Model Ensembles Predicts Drug Combination Effects on Cell Signaling Networks , 2016, CPT: pharmacometrics & systems pharmacology.
[73] Jun S. Liu,et al. The Genotype-Tissue Expression (GTEx) pilot analysis: Multitissue gene regulation in humans , 2015, Science.
[74] Florian Klemm,et al. Microenvironmental regulation of therapeutic response in cancer. , 2015, Trends in cell biology.
[75] B. Taylor,et al. Transcriptional pathway signatures predict MEK addiction and response to selumetinib (AZD6244). , 2010, Cancer research.
[76] Yair Benita,et al. An Unbiased Oncology Compound Screen to Identify Novel Combination Strategies , 2016, Molecular Cancer Therapeutics.
[77] Joshua M. Stuart,et al. The Cancer Genome Atlas Pan-Cancer analysis project , 2013, Nature Genetics.
[78] Paul J. Kennedy,et al. Case-Based Retrieval Framework for Gene Expression Data , 2015, Cancer informatics.
[79] Hiroyuki Kubota,et al. Trans-Omics: How To Reconstruct Biochemical Networks Across Multiple 'Omic' Layers. , 2016, Trends in biotechnology.
[80] Douglas A Lauffenburger,et al. Addressing genetic tumor heterogeneity through computationally predictive combination therapy. , 2013, Cancer discovery.
[81] J. Dry,et al. Benefits of mTOR kinase targeting in oncology: pre-clinical evidence with AZD8055. , 2011, Biochemical Society transactions.
[82] N. Mukaida,et al. Fibroblasts, an inconspicuous but essential player in colon cancer development and progression. , 2016, World journal of gastroenterology.
[83] Martin L. Miller,et al. Mutational landscape determines sensitivity to PD-1 blockade in non–small cell lung cancer , 2015, Science.
[84] E. Puré,et al. Can Targeting Stroma Pave the Way to Enhanced Antitumor Immunity and Immunotherapy of Solid Tumors? , 2016, Cancer Immunology Research.
[85] Paul A Clemons,et al. The Connectivity Map: Using Gene-Expression Signatures to Connect Small Molecules, Genes, and Disease , 2006, Science.
[86] M. O’Connor,et al. Targeting the DNA Damage Response in Cancer. , 2015, Molecular cell.
[87] Jia You,et al. Artificial intelligence. DARPA sets out to automate research. , 2015, Science.
[88] Steffen Klamt,et al. Bridging the layers: towards integration of signal transduction, regulation and metabolism into mathematical models. , 2013, Molecular bioSystems.
[89] Raja R Srinivas,et al. Exploiting Temporal Collateral Sensitivity in Tumor Clonal Evolution , 2016, Cell.
[90] Paul T. Groth,et al. The ENCODE (ENCyclopedia Of DNA Elements) Project , 2004, Science.
[91] Charles H. Yoon,et al. Dissecting the multicellular ecosystem of metastatic melanoma by single-cell RNA-seq , 2016, Science.
[92] Huile Gao. Shaping Tumor Microenvironment for Improving Nanoparticle Delivery. , 2016, Current drug metabolism.
[93] Luke A. Gilbert,et al. Defining principles of combination drug mechanisms of action , 2012, Proceedings of the National Academy of Sciences.
[94] J. Taube,et al. Control of PD-L1 Expression by Oncogenic Activation of the AKT-mTOR Pathway in Non-Small Cell Lung Cancer. , 2016, Cancer research.
[95] G. Trinchieri,et al. Harnessing the intestinal microbiome for optimal therapeutic immunomodulation. , 2014, Cancer research.
[96] Gary D Bader,et al. International network of cancer genome projects , 2010, Nature.
[97] Fabrício F. Costa. Big data in biomedicine. , 2014, Drug discovery today.
[98] M. Ferrer,et al. Cancer network activity associated with therapeutic response and synergism , 2016, Genome Medicine.
[99] P. Gimotty,et al. CTLA-4 Blockade Synergizes Therapeutically with PARP Inhibition in BRCA1-Deficient Ovarian Cancer , 2015, Cancer Immunology Research.
[100] Julio Saez-Rodriguez,et al. Modeling Signaling Networks to Advance New Cancer Therapies. , 2015, Annual review of biomedical engineering.