Reverse Engineering of Biological Systems

Gene regulatory network (GRN) consists of a set of genes and regulatory relationships between the genes. As outputs of the GRN, gene expression data contain important information that can be used to reconstruct the GRN to a certain degree. However, the reverse engineer of GRNs from gene expression data is a challenging problem in systems biology. Conventional methods fail in inferring GRNs from gene expression data because of the relative less number of observations compared with the large number of the genes. The inherent noises in the data make the inference accuracy relatively low and the combinatorial explosion nature of the problem makes the inference task extremely difficult. This study aims at reconstructing the GRNs from time-course gene expression data based on GRN models using system identification and parameter estimation methods. The main content consists of three parts: (1) a review of the methods for reverse engineering of GRNs, (2) reverse engineering of GRNs based on linear models and (3) reverse engineering of GRNs based on a nonlinear model, specifically S-systems. In the first part, after the necessary background and challenges of the problem are introduced, various methods for the inference of GRNs are comprehensively reviewed from two aspects: models and inference algorithms. The advantages and disadvantages of each method are discussed. The second part focus on inferring GRNs from time-course gene expression data based on linear models. First, the statistical properties of two sparse penalties, adaptive LASSO and SCAD, with an autoregressive model are studied. It shows that the proposed methods using these two penalties can asymptotically reconstruct the underlying networks. This provides a solid foundation for these methods and their extensions. Second, the integration of multiple datasets should be able to improve the accuracy of the GRN inference. A novel method, Huber group LASSO, is developed to infer GRNs from multiple time-course data, which is also robust to large noises and outliers that the data may contain. An efficient algorithm is also developed and its convergence analysis is provided. The third part can be further divided into two phases: estimating the parameters of S-systems with system structure known and inferring the S-systems without knowing the system structure. Two methods, alternating weighted least squares (AWLS) and auxiliary function guided coordinate descent (AFGCD), have been developed to estimate the parameters of S-systems from time-course data. AWLS takes advantage of the special structure of S-systems and significantly outperforms one existing method, alternating regression (AR). AFGCD uses the auxiliary function and coordinate descent techniques to get the smart and efficient iteration formula and its convergence is theoretically guaranteed. Without knowing the system structure, taking advantage of the special structure of the S-system model, a novel method, pruning separable parameter estimation algorithm (PSPEA) is developed to locally infer the S-systems. PSPEA is then combined with continuous genetic algorithm (CGA) to form a hybrid algorithm which can globally reconstruct the S-systems.

[1]  Tommi S. Jaakkola,et al.  Combining Location and Expression Data for Principled Discovery of Genetic Regulatory Network Models , 2001, Pacific Symposium on Biocomputing.

[2]  Araceli M. Huerta,et al.  From specific gene regulation to genomic networks: a global analysis of transcriptional regulation in Escherichia coli. , 1998, BioEssays : news and reviews in molecular, cellular and developmental biology.

[3]  Byoung-Tak Zhang,et al.  Identification of biochemical networks by S-tree based genetic programming , 2006, Bioinform..

[4]  Aurélien Mazurie,et al.  Gene networks inference using dynamic Bayesian networks , 2003, ECCB.

[5]  Fang-Xiang Wu,et al.  STATE-SPACE MODEL WITH TIME DELAYS FOR GENE REGULATORY NETWORKS , 2004 .

[6]  Dirk Husmeier,et al.  Sensitivity and specificity of inferring genetic regulatory interactions from microarray experiments with dynamic Bayesian networks , 2003, Bioinform..

[7]  Fang-Xiang Wu,et al.  Robust inference of gene regulatory networks from multiple microarray datasets , 2013, 2013 IEEE International Conference on Bioinformatics and Biomedicine.

[8]  T. Hastie,et al.  SparseNet: Coordinate Descent With Nonconvex Penalties , 2011, Journal of the American Statistical Association.

[9]  Jianqing Fan,et al.  Variable Selection via Nonconcave Penalized Likelihood and its Oracle Properties , 2001 .

