Network Pharmacology Strategies Toward Multi-Target Anticancer Therapies: From Computational Models to Experimental Design Principles
暂无分享,去创建一个
[1] Martin Peifer,et al. Analysis of Compound Synergy in High-Throughput Cellular Screens by Population-Based Lifetime Modeling , 2010, PloS one.
[2] A. Barabasi,et al. Network biology: understanding the cell's functional organization , 2004, Nature Reviews Genetics.
[3] Stuart L Schreiber,et al. Using genome-wide transcriptional profiling to elucidate small-molecule mechanism. , 2005, Current opinion in chemical biology.
[4] PagelPhilipp,et al. The MIPS mammalian protein--protein interaction database , 2005 .
[5] Yang Song,et al. Therapeutic target database update 2012: a resource for facilitating target-oriented drug discovery , 2011, Nucleic Acids Res..
[6] F. Cohen,et al. Co-evolution of proteins with their interaction partners. , 2000, Journal of molecular biology.
[7] Xiaohua Ma,et al. Mechanisms of drug combinations: interaction and network perspectives , 2009, Nature Reviews Drug Discovery.
[8] Tudor I. Oprea,et al. WOMBAT and WOMBAT‐PK: Bioactivity Databases for Lead and Drug Discovery , 2008 .
[9] Yanli Wang,et al. Structure-Based Virtual Screening for Drug Discovery: a Problem-Centric Review , 2012, The AAPS Journal.
[10] S. Lampel,et al. The druggable genome: an update. , 2005, Drug discovery today.
[11] Bin Chen,et al. Comparing bioassay response and similarity ensemble approaches to probing protein pharmacology , 2011, Bioinform..
[12] Tudor I. Oprea,et al. ChemProt: a disease chemical biology database , 2010, Nucleic Acids Res..
[13] Tudor I. Oprea,et al. Quantifying the Relationships among Drug Classes , 2008, J. Chem. Inf. Model..
[14] Mingshe Zhu,et al. Drug Metabolite Profiling and Identification by High-resolution Mass Spectrometry* , 2011, The Journal of Biological Chemistry.
[15] Michael J. Keiser,et al. Relating protein pharmacology by ligand chemistry , 2007, Nature Biotechnology.
[16] Holger Fröhlich,et al. Modeling ERBB receptor-regulated G1/S transition to find novel targets for de novo trastuzumab resistance , 2009, BMC Systems Biology.
[17] S. Ekins,et al. In silico pharmacology for drug discovery: methods for virtual ligand screening and profiling , 2007, British journal of pharmacology.
[18] Stuart L. Schreiber,et al. Chemical biology : from small molecules to systems biology and drug design , 2007 .
[19] E. Lundberg,et al. Towards a knowledge-based Human Protein Atlas , 2010, Nature Biotechnology.
[20] Jacob D. Feala,et al. Search Algorithms as a Framework for the Optimization of Drug Combinations , 2008, PLoS Comput. Biol..
[21] J. Lehár,et al. Multi-target therapeutics: when the whole is greater than the sum of the parts. , 2007, Drug discovery today.
[22] T. Ideker,et al. A decade of systems biology. , 2010, Annual review of cell and developmental biology.
[23] Kyle Kolaja. Drug discovery: Computer model predicts side effects , 2012, Nature.
[24] Yiling Lu,et al. Identification of optimal drug combinations targeting cellular networks: integrating phospho-proteomics and computational network analysis. , 2010, Cancer research.
[25] Justin Lamb,et al. The Connectivity Map: a new tool for biomedical research , 2007, Nature Reviews Cancer.
[26] C. Sander,et al. Models from experiments: combinatorial drug perturbations of cancer cells , 2008, Molecular systems biology.
[27] E. Schadt. Molecular networks as sensors and drivers of common human diseases , 2009, Nature.
[28] Zhiping Liu,et al. Network-based analysis of complex diseases. , 2012, IET systems biology.
[29] Jonathan D. Hirst,et al. Interpretable correlation descriptors for quantitative structure-activity relationships , 2009, J. Cheminformatics.
