Literature DB >> 32953811

Association of ABO blood groups and non-culprit plaque characteristics in acute coronary syndrome: an optical coherence tomography study.

Liping Sun1,2, Xiling Zhang1,2, Rong Sun1,2, Lin Lin1,2, Lulu Li1,2, Yinchun Zhu1,2, Yan Wang1,2, Bo Yu1,2.   

Abstract

BACKGROUND: Cardiovascular disease (CVD) poses a serious threat to human health. Research shows that ABO blood groups, especially non-O blood types, are closely related to the incidence of cardiovascular diseases (CVDs). This study aimed to determine the associations of blood types with non-culprit coronary plaque characteristics using optical coherence tomography (OCT).
METHODS: A total of 257 acute coronary syndrome (ACS) patients (average age, 59.39±10.08 years, 80% male) who underwent OCT of 3 vessels were identified. Subjects were divided into 2 groups: the O blood group (71 patients with 121 plaques) and the non-O group (186 patients with 329 plaques). The non-culprit coronary plaque features of the two groups were compared using OCT.
RESULTS: The non-type O group had larger lipid arcs, thinner fibrous caps, and a greater number of thin-cap fibro atheromas (TCFAs). The type A, B, and AB blood groups had larger lipid arcs than the type O blood group, as well as thinner fibrous caps and more TCFAs. The type A blood group had thinner fibrous caps and a greater number of TCFAs than the type B and AB blood groups.
CONCLUSIONS: ACS patients with type non-O blood had more non-culprit plaques. Patients with type A blood, in particular, had more vulnerable characteristics than those with type O blood. 2020 Annals of Translational Medicine. All rights reserved.

Entities:  

Keywords:  ABO blood groups; Acute coronary syndrome (ACS); non-culprit plaque; optical coherence tomography (OCT); plaque characteristics

Year:  2020        PMID: 32953811      PMCID: PMC7475499          DOI: 10.21037/atm-20-5381

Source DB:  PubMed          Journal:  Ann Transl Med        ISSN: 2305-5839


Introduction

Cardiovascular disease (CVD) poses a serious threat to human health, with extremely high global morbidity, mortality, and disability rates (1). In 2017, approximately 17.8 million lives were lost to CVD worldwide (2). Recent research has suggested that CVD is a growing health concern, especially in developing countries, which account for almost 80% of CVD-related mortality globally (3). The pathogenesis of CVD is much disputed, although it is known to be related to many factors. Over the last century, the relationship between ABO blood type and CVD has drawn considerable attention (4,5). In the 1990s, patients with type A blood were found to be more susceptible to CVD, while those with type O blood were less susceptible (6). Akhund et al. found a high incidence of myocardial infarction and angina among individuals with type A blood, but these conditions were relatively rare in individuals with type O blood (7). A large-scale general population study in the United States revealed ABO blood group to be significantly related the incidence of CVD, with patients with non-O blood types more likely to have CVD than patients with type O blood (8). Moreover, cross-sectional studies have indicated that non-O blood types are a risk factor for CVD complications, severity, and mortality (9-11). Previous studies mainly focused on the relationship between blood type and the characteristics of culprit coronary plaques, while this study focused on the relationship between different blood types and the characteristics of non-culprit coronary plaques, as the non-culprit lesion of coronary artery can represent the progress of coronary artery. Non-culprit lesion is relative to culprit lesion of coronary artery. It refers to all lesions in coronary artery except those that can cause ACS. ACS is often associated with multiple vascular lesions. In addition to criminal lesions with vulnerability, non-criminal Lesions also have vulnerability. In patients with ACS, MACE was found to be associated with a higher risk of major cardiac events in patients with multivessel lesion than in patients with single-vessel lesion (12). In recent years, with the development of intracoronary imaging technology, the application of CAG technology to guide the treatment of CAD, including the intervention treatment of the coronary lesion, its deficiency is more and more obvious. OCT can detect human coronary artery plaques, especially for the analysis of plaque characteristics and stability evaluation, greatly improve the diagnosis and treatment of CHD, especially ACS (13). Moreover, the advent of a new generation of OCT will not only improve scanning speed and imaging, but also assess peripheral coronary blood flow (FFR), especially in guiding the critical lesions of coronary artery lumen whether PCI treatment and assessment of microvascular blood flow, has shown great advantages, making OCT applications more extensive (14,15). In this study, we aimed to compare features of non-culprit plaques in patients with acute cardiac syndrome (ACS) with non-O and O blood types using optical coherence tomography (OCT). We present the following article in accordance with the STROBE reporting checklist (available at http://dx.doi.org/10.21037/atm-20-5381).

