Literature DB >> 34321906

C5 Variant rs10985126 is Associated with Mortality in Patients with Symptomatic Coronary Artery Disease.

Jessica Kristin Henes1, Patrick Groga-Bada1, Elke Schaeffeler2,3, Stefan Winter2,3, Luis Hack1, Monika Zdanyte1, Karin Mueller1, Michal Droppa1, Fabian Stimpfle1, Meinrad Gawaz1, Harald Langer4, Matthias Schwab2,3,5,6, Tobias Geisler1, Dominik Rath1.   

Abstract

BACKGROUND: Complement component 5a (C5a) is a highly potent anaphylatoxin with a variety of pro-inflammatory effects. C5a contributes to progression of atherosclerosis and inhibition of the receptor (C5aR) might offer a therapeutic strategy in this regard. Single nucleotide polymorphisms (SNPs) of the C5 gene may modify protein expression levels and therefore function of C5a and C5aR. This study aimed to examine associations between clinically relevant C5a SNPs and the prognosis of patients with symptomatic coronary artery disease (CAD). Furthermore, we sought to investigate the influence of C5 SNPs on C5aR platelet surface expression and circulating C5a levels.
METHODS: C5 variants (rs25681, rs17611, rs17216529, rs12237774, rs41258306, and rs10985126) were analyzed in a consecutive cohort of 833 patients suffering from symptomatic coronary artery disease (CAD). Circulating C5a levels were determined in 116 patients whereas C5aR platelet surface expression was measured in 473 CAD patients. Endpoints included all-cause mortality, myocardial infarction (MI), and ischemic stroke (IS). Homozygous carriers (HC) of the minor allele (rs10985126) showed significantly higher all-cause mortality than major allele carriers. While we could not find significant associations between rs10985126 allele frequency and C5aR platelet surfazl ce expression, significantly elevated levels of circulating C5a were found in HC of the minor allele of the respective genotype. rs17216529 allele frequency correlated with the composite combined endpoint and bleeding events. However, since the number of HC of the minor allele of this genotype was low, we cannot draw a robust conclusion about the observed associations.
CONCLUSION: In this study, we provide evidence for the prognostic relevance of rs10985126 in CAD patients. C5 rs10985126 may serve as a prognostic biomarker for risk stratification in high-risk CAD patients and consequently promote tailored therapies.
© 2021 Henes et al.

Entities:  

Keywords:  SNPs; complement C5; coronary artery disease; prognostic factors

Year:  2021        PMID: 34321906      PMCID: PMC8312322          DOI: 10.2147/PGPM.S307827

Source DB:  PubMed          Journal:  Pharmgenomics Pers Med        ISSN: 1178-7066


