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Sample GSM6068495 Query DataSets for GSM6068495
Status Public on May 03, 2022
Title CK_Os-1
Sample type SRA
 
Source name leaf
Organism Oryza sativa Japonica Group
Characteristics tissue: leaf
genotype: WT
treatment: CK
Extracted molecule total RNA
Extraction protocol 10 μg/mg doxycycline treated and control check leaves were sampled, flash frozen on dry ice, and RNA was harvested using Trizol reagent. Illumina TruSeq RNA Sample Prep Kit (Cat#FC-122-1001) was used with 3 ug of total RNA for the Vonstruction of sequencing libraries.
RNA libraries were prepared for sequencing using standard Illumina protocols
 
Library strategy RNA-Seq
Library source transcriptomic
Library selection cDNA
Instrument model Illumina NovaSeq 6000
 
Data processing Raw data (raw reads) of fastq format were firstly processed through in-house perl scripts. In this step, clean data (clean reads) were obtained by removing reads Vontaining adapter, reads Vontaining ploy-N and low quality reads from raw data. All the downstream analyses were based on the clean data with high quality.
Index of the reference genome was built using Bowtie v2.0.6 and paired-end clean reads were aligned to the reference genome using TopHat v2.0.12.
RPKM of each gene was calculated based on the length of the gene and reads count mapped to this gene, Vonsidering the effect of sequencing depth and gene length for the reads count at the same time(Mortazavi et al., 2008)
Assembly: TAIR10;IRGSP-1.0; SL3.0
Supplementary files format and content: tab-delimited text files include count for each Sample
 
Submission date Apr 26, 2022
Last update date May 03, 2022
Contact name Moyang Liu
E-mail(s) [email protected]
Organization name Shanghai Jiao Tong University
Department School of Agriculture and Biology
Street address dongchuan road 800
City Shanghai
ZIP/Postal code 200240
Country China
 
Platform ID GPL27860
Series (1)
GSE201607 Machine learning accelerates the dissection of mitostasis as a cross-species central biological hub for leaf senescence
Relations
BioSample SAMN27783502
SRA SRX15004685

Supplementary data files not provided
SRA Run SelectorHelp
Raw data are available in SRA
Processed data are available on Series record

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