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Published in final edited form as: Circ Genom Precis Med. 2019 Mar 21;12(4):e002471. doi: 10.1161/CIRCGEN.119.002471

Association of Chromosome 9p21 with Subsequent Coronary Heart Disease Events: A GENIUS-CHD Study of Individual Participant Data

Riyaz S Patel 1,2,*, Amand F Schmidt 1,3,*, Vinicius Tragante 3,*, Raymond O McCubrey 4, Michael V Holmes 5,6,7, Laurence J Howe 1, Kenan Direk 1, Axel Åkerblom 8,9, Karin Leander 10, Salim S Virani 11,12, Karol A Kaminski 13,14, Jochen D Muehlschlegel 15,16, Marie-Pierre Dubé 17,18, Hooman Allayee 19, Peter Almgren 20, Maris Alver 21,22, Ekaterina V Baranova 23, Hassan Behlouli 24, Bram Boeckx 25,26, Peter S Braund 27,28, Lutz P Breitling 29, Graciela Delgado 30, Nubia E Duarte 31, Line Dufresne 24,32, Niclas Eriksson 8, Luisa Foco 33, Crystel M Gijsberts 34, Yan Gong 35, Jaana Hartiala 19,36, Mahyar Heydarpour 15,16, Jaroslav A Hubacek 37, Marcus Kleber 30, Daniel Kofink 3, Pekka Kuukasjärvi 38, Vei-Vei Lee 39, Andreas Leiherer 40,41,42, Petra A Lenzini 43, Daniel Levin 44, Leo-Pekka Lyytikäinen 45,46, Nicola Martinelli 47, Ute Mons 29, Christopher P Nelson 27,28, Kjell Nikus 48,49, Anna P Pilbrow 50, Rafal Ploski 51, Yan V Sun 52,53, Michael WT Tanck 54, WH Wilson Tang 55,56, Stella Trompet 57,58, Sander W van der Laan 59, Jessica Van Setten 60, Ragnar O Vilmundarson 61,62, Chiara Viviani Anselmi 63, Efthymia Vlachopoulou 64, Eric Boerwinkle 65, Carlo Briguori 66, John F Carlquist 4,67, Kathryn F Carruthers 68, Gavino Casu 69, John Deanfield 1,2, Panos Deloukas 70,71, Frank Dudbridge 72, Natalie Fitzpatrick 73, Bruna Gigante 10, Stefan James 8,74, Marja-Liisa Lokki 64, Paulo A Lotufo 75, Nicola Marziliano 69, Ify R Mordi 44, Joseph B Muhlestein 4,67, Chris Newton Cheh 76, Jan Pitha 37, Christoph H Saely 40,41,77, Ayman Samman-Tahhan 78, Pratik B Sandesara 78, Andrej Teren 79,80, Adam Timmis 73,81, Frans Van de Werf 82, Els Wauters 83, Arthur AM Wilde 84,85, Ian Ford 86, David J Stott 87, Ale Algra 88, Maria G Andreassi 89, Diego Ardissino 90, Benoit J Arsenault 91,92, Christie M Ballantyne 12, Thomas O Bergmeijer 93, Connie R Bezzina 84, Simon C Body 16,94, Peter Bogaty 95,96,97, Gert J de Borst 98, Hermann Brenner 29, Ralph Burkhardt 80,99, Clara Carpeggiani 89, Gianluigi Condorelli 63,100, Rhonda M Cooper-DeHoff 35, Sharon Cresci 43,101, Ulf de Faire 10, Robert N Doughty 102, Heinz Drexel 40,41,103, James C Engert 32,104,105, Keith AA Fox 106, Domenico Girelli 47, Emil Hagström 8,9, Stanley L Hazen 55,107, Claes Held 8,9, Harry Hemingway 73, Imo E Hoefer 108, G Kees Hovingh 109, Julie A Johnson 35,110, Pim A de Jong 111, J Wouter Jukema 58,112,113, Marcin P Kaczor 114, Mika Kähönen 115,116, Jiri Kettner 117, Marek Kiliszek 118, Olaf H Klungel 23, Bo Lagerqvist 8,74, Diether Lambrechts 25,26, Jari O Laurikka 119,120, Terho Lehtimäki 45,46, Daniel Lindholm 8,9, BK Mahmoodi 93, Anke H Maitland-van der Zee 23,121, Ruth McPherson 61,122, Olle Melander 20,123, Andres Metspalu 21,22, Witold Pepinski 124, Oliviero Olivieri 47, Grzegorz Opolski 125, Colin N Palmer 126, Gerard Pasterkamp 127, Carl J Pepine 110, Alexandre C Pereira 31, Louise Pilote 24,128, Arshed A Quyyumi 78, A Mark Richards 50,129, Marek Sanak 114, Markus Scholz 80,130, Agneta Siegbahn 8,131, Juha Sinisalo 132, J Gustav Smith 133,134,135, John A Spertus 136,137, Alexandre FR Stewart 61,62, Wojciech Szczeklik 114, Anna Szpakowicz 14, Jurriën M ten Berg 93, George Thanassoulis 32,24,105, Joachim Thiery 80,138, Yolanda van der Graaf 139, Frank LJ Visseren 140, Johannes Waltenberger 141; CARDIoGRAMPlusC4D Consortium142, Pim Van der Harst 143, Jean-Claude Tardif 17,18, Naveed Sattar 87, Chim C Lang 44, Guillaume Pare 144,145, James M Brophy 24,128, Jeffrey L Anderson 4,67, Winfried März 30,146,147, Lars Wallentin 8,74, Vicky A Cameron 50, Benjamin D Horne 4,148, Nilesh J Samani 27,28,, Aroon D Hingorani 1,, Folkert W Asselbergs 1,3,60,
PMCID: PMC6625876  NIHMSID: NIHMS1021636  EMSID: EMS82311  PMID: 30897348

Abstract

Background

Genetic variation at chromosome 9p21 is a recognized risk factor for coronary heart disease (CHD). However, its effect on disease progression and subsequent events is unclear, raising questions about its value for stratification of residual risk.

