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Series GSE36968 Query DataSets for GSE36968
Status Public on Apr 03, 2012
Title AMPKα Modulation in Cancer Progression: Multilayer Integrative Analysis of the Whole Transcriptome in Asian Gastric Cancer
Organism Homo sapiens
Experiment type Expression profiling by high throughput sequencing
Non-coding RNA profiling by high throughput sequencing
Summary Gastric cancer is the most common cancer in Asia and most developing countries. To identify the molecular underpinnings of gastric cancer in the Asian population, we applied an RNA-sequencing approach to gastric tumor and noncancerous specimens to quantitatively characterize the entire transcriptome of gastric cancer (including mRNAs and microRNAs). A multi-layer analysis was then developed to identify multiple types of transcriptional aberrations associated with different stages of gastric cancer, including differentially expressed mRNAs, recurrent somatic mutations and key differentially expressed microRNAs. Through this approach, we identified the central metabolic regulator AMPK-α as a potential functional target in Asian gastric cancer. Further, we experimentally demonstrated the translational relevance of this gene as a potential therapeutic target for early-stage gastric cancer in Asian patients. Together, our findings not only provide a valuable information resource for identifying and elucidating the molecular mechanisms of Asian gastric cancer, but also represent a general integrative framework to develop more effective therapeutic targets.
 
Overall design Using Life Technologies SOLiD™ sequencing platform, we performed transcriptome-wide profiling of gastric cancer samples from 30 anonymous, unrelated Asians of both sexes. Included were six noncancerous gastric tissue samples and 24 gastric tumor samples that represented stages I through IV of tumor development. From the WT-seq protocol we generated a WT-seq dataset of 2.1 billion 50-nt short reads from the 30 samples; Applying the second small RNA-seq protocol to 19 gastric tumor samples (5 of the original 24 yielded insufficient sample amounts) and 6 noncancerous gastric tissue samples resulted in a small RNA-seq dataset.
 
Contributor(s) Kim YH, Liang H, Liu X, Lee J, Cho JY, Cheong J, Kim H, Li M, Downey TJ, Dyer MD, Sun Y, Sun J, Beasley EM, Chung HC, Noh SH, Weinstein JN, Liu C, Powis G
Citation(s) 22434430, 25410163
Submission date Mar 30, 2012
Last update date May 15, 2019
Contact name Han Liang
E-mail(s) hliang1@mdanderson.org
Phone 1-713-745-9815
Fax 1-713-563-4242
Organization name University of Texas MD Anderson Cancer Center
Department Bioinformatics and Computational Biology
Lab Dr. Han Liang
Street address 1400 Pressler Street
City Houston
State/province TX
ZIP/Postal code 77030
Country USA
 
Platforms (1)
GPL9442 AB SOLiD System 3.0 (Homo sapiens)
Samples (55)
GSM907528 Patient1_RNA-seq
GSM907529 Patient2_RNA-seq
GSM907530 Patient3_RNA-seq
Relations
SRA SRP012016
BioProject PRJNA157511

Download family Format
SOFT formatted family file(s) SOFTHelp
MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE36968_GeneExpressionRPKM_30Sample_WT.xls.gz 5.4 Mb (ftp)(http) XLS
GSE36968_miRNAExpressionRPM_25Sample_smRNA.xls.gz 97.6 Kb (ftp)(http) XLS
SRA Run SelectorHelp
Processed data are available on Series record
Raw data are available in SRA

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