| Literature DB >> 26191039 |
William Schierding1, Justin M O'Sullivan2.
Abstract
Meta-analyses of genome-wide association studies (GWAS) have improved our understanding of the genetic foundations of a number of diseases, including diabetes. However, single nucleotide polymorphisms (SNPs) that are identified by GWAS, especially those that fall outside of gene regions, do not always clearly link to the underlying biology. Despite this, these SNPs have often been validated through re-sequencing efforts as not just tag SNPs, but as causative SNPs, and so must play a role in disease development or progression. In this study, we show how the 3D genome (spatial connections) and trans-expression Quantitative Trait Loci connect diabetes loci from different GWAS meta-analyses, informing the backbone of regulatory networks. Our findings include a three-way functional-spatial connection between the TM6SF2, CTRB1-BCAR1, and CELSR2-PSRC1 loci (rs201189528, rs7202844, and rs7202844, respectively) connected through the KCNIP3 and BCAR1/BCAR3 loci, respectively. These spatial hubs serve as an example of how loci in genes with little biological connection to disease come together to contribute to the diabetes phenotype.Entities:
Keywords: DNA folding; GWAS; diabetes; epigenetics; gene deserts; meta-analysis
Year: 2015 PMID: 26191039 PMCID: PMC4490250 DOI: 10.3389/fendo.2015.00102
Source DB: PubMed Journal: Front Endocrinol (Lausanne) ISSN: 1664-2392 Impact factor: 5.555
Figure 1Spatial and . Spatial connections (dashed gray arrows) were obtained from data within the ENCODE database, focusing on those loci that recent meta-analyses have verified as being associated with diabetes. Spatial connections link loci together into a hub(s). These hubs might (1) be regulatory (i.e., contribute to the regulation of nuclear processes including gene regulation, DNA repair, and DNA replication); (2) structural; or (3) simply the result of random associations. To test the hypothesis that some of these spatial connections are regulatory, we included a trans-eQTL analysis (red arrows). The trans-eQTL analysis highlights significant expression effects associated with the GWAS loci within the spatially associated loci. The eQTL data were derived from a single cancer cell line in the eight Hapmap populations. Future work should determine if these eQTL results are replicated in pancreatic or cardiac cells from individuals developing symptoms of the metabolic syndrome (data currently unavailable). Loci that were identified by GWAS as being important for T2D and the metabolic syndrome are represented by hashed red circles. Loci in biological pathways related to T2D or metabolic syndrome are represented by tan filled loci. Protein/phenotype connections (blue lines) are illustrated where appropriate to connect relevant loci and further expand the regulatory co-interaction diagram. For example, (1) spatial associations with KCNIP3 (2q21) and a physical connection between the BCAR1–BCAR3 proteins link TM6SF2, CTRB1–BCAR1, and CELSR2–PSRC1, into a spatial hub and (2) GRM (11q14) links the IGF2BP2 locus (3q27) to the HNF1A locus (12q24) together along with other loci that have been previously implicated in diabetes. (A,B) illustrate two spatial hubs that are connected by functional linkages between SBNO1-SBNO2 and B3GNT3-BGNT4. *For the sake of clarity, the following loci were abbreviated: CELSR2, CELSR2/PSRC1; BCAR1, CTRB1/BCAR1; GATAD2A, GATAD2A/TSSK6/NDUFA13/YJEFN3/CILP2; ABCB9, ABCB9/OGFOD2/PITPNM2.
Novel SNPs and their spatial interactions.
| SNP | Spatially linked locus | ||||||
|---|---|---|---|---|---|---|---|
| SNP (rs) | Position (Chr:bp) | Gene | Reference | Position | Genes | Disease association | Reference |
| 16860235 | 3:185512361 | IGF2BP2 | ( | 15q21.3 | LIPC and HDLCQ12 | Fat metabolism | ( |
| 1169288 | 12:120978847 | HNF1A | ( | 10q11.21 | PRKG1 | Energy metabolism, cellular aging, and late onset diseases (e.g., cardiovascular) | ( |
| 2001844 | 8:126478745 | N/A (40 kb) | ( | 8q24.13 | TRIB1 | Lipid metabolism and serum lipid levels | ( |
| 6909 | 19:19619542 | GATAD2A | ( | 19p12 | NCAN | Serum lipid levels and coronary heart disease | N |
| 2p11.2 | IMMT, ST3GAL5, MAT2A, FABP1 | Insulin signaling, insulin growth factor and fatty acid metabolism | N | ||||
| 7798124 | 7:15055616 | N/A (>40 kb) | ( | 7p21.1 | AGMO (TMEM195) | Decreased glucose-stimulated insulin response, type 2 diabetes | N |
| 3p12.2 | Glycogen storage disease IV | N, G | |||||
| 7168849 | 15:90346227 | ANPEP | ( | 15q26.1 | IDDM3 | Insulin-dependent diabetes | N |
| 3q22.1 | TF, TOPBP1, NPHP3 | Iron homeostasis, pulmonary arterial hypertension, adrenal-hepatic-pancreatic dysplasia. | N, G | ||||
| 7111 | 15:90373873 | AP3S2 | ( | 9p31.2 | IGFBPL1, IGFBPRP4 | Insulin growth factor binding protein genes | N |
| 11755566 | 6:38116669 | ZFAND3 | ( | 6q22 | FIQTL1 | Altered fasting insulin levels | N |
| 3741530 | 12:123469647 | ABCB9 PITPNM2 | ( | 12q24 | SBNO1 | Coronary artery disease and hypertension | N |
| 2q34 | SPAG16 | Childhood obesity in Hispanics | N | ||||
| 2p24 | RAD51AP2 | Hypertension in Japanese | N | ||||
| 703977 | 10:0944230 | ZMIZ1 | ( | 10q22.3 | DUPD1 | South Asia populations energy metabolism and weight in females | ( |
| 11683087 | 2:227586606 | IRS1 | ( | 14q23.3-q24.1 | TMEM229B/PLEKHH1 | Susceptibility to insulin resistance T2D GWAS | N |
N/A, not applicable, distance to closest gene in brackets. N, NIH GWAS Catalog and NIH Gene Database; G, Genecards and Uniprot.