TY - JOUR
T1 - DeepSAGE Reveals Genetic Variants Associated with Alternative Polyadenylation and Expression of Coding and Non-coding Transcripts
AU - Zhernakova, Daria V.
AU - de Klerk, Eleonora
AU - Westra, Harm Jan
AU - Mastrokolias, Anastasios
AU - Amini, Shoaib
AU - Ariyurek, Yavuz
AU - Jansen, Rick
AU - Penninx, Brenda W.
AU - Hottenga, Jouke J.
AU - Willemsen, Gonneke
AU - de Geus, Eco J.
AU - Boomsma, Dorret I.
AU - Veldink, Jan H.
AU - van den Berg, Leonard H.
AU - Wijmenga, Cisca
AU - den Dunnen, Johan T.
AU - van Ommen, Gert Jan B.
AU - 't Hoen, Peter A.C.
AU - Franke, Lude
PY - 2013/6
Y1 - 2013/6
N2 - Many disease-associated variants affect gene expression levels (expression quantitative trait loci, eQTLs) and expression profiling using next generation sequencing (NGS) technology is a powerful way to detect these eQTLs. We analyzed 94 total blood samples from healthy volunteers with DeepSAGE to gain specific insight into how genetic variants affect the expression of genes and lengths of 3′-untranslated regions (3′-UTRs). We detected previously unknown cis-eQTL effects for GWAS hits in disease- and physiology-associated traits. Apart from cis-eQTLs that are typically easily identifiable using microarrays or RNA-sequencing, DeepSAGE also revealed many cis-eQTLs for antisense and other non-coding transcripts, often in genomic regions containing retrotransposon-derived elements. We also identified and confirmed SNPs that affect the usage of alternative polyadenylation sites, thereby potentially influencing the stability of messenger RNAs (mRNA). We then combined the power of RNA-sequencing with DeepSAGE by performing a meta-analysis of three datasets, leading to the identification of many more cis-eQTLs. Our results indicate that DeepSAGE data is useful for eQTL mapping of known and unknown transcripts, and for identifying SNPs that affect alternative polyadenylation. Because of the inherent differences between DeepSAGE and RNA-sequencing, our complementary, integrative approach leads to greater insight into the molecular consequences of many disease-associated variants.
AB - Many disease-associated variants affect gene expression levels (expression quantitative trait loci, eQTLs) and expression profiling using next generation sequencing (NGS) technology is a powerful way to detect these eQTLs. We analyzed 94 total blood samples from healthy volunteers with DeepSAGE to gain specific insight into how genetic variants affect the expression of genes and lengths of 3′-untranslated regions (3′-UTRs). We detected previously unknown cis-eQTL effects for GWAS hits in disease- and physiology-associated traits. Apart from cis-eQTLs that are typically easily identifiable using microarrays or RNA-sequencing, DeepSAGE also revealed many cis-eQTLs for antisense and other non-coding transcripts, often in genomic regions containing retrotransposon-derived elements. We also identified and confirmed SNPs that affect the usage of alternative polyadenylation sites, thereby potentially influencing the stability of messenger RNAs (mRNA). We then combined the power of RNA-sequencing with DeepSAGE by performing a meta-analysis of three datasets, leading to the identification of many more cis-eQTLs. Our results indicate that DeepSAGE data is useful for eQTL mapping of known and unknown transcripts, and for identifying SNPs that affect alternative polyadenylation. Because of the inherent differences between DeepSAGE and RNA-sequencing, our complementary, integrative approach leads to greater insight into the molecular consequences of many disease-associated variants.
UR - https://www.scopus.com/pages/publications/84879674031
U2 - 10.1371/journal.pgen.1003594
DO - 10.1371/journal.pgen.1003594
M3 - Article
C2 - 23818875
AN - SCOPUS:84879674031
SN - 1553-7390
VL - 9
JO - PLoS Genetics
JF - PLoS Genetics
IS - 6
M1 - e1003594
ER -