Literature DB >> 31640740

Monocyte to high-density lipoprotein cholesterol ratio as long-term prognostic marker in patients with coronary artery disease undergoing percutaneous coronary intervention.

Ting-Ting Wu1, Ying-Ying Zheng2, You Chen1, Zi-Xiang Yu1, Yi-Tong Ma3, Xiang Xie4.   

Abstract

BACKGROUND: The relation between monocyte to high-density lipoprotein cholesterol ratio (MHR) and coronary artery disease (CAD) undergoing percutaneous coronary intervention (PCI) remains controversial. The present study aims to assess the prognostic value of MHR in patients with CAD who underwent PCI.
METHODS: A total of 673 CAD patients were retrospectively enrolled and divided into four groups according to MHR values. Multivariate Cox regression analysis was performed to study the effects of different variables to clinical outcomes reported as major adverse cardiac events (MACE) and all-cause mortality (ACM).
RESULTS: In a multivariate Cox analysis, after adjustment of other confounders, MHR was found to be an independent predictor of ACM (HR: 3.655; 95% CI: 1.170-11.419, P = 0.026) and MACE (HR =2.390, 95% CI 1.379-4.143, p < 0.002). Having a MHR in the third and fourth quartile were associated with a 2.83-fold and 3.26 -flod increased risk of MACE.
CONCLUSIONS: MHR is an independent predictor of ACM and MACE in CAD patients undergoing PCI.

Entities:  

Keywords:  Coronary artery disease; Monocyte to high-density lipoprotein cholesterol ratio; Percutaneous coronary intervention; Prognostic markers

Mesh:

Substances:

Year:  2019        PMID: 31640740      PMCID: PMC6805452          DOI: 10.1186/s12944-019-1116-2

Source DB:  PubMed          Journal:  Lipids Health Dis        ISSN: 1476-511X            Impact factor:   3.876


Introduction

During the past three decades, percutaneous coronary intervention (PCI) has become one of the dominant methods for revascularization in patient with coronary artery disease (CAD). Previous study suggested that inflammation, oxidative stress, and endothelial dysfunction play important roles in the initiation and progression of atherosclerotic process [1]. Mounting interest focuses on the identification of new prognostic markers better enabling the category of patients who are at higher risk for future cardiovascular events. Humoral biomarkers of inflammation are correlated with initiation, progression, destabilization of an atherosclerotic plaque and appear to correlate with future cardiovascular events warranting investigation of more specific associations [2, 3]. Circulating monocytes as a source of various cytokines and molecules, interact with platelets and endothelial cells and leading to aggravation of inflammatory, pro-thrombotic pathways [4, 5]. High-density lipoprotein cholesterol (HDL-C) defuse these pro-inflammatory and pro-oxidant effects of monocytes by inhibiting the migration of macrophages and oxidation of the low-density lipoprotein cholesterol (LDL-C) molecules as well as promoting the efflux of cholesterol from these cells [6, 7]. Because of this, properties such as monocyte count to HDL-C ratio (MHR) could show the inflammatory status of a patient. Consistent with this, the association between increased MHR and cases of atherosclerosis has been demonstrated and MHR has emerged as a new cardiovascular prognostic marker in previous studies [8-11]. In the present study, we aimed to investigate the relationship between MHR and the clinical outcomes of CAD patients after PCI.

Methods

Study population

We performed a 10-year retrospective cohort study, from January 2008 to December 2016 in the First Affiliated Hospital of Xinjiang Medical University, according to the strict inclusion criteria. Patients with serious heart failure, rheumatic heart disease, valvular heart disease, congenital heart disease and pulmonary heart disease were exclude. We also excluded patients with end-stage renal disease and serious dysfunction of the liver, clinical evidence of cancer, active or chronic inflammatory or autoimmune diseases, active infection and patients who received blood transfusion recently. CAD was defined as the presence of at least one significant coronary artery stenosis of ≥50% luminal diameter on coronary angiography. In the initial,we enrolled 698 consecutive patients with a diagnosis of CAD who underwent PCI. During the follow-up period, 25 patients were lost (changing telephone number or moving to another place). 673 patients were enrolled finally. The study complied with the Declaration of Helsinki, and the protocol was approved by the Human Ethical Committee of the First Affiliated Hospital of Xinjiang Medical University. Because of the retrospective design of the study, the need to obtain informed consent from eligible patients was waived by the ethics committee. Major adverse cardiac events (MACE) and all-cause mortality (ACM) were reported as the clinical outcomes. Follow-up data were obtained by review of the medical records and/or telephone interview with the patient or family members.A flowchart outlining our study was shown in Fig. 1.
Fig. 1

