about
Estimating the stochastic bifurcation structure of cellular networksImplementing arithmetic and other analytic operations by transcriptional regulationQuantitative epistasis analysis and pathway inference from genetic interaction dataPooled screening for synergistic interactions subject to blocking and noiseBayesian Correlation Analysis for Sequence Count DataA scaling law for random walks on networks.MaSC: mappability-sensitive cross-correlation for estimating mean fragment length of single-end short-read sequencing dataAdaptive bandwidth kernel density estimation for next-generation sequencing data.BIDCHIPS: bias decomposition and removal from ChIP-seq data clarifies true binding signal and its functional correlates.A fluctuation method to quantify in vivo fluorescence dataA trade-off between sample complexity and computational complexity in learning Boolean networks from time-series data.A general model of codon bias due to GC mutational biasRobust patterns in the stochastic organization of filopodia.Chromatin tandem affinity purification sequencing.Functional data analysis for identifying nonlinear models of gene regulatory networksReverse engineering the gap gene network of Drosophila melanogasterFiloDetect: automatic detection of filopodia from fluorescence microscopy images.Maximum probability reaction sequences in stochastic chemical kinetic systems.Learning a cost function for microscope image segmentation.Noisy information processing through transcriptional regulation.Systematic discovery of Rab GTPases with synaptic functions in Drosophila.Transcriptional dominance of Pax7 in adult myogenesis is due to high-affinity recognition of homeodomain motifs.Integrative genomics positions MKRN1 as a novel ribonucleoprotein within the embryonic stem cell gene regulatory networkUTX inhibition as selective epigenetic therapy against TAL1-driven T-cell acute lymphoblastic leukemiaControl of glioblastoma tumorigenesis by feed-forward cytokine signaling.Strategies for cellular decision-making.Methods for Determining the Statistical Significance of Enrichment or Depletion of Gene Ontology Classifications under Weighted Membership.Uncovering robust patterns of microRNA co-expression across cancers using Bayesian Relevance NetworksInduction of Activating Transcription Factor 3 Is Associated with Cisplatin Responsiveness in Non-Small Cell Lung Carcinoma Cells.miR Profiling Identifies Cyclin-Dependent Kinase 6 Downregulation as a Potential Mechanism of Acquired Cisplatin Resistance in Non-Small-Cell Lung Carcinoma.The gap gene system of Drosophila melanogaster: model-fitting and validation.Gene selection for the reconstruction of stem cell differentiation trees: a linear programming approach.What do molecules do when we are not looking? State sequence analysis for stochastic chemical systems.Robust dynamics in minimal hybrid models of genetic networks.Statistical lower bounds on protein copy number from fluorescence expression images.Correction: Estimating the Stochastic Bifurcation Structure of Cellular Networks.On cross-conditional and fluctuation correlations in competitive RNA networks.Dynamics in Epistasis Analysis.Dynamical properties of model gene networks and implications for the inverse problem.Neural population densities shape network correlations.
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description
hulumtues
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researcher
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wetenschapper
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հետազոտող
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name
Theodore J Perkins
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Theodore J Perkins
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Theodore J Perkins
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Theodore J Perkins
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Theodore Perkins
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type
label
Theodore J Perkins
@en
Theodore J Perkins
@es
Theodore J Perkins
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Theodore J Perkins
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Theodore Perkins
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prefLabel
Theodore J Perkins
@en
Theodore J Perkins
@es
Theodore J Perkins
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Theodore J Perkins
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Theodore Perkins
@fr
P106
P1960
tKukTjAAAAAJ
P21
P2456
P31
P496
0000-0002-6622-8003