Literature DB >> 25993271

Determinants of reduced antiplatelet effect of aspirin in patients with stable coronary artery disease.

Sanne Bøjet Larsen1, Erik Lerkevang Grove1, Søs Neergaard-Petersen1, Morten Würtz1, Anne-Mette Hvas2, Steen Dalby Kristensen3.   

Abstract

BACKGROUND: Aspirin is a cornerstone in management of coronary artery disease (CAD). However, considerable variability in the antiplatelet effect of aspirin has been reported. AIM: To investigate independent determinants of reduced antiplatelet effect of aspirin in stable CAD patients.
METHODS: We performed a cross-sectional study including 900 stable, high-risk CAD patients. Among these, 795 (88%) had prior myocardial infarction, 250 (28%) had type 2 diabetes, and 170 (19%) had both. All patients received 75 mg aspirin daily as mono antiplatelet therapy. The antiplatelet effect of aspirin was assessed by measurement of platelet aggregation employing 1) multiple electrode aggregometry (MEA, Multiplate Analyzer) in whole blood anticoagulated with citrate or hirudin using arachidonic acid (AA) or collagen as agonists, and 2) VerifyNow Aspirin Assay. Compliance was assessed by measurement of serum thromboxane B2.
RESULTS: Platelet count, prior myocardial infarction, type 2 diabetes and body mass index were independent determinants of increased AA-induced MEA platelet aggregation in citrate and hirudin anticoagulated blood (p-values ≤ 0.045). Similar results were found with VerifyNow. Prior coronary artery bypass grafting, age, smoking (MEA, AA/citrate) and female gender (MEA, AA/hirudin) were also independent determinants of increased platelet aggregation (p-values ≤ 0.038). Compliance was confirmed by low serum thromboxane B2 levels in all patients (median [25%;75%]: 0.97 [0.52;1.97], range 0.02-26.44 ng/ml).
CONCLUSION: Platelet count, prior myocardial infarction, type 2 diabetes and body mass index were independent determinants of increased platelet aggregation, indicating that these characteristics may be key factors in reduced antiplatelet effect of aspirin in stable CAD patients.

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Year:  2015        PMID: 25993271      PMCID: PMC4436265          DOI: 10.1371/journal.pone.0126767

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Low-dose aspirin is recommended for patients with stable coronary artery disease (CAD) [1]. Regardless of the well-known beneficial antiplatelet effect of aspirin, a substantial proportion of patients with CAD display considerable variability in the effect of aspirin [2]. Two meta-analyses have reported that reduced antiplatelet effect of aspirin entails a nearly four-fold increased risk of adverse cardiovascular events [3,4]. Despite extensive research on variability in the antiplatelet effect of aspirin, several issues contribute to the difficulty and complexity of data interpretation. These issues include inconsistent definitions of “aspirin resistance”, differences in platelet function tests including agonists and anticoagulants used as well as cut-off levels applied to define the prevalence of "low-responders", and small or heterogeneous study populations [2,5]. Finally, in many previous studies, compliance has not been evaluated properly. Most likely, variability in the antiplatelet effect of aspirin is multifactorial and include genetic, biological and clinical factors [2,6]. Previous studies have suggested that some patients are more likely to have reduced antiplatelet effect of aspirin [7]. Thus, we hypothesised that prior myocardial infarction (MI), prior coronary artery bypass grafting, (CABG), prior stroke, type 2 diabetes mellitus, age, female gender, obesity, current smoking, renal insufficiency and platelet count were potential modifiers of the antiplatelet effect of aspirin. The aim of the study was to investigate independent determinants of reduced antiplatelet effect of aspirin in a large cohort of stable CAD patients using two platelet aggregation tests, two agonists and two anticoagulants.