The follow chart of participants inclusion

The follow chart of participants inclusion

Definitions

Hypertension was defined as a systolic blood pressure of ≥140 mmHg and/or a diastolic blood pressure of ≥90 mmHg in at least 2 measurements or use of any antihypertensive drug. Diabetes mellitus was defined as fasting plasma glucose level ≥ 7.1 mmol/L on multiple measurements or current use of anti-diabetic medications. Hypercholesterolemia was considered as total serum cholesterol of ≥200 mg/dL or the use of lipid-lowering medications. Family history of CAD was considered in case of history of CAD or sudden cardiac death in a first-degree relative before the age of 55 years for men and 65 years for women. Smoking and drinking status was defined as current tobacco and alcohol use. Cardiovascular mortality, re-hospitalization due to unstable or progressive angina, heart failure, stroke, re-infarction, re-stents implanted, and coronary artery bypass grafting were regarded as MACE. Scoring of severity of coronary artery disease was performed with a modification of the coronary atherosclerosis scoring system which was called the standard of Gensini Method.

Clinical and demographic characteristics

Peripheral venous blood samples of the patients were obtained on admission to the inpatient ward. Data regarding clinical and demographic characteristics including age, sex, history of hypertension and diabetes mellitus, smoking status, alcohol intake, family history of coronary artery disease and medications were collected from medical records. Left ventricular ejection fraction and laboratory data including urea and creatinine levels, total cholesterol(TC), LDL-C,HDL-C and triglycerides(TG) levels, complete blood cell count and white blood cell (WBC) subgroups count were noted. During hospitalization and follow-up period, β-blocker, angiotensin-converting enzyme inhibitor, and statin were administered to all patients unless contraindicated.

Statistical analysis

All analyses were performed using SPSS 22.0 for Windows statistical software (SPSS Inc., Chicago, IL, USA).The normality of the distribution of continuous variables was evaluated by the Kolmogorov-Smirnov test. Continuous variables were expressed as Mean ± standard deviation. Parametric patient characteristics were compared using one-way ANOVA, whereas non-parametric characteristics were compared using the Kruskal–Wallis test. Categorical variables were summarised as percentages and compared using the Chi-square (x2) test. Stepwise regression was used to deal with the collinear problem. Multivariate Cox proportional hazard model were used for determination of independent parameters for MACE and ACM. To construct the Cox model, univariate models for each of the all predictor variables were run, with those variables that were significant (P < 0.05) in univariate Cox models were then simultaneously entered into a multivariable Cox model. The Hazard ratios (HRs) and 95% confidence intervals (CIs) were calculated. The cumulative survival curve for MACE and ACM was constructed using the Kaplan-Meier method and compared using the log-rank test. P < 0.05 was considered significant. Receiver operating characteristic (ROC) curve was performed to discuss the diagnostic value of risk factors for the prediction of poor prognisis.

Results

A total of 673 patients (543 male, 80.7%; mean age 59.1 ± 10.8) with the diagnosis of CAD after PCI were enrolled. The mean follow-up period was 39 ± 25 months. The clinical, echocardiographic, and laboratory data of the study population are given in Table 1.
Table 1

Clinical and laboratory characteristics

ParametersTotal(N = 673)
Age (years)59.1 ± 10.8
Male sex [n (%)]543(80.7)
Smoking [n (%)]315(46.8)
Alcohol intake[n (%)]251(37.3)
Hypertension [n (%)]323(48.0)
Family history of CAD [n (%)]145(21.5)
Hypercholesterolemia [n (%)]287(42.6)
Diabetes [n (%)]170(25.3)
LVEF (%)61 ± 7
Regular drug taking[n (%)]594(88.3)
Pre-procedural laboratory parameters
 SBP (mmHg)134 ± 26
 HR (bpm)75 ± 10
 WBC (× 109/L)7.49 ± 2.33
 Monocyte (× 109/L)0.52 ± 0.22
 TG(mmol/l)1.61(1.18–2.48)
 TC(mmol/l)4.04 ± 1.21
 LDL-C(mmol/l)1.32(1.06–2.22)
 HDL-C(mmol/l)1.48(0.93–2.48)
 Gensini score36(20–64)
 MHR0.40 ± 0.30
MHR quartiles
 Q1(≤0.19)167(24.8)
 Q2(0.19–0.33)177(26.3)
 Q3(0.33–0.53)158(23.5)
 Q4(> 0.53)171(25.4)
 Follow-up time (months)39 ± 25

