Literature DB >> 32682451

Quantitative assessment of coronary plaque volume change related to triglyceride glucose index: The Progression of AtheRosclerotic PlAque DetermIned by Computed TomoGraphic Angiography IMaging (PARADIGM) registry.

Ki-Bum Won1,2, Byoung Kwon Lee3, Hyung-Bok Park4,5, Ran Heo4,6, Sang-Eun Lee4,7, Asim Rizvi8,9, Fay Y Lin8, Amit Kumar8, Martin Hadamitzky10, Yong-Jin Kim11, Ji Min Sung2,4, Edoardo Conte12, Daniele Andreini12, Gianluca Pontone12, Matthew J Budoff13, Ilan Gottlieb14, Eun Ju Chun15, Filippo Cademartiri16, Erica Maffei17, Hugo Marques18, Pedro de Araújo Gonçalves18, Jonathon A Leipsic19, Sanghoon Shin7, Jung Hyun Choi20, Renu Virmani21, Habib Samady22, Kavitha Chinnaiyan23, Gilbert L Raff23, Peter H Stone24, Daniel S Berman25, Jagat Narula26,27, Leslee J Shaw8, Jeroen J Bax28, James K Min8, Hyuk-Jae Chang29,30.   

Abstract

BACKGROUND: The association between triglyceride glucose (TyG) index and coronary atherosclerotic change remains unclear. We aimed to evaluate the association between TyG index and coronary plaque progression (PP) using serial coronary computed tomography angiography (CCTA).
METHODS: A total of 1143 subjects (aged 60.7 ± 9.3 years, 54.6% male) who underwent serial CCTA with available data on TyG index and diabetic status were analyzed from The Progression of AtheRosclerotic PlAque DetermIned by Computed TomoGraphic Angiography IMaging (PARADIGM) registry. PP was defined as plaque volume (PV) (mm3) at follow-up minus PV at index > 0. Annual change of PV (mm3/year) was defined as PV change divided by inter-scan period. Rapid PP was defined as the progression of percent atheroma volume (PV divided by vessel volume multiplied by 100) ≥ 1.0%/year.
RESULTS: The median inter-scan period was 3.2 (range 2.6-4.4) years. All participants were stratified into three groups based on TyG index tertiles. The overall incidence of PP was 77.3%. Baseline total PV (group I [lowest]: 30.8 (0.0-117.7), group II: 47.2 (6.2-160.4), and group III [highest]: 57.5 (8.4-154.3); P < 0.001) and the annual change of total PV (group I: 5.7 (0.0-20.2), group II: 7.6 (0.5-23.5), and group III: 9.4 (1.4-27.7); P = 0.010) were different among all groups. The risk of PP (odds ratio [OR] 1.648; 95% confidence interval [CI] 1.167-2.327; P = 0.005) and rapid PP (OR 1.777; 95% CI 1.288-2.451; P < 0.001) was increased in group III compared to that in group I. TyG index had a positive and significant association with an increased risk of PP and rapid PP after adjusting for confounding factors.
CONCLUSION: TyG index is an independent predictive marker for the progression of coronary atherosclerosis. Clinical registration ClinicalTrials.gov NCT02803411.

Entities:  

Keywords:  Atherosclerosis; Coronary artery disease; Coronary computed tomography angiography; Triglyceride glucose index

Mesh:

Substances:

Year:  2020        PMID: 32682451      PMCID: PMC7368987          DOI: 10.1186/s12933-020-01081-w

Source DB:  PubMed          Journal:  Cardiovasc Diabetol        ISSN: 1475-2840            Impact factor:   9.951


Background

Coronary artery disease (CAD) is a leading cause of morbidity and mortality worldwide [1]. It is important to understand the coronary atherosclerotic progression for the prevention of adverse cardiovascular (CV) events. Numerous previous studies have suggested the significant role of insulin resistance (IR) in the development of CAD [2-4]. Recently, the triglyceride glucose (TyG) index has been suggested to be a reliable surrogate marker of IR [5-7]. Several cross-sectional studies have reported that TyG index is associated with CAD, especially with coronary artery calcification (CAC) [8, 9]. However, longitudinal data on the association between TyG index and coronary plaque progression (PP) is scarce. Coronary computed tomography angiography (CCTA) is a well-established non-invasive imaging tool with high diagnostic performance for coronary atherosclerosis and predictive value for adverse CV events [10-13]. Therefore, we aimed to examine the association between baseline TyG index and coronary PP using serial CCTA.

Methods

Study design and populations

The Progression of AtheRosclerotic PlAque DetermIned by Computed TomoGraphic Angiography IMaging (PARADIGM) is a prospective, international, and multicenter observational registry designed to evaluate associations between clinical variables and coronary atherosclerotic changes using serial CCTA [14]. Between 2003 and 2015, 2252 consecutive subjects underwent serial CCTA at 13 centers in 7 countries. Among these subjects, 1143 subjects with available information on TyG index and diabetic status were included in the present study. The characteristics of coronary plaques in all participants were categorized based on the TyG index tertile. TyG index was calculated as ln [fasting triglycerides (mg/dL) × fasting glucose (mg/dL)/2]. Diabetes was defined as treatment with oral hypoglycemic agent or insulin or fasting blood glucose (FBG) ≥ 126 mg/dL. The institutional review boards approved this study at each site.