Methods

A variant at chromosome 9p21 (rs1333049) was tested for association with subsequent events during follow-up in 103,357 Europeans with established CHD at baseline from the GENIUS-CHD Consortium (73.1% male, mean age 62.9 years). The primary outcome, subsequent CHD death or myocardial infarction (CHD death/MI), occurred in 13,040 of the 93,115 participants with available outcome data. Effect estimates were compared to case/control risk obtained from CARDIoGRAMPlusC4D including 47,222 CHD cases and 122,264 controls free of CHD.

Results

Meta-analyses revealed no significant association between chromosome 9p21 and the primary outcome of CHD death/MI among those with established CHD at baseline (GENIUS-CHD OR 1.02; 95% CI 0.99-1.05). This contrasted with a strong association in CARDIoGRAMPlusC4D OR 1.20; 95% CI 1.18-1.22; p for interaction <0.001 compared to the GENIUS-CHD estimate. Similarly, no clear associations were identified for additional subsequent outcomes, including all-cause death, although we found a modest positive association between chromosome 9p21 and subsequent revascularization (OR 1.07; 95% CI 1.04-1.09).

Conclusions

In contrast to studies comparing individuals with CHD to disease free controls, we found no clear association between genetic variation at chromosome 9p21 and risk of subsequent acute CHD events when all individuals had CHD at baseline. However, the association with subsequent revascularization may support the postulated mechanism of chromosome 9p21 for promoting atheroma development.

Keywords: chromosome 9p21; genetics, association studies; residual risk; prognosis; myocardial infarction; recurrent event; secondary prevention

Journal Subject Terms: Genetic, Association Studies; Coronary Artery Disease; Secondary Prevention; Epidemiology; Risk Factors

Introduction

Using a case-control approach, a large number of common genetic variants have now been associated with coronary heart disease (CHD) through genome-wide association studies, in an effort largely led by the CARDIoGRAMPlusC4D consortium.1 Among these variants, the chromosome 9p21 locus was the first to be discovered and the variant with the largest individual effect, and is the most widely replicated genetic risk factor for CHD.24 Multiple studies including case-control and prospective cohort studies in general populations have reliably confirmed its effect on risk of CHD among otherwise healthy individuals.5

However, it is uncertain whether variants at the 9p21 locus also affect risk of recurrent or subsequent events, including mortality in those with established CHD. Elucidation of this hypothesis would help to better understand its mechanism and estimate its incremental value for stratification of residual risk. Prior studies have shown conflicting results, although most have been underpowered. A literature based meta-analysis indicated a null association of chromosome 9p21 variants with subsequent CHD events but was based on summary, not individual level data, with varying outcome definitions. 6, 7

The new collaborative GENetIcs of sUbSequent Coronary Heart Disease (GENIUS-CHD) consortium, described in this issue of the journal was established to investigate genetic determinants of disease progression following an index CHD event.8

In this paper, we use the GENIUS-CHD resource to: (1) examine the association of variants at the 9p21 locus on risk of subsequent CHD events in individuals with established CHD; (2) compare these to the association between chromosome 9p21 and any CHD observed in the CARDIoGRAMPlusC4D consortium; and, (3) explore the potential impact on these estimates of biases that might affect genetic association studies of disease outcome and prognosis.

Methods

In accordance with Transparency and Openness Promotion (TOP) Guidelines, the data, analytic methods, and study materials will be made available to other researchers for purposes of reproducing the results or replicating the procedure. Participating studies received local institutional review board approval and included patients who had provided informed consent at the time of enrolment. The central analysis sites also received waivers from their local institutional review board for collating and analysing summary level data from these individual studies. Details about the GENIUS-CHD consortium and study inclusion criteria have been published separately in this issue of the journal,8 while for this study full details about data sources, genetic variant selection, outcomes and statistical analyses are available in the Supplementary Material.

Results

In total, 49 studies from the GENIUS-CHD consortium contributed to the federated analysis resulting in a sample size of 103,357 individuals of European descent with established CHD and available genotype data at the 9p21 locus. Of these, 93,115 individuals had available data for the primary composite outcome of subsequent CHD death/MI, of whom 13,040 experienced these events. Contributing study details are provided in Table 1. Participant characteristics are representative for populations with established CHD with a weighted mean age of 62.9 years; 73.1% male. As expected, risk factor prevalence was high in this population, including diabetes (24.4%), hypertension (59.1%) and current smoking (25.7%). Statin use at enrollment varied by study, ranging from 5.2%-97.3%, with a median of 61.5% (Table 1).

Table 1. Overview of studies contributing to chromosome 9p21 analysis and participant characteristics.