[30] Hans-Werner Mewes,et al. MPact: the MIPS protein interaction resource on yeast , 2005, Nucleic Acids Res..
[31] Steffen Klamt,et al. The Logic of EGFR/ErbB Signaling: Theoretical Properties and Analysis of High-Throughput Data , 2009, PLoS Comput. Biol..
[32] Joshua D. Knowles,et al. Efficient discovery of anti-inflammatory small molecule combinations using evolutionary computing , 2011, Nature chemical biology.
[33] H. Kitano. A robustness-based approach to systems-oriented drug design , 2007, Nature Reviews Drug Discovery.
[34] J. Whisstock,et al. Prediction of protein function from protein sequence and structure , 2003, Quarterly Reviews of Biophysics.
[35] R. Sharan,et al. INDI: a computational framework for inferring drug interactions and their associated recommendations , 2012, Molecular systems biology.
[36] Yoshihiro Yamanishi,et al. Prediction of drug–target interaction networks from the integration of chemical and genomic spaces , 2008, ISMB.
[37] Damian Szklarczyk,et al. STITCH 3: zooming in on protein–chemical interactions , 2011, Nucleic Acids Res..
[38] E. Topol,et al. Pharmacogenomics in clinical practice and drug development , 2012, Nature Biotechnology.
[39] Douglas A Lauffenburger,et al. Querying quantitative logic models (Q2LM) to study intracellular signaling networks and cell-cytokine interactions , 2011, Biotechnology journal.
[40] Sridhar Ramaswamy,et al. Rational design of cancer-drug combinations. , 2007, The New England journal of medicine.
[41] Susan E. Abbatiello,et al. Erratum: Synergistic drug combinations tend to improve therapeutically relevant selectivity , 2009, Nature Biotechnology.
[42] Robert B. Russell,et al. SuperTarget and Matador: resources for exploring drug-target relationships , 2007, Nucleic Acids Res..
[43] Sandhya Rani,et al. Human Protein Reference Database—2009 update , 2008, Nucleic Acids Res..
[44] David S. Wishart,et al. DrugBank: a knowledgebase for drugs, drug actions and drug targets , 2007, Nucleic Acids Res..
[45] Alexei Vazquez,et al. Optimal drug combinations and minimal hitting sets , 2009, BMC Systems Biology.
[46] J. Chen,et al. Predicting adverse drug reaction profiles by integrating protein interaction networks with drug structures , 2013, Proteomics.
[47] D. Lauffenburger,et al. Computational modelling of ErbB family phosphorylation dynamics in response to transforming growth factor alpha and heregulin indicates spatial compartmentation of phosphatase activity. , 2006, Systems biology.
[48] Rune Linding,et al. Navigating cancer network attractors for tumor-specific therapy , 2012, Nature Biotechnology.
[49] K. Polyak,et al. Intra-tumour heterogeneity: a looking glass for cancer? , 2012, Nature Reviews Cancer.
[50] Nagasuma R. Chandra,et al. Flux balance analysis of biological systems: applications and challenges , 2009, Briefings Bioinform..
[51] A. Kasarskis,et al. Integrative genomics strategies to elucidate the complexity of drug response. , 2011, Pharmacogenomics.
[52] Jianmin Wu,et al. Integrated network analysis platform for protein-protein interactions , 2009, Nature Methods.
[53] R. Iyengar,et al. Systems pharmacology: network analysis to identify multiscale mechanisms of drug action. , 2012, Annual review of pharmacology and toxicology.
[54] Bin Chen,et al. Chem2Bio2RDF: a semantic framework for linking and data mining chemogenomic and systems chemical biology data , 2010, BMC Bioinformatics.
[55] J. Haugh,et al. Quantitative models of signal transduction networks , 2011, Communicative & integrative biology.
[56] Andrew Emili,et al. Proteomic methods for drug target discovery. , 2008, Current opinion in chemical biology.
[57] R. Sun,et al. Closed-loop control of cellular functions using combinatory drugs guided by a stochastic search algorithm , 2008, Proceedings of the National Academy of Sciences.
