Literature DB >> 30021607

Apolipoprotein CIII may mediate the impacts of angiopoietin-like protein 8 on triglyceride metabolism.

Mengdie Luo1, Xin Su1, Yuhong Yi1, Yang Yang1, Daoquan Peng2.   

Abstract

BACKGROUND: Angiopoietin-like protein 8(ANGPTL8) and apolipoprotein CIII (apoCIII) were found to inhibit the activity of lipoprotein lipase (LPL) and disrupt the clearance of triglyceride-rich lipoproteins (TRLs), leading to hypertriglyceridemia. Whether any relationship exists between these two important modulators of triglyceride metabolism has not been reported. Besides, whether ANGPTL8 concentration is altered in the patients with coronary artery disease (CAD) is still unclear.
METHODS: A hospital-based case-control study was conducted. Sixty-eight CAD subjects and fifty-two nonCAD controls were recruited. Plasma apoCIII, ANGPTL8 was measured.
RESULTS: ANGPTL8 and apoCIII concentration exhibited no significant difference between CAD group and nonCAD group. Both ANGPTL8 and apoCIII were significantly correlated with triglyceride level(r = - 0.243, P = 0.008; r = 0.335, P < 0.001, respectively). Regression analysis revealed that apoCIII was an independent contributor to triglyceride level independent of ANGPTL8 concentration (standardized β = 0.230, P < 0.01).
CONCLUSION: ApoCIII may mediate the effects of ANGPTL8 on triglyceride metabolism.

Entities:  

Keywords:  ANGPTL8; Coronary artery disease; Triglyceride; apoCIII

Mesh:

Substances:

Year:  2018        PMID: 30021607      PMCID: PMC6052593          DOI: 10.1186/s12944-018-0777-6

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


Background

The angiopoietin-like proteins (ANGPTL1–8) are secreted glycoproteins sharing common structure but exerting distinct physiological effects [1]. ANGPTL8, also referred to as betatrophin, lipasin, refeeding-induced in fat and liver (RIFL) and hepatocellular carcinoma-associated protein (TD26), was found to be a novel player in lipid metabolism [2]. Recent findings revealed that ANGPTL8, together with ANGPTL3 and ANGPTL4, controlled by nutritional status, could regulate triglyceride metabolism by inhibiting the activity of lipoprotein lipase (LPL) [3, 4], the rate-limiting enzyme for triglyceride hydrolysis and plasma triglyceride clearance [5]. Different researches have shown that ANGPTL8 concentrations were altered in diseases such as obesity, diabetes mellitus, metabolic syndrome [2] and non-alcoholic fatty liver disease (NAFLD) [6]. However, whether ANGPTL8 concentration is altered in the patients with coronary artery disease (CAD) has not been reported. Liver-derived apolipoprotein CIII (apoCIII), mainly presents on the surface of triglyceride-rich lipoproteins (TRLs) and high-density lipoprotein (HDL) [7], was proved to be a crucial regulator of triglyceride metabolism [8-10]. ApoCIII could inhibit the binding of TRLs with LPL and impair TRLs clearance [7], which deteriorated lipid disorders and accelerated CAD progression. Although ANGPTL8 and apoCIII exerted similar effects on triglyceride metabolism, the relationship between these two triglyceride modulators was still unclear. In the present study, we conducted an observational study to examine the ANGPTL8 and apoCIII level in different groups classified by the anthropometric and metabolic profiles. Besides, the relationship between ANGPTL8 and apoCIII and their effects on triglyceride metabolism were also studied.

Methods

Subjects

We recruited 68 CAD subjects and 52 nonCAD subjects from the Department of Cardiovascular Medicine of the Second Xiangya Hospital, Central South University. In this study, CAD patients were mainly composed of acute coronary syndrome (ACS), including ST-segment elevated myocardial infarction (STEMI), non ST-segment elevated myocardial infarction (NSTEMI) and unstable angina. ACS was diagnosed by the clinical symptoms and signs, ischemic electrocardiographic abnormalities, and coronary angiography showing ≥50% stenosis in at least one main coronary artery. The exclusion criteria included: a history of renal failure, chronic hepatic diseases, high fever, or bacterial/viral infection, autoimmune disease, arthritis, malignancies, severe diabetes and hypertension, and other severe medical illnesses.