Materials and Methods

Study population and design

The study was a cross-sectional study including 900 patients with stable CAD. Data for the present study is based on data from four previous studies by our group [8-11]. From November 2007 to January 2011, patients were recruited from the Western Denmark Heart Registry, which collects data on all interventional procedures performed in the Western part of Denmark [12]. The study cohort represents a high-risk CAD population since all patients had angiographically documented CAD and either prior MI, type 2 diabetes mellitus or both. Patients with recent cardiovascular events were excluded in order to avoid dual antiplatelet therapy. Concordance with inclusion and exclusion criteria was checked using telephone interviews, medical records and blood samples. The inclusion criteria were: a) age ≥ 18 years, b) daily treatment with aspirin, c) significant CAD verified by prior percutaneous coronary intervention (PCI), CABG, or by a coronary angiography showing at least one 50% coronary luminal narrowing, d) patients with prior MI at least 12 months ago verified by electrocardiographic ST-segment elevation and/or elevated plasma troponin T (> 0.10 μg/l) and/or plasma creatine kinase-MB (> 12 U/l). The exclusion criteria were: a) ongoing medical treatment known to affect platelet function or coagulation (e.g. non-steroidal anti-inflammatory drugs, any anticoagulants or antiplatelet drugs except aspirin), b) any ischaemic vascular event, PCI, or CABG within the previous 12 months, c) platelet count < 120 x 109/l or > 450 x 109/l, d) inability to give informed consent. All diabetic patients were diagnosed with type 2 diabetes and treated with oral antidiabetic drugs and/or insulin. All non-diabetic patients had fasting plasma glucose levels < 7.0 mmol/l at the time of inclusion. The study was conducted in agreement with the Helsinki-II-declaration and approved by The Central Denmark Region Committees on Health Research (project # 2007–0180, 2008–0188, 2008–0189, M-2009-0110) and by the Danish Data Protection Agency. All patients gave written informed consent.

Compliance

To optimise compliance and uniform pharmacokinetics, all patients received a pill box with seven tablets of 75 mg non-enteric coated aspirin (Hjerdyl, Sandoz, Denmark). This ensured that all patients included in the study received the exact same aspirin dose and preparation prior to and at the time of blood sampling. On the day of blood sampling, patients were instructed to ingest aspirin exactly one hour before blood sampling. Compliance with aspirin was optimised by confirmation of empty pill boxes and questioning about aspirin intake. Finally, measurement of serum thromboxane B2 (TXB2) was performed in all patients.

Laboratory investigations

Blood sampling

Standardised blood sampling was performed one hour after aspirin ingestion. Blood samples were obtained from the antecubital vein with patients in supine position after 30 minutes of rest using vacuum tubes, a large bore needle (19 G), and a minimum of stasis.

Haematology

Blood samples for haematological analyses were collected in 3.0 ml tubes containing EDTA (Terumo, Leuven, Belgium) and analysed within 90 minutes of sampling. Haematology parameters were measured employing a Sysmex XE-2100 haematology analyser (Sysmex, Kobe, Japan).

Platelet aggregation tests

Platelet aggregation was evaluated with two different instruments using whole blood: multiple electrode aggregometry (MEA, Multiplate Analyzer, Roche Diagnostics International LDT, Rotkreuz, Switzerland) and VerifyNow Aspirin Assay (Accumetrics Inc., San Diego, CA, USA). For MEA, 3.6 ml tubes containing 3.2% sodium citrate (Terumo, Leuven, Belgium) or 3.0 ml tubes containing hirudin at a final concentration of 25 μg/ml (Terumo, Leuven, Belgium) were utilised. MEA platelet aggregation was induced using arachidonic acid (AA) 1.0 mM (ASPI test, Triolab AS, Brøndby, Denmark) or collagen 1.0 μg/ml (Horm, Medinor, Nycomed, Austria). Blood samples rested for at least 30 minutes before analysis but no longer than 120 minutes. Aggregation was reported as the area under the curve (aggregation units [AU]*min). In case of a deviation > 20% between the two impedance curves, the sample was re-analysed. The reproducibility of these platelet aggregation tests has previously been reported by our group [13]. For VerifyNow analyses, blood was collected in 2.7 ml tubes containing 3.2% sodium citrate (Terumo, Leuven, Belgium). The VerifyNow system uses disposable cartridges with four mixing chambers containing fibrinogen-coated beads and AA as agonist. Blood samples rested for at least 30 minutes before analysis but no longer than 120 minutes. Platelet aggregation was reported as Aspirin Reaction Units (ARU).

Serum thromboxane B2.

Since aspirin specifically blocks the cyclooxygenase-1 enzyme mediating the conversion of AA to thromboxane, measurement of this metabolite is considered the most pharmacologically specific analysis of platelet inhibition with aspirin [14]. We measured serum TXB2 using enzyme-linked immunosorbent assay (ELISA) according to the manufacturer’s instructions (Thromboxane B2 EIA Kit, Cayman Chemical, MI, USA). Blood was collected in non-siliconised tubes without anticoagulant and allowed to clot for one hour at 37°C. Subsequently, samples were centrifuged for 10 minutes at 2600 g, and serum was removed and stored at -80°C until analysis.