[58] Monica L Guzman,et al. Discovery of agents that eradicate leukemia stem cells using an in silico screen of public gene expression data. , 2008, Blood.
[59] Philip E. Bourne,et al. PROMISCUOUS: a database for network-based drug-repositioning , 2010, Nucleic Acids Res..
[60] Sarah L. Kinnings,et al. Novel computational approaches to polypharmacology as a means to define responses to individual drugs. , 2012, Annual review of pharmacology and toxicology.
[61] P. Aloy,et al. Unveiling the role of network and systems biology in drug discovery. , 2010, Trends in pharmacological sciences.
[62] J. Scannell,et al. Diagnosing the decline in pharmaceutical R&D efficiency , 2012, Nature Reviews Drug Discovery.
[63] S. Lee,et al. Metabolic network modeling and simulation for drug targeting and discovery , 2012, Biotechnology journal.
[64] K. Shokat,et al. Targeting the cancer kinome through polypharmacology , 2010, Nature Reviews Cancer.
[65] A. Azmi. Systems Biology in Cancer Research and Drug Discovery , 2012, Springer Netherlands.
[66] Andreas Bender,et al. From in silico target prediction to multi-target drug design: current databases, methods and applications. , 2011, Journal of proteomics.
[67] Roded Sharan,et al. Constraint-based functional similarity of metabolic genes: going beyond network topology , 2007, Bioinform..
[68] K. Chou,et al. Predicting Drug-Target Interaction Networks Based on Functional Groups and Biological Features , 2010, PloS one.
[69] A. Barabasi,et al. Interactome Networks and Human Disease , 2011, Cell.
[70] John P. Overington,et al. ChEMBL: a large-scale bioactivity database for drug discovery , 2011, Nucleic Acids Res..
[71] Gerbert A. Jansen,et al. Critical assessment of human metabolic pathway databases: a stepping stone for future integration , 2011, BMC Systems Biology.
[72] Bo Zhang,et al. A formal model for analyzing drug combination effects and its application in TNF-α-induced NFκB pathway , 2010, BMC Systems Biology.
[73] Bo Zhang,et al. Network target for screening synergistic drug combinations with application to traditional Chinese medicine , 2011, BMC Systems Biology.
[74] Byoung-Tak Zhang,et al. A probabilistic coevolutionary biclustering algorithm for discovering coherent patterns in gene expression dataset , 2012, BMC Bioinformatics.
[75] Chao Zhang,et al. Interrogating the kinome , 2011, Nature Biotechnology.
[76] Natapol Pornputtapong,et al. Reconstruction of Genome-Scale Active Metabolic Networks for 69 Human Cell Types and 16 Cancer Types Using INIT , 2012, PLoS Comput. Biol..
[77] K. Venkatakrishnan,et al. A Quantitative Framework and Strategies for Management and Evaluation of Metabolic Drug-Drug Interactions in Oncology Drug Development , 2010, Clinical pharmacokinetics.
[78] John P. Overington,et al. Probing the links between in vitro potency, ADMET and physicochemical parameters , 2011, Nature Reviews Drug Discovery.
[79] Junfeng Xia,et al. Do cancer proteins really interact strongly in the human protein-protein interaction network? , 2011, Comput. Biol. Chem..
[80] Yanli Wang,et al. PubChem: a public information system for analyzing bioactivities of small molecules , 2009, Nucleic Acids Res..
[81] Donald Geman,et al. A Comprehensive Statistical Model for Cell Signaling , 2011, IEEE/ACM Transactions on Computational Biology and Bioinformatics.
[82] Roded Sharan,et al. An Algorithmic Framework for Predicting Side-Effects of Drugs , 2010, RECOMB.
[83] Luonan Chen,et al. Detecting drug targets with minimum side effects in metabolic networks. , 2009, IET systems biology.
[84] J. Irwin,et al. Identifying mechanism-of-action targets for drugs and probes , 2012, Proceedings of the National Academy of Sciences.
[85] T. Aittokallio,et al. Genome-Wide Scoring of Positive and Negative Epistasis through Decomposition of Quantitative Genetic Interaction Fitness Matrices , 2010, PloS one.