Methods

Study subjects

OCT images were taken from the image database of the Department of Cardiology of The Second Affiliated Hospital of Harbin Medical University. Between December, 2015, and November, 2016, 712 patients with ACS were registered. The exclusion criteria were as follows: poor OCT image quality, images only of the lesion, no native images, or single vessel disease. Non-culprit lesions were defined as untreated lesions in coronary angiography. Of the non-culprit lesions, plaques were included only when the narrow diameter was greater than 30% compared to the reference vessel on OCT (16,17). Finally, 257 ACS patients with 450 non-culprit plaques were included for analysis ().
Figure 1

Study population and categorization. A total of 712 patients were enrolled in the OCT registry of the Second Affiliated Hospital of Harbin Medical University. Among these patients, those poor quality OCT images, images of lesions only, non-native images, and single vessel disease were excluded. Finally, 257 patients with 450 non-culprit plaques were analyzed. According to their ABO blood groups, the subjects were divided into two groups: the O blood type group and the non-O blood type group. OCT, optical coherence tomography.

Study population and categorization. A total of 712 patients were enrolled in the OCT registry of the Second Affiliated Hospital of Harbin Medical University. Among these patients, those poor quality OCT images, images of lesions only, non-native images, and single vessel disease were excluded. Finally, 257 patients with 450 non-culprit plaques were analyzed. According to their ABO blood groups, the subjects were divided into two groups: the O blood type group and the non-O blood type group. OCT, optical coherence tomography. The patients’ demographic and clinical data including age, sex, comorbidity history (including hypertension, diabetes mellitus, and dyslipoproteinemia), smoking history, ABO blood type, serum lipid levels [including total cholesterol (TC), low-density lipoprotein cholesterol (LDL-C), high-density lipoprotein cholesterol (HDL-C), apoprotein A, apoprotein B, and triglycerides], and high-sensitivity C-reactive protein (hs-CRP) were collected. The diagnoses of ACS were established based on the criteria of the World Health Organization (WHO). The patients’ ABO blood types and blood biochemical indicators were determined in the Clinical Chemistry Department of our hospital. This study was approved by the Ethics Committee of The Second Affiliated Hospital of Harbin Medical University, Harbin, China. Written informed consent was obtained from all patients before their inclusion in the study. The procedures followed were in accordance with the principles of the Declaration of Helsinki (as revised in 2013).

Acquisition of OCT images

OCT measurements were made using the Time Domain M2/M3 OCT System Operating Platform (SaintJude Medical, Westford, MA, USA). The guide wires used for OCT detection were from LightLab and St. Jude Medical. OCT-specific operating procedures were performed as previously described (18,19). Briefly, the frequency-domain system included a 2.7-F OCT catheter, which was introduced distal to the damage; as the blood was cleared, the imaging catheter was introduced automatically, and the image was acquired. In the time-domain system, an occlusion balloon was used to inflate the proximal damage at 0.4–0.6 atm. The guide wire was then automatically pulled back, and the image was acquired. Whole images were stored for later analysis.