Alias Cohort Total N genotyped Study Design CHD Type Male (%) Age (SD) BMI (SD) Diabetes (%) Smoking (%) Systolic BP (SD) Total Cholesterol (SD) Statin use (%) Creatitine (SD) Prior Revasc (%) Prior MI (%) PubMED ID
4C Clinical Cohorts in Coronary disease Collaboration (4C) 1538 Cohort CAD 62.1 62.2 (11.95) 30.2 (5.67) 23.4 - 133.9 (23.7) 4.69 (1.10) 26.4  99.3 (83.2) 22.6 15.5 -
AGNES Arrhythmia Genetics in The Netherlands 1316 Cohort ACS 79.3 57.7 (10.81) 26.5 (3.87) 7.6 59.3 - 5.28 (1.04) 9.8 - - - 20622880
ANGES Angiography and Genes Study 588 Cohort Mixed 65.5 64.1 (9.55) 28.1 (4.36) 30.8 14.7 - 4.84 (0.84) 69.4  83.0 (32.0) 42.4 24.7 21640993
ATVB Italian Atherosclerosis, Thrombosis and Vascular Biology Group 1465 Cohort ACS 90.4 40.0 (4.40) 26.8 (4.07) 8.4 78.7 132.3 (20.6) 5.76 (1.39) 56.2 - - - 21757122
CABGenomics Coronary Artery Bypass Genomics 1542 Cohort Mixed 80.1 64.7 (10.08) 29.7 (5.71) 10.1 11.2 - 4.21 (0.95) 75.2 - - 42.8 25649697
CDCS Coronary Disease Cohort Study 1800 Cohort ACS 71.5 67.5 (11.96) 27.3 (4.66) 15.4 5.8 129.2 (21.6) 5.00 (1.09) 46.5 100.5 (40.0) 26.9 30.3 20400779
COROGENE Corogene Study 1489 Cohort ACS 70.9 64.7 (11.87) 27.6 (4.84) 18.2 34.4 - 4.63 (0.99) 5.2  84.0 (44.3) - - 21642350
CTMM Circulating Cells 605 Cohort Mixed 68.9 63.0 (9.83) 27.6 (4.45) 20.7 20.7 135.4 (19.1) 4.43 (1.05) -  86.4 (34.9) - 30.1 23975238
CURE Cure-Genetics Study 4242 RCT ACS 59.3 64.7 (10.99) 27.9 (4.44) 19.9 22.6 135.7 (21.9) - -  93.0 (33.9) 13.9 31.8 11102254
EGCUT Estonian Biobank 2408 Cohort CAD 51.0 67.1 (10.88) 28.9 (5.16) 18.7 19.2 135.6 (18.0) 5.64 (1.17) 27.3 - 15.7 36.0 24518929
EMORY Emory Cardiovascular Biobank 2411 Cohort Mixed 70.1 64.5 (11.06) - 30.7 9.8 - 4.49 (1.02) 76.0  99.0 (45.1) 61.7 27.9 20729229
ERICO Estratégia de Registro de Insuficiência Coronariana 438 Cohort ACS 55.5 63.8 (13.36) 27.0 (5.06) 39.1 31.0  99.2 (38.4) - 23.8 - 11.3 25.9 23644870
FINCAVAS Finnish Cardiovascular Study 1671 Cohort Mixed 69.4 60.9 (11.03) 27.8 (4.35) 18.4 24.3 140.2 (22.1) 4.74 (0.90) 57.3  90.8 (66.8) 32.6 39.0 16515696
FRISCII FRISCII Study 3106 RCT ACS 69.4 66.2 (9.80) 26.8 (3.87) 12.7 27.1 143.3 (22.4) 5.80 (1.12) 12.3  90.6 (18.8) 12.1 27.2 10475181
GENDEMIP GENetic DEtermination of Myocardial Infarction in Prague 1267 Cohort ACS 75.8 56.4 (8.63) 28.6 (4.68) 18.8 60.8 137.0 (20.8) 5.51 (1.17) 16.6 - 29.7 41.6 23249639
GENEBANK Cleveland Clinic Genebank Study 2345 Cohort Mixed 74.3 61.5 (11.06) 29.4 (5.44) 11.8 16.8 132.7 (21.1) 4.46 (0.93) 71.8 - 65.3 56.1 21475195
GENESIS-PRAXY GENdEr and Sex determInantS of cardiovascular disease: From bench to beyond-Premature Acute Coronary Syndrome (GENESIS-PRAXY) 784 Cohort ACS 69.2 48.3 (5.62) - 13.8 44.2 139.5 (26.5) 4.85 (1.18) 93.1  75.9 (19.7) 11.3 11.4 22607849
GENOCOR Genetic Mapping for Assessment of Cardiovascular Risk 497 Cohort Mixed 86.7 65.2 (8.45) - 13.3 64.4 129.5 (20.3) 4.70 (0.92) 72.1  94.8 (27.2) 13.7 63.2 22717531
GoDARTS incident Genetics of Diabetes Audit and Research in Tayside Scotland (I) 1003 Cohort CAD 62.0 71.1 (10.62) 29.7 (5.64) 77.9 - 126.7 (NA) 4.62 (1.02) 50.8 108.0 (64.6) 0.2 1.3 -
GoDARTS prevalent Genetics of Diabetes Audit and Research in Tayside Scotland (P) 2000 Cohort CAD 66.5 69.1 (9.20) 30.3 (5.43) 77.8 14.9 136.2 (19.7) 4.37 (0.83) 66.8 101.6 (34.5) 31.4 48.9 -
GRACE_B Global Registry of Acute Coronary Events - Belgium 699 Cohort ACS 75.4 65.7 (12.01) 27.0 (4.35) 81.3 49.9 138.8 (25.3) 5.33 (1.19) 79.3 102.8 (61.9) - 80.1 20231156
GRACE_UK Global Registry of Acute Coronary Events - UK 1086 Cohort ACS 69.1 64.4 (12.04) 28.0 (5.15) 15.0 69.5 137.8 (27.1) 5.19 (1.29) 16.8 105.0 (40.0) 20.4 32.0 20231156
IDEAL Incremental Decrease in End Points Through Aggressive lipid Lowering (IDEAL) 6223 RCT ACS 81.8 61.2 (9.32) 27.4 (3.80) 11.4 20.3 136.8 (19.8) 5.03 (0.98) 76.9 100.1 (16.7) 41.3 - 16287954
INTERMOUNTAIN Intermountain Heart Collaborative Study 6763 Cohort Mixed 66.7 61.2 (11.05) 29.5 (6.08) 20.3 10.2 141.8 (24.4) 4.96 (1.12) 38.7  99.6 (66.6) - 6.6 20691829