Clinical and biochemical measurements

Patient information, including age, gender, smoking and drinking history, and statin therapy history, was recorded. The details of anthropometric measurements (weight, height, body mass index) were assessed after overnight fasting for at least 10 h. Peripheral blood samples were obtained from patients’ brachial veins. Subjects fasted for at least 10 h before blood collection and then blood routine, urine routine, concentrations of lipid parameters, including total cholesterol (TC), triglyceride (TG), low-density lipoprotein cholesterol (LDL-C), HDL-C, apoAI, apoB, free fatty acid (FFA), were evaluated via an automated analyzer (Hitachi P7600). Concentrations of high-sensitivity C-reactive protein (hsCRP) were measured with a latex particle, enhanced immunoturbidimetric assay. For the subsequent experiments, fresh plasma was obtained by centrifugation at 3000 r/min at 4 °C for 10 min. The plasma was aliquoted and stored at − 80 °C freezer until analysis.

Measurement of plasma apoCIII and ANGPTL8

Plasma ApoCIII and ANGPTL8 concentration were measured with commercially available ELISA kits (apoCIII: Abcam, ab154131, UK; ANGPTL8: EIAAB, E11644H, Wuhan, China). All the measurement of plasma apoCIII and ANGPTL8 were performed in duplicate for each sample. The coefficient of variation for intra- and inter-assay variation was < 6 and < 9%, respectively.

ApoB-depleted plasma preparation

According to previous reported procedures [11], 540ul heparin sodium solution (280 mg/ml, Aladdin, H104201) and 10 ml manganese chloride solution (1.06 mol/L, Aladdin, M112542) were mixed. 100ul mixed solution was added to 1 ml plasma, incubated for 30 min at 4 °C, followed by centrifugation at 1500 g for 30 min. Supernatant was collected. If supernatant was still turbid (especially samples from patients with hypertriglyceridemia), plasma was centrifuged at 12000 g for 10 min again. Previous study revealed that heparin sodium/manganese chloride precipitation had no effects on HDL size as well as cholesterol efflux measurement [12], and therefore this method was chosen to prepare apoB-depleted plasma in the study.

Statistical analysis

Statistical analysis was performed with Statistical Package for Social Sciences version 22.0 and plots were made with GraphPad Prism V.6.0 (GraphPad Software, Inc., La Jolla, California, USA). Clinical data are expressed as mean ± standard deviation (normally distributed continuous data) or median with interquartile range (skewed distributed continuous data). Comparisons between categorical data were performed with Chi Squared tests, while continuous variables were assessed by unpaired t test (for normal distribution) or nonparametric test (for skewed distribution). For the variables skewed distributed, logarithmatic-transformed values were used for the analysis. To evaluate the associations between variables, partial correlation analysis was performed. A two tailed P value < 0.05 was considered statistically significant.

Results

Characteristics of subjects

Demographic and biochemical characteristics of participants are shown in Table 1. The study includes 120 unrelated individuals, 60.80% of the participants were male and the mean age was 64.17 years. Compared to nonCAD controls, CAD subjects had higher free fatty acid (FFA). Besides, the percentage of diabetic subjects and statin users was also significantly higher in CAD group.
Table 1