Analysis of OCT images

Plaques in OCT images were divided into fibrous and lipid plaques. Fibrous plaques were characterized by a uniform signal, high intensity, and weak attenuation. Lipid plaques displayed diffuse borders with low signals as well as strong attenuation regions. Lipid-rich plaques included those with a lipid arc (LA) of >90° and fibrous cap thickness (FCT) of <120 µm (20-22). The LA, lipid length (LL), and FCT of the lipid-rich plaques were measured. The LA was measured using a cross-section at each 1-mm interval, and the mean and maximum values were calculated; LL was measured using the longitudinal view; FCT was obtained using the average of three measurements at the thinnest section of the lipid-rich plaque. Thin-cap fibro atheromas (TCFAs), lipid-rich patches with a FCT of <65 µm, were identified from the OCT images (23). Macrophage infiltration was displayed as highly reflective region, with strongly attenuated point-like or banded structures, and often formed radial light and shadows after a high-signal point-like area (). Microchannels with diameters of 50 to 300 µm had signal-poor intensity (). Cholesterol crystals presented as thin and linear structures with high signal intensity and were usually located on the fibrous cap or necrotic core of plaques (). Plaque rupture in OCT was a continuous interruption of the fibrous cap accompanied by a ruptured cavity (). Calcification manifested as a high-signal area with sharp edges (). Thrombi appeared as irregular masses bonding with the facial part of the lumen or drifting in the lumen () (24-27). The contents of macrophage infiltration, micro channels, plaque disruption, cholesterol crystals, and calcifications, as well as thrombi, were qualitatively analyzed. OCT image analysis was performed by two professional technicians using LightLab Imaging. When disagreements arose between the two analysts, the opinion of a third professional technician was sought to achieve a consensus.
Figure 2

Representative OCT images. (A) Macrophage infiltration was defined as signal-rich intensity with heterogeneous backward shadows in a plaque (arrows); (B) microchannels were signal-poor intensity with diameters of 50 to 300 µm (arrow); (C) cholesterol crystals were thin and linear regions of high intensity within a lipid plaque (arrow); (D) plaque rupture was a continuous interruption of the fibrous cap accompanied by a ruptured cavity(arrow); (E) calcification was an area with a poor signal intensity and a sharp border identified inside a plaque (arrow); (F) intracoronary thrombus appeared as an irregular mass attached to the surface of the lumen or floating in the lumen (arrow). OCT, optical coherence tomography.

Representative OCT images. (A) Macrophage infiltration was defined as signal-rich intensity with heterogeneous backward shadows in a plaque (arrows); (B) microchannels were signal-poor intensity with diameters of 50 to 300 µm (arrow); (C) cholesterol crystals were thin and linear regions of high intensity within a lipid plaque (arrow); (D) plaque rupture was a continuous interruption of the fibrous cap accompanied by a ruptured cavity(arrow); (E) calcification was an area with a poor signal intensity and a sharp border identified inside a plaque (arrow); (F) intracoronary thrombus appeared as an irregular mass attached to the surface of the lumen or floating in the lumen (arrow). OCT, optical coherence tomography.

Angiographic analysis

Coronary angiograms were analyzed by two senior angiographers using Offline Quantitative Coronary Angiography Software (Quantcor QCA 5.0). Along with the reference diameter and minimum lumen diameter, the stenosis diameter, lesion location, and lesion length were also measured. The images were simultaneously analyzed independently by two analysts. When disagreements arose during the analysis, the opinion of a third analyst was sought to achieve a consensus.

Statistical analyses

The D’Agostino-Pearson test was used to determine the normality of the distribution of continuous variables. Continuous variables were expressed as mean ± SD. Categorical variables were expressed as percentages or numbers. Chi-squared and Student’s t-tests were used to compare continuous and categorical variables between blood type groups. Analysis of variance (ANOVA) and chi-squared tests were used to compare continuous and categorical variables among three blood groups (types A, B, and AB). The Bonferroni correction was applied for multiple hypothesis tests among the three groups. Non-normally distributed measurement data were described as medians. Comparisons between groups were made using the Kruskal-Wallis test. The important factors were included into the logistic regression analysis to determine factors associated with the incidence of TCFA. One-tailed P values <0.05 were considered to represent statistical significance. All data were analyzed using SPSS 20.0 software (International Business Machines Corporation, Armonk, New York, USA). The sample size was estimated using PASS software (NCSS Limited Liability Company, Kaysville, Utah, USA). The significance level was set at α=0.05 and the test efficiency power was 0.08. The sample size was calculated based on two independent samples t-tests and corrected with the pooled variance method. The minimum sample size (n=105, 35 cases in the control group and 70 cases in the experimental group) was obtained. In total, 71 patients with 121 plaques were included in the O blood type group and 186 patients with 329 plaques were included in the non-O blood type group, which comprised sufficient numbers according to our power calculation.