Introduction

The complement system is part of the innate immunity and represents a first defense line against microbial pathogens.1 Consequently, complement components are critically involved in infectious (eg, meningitis) and autoimmune disease (eg, systemic lupus erythematosus).2 This system consists of over 20 proteins and may eliminate cells by forming a membrane attack complex in order to induce cytolysis or by opsonization for macrophages.3 Furthermore, complement component 5a (C5a), a cleavage product of C5, is a highly potent anaphylatoxin and possesses a variety of pro-inflammatory effects, facilitating chemotaxis of leukocytes,4 vasodilatation,5 vascular permeability6 and the release of histamine by mast cells.7 As inflammation contributes to the pathogenesis of atherosclerosis,8 several studies suggest C5a to be a promoter of atherosclerosis. CD88 (C5aR) is highly present in aortas of ApoE−/- mice, coinciding with atherosclerotic lesion development and inhibition of C5aR reduces lesion size.9 Moreover, in human coronary artery lesions, a higher expression of C5a was found in lipid-rich inflammatory plaques with cholesterol clefts and necrotic cells, while lower C5a expression was found in stable plaques.10 The complement system might be activated by cholesterol crystals (CC) in plaques, leading to the release of cytokines in whole blood, including TNFα and IL-1β.11,12 Consequently, TNFα mediates endothelial cell activation, which is essential for inflammatory cell recruitment to the lesion site.13 Since CC-induced cytokine production is reduced after inhibiting C5aR in whole blood, C5a may represent a key player in this process.11 Plaque rupture represents a serious complication in atherosclerotic vessels leading to eg, myocardial or cerebral infarction. C5 induced smooth muscle and endothelial cell degradation via apoptosis may be associated with atherosclerotic plaque disruption.14 In lipid-rich plaques, a co-localization of C5a and matrix metalloproteinases (MMPs) has been demonstrated. C5a induces the release of MMPs in vitro which might be of importance since MMPs contribute to plaque rupture.10 C5aR blockage may serve a therapeutic purpose to inhibit progress of atherosclerosis.9 Furthermore, circulating C5a correlates with future risk for adverse cardiovascular events in patients with advanced atherosclerosis.15 C5aR platelet surface exposure levels are elevated in patients suffering from coronary artery disease (CAD) when compared to healthy controls.16 Platelet C5aR is associated with platelet activation levels.16 C5 single nucleotide polymorphisms (SNPs) on chromosome 9q34.117 may alter protein expression levels and therefore function of C5a and eventually also C5aR. SNPs of the C5 gene have previously been investigated regarding a possible influence on common and/or inflammatory diseases. rs17611 has already been reported to be associated with cardiovascular outcome in patients with asymptomatic carotid atherosclerosis,18 as well as ischemic stroke19 or diabetic retinopathy.20 Furthermore, rs25681 and rs17611 are associated with the outcome of renal allografts.21 In diabetic retinopathy and renal allografts, rs10985126 and rs12237774 however failed to yield significant results.20,21 In addition, rs25681, rs17611, rs10985126 and rs12237774 are used to identify a protective haplotype against bronchial asthma.22 Significant associations could neither be demonstrated for rs17216529 and age-related macular degeneration23 nor rs41258306 in glioma patients, respectively.24 Hence, this study aimed to examine (1) associations between clinically relevant and previously investigated C5a SNPs (rs25681, rs17611, rs17216529, rs12237774, rs41258306 and rs10985126) and the prognosis of patients with symptomatic CAD. Furthermore, we investigated (2) C5 SNPs’ association with both platelet surface expression of C5aR and circulating C5a.

Materials and Methods

Subjects

The study was conducted from November of 2011 until March of 2016. Clinically significant C5 SNPs were analyzed in 833 consecutive CAD patients (chronic coronary syndrome (CCS) and acute coronary syndrome (ACS)) that were admitted to the department of cardiology of the university of Tuebingen, Germany. CAD was diagnosed in case of a stenosis greater than 50% in at least one main coronary artery.25 CCS and ACS were defined according to current guidelines.26,27 Patients suffered from a significant amount of cardiovascular risk factors, including arterial hypertension (83%), diabetes mellitus type 2 (33%), hyperlipidemia (58%) and smoking (41%). The average body mass index (BMI) was 27.8 kg/m2. Harmful use of alcohol was registered in 3% of the overall cohort. Medication on admission was distributed as follows: Acetylsalicylic acid (55%), Clopidogrel (12%), Prasugrel (2%), Ticagrelor (2%), Oral anticoagulants (8%), ACE-inhibitors (43%), Angiotensin-II-receptor-antagonists (18%), Ca-channel-blockers (20%), Beta-blockers (57%) and Statins (48%). Further information on the baseline characteristics of the overall cohort is depicted in Tables 1 and 2.
Table 1

Baseline Characteristics for the Overall Cohort Stratified According to Rs10985126 (n=831) *

Baseline CharacteristicsAll (n=831)hc of Major Allele (n=563)Heterozygotes (n=246)hc of Minor Allele (n=22)p
Age (mean±SD)68 (±12)68 (±11)69 (±12)71 (±10)0.578
No. of males590 (71%)401 (71%)176 (72%)13 (59%)0.442
Cardiovascular risk factors
Arterial hypertension693 (83%)463 (82%)211 (86%)19 (86%)0.259
Hyperlipidemia483 (58%)334 (59%)139 (57%)10 (45%)0.331
Diabetes mellitus type 2273 (33%)189 (34%)75 (30%)9 (41%)0.579
Smoking338 (41%)234 (42%)96 (39%)8 (36%)0.783
Clinical factors
Left ventricular ejection fraction [%] (mean±SD)51 (±11)51 (±11)51 (±11)52 (±12)0.819
Creatinine [mg/dl] (mean±SD)1.0 (±0.6)1.0 (±0.7)1.0 (±0.4)1.4 (±1.0)0.037
Medication on admission
Acetylsalicylic acid461 (55%)301 (53%)143 (58%)17 (77%)0.033
Clopidogrel103 (12%)68 (12%)31 (13%)4 (18%)0.647
Prasugrel17 (2%)14 (2%)3 (1%)0 (0%)0.396
Ticagrelor37 (4%)22 (4%)14 (6%)1 (5%)0.539
Oral anticoagulation68 (8%)47 (8%)18 (7%)3 (14%)0.568
ACE-inhibitors354 (43%)236 (42%)108 (44%)10 (45%)0.886
Angiotensin-II-receptor antagonists151 (18%)100 (18%)44 (18%)7 (32%)0.250
Ca-channel-blocker168 (20%)102 (18%)61 (25%)5 (23%)0.103
Beta blockers471 (57%)312 (55%)140 (57%)19 (86%)0.018
Statins396 (48%)269 (48%)113 (46%)14 (64%)0.275
Reason of admission
ACS411 (49%)285 (51%)116 (47%)10 (45%)0.616
Stable CAD420 (51%)278 (49%)130 (53%)12 (55%)0.616

