about
Revealing the architecture of gene regulation: the promise of eQTL studiesUbiquitin-mediated response to microsporidia and virus infection in C. elegansVariability in gene expression underlies incomplete penetranceMulti-species microarrays reveal the effect of sequence divergence on gene expression profilesImaging individual mRNA molecules using multiple singly labeled probes.Aro: a machine learning approach to identifying single molecules and estimating classification error in fluorescence microscopy imagesMED GATA factors promote robust development of the C. elegans endoderm.Natural selection on gene expression.Mutagenesis of GATA motifs controlling the endoderm regulator elt-2 reveals distinct dominant and secondary cis-regulatory elementsThe yeast galactose network as a quantitative model for cellular memory.Genetic properties influencing the evolvability of gene expression.A high productivity/low maintenance approach to high-performance computation for biomedicine: four case studies.Chromatin regulators shape the genotype-phenotype map.A living vector field reveals constraints on galactose network induction in yeastErratum to: 'Aro: a machine learning approach to identifying single molecules and estimating classification error in fluorescence microscopy images'Identifying fluorescently labeled single molecules in image stacks using machine learning.Geometry of gene expression dynamics.A gene expression map for the euchromatic genome of Drosophila melanogaster.Evolution of gene expression in the Drosophila melanogaster subgroup.Microarray analysis of Drosophila development during metamorphosis.Duplicate genes increase gene expression diversity within and between species.A mutation accumulation assay reveals a broad capacity for rapid evolution of gene expression.High-throughput interaction screens illuminate the role of c-di-AMP in cyanobacterial nighttime survival.Genome-wide fitness assessment during diurnal growth reveals an expanded role of the cyanobacterial circadian clock protein KaiAThe Genotype–Phenotype Maps of Systems Biology and Quantitative Genetics: Distinct and ComplementaryFrom Jawbones to Genomes: The History of a ScienceThe circadian clock and darkness control natural competence in cyanobacteria
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description
hulumtues
@sq
onderzoeker
@nl
researcher
@en
հետազոտող
@hy
name
Scott A Rifkin
@ast
Scott A Rifkin
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Scott A Rifkin
@es
Scott A Rifkin
@nl
Scott A Rifkin
@sl
type
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Scott A Rifkin
@ast
Scott A Rifkin
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Scott A Rifkin
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Scott A Rifkin
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Scott A Rifkin
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prefLabel
Scott A Rifkin
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Scott A Rifkin
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Scott A Rifkin
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Scott A Rifkin
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Scott A Rifkin
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P106
P21
P31
P496
0000-0001-8476-3256