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Links from GEO DataSets

Items: 20

1.

Expression profiling to identify independent regulatory signals in Escherichia coli

(Submitter supplied) RNA sequencing was performed on E. coli K12 MG1655 with various supplements designed to activate transcriptional regulators
Organism:
Escherichia coli
Type:
Expression profiling by high throughput sequencing
Platform:
GPL21433
30 Samples
Download data: CSV
Series
Accession:
GSE122295
ID:
200122295
2.

Deconvoluting Independent Regulatory Signals in the Escherichia coli Transcriptome

(Submitter supplied) ChIPexo experiment was performed on E. coli K12 MG1655 with various supplements designed to activate transcriptional regulators
Organism:
Escherichia coli K-12
Type:
Genome binding/occupancy profiling by high throughput sequencing
Platform:
GPL24377
4 Samples
Download data: GFF
Series
Accession:
GSE122320
ID:
200122320
3.

Expression profiling of multiple Escherichia coli strains on glucose minimal media

(Submitter supplied) RNA sequencing was performed on multiple E. coli strains grown on glucose minimal media
Organism:
Escherichia coli
Type:
Expression profiling by high throughput sequencing
Platform:
GPL16085
14 Samples
Download data: CSV
Series
Accession:
GSE122296
ID:
200122296
4.

Expression profiling of E. coli K-12 MG1655

(Submitter supplied) Previously unpublished expression data from E. coli K-12 MG1655 involved in the creation of a large RNAseq database.
Organism:
Escherichia coli str. K-12 substr. MG1655; Escherichia coli BW25113
Type:
Expression profiling by high throughput sequencing
4 related Platforms
12 Samples
Download data: CSV
Series
Accession:
GSE122211
ID:
200122211
5.

Amino acid/Nucleotide perturbation in Escherichia coli

(Submitter supplied) Wild-type E. coli are prototrophic for all amino acid and nucleotides. These are synthesized by a network of interconnected metabolic pathways from a handful precursors molecules, which are regulated at the level of gene expression. It was hypothesized in this study, that since metabolic pathways are interconnected, transcriptional regulation should be shared across multiple pathways. To uncover these regulatory interactions, cells growing at steady state were perturbed by the addition of an end-metabolite (aa or nt), and were allowed to recover. more...
Organism:
Escherichia coli str. K-12 substr. MG1655; Escherichia coli
Type:
Expression profiling by array
Platform:
GPL3503
22 Samples
Download data: GPR
Series
Accession:
GSE15409
ID:
200015409
6.

Systematic identification of metabolites controlling gene expression in E. coli

(Submitter supplied) Cellular metabolism controls gene expression through allosteric interactions between metabolites and transcription factors. Methods to detect these regulatory interactions are mostly based on in vitro binding assays, but there are no methods to identify them at a genome-scale in vivo. Here we show that dynamic transcriptome and metabolome data identify metabolites that are potential effectors of transcription factors in E. more...
Organism:
Escherichia coli
Type:
Expression profiling by high throughput sequencing
Platform:
GPL26155
56 Samples
Download data: CSV
Series
Accession:
GSE131992
ID:
200131992
7.

Regulatory proteins control a transcriptional network in response to antibiotic stress

(Submitter supplied) In a given bacterial population, antibiotic treatment kills a large portion of the population, while a small, tolerant subpopulation survives. Tolerant cells disrupt the efficacy of antibiotic treatment and increase the likelihood that a population gains antibiotic resistance. Antibiotic tolerance is different from resistance because tolerant cells cannot grow and replicate in the presence of the antibiotic, but when the antibiotic is removed, they begin to propagate. more...
Organism:
Escherichia coli
Type:
Expression profiling by high throughput sequencing
Platform:
GPL14548
18 Samples
Download data: CSV
Series
Accession:
GSE156896
ID:
200156896
8.

The contribution of the post-transcriptional regulator CsrA to RNA stability and translation and identification of binding partners

(Submitter supplied) This SuperSeries is composed of the SubSeries listed below.
Organism:
Escherichia coli str. K-12 substr. MG1655
Type:
Expression profiling by high throughput sequencing; Other
Platform:
GPL15010
50 Samples
Download data
Series
Accession:
GSE102386
ID:
200102386
9.