Anthropometric and metabolic characterisitcs of study participants

VariablesAll(n = 120)CAD(n = 68)Non-CAD(n = 52)P value
Male(%)60.8060.2961.54NS
Age(years)64.17 ± 8.1165.13 ± 8.0363.91 ± 8.06NS
BMI(kg/m2)24.43 ± 3.8124.49 ± 4.5724.47 ± 3.21NS
TG(mg/dL)117.8(87.7–174.5)120.9(91.5–168.1)113.4(87.7–182.5)NS
TC(mg/dL)155.1(133.0–184.8)146.6(128.5–183.3)160.9(133.0–181.0)NS
HDL-C(mmol/L)1.09 ± 0.251.05 ± 0.251.12 ± 0.26NS
LDL-C(mmol/L)2.54 ± 0.802.40 ± 0.742.48 ± 0.82NS
ApoAI(g/L)1.13 ± 0.201.11 ± 0.191.16 ± 0.20NS
ApoB(g/L)0.92 ± 0.260.89 ± 0.260.88 ± 0.27NS
FFA (mmol/L)0.48 ± 0.280.51 ± 0.290.42 ± 0.260.026
hsCRP(mg/L)2.73(1.00–8.98)2.64(0.71–10.46)2.30(0.87–4.64)NS
BUN(mmol/L)5.91(4.84–7.23)5.70(4.35–7.30)6.28(5.32–7.96)NS
UA(umol/L)308.1(280.0–405.5)305.8(283.3–370.9)341.0(292.1–430.1)0.054
CR(umol/L)74.50(57.20–86.30)77.15(67.68–84.68)77.90(58.98–98.40)NS
Diabetes(%)21.6732.357.690.001
Statin use(%)36.6754.4113.46< 0.0001

Values are expressed as mean ± SD or median (interquartile range). CAD indicates coronary artery disease; BMI body mass index, TG triglyceride, TC total cholesterol, HDL-C high density lipoprotein-cholesterol; LDL-C low density lipoprotein-cholesterol; apoAI apolipoprotein AI, apoB apolipoprotein B, FFA free fatty acid, hsCRP high sensitivity C reactive protein, BUN blood urea nitrogen, UA uric acid, CR creatinine, apoCIII apolipoprotein CIII

Anthropometric and metabolic characterisitcs of study participants Values are expressed as mean ± SD or median (interquartile range). CAD indicates coronary artery disease; BMI body mass index, TG triglyceride, TC total cholesterol, HDL-C high density lipoprotein-cholesterol; LDL-C low density lipoprotein-cholesterol; apoAI apolipoprotein AI, apoB apolipoprotein B, FFA free fatty acid, hsCRP high sensitivity C reactive protein, BUN blood urea nitrogen, UA uric acid, CR creatinine, apoCIII apolipoprotein CIII

ANGPTL8 and ApoCIII concentrations in subjects

ApoCIII and ANGPTL8 concentrations were measured in CAD group and nonCAD group (Table 2). Although the differences between these two groups were not significant, the apoCIIIHDL concentration and apoCIIIHDL ratio was significantly higher in CAD group than that in nonCAD group (Table 2). In addition, subjects were classified according to their apoCIII and ANGPTL8 concentrations (Table 3). Subjects were divided according to their plasma apoCIII level: low apoCIII group (plasma apoCIII < median 11.7 mg/dl) and high apoCIII group (plasma apoCIII ≥ median 11.7 mg/dl). Subjects in the low apoCIII group exhibited significantly higher ANGPTL8 than those in the high apoCIII group [569.6(432.2–917.6) vs 447.8(339.8–827.1), P = 0.036, Fig. 1a]. Triglyceride level in the low apoCIII group was significantly lower than that in the high apoCIII group [113.4(88.1–145.3) vs 148.8(114.7–230.7), P = 0.002, Fig. 1b].
Table 2

Comparison of circulating ANGPTL8 and apoCIII concentrations in CAD group and nonCAD group

All (n = 120)CAD (n = 68)Non-CAD (n = 52)P value
ANGPTL8 (pg/ml)561.1 (390.1–882.9)544.4 (374.3–903.7)597.7 (408.6–853.1)NS
ApoCIII (mg/dl)11.7 (9.1–13.5)10.6 (8.8–12.3)11.3 (9.0–14.7)NS
apoCIIIHDL (mg/dl)4.55 (3.32–6.68)5.01 (3.81–7.44)3.86 (3.07–6.15)0.048
apoCIIIHDL ratio0.43 (0.30–0.53)0.48 (0.31–0.55)0.37 (0.24–0.47)0.003