Statistics

Continuous data are presented as mean and standard deviation (SD) if normally distributed and if not, as median and interquartile range. Differences between two unpaired groups were tested with a two-sided t-test if data were normally distributed and if not, the Mann-Whitney test was used. Differences between two paired groups were tested using a paired t-test if data were normally distributed and if not, the Wilcoxon signed rank test was used. Proportions between two groups were tested using Fisher’s exact test and presented as absolute counts and percentages. Correlations were calculated using Spearman’s rank coefficient. Multiple linear regression analyses were used to identify independent determinants of platelet aggregation. In the regression analyses, observations were removed if they were missing on the outcome variable or on any of the predictor variables. A two-sided p-value < 0.05 was considered statistically significant. To avoid typing errors, data were registered in Epidata version 3.1 (EpiData Association, Denmark). Statistical analyses were performed using Stataversion 11.0 (StataCorp, College Station, TX, USA) and graphs were made using GraphPad Prism version 5.0 (GraphPad Software, San Diego, CA, USA).

Results

Study population

Clinical and biochemical characteristics of the study population are shown in Table 1. We studied a population of stable CAD patients with a relatively high-risk profile, since 795 (88%) of the patients had a history of MI, 250 (28%) had type 2 diabetes and 170 (19%) had both. Compliance was confirmed by low serum TXB2 levels in all patients (median [25%;75%]: 0.97 [0.52;1.97], range 0.02–26.44 ng/ml) corresponding to ≥95% inhibition of platelet cyclooxygenase-1 activity [15].
Table 1

Baseline characteristics of the study population, n = 900.

Age, years65±4
Body mass index, kg/m2 27±8
Males704(78)
Current smokers199(22)
Blood pressure, systolic, mm Hg142±20
Blood pressure, diastolic, mm Hg83±12
Biochemistry
    B-Leukocyte count, 109/l a 7.1±1.9
    B-Haemoglobin, mmol/l8.8±0.8
    B-Red blood cell count, 1012/l b 4.7±0.4
    B-Platelet count, 109/l233±58
    P-Creatinine, μmol/l82(71;96)
    B-estimated glomerular filtration rate, ml/min78(65;90)
Morbidity
    Prior percutaneus coronary intervention849(94)
    Prior myocardial infarction795(88)
    Prior coronary artery bypass grafting122(14)
    Prior stroke53(6)
    Type 2 diabetes mellitus250(28)
Medication
    Aspirin900(100)
    Statins813(90)
    Beta-blockers682(76)
    ACE inhibitors424(47)
    Angiotensin receptor blockers139(15)
    Calcium antagonists194(22)
    Diuretics272(30)
    Proton pump inhibitors105(12)
    Insulin c 76(30)
    Oral antidiabetic medication c 205(82)

Data is presented as mean±SD, n(%) or median (25th;75th percentile)

a Leucocyte count only available for 714 patients

b Red blood cell count only available for 751 patients

c out of 250 patients with type 2 diabetes

B: blood, S: serum, P: plasma, ACE: Angiotensin converting enzyme

Data is presented as mean±SD, n(%) or median (25th;75th percentile) a Leucocyte count only available for 714 patients b Red blood cell count only available for 751 patients c out of 250 patients with type 2 diabetes B: blood, S: serum, P: plasma, ACE: Angiotensin converting enzyme

Platelet aggregation

MEA platelet aggregation levels were (median AU*min [25%;75%]) 165 (100;238) for AA/citrate, 324 (187;468) for AA/hirudin, 266 (170;397) for collagen/citrate and 594 (382;794) for collagen/hirudin (Fig 1). VerifyNow platelet aggregation levels were 426 (409;452) ARU. Age ≥ 65 years, female sex, body mass index ≥ 30 kg/m2, type 2 diabetes and platelet count ≥ 226 x 109/L were significantly associated with elevated platelet aggregation levels (Table 2).
Fig 1

MEA platelet aggregation levels with arachidonic acid (AA) or collagen as agonist and citrate or hirudin as anticoagulant.

Data is presented with median and interquartile range. Out of 900 patients, AA/citrate MEA platelet aggregation results were available for 892 patients, AA/hirudin results were available for 751 patients, collagen/citrate results were available for 895 patients and collagen/hirudin results were available for 752 patients.

Table 2

Platelet aggregation levels according to gender, age, body mass index, type 2 diabetes and platelet count, n = 900.

