Научная статья на тему 'Relationship between Duke treadmill score and platelet volume indices in predicting coronary artery disease'

Relationship between Duke treadmill score and platelet volume indices in predicting coronary artery disease Текст научной статьи по специальности «Клиническая медицина»

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Russian Open Medical Journal
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CORONARY ARTERY DISEASE / MEAN PLATELET VOLUME / PLATELETS

Аннотация научной статьи по клинической медицине, автор научной работы — Kutlu Rasim, Memetoğlu Mehmet Erdem, Murataliev Tolkun Muratalievic, Saçkan Kadir Gökhan, Yaşar Hasan

Purpose Platelet volume indices are associated with poor cardiovascular outcomes. The Duke Treadmill Score (DTS) is a composite index that is based on the results from the exercise test. The purpose of this study was to investigate the relationship between the DTS and platelet volume indices in patients with suspected coronary artery disease (CAD). Methods A total of 1205 participants were enrolled in the study. Complete blood counts were obtained. All participants underwent an exercise test. The DTS were calculated after exercise. Demographic, clinical and echocardiographic characteristics of the patients were recorded. Results Platelet distribution width (PDW) and especially mean platelet volume (MPV) values increase with higher DTS risk group irrespective of CAD and risk groups which is also found to be statistically significant (P<0.001). The power of the relation was powerful (r=0.911). A powerful positive relation was found between risk level and PDW (P<0.001, r=0.319). Paralleled with DTS, MPV and PDW values of the patients with CAD, hypertension, diabetes mellitus, smoking and hyperlipidemia were higher compared to those without, while MPV and PDW values were lower for the patients taking beta-blockers, angiotensin-converting-enzyme inhibitors or angiotensin receptor blockers, diuretics, aspirin and statins. When MPV (f1) and PDW (%) values were compared between groups, there was a high statistical significance between most groups. Conclusion We found an independent association between MPV, PDW and DTS.

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Текст научной работы на тему «Relationship between Duke treadmill score and platelet volume indices in predicting coronary artery disease»

ISSN 2304-3415, Russian Open Medical Journal

2015. Volume 4. Issue 4. Article CID e0402 DOI: 10.15275/rusomj.2015.0402_

Original article

Relationship between Duke Treadmill Score and platelet volume indices in predicting coronary artery

disease

Rasim Kutlu 1, Mehmet Erdem Memetoglu 2, Tolkun Muratalievic Murataliev 3, Kadir Gokhan Sagkan 2,

Hasan Ya§ar 2

1 Denizli State Hospital, Denizli, Turkey 2 Dr.Siyami Ersek Cardiovascular and Thoracic Surgery Hospital, istanbul, Turkey 3 National Cardiology and Internal Medicine Institude, Bishkek, Kyrgyzstan

Received 11 June 2015, Revised 1 July 2015, Accepted 1 August 2015

© 2015, Kutlu R., Memetoglu M.E., Murataliev T.M., Sagkan K.G., Ya$ar H. © 2015, Russian Open Medical Journal

Abstract: Purpose — Platelet volume indices are associated with poor cardiovascular outcomes. The Duke Treadmill Score (DTS) is a composite index that is based on the results from the exercise test. The purpose of this study was to investigate the relationship between the DTS and platelet volume indices in patients with suspected coronary artery disease (CAD).

Methods — A total of 1205 participants were enrolled in the study. Complete blood counts were obtained. All participants underwent an exercise test. The DTS were calculated after exercise. Demographic, clinical and echocardiographic characteristics of the patients were recorded.

Results — Platelet distribution width (PDW) and especially mean platelet volume (MPV) values increase with higher DTS risk group irrespective of CAD and risk groups which is also found to be statistically significant (P<0.001). The power of the relation was powerful (r=0.911). A powerful positive relation was found between risk level and PDW (P<0.001, r=0.319). Paralleled with DTS, MPV and PDW values of the patients with CAD, hypertension, diabetes mellitus, smoking and hyperlipidemia were higher compared to those without, while MPV and PDW values were lower for the patients taking beta-blockers, angiotensin-converting-enzyme inhibitors or angiotensin receptor blockers, diuretics, aspirin and statins. When MPV (f1) and PDW (%) values were compared between groups, there was a high statistical significance between most groups.