WBC White blood cell, SBP Systolic blood pressure, HR Heart ratio, TG Triglyceride, TC Cholesterol, HDL-C High-density lipoprotein cholesterol, LDL-C Low-density lipoprotein cholesterol, LVEF Left ventricular ejection fraction; Regular drug taking: angiotensin-converting enzyme inhibitor, angiotensin II receptor blocker and statin were administered by medical advice, MHR Monocyte/HDL-C ratio

Clinical and laboratory characteristics WBC White blood cell, SBP Systolic blood pressure, HR Heart ratio, TG Triglyceride, TC Cholesterol, HDL-C High-density lipoprotein cholesterol, LDL-C Low-density lipoprotein cholesterol, LVEF Left ventricular ejection fraction; Regular drug taking: angiotensin-converting enzyme inhibitor, angiotensin II receptor blocker and statin were administered by medical advice, MHR Monocyte/HDL-C ratio

Comparison of the quartile groups

The study population were assigned into quartiles (Q) based on pre-ablation MHR (Q1:≤ 0.19; Q2: 0.19–0.33; Q3: 0.33–0.53; Q4: > 0.53). Baseline characteristics, laboratory parameters, and coronary angiographic findings of the patient groups according to the MHR quartile groups are presented in Table 2. Older age, higher rate of male, higher SBP, WBC counts, monocyte counts, fasting blood glucose(FBG), LDL-C, and lower HDL-C were more prevalent in the high MHR level group (P < 0.05).
Table 2

Clinical and laboratory characteristics according to the monocyte-to-HDL ratio quartiles

ParametersQ1(≤0.19)N = 167Q2(0.19–0.33)N = 177Q3(0.33–0.53)N = 158Q4(> 0.53)N = 171 P
Age(years)57 ± 1158 ± 1160 ± 1159 ± 110.045
Male sex [n (%)]120(71.9%)144(81.8%)130(82.3%)149(87.3%)0.004
Smoking [n (%)]69(41.3%)84(47.5%)82(51.9%)80(46.8%)0.297
Alcohol intake [n (%)]54(32.3%)62(35.0%)69(43.7%)66(38.6%)0.171
Hypertension [n (%)]74(44.3%)82(46.3%)80(50.6%)87(50.9%)0.551
Family history of CAD [n (%)]34(20.4%)38(21.5%)34(21.5%)39(22.8%)0.960
Hypercholesterolemia[n (%)]65(38.9%)70(39.5%)76(48.1%)76(44.4%)0.286
Diabetes [n (%)]41(24.6%)44(24.9%)40(25.3%)45(26.3%)0.984
LVEF (%)61 ± 762 ± 761 ± 761 ± 80.401
Gensini score43 ± 4345 ± 4246 ± 3752 ± 350.150
Laboratory parameters
 SBP (mmHg)130 ± 21131 ± 24135 ± 29139 ± 290.003
 HR (bpm)73 ± 974 ± 1075 ± 1176 ± 100.068
 WBC(×109/l)6.73 ± 2.147.36 ± 1.887.58 ± 2.438.28 ± 2.58< 0.001
 MO(×109/l)0.36 ± 0.050.51 ± 0.180.54 ± 0.220.67 ± 0.23< 0.001
 HB(× 1012/l)141 ± 14140 ± 16139 ± 15139 ± 140.499
 RDW(%)13.21 ± 0.9813.17 ± 0.7913.15 ± 0.8113.24 ± 0.200.778
 PLT(×109/l)212 ± 59217 ± 72211 ± 61212 ± 610.847
 BUN(mmol/l)5.49 ± 1.415.53 ± 1.635.40 ± 1.665.40 ± 1.700.823
 FBG(mmol/l)6.15 ± 2.556.27 ± 2.516.54 ± 3.036.93 ± 2.910.045
 TG(mmol/l)2.12 ± 1.251.87 ± 1.231.87 ± 1.152.37 ± 1.700.001
 TC(mmol/l)4.53 ± 1.063.97 ± 1.093.93 ± 1.463.73 ± 1.07< 0.001
 HDL-C(mmol/l)2.89 ± 0.952.05 ± 0.781.31 ± 0.510.86 ± 0.30< 0.001
 LDL-C(mmol/l)1.27 ± 0.501.51 ± 0.981.97 ± 1.102.14 ± 0.97< 0.001
 MHR0.12 ± 0.050.25 ± 0.040.42 ± 0.060.82 ± 0.31< 0.001
 IBIl(umol/l)8.57 ± 4.439.21 ± 5.528.89 ± 5.228.26 ± 4.560.318
 DBIL(umol/l)3.17 ± 2.023.51 ± 2.283.45 ± 2.593.10 ± 2.340.270
Drugs parameters
 Regular drugs taking142(85%)153(86.4%)143(90.5%)156(91.2%)0.215
Clinical result
 Follow up time(m)45 ± 2645 ± 2937 ± 2531 ± 16< 0.001
 ACM [n (%)]1(0.6%)1(0.6%)4(2.5%)8(4.7%)0.022
 MACE [n (%)]15(9%)26(14.7%)28(17.7%)33(19.3%)0.044