INVEST International Verapamil SR Trandolopril Study Genetic SubstudyNVEST-GENES 2145 RCT CAD 56.6 68.7 (9.38) - 23.9 12.8 148.6 (18.1) - 52.8 - 47.6 - 21372283
JUMC Krakow-GENIUS-CHD 704 Cohort Mixed 71.6 68.3 (10.25) 26.3 (4.46) 36.9 27.5 148.1 (23.8) 5.02 (1.06) 88.3  89.9 (37.5) 50.1 39.7 28444280
KAROLA Karola Study 1147 Cohort Mixed 84.6 58.6 (8.13) 27.0 (3.26) 18.5 32.4 119.9 (15.5) 4.46 (0.84) 77.4  82.4 (26.5) 42.8 21.6 24829374
LIFE-Heart Leipzig (LIFE) Heart Study 4330 Cohort Mixed 75.5 64.0 (11.15) 29.0 (4.68) 34.4 29.0 138.3 (21.8) 5.24 (1.18) 38.9  87.3 (34.6) - 0.1 22216169
LURIC The LUdwigshafen RIsk and Cardiovascular Health Study 2175 Cohort Mixed 76.5 63.8 (9.85) 27.5 (3.89) 44.3 23.9 142.3 (24.1) 4.94 (0.99) 58.9  88.7 (38.5) 48.7 57.4 11258203
NE_POLAND North East Poland Myocardial Infarction Study 603 Cohort ACS 75.0 62.4 (11.86) 24.8 (3.79) 22.2 48.1 138.9 (27.4) 5.04 (1.05) 80.7  91.6 (36.3) 1.3 10.6 26086777
NEAPOLIS Neapolis Campania Italia 1380 Cohort Mixed 74.4 67.6 (10.49) 28.0 (4.18) 43.0 26.8 129.4 (14.2) 4.57 (1.02) 82.5 101.0 (68.1) 41.5 40.8 24262617
OHGS Ottawa Heart Genomics Study 393 Cohort Mixed 73.0 65.3 (11.07) 28.6 (5.00) 6.9 19.5 131.9 (19.0) 5.53 (1.03) 92.4  89.8 (21.1) 28.2 21.9 -
PLATO The Study of Platelet Inhibition and Patient Outcomes 9814 RCT ACS 69.5 62.6 (10.95) 28.2 (4.51) 22.8 35.2 135.6 (21.8) 5.42 (1.23) 79.7  85.6 (26.3) 15.1 20.6 19332184
PMI Post Myocardial Infarction Study 783 Cohort ACS 78.3 62.7 (10.29) 26.5 (3.82) 12.0 28.2 117.0 (15.6) 5.98 (1.19) 46.0  87.8 (27.8) - 17.2 12771003
POPular The POPular study 997 RCT ACS 74.3 63.8 (10.40) - 18.9 27.5 145.0 (22.1) 4.25 (0.64) 80.7  92.7 (26.8) 33.1 43.7 26542508
PROSPER Prospective Study of Pravastatin in the Elderly at Risk 439 RCT CAD 69.9 75.4 (3.31) 26.4 (3.87) 10.3 16.2 150.0 (21.6) 5.55 (0.83) - 109.4 (23.2) 26.0 85.9 10569329
RISCA Recurrance and Inflammation in the Acute Coronary Syndromes Study 1052 Cohort ACS 75.9 61.9 (11.40) 27.2 (4.43) 19.8 30.4 - - 46.6 100.6 (28.6) 28.2 27.9 18549920
SHEEP Stockholm Heart Epidemiology Program (SHEEP) 1150 Cohort ACS 70.7 59.3 (7.21) 26.8 (4.02) 18.2 50.0 131.8 (20.6) 6.28 (1.16) - - - - 17667644
SMART Second Manifestations of Arterial Disease 2485 Cohort Mixed 82.2 60.2 (9.26) 27.3 (3.63) 16.6 24.4 137.4 (19.8) 4.73 (0.96) 75.7  92.3 (22.7) - 43.6 10468526
STABILITY Stabilization of Atherosclerotic Plaque by Initiation of Darapladib Therapy trial 9287 RCT Mixed 82.0 64.7 (9.10) 29.9 (4.97) 38.4 21.4 131.7 (16.1) - 97.3 - 74.6 58.6 24678955
THI Texgen 2729 Cohort ACS 75.3 63.6 (10.62) 29.6 (5.59) 30.5 21.3 - - 57.1 - 21.5 16.7 21414601
TNT Treating to New Targets 5104 RCT CAD 81.3 61.3 (8.73) 28.6 (4.59) 14.8 13.4 130.9 (16.8) 4.51 (0.61) 70.3 104.8 (17.3) - 57.3 15755765
TRIUMPH Translational Research Investigating Underlying Disparities in Acute Myocardial Infarction Patient's Health Status 1974 Cohort ACS 72.4 59.8 (12.04) 29.5 (5.96) 28.6 37.4 117.8 (18.3) - 89.0 112.5 (76.7) 27.0 18.3 21772003
UCORBIO Utrecht Coronary Biobank 1073 Cohort Mixed 75.6 65.4 (10.26) 27.2 (4.34) 21.5 23.1 - 4.76 (1.18) 64.0  91.9 (42.9) - 28.9 -
UCP Utrecht Cardiovascular Pharmacogenetics Study 1500 Cohort Mixed 75.4 64.1 (9.96) - - - 153.4 (21.4) 5.50 (1.10) 27.1  94.7 (24.8) - - 25652526
VHS Verona Heart Study 907 Cohort CAD 80.9 61.3 (9.78) 26.9 (3.57) 18.5 69.2 - 5.37 (1.10) 47.1  96.7 (32.2) 17.4 59.6 10984565
VIVIT Vorarlberg Institute for Vascular Investigation and Treatment Study 1318 Cohort CAD 73.1 64.5 (10.44) 27.4 (4.14) 30.6 18.9 137.2 (19.2) 5.45 (1.14) 49.7  88.4 (32.7) 21.1 31.0 24265174
WARSAW ACS Warsaw ACS Genetic Registry 669 Cohort ACS 74.5 63.6 (11.72) 28.1 (4.72) 21.9 42.0 127.8 (22.6) 4.99 (1.07) -  93.5 (41.4) - 18.6 -
WTCCC WTCCC CAD Study 1924 Cohort Mixed 79.3 60.0 (8.13) 27.6 (4.20) 11.7 12.8 143.6 (22.0) 5.28 (0.98) 71.6 - 67.1 72.0 17634449