Results

Baseline clinical features

displays the baseline features and laboratory parameters. There were 186 ACS patients with non-O blood types and 71 subjects with type O blood. The non-O blood type group was significantly younger than the type O blood group (61.8±9.4 versus 58.5±10.2; P=0.016). No significant differences were found between groups with respect to other baseline clinical features.
Table 1

Baseline clinical characteristics

VariablesO blood groupNon-O blood groupsP value
N71186
Age, years61.8±9.458.5±10.20.016
Male, n (%)53 (75.0)152 (82.0)0.226
Hypertension, n (%)32 (45.1)92 (49.5)0.578
Hyperlipidemia, n (%)12 (16.9)26 (14.0)0.559
Diabetes mellitus, n (%)14(19.7)30 (16.1)0.579
Smoking, n (%)37 (52.1)116 (62.4)0.156
Types of ACS, n (%)0.068
   UAP30 (42.3)64 (34.4)
   Non-STEMI6 (8.5)6 (3.2)
   STEMI35 (49.2)116 (62.4)
Total-chol, mg/dL167.2±44.9172.0±40.80.468
HDL-chol, mg/dL45.0±10.845.5±11.50.776
LDL-chol, mg/dL105.6±33.1111.0±37.10.344
TG, mg/dL165.9±104.4149.5±69.90.186
apo-A, mg/dL126.5±26.9126.5±24.90.990
apo-B, mg/dL87.6±25.092.5±27.20.245
hs-CRP, mg/L6.7±5.46.4±5.20.732
HbA1c, %8.0±1.98.7±1.10.157

ACS, acute coronary syndrome; UAP, unstable angina pectoris; Non-STEMI, non-ST segment elevation myocardial infarction; STEMI, ST segment elevation myocardial infarction; Total-chol, total cholesterol; HDL-chol, high-density lipoprotein; LDL-chol, low-density lipoprotein; TG, triglycerides; apo-A, apoprotein A; apo-B, apoprotein B; hs-CRP, high-sensitivity C-reactive protein; HbA1c, hemoglobin A1c.

ACS, acute coronary syndrome; UAP, unstable angina pectoris; Non-STEMI, non-ST segment elevation myocardial infarction; STEMI, ST segment elevation myocardial infarction; Total-chol, total cholesterol; HDL-chol, high-density lipoprotein; LDL-chol, low-density lipoprotein; TG, triglycerides; apo-A, apoprotein A; apo-B, apoprotein B; hs-CRP, high-sensitivity C-reactive protein; HbA1c, hemoglobin A1c.

Angiographic findings

displays the characteristics of the angiographic findings. A total of 450 non-culprit plaques were detected in 257 ACS patients. Subjects with non-O blood types had 329 plaques, and those with blood type O had 121 plaques. In the patients with blood type O, 33.9% of the plaques were on the left anterior descending artery (LAD), 29.8%were on the left circumflex artery (LCX), and 36.4% were on the right coronary artery (RCA). In the patients with non-O blood groups, 31.0% of the plaques were located in the LAD, 24.6% were located in the LCX, and 44.4% were in the RCA. No significant differences existed between the groups with respect to the reference diameter, minimum diameter, or percent diameter of the stenoses.
Table 2