[10]  Hitoshi Iba,et al.  Reverse engineering gene regulatory network from microarray data using linear time-variant model , 2010, BMC Bioinformatics.

[11]  David Page,et al.  Modelling regulatory pathways in E. coli from time series expression profiles , 2002, ISMB.

[12]  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.

[13]  P. Tseng Convergence of a Block Coordinate Descent Method for Nondifferentiable Minimization , 2001 .

[14]  D. Floreano,et al.  Revealing strengths and weaknesses of methods for gene network inference , 2010, Proceedings of the National Academy of Sciences.

[15]  Fang-Xiang Wu,et al.  Notice of RetractionParameter Estimation Method for Periodical Gene Identification , 2011, 2011 5th International Conference on Bioinformatics and Biomedical Engineering.

[16]  Edward R. Dougherty,et al.  Inference of Gene Regulatory Networks using S-System: A Unified Approach , 2007, 2007 IEEE Symposium on Computational Intelligence and Bioinformatics and Computational Biology.

[17]  Zoubin Ghahramani,et al.  Modeling T-cell activation using gene expression profiling and state-space models , 2004, Bioinform..

[18]  Satoru Miyano,et al.  Inferring Gene Regulatory Networks from Time-Ordered Gene Expression Data of Bacillus Subtilis Using Differential Equations , 2002, Pacific Symposium on Biocomputing.

[19]  Masaru Tomita,et al.  Dynamic modeling of genetic networks using genetic algorithm and S-system , 2003, Bioinform..

[20]  M. Gustafsson,et al.  Constructing and analyzing a large-scale gene-to-gene regulatory network Lasso-constrained inference and biological validation , 2005, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[21]  M. Yuan,et al.  Model selection and estimation in regression with grouped variables , 2006 .

[22]  Stuart A. Kauffman,et al.  The origins of order , 1993 .

[23]  Shuhei Kimura,et al.  Effective parameter estimation for S-system models using LPMs and evolutionary algorithms , 2010, IEEE Congress on Evolutionary Computation.

[24]  Ning Sun,et al.  Bayesian error analysis model for reconstructing transcriptional regulatory networks. , 2006, Proceedings of the National Academy of Sciences of the United States of America.

[25]  Katy C. Kao,et al.  Transcriptome-based determination of multiple transcription regulator activities in Escherichia coli by using network component analysis. , 2004, Proceedings of the National Academy of Sciences of the United States of America.

[26]  Jean-Philippe Vert,et al.  TIGRESS: Trustful Inference of Gene REgulation using Stability Selection , 2012, BMC Systems Biology.

[27]  Ronald W. Davis,et al.  Quantitative Monitoring of Gene Expression Patterns with a Complementary DNA Microarray , 1995, Science.

[28]  Robert Castelo,et al.  A Robust Procedure For Gaussian Graphical Model Search From Microarray Data With p Larger Than n , 2006, J. Mach. Learn. Res..

[29]  Albert-László Barabási,et al.  Observability of complex systems , 2013, Proceedings of the National Academy of Sciences.

[30]  Fang-Xiang Wu,et al.  Properties of sparse penalties on inferring gene regulatory networks from time-course gene expression data. , 2015, IET systems biology.

[31]  Fang-Xiang Wu,et al.  Estimating parameters of S-systems by an auxiliary function guided coordinate descent method , 2014 .

[32]  Florence d'Alché-Buc,et al.  OKVAR-Boost: a novel boosting algorithm to infer nonlinear dynamics and interactions in gene regulatory networks , 2013, Bioinform..

[33]  Michael Hecker,et al.  Gene regulatory network inference: Data integration in dynamic models - A review , 2009, Biosyst..

[34]  Alexander J. Hartemink,et al.  Informative Structure Priors: Joint Learning of Dynamic Regulatory Networks from Multiple Types of Data , 2004, Pacific Symposium on Biocomputing.

[35]  David Maxwell Chickering,et al.  Learning Bayesian Networks: The Combination of Knowledge and Statistical Data , 1994, Machine Learning.