Acquisition and interpretation of CCTA

All data acquisition and post-processing of CCTA were in accordance with the Society of Cardiovascular Computed Tomography guidelines [15, 16]. CCTA was performed with a ≥ 64-detector row scanner at all centers. All datasets from each center were transferred to an offline workstation for analysis with a semi-automated plaque analysis software (QAngioCT Research Edition v2.1.9.1; Medis Medical Imaging Systems, Leiden, the Netherlands) using manual correction. Segments with diameter ≥ 2 mm were evaluated using a modified 17-segment American Heart Association model [16]. Regardless of the presence of atherosclerotic plaques, plaque volume (PV) (mm3) of every coronary segment was obtained and summated to generate total PV per patient. Coronary plaques were further classified by composition according to the pre-defined intensity cut-offs in Hounsfield units (HU) for calcified plaques (≥ 351 HU), fibrous plaques (131–350 HU), fibro-fatty plaques (31–130 HU), and necrotic cores (-30 to 30 HU) [17, 18]. For comparing longitudinal CCTA images, all baseline and follow-up coronary segments were registered together with fiduciary landmarks, including the distance from the ostia or branch vessel take-offs. PV change was defined as plaque volume at follow-up CCTA minus plaque volume at baseline CCTA. Annual change of PV (mm3/year) was defined as total PV change divided by inter-scan period. Moreover, normalized total atheroma volume (TAVnorm) (mm3) was defined as total PV divided by vessel length, multiplied by the mean participants’ vessel length. Annual change of TAVnorm (mm3/year) was defined as TAVnorm divided by the inter-scan period. While total percent atheroma volume (PAVtotal) (%) was defined as PV divided by vessel volume, multiplied by 100, annual change of PAVtotal (%/year) was defined as total PAV divided by inter-scan period, and plaque progression (PP) was defined as the difference in plaque volume between follow-up and baseline CCTA > 0. Further, rapid PP (%/year) was defined as an annual progression of PAV ≥ 1.0% [19, 20]. Representative CCTA images are presented in Fig. 1.
Fig. 1

Representative CCTA images. CCTA coronary computed tomography angiography, TyG triglyceride glucose

Representative CCTA images. CCTA coronary computed tomography angiography, TyG triglyceride glucose

Statistical analysis

Continuous variables are expressed as mean ± SD or medians and interquartile range, while categorical variables are presented as absolute values and proportions. Continuous variables were compared using an independent t test or the Mann–Whitney U-test, as appropriate and categorical variables were compared using the χ2-test or Fisher’s exact test, as appropriate. Coronary characteristics across TyG index tertiles were compared using one-way analysis of variance or the Kruskal–Wallis test for continuous variables, as appropriate. Univariate logistic regression analysis was performed to evaluate the association between clinical variables and coronary PP. Further, multivariate logistic regression analyses were performed to identify the independent impact of TyG index on coronary PP. Variables with P < 0.05 in the univariate logistic regression analysis were considered confounding variables and entered into the multivariate logistic regression models, except the individual component of TyG index. All statistical analyses were performed using the Statistical Package for the Social Sciences version 19 (SPSS, Chicago, Illinois). A P value < 0.05 was considered statistically significant for all analyses.

Results

Baseline characteristics

The mean age of the 1143 participants (624 male, 54.6%) was 60.7 ± 9.3 years. Median inter-scan period was 3.2 (range, 2.6–4.4) years. Coronary PP was observed in 883 (77.3%) participants during follow-up. The clinical characteristics of participants according to PP are presented in Table 1. Age, systolic blood pressure (BP), body mass index (BMI), serum triglyceride and FBG levels, prevalence of male sex, hypertension, diabetes, hyperlipidemia, and the use of aspirin, angiotensin-converting enzyme inhibitor (ACEI)/angiotensin receptor blocker (ARB), and statin were significantly higher in subjects with PP than in those without it. Subjects with PP had significantly lower levels of high-density lipoprotein cholesterol (HDL-C) than those without PP. TyG index values were higher in subjects with PP than in those without it (8.85 ± 0.60 vs. 8.69 ± 0.55; P < 0.001).
Table 1