The contribution of the post-transcriptional regulator CsrA to translation

(Submitter supplied) Analysis of the contribution of the post-transcriptional regulator CsrA to translation during exponential growth in Escherichia coli
Organism:
Escherichia coli str. K-12 substr. MG1655
Type:
Expression profiling by high throughput sequencing; Other
Platform:
GPL15010
20 Samples
Download data: CSV
Series
Accession:
GSE102385
ID:
200102385
10.

The contribution of the post-transcriptional regulator CsrA to RNA stability

(Submitter supplied) Analysis of the contribution of the post-transcriptional regulator CsrA to RNA stability during exponential growth in Escherichia coli
Organism:
Escherichia coli str. K-12 substr. MG1655
Type:
Expression profiling by high throughput sequencing
Platform:
GPL15010
20 Samples
Download data: CSV
Series
Accession:
GSE102381
ID:
200102381
11.

RNA binding partners of the post-transcriptional regulator CsrA

(Submitter supplied) Analysis of RNA binding partners of the post-transcriptional regulator CsrA to translation during exponential growth in Escherichia coli
Organism:
Escherichia coli str. K-12 substr. MG1655
Type:
Other
Platform:
GPL15010
10 Samples
Download data: CSV
Series
Accession:
GSE102380
ID:
200102380
12.

Transcriptome analysis of the wildtype and engineered Pseudomonas putida strains grown on different carbon sources (a part of putidaPRECISE321)

(Submitter supplied) This dataset is a part of putidaPRECISE321, which was utilized to unveil the trnascriptional regulatory network of Pseudomonas putida KT244. Bacterial gene expression is orchestrated by numerous transcription factors (TFs). Elucidating how gene expression is regulated is fundamental to understanding bacterial physiology and engineering it for practical use. In this study, a machine-learning approach was applied to uncover the genome-scale transcriptional regulatory network (TRN) in Pseudomonas putida, an important organism for bioproduction. more...
Organism:
Pseudomonas putida KT2440
Type:
Expression profiling by high throughput sequencing
Platform:
GPL28478
81 Samples
Download data: CSV
Series
Accession:
GSE198395
ID:
200198395
13.

Pseudomonas putida KT2440 transcriptomes for the putidaPRECISE321 study

(Submitter supplied) Bacterial gene expression is orchestrated by numerous transcription factors (TFs). Elucidating how gene expression is regulated is fundamental to understanding bacterial physiology and engineering it for practical use. In this study, a machine-learning approach was applied to uncover the genome-scale transcriptional regulatory network (TRN) in Pseudomonas putida, an important organism for bioproduction. more...
Organism:
Pseudomonas putida KT2440
Type:
Expression profiling by high throughput sequencing
Platforms:
GPL28478 GPL28971
22 Samples
Download data: CSV
Series
Accession:
GSE193493
ID:
200193493
14.

Expression data from ethanol-tolerant E. coli strain and wild type under ethanol stress

(Submitter supplied) Cellular tolerance toward ethanol is a complex phenotype involved many genes, and hard to be improved by manipulating individual genes. We previously established exogenous global regulator IrrE mutants that confer Escherichia coli with significantly enhanced tolerance to stresses, including ethanol. In order to elucidate the mechanism for enhancement of ethanol tolerance in the mutants and to identify new genes and pathways that can be possible targets for engineering of ethanol tolerance, we carried out comparative transcriptomic and proteomic analyses with the representative strains E1 and E0 (harboring the ethanol-tolerant mutant E1 of IrrE and the wild type IrrE, respectively). more...
Organism:
Escherichia coli
Type:
Expression profiling by array
Platform:
GPL3154
6 Samples
Download data: CEL
Series
Accession:
GSE30441
ID:
200030441
15.