[36]  Stephen P. Boyd,et al.  Convex Optimization , 2004, Algorithms and Theory of Computation Handbook.

[37]  Satoru Miyano,et al.  Identification of Genetic Networks from a Small Number of Gene Expression Patterns Under the Boolean Network Model , 1998, Pacific Symposium on Biocomputing.

[38]  Satoru Miyano,et al.  Estimating gene networks from gene expression data by combining Bayesian network model with promoter element detection , 2003, ECCB.

[39]  A. Butte,et al.  Discovering functional relationships between RNA expression and chemotherapeutic susceptibility using relevance networks. , 2000, Proceedings of the National Academy of Sciences of the United States of America.

[40]  Shuhei Kimura,et al.  Genetic network inference as a series of discrimination tasks , 2009, Bioinform..

[41]  F. Amato,et al.  Exploiting prior knowledge and preferential attachment to infer biological interaction networks , 2009, 2009 17th Mediterranean Conference on Control and Automation.

[42]  Adam A. Margolin,et al.  Reverse engineering of regulatory networks in human B cells , 2005, Nature Genetics.

[43]  Edward R. Dougherty,et al.  Probabilistic Boolean networks: a rule-based uncertainty model for gene regulatory networks , 2002, Bioinform..

[44]  Satoru Miyano,et al.  Inferring gene networks from time series microarray data using dynamic Bayesian networks , 2003, Briefings Bioinform..

[45]  Jonathan D. Cryer,et al.  Time Series Analysis , 1986 .

[46]  J. Vohradský Neural network model of gene expression , 2001, FASEB journal : official publication of the Federation of American Societies for Experimental Biology.

[47]  Axel Kowald,et al.  Systems Biology in Practice: Concepts, Implementation and Application , 2005 .

[48]  M. Bittner,et al.  Expression profiling using cDNA microarrays , 1999, Nature Genetics.

[49]  H. Zou The Adaptive Lasso and Its Oracle Properties , 2006 .

[50]  Gary D. Stormo,et al.  DNA binding sites: representation and discovery , 2000, Bioinform..

[51]  D. Husmeier,et al.  Reconstructing Gene Regulatory Networks with Bayesian Networks by Combining Expression Data with Multiple Sources of Prior Knowledge , 2007, Statistical applications in genetics and molecular biology.

[52]  Satoru Miyano,et al.  Utilizing Evolutionary Information and Gene Expression Data for Estimating Gene Networks with Bayesian Network Models , 2005, J. Bioinform. Comput. Biol..

[53]  S. Rosset,et al.  Piecewise linear regularized solution paths , 2007, 0708.2197.

[54]  Eberhard O Voit,et al.  Theoretical Biology and Medical Modelling , 2022 .

[55]  Jonas S. Almeida,et al.  Parameter optimization in S-system models , 2008, BMC Systems Biology.

[56]  Juan Liu,et al.  Transittability of complex networks and its applications to regulatory biomolecular networks , 2014, Scientific Reports.

[57]  Yu-Ting Hsiao,et al.  Inferring robust gene networks from expression data by a sensitivity-based incremental evolution method , 2012, BMC Bioinformatics.

[58]  D. di Bernardo,et al.  How to infer gene networks from expression profiles , 2007, Molecular systems biology.

[59]  James L. Winkler,et al.  Accessing Genetic Information with High-Density DNA Arrays , 1996, Science.

[60]  Masao Nagasaki,et al.  Recursive regularization for inferring gene networks from time-course gene expression profiles , 2009, BMC Systems Biology.

[61]  Uri Alon,et al.  An Introduction to Systems Biology , 2006 .

[62]  Chiara Sabatti,et al.  Bayesian sparse hidden components analysis for transcription regulation networks , 2005, Bioinform..

[63]  P. Brazhnik,et al.  Gene networks: how to put the function in genomics. , 2002, Trends in biotechnology.

[64]  Helmut Ltkepohl,et al.  New Introduction to Multiple Time Series Analysis , 2007 .