Conclusion — We found an independent association between MPV, PDW and DTS. Keywords: coronary artery disease, mean platelet volume, platelets

Cite as Kutlu R, Memetoglu ME, Murataliev TM, Sagkan KG, Yajar H. Relationship between Duke Treadmill Score and platelet volume indices in predicting coronary artery disease. Russian Open Medical Journal 2015; 4: e0402.

Correspondence to Rasim Kutlu. Address: Denizli state hospital, Denizli/Turkey. Phone: +90 541 3534097. Fax: +90 (258) 241 28 53. E-mail: [email protected]

Introduction

Predicting coronary artery disease (CAD) in growing number of patients at risk for the disease using economical non-invasive techniques is crucial and can provide significant clinical and economic benefits.

Exercise stress testing is a commonly used and inexpensive method for an initial evaluation of patients with suspected CAD. The Duke Treadmill Score (DTS) is a composite index that is based on the results from the exercise test, including ST-segment depression on electrocardiogram (ECG), chest pain and exercise duration, and provides more accurate diagnostic and prognostic information for the evaluation of patients with clinically-suspected ischemic heart disease. The DTS has showed a great value in prioritizing patients for coronary angiography in a typical transitional clinical setting [1].

A large population study reported that DTS combined with exercise stress testing seeks to assess in a simple manner and to express numerically: the patients risk of a coronary event [2].

Automated cell counters have made the platelet count (PC) and the platelet volume indices (PVI) - mean platelet volume (MPV), platelet distribution width (PDW) routinely available in laboratories.

PDW directly measures the variability in platelet size. It has been postulated that large platelets may be an indicator of platelet activation, and thus be related to the extent of CAD. Increased MPV indicates large-sized hyperaggregable platelets, which are metabolically and enzymatically more active than normal-sized platelets, and accepted as an independent cardiovascular risk factor [3]. It is well-established that elevated MPV is associated with acute micardial infarction (MI), mortality following MI, and restenosis following coronary angioplasty [4, 5].

In reviewing the literature, no data was found on the possible association between platelet volume indices and DTS. In this study, we compared MPV and PDW directly to DTS, and aimed to determine the clinicopathological correlation between these two parameters.

ISSN 2304-3415, Russian Open Medical Journal

2015. Volume 4. Issue 4. Article CID e0402 DOI: 10.15275/rusomj.2015.0402_

Table 1. Demographic clinical and echocardiographic characteristics of the study population

Parameters Total (n=1205) Group 1 (n=373) Group 2 (n=460) Group 3 (n=372) P-value

Age, years, mean±SD 57±7.2 56±5.9 57±8.9 57±8.3 >0.005

Gender Male, % 47±4.1 46±5.3 46±7.1 47±4.2 >0.005

Female, % 58±7.5 59±5.7 58±4.4 57±2.2 >0.005

CAD, no. (%) 961 (79.75) 351 (29.13) 340 (28.22) 270 (22.41) >0.005

Hypertension, no. (%) 827 (68.63) 245 (20.33) 332 (27.55) 250 (20.75) >0.005

Diabetes mellitus, no. (%) 386 (32.03) 128 (10.62) 131 (10.87) 127 (10.54) >0.005

Hyperlipidemia, no. (%) 495 (41.08) 111 (9.21) 202 (16.76) 182 (15.10) >0.005

Smoking, no. (%) 520 (43.15) 212 (17.59) 198 (16.43) 110 (9.13) >0.005

Aspirin, no. (%) 1001 (83.07) 334 (27.71) 401 (33.28) 266 (22.07) >0.005

Klopidogrel, no. (%) 701 (58.17) 201 (16.68) 298 (24.73) 202 (16.76) >0.005

Beta bloker, no. (%) 1110 (92.12) 341 (28.30) 367 (30.46) 402 (33.36) >0.005

ACEi or ARB, no. (%) 850 (70.54) 247 (20.50) 337 (27.97) 266 (22.07) >0.005

CCB, no. (%) 121 (10.04) 39 (3.24) 44 (3.65) 38 (3.15) >0.005

Diuretic, no. (%) 421 (34.94) 110 (9.13) 167 (13.86) 44 (3.65) >0.005

Statin, no. (%) 494 (41.00) 111 (9.21) 201 (16.68) 182 (15.10) >0.005

LVEF, % 49±7.1 51±2.4 50±7.9 48±8.2 >0.005

SD, standart deviation; CAD, coronary artery disease; ACEi, angiotensin coverting enzyme inhibitor; ARB, angiotensin II receptor blocker; CCB, calcium channel blocker; LVEF, left ventricle ejection fraction. P-value between Group 1 and 2 and difference lies between Group 3 and 1/2.