Notes: *2 missing values. Bold indicates the values with statistical significance.

Table 2

Baseline Characteristics for the Overall Cohort Stratified According to Rs17216529 (n=827) *

Baseline CharacteristicsAll (n=827)hc of Major Allele (n=698)Heterozygotes (n=127)hc of Minor Allele (n=2)p
Age (mean±SD)69 (±12)68 (±12)69 (±12)80 (±4)0.369
No. of males586 (71%)498 (71%)86 (68%)2 (100%)0.444
Cardiovascular risk factors
Arterial hypertension689 (83%)579 (83%)108 (85%)2 (100%)0.367
Hyperlipidemia480 (58%)405 (58%)75 (59%)0 (0%)0.199
Diabetes mellitus type 2271 (33%)233 (33%)37 (29%)1 (50%)0.674
Smoking335 (41%)285 (41%)49 (39%)1 (50%)0.938
Clinical factors
Left ventricular ejection fraction [%] (mean±SD)51 (±11)51 (±11)51 (±10)38 (±4)0.194
Creatinine [mg/dl] (mean±SD)1.0 (±0.6)1.0 (±0.6)1.1 (±0.5)1.6 (±1.0)0.370
Medication on admission
Acetylsalicylic acid459 (56%)378 (54%)79 (62%)2 (100%)0.111
Clopidogrel103 (12%)82 (12%)20 (16%)1 (50%)0.128
Prasugrel16 (2%)15 (2%)1 (1%)0 (0%)0.578
Ticagrelor37 (4%)33 (5%)4 (3%)0 (0%)0.695
Oral anticoagulation69 (8%)61 (9%)8 (6%)0 (0%)0.587
ACE-inhibitors354 (43%)296 (42%)57 (45%)1 (50%)0.885
Angiotensin-II-receptor antagonists150 (18%)126 (18%)24 (19%)0 (0%)0.785
Ca-channel-blocker167 (20%)136 (19%)31 (24%)0 (0%)0.363
Beta blockers470 (57%)388 (56%)80 (63%)2 (100%)0.161
Statins395 (48%)332 (48%)62 (49%)1 (50%)0.981
Reason of admission
ACS407 (49%)349 (50%)56 (44%)2 (100%)0.168
Stable CAD420 (51%)349 (50%)71 (56%)0 (0%)0.168

Note: *6 missing values.

Baseline Characteristics for the Overall Cohort Stratified According to Rs10985126 (n=831) * Notes: *2 missing values. Bold indicates the values with statistical significance. Baseline Characteristics for the Overall Cohort Stratified According to Rs17216529 (n=827) * Note: *6 missing values.

Ethics Statement

Hereby, we assure that for the current manuscript the following is fulfilled: This material is the authors’ own original work, which has not been previously published elsewhere. The paper is not currently being considered for publication elsewhere. The paper reflects the authors’ own research and analysis in a truthful and complete manner. The paper properly credits the meaningful contributions of co-authors and co-researchers. The results are appropriately placed in the context of prior and existing research. All sources used are properly disclosed. All authors have been personally and actively involved in substantial work leading to the paper and will take public responsibility for its content. The violation of the Ethical Statement rules may result in severe consequences. The ethics committee of the Eberhard Karls University Tuebingen approved this study (270/2011BO1 and 238/2018BO2). Finally, this investigation is in line with the Helsinki declaration as well as the good clinical practice guidelines.28–30

Inclusion and Exclusion Criteria

We enrolled all patients hospitalized due to either CCS (51%) or ACS (49%). Exclusion criteria were defined as age <18 years and absence of CAD. We confirm that the patients provided informed consent.