[65]  Satoru Miyano,et al.  Using Protein-Protein Interactions for Refining Gene Networks Estimated from Microarray Data by Bayesian Networks , 2003, Pacific Symposium on Biocomputing.

[66]  Wenjiang J. Fu,et al.  Asymptotics for lasso-type estimators , 2000 .

[67]  Pei Wang,et al.  Partial Correlation Estimation by Joint Sparse Regression Models , 2008, Journal of the American Statistical Association.

[68]  Satoru Miyano,et al.  Identification of genetic networks by strategic gene disruptions and gene overexpressions under a boolean model , 2003, Theor. Comput. Sci..

[69]  Li-Ping Tian,et al.  Nonlinear-Model-Based Analysis Methods for Time-Course Gene Expression Data , 2014, TheScientificWorldJournal.

[70]  Zoubin Ghahramani,et al.  A Bayesian approach to reconstructing genetic regulatory networks with hidden factors , 2005, Bioinform..

[71]  Nir Friedman,et al.  Inferring Cellular Networks Using Probabilistic Graphical Models , 2004, Science.

[72]  Ramesh Ram,et al.  A Markov-Blanket-Based Model for Gene Regulatory Network Inference , 2011, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[73]  Satoru Miyano,et al.  Combining microarrays and biological knowledge for estimating gene networks via Bayesian networks , 2003, Computational Systems Bioinformatics. CSB2003. Proceedings of the 2003 IEEE Bioinformatics Conference. CSB2003.

[74]  Katsuhisa Horimoto,et al.  Co-expressed gene assessment based on the path consistency algorithm: Operon detention in Escherichia coli , 2009, 2009 IEEE International Conference on Systems, Man and Cybernetics.

[75]  Fentaw Abegaz,et al.  Sparse time series chain graphical models for reconstructing genetic networks. , 2013, Biostatistics.

[76]  Chang Wook Ahn,et al.  On the practical genetic algorithms , 2005, GECCO '05.

[77]  Fang-Xiang Wu,et al.  Separable Parameter Estimation Method for Nonlinear Biological Systems , 2009, 2009 3rd International Conference on Bioinformatics and Biomedical Engineering.

[78]  Fang-Xiang Wu,et al.  WIREs Data Mining and Knowledge Discovery Reverse engineering of GRNs from biological data mRNA X mRNA Y Protein X Protein Y Transcription Translation DNA Gene X Gene Y mRNA Protein Replication , 2012 .

[79]  Fang-Xiang Wu,et al.  A group LASSO-based method for robustly inferring gene regulatory networks from multiple time-course datasets , 2014, BMC Systems Biology.

[80]  D. Bernardo,et al.  A Yeast Synthetic Network for In Vivo Assessment of Reverse-Engineering and Modeling Approaches , 2009, Cell.

[81]  Mohammed Al-Shalalfa,et al.  Influence of Prior Knowledge in Constraint-Based Learning of Gene Regulatory Networks , 2011, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[82]  Ali Shojaie,et al.  Discovering graphical Granger causality using the truncating lasso penalty , 2010, Bioinform..

[83]  Gerhard Reinelt,et al.  Reconstructing nonlinear dynamic models of gene regulation using stochastic sampling , 2009, BMC Bioinformatics.

[84]  Korbinian Strimmer,et al.  Learning causal networks from systems biology time course data: an effective model selection procedure for the vector autoregressive process , 2007, BMC Bioinformatics.

[85]  Hazem N. Nounou,et al.  Inferring Gene Regulatory Networks via Nonlinear State-Space Models and Exploiting Sparsity , 2012, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[86]  Gavin Sherlock,et al.  Implementation of GenePattern within the Stanford Microarray Database , 2008, Nucleic Acids Res..

[87]  Christine Nardini,et al.  An S-System Parameter Estimation Method (SPEM) for Biological Networks , 2012, J. Comput. Biol..

[88]  Long Cheng,et al.  Recurrent Neural Network for Non-Smooth Convex Optimization Problems With Application to the Identification of Genetic Regulatory Networks , 2011, IEEE Transactions on Neural Networks.