Table 2. The laboratory findings of the study population

Parameters

Group 1

Group 2

Group 3

P-value

Overall Group 1-3 Group 2-3 Group 1-2

Haemoglobin, g/dl 12.0 (11.1-16.7) 12.0 (11.3-16.1) 12.0 (11.7-16.4) - - - -

WBC, x103/^1 7.32 (3.97-11.4) 7.37 (3.90-11.3) 7.33 (4.31-11.1) - - - -

Platelet, x103/^1 233 (119-432) 219 (144-480) 238 (167-431) - - - -

MPV, f1 8.31± 0.41 8.72±0.45 8.91±0.48 <0.001 <0.001 <0.001 <0.001

PCT, % 0.173 (0.077-0.276) 0.204 (0.105-0.301) 0.172 (0.099-0.204) <0.001 <0.433 <0.001 <0.001

PDW, % 12.47±0.73 14.70±1.03 15.33±0.99 <0.001 <0.001 <0.563 <0.001

WBC, white blood cell; MPV, mean platelet volume; PCT, plateletcrit; PDW, platelet distribution width. Data presented as mean ± standard error.

PDW, platelet distribution width; MPV, mean platelet volume.

Figure 1. Figure shows the relationship between mean platelet volume,

platelet distribution width, and Duke Treadmill Score according to risk

scale.

Material and Methods

Patient population and study protocol

A total of 1205 patients followed up by the Cardiology Department of Gumu§hane State Hospital between March 2012 and 2013 were included in the study, all of whom have undergone effort test. The local research ethics committee approved the study.

While 709 (58.84%) patients were female and 496 (41.16%) were male, the mean age was 57±7.2 years. The present

diagnoses, risk factors, treatments, clinical values and findings of the patients as well as distribution of these parameters among groups are given in detail in Table 1.

DTS were measured for patients undergoing effort test. DTS formula is as follows: (duration of exercise (minutes) - 15 x ST deviation) - (4 x angina index (angina index: 0: no angina; 1: limiting angina; 2: angina interrupting the test)). Reference values: -11 is considered as high risk, -10 and +4 intermediate risk, +5 and higher as low risk.

The patients were investigated in three goups (signed as 1, 2, and 3): DTS was >+5 in Group 1 in which 373 (30.95%) patients were included and categorized as low risk group. DTS was -10 and +4 in Group 2 where 460 (38.17%) patients were included and categorized as moderate risk group. DTS was <-11 in Group 3 where 372 (30.87%) patients were included and categorized as high risk group.

Complete blood count, aspartate aminotransferases (AST), alanine aminotransferases (ALT), lipid values and fasting blood glucose values were investigated in the control examinations of all patients. Tests: 12-derivation standard electrocardiograms were all reflecting sinus rhythm. Transthoracic echocardiography (ECHO) and ejection fraction (EF) were measured using Simpson's method (EF = left ventricular end-diastolic caliber - left ventricular end-systolic caliber / left ventricular end-diastolic caliber x 100%).

Transthoracic echocardiography (ECHO) was performed using Philips HD11XE (Philips Medical Systems, Bothell, WA, USA) device and Effort test was performed using Tepa Tm-Pro-2000 (TM-PRO 2000, Tepa, Turkey) device.

The diagnosis of CAD was established based on coronary angiography findings and effort test was made in order to measure effort capacity and effort angina in these patients.

ISSN 2304-3415, Russian Open Medical Journal

2015. Volume 4. Issue 4. Article CID e0402 DOI: 10.15275/rusomj.2015.0402_

Table 3. Laboratuary parameters according to demographical, clinical, and medical features

Parameters Category MPV PLT PDW

Gender Male Female 8.61 (0.50) 8.56 (0.47) P=0.080 252.86 (66.89) 281.97(73.97) P<0.001 15.60 (2.5) 14.43 (2.38) P<0.001

CAD Yes No 8.75 (0.52) 8.57 (0.48) P=0.001 268.31 (72.41) 229.02 (45.54) P<0.001 14.97(2.52) 16.59 (2.02) P<0.001

Hypertension Yes No 8.60 (0.49) 8.58 (0.47) P=0.794 266.77(71.31) 263.97(71.35) P=0.673 266.77(71.31) 263.97 (71.35) P=0.870