Baseline characteristics

Total (n = 1143)PP (−) (n = 260)PP (+) (n = 883)P
Age, years60.7 ± 9.358.7 ± 9.661.3 ± 9.1< 0.001
Male, n (%)624 (54.6)122 (46.9)502 (56.9)0.005
Systolic BP, mmHg126.1 ± 16.6123.7 ± 16.3126.8 ± 16.60.011
Diastolic BP, mmHg77.0 ± 10.675.9 ± 11.177.3 ± 10.50.079
BMI, kg/m224.8 ± 3.024.3 ± 3.025.0 ± 3.00.002
BMI ≥ 25.0 kg/m2, n (%)493 (43.9)97 (37.5)396 (45.8)0.017
Hypertension, n (%)674 (59.0)123 (47.3)551 (62.5)< 0.001
Diabetes, n (%)319 (27.9)48 (18.5)271 (30.7)< 0.001
Hyperlipidemia, n (%)381 (33.3)69 (26.5)312 (35.4)0.008
Current smoking, n (%)213 (18.6)42 (16.2)171 (19.4)0.239
Medications, n (%)
 Aspirin555 (48.6)107 (41.2)448 (50.8)0.006
 Beta blocker353 (31.0)81 (31.2)272 (30.9)0.940
 ACEI/ARB389 (34.2)67 (25.9)332 (36.6)0.001
 Statin520 (45.5)89 (34.2)431 (49.5)< 0.001
 Insulin therapy33 (2.9)5 (2.0)28 (3.2)0.294
 Total cholesterol, mg/dL182.6 ± 38.4184.4 ± 39.6182.0 ± 38.10.393
 Triglyceride, mg/dL143.3 ± 83.1132.8 ± 73.9146.4 ± 85.40.020
 HDL-C, mg/dL48.7 ± 12.350.3 ± 12.848.2 ± 12.10.016
 LDL-C, mg/dL111.5 ± 34.1113.5 ± 34.2110.9 ± 34.00.289
 Creatinine, mg/dL1.01 ± 0.670.96 ± 0.471.01 ± 0.720.233
 FBG, mg/dL110.7 ± 35.0104.2 ± 28.6112.7 ± 36.5< 0.001
 HbA1c, %6.46 ± 1.276.26 ± 1.196.51 ± 1.280.067
 TyG index8.81 ± 0.598.69 ± 0.558.85 ± 0.60< 0.001

Values are presented as mean ± standard deviation or number (%)

ACEI angiotensin-converting enzyme inhibitor, ARB angiotensin receptor blocker, BMI body mass index, BP blood pressure, FBG fasting blood glucose, HDL-C high-density lipoprotein cholesterol, LDL-C low-density lipoprotein cholesterol, TyG triglyceride glucose

Baseline characteristics Values are presented as mean ± standard deviation or number (%) ACEI angiotensin-converting enzyme inhibitor, ARB angiotensin receptor blocker, BMI body mass index, BP blood pressure, FBG fasting blood glucose, HDL-C high-density lipoprotein cholesterol, LDL-C low-density lipoprotein cholesterol, TyG triglyceride glucose

Comparison of baseline PV and annual change of PV according to TyG index tertile

Baseline total PV (mm3) was as follows: group I [lowest]: 30.8 (0.0–117.7), group II: 47.2 (6.2–160.4), and group III [highest]: 57.5 (8.4–154.3), P < 0.001. Baseline TAVnorm values were as follows: group I, 33.0 (0.0–122.3); group II, 54.1 (7.4–192.3); and group III, 61.2 (9.5–165.6); P = 0.001. PAVtotal was as follows: group I, 1.6 (0.0–6.1); group II: 2.8 (0.4–8.8); and group III: 3.0 (0.5–8.1); P = 0.001. There were significant differences among the TyG index tertile groups at baseline. Regarding coronary plaque subtypes, there was a significant difference in the fibrous, fibrous-fatty, necrotic-core, and dense calcium PVs among all groups at baseline. During follow-up, the annual change of the total PV was as follows: group I, 5.7 (0.0–20.2); group II, 7.6 (0.5–23.5); and group III, 9.4 (1.4–27.7); P = 0.0101; 2) and of TAVnorm was as follows: group I, 6.2 (0.0–19.9); group II, 7.8 (0.5–25.4); and group III, 9.3 (1.7–31.2); P = 0.005. PAVtotal [group I: 0.3 (0.0–0.9), group II: 0.4 (0.0–1.3), and group III: 0.5 (0.1–1.4); P = 0.006] was different among all the groups. There was a significant difference in the annual change of fibrous and dense calcium PVs (Table 2).
Table 2