[89]  Christian J. Stoeckert,et al.  Bayesian variable selection and data integration for biological regulatory networks , 2006, math/0610034.

[90]  Trevor Hastie,et al.  Regularization Paths for Generalized Linear Models via Coordinate Descent. , 2010, Journal of statistical software.

[91]  E. Dougherty,et al.  Gene perturbation and intervention in probabilistic Boolean networks. , 2002, Bioinformatics.

[92]  Hidde de Jong,et al.  Modeling and Simulation of Genetic Regulatory Systems: A Literature Review , 2002, J. Comput. Biol..

[93]  Fang-Xiang Wu,et al.  Alternating weighted least squares parameter estimation for biological S-systems , 2012, 2012 IEEE 6th International Conference on Systems Biology (ISB).

[94]  Li-Ping Tian,et al.  Estimating parameters in genetic regulatory networks with SUM logic , 2011, 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[95]  Constantin F. Aliferis,et al.  A Comparison of Novel and State-of-the-Art Polynomial Bayesian Network Learning Algorithms , 2005, AAAI.

[96]  Vincent Moulton,et al.  Parameter Reconstruction for Biochemical Networks Using Interval Analysis , 2006, Reliab. Comput..

[97]  E. Dougherty,et al.  CONTROL OF STATIONARY BEHAVIOR IN PROBABILISTIC BOOLEAN NETWORKS BY MEANS OF STRUCTURAL INTERVENTION , 2002 .

[98]  Satoru Miyano,et al.  Dynamic Bayesian Network and Nonparametric Regression for Nonlinear Modeling of Gene Networks from Time Series Gene Expression Data , 2003, CMSB.

[99]  Luonan Chen,et al.  Inferring transcriptional regulatory networks from high-throughput data , 2007, Bioinform..

[100]  J. Franklin,et al.  The elements of statistical learning: data mining, inference and prediction , 2005 .

[101]  S Fuhrman,et al.  Reveal, a general reverse engineering algorithm for inference of genetic network architectures. , 1998, Pacific Symposium on Biocomputing. Pacific Symposium on Biocomputing.

[102]  Isabel M. Tienda-Luna,et al.  Reverse engineering gene regulatory networks , 2009, IEEE Signal Processing Magazine.

[103]  Diego di Bernardo,et al.  Inference of gene regulatory networks and compound mode of action from time course gene expression profiles , 2006, Bioinform..

[104]  Feng-Sheng Wang,et al.  Evolutionary optimization with data collocation for reverse engineering of biological networks , 2005, Bioinform..

[105]  Vincent Frouin,et al.  Gene Association Networks from Microarray Data Using a Regularized Estimation of Partial Correlation Based on PLS Regression , 2010, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[106]  Mike Tyers,et al.  BioGRID: a general repository for interaction datasets , 2005, Nucleic Acids Res..

[107]  Fang-Xiang Wu,et al.  Identification of gene regulatory networks from time course gene expression data , 2010, 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology.

[108]  Fang-Xiang Wu,et al.  Identification of Pseudo-Periodic Gene Expression Profiles , 2011 .

[109]  Mokhtar S. Bazaraa,et al.  Nonlinear Programming: Theory and Algorithms , 1993 .

[110]  C. Geyer On the Asymptotics of Constrained $M$-Estimation , 1994 .

[111]  Zhongke Shi,et al.  Estimating parameters in the caspase-activated apoptosis system , 2010 .

[112]  Hidetoshi Shimodaira,et al.  A Scale-Free Structure Prior for Graphical Models with Applications in Functional Genomics , 2010, PloS one.

[113]  Ziv Bar-Joseph,et al.  Analyzing time series gene expression data , 2004, Bioinform..

[114]  Fang-Xiang Wu,et al.  M-matrix-based stability conditions for genetic regulatory networks with time-varying delays and noise perturbations. , 2013, IET systems biology.

