| Literature DB >> 31664920 |
Amand F Schmidt1,2,3, Michael V Holmes4, David Preiss4, Daniel I Swerdlow5,6, Spiros Denaxas7,8,9,10, Ghazaleh Fatemifar7,8,9, Rupert Faraway5, Chris Finan5,7, Dennis Valentine7,11, Zammy Fairhurst-Hunter12, Fernando Pires Hartwig13, Bernardo Lessa Horta13, Elina Hypponen14,15,16, Christine Power15, Max Moldovan16, Erik van Iperen17,18, Kees Hovingh19, Ilja Demuth20,21, Kristina Norman22,23,24, Elisabeth Steinhagen-Thiessen20, Juri Demuth25, Lars Bertram26,27, Christina M Lill28,29,30, Stefan Coassin31, Johann Willeit32, Stefan Kiechl32, Karin Willeit32,33, Dan Mason34, John Wright34, Richard Morris35, Goya Wanamethee35, Peter Whincup36, Yoav Ben-Shlomo37, Stela McLachlan38, Jackie F Price38, Mika Kivimaki39, Catherine Welch39, Adelaida Sanchez-Galvez39, Pedro Marques-Vidal40, Andrew Nicolaides41,42, Andrie G Panayiotou43, N Charlotte Onland-Moret44, Yvonne T van der Schouw44, Giuseppe Matullo45,46, Giovanni Fiorito45,46, Simonetta Guarrera45,46, Carlotta Sacerdote47, Nicholas J Wareham48, Claudia Langenberg48, Robert A Scott48, Jian'an Luan48, Martin Bobak39, Sofia Malyutina49,50, Andrzej Pająk51, Ruzena Kubinova52, Abdonas Tamosiunas53, Hynek Pikhart39, Niels Grarup54, Oluf Pedersen54, Torben Hansen54, Allan Linneberg55,56, Tine Jess56, Jackie Cooper57, Steve E Humphries57, Murray Brilliant58, Terrie Kitchner58, Hakon Hakonarson59, David S Carrell60, Catherine A McCarty61, Kirchner H Lester62, Eric B Larson60, David R Crosslin63, Mariza de Andrade64, Dan M Roden65, Joshua C Denny66, Cara Carty67, Stephen Hancock68, John Attia68,69, Elizabeth Holliday68,69, Rodney Scott68, Peter Schofield70, Martin O'Donnell71, Salim Yusuf71, Michael Chong71, Guillaume Pare71, Pim van der Harst17,18,72,73, M Abdullah Said73, Ruben N Eppinga73, Niek Verweij73, Harold Snieder74, Tim Christen75, D O Mook-Kanamori75, Stefan Gustafsson76, Lars Lind77,78, Erik Ingelsson76,77, Raha Pazoki79,80, Oscar Franco79, Albert Hofman79, Andre Uitterlinden79, Abbas Dehghan79, Alexander Teumer81,82, Sebastian Baumeister81,83, Marcus Dörr82,84, Markus M Lerch85, Uwe Völker82,86, Henry Völzke81,82, Joey Ward87, Jill P Pell87, Tom Meade88, Ingrid E Christophersen89, Anke H Maitland-van der Zee90,91, Ekaterina V Baranova92, Robin Young92, Ian Ford92, Archie Campbell93, Sandosh Padmanabhan94, Michiel L Bots43, Diederick E Grobbee43, Philippe Froguel95,96, Dorothée Thuillier95, Ronan Roussel97,98,99, Amélie Bonnefond95, Bertrand Cariou100, Melissa Smart101, Yanchun Bao102, Meena Kumari103, Anubha Mahajan102, Jemma C Hopewell12, Sudha Seshadri103, Caroline Dale11, Rui Providencia E Costa11, Paul M Ridker104, Daniel I Chasman104, Alex P Reiner105, Marylyn D Ritchie106, Leslie A Lange107, Alex J Cornish108, Sara E Dobbins108, Kari Hemminki109,110, Ben Kinnersley108, Marc Sanson111,112, Karim Labreche111,112, Matthias Simon113, Melissa Bondy114, Philip Law108, Helen Speedy108, James Allan115, Ni Li108, Molly Went108, Niels Weinhold116, Gareth Morgan116, Pieter Sonneveld117, Björn Nilsson118, Hartmut Goldschmidt119, Amit Sud108, Andreas Engert120, Markus Hansson121,122, Harry Hemingway7,8,9,123, Folkert W Asselbergs5,124,7,125, Riyaz S Patel5,7,126, Brendan J Keating127, Naveed Sattar94, Richard Houlston108, Juan P Casas128, Aroon D Hingorani5,7.
