Gene regulatory network inference from perturbed time-series expression data via ordered dynamical expansion of non-steady state actors
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Zhengdao Wang | Mahdi Zamanighomi | Mostafa Zamanian | Michael Kimber | Zhengdao Wang | Mahdi Zamanighomi | M. Zamanian | M. Kimber
[1] Guy Karlebach,et al. Modelling and analysis of gene regulatory networks , 2008, Nature Reviews Molecular Cell Biology.
[2] Robert J Beynon,et al. Protein turnover on the scale of the proteome , 2006, Expert review of proteomics.
[3] V. Thorsson,et al. Discovery of regulatory interactions through perturbation: inference and experimental design. , 1999, Pacific Symposium on Biocomputing. Pacific Symposium on Biocomputing.
[4] D. Pe’er,et al. Module networks: identifying regulatory modules and their condition-specific regulators from gene expression data , 2003, Nature Genetics.
[5] Yu Gong,et al. Nonlinear Equalization of Hammerstein OFDM Systems , 2014, IEEE Transactions on Signal Processing.
[6] Ritsert C. Jansen,et al. Studying complex biological systems using multifactorial perturbation , 2003, Nature Reviews Genetics.
[7] Juan Liu,et al. A novel computational framework for simultaneous integration of multiple types of genomic data to identify microRNA-gene regulatory modules , 2011, Bioinform..
[8] Jesse M. Lingeman,et al. Gene regulatory networks in plants: learning causality from time and perturbation , 2013, Genome Biology.
[9] D. di Bernardo,et al. How to infer gene networks from expression profiles , 2007, Molecular systems biology.
[10] Masao Nagasaki,et al. Recursive regularization for inferring gene networks from time-course gene expression profiles , 2009, BMC Systems Biology.
[11] Benjamin A. Logsdon,et al. Gene Expression Network Reconstruction by Convex Feature Selection when Incorporating Genetic Perturbations , 2010, PLoS Comput. Biol..
[12] J. Bähler. Cell-cycle control of gene expression in budding and fission yeast. , 2005, Annual review of genetics.
[13] Hongzhe Li,et al. Clustering of time-course gene expression data using a mixed-effects model with B-splines , 2003, Bioinform..
[14] Terence Hwa,et al. Transcriptional regulation by the numbers: models. , 2005, Current opinion in genetics & development.
[15] Wing Hung Wong,et al. Learning a nonlinear dynamical system model of gene regulation: A perturbed steady-state approach , 2012, 1207.3137.
[16] Hamid Bolouri,et al. Modeling genomic regulatory networks with big data. , 2014, Trends in genetics : TIG.
[17] Stephen P. Boyd,et al. Distributed Optimization and Statistical Learning via the Alternating Direction Method of Multipliers , 2011, Found. Trends Mach. Learn..
[18] Dimitri P. Bertsekas,et al. Nonlinear Programming , 1997 .
[19] Carl de Boor,et al. A Practical Guide to Splines , 1978, Applied Mathematical Sciences.
[20] Ruedi Aebersold,et al. Timescales and bottlenecks in miRNA-dependent gene regulation , 2013, Molecular systems biology.
[21] M. Rooman,et al. Detection of Perturbation Phases and Developmental Stages in Organisms from DNA Microarray Time Series Data , 2011, PloS one.
[22] Jie Chen,et al. Bioinformatics Original Paper Detecting Periodic Patterns in Unevenly Spaced Gene Expression Time Series Using Lomb–scargle Periodograms , 2022 .
[23] John G Doench,et al. Specificity of microRNA target selection in translational repression. , 2004, Genes & development.
[24] Ahmet Ay,et al. Mathematical modeling of gene expression: a guide for the perplexed biologist , 2011, Critical reviews in biochemistry and molecular biology.
[25] Hongzhe Li,et al. Model-based methods for identifying periodically expressed genes based on time course microarray gene expression data , 2004, Bioinform..
[26] E. Rooij,et al. The Art of MicroRNA Research , 2011 .
[27] Pablo A. Parrilo,et al. Guaranteed Minimum-Rank Solutions of Linear Matrix Equations via Nuclear Norm Minimization , 2007, SIAM Rev..