Diabetes mellitus Yes No 8.69 (0.49) 8.59 (0.47) P=0.926 265.67(71.15) 263.12 (71.74) P=0.432 15.162 (2.57) 15.02 (2.42) P=0.468

Smoking Yes No 8.62 (0.50) 8.56 (0.47) P=0.023 262.68 (70.06) 267.71 (72.90) P=0.364 15.22 (2.50) 14.98 (2.53) P=0.039

Hyperlipidemia Yes No 8.69 (0.49) 8.59 (0.48) P=0.696 263.57(70.48) 266.68 (72.54) P=0.486 15.19 (2.57) 15.01 (2.45) P=0.326

Beta bloker Yes No 8.59 (0.50) 8.79 (0.48) P=0.739 258.46 (74.60) 267.15 (70.0) P=0.049 15.25 (2.56) 15.07 (2.50) P=0.252

ACEi or ARB Yes No 8.58 (0.49) 8.60 (0.48) P=0.310 262.92 (71.23) 268.13 (71.43) P=0.204 15.28 (2.56) 14.84 (2.43) P=0.007

Diuretic Yes No 8.61 (0.51) 8.55 (0.43) P=0.025 265.71 (71.99) 262.81 (69.75) P=0.476 15.10(2.50) 15.16 (2.57) P=0.959

Aspirin Yes No 8.59 (0.49) 8.65 (0.30) p=0.484 252.13 (77.29) 265.19 (71.16) P=0.194 15.33 (2.60) 15.11 (2.52) P=0.734

Statin Yes No 8.59 (0.47) 8.60 (0.51) P=0.919 262.02 (70.60) 266.72 (71.77) P=0.307 15.04(2.50) 15.16 (2.54) P=0.467

PDW, platelet distribution width; MPV, mean platelet volume; PLT, platelet. Data presented as mean ± standard error.

Blood samples were drawn from the antecubital vein with a 20-Gauge needle, and whole blood counts counts were measured in blood samples, which were collected to dipotassium EDTA tubes before treatment. The following hematological parameters were recorded in all blood samples: platelet count (PLT), and MPV. Complete blood counts including MPV were determined using an autoanalyzer (Beckman Coulter LH 750). Whole blood cell counting was routinely performed by the following parameters: haemoglobin (g/dl), PLT (109/L), white blood cell count (WBC) (x103/|1), platelet distribution width (PDW) (%), plateletcrit (PCT) (%) and mean platelet volume (MPV) (fl). We recorded the age, gender, systolic blood pressure (SBP), diastolic blood pressure (DBP), medical agents, and left ventricular EFs of our patients.

Statistical analysis

SPSS 18.0 package software was used for statistical evaluations. Parameters assessed in our study were presented as frequency, percentage, mean and standard deviation. MannWhitney U test was used in the analysis of differences between independent measurements of two groups according to the results of normality test. The differences between the measurements of DTS groups were analysed first by using Kruskal-Wallis test and then by Bonferroni corrected Mann-Whitney U test (a=0.017). Spearman correlation test was performed for relations between measurements while controlling the normality of data distributions. P values were compared with 0.05 where >0.05 was considered as insignificant, <0.05 as significant and <0.01 as very significant.

Results

As shown in Table 1, the differences between all the parameters of distribution among groups were equal and also statistically insignificant.

Table 2 examines the differences in MPV and PDW for the three risk groups. A difference is seen in PDW values between mild and moderate group and between mild and high group while there was no difference between the PDW values of moderate and high risk groups. Considering MPV values, an increase was observed paralleled by an increase in DTS which also was statistically significant. MPV and PDW values increased with higher DTS risk group irrespective of CAD and risk groups which was also found to be statistically significant. Based on the correlation analysis, MPV increases by increasing DTS risk level as seen in Figure 1 (P<0.001). The power of the relation was powerful (r=0.911). A powerful positive relation was found between risk level and PDW (P<0.001, r=0.319).

