about
Scalable rule-based modelling of allosteric proteins and biochemical networksA microfluidic system for studying ageing and dynamic single-cell responses in budding yeastThe scaffold protein Ste5 directly controls a switch-like mating decision in yeast.Stochastic gene expression in a single cellTrade-offs and constraints in allosteric sensingThe fidelity of dynamic signaling by noisy biomolecular networksGene regulation at the single-cell levelIntrinsic and extrinsic contributions to stochasticity in gene expression.Accurate prediction of gene feedback circuit behavior from component properties.A fluctuation method to quantify in vivo fluorescence dataFacile: a command-line network compiler for systems biology.Environmental sensing, information transfer, and cellular decision-making.A Bayesian method for inferring quantitative information from FRET data.Measuring single-cell gene expression dynamics in bacteria using fluorescence time-lapse microscopy.The role of proofreading in signal transduction specificity.Ultrasensitivity in phosphorylation-dephosphorylation cycles with little substrateMechanistic links between cellular trade-offs, gene expression, and growthNoisy information processing through transcriptional regulation.Identifying sources of variation and the flow of information in biochemical networksStochastic branching-diffusion models for gene expression.Tracing the sources of cellular variation.Inferring the lifetime of endosomal protein complexes by fluorescence recovery after photobleaching.Colored extrinsic fluctuations and stochastic gene expression.Analytical distributions for stochastic gene expression.The stochastic nature of biochemical networks.Cross-talk between signaling pathways can generate robust oscillations in calcium and cAMP.Strategies for cellular decision-making.Inferring time derivatives including cell growth rates using Gaussian processes.Predicting metabolic adaptation from networks of mutational pathsUnmixing of fluorescence spectra to resolve quantitative time-series measurements of gene expression in plate readers.BioJazz: in silico evolution of cellular networks with unbounded complexity using rule-based modeling.Distributing tasks via multiple input pathways increases cellular survival in stress.Morphologically Constrained and Data Informed Cell Segmentation of Budding Yeast.A new method for post-translationally labeling proteins in live cells for fluorescence imaging and tracking.Noise in genetic and neural networks.A geometric analysis of fast-slow models for stochastic gene expression.Systems and synthetic biology underpinning biotechnology.Efficient attenuation of stochasticity in gene expression through post-transcriptional control.Transition between fermentation and respiration determines history-dependent behavior in fluctuating carbon sourcesDistributed and dynamic intracellular organization of extracellular information
P50
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P50
description
hulumtues
@sq
researcher
@en
wetenschapper
@nl
հետազոտող
@hy
name
Peter S Swain
@ast
Peter S Swain
@en
Peter S Swain
@es
Peter S Swain
@nl
Peter S Swain
@sl
type
label
Peter S Swain
@ast
Peter S Swain
@en
Peter S Swain
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Peter S Swain
@nl
Peter S Swain
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prefLabel
Peter S Swain
@ast
Peter S Swain
@en
Peter S Swain
@es
Peter S Swain
@nl
Peter S Swain
@sl
P106
P21
P2456
P31
P496
0000-0001-7489-8587