Angiographic findings

VariablesO blood groupNon-O blood groupsP value
No. of plaques121329
Vessel, n (%)0.290
   LAD41 (33.9)102 (31.0)
   LCX36 (29.8)81 (24.6)
   RCA44 (36.4)146 (44.4)
Plaque location, n (%)0.063
   Proximal33 (27.3)125 (38.0)
   Middle44 (36.4)115 (35.0)
   Distal44 (36.3)89 (27.0)
Lesion length, mm10.7±3.610.8±4.20.787
Minimum lumen diameter, mm1.44±0.521.49±0.510.423
Reference diameter, mm2.78±0.722.83±0.600.496
Diameter stenosis, %48.8±12.248.9±12.20.936

LAD, left anterior descending artery; LCX, left circumflex; RCA, right coronary artery.

LAD, left anterior descending artery; LCX, left circumflex; RCA, right coronary artery.

OCT findings

shows the plaque characteristics identified by OCT. No statistically significant differences existed in the incidence of lipid-rich plaques among subjects with non-O and O blood types (56.8% vs. 60.3%, P=0.192), or in the prevalence of disruptions, calcifications, macrophage accumulation, microvessels, cholesterol crystals, or thrombi. However, the non-O blood type group had significantly more TCFAs than the O blood type group (24.3% vs. 5.0%; P<0.001). Quantitative OCT findings showed that, compared with the plaques of type O blood subjects, those of non-O type subjects had larger lipid arcs (maximum lipid arc: 288.57°±63.51° vs. 263.69°±59.40°; P=0.004), mean lipid arcs (207.01°±43.94° vs. 182.02°±39.48°; P<0.001),and thinner fibrous caps (68.7±14.2 vs. 84.0±16.4; P<0.001). Lipid length was not significantly different between the non-O and O type subjects (11.31±4.91 vs. 10.89±4.02; P=0.521).
Table 3

OCT analysis

VariablesO blood groupNon-O blood groupsP value
No. of plaques121329
Lipid-rich plaques, n (%)73 (60.3)187 (56.8)0.192
Lipid length, mm10.89±4.0211.31±4.910.521
Maximum lipid arc (°)263.69±59.4288.57±63.510.004
Mean lipid arc (°)182.02±39.48207.01±43.94<0.001
Fibrous cap thickness, μm84.0±16.468.7±14.2<0.001
TCFA, n (%)6 (5.0)80 (24.3)<0.001
Disruption, n (%)10 (8.3)40 (12.2)0.310
Calcification, n (%)61 (50.4)153 (46.5)0.523
Macrophage accumulation, n (%)51 (42.1)168 (51.1)0.111
Microvessels, n (%)25 (20.7)95 (28.9)0.092
Cholesterol crystal, n (%)78 (64.5)228 (69.3)0.362
Thrombus, n (%)7 (5.9)20 (6.1)1.000

OCT, optical coherence tomography; TCFA, thin-cap fibroatheroma.

OCT, optical coherence tomography; TCFA, thin-cap fibroatheroma.

Univariate and multivariate logistic analysis

To test our hypothesis that blood groups work as a predictor of TCFAs, univariate and multivariate logistic analyses were carried out (). Univariate analysis revealed age [OR: 0.970 (95% CI: 0.943–0.998), P=0.033], hyperlipidemia [OR: 2.094 (95% CI: 1.018–4.308)], total cholesterol [OR: 1.012 (95% CI: 1.005–1.019)], LDL-C [OR: 1.016 (95% CI: 1.007–1.025)], and non-O blood group [OR: 11.891 (95% CI: 3.599–39.289)] to be indicators of TCFAs. After multivariate analysis, non-O blood group [OR: 9.421 (95% CI: 2.727–32.542)] was the only predictor of TCFA.
Table 4