Data are expressed as mean ± SD or median (interquartile range). ANGPTL8 indicates angiopoietin-like protein 8; apoCIII, apolipoprotein CIII; apoCIIIHDL, apolipoprotein CIII in apoB-depleted plasma; apoCIIIHDL ratio, apolipoprotein CIII in apoB-depleted plasma over plasma apolipoprotein CIII; CAD, coronary artery disease

Table 3

Comparison of circulating ANGPTL8 and apoCIII concentrations under different baseline conditions

Low apoCIII (n = 65)High apoCIII (n = 55)P value
ApoCIII(mg/dl)///
apoCIIIHDL(mg/dl)3.9 (3.1–5.1)5.0 (3.4–8.2)0.014
apoCIIIHDL ratio0.44 (0.36–0.53)0.34 (0.23–0.51)0.052
ANGPTL8(pg/ml)569.6 (432.2–917.6)447.8 (339.8–827.1)0.036
Triglyceride(mg/dl)113.4 (88.1–145.3)148.8 (114.7–230.7)0.002
CAD percentage66.2%43.2%0.037

Data are expressed as mean ± SD or median (interquartile range). ANGPTL8 indicates angiopoietin-like protein 8; apoCIII, apolipoprotein CIII; apoCIIIHDL, apolipoprotein CIII in apoB-depleted plasma; apoCIIIHDL ratio, apolipoprotein CIII in apoB-depleted plasma over plasma apolipoprotein CIII; CAD, coronary artery disease

Fig. 1

Comparison of circulating ANGPTL8 and apoCIII concentrations under different baseline conditons. Data are expressed as median(interquartile range). a. ANGPTL8 concentration in the low apoCIII group and high apoCIII group. b. Triglyceride level in the low apoCIII group and high apoCIII group. ApoCIII indicates apolipoprotein CIII; TG, triglyceride; ANGPTL8, angiopoietin-like protein

Comparison of circulating ANGPTL8 and apoCIII concentrations in CAD group and nonCAD group Data are expressed as mean ± SD or median (interquartile range). ANGPTL8 indicates angiopoietin-like protein 8; apoCIII, apolipoprotein CIII; apoCIIIHDL, apolipoprotein CIII in apoB-depleted plasma; apoCIIIHDL ratio, apolipoprotein CIII in apoB-depleted plasma over plasma apolipoprotein CIII; CAD, coronary artery disease Comparison of circulating ANGPTL8 and apoCIII concentrations under different baseline conditions Data are expressed as mean ± SD or median (interquartile range). ANGPTL8 indicates angiopoietin-like protein 8; apoCIII, apolipoprotein CIII; apoCIIIHDL, apolipoprotein CIII in apoB-depleted plasma; apoCIIIHDL ratio, apolipoprotein CIII in apoB-depleted plasma over plasma apolipoprotein CIII; CAD, coronary artery disease Comparison of circulating ANGPTL8 and apoCIII concentrations under different baseline conditons. Data are expressed as median(interquartile range). a. ANGPTL8 concentration in the low apoCIII group and high apoCIII group. b. Triglyceride level in the low apoCIII group and high apoCIII group. ApoCIII indicates apolipoprotein CIII; TG, triglyceride; ANGPTL8, angiopoietin-like protein

Correlation analysis of clinical variables with ANGPTL8 and apoCIII

To investigate variables associated with ANGPTL8 and apoCIII, correlation analysis was performed. Correlation coefficients between clinical variables and plasma ANGPTL8 as well as apoCIII concentration (both log-transformed) were present in Table 4. The results showed that ANGPTL8 was positively correlated with age (r = 0.240, P = 0.008), but inversely correlated with triglyceride (r = − 0.243, P = 0.008, Fig. 2a), and renal function biomarkers including BUN (r = 0.351, P < 0.0001), UA (r = 0.333, P < 0.001) and CR (r = 0.509, P < 0.0001). On the other hand, plasma apoCIII presented a positive relationship with triglyceride (r = 0.335, P < 0.001, Fig. 2b). Besides, ANGPTL8 was inversely correlated with plasma apoCIII (r = − 0.302, P = 0.002, Fig. 2c).
Table 4

Pearson’s correlations between clinical variables and log-transformed ANGPTL8 as well as log-transformed apoCIII in all the subjects