[86] Amin Rostami-Hodjegan,et al. Simulation and prediction of in vivo drug metabolism in human populations from in vitro data , 2007, Nature Reviews Drug Discovery.
[87] Yoshihiro Yamanishi,et al. Relating drug–protein interaction network with drug side effects , 2012, Bioinform..
[88] Mingsheng Zhang,et al. Comparing signaling networks between normal and transformed hepatocytes using discrete logical models. , 2011, Cancer research.
[89] Livia Perfetto,et al. MINT, the molecular interaction database: 2009 update , 2009, Nucleic Acids Res..
[90] Lei Xie,et al. Structure-based systems biology for analyzing off-target binding. , 2011, Current opinion in structural biology.
[91] Dmitrij Frishman,et al. The MIPS mammalian protein?Cprotein interaction database , 2005, Bioinform..
[92] Dong Wang,et al. The relationship between rational drug design and drug side effects , 2012, Briefings Bioinform..
[93] Peter D. Karp,et al. The MetaCyc Database , 2002, Nucleic Acids Res..
[94] Bernhard O. Palsson,et al. BiGG: a Biochemical Genetic and Genomic knowledgebase of large scale metabolic reconstructions , 2010, BMC Bioinformatics.
[95] R. Tagliaferri,et al. Discovery of drug mode of action and drug repositioning from transcriptional responses , 2010, Proceedings of the National Academy of Sciences.
[96] David J Diller. The synergy between combinatorial chemistry and high-throughput screening. , 2008, Current opinion in drug discovery & development.
[97] Philip E. Bourne,et al. Drug Discovery Using Chemical Systems Biology: Identification of the Protein-Ligand Binding Network To Explain the Side Effects of CETP Inhibitors , 2009, PLoS Comput. Biol..
[98] R. Gillies,et al. Evolutionary dynamics of carcinogenesis and why targeted therapy does not work , 2012, Nature Reviews Cancer.
[99] Bissan Al-Lazikani,et al. canSAR: an integrated cancer public translational research and drug discovery resource , 2011, Nucleic Acids Res..
[100] Philip E. Bourne,et al. Drug Off-Target Effects Predicted Using Structural Analysis in the Context of a Metabolic Network Model , 2010, PLoS Comput. Biol..
[101] T. Widlanski,et al. An Intuitive Look at the Relationship of Ki and IC50: A More General Use for the Dixon Plot , 2003 .
[102] Didier Rognan,et al. Enhancing the Accuracy of Chemogenomic Models with a Three-Dimensional Binding Site Kernel , 2011, J. Chem. Inf. Model..
[103] Enrico Capobianco,et al. Dynamic Networks in Systems Medicine , 2012, Front. Gene..
[104] Michael Costanzo,et al. Systematic exploration of synergistic drug pairs , 2011, Molecular systems biology.
[105] Adam J. Smith,et al. The Database of Interacting Proteins: 2004 update , 2004, Nucleic Acids Res..
[106] D. Lauffenburger,et al. Applying computational modeling to drug discovery and development. , 2006, Drug discovery today.
[107] William Stafford Noble,et al. Kernel methods for predicting protein-protein interactions , 2005, ISMB.
[108] Igor Goryanin,et al. Compartmentalization of the Edinburgh Human Metabolic Network , 2010, BMC Bioinformatics.
[109] J. Settleman,et al. Mechanisms of acquired resistance to targeted cancer therapies. , 2012, Future oncology.
[110] R. Iyengar,et al. Systems approaches to polypharmacology and drug discovery. , 2010, Current opinion in drug discovery & development.
[111] Yvonne C. Martin,et al. Use of Structure-Activity Data To Compare Structure-Based Clustering Methods and Descriptors for Use in Compound Selection , 1996, J. Chem. Inf. Comput. Sci..
[112] Ravi Iyengar,et al. Network analyses in systems pharmacology , 2009, Bioinform..
[113] Daniel R. Caffrey,et al. Structure-based maximal affinity model predicts small-molecule druggability , 2007, Nature Biotechnology.