[115]  Trupti Joshi,et al.  Inferring gene regulatory networks from multiple microarray datasets , 2006, Bioinform..

[116]  Paul Horton,et al.  Inference of Scale-free Networks from Gene Expression Time Series , 2006, J. Bioinform. Comput. Biol..

[117]  Jesper Tegnér,et al.  Reverse engineering gene networks using singular value decomposition and robust regression , 2002, Proceedings of the National Academy of Sciences of the United States of America.

[118]  Stephen P. Boyd,et al.  Inferring stable genetic networks from steady-state data , 2011, Autom..

[119]  S. Kimura,et al.  Inference of S-system Models of Genetic Networks from Noisy Time-series Data , 2004 .

[120]  A. Boulesteix,et al.  Predicting transcription factor activities from combined analysis of microarray and ChIP data: a partial least squares approach , 2005, Theoretical Biology and Medical Modelling.

[121]  João Ricardo Sato,et al.  Modeling gene expression regulatory networks with the sparse vector autoregressive model , 2007, BMC Systems Biology.

[122]  Peng Zhao,et al.  On Model Selection Consistency of Lasso , 2006, J. Mach. Learn. Res..

[123]  H. Zou,et al.  One-step Sparse Estimates in Nonconcave Penalized Likelihood Models. , 2008, Annals of statistics.

[124]  G.J. Pappas,et al.  Identification of stable genetic networks using convex programming , 2008, 2008 American Control Conference.

[125]  Farren J. Isaacs,et al.  Computational studies of gene regulatory networks: in numero molecular biology , 2001, Nature Reviews Genetics.

[126]  Jonas S. Almeida,et al.  Decoupling dynamical systems for pathway identification from metabolic profiles , 2004, Bioinform..

[127]  Jean-Loup Faulon,et al.  Boolean dynamics of genetic regulatory networks inferred from microarray time series data , 2007, Bioinform..

[128]  P. Bühlmann,et al.  Statistical Applications in Genetics and Molecular Biology Low-Order Conditional Independence Graphs for Inferring Genetic Networks , 2011 .

[129]  Nicola J. Rinaldi,et al.  Computational discovery of gene modules and regulatory networks , 2003, Nature Biotechnology.

[130]  Li-Ping Tian,et al.  Nonlinear Model-Based Method for Clustering Periodically Expressed Genes , 2011, TheScientificWorldJournal.

[131]  Sushmita Mitra,et al.  Genetic Networks and Soft Computing , 2011, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[132]  R. Laubenbacher,et al.  A computational algebra approach to the reverse engineering of gene regulatory networks. , 2003, Journal of theoretical biology.

[133]  Nicola J. Rinaldi,et al.  Transcriptional Regulatory Networks in Saccharomyces cerevisiae , 2002, Science.

[134]  Michal Linial,et al.  Using Bayesian Networks to Analyze Expression Data , 2000, J. Comput. Biol..

[135]  Dimitri P. Bertsekas,et al.  Nonlinear Programming , 1997 .

[136]  I. Chou,et al.  Recent developments in parameter estimation and structure identification of biochemical and genomic systems. , 2009, Mathematical biosciences.

[137]  N. Meinshausen,et al.  Stability selection , 2008, 0809.2932.

[138]  Timothy S Gardner,et al.  Reverse-engineering transcription control networks. , 2005, Physics of life reviews.

[139]  Satoru Miyano,et al.  Statistical inference of transcriptional module-based gene networks from time course gene expression profiles by using state space models , 2008, Bioinform..

[140]  Fang-Xiang Wu,et al.  Structure identification and parameter estimation of biological s-systems , 2010, 2010 IEEE International Conference on Bioinformatics and Biomedicine (BIBM).

[141]  Gennaro Oliva,et al.  A Parallel Implementation of the Network Identification by Multiple Regression (NIR) Algorithm to Reverse-Engineer Regulatory Gene Networks , 2010, PloS one.

[142]  Shuhei Kimura,et al.  Inference of S-system models of genetic networks using a cooperative coevolutionary algorithm , 2005, Bioinform..