Mo Monocyte, PLT Platelet, BUN Blood urea nitrogen, HB Hemoglobin B, FBG Fasting blood glucose, RDW Red cell distribution width, IBil Indirect bilirubin, DBIL Direct bilirubin, ACM All-cause mortality, MACE Major adverse cardiac events

Clinical and laboratory characteristics according to the monocyte-to-HDL ratio quartiles Mo Monocyte, PLT Platelet, BUN Blood urea nitrogen, HB Hemoglobin B, FBG Fasting blood glucose, RDW Red cell distribution width, IBil Indirect bilirubin, DBIL Direct bilirubin, ACM All-cause mortality, MACE Major adverse cardiac events

Comparison of clinical outcomes

During long term follow-up, the prevalence of ACM and MACE occurred more frequently in the fourth quartile group. The results of Cox regression analysis for long-term clinical outcomes are also shown in Table 3-4. According to univariate Cox proportional hazard regression analysis, age, MHR, left ventricular ejection fraction (LVEF), diabetes, HR (heart ratio), haemoglobin B (HB), direct bilirubin DBIL, LDL-C and Gensini score were significantly associated with ACM (P < 0.05) (Table 3). Multivariate Cox proportional hazard regression analysis showed that age.
Table 3

Univariate and multivariate Cox proportional Hazard modeling results of ACM

VariablesUnivariate modelMultivariate model
HR95%CI P HR95%CI P
Age1.0971.035–1.1630.0021.0711.005–1.1410.035
Male sex1.7920.558–5.7590.328
Smoking0.8120.281–2.3440.7
Dringking0.6440.201–2.0670.46
Hypertension2.6270.822–8.3980.103
Family history of CAD1.1140.310–4.0090.868
Hypercholesterolemia1.0180.352–2.9460.974
Diabetes3.4881.206–10.0930.0213.0380.856–10.7830.086
LVEF (%)0.9290.885–0.9760.0040.9580.899–1.0210.190
HR1.0521.00–1.0970.0171.0611.005–1.1200.031
WBC1.1230.949–1.3290.177
HB0.950.919–0.9830.0030.9660.928–1.0070.101
RDW1.370.871–2.1550.173
PLT0.9990.991–1.0070.816
BUN1.1870.903–1.5610.22
FBG1.0840.934–1.2570.288
TG1.0170.687–1.5050.932
TC1.1170.747–1.6700.59
LDL-C1.7151.248–2.3560.0012.0941.400–3.134< 0.001
DBIL1.2171.057–1.4000.0061.2671.078–1.4690.004
IBIL0.9970.897–1.1080.956
Gensini score1.0131.007–1.019< 0.0011.0191.007–1.0320.002
MHR5.0821.957–13.1960.0013.6551.170–11.4190.026
Table 4