Logistic regression analysis of thin-cap fibroatheromas

VariablesUnivariateMultivariate
OR (95% CI)P valueOR (95% CI)P value
Age0.970 (0.943–0.998)0.0330.995 (0.963–1.027)0.754
Sex (male)2.223 (0.987–5.005)0.054
Diabetes mellitus0.805 (0.374–1.734)0.580
Hypertension0.974 (0.558–1.701)0.926
Hyperlipidemia2.094 (1.018–4.308)0.0441.262 (0.481–3.315)0.636
Smoking1.098 (0.621–1.942)0.747
Total-chol1.012 (1.005–1.019)0.0010.996 (0.974–1.018)0.705
LDL-C1.016 (1.007–1.025)<0.0011.019 (0.994–1.044)0.139
hs-CRP1.020 (0.965–1.078)0.488
Non-O blood groups11.891 (3.599–39.289)<0.0019.421 (2.727–32.542)<0.001

Total-chol, total cholesterol; LDL-C, low-density lipoprotein; hs-CRP, hypertensive C-reactive protein.

Total-chol, total cholesterol; LDL-C, low-density lipoprotein; hs-CRP, hypertensive C-reactive protein.

OCT subgroup analysis of different blood types

The OCT subgroup analyses of various blood types are shown in . Subjects with types A, B, and AB blood were compared with those with type O blood. The A blood type group had larger lipid arcs (maximum lipid arc: 292.89°±59.75° vs. 263.69°±59.40°; P=0.004), a larger mean lipid arc (221.55°±57.73° vs. 182.02±39.48°; P<0.001), thinner fibrous caps (64.7±14.3 vs. 84.0±16.4; P<0.001), and a greater number of TCFAs (30.5% vs. 5.0%; P<0.001). The B blood type group also had larger lipid arcs (maximum lipid arc: 289.69°±70.90° vs. 263.69°±59.40°; P=0.025), a larger mean lipid arc (207.24°±35.52° vs. 182.02°±39.48°; P=0.002), thinner fibrous caps (70.0±13.8 vs. 84.0±16.4; P<0.001), and a greater number of TCFAs (21.2% vs. 5.0%; P=0.001). The same results were obtained for the AB blood group, which also had larger lipid arcs (maximum lipid arc: 285.44°±52.85° vs. 263.69°±59.40°; P=0.047), a larger mean lipid arc (203.62°±46.33° vs. 182.02°±39.48°; P=0.006), thinner FCT (74.2±12.3 vs. 84.0±16.4; P=0.001), and a greater number of TCFAs (14.3% vs. 5.0%; P=0.039). Among the non-O blood type subjects, the type A group had thinner fibrous caps than the B and AB blood type groups (64.7±14.3 vs. 70.0±13.8 vs. 74.2±12.3; P<0.001) and a greater number of TCFAs (30.5% vs. 21.2% vs. 14.3%; P<0.001).
Table 5

Comparison of OCT subgroup analysis of different blood types

VariablesO blood groupA blood groupB blood groupAB blood groupP1P2P3P4
No. of plaques12113117028
Lipid-rich plaques, n (%)73 (60.3)66 (50.4)99 (58.2)22 (78.6)0.1460.4480.1870.021
Lipid length, mm10.89±4.0210.43±4.7811.72±4.9312.08±5.020.5320.2400.2560.184
Maximum lipid arc (°)263.69±59.44292.89±59.75289.69±70.90285.44±52.850.0040.0250.0470.459
Mean lipid arc (°)182.02±39.48221.55±57.73207.24±35.52203.62±46.33<0.0010.0020.0060.486
Fibrous cap thickness, μm84.0±16.464.7±14.370.0±13.874.2±12.3<0.001<0.0010.001<0.001
TCFA, n (%)6 (5.0)40 (30.5)36 (21.2)4 (14.3)<0.0010.0010.039<0.001
Disruption, n (%)10 (8.3)10 (7.6)24 (14.1)6 (21.4)1.0000.1420.0820.068
Calcification, n (%)61 (50.4)61 (46.6)82 (48.2)10 (35.7)0.6140.7230.2080.469
Macrophage accumulation, n (%)51 (42.1)54 (41.2)96 (56.5)18 (64.3)0.8990.0180.0380.051
Microvessels, n (%)25 (20.7)43 (32.8)40 (23.5)12 (42.9)0.0340.6690.0270.063
Cholesterol crystal, n (%)78 (64.5)85 (64.9)119 (70.0)24 (85.7)1.0000.3730.0410.091
Thrombus, n (%)7 (5.9)8 (6.1)10 (5.9)2 (7.1)1.0001.0000.6770.967

OCT, optical coherence tomography; TCFA, thin-cap fibroatheroma; P1, P value between O blood group and A blood group; P2, P value between O blood group and B blood group; P3, P value between O blood group and B blood group; P4, P value between A, B and AB blood group.