Genotyping of C5 Variants

Genomic DNA was isolated from ethylenediaminetetraacetic acid (EDTA) blood samples using the QIAmp® DNA Blood Mini Kit System (Qiagen, Hilden, Germany). C5 variants (rs25681, rs17611, rs17216529, rs12237774, rs41258306 and rs10985126) were selected according to PubMed records and reported associations with clinical parameters and functional consequences.18–24 Matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF MS) using the MassARRAY® Compact system (Sequenom, CA, USA) was applied to genotype for C5 variants. Details of assays and primers are provided upon request. Approximately 10% of samples within each assay served as quality control. Personnel investigating the study endpoints was blinded to the allele frequency of all participants during the whole genotyping process. Minor allele frequencies of the analyzed C5 variants are provided in Table 3.31,32
Table 3

Allele Frequencies of the Investigated C5 Variants

C5 VariantAlleles (Major/Minor)MAF* [%]Missing Values [%]Hardy-Weinberg p-valueMAF* [%] 1000 Genomes, EUR
rs10985126T/C17.40.20.9116.7
rs12237774C/T1.4011.1
rs25681†G/A47.100.2145.9
rs17611†C/T47.40.80.1545.8
rs17216529C/T7.90.70.657.0
rs41258306T/C6.01.016.1

Note: *Minor allele frequency † rs25681 and rs17611 in LD with r2 = 0.98 in our cohort (n=833) and r2 = 0.996 in 1000 Genomes EUR.

Allele Frequencies of the Investigated C5 Variants Note: *Minor allele frequency † rs25681 and rs17611 in LD with r2 = 0.98 in our cohort (n=833) and r2 = 0.996 in 1000 Genomes EUR.

Enzyme-Linked Immunosorbent Assay (ELISA)

Circulating C5a levels were determined in plasma of 116 consecutive patients via a commercially available ELISA kit (R&D Systems).16 Arterial blood was collected during catheter procedure. Within 30 minutes of collection, ethylenediamine tetraacetic acid plasma (EDTA) probes were centrifuged for 15 minutes and subsequently aliquoted and stored at −80 degrees until analysis.

C5aR Platelet Surface Exposure Analyzed by Whole Blood Flow Cytometry (FACS)

C5aR platelet surface exposure was determined in 473 consecutive CAD patients. Platelets in whole blood were analyzed for C5aR surface exposure gating for the platelet specific marker CD42b. Blood collected in CPDA was diluted 1:50 with PBS (Gibco) and incubated with mouse monoclonal anti-human C5aR-FITC (AbD Serotec) and mouse anti-human CD42b PE (Becton Dickinson) antibodies or their respective isotype controls (R&D systems) for 30 min at room temperature. Thereafter, cells were fixed with 0.5% paraformaldehyde and analyzed by flow cytometry (FACS-Calibur flow cytometer Becton–Dickinson, Heidelberg, Germany).16

Follow-Up

Patients were followed-up over a period of 1080 days after study enrollment for clinical events consisting of all-cause mortality, myocardial infarction (MI), ischemic stroke (IS) and bleeding. Acute MI was defined as follows: detection of a rise and/or fall of cardiac troponin I with at least one of the following criteria: angina pectoris, significant ST-segment and/or T wave changes, new complete left bundle branch block and/or pathological Q waves in the electrocardiogram, loss of viable myocardium and/or new regional wall motion abnormality in cardiac imaging and/or a thrombus in coronary angiography.33 Ischemic stroke was defined as neurological dysfunction due to ischemic brain, spinal cord, or retinal cell death, based on pathological imaging, or other objective evidence of cerebral, spinal cord, or retinal focal ischemic injury in a defined vascular distribution.34 The Bleeding Academic Research Consortium (BARC) bleeding definition was used to detect clinically significant bleeding.35 The primary composite endpoint (CE) included first occurrence of all-cause mortality, MI, and/or IS. Secondary endpoints were defined as all-cause mortality, MI and bleeding. We aimed to follow-up all patients of the SNP cohort (n=833). Out of this cohort, we managed to track 758 patients (91.0%). Follow-up remained incomplete in 75 patients (9.0%). Follow-up was performed by telephone interview (patients and patients’ physicians) and/or review of patients’ files in case of readmission by independent examiners.