Baseline and changes in the coronary plaque characteristics

Total (n = 1143)TyG index tertilesP
I (lowest) 7.20–8.53 (n = 382)II 8.54–9.02 (n = 388)III (highest) 9.03–10.84 (n = 373)
At baseline
 Plaque volume (mm3)
  Total44.1 (3.5–139.6)30.8 (0.0–117.7)47.2 (6.2 −160.4)57.5 (8.4–154.3)< 0.001
  Fibrous20.3 (0.8–59.1)13.7 (0.0–49.7)22.5 (2.9–67.3)24.3 (3.8–64.4)0.001
  Fibrous-fatty3.5 (0.0–23.4)1.4 (0.0–14.8)3.6 (0.0–25.3)6.1 (0.0–31.8)< 0.001
  Necrotic-core0.0 (0.0–1.5)0.0 (0.0–0.7)0.0 (0.0–1.6)0.1 (0.0–2.4)< 0.001
  Dense calcium6.4 (0.0–38.1)2.8 (0.0–33.5)8.0 (0.0–41.2)8.3 (0.0–36.5)0.027
TAVnorm (mm3)47.6 (2.6–151.5)33.0 (0.0–122.3)54.1 (7.4–192.3)61.2 (9.5–165.6)0.001
PAVtotal (%)2.5 (0.1–7.7)1.6 (0.0–6.1)2.8 (0.4–8.8)3.0 (0.5–8.1)0.001
Annual change
 Plaque volume (mm3/year)
  Total7.6 (0.5–22.2)5.7 (0.0–20.2)7.6 (0.5–23.5)9.4 (1.4–27.7)0.010
  Fibrous1.9 (0.0–8.6)1.1 (0.0–6.9)1.9 (0.0–8.7)2.8 (0.0–9.8)0.022
  Fibrous-fatty0.0 (-0.8–1.4)0.0 (-0.5–0.9)0.0 (-0.9–1.3)0.0 (-1.0–2.3)0.341
  Necrotic-core0.0 (0.0–0.1)0.0 (0.0–0.0)0.0 (0.0–0.1)0.0 (-0.1–0.1)0.659
  Dense calcium3.4 (0.1–11.7)2.1 (0.0–8.7)3.7 (0.3–12.1)3.9 (0.4–13.3)0.016
TAVnorm (mm3/year)7.7 (0.4–24.4)6.2 (0.0–19.9)7.8 (0.5–25.4)9.3 (1.7–31.2)0.005
PAVtotal (%/year)0.4 (0.0–1.2)0.3 (0.0–0.9)0.4 (0.0–1.3)0.5 (0.1–1.4)0.006

Values are presented as median (interquartile range)

PAV total percent atheroma volume, TAV normalized total atheroma volume, TyG triglyceride glucose

Baseline and changes in the coronary plaque characteristics Values are presented as median (interquartile range) PAV total percent atheroma volume, TAV normalized total atheroma volume, TyG triglyceride glucose

Association of clinical variables with coronary atherosclerotic change

Age (odds ratio [OR] 1.031; 95% confidence interval [CI] 1.016–1.047; P < 0.001), male sex (OR 1.490; 95% CI 1.129–1.967; P = 0.005), systolic BP (OR 1.012; 95% CI 1.003–1.022; P = 0.012), BMI (OR 1.077; 95% CI 1.026–1.130; P = 0.003), and HDL-C (OR 0.987; 95% CI 0.976–0.998; P = 0.017) were associated with coronary PP. Among the TyG tertile groups, PP risk was increased in group III compared with that in group I (OR 1.648; 95% CI 1.167–2.327; P = 0.005) (Table 3).
Table 3

Univariate logistic regression analysis for the association of clinical variables with the risk of coronary PP

VariablesOR (95% CI)P
Age, per 1 year1.031 (1.016–1.047)< 0.001
Male1.490 (1.129–1.967)0.005
Systolic BP, per 1 mmHg1.012 (1.003–1.022)0.012
Diastolic BP, per 1 mmHg1.013 (0.999–1.027)0.079
BMI, per 1 kg/m21.077 (1.026–1.130)0.003
Total cholesterol, per 1 mg/dL0.998 (0.995–1.002)0.393
Triglyceride, per 1 mg/dL1.002 (1.000–1.004)0.021
HDL-C, per 1 mg/dL0.987 (0.976–0.998)0.017
LDL-C, per 1 mg/dL0.998 (0.994–1.002)0.288
FBG, per 1 mg/dL1.009 (1.004–1.014)< 0.001
HbA1c, per 1%1.198 (0.986–1.456)0.069
TyG index tertiles
 I (lowest)1
 II1.294 (0.932–1.797)0.123
 III (highest)1.648 (1.167–2.327)0.005

BMI body mass index, BP blood pressure, CI confidence interval, FBG fasting blood glucose, HbA1c hemoglobin A1c; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; OR, odds ratio; TyG, triglyceride glucose

Univariate logistic regression analysis for the association of clinical variables with the risk of coronary PP BMI body mass index, BP blood pressure, CI confidence interval, FBG fasting blood glucose, HbA1c hemoglobin A1c; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; OR, odds ratio; TyG, triglyceride glucose

Subgroup analysis for the relationship of TyG index with coronary PP

Figure 2 shows the subgroup analysis of the estimated OR of TyG index for coronary PP. The TyG index was significantly associated with an increased risk of PP in subgroups of aged < 65 years (OR 1.584; 95% CI 1.190–2.109; P = 0.002), females (OR 2.061; 95% CI 1.435–2.961; P < 0.001), as well as those without hypertension (OR 1.762; 95% CI 1.249–2.484; P = 0.001), and diabetes (OR 1.473; 95% CI 1.091–1.990; P = 0.012). The same association was observed with hyperlipidemia (OR 1.546; 95% CI 1.151–2.076; P = 0.004), BMI ≥ 25.0 kg/m2 (OR 1.564; 95% CI 1.134–2.157; P = 0.006), and current smoking status (OR 1.569; 95% CI 1.193–2.064; P = 0.001).
Fig. 2