OCT, optical coherence tomography; TCFA, thin-cap fibroatheroma; P1, P value between O blood group and A blood group; P2, P value between O blood group and B blood group; P3, P value between O blood group and B blood group; P4, P value between A, B and AB blood group.

Discussion

Compared to the type O group, the non-O type group’s plaques were more vulnerable, with larger lipid arcs, thinner fibrous caps, and more TCFAs. In multiple logistic regression analysis, non-O blood type was found to be an independent predictor of TCFAs in non-culprit lesions. To our knowledge, this study is the first to compare non-culprit coronary plaque characteristics among different blood types in ACS patients using OCT. Plaques based on larger lipid cores and thinner fibrous caps are at high risk of rupture and are considered vulnerable (28,29). The fracture of fragile plaques, together with the resulting thrombus, constitute the major causes of ACS. In recent years, non-culprit lesions have been extensively researched. Based on the autopsy results of patients who died of acute myocardial infarction, Mauriello et al. found that vulnerable plaques were present in both culprit and non-culprit lesions (30). Kato et al. reported similar results in a study of patients with ACS using intravascular ultrasound (IVUS) with coronary angiography, finding that the vulnerable plaques in non-culprit lesions were stronger than those in patients with stable angina pectoris (31). In the present study, non-culprit ACS plaques in subjects with non-O blood types had larger lipid arcs and thinner fibrous caps than those in subjects with type O blood. In subgroup analysis, blood types A, B, and AB subjects had larger lipid arcs as well as thinner fibrous caps compared to blood type O subjects. These findings are consistent with the pathological characteristics of plaque weakness. Our study is pioneering in that it analyzed detailed plaque characteristics in non-culprit lesions in patients with ACS of non-O blood types. Patients with non-O blood types had more TCFAs than those with type O blood. Studies indicated that TCFAs are prone to plaque rupture, resulting in ACS (28,32). Tian et al. reported mild and moderate stenosis to have a higher number of TCFAs compared to severe stenosis, and both culprit and non-culprit lesions were characterized by TCFAs (33). In one multi center prospective study, 697 patients with ACS who underwent virtual histology intravascular ultrasound (VH-IVUS) of three vessels were recruited, and the relationship between non-culprit lesions and major adverse cardiac events (MACE) was assessed. The study showed that non-culprit lesions were associated with MACE, mostly because of TCFAs (34). Kubo et al. showed that TCFAs were more common in non-culprit lesions inpatients with ST-segment elevated myocardial infarction (STEMI) than in unstable patients with angina pectoris (35). These data suggested that TCFA may be an indicator of vulnerability and rupture. In the present study, we found that subjects with non-O blood types had more TCFAs than type O subjects. In subgroup analysis, the type A, B, and AB blood groups all had more TCFAs than the type O group. Further, patients with type A blood had more TCFAs than patients with types B and AB. Therefore, type A blood may be a potential risk factor for coronary events; however, more exploration is needed to verify these findings. TCFAs had a notably higher incidence in subjects with non-O blood types, especially in type A subjects. Epidemiological studies discovered that ABO blood type, especially non-O types, had relevance to CVD. He et al. found that ABO blood type had significant relevance to CVD, and after more than 20 years’ follow-up of 62,073 women and 27,428 men, non-O type subjects had a higher incidence of CVD than those with type O (8). Zhang et al. conducted a 24.6-month follow-up study in a Chinese Han population and showed that type non-O blood increased the risk of cardiovascular events. Non-Oblood types were associated with higher incidences of CVD and myocardial infarction as well as higher Gensini scores than type O (36). Celebi et al. studied 212 patients with coronary angiography and determined coronary collateral circulation to be associated with blood type and the incidence of benign collateral circulation to be significantly higher than that of the adverse collateral circulation in patients with type O blood (37). In a microscopic analysis of plaques, Huang et