Statistical Analysis

All statistical analyses were conducted with SPSS version 25.0 (SPSS Inc., Chicago IL). Normally distributed and categorical values in the baseline characteristics are presented as mean ± standard deviation and percentage of total, respectively. Normally distributed data were compared using Welch’s t-test. Mean fluorescence intensities (MFIs) and circulating C5 values are presented as median and 25th/75th percentiles. We applied Kruskal–Wallis-H-tests with Dunn-Bonferroni correction for comparison of both circulating C5a and C5aR platelet surface expression levels between different genotypes. Incidence rates are given per 100-person years. Chi-squared tests were used to compare event rates between genotype groups. For survival data, Kaplan–Meier estimates and corresponding log rank tests were determined. Multiple Cox regression analysis was performed to analyse independent associations between C5 SNPs and the pre-defined endpoints after adjustment for epidemiological factors that might have influenced patients’ outcome. Bonferroni’s procedure was applied to adjust the obtained p-values for multiple testing, considering the 5 investigated C5 variants. All statistical tests were two-sided, and the significance level was set to 5%.

Results

Baseline characteristics for the overall cohort, stratified according to rs10985126 and rs17216529 allele distribution are shown in Tables 1 and 2. Numbers and incident rates of events stratified according to C5 SNPs are provided in Table 4
Table 4

Events and Incident Rates (IR) per 100-Person Years (PY) Within the Overall Cohort

No. of Events (rs10985126: hc of Major Allele/ Heterozygotes/ hc of Minor Allele)IR/100 PY (rs10985126: hc of Major Allele/ Heterozygotes/ hc of Minor Allele)pBonferroni-Adjusted p
CE189 (132/49/8)8.3 (8.5/7.4/12.7)0.2341
Mortality102 (72/23/7)4.5 (4.7/3.5/11.1)0.0120.060
MI95 (67/26/2)4.2 (4.3/3.9/3.2)0.8261
Bleeding71 (53/16/2)3.1 (3.4/2.4/3.2)0.4381
No. of events (rs17216529: hc of major allele/ heterozygotes/ hc of minor alleleIR/100 PY (rs17216529: hc of major allele/ heterozygotes/ hc of minor allele)pBonferroni-adjusted p
CE189 (166/21/2)8.4 (8.7/6.0/33.3)0.0090.045
Mortality103 (91/11/1)4.6 (4.8/3.2/16.7)0.1220.610
MI94 (82/11/1)4.2 (4.3/3.2/16.7)0.1620.810
Bleeding71 (63/6/2)3.1 (3.3/1.7/33.3)<0.001<0.001
No. of events (rs17611: hc of major allele/ heterozygotes/ hc of minor allele)IR/100 PY (rs17611: hc of major allele/ heterozygotes/ hc of minor allele)pBonferroni-adjusted p
CE189 (50/86/53)8.4 (7.4/8.2/9.9)0.2211
Mortality102 (27/43/32)4.5 (4.0/4.1/6.0)0.1460.730
MI95 (23/47/25)4.2 (3.4/4.5/4.7)0.4331
Bleeding71 (26/24/21)3.2 (3.9/2.3/3.9)0.0800.400
No. of events (rs41258306: hc of major allele/ heterozygotes/ hc of minor allele)IR/100 PY (rs41258306: hc of major allele/ heterozygotes/ hc of minor allele)pBonferroni-adjusted p
CE190 (167/23/0)8.4 (8.4/9.5/0)0.4861
Mortality103 (91/12/0)4.6 (4.6/4.9/0)0.7561
MI95 (82/13/0)4.2 (4.1/5.3/0)0.5101
Bleeding71 (62/9/0)3.2 (3.1/3.7/0)0.7451
No. of events (rs12237774: hc of major allele/ heterozygotes)IR/100 PY (rs12237774: hc of major allele/ heterozygotes)pBonferroni-adjusted p
CE190 (189/1)8.4 (8.5/1.7)0.0360.180
Mortality103 (102/1)4.5 (4.6/1.7)0.2561
MI95 (95/0)4.2 (4.3/0)0.0860.430
Bleeding71 (68/3)3.1 (3.1/5.0)0.3811

Note: Bold indicates the values with statistical significance.