MultiplateMultiplate
AA, citrateAA, hirudin
  n (%) p-value   p-value
Gender   
    Females 196 (22)191 (125;285)325 (168;506) 
    Males 704 (78)157 (97;227)p = 0.0008324 (190;452)p = 0.82
Age   
        < 65years 409 (45)154 (90;233)329 (190;472) 
        ≥ 65 years 491 (55)169 (108;243)p = 0.01309 (185;464)p = 0.33
Body mass index   
        < 30 kg/m2 658 (73)158 (98;230)309 (171;448) 
        ≥ 30 kg/m2 242 (27)172 (114;269)p = 0.02359 (225;509)p = 0.0004
Type 2 diabetes   
    No 650 (72)156 (97;224)307 (173;438) 
    Yes 250 (28)188 (112;282)p = 0.0001385 (232;519)p < 0.0001
Platelet count *   
        < 226 x 10 9 /L 445 (49)134 (85;201)256 (162;389) 
        ≥ 226 x 10 9 /L 455 (51)192 (122;287)p < 0.0001382 (234;512)p < 0.0001 
  Multiplate Multiplate VerifyNow
  collagen, citrate collagen, hirudin AA
  n (%) p-value   p-value   p-value
Gender    
    Females 196 (22)314 (209;455)650 (419;823)424 (409;450) 
    Males 704 (78)255 (167;369)p = 0.0002583 (279;774)p = 0.42426 (409;454)p = 0.48
Age    
        < 65years 409 (45)260 (155;396)612 (420;789)426 (408;453) 
        ≥ 65 years 491 (55)271 (183;400)p = 0.03580 (355;799)p = 0.63425 (409;452)p = 0.81
Body mass index    
        < 30 kg/m2 658 (73)264 (170;383)583 (376;789)423 (408;449) 
        ≥ 30 kg/m2 242 (27)290 (173;428)p = 0.24630 (435;805)p = 0.59432 (412;464)p = 0.0007
Type 2 diabetes    
    No 650 (72)262 (171;372)570 (365;772)423 (408;447) 
    Yes 250 (28)282 (170;438)p = 0.01662 (476;834)p = 0.0006437 (414;472)p < 0.0001
Platelet count *    
        < 226 x 10 9 /L 445 (49)228 (143;315)516 (334;703)423 (408;447) 
        ≥ 226 x 10 9 /L 455 (51)329 (214;457)p < 0.0001685 (460;845)p < 0.0001429 (410;461)p = 0.0006

Data is presented as median (25th;75th percentile).

*226 x 109/L was the median; accoring to the exclusion criteria, patients with platelet count < 120 x 109/L or > 450 x 109/L were excluded.

MEA platelet aggregation levels with arachidonic acid (AA) or collagen as agonist and citrate or hirudin as anticoagulant.

Data is presented with median and interquartile range. Out of 900 patients, AA/citrate MEA platelet aggregation results were available for 892 patients, AA/hirudin results were available for 751 patients, collagen/citrate results were available for 895 patients and collagen/hirudin results were available for 752 patients. Data is presented as median (25th;75th percentile). *226 x 109/L was the median; accoring to the exclusion criteria, patients with platelet count < 120 x 109/L or > 450 x 109/L were excluded. Platelet aggregation levels were significantly higher in blood anticoagulated with hirudin than with citrate (Fig 1). MEA platelet aggregation induced by AA (Fig 2) or collagen (Fig 3) correlated significantly whether using citrate or hirudin as anticoagulant. Similarly, there was a significant correlation between MEA and VerifyNow platelet aggregation (Figs 4 and 5).
Fig 2

Correlation between multiple electrode aggregometry (MEA) with arachidonic acid (AA) as agonist and citrate or hirudin as anticoagulant.

Fig 3

Correlation between multiple electrode aggregometry (MEA) with collagen as agonist and citrate or hirudin as anticoagulant.

Fig 4

Correlation between VerifyNow and multiple electrode aggregometry (MEA) using arachidonic acid (AA) as agonist and citrate as anticoagulant.

Fig 5

Correlation between VerifyNow and multiple electrode aggregometry (MEA) using arachidonic acid (AA) as agonist and hirudin as anticoagulant.

Determinants of reduced antiplatelet effect of aspirin

In order to identify independent determinants of reduced antiplatelet effect of aspirin, we performed multivariate linear regression analyses with platelet aggregation as dependent variables and prior MI, prior CABG, prior stroke, type 2 diabetes, age, female gender, body mass index, current smoking, renal insufficiency (estimated glomerular filtration rate [eGFR]) and platelet count as independent variables (Table 3).
Table 3

Independent determinants of platelet aggregation in stable CAD patients, n = 900.