al. studied 392 culprit plaques in patients with ACS using OCT and found that O types had more and thicker fibrous caps and fewer TCFAs than non-O types (38). These results are consistent with our findings regarding the association between blood type and non-culprit plaques. Furthermore, our study found that non-O blood types, especially type A, were associated with greater lipid arcs than type O blood. Previous studies have suggested that plaques in non-O blood type patients progress faster than those in patients with type O blood. The mechanisms underlying the relationship between blood type and CVD are less clear. Chen et al. demonstrated that non-O type subjects had higher cholesterol levels, so they supposed that cholesterol levels may be a mediator between the ABO blood type and CVD (39). Timur et al. studied 206 patients with PCI, discovering that ABO blood type was closely related to platelet function, which affects platelet aggregation in the pathophysiology of myocardial infarction (40). Gong et al. investigated 3,806 patients with CVD identified using coronary angiography. They reported that non-O blood groups were significantly associated with CVD and myocardial infarction and had elevated levels of hs-CRP. Moreover, non-O blood groups were also found to possibly influence hs-CRP levels, thereby increasing the risks of CVD and myocardial infarction (41). Unlike in the previous studies, the non-O blood group patients in our study were younger than the O blood group patients, which suggest that, in the same state, the progression of CVD may be faster in patients with non-O blood types. There was no significant difference in serum cholesterol or hs-CRP levels between patients with non-O type vs. O type blood. These results do not support the mechanism previously proposed; instead, they suggest the mechanism underlying the relationship between ABO blood group and CVD is complicated and should be further explored. In summary, the association between CVD and ABO blood type is complex. ABO blood types might, through diverse pathological processes such as atherosclerosis, plaque rupture, and thrombosis, promote the incidence of CVD and even ACS. ADAMTS7, which is at the ABO locus, is relevant to coronary atherosclerosis and myocardial infarction (42). Another study found that O blood type was correlated with reduced glycosyltransferase activity and FVIII-VWF levels in the circulation, lowering the risks of CVD and myocardial infarction (43). Genetic studies have shown that the ABO blood group locus is associated with interleukin-10 (IL-10), p-selectin, and thromboxane B2, the formation of which accelerates the process of arteriosclerosis (44,45). In the present study, OCT was used to determine that non-O type patients had more vulnerable plaque characteristics than type O patients in ACS. Non-O type subjects were also found to harbor more TCFAs than type O subjects, and non-O type blood was shown to be an independent indicator of TCFAs in non-culprit ACS lesions. Blood group can be easily determined and might useful in identifying vulnerable plaques in high-risk patients. Nevertheless, more studies are needed to clarify a potential system to verify our conclusions.

Limitations

Our study has several limitations. First, it was a single-center study, and therefore may be subject to selection bias. For this reason, we applied strict inclusion and exclusion criteria, and our findings should be validated in multi-center studies. Second, we only considered general clinical laboratory indicators such as serum lipid levels, hs-CRP, and glycated hemoglobin. In future research, the serum levels of factor VIII and von Willebrand factor (FVIII-VWF) and other coagulative factors that previous studies have indicated may be related to CVD will be analyzed. Finally, owing to the penetration depth limitations of OCT, plaque vulnerability could not be further evaluated.

Conclusions

Non-O type ACS subjects had more vulnerable non-culprit plaque characteristics and TCFAs than type O subjects according to OCT. Non-O type blood is considered to be a useful predictor of TCFAs in non-culprit ACS plaques. Among patients with non-O blood types, the type A blood group displayed more vulnerable characteristics than the type B and AB blood groups. Further studies of risk management and targeted therapies for various ABO blood groups are needed. The article’s supplementary files as
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