Overview of studies contributing to chromosome 9p21 analysis and participant characteristics; alias denotes the abbreviated name of each study used in figures and tables; ACS = acute coronary syndrome, CAD = coronary artery disease; PubMed IDs are provided for individual study descriptions; mean (standard deviation) with proportions (%) are provided unless otherwise stated.

The rs1333049 single nucleotide polymorphism (SNP) was genotyped in 42 studies, with the remaining 7 studies using highly correlated proxies (R-squared > 0.90); rs10757278 (4 studies) or rs4977574 (3 studies) when the primary SNP was unavailable. Genotyping details are provided in Supplementary Table 1. For rs1333049, the average risk allele frequency across the participating studies was 0.518 ranging from 0.453 to 0.587 (Supplementary Figure 1).

From CARDIOGRAMplusC4D, after excluding 6 cohorts which had contributed data to both consortia, data were available for association with chromosome 9p21 from 41 studies, including 47,222 cases with CHD and 122,264 controls free of any CHD.

Power to detect different effect sizes, including the effect size identified in CARDIoGRAMplusC4D, using a two-sided alpha of 0.05, are provided in Supplementary Table 2.

Chromosome 9p21 Association with Subsequent CHD Events

Study-specific results for the association between chromosome 9p21 and risk of the primary outcome of CHD death or myocardial infarction among individuals with established CHD at baseline, adjusted for age and sex are presented in Supplementary Figure 2.

The per-allele odds ratio for the primary outcome during follow-up was 1.02 (95%CI 0.99-1.05). The effect estimate again for the primary outcome, based on a time to event analysis and using a Cox regression model, was also similar with a HR of 1.02 (95%CI 0.99-1.04, Supplementary Figure 3).

In contrast, a meta-analysis of CARDIOGRAMIplusC4D data (excluding studies also contributing data to GENIUS-CHD), revealed a per-allele odds ratio for a CHD event similar to that reported previously (OR 1.20; 95% CI 1.18-1.22). There was evidence of statistical heterogeneity between the estimates (Interaction p<0.001), Figure 1.

Figure 1.

Figure 1

Association between chromosome 9p21 and subsequent CHD events in all participants with baseline CHD (GENIUS-CHD) compared to association in CHD cases and CHD-free controls (CARDIoGRAMPlusC4D)

For the CARDIoGRAMPlusC4D meta-analysis estimate, 6 studies [LURIC, LIFE-Heart, GoDARTS, OHGS, PROSPER, WTCCC] were excluded as they were also included in GENIUS-CHD.

Estimates for GENIUS-CHD are also presented by subtype of CHD at baseline including acute coronary syndrome (ACS), stable coronary artery disease without prior MI (CAD/no MI) and Stable CAD with prior MI (CAD/MI). All estimates were adjusted for age and sex.

Subgroup Analyses

We found minimal evidence for heterogeneity in effect estimates when stratifying by CHD subtype at baseline (interaction p-value 0.801), with no clear evidence for an effect of chromosome 9p21 genetic variation on subsequent CHD death or MI in individuals enrolled with ACS (OR 1.02; 95% CI 0.97-1.06), those with coronary artery disease with a prior MI (OR 1.01; 95% CI 0.96-1.05) and those with coronary artery disease without prior MI (OR 1.01; 95% CI 0.95-1.08, Figure 1).

We further examined the effect of chromosome 9p21 on the primary outcome in pre-specified subgroup analyses. We noted a borderline nominally significant interaction with sex, suggesting a greater risk among women with the chromosome 9p21 risk allele, for subsequent CHD death/MI (interaction p value = 0.04), while non-significant trends were noted for greater risk in those without hypertension (p value = 0.08) or without renal impairment (p value = 0.17). There were minimal differences in effect estimates by other patient level characteristics including age and diabetes, or according to statin or anti-platelet use or LV impairment at baseline (Supplementary Figure 4).

Similarly, when stratified by study level features, we observed minimal evidence for heterogeneity in effect estimates by study size, geographical region, study design or length of follow up (Supplementary Figure 5). However, when ordered by date of first enrollment, there was no evidence for variation in effect by time of enrollment (Supplementary Figure 2).

Secondary outcomes

We additionally examined the association between chromosome 9p21 and other subsequent events available for this analysis within the GENIUS-CHD Consortium, listed in Supplementary Table 3, with summary estimates provided in Figure 2. Of note, the per-allele effect of risk variants at chromosome 9p21 on subsequent revascularization during follow up was 1.07 (95% CI 1.04-1.09). The effect on the composite outcome of any CVD, which includes revascularization, was also significant at 1.04 (95% CI 1.02-1.07). However, there was no clear evidence of association for the remaining secondary outcomes, with only a marginal trend to protection for both subsequent heart failure (OR 0.97; 95% CI 0.93-1.01) and CVD death (OR 0.97; 95% CI 0.94-1.01), as shown in Figure 2.

Figure 2.

Figure 2

Association between chromosome 9p21 and secondary outcomes in participants with baseline CHD, within GENIUS-CHD. All meta-analysis estimates were adjusted for age and sex.

Selection Bias

To explore the potential for index event bias we looked for differences in associations between chromosome 9p21 and known cardiovascular risk factors in the UKB, among the subset of participants with established CHD, compared to the full UKB cohort (Supplementary Table 4). While there were differences between the groups in the prevalence or values of the tested risk factors, we did not find clear evidence to indicate a distortion in associations between chromosome 9p21 and age, blood pressure, diabetes or smoking. There was, however, a small difference for BMI, with a greater statistical association between the chromosome 9p21 risk allele and lower BMI identified in those with established CHD than in the general population (nominal interaction p value 0.02, Supplementary Table 4).

We also observed that the chromosome 9p21 risk allele frequency in those surviving with CHD, both in UKB (0.529) and in GENIUS-CHD (0.518, Supplementary Figure 1), was higher than the general population in the UKB (0.481) and European reference populations from the 1000 Genomes (Phase 3),9 (0.472). This difference in frequency confirms the association of chromosome 9p21 with CHD and also indicated absence of a crude survival bias with loss of large numbers of risk allele carriers to fatal events prior to entry into CHD cohorts. We did however observe a trend to an age association in those with established CHD as well as the general population in the UKB, with lower chromosome 9p21 risk allele frequencies with advancing age, relative to younger carriers (Supplementary Figure 6).

Discussion

In this study, we examined the effect of genetic variation at the chromosome 9p21 locus on risk of subsequent events in 103,357 individuals with established CHD using the newly formed GENIUS-CHD consortium.8 We found that: (1) in contrast to the known strong association with CHD observed in CARDIoGRAMPlusC4D, there was a markedly attenuated and non-significant association with subsequent CHD events in GENIUS-CHD; (2) effect estimates in GENIUS-CHD were broadly consistent in stratified analyses based on features related to study design, patient characteristics and type of index CHD event and (3) exploratory analyses suggested that selection biases were unlikely to explain the discrepancy. However, we did find evidence of an association between these variants and a secondary outcome of future revascularization events. Our findings, taken together with those from others, support the view that chromosome 9p21 promotes CHD through progressive stable atheroma rather than through development of an unstable phenotype.