Multiplate Multiplate
AA, citrate AA, hirudin
Beta (95% CI)p-valueBeta (95% CI)p-value
Prior MI 1.16 (1.00:1.35)0.0451.21 (1.01;1.44)0.038
Prior CABG 1.17 (1.03;1.33)0.0141.08 (0.93;1.26)0.326
Prior stroke 1.07 (0.89,1.28)0.4870.96 (0.77;1.19)0.687
Type 2 diabetes 1.16 (1.03;1.29)0.0101.28 (1.12;1.46)<0.0001
Age, years 1.01 (1.00;1.01)0.0041.00 (0.99;1.00)0.262
Female sex 1.06 (0.95;1.18)0.3250.88 (0.78;0.99)0.035
Current smoking 1.13 (1.01;1.25)0.0261.09 (0.97;1.22)0.168
Body mass index, kg/m 2 1.02 (1.01;1.03)0.0041.01 (1.00;1.03)0.016
eGFR, mL/min 1.00 (1.00;1.00)0.3141.00 (0.99;1.00)0.245
Platelet count, 10 9 /L 1.00 (1.00;1.00)<0.00011.00 (1.00;1.00)<0.0001  
Multiplate Multiplate VerifyNow
collagen, citrate collagen, hirudin AA
Beta (95% CI)p-valueBeta (95% CI)p-valueBeta (95% CI)p-value
Prior MI 1.06 (0.93;1.21)0.39672.01 (3.69;140.32)0.0390.99 (0.97;1.01)0.375
Prior CABG 0.97 (0.87;1.09)0.648-34.78 (-94:19;24.61)0.2511.00 (0.98;1.91)0.891
Prior stroke 1.06 (0.90;1.25)0.505-27.74 (-111.69;56.22)0.5171.01 (0.98;1.03)0.557
Type 2 diabetes 1.08 (0.98;1.20)0.11385.34 (34.86;135.81)0.00011.02 (1.01;1.03)0.004
Age, years 1.01 (1.00;1.01)<0.0001-0.15 (-2.37;2.08)0.8971.00 (1.00;1.00)0.181
Female sex 1.07 (0.97;1.18)0.189-6.16 (-51.31;40.98)0.8260.99 (0.97;1.00)0.070
Current smoking 0.96 (0.88;1.06)0.4314.76 (-40.63;50.16)0.8371.01 (0.99;1.02)0.246
Body mass index, kg/m 2 1.00 (0.99;1.01)0.4260.97 (-3.59;5.53)0.6771.00 (1.00;1.00)<0.0001
eGFR, mL/min 1.00 (1.00;1.01)0.0260.64 (-0.59;1.88)0.3051.00 (1.00;1.00)0.267
Platelet count, 10 9 /L 1.00 (1.00;1.00)<0.00011.16 (0.82;1.49)<0.00011.00 (1.00;1.00)<0.0001

AA: arachidonic acid, CI: confidence interval, MI: myocardial infarction, CABG: coronary artery bypass grafting, eGFR: estimated glomerular filtration rate

AA: arachidonic acid, CI: confidence interval, MI: myocardial infarction, CABG: coronary artery bypass grafting, eGFR: estimated glomerular filtration rate High platelet count was an independent determinant of increased platelet aggregation assessed by both platelet aggregation tests, both agonists and both anticoagulants (all p-values < 0.0001) (Table 3). Additionally, prior MI, type 2 diabetes and high body mass index independently predicted increased AA-induced MEA platelet aggregation whether using citrate or hirudin as anticoagulant (p-values ≤ 0.045). Type 2 diabetes and body mass index were also determinants of VerifyNow platelet aggregation (p ≤ 0.004). Furthermore, prior coronary artery bypass grafting, age and smoking independently predicted AA/citrate MEA platelet aggregation (p-values ≤ 0.026) and female gender independently predicted AA/hirudin MEA platelet aggregation (p = 0.035). Age and eGFR predicted collagen/citrate MEA platelet aggregation (p-values ≤ 0.026), whereas prior MI and type 2 diabetes predicted collagen/hirudin MEA platelet aggregation (p-values ≤ 0.039). AA-induced MEA platelet aggregation levels were increased by 16–21% in patients with prior MI compared with patients without prior MI (p-values ≤ 0.045) and by 16–28% in patients with type 2 diabetes compared with patients without diabetes (p-values ≤ 0.010) whether using citrate or hirudin as anticoagulant. When patients with prior MI and type 2 diabetes were pooled in one group and compared with patients without prior MI and type 2 diabetes, no additional increase in AA-induced MEA aggregation was observed (data not shown, 18–23%, p-values ≤ 0.004).