Events and Incident Rates (IR) per 100-Person Years (PY) Within the Overall Cohort Note: Bold indicates the values with statistical significance. We observed significantly worse event-free survival in homozygous carriers (hc) of the minor allele (rs10985126) in comparison to heterozygotes and hc of the major allele in univariate analysis (log rank =0.008 for all-cause mortality, Bonferroni-adjusted p-value =0.040) (Figure 1). Furthermore, univariate analysis revealed significantly worse event-free survival in hc of the minor allele (rs17216529) in comparison to heterozygotes and hc of the major allele (log rank <0.001 for CE, Bonferroni-adjusted p-value <0.001). However, number of homozygous minor allele carriers was too low to conclude clinical implications for this SNP. rs10985126 was independently associated with all-cause mortality (p =0.003, Bonferroni-adjusted p-value =0.015) (Table 5).
Figure 1

Cumulative event-free survival for all-cause mortality stratified according to rs10985126 allele frequency. Red: Hc major allele; Green: Heterozygotes; Blue: HC minor allele.

Table 5

Cox Regression Analysis with All-Cause Mortality as Dependent Variable, C5 Rs10985126 as Well as Epidemiological Factors (Age, Gender, Arterial Hypertension, Hyperlipidemia, Diabetes Mellitus Type 2, Smoking, Left Ventricular Ejection Fraction and Reason of Admission) as Covariates

Hazard Ratio (95% CI)pBonferroni-Adjusted p
Age [years]1.11 (1.08–1.14)<0.001<0.001
Gender1.00 (0.61–1.64)0.9921
Arterial hypertension1.15 (0.59–2.24)0.6851
Hyperlipidemia0.87 (0.56–1.36)0.5441
Diabetes mellitus type 21.62 (1.03–2.53)0.0360.180
Smoking1.29 (0.78–2.13)0.3251
Left ventricular ejection fraction [%]0.96 (0.94–0.98)<0.001<0.001
Reason of admission1.61 (1.04–2.49)0.0310.155
C5 rs109851260.53 (0.35–0.81)0.0030.015

Note: Bold indicates the values with statistical significance.

Cox Regression Analysis with All-Cause Mortality as Dependent Variable, C5 Rs10985126 as Well as Epidemiological Factors (Age, Gender, Arterial Hypertension, Hyperlipidemia, Diabetes Mellitus Type 2, Smoking, Left Ventricular Ejection Fraction and Reason of Admission) as Covariates Note: Bold indicates the values with statistical significance. Cumulative event-free survival for all-cause mortality stratified according to rs10985126 allele frequency. Red: Hc major allele; Green: Heterozygotes; Blue: HC minor allele. When we analyzed associations between rs10985126 and circulating C5a levels, we found that circulating C5a levels were significantly higher in hc of minor allele compared to heterozygotes and hc of major allele (median plasma C5a (pg/mL) 24715; 25th/75thpercentile 18504/NA, n=3 vs 20956; 25th/75th percentile 19834/24185, n=35 vs 19264; 25th/75th percentile 16813/21991, n=78; p=0.016). Post-hoc analysis revealed a significant difference between hc of major allele and heterozygotes (adjusted p=0.026) (Figure 2). There was no statistically significant association between rs10985126 allele frequency and C5aR platelet surface expression levels (median platelet C5aR (MFI) 13.8; 25th/75th percentile 9.6/17.8, n=15 vs 13.4; 25th/75th percentile 11.8/17.0, n=142 vs 13.8; 25th/75th percentile 11.7/17.3, n=316; p=0.753).
Figure 2

C5a plasma levels stratified according to rs10985126 allele frequency.

C5a plasma levels stratified according to rs10985126 allele frequency.