ANGPTL8Plasma apoCIIIapoCIIIHDLapoCIIIHDL ratio
rP valuerP valuerP valuerP value
Age0.2400.008−0.0750.4560.1020.2700.0420.677
BMI0.0750.417−0.0330.740−0.0250.783−0.0610.542
CR(log-transformed)0.509< 0.00010.0120.9090.1200.1960.0960.342
BUN(log-transformed)0.351< 0.0001−0.1070.2910.0640.4940.0500.623
UA(log-transformed)0.333< 0.0010.1310.1940.1790.053−0.0350.731
TG(log-transformed)−0.2430.0080.335< 0.001−0.2410.008−0.3160.001
TC(log-transformed)−0.2450.0070.1980.046−0.1020.270−0.0120.904
HDL-C−0.0020.975−0.0590.5530.1350.1440.3020.002
LDL-C−0.2240.0140.1650.097−0.0690.453−0.0200.845
apoAI−0.1020.2700.1080.283−0.0140.8770.1170.245
apoB− 0.1670.0690.2080.037−0.1040.263−0.0640.522
hsCRP(log-transformed)0.0670.4710.0670.5050.1310.156−0.0130.901
ANGPTL8(log-transformed)//−0.3020.0020.0890.3310.1580.113
ApoCIII(log-transformed)−0.3020.002//0.3190.001−0.2170.029
apoCIIIHDL(log-transformed)0.0890.331//0.796< 0.0001
apoCIIIHDL ratio0.1580.1130.796< 0.0001//

BMI indicates body mass index, CR creatinine, BUN blood urea nitrogen UA uric acid, TG triglyceride, TC total cholesterol, HDL-C high density lipoprotein-cholesterol, LDL-C, low density lipoprotein-cholesterol, apoAI apolipoprotein AI, apoB apolipoprotein B, hsCRP high-sensitivity C reactive protein, ANGPTL8 angiopoietin-like protein 8, apoCIII apolipoprotein CIII, apoCIII apolipoprotein CIII in apoB-depleted plasma, apoCIII ratio apolipoprotein CIII in apoB-depleted plasma over plasma apolipoprotein CIII

Fig. 2

Pearson’s correlations between clinical variables and log-transformed ANGPTL8 as well as log-transformed apoCIII in all the subjects. a. ANGPTL8 and TG. b. ApoCIII and TG. c. ANGPTL8 and apoCIII. TG indicates triglyceride; ANGPTL8, angiopoietin-like protein; apoCIII, apolipoprotein CIII

Pearson’s correlations between clinical variables and log-transformed ANGPTL8 as well as log-transformed apoCIII in all the subjects BMI indicates body mass index, CR creatinine, BUN blood urea nitrogen UA uric acid, TG triglyceride, TC total cholesterol, HDL-C high density lipoprotein-cholesterol, LDL-C, low density lipoprotein-cholesterol, apoAI apolipoprotein AI, apoB apolipoprotein B, hsCRP high-sensitivity C reactive protein, ANGPTL8 angiopoietin-like protein 8, apoCIII apolipoprotein CIII, apoCIII apolipoprotein CIII in apoB-depleted plasma, apoCIII ratio apolipoprotein CIII in apoB-depleted plasma over plasma apolipoprotein CIII Pearson’s correlations between clinical variables and log-transformed ANGPTL8 as well as log-transformed apoCIII in all the subjects. a. ANGPTL8 and TG. b. ApoCIII and TG. c. ANGPTL8 and apoCIII. TG indicates triglyceride; ANGPTL8, angiopoietin-like protein; apoCIII, apolipoprotein CIII

Multivariate analysis for the associations of clinical variables to triglyceride

In order to determine the independent contributors to triglyceride, stepwise multiple regression models were fitted after adjustment for different variables (Table 5). Log-transformed values were used for the variables skewed distributed, including ANGPTL8 and apoCIII. In addition, plasma apoCIII level was an independent contributor to the triglyceride level. When apoCIII was introduced into the regression model (model 3), the relationship between ANGPTL8 and triglyceride level disappeared.
Table 5