[114] G. Terstappen,et al. Target deconvolution strategies in drug discovery , 2007, Nature Reviews Drug Discovery.
[115] Jun Zou,et al. Neighbor communities in drug combination networks characterize synergistic effect. , 2012, Molecular bioSystems.
[116] Sean R. Collins,et al. A strategy for extracting and analyzing large-scale quantitative epistatic interaction data , 2006, Genome Biology.
[117] A. Fliri,et al. Analysis of drug-induced effect patterns to link structure and side effects of medicines , 2005, Nature chemical biology.
[118] Jianmin Wu,et al. PINA v2.0: mining interactome modules , 2011, Nucleic Acids Res..
[119] P. Sorger,et al. Sequential Application of Anticancer Drugs Enhances Cell Death by Rewiring Apoptotic Signaling Networks , 2012, Cell.
[120] A. Barabasi,et al. Network medicine : a network-based approach to human disease , 2010 .
[121] J. Lehár,et al. Systematic discovery of multicomponent therapeutics , 2003, Proceedings of the National Academy of Sciences of the United States of America.
[122] A. Hopkins. Network pharmacology: the next paradigm in drug discovery. , 2008, Nature chemical biology.
[123] B. Kholodenko,et al. Ligand-dependent responses of the ErbB signaling network: experimental and modeling analyses , 2007, Molecular systems biology.
[124] D. K. Arrell,et al. Network Systems Biology for Drug Discovery , 2010, Clinical pharmacology and therapeutics.
[125] Dennis B. Troup,et al. NCBI GEO: archive for functional genomics data sets—10 years on , 2010, Nucleic Acids Res..
[126] S. Carr,et al. Identifying cellular targets of small-molecule probes and drugs with biochemical enrichment and SILAC. , 2012, Methods in molecular biology.
[127] D. Pe’er,et al. Principles and Strategies for Developing Network Models in Cancer , 2011, Cell.
[128] W. Pearson. Empirical statistical estimates for sequence similarity searches. , 1998, Journal of molecular biology.
[129] P. Karp,et al. Computational prediction of human metabolic pathways from the complete human genome , 2004, Genome Biology.
[130] Charles Boone,et al. Chemical-genomic profiling: systematic analysis of the cellular targets of bioactive molecules. , 2012, Bioorganic & medicinal chemistry.
[131] A. Barabasi,et al. Drug—target network , 2007, Nature Biotechnology.
[132] I. Goryanin,et al. Human metabolic network reconstruction and its impact on drug discovery and development. , 2008, Drug discovery today.
[133] D. Slamon,et al. A model-based approach for assessing in vivo combination therapy interactions. , 1999, Proceedings of the National Academy of Sciences of the United States of America.
[134] Edda Klipp,et al. Biochemical network-based drug-target prediction. , 2010, Current opinion in biotechnology.
[135] Nir Friedman,et al. Inferring Cellular Networks Using Probabilistic Graphical Models , 2004, Science.
[136] T. Blundell,et al. Structural biology and drug discovery of difficult targets: the limits of ligandability. , 2012, Chemistry & biology.
[137] Xin Wen,et al. BindingDB: a web-accessible database of experimentally determined protein–ligand binding affinities , 2006, Nucleic Acids Res..
[138] Monica L. Mo,et al. Global reconstruction of the human metabolic network based on genomic and bibliomic data , 2007, Proceedings of the National Academy of Sciences.
[139] Luhua Lai,et al. Prediction of potential drug targets based on simple sequence properties , 2007, BMC Bioinformatics.
[140] Peter J. Park,et al. Systematic Identification of Synergistic Drug Pairs Targeting HIV , 2012, Nature Biotechnology.
[141] Gary D. Bader,et al. The Biomolecular Interaction Network Database in PSI-MI 2.5 , 2011, Database J. Biol. Databases Curation.
[142] B. Kuster,et al. Mass spectrometry-based proteomics in preclinical drug discovery. , 2012, Chemistry & biology.
[143] J. Lehár,et al. High-order combination effects and biological robustness , 2008, Molecular systems biology.