The chromosome 9p21 locus is the most widely-replicated genetic risk locus for CHD identified to date, with an estimated 15-35% increased risk in carriers of the variant allele in prospective population and case-control studies.5 However, studies examining the effect on subsequent CHD events in people with known CHD at baseline have reported conflicting results.1014 Our group previously examined this in a literature-based meta-analysis, based on 15 studies with median sample size of 1,750 individuals, accruing 25,163 cases of established CHD, and reported no clear evidence of an effect of variants at chromosome 9p21 on the risk of subsequent events.15 An analysis by the CHARGE consortium of 2,953 MI survivors also reported no association with subsequent mortality.7 However, the limited size of most prior studies and the limitations of literature meta-analyses indicate that many possible explanations, including errors in risk allele coding and selection biases, could not be adequately explored, precluding meaningful interpretations for any mechanistic or clinical implications.

The emergence of the GENIUS-CHD Consortium has now permitted a robust evaluation of the role of chromosome 9p21 in subsequent CHD event risk, revealing a clear lack of association with a common composite coronary endpoint. This is in marked contrast to findings from studies comparing cases to CHD-free controls, as confirmed through meta-analysis of CARDIoGRAMPlusC4D data. Furthermore, we were able to add to previous findings by showing that the type of CHD at baseline, whether acute coronary syndrome or stable CHD with or without prior MI, does not alter this association. We also interrogated several widely-proposed explanations that could account for our findings through pre-specified subgroup analyses, and confirmed that most of these, specifically older age, medication use at baseline (statin or antiplatelet), study size or follow up duration, did not appreciably alter the association findings. Our finding of a possible interaction with sex, warrants further investigation, but should be considered hypothesis-generating given the borderline evidence of an interaction.

Selection bias (i.e., index event bias or collider-stratification bias) could potentially explain reversed or attenuated associations in disease progression studies like this, operating by inducing relationships between (otherwise independent) risk factors through the selection of individuals with disease.16, 17 Specifically, individuals surviving a first event consequent on exposure to a particularly strong risk factor may have lower levels of exposure to other individually weaker, independent risk factors, which can then attenuate the association of the risk factor of interest with subsequent events. However, the distribution of common risk factors by chromosome 9p21 genotype did not differ when compared between the general population and the subset with CHD in the UKB, using interaction tests. The only exception was for BMI, a potentially differential association with chromosome 9p21 in those with CHD compared to the general population was noted. However, the effect size was small in both populations and on its own is unlikely to indicate presence of substantial index event bias.

Selection bias may also theoretically occur by focussing on subjects surviving a first event, where chromosome 9p21 risk allele carriers at risk of fatal CHD events are lost prior to enrollment into CHD cohorts, thereby diluting the future impact of the variant on subsequent CHD events. In this scenario, we would expect a lower risk-allele frequency in those surviving CHD and entering CHD cohorts, but we found no evidence for this. Among those with CHD in the UKB, and among the whole UKB cohort, we did find a progressive loss of risk allele carriers with increasing age, consistent with prior findings of a greater association with CHD, among younger individuals in case-control studies.5 Given patients with CHD are generally older, it is possible that a subtle survival bias may still be influencing our findings, although all analyses were adjusted for age. However, based on simulation modelling, sample size and projected SNP effect size, we and others have previously estimated that selection biases are only minimally operating in this context and would be unlikely to account for our observed findings. 18, 19 Although our findings potentially argue against important selection biases in the analysis for the primary outcome, they are relatively insensitive assessments and may not fully elucidate such biases.

Possible biological explanations could also exist for our findings. Pathological studies indicate differences between chronic stable atherosclerotic plaques that cause ischemia through progressive vessel occlusion and vulnerable plaques with thin caps, prone to sudden plaque rupture, unheralded MI and coronary deaths.20 In a seminal study dissecting the phenotype of CHD, a lack of effect for chromosome 9p21 and MI was noted, when both cases and controls had underlying atherosclerosis.21 Our group and others have in parallel shown that chromosome 9p21 robustly associates with atherosclerotic phenotypes,22 while functional studies have also implicated this region with molecular activity that drives atheroma.23 Furthermore, in this study we show that the only outcome positively associated with chromosome 9p21 is incident revascularization, perhaps reflecting more severe atherosclerosis burden. Collectively these data support the concept that chromosome 9p21 promotes progressive atheroma formation and does not confer risk via plaque rupture.

In this context, it is worth noting that chromosome 9p21 associates more robustly with CHD in case-control studies than in prospective cohort studies.7 The difference, as proposed by others, could hypothetically be accounted for by incidence–prevalence bias, with chromosome 9p21 carriers more likely to survive a CHD event and thus be over represented among CHD cases (the opposite to survival bias described above).7 This becomes more likely as stated above if chromosome 9p21 drives a more progressive and stable atheroma phenotype. If this holds true then among survivors with established CHD, one might expect that chromosome 9p21 carriers could hold a small favourable advantage over those who experience CHD in its absence, due instead to other more dangerous or vulnerable characteristics, and despite undergoing more subsequent revascularization, these chromosome 9p21 carriers do not experience more dangerous or fatal events.

These findings have important implications. Clinically, they indicate that a degree of caution should be applied when considering or evaluating patients for chromosome 9p21 in order to predict disease progression or residual risk. They also highlight the need to appreciate important biases that may inflate or attenuate association findings in the setting of subsequent events for individuals with established disease. Mechanistically, these findings support existing and emerging efforts seeking to elucidate the mechanism of the most robust genetic discovery for CHD in recent decades.