Discussion

This is the largest study so far to investigate independent determinants of reduced antiplatelet effect of aspirin in stable, high-risk CAD patients receiving aspirin as mono antiplatelet therapy. We found that platelet count, prior MI, type 2 diabetes and body mass index were independent determinants of a reduced antiplatelet effect of aspirin. In the present study, high platelet count was an independent determinant of increased platelet aggregation with MEA as well as with VerifyNow. These results concur with previous findings from our group suggesting that MEA whole blood aggregometry is dependent on platelet count in stable CAD patients [16]. Extending these results, the present study showed that platelet aggregation evaluated by VerifyNow is also dependent on platelet count, even within the normal range of platelet count. In studies performing platelet aggregation analyses using light transmission aggregometry [17] or the Platelet Function Analyzer-100 [18], an association between platelet count and platelet aggregation in stable CAD patients has also been reported. Prior MI was an independent determinant of MEA platelet aggregation, which is consistent with previous findings in smaller studies [8,19]. Compared with healthy individuals, CAD patients have circulating activated platelets, circulating monocyte-platelet aggregates and increased platelet reactivity, which may indicate a pro-thrombotic profile [20]. In CAD patients with prior MI, reduced antiplatelet effect of aspirin may be associated with more severe atherosclerosis [21]. Another hypothesis attributes to increased platelet turnover, which has attracted increasing attention as a mechanism explaining reduced antiplatelet drug efficacy in CAD patients [22,23]. One may hypothesise that patients with prior MI have increased platelet turnover, which could at least partly explain our results. Supporting this hypothesis, Hamsten et al. demonstrated shortened megakaryocyte-platelet regeneration in patients with prior MI [24]. Patients with type 2 diabetes are known to carry an increased risk of cardiovascular events, most likely explained by clustering of risk factors such as hypertension, dyslipidemia, overweight, impaired fibrinolysis, insulin resistance, hyperglycaemia as well as endothelial and platelet dysfunction [25]. Several of these factors profoundly influence platelet activation and aggregation, thereby inducing platelet hyper-reactivity and a pro-coagulant environment in diabetics [26]. In the present study, type 2 diabetes was an independent determinant of increased platelet aggregation evaluated by both MEA and VerifyNow. These findings extend results from previous smaller studies evaluating the effect of aspirin in patients with diabetes [25,27,28]. We found that high body mass index was an independent determinant of increased AA-induced platelet aggregation using MEA and VerifyNow, which is consistent with results found in healthy individuals [29] as well as in smaller studies including CAD patients [19,30]. Obesity affects pharmacokinetics on the basis of changes in distribution volume, regional blood flow and renal and hepatic clearance mechanisms [21]. Growing evidence suggests that obesity, independent of its associated comorbid conditions, may be associated with reduced antiplatelet drug efficacy [31,32]. A faster bioinactivation of aspirin related to modifications of pharmacokinetic mechanisms associated with obesity may partially explain this finding [33]. Also leptin, a hormone that is elevated in obesity, has been suggested to reduce aspirin efficacy through prothrombotic effects [34]. Age, female gender, current smoking, prior CABG and eGFR were also independent determinants of platelet aggregation, however, these results were not consistent across assays, agonists and anticoagulants. In our study, increasing age predicted augmented platelet aggregation independent of traditional risk factors such as gender, prior MI, diabetes, smoking and body mass index. Thus, our results extend previous findings in CAD patients receiving single [35] or dual antiplatelet therapy [36]. Gender was an independent predictor of AA-induced MEA platelet aggregation with an increased antiplatelet effect of aspirin in women. This finding extends previous studies showing that low-dose aspirin produces greater platelet inhibition in healthy women than in healthy men when evaluated with AA as agonist. Yet, when evaluating platelet aggregation induced by collagen, women had lower antiplatelet effect of aspirin than men (data not shown), which is in accordance with previous studies [37,38]. Thus, reduced antiplatelet effect of aspirin in women may be mediated through COX-1-independent pathways. Smoking independently predicted increased AA-induced MEA platelet aggregation, mirroring previous results based on smaller and more heterogeneous study populations employing different platelet function tests [39,40].

Anticoagulants

Measurement of platelet aggregation is dependent on a number of factors including the assay employed, cut-off limits, agonists, storage time, temperature and anticoagulants [41]. Thus, the heterogeneity of these factors in previous studies may partially explain the differing variability in the antiplatelet effect of aspirin. In our study, all pre-analytical procedures and platelet aggregation analyses were strictly standardised. We found consistently higher MEA platelet aggregation levels in hirudinised blood than in citrated blood, which is in line with previous studies [42,43]. Our results most likely reflect the importance of extracellular calcium for platelet aggregation. Importantly, the lower platelet aggregation levels in citrated samples could lead to overestimation of antiplatelet drug efficacy, which should be kept in mind when interpreting platelet aggregation results. The direct thrombin inhibitor hirudin maintains physiological levels of divalent cations and therefore, analysing platelet aggregation with hirudin may be preferred [44].