[144] Michael J. Keiser,et al. Large Scale Prediction and Testing of Drug Activity on Side-Effect Targets , 2012, Nature.
[145] P. Aloy,et al. A network medicine approach to human disease , 2009, FEBS letters.
[146] Benno Schwikowski,et al. Graph-based methods for analysing networks in cell biology , 2006, Briefings Bioinform..
[147] Xing-Ming Zhao,et al. Prediction of Drug Combinations by Integrating Molecular and Pharmacological Data , 2011, PLoS Comput. Biol..
[148] B. Al-Lazikani,et al. Combinatorial drug therapy for cancer in the post-genomic era , 2012, Nature Biotechnology.
[149] Kara Dolinski,et al. The BioGRID Interaction Database: 2011 update , 2010, Nucleic Acids Res..
[150] Nathan D. Price,et al. Reconstruction of genome-scale metabolic models for 126 human tissues using mCADRE , 2012, BMC Systems Biology.
[151] P. Bork,et al. A side effect resource to capture phenotypic effects of drugs , 2010, Molecular systems biology.
[152] Xiaobo Zhou,et al. Predicting enzyme targets for cancer drugs by profiling human Metabolic reactions in NCI-60 cell lines , 2010, BMC Bioinformatics.
[153] D. Galas,et al. Diseases as network perturbations. , 2010, Current opinion in biotechnology.
[154] H. K. Kim,et al. Gene expression signatures associated with the in vitro resistance to two tyrosine kinase inhibitors, nilotinib and imatinib , 2011, Blood cancer journal.
[155] J. Dancey,et al. Strategies for optimizing combinations of molecularly targeted anticancer agents , 2006, Nature Reviews Drug Discovery.
[156] Feng Cong,et al. Chemical genetics-based target identification in drug discovery. , 2012, Annual review of pharmacology and toxicology.
[157] Liang Liu,et al. Network-based drug discovery by integrating systems biology and computational technologies , 2012, Briefings Bioinform..
[158] Claudio Altafini,et al. Predicting and characterizing selective multiple drug treatments for metabolic diseases and cancer , 2012, BMC Systems Biology.
[159] S. Friend,et al. A network view of disease and compound screening , 2009, Nature Reviews Drug Discovery.
[160] Philip E. Bourne,et al. SuperTarget goes quantitative: update on drug–target interactions , 2011, Nucleic Acids Res..
[161] T. Pawson,et al. Network medicine , 2008, FEBS letters.
[162] D. K. Sharma,et al. Molecular drug targets and structure based drug design: A holistic approach , 2006, Bioinformation.
[163] Harvey J Clewell,et al. Quantitative in vitro to in vivo extrapolation of cell-based toxicity assay results , 2012, Critical reviews in toxicology.
[164] Mehmet Gönen,et al. Predicting drug-target interactions from chemical and genomic kernels using Bayesian matrix factorization , 2012, Bioinform..
[165] Alasdair T. R. Laurie,et al. Methods for the prediction of protein-ligand binding sites for structure-based drug design and virtual ligand screening. , 2006, Current protein & peptide science.
[166] A. Ashworth,et al. Genetic Interactions in Cancer Progression and Treatment , 2011, Cell.
[167] P. Bork,et al. Drug Target Identification Using Side-Effect Similarity , 2008, Science.
[168] Peter M Woollard,et al. The application of next-generation sequencing technologies to drug discovery and development. , 2011, Drug discovery today.
[169] Susumu Goto,et al. KEGG for integration and interpretation of large-scale molecular data sets , 2011, Nucleic Acids Res..
[170] Rachael Hageman Blair,et al. Mathematical and Statistical Modeling in Cancer Systems Biology , 2012, Front. Physio..
[171] Seth I. Berger,et al. Role of systems pharmacology in understanding drug adverse events , 2011, Wiley interdisciplinary reviews. Systems biology and medicine.
[172] Lennart Martens,et al. PRIDE and "Database on Demand" as valuable tools for computational proteomics. , 2011, Methods in molecular biology.
[173] Ravi Iyengar,et al. Systems pharmacology and genome medicine: a future perspective , 2009, Genome Medicine.