Subgroup analysis for the impact of TyG index on coronary PP. TyG triglyceride glucose, PP plaque progression

Subgroup analysis for the impact of TyG index on coronary PP. TyG triglyceride glucose, PP plaque progression

TyG index on the risk of coronary PP

The results of multiple logistic regression models for the association between TyG index and PP risk are presented in Table 4. Increased TyG index values were significantly related to an increased risk of PP after adjusting for other confounding variables. After adjusting for traditional CV risk factors, TyG index was associated with coronary PP (OR 1.308; 95% CI 1.004–1.703; P = 0.046) (Additional file 1: Table S1). TyG index was particularly associated with the calcified PP among coronary plaque sub-types (Additional file 2: Table S2). Regarding rapid coronary PP, multivariate logistic regression analysis showed that the risk of rapid PP was increased in group III (OR 1.557; 95% CI 1.109–2.185; P = 0.011) compared with group I (Table 5).
Table 4

Multiple logistic models for the impact of TyG index on coronary PP

VariablesOR (95% CI)PRR (95% CI)P
TyG index, per 1-unit increase
 Model 11.575 (1.232–2.015)< 0.0011.103 (1.049–1.160)< 0.001
 Model 21.598 (1.250–2.042)< 0.0011.111 (1.056–1.169)< 0.001
 Model 31.409 (1.062–1.869)0.0171.083 (1.021–1.150)0.008

BMI body mass index, BP blood pressure, CI confidence interval, HDL-C high-density lipoprotein cholesterol, OR odds ratio, PP plaque progression, RR relative risk, TyG triglyceride glucose

Model 1: Unadjusted

Model 2: Adjusted for age and sex

Model 3: Adjusted for age, sex, systolic BP, BMI, and HDL-C

Table 5

Association of TyG index and traditional risk factors with rapid PP

VariablesUnivariateMultivariate
OR (95% CI)POR (95% CI)P
Age ≥ 65 years1.836 (1.412–2.387)< 0.0011.717 (1.309–2.253)< 0.001
Male1.248 (0.962–1.620)0.095
Hypertension1.561 (1.193–2.044)0.0011.292 (0.976–1.710)0.074
Diabetes1.845 (1.399–2.432)< 0.0011.509 (1.125–2.023)0.006
Hyperlipidemia1.468 (1.124–1.919)0.0051.340 (1.019–1.763)0.036
BMI ≥ 25.0 kg/m21.120 (0.863–1.454)0.393
TyG index tertiles
 I (lowest)11
 II1.362 (0.983–1.887)0.0631.242 (0.890–1.734)0.202
 III (highest)1.777 (1.288–2.451)< 0.0011.557 (1.109–2.185)0.011

BMI, body mass index; CI, confidence interval; CV, cardiovascular; OR, odds ratio; PP, plaque progression; TyG, triglyceride glucose

Multiple logistic models for the impact of TyG index on coronary PP BMI body mass index, BP blood pressure, CI confidence interval, HDL-C high-density lipoprotein cholesterol, OR odds ratio, PP plaque progression, RR relative risk, TyG triglyceride glucose Model 1: Unadjusted Model 2: Adjusted for age and sex Model 3: Adjusted for age, sex, systolic BP, BMI, and HDL-C Association of TyG index and traditional risk factors with rapid PP BMI, body mass index; CI, confidence interval; CV, cardiovascular; OR, odds ratio; PP, plaque progression; TyG, triglyceride glucose

Discussion

Main findings

To the best our knowledge, this is first study to evaluate the longitudinal quantitative changes of coronary plaques and their subtypes related to TyG index using serial CCTA. This study identified a significant association between TyG index and coronary atherosclerosis progression. Previous cross-sectional studies have reported a significant relationship between TyG index and CAC prevalence [8, 9]. A recent longitudinal study revealed that elevated TyG index is independently associated with CAC progression [21]. However, this study had a retrospective design and included only a Korean population, which were limitations. Additionally, considering that non-calcified plaques might be related to an increased risk of acute coronary syndrome events [22], it might be important to compare longitudinal changes of non-calcified plaques according to TyG index values. In the present PARADIGM study, which had a prospective, international, and observational design, we identified that the baseline total PV and all subtypes as well as annualized change in total, fibrous, and dense-calcium PV increased with increasing TyG index values. In addition, the TyG index had a positive association with the annual change of total PV, TAVnorm, and PAVtotal (Additional file 3: Table S3). Even after adjusting for confounding factors, TyG index was related to the increased risk of PP as well as rapid PP. Regarding coronary plaque sub-types, TyG index was found to be associated with calcified PP after adjusting for traditional CV risk factors in a previous cross-sectional cohort study [9].