Independent contributors to the triglyceride level

R squareβStandardized βP value
Model 10.207< 0.001
Age−0.005−0.1710.056
HDL-C−0.269−0.308< 0.001
ANGPTL8 (log-transformed)−0.170−0.2030.020
Model 20.234< 0.001
Age−0.005−0.1890.028
HDL-C−0.265−0.303< 0.001
ApoCIII (log-transformed)0.1530.2590.002
Model 30.257< 0.001
Age−0.004−0.1530.079
HDL-C−0.273−0.312< 0.001
ANGPTL8 (log-transformed)−0.133−0.1590.064
ApoCIII (log-transformed)0.1360.2300.006

HDL-C indicates high density lipoprotein-cholesterol, ANGPTL8 angiopoietin-like protein 8; apoCIII apolipoprotein CIII

Independent contributors to the triglyceride level HDL-C indicates high density lipoprotein-cholesterol, ANGPTL8 angiopoietin-like protein 8; apoCIII apolipoprotein CIII

Discussion

In this study, we found that ANGPTL8 and apoCIII were significantly correlated with triglyceride level. Besides, stepwise multiple regression analysis revealed that apoCIII was an independent contributor to triglyceride level. Many clinical studies and animal experiments have shown that ANGPTL8 was highly involved in triglyceride metabolism. ANGPTL8 knockout mice presented nearly 70% reduced plasma triglyceride levels compared to the wild-type controls after feeding [13], while ANGPTL8 overexpression significantly increased plasma triglyceride levels by five folds [14]. ANGPTL8 was found to inhibit LPL activity and disrupt triglyceride clearance partly via ANGPTL3 activation [4]. In the cohort of Beijing children and adolescents metabolic syndrome (BCAMS) study, participants with high TG (defined as ≥150 mg/dl) exhibited significantly increased ANGPTL8 concentration [15]. However, our experiments showed that ANGPTL8 was significantly higher in the low TG group when subjects were divided according to their TG levels. Another study that aimed at dyslipidemic middle-aged cohorts in Caucasian population also found that subjects with lower TG displayed significantly higher ANGPTL8 levels than subjects with higher TG (defined as ≥150 mg/dl) [16]. The disparity among these population studies might be caused by the sample selection. Young population (20.2 ± 2.9 years old) with risk for metabolic syndrome was selected in BCAMS study [15], while older patients were recruited in the current study (64.17 ± 8.11 years old) and the study aimed at Caucasian middle-aged population study [16]. Besides, ANGPTL8 was also positively correlated with age, and therefore the relationship between triglyceride and ANGPTL8 might be confounded by age. The physiological regulation of LPL activity is driven via post-translational mechanisms including ANGPTLs (ANGPTL 3, 4 and 8) and apolipoproteins (apoCIII and apoAV) [5]. In circulation, apoCIII, mainly residing on the surface of HDL and TRLs, inhibited LPL activity and disrupted TRLs clearance [7], thereby leading to hypertriglyceridemia. In this study, plasma apoCIII exhibited a relatively strong correlation with triglyceride. Besides, the relationship between ANGPTL8 and triglyceride disappeared when apoCIII was introduced into the regression model (model 3), suggesting that the effect of ANGPTL8 on triglyceride metabolism might be apoCIII dependent. Previous study found that ANGPTL8 regulated LPL activity and triglyceride metabolism partly dependent on ANGPTL3, but other factors beyond ANGPTL3 might also mediate the effects of ANGPTL8 on triglyceride regulation [4]. Our research provided a hint that apoCIII might be involved in ANGPTL8 modulation of LPL activity and triglyceride metabolism. However, whether the interaction exists awaits further investigation. Interestingly, ANGPTL8 was strongly correlated with biomarkers of renal function (BUN, UA and CR). Although the relationship between ANGPTL8 and eGFR was still controversial [17, 18], a recent study conducted on T2DM patients revealed that ANGPTL8 was associated with urinary albumin excretion and renal function [18]. In addition, the study also showed that ANGPTL8 could increase the risk of diabetic nephropathy (DN) and might serve as a predictor for DN progression [18]. Kidney may be the important organ for ANGPTL8 degradation and excretion. When ANGPTL8 could not be efficiently cleaned, accumulated ANGPTL8 might cause dysregulated lipids metabolism in the kidney, leading to lipids accumulation in the artery wall, foam cells formation, atherosclerosis deterioration and glomerulosclerosis occurrence [19]. We acknowledged the limitations of our study. First, the cross-sectional nature of our study did not provide the direct proof for the causality. Additionally, we only measured ANGPTL8 in the fasting state, but ANGPTL8 activity was regulated by nutritional status [14]. Therefore the association of ANGPTL8 and apoCIII in the postprandial state still needed to be validated in the future research. Finally, we measured ANGPTL8 with EIAAB ELISA kits that recognizes N-terminus and measures the full-length form of ANGPTL8. Although our research presented similar ANGPTL8 levels with previous studies adopting the same kind of ELISA kit, the adoption of different ELISA kits which measured different forms of ANGPTL8 might cause some discrepancies in the results [20].