Discussion

The major findings of the present study are (1) C5 rs10985126 is associated with mortality among patients suffering from symptomatic coronary artery disease. (2) Homozygous carriers of minor allele (rs10985126) show increased levels of circulating C5a when compared to major allele carriers. As key elements of the complement cascade, C5a as well as C5aR offer a variety of pro-inflammatory effects. SNPs of the C5 gene might alter C5a and C5aR concentrations in human circulation and consequently affect inflammatory processes. Here, we could demonstrate an association between rs10985126 and all-cause death but failed to show an effect on myocardial infarction. Pre-existing evidence suggests that C5 rs17611 correlates with major adverse cardiovascular events in patients with asymptomatic atherosclerosis of the carotid arteries and that the allele at risk (rs17611) shows increased levels of circulating C5a.18 In the current study, hc of minor allele (rs10985126) display increased levels of circulating C5a and show increased mortality. C5 rs2269067, which is linked to C5 rs10985126 (r2≥0.86), is associated with proliferative diabetic retinopathy and elevated expression of C5a as well as production of IL-6.36 Interestingly, inhibition of IL-6 reduces C5aR expression in patients with NSTEMI correlating with attenuated troponin T release.37 Previously, a large number of SNPs including rs10985126 was used to draft a genetic model to estimate the risk for rheumatoid arthritis.38 Since rheumatoid arthritis is considered to be a risk factor for cardiovascular diseases,39 identifying an association between SNPs of the C5 gene and rheumatoid arthritis would be an interesting attempt to find similarities between different inflammatory diseases and to further the understanding of the underlying pathways. In the univariate survival analysis, rs10985126 was associated with a significantly worse cumulative event-free survival for homozygous carriers of the minor allele when compared to major allele carriers. This effect remained statistically significant after adjustment for multiple testing. When we applied Cox-regression analysis, we could demonstrate independent associations for rs10985126 on all-cause mortality after adjustment for epidemiological factors and multiple testing. In the current study neither rs17611 nor rs12237774 nor rs41258306 were significantly associated with prognosis. rs17216529 was associated with the combined endpoint and bleeding events. However, the number of hc of the minor allele was too low to draw a robust conclusion on these findings. Hoke et al previously showed a significant association of rs17611 with cardiovascular outcome in patients with asymptomatic atherosclerosis.18 Conversely, we could not obtain significant results for rs17611 in patients with symptomatic CAD. These different results may result due to distinct clinical circumstances upon admission: While Hoke et al tracked patients with asymptomatic carotid atherosclerosis for the occurrence of a first major adverse cardiovascular event,18 the patients in our study already suffered from CAD on the day of study enrollment. Furthermore, rs17611 was found to be over-expressed in patients with ischemic stroke compared to healthy controls.40 These observations notwithstanding, there might be well-preserved functional differences between SNPs of the same gene. rs17611 represents a missense mutation according to the NCBI SNP database (), whereas rs10985126 is a synonymous mutation. Synonymous mutations do not alter the protein sequence due to the degeneration of the genetic code, yet these SNPs might also have functional implications, albeit these are hard to predict.41 However, the current results suggest a functional relevance for rs10985126 due to associations with all-cause mortality in patients with symptomatic CAD. Prior observations suggest that C5aR mediates tissue damage after myocardial ischemia.42 Previously, we have demonstrated elevated platelet C5aR and C3aR surface exposure in CAD patients compared to healthy controls.16 Currently, we failed to establish any correlation between C5 rs10985126 with C5aR platelet surface expression levels. C5 rs10985126 was however significantly associated with circulating C5a levels. Higher concentrations of circulating C5a correlate with adverse outcomes in patients suffering from advanced atherosclerosis.15 Furthermore, increased serum levels of C5a and C3a are associated with late re-stenosis of drug eluting stents after percutaneous transluminal coronary angioplasty.43 C5 levels are elevated in patients with generalized subclinical atherosclerosis and considered as a novel biomarker for subclinical atherosclerosis.44 In addition to contributing directly to the emergence and progress of CAD, C5a and C5aR signaling might also influence cardiovascular risk factors, as it has already been described for obesity45 and arterial hypertension.46 Nevertheless, other components of the complement cascade have already been established as prognostic markers since an increased C3/C4-ratio in patients with ACS was an independent risk factor to predict another ACS in the observation period.47 To conclude, C5a and C5aR seem to be involved in the pathophysiology of CAD in a way that might eventually be influenced by SNPs of the C5 gene.

Future Implications

As other SNPs have already been associated to prognosis in patients with cardiovascular disease,48 C5 rs10985126 might also be considered as a possible prognostic marker in these patients. Multi-locus genetic risk scores (GRS) consist of various gene variants associated with cardiovascular disease. This approach might be of use for identifying patients at an increased risk for suffering thromboischemic and/or bleeding events independently from classical cardiovascular risk factors.49,50 Furthermore, development of C5a receptor agonists may serve as a treatment strategy for thromboinflammatory processes fostering CAD. Previously, the antibody eculizumab, which binds to and blocks proteolysis of C5, has been developed and approved for treatment of paroxysmal nocturnal hemoglobinuria by the US Food and Drug Administration.51 Biologicals for chronic inflammatory diseases are expensive, offer low bioavailability and metabolic instability and need for repeated injections. The development of effective small molecule antagonists for C5aR, including peptides and peptidomimetics, as well as non-peptidic small molecules as ligands, represents an attractive alternative. While effects have mainly been studied in rodents, these studies have shown significant immunoregulatory effects of C5aR antagonists in vivo, which may offer major implications for cardiovascular disease.52 Consequently, preclinical pharmacokinetics of C5aR1 antagonists PMX53 and PMX205 targeting cyclic peptide compounds that act in a pseudo-irreversible and insurmountable manner at nanomolar concentrations are currently investigated in mice.53