Univariate and multivariate Cox proportional Hazard modeling results of MACE

VariablesUnivariate modelMultivariate model
HR95%CI P HR95%CI P
Age1.0181.000–1.0370.0491.0050.985–1.0260.618
Male sex1.6781.083–2.5990.021.2810.768–2.1380.343
Smoking1.1130.754–1.6420.59
Drinking1.1850.798–1.7600.4
Hypertension1.5281.025–2.2770.0371.5510.996–2.4160.052
Family history1.5360.975–2.4200.064
Hypercholesterolemia1.2440.842–1.8380.273
Diabetes1.9191.295–2.8430.0011.9111.241–2.9410.003
LVEF (%)0.9890.967–1.0110.32
HR1.0241.006–1.0420.011.0211.001–1.0410.042
WBC1.0761.000–1.1560.0491.0100.930–1.0970.812
HB0.9780.965–0.9910.0010.9800.965–0.9950.008
RDW1.1340.941–1.3660.187
PLT10.997–1.0020.791
BUN1.0770.966–1.2000.18
FBG1.0871.027–1.1500.0040.9980.934–1.0670.958
TG0.9790.837–1.1460.795
TC0.9930.842–1.1720.937
LDL-C1.4281.230–1.657< 0.0011.4111.178–1.690< 0.001
DBIL1.0620.980–1.1500.143
IBIL0.9720.932–1.0120.171
Gensini score1.0061.001–1.0110.0221.0061.001–1.0110.029
MHR3.4142.148–5.427< 0.0012.3901.379–4.1430.002
MHR quartiles
 Q1RefRefRefRef
 Q21.5760.833–2.9820.1621.6520.844–3.2330.143
 Q32.6541.414–4.9810.0022.8311.433–5.5960.003
 Q44.3572.344–8.099< 0.0013.2581.604–6.6190.001
Univariate and multivariate Cox proportional Hazard modeling results of ACM Univariate and multivariate Cox proportional Hazard modeling results of MACE (HR: 1.071; 95% CI: 1.005–1.141, P = 0.035), heart ratio (HR: 1.061; 95% CI: 1.005–1.120, P = 0.031), DBIL (HR: 1.267; 95% CI: 1.078–1.469, P = 0.004), LDL-C(HR: 2.094; 95% CI: 1.400–3.134, P < 0.001) Gensini sore (HR: 1.019; 95% CI: 1.007–1.032, P = 0.002) and MHR (HR: 3.655; 95% CI: 1.170–11.419, P = 0.026) were independent predictors of ACM after adjustment of other variables (Table 3). As shown in Table 4, univariate Cox proportional hazard regression analysis showed age, MHR, male, diabetes, hypertension, HR, HB, FBG, WBC, LDL-C, Gensini score were significantly associated with MACE (P < 0.05). In multivariate Cox proportional hazard regression analysis, MHR was also found as an independent predictor of MACE (HR =2.390, 95% CI 1.379–4.143, p < 0.002), along with diabetes mellitus (HR = 1.911, 95% CI 1.241–2.941, p = 0.003), hypertension (HR = 1.576, 95% CI 1.011–2.455, p = 0.044), hemoglobin (HR = 0.980, 95% CI 0.965–0.995, p = 0.008) heart ratio (HR = 1.021, 95% CI 1.001–1.041, p = 0.042), LDL-C(HR:1.411; 95% CI: 1.178–1.690, P < 0.001), and Gensini score (HR = 1.006, 95% CI 1.001–1.011, p = 0.029) were found as independent predictors of MACE. Having a MHR in the third and fourth quartile were associated with a 2.83-fold (HR=2.831, 95% CI 1.433–5.596, p = 0.003) and 3.26-flod (HR=3.258, 95% CI 1.604–6.619, p = 0.001) increased risk of MACE. Receiver operating curve (ROC) analysis showed that MHR levels could predict ACM with a sensitivity of 78.6% and a specificity of 61.5% (AUC = 0.714, p = 0.006) (Fig. 2). The area under the curve (AUC) of age (AUC = 0.742), heart ratio (AUC =0.710), Gensini score (AUC =0.754), MHR quartile groups (AUC = 0.719) were all significant(p < 0.05). Kaplan-Meier curves among quartiles for both ACM and MACE (log-rank, P < 0.05), which represent worse outcomes as MHR increases, were shown in Fig. 3-4.
Fig. 2

Receiver operating curve (ROC) for the analysis of possible predictors of all-cause mortality in the study population. AUC indicates area under curve

Fig. 3

The Kaplan-Meier survival analysis for all-cause mortality

Fig. 4

The Kaplan-Meier survival analysis for major adverse cardiovascular events

Receiver operating curve (ROC) for the analysis of possible predictors of all-cause mortality in the study population. AUC indicates area under curve The Kaplan-Meier survival analysis for all-cause mortality The Kaplan-Meier survival analysis for major adverse cardiovascular events

