| Literature DB >> 26467978 |
Jacob B Hall1, Jessica N Cooke Bailey2, Joshua D Hoffman3, Margaret A Pericak-Vance4, William K Scott5, Jaclyn L Kovach6, Stephen G Schwartz7, Anita Agarwal8, Milam A Brantley9, Jonathan L Haines10, William S Bush11.
Abstract
BACKGROUND: Age-related macular degeneration (AMD) is the leading cause of irreversible visual loss in the elderly in developed countries and typically affects more than 10% of individuals over age 80. AMD has a large genetic component, with heritability estimated to be between 45% and 70%. Numerous variants have been identified and implicate various molecular mechanisms and pathways for AMD pathogenesis but those variants only explain a portion of AMD's heritability. The goal of our study was to estimate the cumulative genetic contribution of common variants on AMD risk for multiple pathways related to the etiology of AMD, including angiogenesis, antioxidant activity, apoptotic signaling, complement activation, inflammatory response, response to nicotine, oxidative phosphorylation, and the tricarboxylic acid cycle. While these mechanisms have been associated with AMD in literature, the overall extent of the contribution to AMD risk for each is unknown.Entities:
Mesh:
Year: 2015 PMID: 26467978 PMCID: PMC4606903 DOI: 10.1186/s12859-015-0760-4
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Study population characteristics
| Cohort | Agea (SD) | Males (%) | Smokers (%) |
|---|---|---|---|
| Primary subset - 1,813 (100 %) | 75.1 (8.4) | 713 (39.3) | — |
| Cases - 1,145 (63.2 %) | 77.6 (7.9) | 415 (36.2) | — |
| Controls - 668 (36.8 %) | 70.9 (7.7) | 298 (44.6) | — |
| Smoking subset - 1,358 (100 %) | 75.0 (8.2) | 560 (41.2) | 790 (58.2) |
| Cases - 850 (62.6 %) | 77.3 (7.7) | 323 (38.0) | 516 (60.7) |
| Controls - 508 (37.4 %) | 71.2 (7.6) | 237 (46.7) | 274 (53.9) |
aMean age in years
Primary cohort contains all individuals after QC measures were applied
Smoking subset cohort excludes individuals with unknown smoking status
Gene ontology terms used to define pathways
| GO Term | GO ID | # Genes | Reference |
|---|---|---|---|
| Angiogenesis | GO:0001525 | 379 | PMID: 23642783 |
| Antioxidant activity | GO:0016209 | 69 | PMID: 23645227 |
| Apoptotic signaling | GO:0097190 | 1,635 | PMID: 12427055 |
| Complement activation | GO:0006956 | 187 | PMID: 20711704 |
| Inflammatory response | GO:0006954 | 534 | PMID: 17021323 |
| Response to nicotine | GO:0035094 | 31 | PMID: 8827967 |
| Oxidative phosphorylation | GO:0006119 | 78 | PMID: 21483039 |
| Tricarboxylic acid cycle | GO:0006099 | 33 | PMID: 14962143 |
Fig. 1Risk explained by each pathway, by partitioning strategy. Each bar represents the proportion of risk explained from a fitted mixed linear model using SNPs selected for each pathway for four different partitioning strategies. Error bars represent standard error (SE)
Fig. 2Average risk explained per SNP by pathway. Each bar represents the proportion of risk explained divided by the number of SNPs per pathway. In this analysis, risk SNPs plus 5 kb regions were excluded
Fig. 3Risk explained by overlapping SNPs between pathway pairs. Values represent the proportion of risk explained for SNPs contained in each pathway overlap. Pathway pairs with no overlapping SNPs shown as white boxes. Pathway pairs with less risk explained by overlap shown as green, fading to red for pathway pairs with more risk explained by overlap. Overlap was calculated using gene plus 50 kb regions
Fig. 4Overlap between complement and inflammatory pathways. a Venn diagram of SNP and gene overlap between the complement and inflammatory pathways. b P-values and the proportion of risk explained (PRE) by complement and inflammatory pathways, separately and for overlapping regions. Overlapping SNPs were determined using regions including genic SNPs plus 50 kb flanking regions