| Literature DB >> 32150548 |
Fernando Riveros-Mckay1, Clare Oliver-Williams2,3, Savita Karthikeyan2, Klaudia Walter1, Kousik Kundu1,4, Willem H Ouwehand1,4,5, David Roberts6,7,8, Emanuele Di Angelantonio1,2,6,9,10,11, Nicole Soranzo1,4, John Danesh1,2,6,9,10,11, Eleanor Wheeler1,12, Eleftheria Zeggini1,13, Adam S Butterworth1,2,6,9,10,11, Inês Barroso1,12.
Abstract
Circulating metabolite levels are biomarkers for cardiovascular disease (CVD). Here we studied, association of rare variants and 226 serum lipoproteins, lipids and amino acids in 7,142 (discovery plus follow-up) healthy participants. We leveraged the information from multiple metabolite measurements on the same participants to improve discovery in rare variant association analyses for gene-based and gene-set tests by incorporating correlated metabolites as covariates in the validation stage. Gene-based analysis corrected for the effective number of tests performed, confirmed established associations at APOB, APOC3, PAH, HAL and PCSK (p<1.32x10-7) and identified novel gene-trait associations at a lower stringency threshold with ACSL1, MYCN, FBXO36 and B4GALNT3 (p<2.5x10-6). Regulation of the pyruvate dehydrogenase (PDH) complex was associated for the first time, in gene-set analyses also corrected for effective number of tests, with IDL and LDL parameters, as well as circulating cholesterol (pMETASKAT<2.41x10-6). In conclusion, using an approach that leverages metabolite measurements obtained in the same participants, we identified novel loci and pathways involved in the regulation of these important metabolic biomarkers. As large-scale biobanks continue to amass sequencing and phenotypic information, analytical approaches such as ours will be useful to fully exploit the copious amounts of biological data generated in these efforts.Entities:
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Year: 2020 PMID: 32150548 PMCID: PMC7108731 DOI: 10.1371/journal.pgen.1008605
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917
Fig 1Loss-of-function (LoF) variants in regulation of pyruvate dehydrogenase (PDH) complex pathway.
a) Figure adapted from REACTOME pathway browser [77]. Highlighted in red are protein complexes that carry LoF variants in INTERVAL WES or WGS. b) List of genes, consequences and allele count (AC) of LoF variants in the different protein complexes in the pathway.
Genes significantly associated (p<2.5x10-6) with at least one trait in gene-based analyses focusing on loss-of-function (LoF) or predicted deleterious missense by M-CAP plus loss-of-function (MCAP+LoF).
Genes that meet gene-level significance after adjusting for multiple phenotypes (p<1.32x10-7) are highlighted in bold. Top trait: trait with the smallest p-value after meta-analysis adjusting for correlated metabolites. p-value (covs): p-value of meta-analysis (WES+WGS) after adjusting for correlated metabolites for top trait. If NA, this analysis was not performed for this trait due to no metabolic biomarkers meeting the criteria to be included as covariates in meta-analysis. p-value (raw): p-value of meta-analysis without adjusting for correlated metabolites for top trait. N WES: number of tested variants in WES. N WGS: number of tested variants in WGS. AC = Allele count. N overlap: number of variants present in both WES and WGS. N traits associated: number of traits that meet gene-wide significance after adjusting for multiple phenotypes (p<1.32x10-7), traits meeting standard gene-wide significance (2.5x10-6) in parenthesis. Driven by single variant?: Yes if after conditioning on top associated variant the meta-analysis association disappears (p>0.05). IDL-TG: Triglycerides in IDL. XS-VLDL-TG: Triglycerides in very small VLDL. Phe: Phenylalanine. His: Histidine. IDL-FC: Free cholesterol in IDL. IDL-P: Concentration of IDL particles. M-VLDL-L: Total lipids in medium VLDL. Gly:Glycine. XL-HDL-FC: Free cholesterol in very large HDL. IDL-CE %: Cholesterol esters to total lipids ratio in IDL. L-VLDL-FC %: Free cholesterol to total lipids ratio in large VLDL. XXL-VLDL-C %: Total cholesterol to total lipids ratio in extremely large VLDL.
| IDL-P | 1.82x10-7 | 1.76x10-4 | 4 (5) | 4.52x10-3 | 6 (6) | 2.68x10-3 | 2 | 0 (1) | Yes | |
| M-VLDL-L | 6.20x10-7 | 3.97x10-6 | 7 (8) | 8.25x10-4 | 8 (14) | 7.44x10-4 | 3 | 0 (5) | No | |
| Gly | NA | 4.56x10-7 | 33 (132) | 4.34x10-5 | 38 (128) | 2.89x10-3 | 19 | 0 (1) | No | |
| XL-HDL-FC% | NA | 4.30x10-7 | 24 (38) | 2.90x10-4 | 18 (40) | 7.56x10-4 | 10 | 0 (6) | No | |
| IDL-CE % | NA | 1.98x10-6 | 5 (62) | 1.62x10-5 | 2 (43) | 2.56x10-2 | 1 | 0 (1) | Yes | |
| L-VLDL-FC % | NA | 7.59x10-7 | 27 (721) | 1.07x10-4 | 22 (697) | 1.61x10-3 | 13 | 0 (1) | No | |
| XXL-VLDL-C % | NA | 9.04x10-7 | 27 (46) | 1.94x10-4 | 29 | 2.53x10-3 | 11 | 0 (2) | No | |
Gene-sets where there is a nominally significant enrichment of rare variation in the tails of a lipid or lipoprotein measurement (p>0.05) in both WES and WGS.
– Highlighted in bold are gene-sets that are significant after meta-analysis using Stouffer’s method [38] and after adjusting for multiple traits (p< = 0.00037). WES P: permutation p in WES. WGS P: permutation p in WGS. Meta-P: p after meta-analysis using Stouffer’s method. S-VLDL-FC: Free cholesterol in small VLDL. XS-VLDL-C: Cholesterol in very small VLDL. S-VLDL-C: Cholesterol in small VLDL. XS-VLDL-P: Concentration of very small VLDL particles. S-VLDL-CE: Cholesterol esters in small VLDL. S-HDL-P: Concentration of small HDL particles.
| S-VLDL-FC | 3.3x10-2 | 2.37x10-2 | 3.45x10-3 | Hypertriglyceridemia_HPO |
| XS-VLDL-C | 3.3x10-2 | 2.37x10-2 | 3.45x10-3 | Hypertriglyceridemia_HPO |
| S-HDL-P | 4.10x10-2 | 3.92x10-2 | 8.x24x10-3 | Hypertriglyceridemia_CTD |