Strengths and Limitations

The current study offers several strengths including the prospective, consecutive cohort of CAD patients. Furthermore, we analyzed clearly defined, “hard” endpoints. Finally, we present a reasonably long follow-up period with an acceptable number of patients who were lost to follow-up. Major limitations of the current study lie within the observational character and moderate sample size. Furthermore, circulating C5a as well as platelet C5aR levels were determined only at study inclusion and were not available for the complete SNP cohort. Moreover, the current study lacks a validation cohort.
  50 in total

1.  Complement C5a inhibition reduces atherosclerosis in ApoE-/- mice.

Authors:  Helga D Manthey; Anita C Thomas; Ian A Shiels; Alma Zernecke; Trent M Woodruff; Barbara Rolfe; Stephen M Taylor
Journal:  FASEB J       Date:  2011-04-13       Impact factor: 5.191

2.  Coronary late lumen loss of drug eluting stents is associated with increased serum levels of the complement components C3a and C5a.

Authors:  Walter S Speidl; Katharina M Katsaros; Stefan P Kastl; Gerlinde Zorn; Kurt Huber; Gerald Maurer; Johann Wojta; Günter Christ
Journal:  Atherosclerosis       Date:  2009-07-23       Impact factor: 5.162

Review 3.  Role of Complement-Related Inflammation and Vascular Dysfunction in Hypertension.

Authors:  Cheng-Chao Ruan; Ping-Jin Gao
Journal:  Hypertension       Date:  2019-05       Impact factor: 10.190

4.  Prognosis in coronary artery disease. Angiographic, hemodynamic, and clinical factors.

Authors:  G W Burggraf; J O Parker
Journal:  Circulation       Date:  1975-01       Impact factor: 29.690

5.  Single-Nucleotide Polymorphism rs17611 of Complement Component 5 Shows Association with Ischemic Stroke in Northeast Chinese Population.

Authors:  Liang Guo; Liqiang Zheng; Xiaofan Guo; Ye Chang; Xinghu Zhou; Yingxian Sun
Journal:  Genet Test Mol Biomarkers       Date:  2016-10-21

Review 6.  Eculizumab: A novel therapy for paroxysmal nocturnal hemoglobinuria.

Authors:  Karolina M Zareba
Journal:  Drugs Today (Barc)       Date:  2007-08       Impact factor: 2.245

7.  Chemotactic responses of human peripheral blood monocytes to the complement-derived peptides C5a and C5a des Arg.

Authors:  S R Marder; D E Chenoweth; I M Goldstein; H D Perez
Journal:  J Immunol       Date:  1985-05       Impact factor: 5.422

Review 8.  Function, structure and therapeutic potential of complement C5a receptors.

Authors:  P N Monk; A-M Scola; P Madala; D P Fairlie
Journal:  Br J Pharmacol       Date:  2007-07-02       Impact factor: 8.739

9.  Complement factor C5a induces atherosclerotic plaque disruptions.

Authors:  Anouk Wezel; Margreet R de Vries; H Maxime Lagraauw; Amanda C Foks; Johan Kuiper; Paul H A Quax; Ilze Bot
Journal:  J Cell Mol Med       Date:  2014-08-15       Impact factor: 5.310

10.  SDF1 Polymorphisms Influence Outcome in Patients with Symptomatic Cardiovascular Disease.

Authors:  Dominik Rath; Elke Schaeffeler; Stefan Winter; Jens Hewer; Karin Müller; Michal Droppa; Fabian Stimpfle; Meinrad Gawaz; Matthias Schwab; Tobias Geisler
Journal:  PLoS One       Date:  2016-09-08       Impact factor: 3.240

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  1 in total

1.  Nonsynonymous amino acid changes in the α-chain of complement component 5 influence longitudinal susceptibility to Plasmodium falciparum infections and severe malarial anemia in kenyan children.

Authors:  Evans Raballah; Kristen Wilding; Samuel B Anyona; Elly O Munde; Ivy Hurwitz; Clinton O Onyango; Cyrus Ayieko; Christophe G Lambert; Kristan A Schneider; Philip D Seidenberg; Collins Ouma; Benjamin H McMahon; Qiuying Cheng; Douglas J Perkins
Journal:  Front Genet       Date:  2022-09-14       Impact factor: 4.772

  1 in total

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