Switched Latent Force Models for Reverse-Engineering Transcriptional Regulation in Gene Expression Data
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[1] Mauricio A. Álvarez,et al. Latent force models for describing transcriptional regulation processes in the embryo development problem for the Drosophila melanogaster , 2014, 2014 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.
[2] A. Kudlicki,et al. Logic of the Yeast Metabolic Cycle: Temporal Compartmentalization of Cellular Processes , 2005, Science.
[3] Wei Liu,et al. Gaussian process modelling for bicoid mRNA regulation in spatio-temporal Bicoid profile , 2012, Bioinform..
[4] Bernhard Schölkopf,et al. Switched Latent Force Models for Movement Segmentation , 2010, NIPS.
[5] Andreas Ruttor,et al. Switching regulatory models of cellular stress response , 2009, Bioinform..
[6] G. Malacinski,et al. Essentials Of Molecular Biology , 1985 .
[7] Daniel J. Gaffney,et al. A survey of best practices for RNA-seq data analysis , 2016, Genome Biology.
[8] Terence Hwa,et al. Transcriptional regulation by the numbers: models. , 2005, Current opinion in genetics & development.
[9] Neil D. Lawrence,et al. Probabilistic inference of transcription factor concentrations and gene-specific regulatory activities , 2006, Bioinform..
[10] Nicola J. Rinaldi,et al. Transcriptional Regulatory Networks in Saccharomyces cerevisiae , 2002, Science.
[11] Gal Chechik,et al. Timing properties of gene expression responses to environmental changes , 2009 .
[12] Neil D. Lawrence,et al. Latent Force Models , 2009, AISTATS.
[13] Germán Castellanos-Domínguez,et al. A latent force model for describing electric propagation in deep brain stimulation: A simulation study , 2014, 2014 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.
[14] Neil D. Lawrence,et al. Identifying targets of multiple co-regulating transcription factors from expression time-series by Bayesian model comparison , 2012, BMC Systems Biology.
[15] Guido Sanguinetti,et al. Transition of Escherichia coli from Aerobic to Micro-aerobic Conditions Involves Fast and Slow Reacting Regulatory Components* , 2007, Journal of Biological Chemistry.
[16] David A. Rand,et al. A temporal switch model for estimating transcriptional activity in gene expression , 2013, Bioinform..
[17] Kevin P. Murphy,et al. Machine learning - a probabilistic perspective , 2012, Adaptive computation and machine learning series.
[18] Uri Alon,et al. An Introduction to Systems Biology , 2006 .
[19] Christopher K. I. Williams,et al. Gaussian Processes for Machine Learning (Adaptive Computation and Machine Learning) , 2005 .
[20] M. Gerstein,et al. RNA-Seq: a revolutionary tool for transcriptomics , 2009, Nature Reviews Genetics.
[21] Sailes K. Sengijpta. Fundamentals of Statistical Signal Processing: Estimation Theory , 1995 .
[22] Neil D. Lawrence,et al. Modelling transcriptional regulation using Gaussian Processes , 2006, NIPS.
[23] Guido Sanguinetti,et al. Learning combinatorial transcriptional dynamics from gene expression data , 2010, Bioinform..
[24] Hernan G. Garcia,et al. Transcriptional Regulation by the Numbers 2: Applications , 2004, q-bio/0412011.
[25] M. Barenco,et al. Ranked prediction of p53 targets using hidden variable dynamic modeling , 2006, Genome Biology.
[26] Zalmiyah Zakaria,et al. A review on the computational approaches for gene regulatory network construction , 2014, Comput. Biol. Medicine.
[27] Neil D. Lawrence,et al. Gaussian process modelling of latent chemical species: applications to inferring transcription factor activities , 2008, ECCB.
[28] Eva Balsa-Canto,et al. Reverse-Engineering Post-Transcriptional Regulation of Gap Genes in Drosophila melanogaster , 2013, PLoS Comput. Biol..
[29] Nicola J. Rinaldi,et al. Transcriptional regulatory code of a eukaryotic genome , 2004, Nature.
[30] Christopher M. Bishop,et al. Pattern Recognition and Machine Learning (Information Science and Statistics) , 2006 .