[143]  Chih-Hung Hsieh,et al.  An Intelligent Two-Stage Evolutionary Algorithm for Dynamic Pathway Identification From Gene Expression Profiles , 2007, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[144]  Katsuhisa Horimoto,et al.  Discovery of Chemical Compound Groups with Common Structures by a Network Analysis Approach (Affinity Prediction Method) , 2011, J. Chem. Inf. Model..

[145]  Alberto de la Fuente,et al.  Discovery of meaningful associations in genomic data using partial correlation coefficients , 2004, Bioinform..

[146]  James V. Beck,et al.  Parameter Estimation in Engineering and Science , 1977 .

[147]  Prospero C. Naval,et al.  Parameter estimation using Simulated Annealing for S-system models of biochemical networks , 2007, Bioinform..

[148]  Ju H. Park,et al.  State estimation for genetic regulatory networks with time-varying delay using stochastic sampled-data , 2013, 2013 9th Asian Control Conference (ASCC).

[149]  Fang-Xiang Wu,et al.  Inferring gene regulatory networks from multiple time course gene expression datasets , 2011, 2011 IEEE International Conference on Systems Biology (ISB).

[150]  Fang-Xiang Wu,et al.  Gene Regulatory Network modelling: a state-space approach , 2008, Int. J. Data Min. Bioinform..

[151]  H. Sebastian Seung,et al.  Algorithms for Non-negative Matrix Factorization , 2000, NIPS.

[152]  Xing-Ming Zhao,et al.  Inferring gene regulatory networks from gene expression data by PC-algorithm based on conditional mutual information , 2011 .

[153]  Eberhard O. Voit,et al.  Computational Analysis of Biochemical Systems: A Practical Guide for Biochemists and Molecular Biologists , 2000 .

[154]  Edward R. Dougherty,et al.  From Boolean to probabilistic Boolean networks as models of genetic regulatory networks , 2002, Proc. IEEE.

[155]  Fang-Xiang Wu,et al.  Inference of Biological S-System Using the Separable Estimation Method and the Genetic Algorithm , 2012, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[156]  A. G. de la Fuente,et al.  From Knockouts to Networks: Establishing Direct Cause-Effect Relationships through Graph Analysis , 2010, PloS one.

[157]  R. Tibshirani Regression Shrinkage and Selection via the Lasso , 1996 .

[158]  M. Page,et al.  Search for Steady States of Piecewise-Linear Differential Equation Models of Genetic Regulatory Networks , 2008, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[159]  Michael K. Ng,et al.  Mining, Modeling, and Evaluation of Subnetworks From Large Biomolecular Networks and Its Comparison Study , 2009, IEEE Transactions on Information Technology in Biomedicine.

[160]  A. Arkin,et al.  Stochastic mechanisms in gene expression. , 1997, Proceedings of the National Academy of Sciences of the United States of America.

[161]  Fang-Xiang Wu,et al.  Parameter estimation method for improper fractional models and its application to molecular biological systems , 2010, 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology.

[162]  J. Collins,et al.  Chemogenomic profiling on a genome-wide scale using reverse-engineered gene networks , 2005, Nature Biotechnology.

[163]  J. Collins,et al.  Inferring Genetic Networks and Identifying Compound Mode of Action via Expression Profiling , 2003, Science.

[164]  Chiara Sabatti,et al.  Network component analysis: Reconstruction of regulatory signals in biological systems , 2003, Proceedings of the National Academy of Sciences of the United States of America.

[165]  Fang-Xiang Wu,et al.  Modeling Gene Expression from Microarray Expression Data with State-Space Equations , 2003, Pacific Symposium on Biocomputing.

[166]  Tom Burr,et al.  Causation, Prediction, and Search , 2003, Technometrics.

[167]  Michael Q. Zhang,et al.  Identifying cooperativity among transcription factors controlling the cell cycle in yeast. , 2003, Nucleic acids research.

[168]  R. Tibshirani,et al.  Least angle regression , 2004, math/0406456.