The differences between groups were analyzed using parameters including gender, CAD, hypertension, diabetes mellitus, smoking, hyperlipidemia and beta blocker, angiotensin-converting-enzyme inhibitor (ACEi) or angiotensin receptor blocker (ARB), diuretic, aspirin, statin use are seen in Table 3. Despite not being statistically significant (P=0.080), MPV value was higher in males compared to females according to these analyses. PDW values were found to be higher in males compared to females which was statistically very significant (P<0.001). MPV and PDW values were low as opposed to PLT values in those with CAD and this was also statistically very significant (P<0.001). MPV values were higher in patients with CAD compared to those without which was also statistically very significant (P<0.001). MPV values were higher in patients with hypertension, diabetes mellitus, smoking and hyperlipidemia compared to those without though this was not found to be statistically significant (P=0.005). The same condition was considered for those taking ACEi or ARBs, diuretics, aspirin and statin compared to those not taking these drugs. MPV value increased as DTS risk increased irrespective of the clinical diagnosis and the treatment (gender, CAD,

ISSN 2304-3415, Russian Open Medical Journal

2015. Volume 4. Issue 4. Article CID e0402 DOI: 10.15275/rusomj.2015.0402_

hypertension, diabetes mellitus, smoking, hyperlipidemia, beta blockers, ACEi or ARBs, diuretics, aspirin, statin).

Discussion

In this study, PDW and notably MPV values increase with higher DTS risk group irrespective of CAD and risk groups which is also found to be statistically significant.

Despite not being statistically significant (P=0.005), mean MPV value was found to be higher in patients with diabetes mellitus, hypertension and hypercholesterolemia compared to those without such risk factors irrespective of CAD and DTS in this study. Examples of such studies are found in the literature: Furthermore, higher MPV is observed in patients with diabetes mellitus [6], hypertension [7], hypercholesterolemia [8], smoking [9] suggesting a common mechanism by which these factors may increase the risk of cardiovascular disease.

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Our study also supports those exemplified above.

It is thought that high MPV levels may be an effective marker in determining the severity of CAD, and the high MPV level may be related with CAD pathophysiology [10]. Cetin et al. [11] reported that patients with acute st-elevation myocardial infarction (STEMI) had higher PDW than patients with stable CAD, and mean platelet volume and PDW were independent predictors of thrombolysis failure. A recent study reported that PDW is associated with the extent of CAD and coronary total occlusions [12].

The exercise treadmill test (ETT) has been a very useful tool in detecting or determining the degree of coronary artery disease, and the maximization of the test diagnostic value with the addition of clinical information is encouraged [13]. Vacanti and et al. [14], reported that the ETT is superior to the myocardial perfusion scintigraphy to predict cardiovascular risk in the elderly.

Youn et al. [15] suggests that DTS reflects coronary flow reserve and the severity of ischemia in patients with microvascular angina. Shaw et al. [16] demonstrated that DTS was effective at diagnosing significant and severe CAD. They regarded CAD severity as number of diseased artery rather than morphological and structural properties of coronary arteries.

We did not encounter in the literature any study comparing MPV, PLT and PDW values between patients under low, moderate or high risk groups as classified by DTS. In this regard, our study is among the first ones in its category.

Conclusion

This study's findings suggest that MPV and PDW may improve the prognostic information in the prediction of prevalence and extent of CAD. According to significant association between DTS and platelet volume indices, we think that MPV and PDW are simple, easily obtainable, and potentially useful prognostic biomarkers that can contribute to cost reductions in the detection of coronary artery disease and stratification of pathology.

Conflict of interest: none declared.

References

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16. Shaw LJ, Peterson ED, Shaw LK, Kesler KL, DeLong ER, Harrell FE Jr, et al. Use of a prognostic treadmill score in identifying diagnostic coronary disease subgroups. Circulation 1998; 98(16): 1622-1630. (PMID: 9778327) (doi: 10.1161/01.CIR.98.16.1622)

Authors:

Rasim Kutlu - Associate Professor, Department of Cardiology, Denizli State Hospital, Denizli, Turkey.

ISSN 2304-3415, Russian Open Medical Journal

2015. Volume 4. Issue 4. Article CID e0402 DOI: 10.15275/rusomj.2015.0402_

Cardiology

5 of 5

Mehmet Erdem Memetoglu - MD, Cardiovascular Surgeon, Department of Cardiovascular Surgery, Dr.Siyami Ersek Cardiovascular and Thoracic Surgery Hospital, Istanbul, Turkey.

Murataliev Tolkun Muratalievic - MD, Professor, Department of Cardiology, National Cardiology and Internal Medicine Institude, Bishkek, Kyrgyzstan.

Kadir Gökhan Sagkan - MD, Cardiovascular Surgeon, Department of Cardiovascular Surgery, Denizli State Hospital, Denizli, Turkey. Hasan Ya;ar - MD, Department of Neurology, Denizli State Hospital, Denizli, Turkey.

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