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Status |
Public on Sep 08, 2022 |
Title |
Spleen mito- |
Sample type |
SRA |
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Source name |
House mouse
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Organism |
Mus musculus |
Characteristics |
cells: mito-dendra2- Spleen cells
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Treatment protocol |
No treatment
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Growth protocol |
The F4/80+CD106+CD169+ macrophages were isolated from mito-Dendra2 mice and intravenously injected into wildtype mice after PHZ treatment. 5 days later, early erythroblasts (Ter119+Cd44+) were isolated from BM and spleen and separated into mito- and mito+ by flow cytometry based on the presence of mito-Dendra2 signal.
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Extracted molecule |
total RNA |
Extraction protocol |
Cells were washed, and processed using the 10x Genomics Chromium controller and Chromium Next GEM Single Cell 3ʹ Reagent Kits v3.1 following manufacturer's instructions. The library was prepared using 10xGenomics's Chromium Next GEM Single Cell 3ʹ Reagent Kits v3.1 and dual index kit following manufacturer's instructions. Illumina P5 and P7 sequences and sample index sequences are added during the Sample Index PCR. The final library fragments contain the P5, P7, Read 1 and Read 2 sequences used in Illumina bridge amplification and sequencing. Additionally, each fragment contains the 10x Barcode, UMI and cDNA insert sequence used in data analysis. Sequencing was done by DNBseq platform at BGI Genomics. Single cell RNA-Seq (3'GEM)
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Library strategy |
RNA-Seq |
Library source |
transcriptomic |
Library selection |
cDNA |
Instrument model |
DNBSEQ-G400 |
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Data processing |
Raw reads were aligned to the pre-build mm10 reference genome using cellranger count v6.0.0 (10X Genomics) with default settings. The molecule information file from mito- and mito+ samples were combined using cell ranger aggr with --normalize=none --nosecondary options. Cells were removed if the number of UMIs was less than 500, the number of genes detected was less than 100, or ≥ 10% of reads were mapped to mitochondrial genes. Read counts were normalized for each sample using the Seurat SCTransform function. The variation due to mitochondrial RNA ratio and cell cycle phase scores were regressed out. The normalized data from mito- and mito+ samples were integrated based on the 3,000 most highly variable genes using the Seurat integration procedure. Top 40 principal components were used for Uniform manifold approximation and projection (UMAP) followed by cell clustering. Marker genes for each cluster was identified using the Seurat FindConservedMarkers function. Clusters were annotated by comparing the marker genes to known cell type markers from literatures. Early erythroblast cells were used to identify differential exressed genes between mito- and mito+ samples using the Seurat FindAllMarkers function. Genome_build: mm10 Supplementary_files_format_and_content: HDF5 file continaing a feature barcode matrix of early erythroblasts. This file can be loaded into R using Seurat. Supplementary_files_format_and_content: TSV file containig the result of differential gene expression alaysis
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Submission date |
Oct 04, 2021 |
Last update date |
Sep 08, 2022 |
Contact name |
Rui Yokomori |
Organization name |
Cancer Science Institute of Singapore, National University of Singapore
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Lab |
Takaomi Sanda Lab
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Street address |
14 Medical Drive
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City |
Singapore |
ZIP/Postal code |
117599 |
Country |
Singapore |
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Platform ID |
GPL28457 |
Series (1) |
GSE185267 |
Single cell RNA-seq analysis for early erythroblasts in spleen and bone marrow (BM) with or without mitochondria transfer |
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Relations |
BioSample |
SAMN22042789 |
SRA |
SRX12478286 |
Supplementary data files not provided |
SRA Run Selector |
Raw data are available in SRA |
Processed data are available on Series record |
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