Discussion

In our study, we found that elevated MHR is a useful marker of poor prognosis in patients with CAD undergoing PCI. In multivariate analysis, the MHR emerged as an independent predictor of ACM and MACE. Recently, MHR is considered as a novel and surrogate marker of inflammatory status. Acikgoz et al. [12] reported a novel easily available inflammatory marker-MHR. In their study, the authors found an association between higher MHR and impaired endothelial function and systemic inflammation in patients with Behçet disease.. Previous studies also showed that MHR might a predictor for obstructive sleep apnea syndrome [13, 14]. You et al. [15] reported that there was a significant correlation between MHR and 3-month outcomes in patients with acute intracerebral hemorrhage. A significant relationship between blood cadmium and monocyte count and MHR among male fire officers was reported [16]. Cagli et al. [17] also reported an association of MHR with the abdominal aortic aneurysm size. Koçak et al. [18] demonstrated that the MHR is not an independent risk factor in idiopathic sudden hearing loss patients. However, high MHR values may be correlated with a poor prognosis. Furthermore, numerous researches about the relationship between MHR and cardiovascular disease have been reported recently. There is a relationship between the elevation of MHR and presence and severity of isolated coronary artery ectasia [19], asymptomatic organ damage in patients with primary hypertension [20], slow coronary flow [21], cardiac syndrome X [22], metabolic syndrome [23], infective endocarditi [24] and saphenous vein graft disease in coronary bypass [25]. It also has been reported to be related to cardiovascular outcomes in patients with chronic kidney disease [26], arterial fibrillation recurrence after cryoballoon based catheter ablation [27], mortality and arterial fibrillation recurrence after coronary artery bypass grafting [28], and contrast induced nephropathy in acute ST-segment elevation myocardial infarction (STEMI) patients treated with primary PCI [29]. Moreover, there are some researches about the recent evidence suggested that in patients with STEMI, the admission MHR values were independently correlated with poor prognosis as major adverse cardiovascular events and mortality [30-32]. Besides procedural problems related to PCI, up to now, several studies have consistently demonstrated that MHR is a reliable factor for inflammation and anti-oxidation and is associated with stent thrombosis in STEMI patients [33-37]. The exact mechanisms underlying the association between MHR and clinical outcomes after PCI are unknown. As previous studies have shown, atherosclerosis activates the adhesion molecule of endothelium cells and binds to mononuclear cells. When monocytes are bound to the arterial endothelium, they enter the endothelial lining and enter the intima to form foam cells. Activated monocytes interact with damaged or activated endothelium, affect lesional macrophage accumulation and plaque macrophage content [38], which lead to overexpression of some pro–inflammatory mediator molecules including monocyte chemotactic protein 1 ligand, vascular cell adhesion molecule 1, and intercellular adhesion molecule 1. Thereafter, monocytes differentiate into the macrophages that eventually ingest oxidized LDL-C and form the initial foamy cells [39]. The HDL-C molecules counteract macrophage migration and remove cholesterol debris from those cells. HDL-C suppresses hematopoietic stem cells and multipotent progenitor cell proliferation in the hematopoietic system [40]. HDL-C inhibits monocyte, leading to mechanisms that act as inhibit activated monocyte adhesion, spreading, and controlling the proliferation of progenitor cells that differentiate to monocytes [41, 42]. Besides its anti-inflammatory and anti-oxidative effects, HDL also promotes vasodilatation by increasing the expression of endothelial nitric oxide synthase [43].Therefore, monocytes exert a pro-inflammatory and pro-oxidant effects, but HDL-C functions as a reversal factor during these processes.

Study limitations

Nonetheless, there are some limitations of this study. Firstly, the present study is retrospectively designed and is a single-center experience study. Secondly, a relatively small sample size is another limitation. Third, additional inflammation and thrombosis markers such as CRP, fibrinogen, plasma coagulation factors, or erythrocyte sedimentation rate were not evaluated in the present study.

Conclusion

MHR can be calculated from simple blood analysis and could make a adverse prognostic value in CAD patients undergoing PCI.
  43 in total

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  10 in total

1.  Indole-3-acetic acid correlates with monocyte-to-high-density lipoprotein (HDL) ratio (MHR) in chronic kidney disease patients.