Strengths and limitations

The overall strength of this study is the inclusion of a large study population with stable CAD. Although we studied high-risk CAD patients, our study population is similar to a large fraction of everyday CAD patients. Thus, the study results have high external validity. Pre-analytical procedures, aspirin dosing and the interval from aspirin intake to platelet aggregation analysis were strictly standardised. Furthermore, compliance with aspirin was confirmed in all patients by measurement of serum TXB2. In this observational study, we were not able to establish causality between patient characteristics and platelet aggregation. Further limitations include that no off-treatment baseline measurements were performed because discontinuation of aspirin therapy for study purposes was considered unethical in this high-risk CAD population.

Conclusion

In the present study, platelet count, prior MI, type 2 diabetes and body mass index were independent determinants of increased platelet aggregation during low-dose aspirin treatment as evaluated with both MEA and VerifyNow. Prior CABG, age, female gender, current smoking and eGFR also predicted platelet aggregation levels, however, these results were not consistent across assays, agonists and anticoagulants. Our results indicate that a number of clinical characteristics are associated with reduced antiplatelet effect of aspirin in stable CAD patients.
  44 in total

Review 1.  Antiplatelet therapy in patients with diabetes mellitus.

Authors:  Erik L Grove; Soren Gregersen
Journal:  Curr Vasc Pharmacol       Date:  2012-07       Impact factor: 2.719

2.  Influence of renal function and platelet turnover on the antiplatelet effect of aspirin.

Authors:  Morten Würtz; Lise N Wulff; Erik L Grove; Steen D Kristensen; Anne-Mette Hvas
Journal:  Thromb Res       Date:  2011-08-11       Impact factor: 3.944

3.  Effect of different anticoagulants on multiple electrode platelet aggregometry after clopidogrel and aspirin administration in patients undergoing coronary stent implantation: a comparison between citrate and hirudin.

Authors:  Hong-Zhe Zhang; Long Hao Yu; Moo Hyun Kim
Journal:  Platelets       Date:  2012-07-09       Impact factor: 3.862

4.  Increased platelet aggregation and serum thromboxane levels in aspirin-treated patients with prior myocardial infarction.

Authors:  Sanne Bøjet Larsen; Søs Neergaard-Petersen; Erik Lerkevang Grove; Steen Dalby Kristensen; Anne-Mette Hvas
Journal:  Thromb Haemost       Date:  2012-04-26       Impact factor: 5.249

5.  Effect of platelet turnover on whole blood platelet aggregation in patients with coronary artery disease.

Authors:  E L Grove; A M Hvas; S B Mortensen; S B Larsen; S D Kristensen
Journal:  J Thromb Haemost       Date:  2011-01       Impact factor: 5.824

6.  Relation of body mass index to high on-treatment platelet reactivity and of failed clopidogrel dose adjustment according to platelet reactivity monitoring in patients undergoing percutaneous coronary intervention.

Authors:  Nathalie Bonello-Palot; Sébastien Armero; Franck Paganelli; Julien Mancini; Axel De Labriolle; Caroline Bonello; Nicolas Lévy; Luc Maillard; Paul Barragan; Françoise Dignat-George; Laurence Camoin-Jau; Laurent Bonello
Journal:  Am J Cardiol       Date:  2009-12-01       Impact factor: 2.778

7.  Reduced antiplatelet effect of aspirin is associated with low-grade inflammation in patients with coronary artery disease.

Authors:  S B Larsen; E L Grove; S D Kristensen; A-M Hvas
Journal:  Thromb Haemost       Date:  2013-02-14       Impact factor: 5.249

8.  Platelet inhibition by aspirin 81 and 325 mg/day in men versus women without clinically apparent cardiovascular disease.

Authors:  Rehan Qayyum; Diane M Becker; Lisa R Yanek; Taryn F Moy; Lewis C Becker; Nauder Faraday; Dhananjay Vaidya
Journal:  Am J Cardiol       Date:  2008-03-17       Impact factor: 2.778

Review 9.  Effect of obesity on the pharmacokinetics of drugs in humans.

Authors:  Michael J Hanley; Darrell R Abernethy; David J Greenblatt
Journal:  Clin Pharmacokinet       Date:  2010       Impact factor: 6.447

10.  Aspirin in the primary and secondary prevention of vascular disease: collaborative meta-analysis of individual participant data from randomised trials.

