| Literature DB >> 28005926 |
Helena Brunel1, Raimon Massanet2, Angel Martinez-Perez1, Andrey Ziyatdinov1, Laura Martin-Fernandez1, Juan Carlos Souto3, Alexandre Perera3, José Manuel Soria1.
Abstract
Traditional genetic studies of single traits may be unable to detect the pleiotropic effects involved in complex diseases. To detect the correlation that exists between several phenotypes involved in the same biological process, we introduce an original methodology to analyze sets of correlated phenotypes involved in the coagulation cascade in genome-wide association studies. The methodology consists of a two-stage process. First, we define new phenotypic meta-variables (linear combinations of the original phenotypes), named metaphenotypes, by applying Independent Component Analysis for the multivariate analysis of correlated phenotypes (i.e. the levels of coagulation pathway-related proteins). The resulting metaphenotypes integrate the information regarding the underlying biological process (i.e. thrombus/clot formation). Secondly, we take advantage of a family based Genome Wide Association Study to identify genetic elements influencing these metaphenotypes and consequently thrombosis risk. Our study utilized data from the GAIT Project (Genetic Analysis of Idiopathic Thrombophilia). We obtained 15 metaphenotypes, which showed significant heritabilities, ranging from 0.2 to 0.7. These results indicate the importance of genetic factors in the variability of these traits. We found 4 metaphenotypes that showed significant associations with SNPs. The most relevant were those mapped in a region near the HRG, FETUB and KNG1 genes. Our results are provocative since they show that the KNG1 locus plays a central role as a genetic determinant of the entire coagulation pathway and thrombus/clot formation. Integrating data from multiple correlated measurements through metaphenotypes is a promising approach to elucidate the hidden genetic mechanisms underlying complex diseases.Entities:
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Year: 2016 PMID: 28005926 PMCID: PMC5178993 DOI: 10.1371/journal.pone.0167187
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Heritabilities of ICA-based metaphenotypes (components 1 to 15 from the ICA model).
| Metaphenotype | h2r |
|---|---|
| C1 | 0.48 |
| C2 | 0.17 |
| C3 | 0.53 |
| C4 | 0.15 |
| C5 | 0.22 |
| C6 | 0.61 |
| C7 | 0.24 |
| C8 | 0.55 |
| C9 | 0.35 |
| C10 | 0.7 |
| C11 | 0.45 |
| C12 | 0.58 |
| C13 | 0.32 |
| C14 | 0.24 |
| C15 | 0.59 |
Significant thresholds for heritability estimation:
* <0.05,
**<0.005,
*** <0.0005
GWAS significant SNPs for the three approaches (univariate phenotypes, ICA-based metaphenotypes and PCA-based metaphenotypes.
For each SNP, the Chromosome where it is located, its physically closest gene and its MAF are shown as well as the adjusted p-value.
| SNP ID | Chr | Gene | MAF | HRG | FXII | P-value | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| ICA—C3 | ICA—C4 | ICA—C5 | PCA—C8 | PCA—C9 | PCA—C10 | |||||||
| rs9898 | 3 | HRG | 0.35 | 1.9 x 10−16 | 9 x 10−18 | 1 x 10−07 | 4.3 x 10−08 | |||||
| rs3733159 | 3 | FETUB | 0.34 | 3.3 x 10−13 | 6.6 x 10−09 | |||||||
| rs1621816 | 3 | KNG1 | 0.24 | 1.5 x 10−09 | 5 x 10−08 | |||||||
| rs1403694 | 3 | KNG1 | 0.32 | 1.1 x 10−08 | 6.7 x 10−07 | |||||||
| rs17255413 | 3 | BOC | 0.007 | 2.6 x 10−08 | ||||||||
| rs3113727 | 4 | COL25A1 | 0.24 | 3.8 x 10−07 | ||||||||
| rs27311672 | 5 | F12 | 0.17 | 7.6 x 10−36 | 1.1 x 10−14 | 1.5 x 10−11 | ||||||
Fig 1Metaphenotype graphical representation using a simple graph.
(a) ICA-based metaphenotype corresponding to the 3rd component (ICA-C3), (b) ICA-C10, (c) PCA-C9 (d) PCA-C10.
Fig 2Comparison between the metaphenotypes obtained with both PCA and ICA models.
(a) metaphenotype associated with the SNP rs2731672 at the F12 locus and (b) metaphenotypes associated with the SNP rs9898 at the HRG locus.