[28] Kathrin Klamroth,et al. Biconvex sets and optimization with biconvex functions: a survey and extensions , 2007, Math. Methods Oper. Res..
[29] M. Schuldiner,et al. The emergence of proteome-wide technologies: systematic analysis of proteins comes of age , 2014, Nature Reviews Molecular Cell Biology.
[30] Kwang-Hyun Cho,et al. Modelling gene expression time-series with radial basis function neural networks , 2004, 2004 IEEE International Joint Conference on Neural Networks (IEEE Cat. No.04CH37541).
[31] N. Friedman,et al. Metabolic labeling of RNA uncovers principles of RNA production and degradation dynamics in mammalian cells , 2011, Nature Biotechnology.
[32] Riet De Smet,et al. Advantages and limitations of current network inference methods , 2010, Nature Reviews Microbiology.
[33] Korbinian Strimmer,et al. Identifying periodically expressed transcripts in microarray time series data , 2008, Bioinform..
[34] Christopher A. Penfold,et al. How to infer gene networks from expression profiles, revisited , 2011, Interface Focus.
[35] J. Marron,et al. SiZer for Exploration of Structures in Curves , 1999 .
[36] Raya Khanin,et al. Computational Modeling of Post-Transcriptional Gene Regulation by MicroRNAs , 2008, J. Comput. Biol..
[37] J M Pe˜na. B-splines and Optimal Stability , 1997 .
[38] Richard Bonneau,et al. DREAM4: Combining Genetic and Dynamic Information to Identify Biological Networks and Dynamical Models , 2010, PloS one.
[39] Wei-Po Lee,et al. Computational methods for discovering gene networks from expression data , 2009, Briefings Bioinform..
[40] Michael Ruogu Zhang,et al. Comprehensive identification of cell cycle-regulated genes of the yeast Saccharomyces cerevisiae by microarray hybridization. , 1998, Molecular biology of the cell.
[41] D. Floreano,et al. Revealing strengths and weaknesses of methods for gene network inference , 2010, Proceedings of the National Academy of Sciences.
[42] Morteza Mardani,et al. Decentralized Sparsity-Regularized Rank Minimization: Algorithms and Applications , 2012, IEEE Transactions on Signal Processing.
[43] Juan Manuel Peña. B-splines and optimal stability , 1997, Math. Comput..
[44] Georgios B. Giannakis,et al. Inference of Gene Regulatory Networks with Sparse Structural Equation Models Exploiting Genetic Perturbations , 2013, PLoS Comput. Biol..
[45] R. Aebersold,et al. Quantification of mRNA and protein and integration with protein turnover in a bacterium , 2011, Molecular systems biology.
[46] B. Goodwin. Oscillatory behavior in enzymatic control processes. , 1965, Advances in enzyme regulation.
[47] J. Hasty,et al. Reverse engineering gene networks: Integrating genetic perturbations with dynamical modeling , 2003, Proceedings of the National Academy of Sciences of the United States of America.
[48] G. Hutvagner,et al. A microRNA in a Multiple-Turnover RNAi Enzyme Complex , 2002, Science.
[49] Hernan G. Garcia,et al. Transcriptional Regulation by the Numbers 2: Applications , 2004, q-bio/0412011.
[50] Xiaodong Wang,et al. Gene regulatory network inference by point-based Gaussian approximation filters incorporating the prior information , 2013, EURASIP J. Bioinform. Syst. Biol..
[51] Michael Hecker,et al. Gene regulatory network inference: Data integration in dynamic models - A review , 2009, Biosyst..
[52] Charles R. Johnson,et al. Matrix analysis , 1985, Statistical Inference for Engineers and Data Scientists.
[53] J. Collins,et al. Inferring Genetic Networks and Identifying Compound Mode of Action via Expression Profiling , 2003, Science.
[54] H. Zou,et al. Regularization and variable selection via the elastic net , 2005 .
[55] Diego di Bernardo,et al. Inference of gene regulatory networks and compound mode of action from time course gene expression profiles , 2006, Bioinform..
[56] Ting Chen,et al. Modeling Gene Expression with Differential Equations , 1998, Pacific Symposium on Biocomputing.