|
Status |
Public on Aug 07, 2023 |
Title |
IL-10 + Fedratinib, 2 H, biol rep 1 |
Sample type |
SRA |
|
|
Source name |
primary macrophages
|
Organism |
Mus musculus |
Characteristics |
strain: C57Bl/6J Sex: Female age: 8-12 weeks cell type: BMDM cell type: primary macrophages genotype: WT treatment: IL-10 + Fedra time: 2 H
|
Treatment protocol |
On day 7, BMDM were stimulated with the appropriate dose of IL-6 or IL-10 at the specified time and lysed with TRIzol Reagent (Ambion) for RNA isolation.Fedratinib-treated samples were pre-treated with 1 nM of inhibitor 20 minutes prior to cytokine stimulation.
|
Growth protocol |
Cells were cultured for six days in DMEM with 10% fetal bovine serum (FBS), penicillin (100 U/ml), streptomycin (100 U/ml), 2 mM l-glutamine, and 20 mM Hepes supplemented with recombinant mouse M-CSF (60 ng/ml) at 37C.
|
Extracted molecule |
total RNA |
Extraction protocol |
RNA was extracted with the Direct-zol RNA MicroPrep Kit (Zymo Research). RNA libraries for RNA-seq were prepared using Illumina Stranded mRNA Prep protocol. Final libraries were sequenced on the NextSeq2000 (Illumina)
|
|
|
Library strategy |
RNA-Seq |
Library source |
transcriptomic |
Library selection |
cDNA |
Instrument model |
NextSeq 2000 |
|
|
Data processing |
Rsubread was used for the file alignment and read counting DESeq2 was used for normalization Assembly: mm10 Supplementary files format and content: JAK2i_DESeq2_normalizedCounts.csv
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|
|
Submission date |
Apr 30, 2023 |
Last update date |
Aug 07, 2023 |
Contact name |
Rachel A. Gottschalk |
E-mail(s) |
[email protected]
|
Organization name |
University of Pittsburgh
|
Department |
Immunology
|
Street address |
200 Lothrop St., W1047 BST
|
City |
Pittsburgh |
State/province |
Pennsylvania |
ZIP/Postal code |
15261 |
Country |
USA |
|
|
Platform ID |
GPL30172 |
Series (2) |
GSE231344 |
Predicting gene level sensitivity to JAK-STAT signaling perturbation using a mechanistic-to-machine learning framework II |
GSE231345 |
Predicting gene level sensitivity to JAK-STAT signaling perturbation using a mechanistic-to-machine learning framework |
|
Relations |
BioSample |
SAMN34472691 |
SRA |
SRX20149494 |