Decoding genome-wide GadEWX transcriptional regulatory networks reveals a multifaceted cellular response to acid stress in Escherichia coli

(Submitter supplied) This SuperSeries is composed of the SubSeries listed below.
Organism:
Escherichia coli str. K-12 substr. MG1655; Escherichia coli
Type:
Genome binding/occupancy profiling by high throughput sequencing; Expression profiling by high throughput sequencing
Platforms:
GPL17439 GPL16085
16 Samples
Download data: GFF
Series
Accession:
GSE66482
ID:
200066482
16.

Decoding genome-wide GadEWX transcriptional regulatory networks reveals a multifaceted cellular response to acid stress in Escherichia coli [RNA-seq]

(Submitter supplied) The response to acid stress is a fundamental process in bacteria. Three transcription factors, GadE, GadW, and GadX (GadEWX) are known to play a critical role in the transcriptional regulation of glutamate-dependent acid resistance (GDAR) system in Escherichia coli K-12 MG1655. However, the regulatory role of GadEWX in coordinating interacting cellular functions is still unknown. Here, we comprehensively reconstruct genome-wide GadEWX transcriptional regulatory network in E. more...
Organism:
Escherichia coli
Type:
Expression profiling by high throughput sequencing
Platform:
GPL16085
8 Samples
Download data: CSV
Series
Accession:
GSE66481
ID:
200066481
17.

Decoding genome-wide GadEWX transcriptional regulatory networks reveals a multifaceted cellular response to acid stress in Escherichia coli [ChIP-seq]

(Submitter supplied) The response to acid stress is a fundamental process in bacteria. Three transcription factors, GadE, GadW, and GadX (GadEWX) are known to play a critical role in the transcriptional regulation of glutamate-dependent acid resistance (GDAR) system in Escherichia coli K-12 MG1655. However, the regulatory role of GadEWX in coordinating interacting cellular functions is still unknown. Here, we comprehensively reconstruct genome-wide GadEWX transcriptional regulatory network in E. more...
Organism:
Escherichia coli str. K-12 substr. MG1655
Type:
Genome binding/occupancy profiling by high throughput sequencing
Platform:
GPL17439
8 Samples
Download data: GFF
Series
Accession:
GSE66441
ID:
200066441
18.

Large-Scale Mapping and Validation of E. coli Transcriptional Regulation from a Compendium of Expression Profiles.

(Submitter supplied) Machine learning approaches offer the potential to systematically identify transcriptional regulatory interactions from a compendium of microarray expression profiles. However, experimental validation of the performance of these methods at the genome scale has remained elusive. Here we assess the global performance of four existing classes of inference algorithms using 445 Escherichia coli Affymetrix arrays and 3,216 known E. more...
Organism:
Escherichia coli K-12; Escherichia coli
Type:
Expression profiling by array
Platform:
GPL199
266 Samples
Download data: CEL
Series
Accession:
GSE6836
ID:
200006836
19.

Gene expression of triclosan susceptible and tolerant E. coli O157:H19 in response to triclosan exposure

(Submitter supplied) Triclosan is a biocidal active agent commonly found in domestic cleaning products, hand sanitizers, cosmetics and personal care products. It is used to control microbial contamination and has a broad-spectrum of activity against many Gram-positive and Gram-negative bacteria. The development of triclosan tolerance with potential cross resistance to clinically relevant antibiotics in zoonotic pathogens is of concern given the widespread use of this active agent in clinical, food processing and domestic environments. more...
Organism:
Escherichia coli; Escherichia coli O157
Type:
Expression profiling by array
Platform:
GPL3154
12 Samples
Download data: CEL
Series
Accession:
GSE39343
ID:
200039343
20.

Dynamics of Ecoli Aerobic to Anaerobic Switch Response

(Submitter supplied) The experiment is a time course for the aerobic to anaerobic switch response in E. coli. The data was used to validate the utility of a set of predicted transcription factor gene interactions for modeling the dynamic regulatory response networks of this response. The transcription factor gene interaction predictions were generated by a semi-supervised classification method that takes advantage of a separate compendium of gene expression and a data set of curated interactions. more...
Organism:
Escherichia coli
Type:
Expression profiling by array
Platforms:
GPL5435 GPL5436
11 Samples
Download data: XLS
Series
Accession:
GSE8323
ID:
200008323
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