Recent investigations on the longitudinal assessment of coronary atherosclerosis

To understand that the coronary atherosclerotic change is an important issue in clinical practice, it is well-known that diabetes has close association with the prevalence and severity of CCTA verified CAD progression [23]. Even asymptomatic diabetic patients experience plaque progression as well as evolution to overt or silent CAD, and an increase in the PV was reported to be associated with subsequent CV events [24]. In addition, the increased duration of diabetes combined with higher HbA1c levels deleteriously influences culprit-plaque characteristics among diabetic patients who suffered acute myocardial infarction [25]. A rapid plaque progression was specially observed in male patients and in patients with typical angina [26]. While helical flow in coronary arteries has a protective role against atherosclerotic wall thickness growth [27], an intrinsic calcification angle, defined as the angle externally projected by a vascular calcification, is a novel feature of coronary plaque vulnerability and its impact on fibrous cap stress is potentiated in more superficial calcifications, adding to the destabilizing role of smaller calcifications [28].

Focused issue for the significance of TyG index

It is well-established that IR is a main mechanism in the development of type 2 diabetes. A previous PARADIGM study identified that individuals with established diabetes experienced greater PP, particularly, significantly greater progression of adverse plaque formation than those without diabetes [29]. In addition, unlike diabetes, pre-diabetic condition was not independently associated with coronary PP in the sub-study of same registry [30]; however, although pre-diabetes was defined according to the criteria used in previous studies, glycemic status was assessed based on only the levels of FBG and HbA1c without considering IR status among non-diabetic participants. According to the results of a recent large cross-sectional cohort study [31], TyG index had an independent and positive association with the risk of CAD and obstructive CAD in non-diabetic individuals; however, glycemic control status reflected in HbA1c rather than IR parameters was significantly related to the risk of both CAD and obstructive CAD in individuals with established diabetes. These results might support the hypothesis for the different pathogenesis of CAD according to diabetic status. In clinical practice, atherosclerosis-related adverse events commonly occurred even in people with low CV risk burden [32-34]. Thus, early detection of the presence and progression of subclinical atherosclerosis in this population is important. Recent studies have focused on defining useful predictors for subclinical atherosclerosis in individuals with low CV risk [35, 36]. Interestingly, although the statistical significance could be influenced by the sample size of the individual subgroup, this study showed that TyG index had a significant predictive value for PP in individuals without the traditionally known CV risk factors, especially in female subgroup. This result suggests that TyG index is a potential surrogate marker for the early detection of subclinical atherosclerosis in the absence of CV risk factors as reported in a recent cross-sectional cohort study [37]. Considering the pivotal role of IR in atherosclerosis progression by promoting apoptosis of macrophages, endothelial cells, and vascular smooth muscle cells [38-40], further prospective studies with larger sample sizes will be necessary to address the predictive value of TyG index for subclinical atherosclerosis in individuals with low CV risk burden.

Limitations

There are some limitations in the present study. First, we only evaluated the association between baseline TyG index and coronary atherosclerotic change; longitudinal consecutive changes of TyG index during follow-up could not be confirmed. Second, the effects of anti-hypertensive and anti-diabetic medications were not controlled for because of the observational nature of the study design. Third, the homeostatic model assessment of insulin resistance was not analyzed and compared with TyG index because insulin levels were not measured in the PARADIGM registry. Fourth, we could not confirm the TyG index of the small coronary arteries in the present study. Fifth, a selection bias might be present because of the retrospective inclusion of participants. In addition, the results of CCTA at baseline could affect the performance of follow-up CCTA. Finally, despite our application of strict and standardized criteria for assessing CCTA, atherosclerotic findings can be affected by HU density. Despite these limitations, this study used serial CCTA to estimate coronary PVC and PP according to TyG index values in a large multicultural cohort subjects.

Conclusion

The present study demonstrates the independent association between TyG index values and coronary PP based on serial quantitative assessment by CCTA during a relatively short-term period. Further large prospective and randomized studies with longer follow-up durations are necessary to confirm the results of the present study. Additional file 1: Table S1. Clinical variables and annualized total PVC. Additional file 2: Table S2. Multivariate logistic regression analysis for the association of clinical variables with coronary plaque progression. Additional file 3: Table S3. Association of clinical variables with the annual change of total PV, TAVnorm, and PAVtotal.
  40 in total

1.  Impact of coronary artery calcium on coronary heart disease events in individuals at the extremes of traditional risk factor burden: the Multi-Ethnic Study of Atherosclerosis.

Authors:  Michael G Silverman; Michael J Blaha; Harlan M Krumholz; Matthew J Budoff; Ron Blankstein; Christopher T Sibley; Arthur Agatston; Roger S Blumenthal; Khurram Nasir
Journal:  Eur Heart J       Date:  2013-12-23       Impact factor: 29.983

2.  Longitudinal assessment of coronary plaque volume change related to glycemic status using serial coronary computed tomography angiography: A PARADIGM (Progression of AtheRosclerotic PlAque DetermIned by Computed TomoGraphic Angiography Imaging) substudy.

