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Series GSE71666 Query DataSets for GSE71666
Status Public on Aug 04, 2015
Title Integration analysis of three omics data using penalized regression methods: An application to bladder cancer (Methylation)
Organism Homo sapiens
Experiment type Methylation profiling by array
Summary Omics data integration is becoming necessary to investigate the still unknown genomic mechanisms of complex diseases. During the integration process, many challenges arise such as data heterogeneity, the smaller number of individuals in comparison to the number of parameters, multicollinearity, and interpretation and validation of results due to their complexity and lack of knowledge about biological mechanisms. To overcome some of these issues, innovative statistical approaches are being developed. In this work, we applied penalized regression methods (LASSO and ENET) to explore relationships between common genetic variants, DNA methylation and gene expression measured in bladder tumor samples and have proposed a permutation-based method to concomitantly assess significance and correct by multiple testing with the MaxT algorithm. The overall analysis flow consisted of three steps: (1) SNPs/CpGs were selected per each gene probe within 1Mb window upstream and downstream the gene; (2) LASSO and ENET were applied to assess the association between each expression probe and the selected SNPs/CpGs in three multivariable models (SNP, CPG, and Global models, the latter integrating SNPs and CPGs); and (3) the significance of each model was assessed using the permutation-based MaxT method. We identified 48 genes whom expression levels were associated with both SNPs and GPGs. Importantly, we replicated results for 36 (75%) of them in an independent data set (TCGA). We checked the performance of the proposed method with a simulation study and further supported our results with a biological interpretation based on an enrichment analysis. The approach we propose allows reducing computational time and is flexibly and easy to implement when analyzing several omics data. Our results highlight the importance of integrating omics data by applying appropriate statistical strategies to discover new insights into the complexity of disease genetic mechanisms.
 
Overall design Bisulphite modification of 46 tumor DNA samples using EZ-96 DNA METHYLATIONGOLD KIT (Zymo Research, Irvin, CA, USA), CpG methylation data was generated using the Infinum Human Methylation 27 BeadChip Kit that detected the CpG sites with two probes, one designed against the unmethylated site (signal U) and the other against the methylated site (signal M).
Web link http://journals.plos.org/plosgenetics/article?id=10.1371/journal.pgen.1005689
 
Contributor(s) Pineda S, Real FX, Kogevinas M, Carrato A, Chanock SJ, Malats N, Van Steen K
Citation(s) 26646822
Submission date Aug 03, 2015
Last update date Dec 11, 2015
Contact name Nuria Malats
E-mail(s) nmalats@cnio.es
Organization name CNIO
Street address C/ Melchor Fernández Almagro 3
City Madrid
State/province Madrid
ZIP/Postal code 28029
Country Spain
 
Platforms (1)
GPL8490 Illumina HumanMethylation27 BeadChip (HumanMethylation27_270596_v.1.2)
Samples (46)
GSM1842628 10090110
GSM1842629 10090210
GSM1842630 10090510
This SubSeries is part of SuperSeries:
GSE71669 Integration analysis of three omics data using penalized regression methods: An application to bladder cancer
Relations
BioProject PRJNA291770

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
GSE71666_RAW.tar 38.9 Mb (http)(custom) TAR (of IDAT)
GSE71666_unmethylated_methylated.txt.gz 6.4 Mb (ftp)(http) TXT
Processed data included within Sample table

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