Authors:  Colin Baigent; Lisa Blackwell; Rory Collins; Jonathan Emberson; Jon Godwin; Richard Peto; Julie Buring; Charles Hennekens; Patricia Kearney; Tom Meade; Carlo Patrono; Maria Carla Roncaglioni; Alberto Zanchetti
Journal:  Lancet       Date:  2009-05-30       Impact factor: 79.321

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  12 in total

Review 1.  Obesity and Altered Aspirin Pharmacology.

Authors:  Nicholas B Norgard
Journal:  Clin Pharmacokinet       Date:  2018-06       Impact factor: 6.447

2.  Genetic Variation in PEAR1, Cardiovascular Outcomes and Effects of Aspirin in a Healthy Elderly Population.

Authors:  Joshua P Lewis; Moeen Riaz; Sophia Xie; Galina Polekhina; Rory Wolfe; Mark Nelson; Andrew M Tonkin; Christopher M Reid; Anne M Murray; John J McNeil; Alan R Shuldiner; Paul Lacaze
Journal:  Clin Pharmacol Ther       Date:  2020-07-20       Impact factor: 6.875

3.  Increased bodyweight and inadequate response to aspirin in individuals with coronary artery disease.

Authors:  Remo H M Furtado; Robert P Giugliano; Talia F Dalcoquio; Flavia B B Arantes; Carlos J D G Barbosa; Paulo R R Genestreti; André Franci; Fernando R Menezes; Carlos A K Nakashima; Marco A Scanavini Filho; Aline G Ferrari; Rocio Salsoso; Luciano M Baracioli; Jose C Nicolau
Journal:  J Thromb Thrombolysis       Date:  2019-08       Impact factor: 2.300

Review 4.  Oral drug dosing following bariatric surgery: General concepts and specific dosing advice.

Authors:  Jurjen S Kingma; Desirée M T Burgers; Valerie M Monpellier; Marinus J Wiezer; Heleen J Blussé van Oud-Alblas; Janelle D Vaughns; Catherine M T Sherwin; Catherijne A J Knibbe
Journal:  Br J Clin Pharmacol       Date:  2021-06-03       Impact factor: 3.716

5.  Coronary artery disease-associated genetic variants and biomarkers of inflammation.

Authors:  Morten Krogh Christiansen; Sanne Bøjet Larsen; Mette Nyegaard; Søs Neergaard-Petersen; Ramzi Ajjan; Morten Würtz; Erik Lerkevang Grove; Anne-Mette Hvas; Henrik Kjærulf Jensen; Steen Dalby Kristensen
Journal:  PLoS One       Date:  2017-07-07       Impact factor: 3.240

6.  Reduced Antiplatelet Effect of Aspirin Does Not Predict Cardiovascular Events in Patients With Stable Coronary Artery Disease.

Authors:  Sanne Bøjet Larsen; Erik Lerkevang Grove; Søs Neergaard-Petersen; Morten Würtz; Anne-Mette Hvas; Steen Dalby Kristensen
Journal:  J Am Heart Assoc       Date:  2017-08-05       Impact factor: 5.501

Review 7.  Effects of Aspirin on Endothelial Function and Hypertension.

Authors:  Mikhail S Dzeshka; Alena Shantsila; Gregory Y H Lip
Journal:  Curr Hypertens Rep       Date:  2016-11       Impact factor: 5.369

8.  Aspirin & clopidogrel non-responsiveness & its association with genetic polymorphisms in patients with myocardial infarction.

Authors:  Chandra Prakash Pandey; Ankita Misra; Mahendra Pal Singh Negi; Babu Nageswararao Kanuri; Yashpal Singh Chhonker; Rabi Shanker Bhatta; Varun Shanker Narain; Madhu Dikshit
Journal:  Indian J Med Res       Date:  2019-07       Impact factor: 2.375

9.  Aspirin has potential benefits for primary prevention of cardiovascular outcomes in diabetes: updated literature-based and individual participant data meta-analyses of randomized controlled trials.

Authors:  Samuel Seidu; Setor K Kunutsor; Howard D Sesso; J M Gaziano; J E Buring; Maria Carla Roncaglioni; Kamlesh Khunti
Journal:  Cardiovasc Diabetol       Date:  2019-06-03       Impact factor: 9.951

10.  Aspirin for primary prevention of cardiovascular disease: a meta-analysis with a particular focus on subgroups.

Authors:  Georg Gelbenegger; Marek Postula; Ladislav Pecen; Sigrun Halvorsen; Maciej Lesiak; Christian Schoergenhofer; Bernd Jilma; Christian Hengstenberg; Jolanta M Siller-Matula
Journal:  BMC Med       Date:  2019-11-04       Impact factor: 8.775

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