Authors:  Ki-Bum Won; Sang-Eun Lee; Byoung Kwon Lee; Hyung-Bok Park; Ran Heo; Asim Rizvi; Fay Y Lin; Amit Kumar; Martin Hadamitzky; Yong-Jin Kim; Ji Min Sung; Edoardo Conte; Daniele Andreini; Gianluca Pontone; Matthew J Budoff; Ilan Gottlieb; Eun Ju Chun; Filippo Cademartiri; Erica Maffei; Hugo Marques; Jonathon A Leipsic; Sanghoon Shin; Jung Hyun Choi; Renu Virmani; Habib Samady; Kavitha Chinnaiyan; Gilbert L Raff; Peter H Stone; Daniel S Berman; Jagat Narula; Leslee J Shaw; Jeroen J Bax; James K Min; Hyuk-Jae Chang
Journal:  J Cardiovasc Comput Tomogr       Date:  2018-12-17

3.  Independent role of low-density lipoprotein cholesterol in subclinical coronary atherosclerosis in the absence of traditional cardiovascular risk factors.

Authors:  Ki-Bum Won; Gyung-Min Park; Yu Jin Yang; Soe Hee Ann; Yong-Giun Kim; Dong Hyun Yang; Joon-Won Kang; Tae-Hwan Lim; Hong-Kyu Kim; Jaewon Choe; Seung-Whan Lee; Young-Hak Kim; Shin-Jae Kim; Sang-Gon Lee
Journal:  Eur Heart J Cardiovasc Imaging       Date:  2019-08-01       Impact factor: 6.875

4.  Rationale and design of the Progression of AtheRosclerotic PlAque DetermIned by Computed TomoGraphic Angiography IMaging (PARADIGM) registry: A comprehensive exploration of plaque progression and its impact on clinical outcomes from a multicenter serial coronary computed tomographic angiography study.

Authors:  Sang-Eun Lee; Hyuk-Jae Chang; Asim Rizvi; Martin Hadamitzky; Yong-Jin Kim; Edoardo Conte; Daniele Andreini; Gianluca Pontone; Valentina Volpato; Matthew J Budoff; Ilan Gottlieb; Byoung Kwon Lee; Eun Ju Chun; Filippo Cademartiri; Erica Maffei; Hugo Marques; Jonathon A Leipsic; Sanghoon Shin; Jung Hyun Choi; Namsik Chung; James K Min
Journal:  Am Heart J       Date:  2016-09-22       Impact factor: 4.749

5.  Diagnostic accuracy of 64-slice computed tomography coronary angiography: a prospective, multicenter, multivendor study.

Authors:  W Bob Meijboom; Matthijs F L Meijs; Joanne D Schuijf; Maarten J Cramer; Nico R Mollet; Carlos A G van Mieghem; Koen Nieman; Jacob M van Werkhoven; Gabija Pundziute; Annick C Weustink; Alexander M de Vos; Francesca Pugliese; Benno Rensing; J Wouter Jukema; Jeroen J Bax; Mathias Prokop; Pieter A Doevendans; Myriam G M Hunink; Gabriel P Krestin; Pim J de Feyter
Journal:  J Am Coll Cardiol       Date:  2008-12-16       Impact factor: 24.094

6.  Coronary plaque volume and predictors for fast plaque progression assessed by serial coronary CT angiography-A single-center observational study.

Authors:  C Weber; S Deseive; G Brim; T J Stocker; A Broersen; P Kitslaar; S Martinoff; S Massberg; M Hadamitzky; J Hausleiter
Journal:  Eur J Radiol       Date:  2019-12-24       Impact factor: 3.528

7.  Progression of coronary atherosclerotic plaque burden and relationship with adverse cardiovascular event in asymptomatic diabetic patients.

Authors:  Junjie Yang; Guanhua Dou; Christian Tesche; Carlo N De Cecco; Brian E Jacobs; U Joseph Schoepf; Yundai Chen
Journal:  BMC Cardiovasc Disord       Date:  2019-02-11       Impact factor: 2.298

8.  Association between insulin resistance, hyperglycemia, and coronary artery disease according to the presence of diabetes.

Authors:  Young-Rak Cho; Soe Hee Ann; Ki-Bum Won; Gyung-Min Park; Yong-Giun Kim; Dong Hyun Yang; Joon-Won Kang; Tae-Hwan Lim; Hong-Kyu Kim; Jaewon Choe; Seung-Whan Lee; Young-Hak Kim; Shin-Jae Kim; Sang-Gon Lee
Journal:  Sci Rep       Date:  2019-09-02       Impact factor: 4.379

9.  Triglyceride glucose index is a useful marker for predicting subclinical coronary artery disease in the absence of traditional risk factors.

Authors:  Gyung-Min Park; Young-Rak Cho; Ki-Bum Won; Yu Jin Yang; Sangwoo Park; Soe Hee Ann; Yong-Giun Kim; Eun Ji Park; Shin-Jae Kim; Sang-Gon Lee; Dong Hyun Yang; Joon-Won Kang; Tae-Hwan Lim; Hong-Kyu Kim; Jaewon Choe; Seung-Whan Lee; Young-Hak Kim
Journal:  Lipids Health Dis       Date:  2020-01-14       Impact factor: 3.876

10.  Relationships of coronary culprit-plaque characteristics with duration of diabetes mellitus in acute myocardial infarction: an intravascular optical coherence tomography study.