There are important limitations to consider. First, among individuals in GENIUS with established CHD, the timing of the first CHD event or age of onset was often unknown so we could not account for this variable in our analyses. However, the lack of association in the ACS studies, which had documented timing of the first event, suggests this did not impact the findings. Second, we had limited information on whether subsequent revascularization events were late staged procedures, which would count as part of the index CHD event or unplanned and symptom driven and thereby a true subsequent event, which may have diluted the effect estimate. Third, while we did not observe a specific interaction for statin or aspirin use, we cannot rule out an effect of combined or additional medication usage attenuating the association signal, given the high prevalence of secondary prevention drug use in this setting compared to general population cohorts. Fourth, our analyses were restricted to participants of European descent as most of the included studies only recruited these individuals and so we were markedly underpowered to explore associations in other ethnic groups. Unfortunately, this remains a wider problem of genetic research and global efforts are ongoing to address this imbalance. Finally, variability of follow-up duration across studies is an analytical challenge and could have impacted our findings, through misclassification. However, a sensitivity analysis stratifying on the follow-up duration of individual studies (<5 or 5≥ years) revealed minimal evidence (P=0.62) of heterogeneity in effect estimates (Supplemental Figure 5), suggesting that this is unlikely to have influenced our findings significantly as effect estimates were concordant across studies with different lengths of follow-up. Our major strengths however include the size of the study and the large number and types of subsequent events and an effort to examine for selection biases. We also sought to mitigate potential miscoding of the risk allele, given rs1333049 is a palindromic SNP, and also the risk allele C changes from being a minor allele in population cohorts to the major allele in CHD cohorts. Finally, this analysis benefitted from the collective expertise and input of over 170 investigators and analysts, many of whom have previously reported on chromosome 9p21.

In conclusion, using the newly formed GENIUS-CHD consortium, we demonstrate that variation at chromosome 9p21 shows no clear association with risk of subsequent CHD events when all individuals have established CHD at baseline. This is in marked contrast to prior case-control studies examining odds of CHD presence compared to disease-free controls. We could not account for the attenuation of effect in terms of selection biases or subgroup effects. However, we did find a greater risk for incident revascularization in those with established CHD and although residual bias may be at play, our findings collectively support the view that chromosome 9p21 promotes CHD through progressive stable atheroma rather than through development of an unstable phenotype.

Supplementary Material

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Acknowledgments

The GENIUS CHD collaborators would like to express their immense gratitude to all patients who participated in each of the individual studies as well as the many personnel who helped with recruitment, collection, curation, management and processing of the samples and data. We also thank the CARDIoGRAMPlusC4D steering committee for providing the summary data after excluding the cohorts already in GENIUS-CHD.

Sources of Funding: The funder(s) of the study had no role in study design, data collection, data analysis, data interpretation, or writing of the report. Within GENIUS-CHD, all participating investigators and sponsors who contributed data and analyses are acknowledged irrespective of academic or industry affiliations.

Specific funding statements: Dr Patel is funded by a British Heart Foundation Intermediate Fellowship (FS/14/76/30933). This research was also supported by the National Institute for Health Research University College London Hospitals Biomedical Research Centre.; Dr Schmidt is funded by BHF grant PG/18/5033837 ; Dr Holmes works in a unit that receives funding from the UK Medical Research Council and is supported by a British Heart Foundation Intermediate Clinical Research Fellowship (FS/18/23/33512) and the National Institute for Health Research Oxford Biomedical Research Centre.; The AGNES study was supported by research grants from the Netherlands Heart Foundation (2001D019, 2003T302, 2007B202 and the PREDICT project (CVON 2012-10)), the Leducq Foundation (grant 05-CVD) and the Center for Translational Molecular Medicine (CTMM COHFAR). ; The Cleveland Clinic Genebank Study was supported in part by NIH grants R0133169, R01ES021801, R01MD010358, and R01ES025786, R01HL103866, R01DK106000, R01HL126827, P20HL113452., P01HL098055, P01HL076491, and R01HL103931; The Clinical Cohorts in Coronary disease Collaboration (4C) study was supported in part by NIHR and Barts Charity; The Corogene study was supported by grants from Aarno Koskelo Foundation, Helsinki University Central Hospi-tal special government funds (EVO #TYH7215, #TKK2012005, #TYH2012209, #TYH2014312), and Finnish Foundation for Cardiovascular research ; CABGenomics was supported by Stanton Shernan, C. David Collard, Amanda A. Fox/R01 HL 098601 NHLBI; The CDCS and PMI studies were funded by the Health Research Council and Heart Foundation of New Zealand; Dr Samman-Tahnan is supported by the National Institutes of Health/ National Institutes of Aging grant AG051633; Dr Sandesara is supported by the Abraham J. & Phyllis Katz Foundation (Atlanta, GA, USA); The Emory Cardiovascular Biobank is supported by National Institutes of Health (NIH) grants 5P01HL101398-02, 1P20HL113451-01, 1R56HL126558-01, 1RF1AG051633-01, R01 NS064162-01, R01 HL89650-01, HL095479-01, 1U10HL110302-01, 1DP3DK094346-01, 2P01HL086773-06A1; This Estonian Biobank was funded by EU H2020 grant 692145, Estonian Research Council Grant IUT20-60, IUT24-6, PUT1660, PUT735 and European Union through the European Regional Development Fund Project No.2014-2020.4.01.15-0012 GENTRANSMED, NIH – GIANT, ERA-CVD grant Detectin-HF and 2R01DK075787-06A1.; GENESIS-PRAXY is funded by the Canadian Institutes of Health Research and Heart and Stroke Foundations of Alberta, NWT & Nunavut, British Columbia and Yukon, Nova Scotia, Ontario, and Quebec (HSFC); The GENDEMIP study was supported by Project (MH, Czech Republic) No. 00023001 (ICEM, Prague); GoDARTS was funded by the Wellcome Trust (072960/Z/03/Z, 084726/Z/08/Z, 084727/Z/08/Z, 085475/Z/08/Z, 085475/B/08/Z) and as part of the EU IMI-SUMMIT programme. C.N.A.P. has received grant funding from the Wellcome Trust to develop the GoDARTS cohort. ; Dr Mordi is supported by an NHS Education of Scotland/Chief Scientist Office Postdoctoral Clinical Lectureship (PCL 17/07); the GENECOR stuidy was supported in part by the Italian Ministry of Research's Fund for Basic Research (FIRB 2005); GRACE UK was supported in part by an Educational Grant from Sanofi Aventis; Award from Chief Scientist Office, Scotland; INVEST-GENES was supported by the National Institute of Health Pharmacogenomics Research Network grant U01-GM074492, NIH R01 HL074730, University of Florida Opportunity Fund, BASF Pharma and Abbott Laboratories. ; IATVB was supported by Epidemiologia e Genetica della Morte Improvvisa in Sardegna; The KAROLA study has received financial support by the German Ministry of Education and Research (01GD9820/0 and 01ER0814), by the Willy-Robert-Pitzer Foundation, and by the Waldburg-Zeil Clinics Isny.; The KRAKOW GENIUS Study was supported by a grant from the Polish Ministry of Science and Higher Education, no. NN402083939 and the National Science Centre, no. 2013/09/B/NZ5/00770; LIFE-Heart was funded by the Leipzig Research Center for Civilization Diseases (LIFE). LIFE is an organizational unit affiliated to the Medical Faculty of the University of Leipzig. LIFE is funded by means of the European Union, by the European Regional Development Fund (ERDF) and by funds of the Free State of Saxony within the framework of the excellence initiative.; The LURIC study was supported by the 7th Framework Program (AtheroRemo, grant agreement number 201668 and RiskyCAD, grant agreement number 305739) of the European Union; The NEAPOLIS CAMPANIA study was suppported by European Research Council Advanced Grant (CardioEpigen, #294609);Italian Ministry of Health (PE-2013-02356818);Italian Ministry of Education, University and Research (2015583WMX) ; The North East Poland Myocardial Infarction Study was supported by grant N N 402 529139 from the National Science Center (Poland); Dr Vilmundarson is supported by a graduate fellowship of the University of Ottawa Heart Institute; OHGS was funded in part by a Heart and Stroke Foundation grant; Dr Stott was supported in part by an investgator initiated grant from Bristol Myers Squibb USA; The PROSPER study was supported by an investigator initiated grant obtained from Bristol-Myers Squibb. Prof. Dr. J. W. Jukema is an Established Clinical Investigator of the Netherlands Heart Foundation (grant 2001 D 032). Support for genotyping was provided by the seventh framework program of the European commission (grant 223004) and by the Netherlands Genomics Initiative (Netherlands Consortium for Healthy Aging grant 050-060-810). ; The RISCA study ws supported in part by FRSQ, HSFC, Merck Frost Canada, Pfizer Canada; The SHEEP study was supported by grants from the Swedish Council for Work Life and Social Research, and the Stockholm County Council. ; The TNT trial was sponsored by Pfizer who granted access to data, Genotyping of the samples was funded in part by grants from Genome Canada and Genome Quebec and the Canadian Institutes of Health Research (CIHR).; Dr Arsenault holds a junior scholar award from the Fonds de recherche du Quebec- Sante (FRQS); Dr. Cresci is supported, in part, by the National Institutes of Health (Cresci R01 NR013396). The TRIUMPH study was sponsored by the National Institutes of Health: Washington University School of Medicine SCCOR Grant P50 HL077113; The UCP studies were funded by the Netherlands Heart Foundation and the Dutch Top Institute Pharma Mondriaan Project; The Verona Heart Study was supported by the Cariverona Foundation; Veneto Region; Italian Ministry of Education, University, and Research (MIUR); LURM (Laboratorio Universitario di Ricerca Medica) Research Center, University of Verona; The Warsaw ACS Registry is supported by grant N R13 0001 06 from The National Centre for Research and Development (NCBiR), Statutory Grant from Medical University of Warsaw; Dr Nelson is funded by the British Heart Foundation; Prof. Samani is funded by the British Heart Foundation and is a NIHR Senior Investigator. Prof Hingorani is a NIHR Senior Investigator; Prof Asselbergs is supported by UCL Hospitals NIHR Biomedical Research Centre, EU/EFPIA Innovative Medicines Initiative 2 Joint Undertaking BigData@Heart grant n° 116074, the European Union’s Horizon 2020 research and innovation programme under the ERA-NET Co-fund action N°01KL1802 (Druggable-MI-gene) jointly funded by the Dutch Heart Foundation and Netherlands Organization for Health Research and Development (ZonMw).