Abstract
BACKGROUND: We characterised the phenotypic consequence of genetic variation at the PCSK9 locus and compared findings with recent trials of pharmacological inhibitors of PCSK9.Entities:
Keywords: Genetic association studies; LDL-cholesterol; Mendelian randomisation; Phenome-wide association scan
Mesh:
Substances:
Year: 2019 PMID: 31664920 PMCID: PMC6820948 DOI: 10.1186/s12872-019-1187-z
Source DB: PubMed Journal: BMC Cardiovasc Disord ISSN: 1471-2261 Impact factor: 2.298
Biomarker associations of a PCSK9 gene centric score, effect presented as mean difference (MD) with 95% confidence interval in brackets with the effects scaled to a 1 mmol/L decrease in LDL-C
| Biomarker | Total sample size | MD (95% CI) |
|---|---|---|
| Lipids related biomarkers | ||
| HDL-C in mmol/L | 314,078 | 0.05 (0.02; 0.07) |
| TG in mmol/L | 298,069 | −0.07 (− 0.12; − 0.01) |
| TC in mmol/L | 320,170 | − 1.06 (− 1.12; − 1.00) |
| ApoA1 in g/L | 55,477 | 0.02 (− 0.01; 0.06) |
| ApoB in g/L | 54,643 | −0.20 (− 0.25; − 0.18) |
| LP [a] in mg/dL | 21,181 | −4.12 (−8.62; 0.38) |
| Safety related biomarkers | ||
| SBP in mmHG | 182,487 | 0.03 (−0.05; 0.10) |
| DBP in mmHG | 182,497 | 0.08 (0.001; 0.15) |
| CRP in log (mg/L) | 91,990 | 0.03 (−0.07; 0.14) |
| IL-6 in log (pmol/L) | 22,370 | −0.08 (− 0.21; 0.04) |
| GGT in log (IU/L) | 69,488 | 0.03 (−0.04; 0.10) |
| Fibrinogen in log(g/dL) | 63,288 | 0.02 (−0.01; 0.04) |
| Hemoglobin in g/L | 52,109 | 1.16 (−0.38; 2.70) |
| ALT in log (IU/L) | 83,223 | 0.03 (−0.02; 0.08) |
| AST in log (IU/L) | 49,556 | 0.01 (−0.03; 0.05) |
| ALP in log (IU/L) | 60,222 | −0.06 (− 0.09; − 0.02) |
| Creatinine in umol/L | 100,206 | 0.06 (−1.43; 1.55) |
Nota bene, TG triglycerides, TC Total cholesterol, ApoA1 Apolipoprotein A1, ApoB Apolipoprotein B, LPa Lipoprotein a, SBP Systolic blood pressure, DBP Diastolic blood pressure, CRP C-reactive protein, IL-6 Interleukin-6, GGT Gamma-glutamyltransferase, ALT Alanine transaminase, AST Aspartate transaminase, ALP Alkaline phosphatase
Fig. 1Lipid and lipoprotein associations of a PCSK9 gene-centric score (GS) compared to placebo-controlled randomized trials of therapeutic inhibition of PCSK9. Footnote: Effect estimates are presented as mean differences, with 95% confidence interval (CI). Trial estimates are presented as percentage change from baseline (during 6 months of follow-up), and GS estimates scaled to a 1 mmol/L lower LDL-C (mmol/L). Results are pooled using a fixed effect model. Trial estimates are based on the systematic review by Schmidt et al 2017 [6, 17]
Fig. 2Associations of a PCSK9 gene-centric score with ischemic and non-ischemic cardiovascular endpoints. Footnote: Effect estimates are presented as odds ratios (OR), with 95% confidence interval (CI) scaled to a 1 mmol/L lower LDL-C (mmol/L). Results are pooled using a fixed effect model. The size of the squares are proportional to the inverse of the variance
Fig. 3Clinical endpoint associations of the PCSK9 gene-centric score (GS) as compared to placebo-controlled randomized trials of therapeutic inhibition of PCSK9. Footnote: Effect estimates are presented as odds ratios (OR), with 95% confidence interval (CI), for the GS scaled to a 1 mmol/L lower LDL-C (mmol/L). Results are pooled using a fixed effect model. Trial estimates are based on the systematic review by Schmidt et al 2017 [6], with the estimates on ischemic stroke and revascularization solely based on the FOURIER and ODYSSEY OUTCOMES trials
Fig. 4Associations of a PCSK9 gene-centric score (GS) with non-cardiovascular events. Footnote: Effect estimates are presented as odds ratios (OR), with 95% confidence interval (CI) scaled to a 1 mmol/L lower LDL-C (mmol/L). Results are pooled using a fixed effect model. The size of the squares are proportional to the inverse of the variance. Note, that all GS estimates are based on 4 SNPs, except for the Alzheimer’s disease estimate which excluded the SNP rs11591147 due to lack of data