Authors:  Zhaoxue Sheng; Peng Zhou; Chen Liu; Jiannan Li; Runzhen Chen; Jinying Zhou; Li Song; Hanjun Zhao; Hongbing Yan
Journal:  Cardiovasc Diabetol       Date:  2019-10-19       Impact factor: 9.951

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  12 in total

1.  Silencing METTL3 Stabilizes Atherosclerotic Plaques by Regulating the Phenotypic Transformation of Vascular Smooth Muscle Cells via the miR-375-3p/PDK1 Axis.

Authors:  Jingquan Chen; Kun Lai; Xi Yong; Hongshun Yin; Zhilong Chen; Haifei Wang; Kai Chen; Jianghua Zheng
Journal:  Cardiovasc Drugs Ther       Date:  2022-06-15       Impact factor: 3.727

2.  The effect of LDL-C status on the association between increased coronary artery calcium score and compositional plaque volume progression in statins-treated diabetic patients: evaluated using serial coronary CTAs.

Authors:  Yuan Li; Zhi-Gang Yang; Rui Shi; Yue Gao; Li-Ling Shen; Ke Shi; Jin Wang; Li Jiang
Journal:  Cardiovasc Diabetol       Date:  2022-06-30       Impact factor: 8.949

3.  Triglyceride-glucose index predicts outcome in patients with chronic coronary syndrome independently of other risk factors and myocardial ischaemia.

Authors:  Danilo Neglia; Alberto Aimo; Valentina Lorenzoni; Chiara Caselli; Alessia Gimelli
Journal:  Eur Heart J Open       Date:  2021-07-24

4.  Triglyceride-glucose index and the risk of stroke and its subtypes in the general population: an 11-year follow-up.

Authors:  Anxin Wang; Guangyao Wang; Qian Liu; Yingting Zuo; Shuohua Chen; Boni Tao; Xue Tian; Penglian Wang; Xia Meng; Shouling Wu; Yongjun Wang; Yilong Wang
Journal:  Cardiovasc Diabetol       Date:  2021-02-18       Impact factor: 9.951

5.  Triglycerides and low HDL cholesterol predict coronary heart disease risk in patients with stable angina.

Authors:  Chiara Caselli; Raffaele De Caterina; Jeff M Smit; Jonica Campolo; Mohammed El Mahdiui; Rosetta Ragusa; Alberto Clemente; Tiziana Sampietro; Aldo Clerico; Riccardo Liga; Gualtiero Pelosi; Silvia Rocchiccioli; Oberdan Parodi; Arthur Scholte; Jhuani Knuuti; Danilo Neglia
Journal:  Sci Rep       Date:  2021-10-20       Impact factor: 4.379

6.  Prognostic Significance of Triglyceride-Glucose Index for Adverse Cardiovascular Events in Patients With Coronary Artery Disease: A Systematic Review and Meta-Analysis.

Authors:  Jin-Wen Luo; Wen-Hui Duan; Yan-Qiao Yu; Lei Song; Da-Zhuo Shi
Journal:  Front Cardiovasc Med       Date:  2021-12-02

7.  A High Triglyceride-Glucose Index Value Is Associated With an Increased Risk of Carotid Plaque Burden in Subjects With Prediabetes and New-Onset Type 2 Diabetes: A Real-World Study.

Authors:  Zhen-Zhen Jiang; Jian-Bo Zhu; Hua-Liang Shen; Shan-Shan Zhao; Yun-Yi Tang; Shao-Qi Tang; Xia-Tian Liu; Tian-An Jiang
Journal:  Front Cardiovasc Med       Date:  2022-03-03

8.  Association between triglyceride glucose index and carotid artery plaque in different glucose metabolic states in patients with coronary heart disease: a RCSCD-TCM study in China.

Authors:  Zhu Li; Yuanyuan He; Shuo Wang; Lin Li; Rongrong Yang; Yijia Liu; Qi Cheng; Lu Yu; Yanchao Zheng; Hongmei Zheng; Shan Gao; Chunquan Yu
Journal:  Cardiovasc Diabetol       Date:  2022-03-11       Impact factor: 9.951

9.  Association between triglyceride-glucose index and risk of arterial stiffness: a cohort study.

Authors:  Shouling Wu; Luli Xu; Mingyang Wu; Shuohua Chen; Youjie Wang; Yaohua Tian
Journal:  Cardiovasc Diabetol       Date:  2021-07-16       Impact factor: 9.951

10.  Triglyceride-glucose index is associated with in-stent restenosis in patients with acute coronary syndrome after percutaneous coronary intervention with drug-eluting stents.

Authors:  Yong Zhu; Kesen Liu; Maolin Chen; Yan Liu; Ang Gao; Chengping Hu; Hong Li; Huagang Zhu; Hongya Han; Jianwei Zhang; Yingxin Zhao
Journal:  Cardiovasc Diabetol       Date:  2021-07-08       Impact factor: 9.951

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