Disclosures: Dr Patel has received speaker fees and honoraria from Amgen, Sanofi and Bayer and research grant funding from Regeneron; Dr Holmes has collaborated with Boehringer Ingelheim in research, and in accordance with the policy of The Clinical Trial Service Unit and Epidemiological Studies Unit (University of Oxford), did not accept any personal payment; Dr Akerblom has received institutional research grant and speakers fee from AstraZeneca, institutional research grant from Roche Diagnostics.; Dr James has received grants from AstraZeneca, The Medicines Company, Swedish heart and lung foundation, Swedish research council, Janssen; personal fees from Bayer.; Dr Hagstrom declares being an expert committee member, lecture fees, and institutional research grant from Sanofi, and Amgen; institutional research grants from AstraZeneca, and GlaxoSmithKline; expert committee member and lecture fees NovoNordisk and Behringer.; Dr Held declares institutional research grant, advisory board member and speaker’s bureau from AstraZeneca; institutional research grants from Bristol-Myers Squibb Merck & Co, GlaxoSmithKline, Roche Diagnostics. Advisory board for Bayer and Boehringer Ingelheim; Dr Lindholm has received institutional research grants from AstraZeneca, and GlaxoSmithKline; Speaker fees from AstraZeneca, Speaker fees from AstraZeneca; Dr Siegbahn has received institutional research grants from AstraZeneca, Boehringer Ingelheim, Bristol-Myers Squibb/Pfizer, Roche Diagnostics, GlaxoSmithKline.; Dr. J.M. ten Berg reports receiving fees for board membership from AstraZeneca, consulting fees from AstraZeneca, Eli Lilly, and Merck, and lecture fees from Daiichi Sankyo and Eli Lilly, AstraZeneca, Sanofi and Accumetrics; Prof Wallentin reports institutional research grants, consultancy fees, lecture fees, and travel support from Bristol-Myers Squibb/Pfizer, AstraZeneca, GlaxoSmithKline, Boehringer Ingelheim; institutional research grants from Merck & Co, Roche Diagnostics; consultancy fees from Abbott; and holds a patent EP2047275B1 licensed to Roche Diagnostics, and a patent US8951742B2 licensed to Roche Diagnostics; Dr Claes reports lecture fees, and an institutional research grant from Sanofi, and Amgen; institutional research grants from AstraZeneca, and GlaxoSmithKline; and lecture fees from NovoNordisk and AstraZeneca. Prof Asselbergs has received research funding from Regeneron, Pfizer, Sanofi.

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