Authors:  Valeria Cernaro; Vincenzo Calabrese; Saverio Loddo; Roberta Corsaro; Vincenzo Macaione; Valentina Teresa Ferlazzo; Rosalia Maria Cigala; Francesco Crea; Concetta De Stefano; Guido Gembillo; Adolfo Romeo; Elisa Longhitano; Domenico Santoro; Michele Buemi; Salvatore Benvenga
Journal:  Int Urol Nephrol       Date:  2022-02-11       Impact factor: 2.266

2.  A Correlation Between Monocyte to Lymphocyte Ratio and Long-Term Prognosis in Patients With Coronary Artery Disease After PCI.

Authors:  Feng-Hua Song; Ying-Ying Zheng; Jun-Nan Tang; Wei Wang; Qian-Qian Guo; Jian-Chao Zhang; Yan Bai; Kai Wang; Meng-Die Cheng; Li-Zhu Jiang; Ru-Jie Zheng; Lei Fan; Zhi-Yu Liu; Xin-Ya Dai; Zeng-Lei Zhang; Xiao-Ting Yue; Jin-Ying Zhang
Journal:  Clin Appl Thromb Hemost       Date:  2021 Jan-Dec       Impact factor: 2.389

3.  The Predictive Value of Monocyte Count to High-Density Lipoprotein Cholesterol Ratio in Restenosis After Drug-Eluting Stent Implantation.

Authors:  Jing Nan; Shuai Meng; Hongyu Hu; Ruofei Jia; Ce Chen; Jianjun Peng; Zening Jin
Journal:  Int J Gen Med       Date:  2020-11-25

4.  Adjustment of the GRACE Risk Score by Monocyte to High-Density Lipoprotein Ratio Improves Prediction of Adverse Cardiovascular Outcomes in Patients With Acute Coronary Syndrome Undergoing Percutaneous Coronary Intervention.

Authors:  Xiaoteng Ma; Kangning Han; Lixia Yang; Qiaoyu Shao; Qiuxuan Li; Zhijian Wang; Yueping Li; Fei Gao; Zhiqiang Yang; Dongmei Shi; Yujie Zhou
Journal:  Front Cardiovasc Med       Date:  2022-01-26

5.  Risk Factors Predisposing to Angina in Patients with Non-Obstructive Coronary Arteries: A Retrospective Analysis.

Authors:  Oskar Wojciech Wiśniewski; Franciszek Dydowicz; Szymon Salamaga; Przemysław Skulik; Jacek Migaj; Marta Kałużna-Oleksy
Journal:  J Pers Med       Date:  2022-06-27

6.  Monocyte to high-density lipoprotein ratio predict long-term clinical outcomes in patients with coronary heart disease: A meta-analysis of 9 studies.

Authors:  Hong-Tao Liu; Zhong-Hui Jiang; Zhong-Bin Yang; Xiao-Qing Quan
Journal:  Medicine (Baltimore)       Date:  2022-08-19       Impact factor: 1.817

7.  High ratio of monocytes to high-density lipoprotein is associated with hemorrhagic transformation in acute ischemic stroke patients on intravenous thrombolysis.

Authors:  Lingfan Xia; Tong Xu; Zhenxiang Zhan; Yucong Wu; Ye Xu; Yungang Cao; Zhao Han
Journal:  Front Aging Neurosci       Date:  2022-08-16       Impact factor: 5.702

8.  Investigating the relationship between the severity of coronary artery disease and inflammatory factors of MHR, PHR, NHR, and IL-25.

Authors:  Hamed Manoochehri; Reza Gheitasi; Mona Pourjafar; Razieh Amini; Amirhossein Yazdi
Journal:  Med J Islam Repub Iran       Date:  2021-07-01

9.  Monocyte-to-albumin ratio as a novel predictor of long-term adverse outcomes in patients after percutaneous coronary intervention.

Authors:  Zeng-Lei Zhang; Qian-Qian Guo; Jun-Nan Tang; Jian-Chao Zhang; Meng-Die Cheng; Feng-Hua Song; Zhi-Yu Liu; Kai Wang; Li-Zhu Jiang; Lei Fan; Xiao-Ting Yue; Yan Bai; Xin-Ya Dai; Ru-Jie Zheng; Ying-Ying Zheng; Jin-Ying Zhang
Journal:  Biosci Rep       Date:  2021-07-30       Impact factor: 3.840

Review 10.  HDL Dysfunctionality: Clinical Relevance of Quality Rather Than Quantity.

Authors:  Arianna Bonizzi; Gabriele Piuri; Fabio Corsi; Roberta Cazzola; Serena Mazzucchelli
Journal:  Biomedicines       Date:  2021-06-25
  10 in total

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