Conclusions

In conclusion, our results showed that circulating ANGPTL8 presented a strong relationship with biomarkers of renal function, including BUN, UA and CR. Moreover, ANGPTL8 was inversely correlated with plasma apoCIII and the association between ANGPTL8 and triglyceride disappeared when plasma apoCIII was taken into consideration, suggesting the potential role of plasma apoCIII in ANGPTL8 action. Further research is warranted to elucidate the relationship between apoCIII and ANGPTL8 and the underlying mechanism of triglyceride regulation.
  20 in total

1.  A comprehensive evaluation of the heparin-manganese precipitation procedure for estimating high density lipoprotein cholesterol.

Authors:  G R Warnick; J J Albers
Journal:  J Lipid Res       Date:  1978-01       Impact factor: 5.922

2.  The effects of apolipoprotein B depletion on HDL subspecies composition and function.

Authors:  W Sean Davidson; Anna Heink; Hannah Sexmith; John T Melchior; Scott M Gordon; Zsuzsanna Kuklenyik; Laura Woollett; John R Barr; Jeffrey I Jones; Christopher A Toth; Amy S Shah
Journal:  J Lipid Res       Date:  2016-02-23       Impact factor: 5.922

3.  Mice lacking ANGPTL8 (Betatrophin) manifest disrupted triglyceride metabolism without impaired glucose homeostasis.

Authors:  Yan Wang; Fabiana Quagliarini; Viktoria Gusarova; Jesper Gromada; David M Valenzuela; Jonathan C Cohen; Helen H Hobbs
Journal:  Proc Natl Acad Sci U S A       Date:  2013-09-16       Impact factor: 11.205

Review 4.  Physiological regulation of lipoprotein lipase.

Authors:  Sander Kersten
Journal:  Biochim Biophys Acta       Date:  2014-04-08

Review 5.  Regulation of lipid metabolism by angiopoietin-like proteins.

Authors:  Wieneke Dijk; Sander Kersten
Journal:  Curr Opin Lipidol       Date:  2016-06       Impact factor: 4.776

6.  Loss-of-function mutations in APOC3, triglycerides, and coronary disease.

Authors:  Jacy Crosby; Gina M Peloso; Paul L Auer; David R Crosslin; Nathan O Stitziel; Leslie A Lange; Yingchang Lu; Zheng-zheng Tang; He Zhang; George Hindy; Nicholas Masca; Kathleen Stirrups; Stavroula Kanoni; Ron Do; Goo Jun; Youna Hu; Hyun Min Kang; Chenyi Xue; Anuj Goel; Martin Farrall; Stefano Duga; Pier Angelica Merlini; Rosanna Asselta; Domenico Girelli; Oliviero Olivieri; Nicola Martinelli; Wu Yin; Dermot Reilly; Elizabeth Speliotes; Caroline S Fox; Kristian Hveem; Oddgeir L Holmen; Majid Nikpay; Deborah N Farlow; Themistocles L Assimes; Nora Franceschini; Jennifer Robinson; Kari E North; Lisa W Martin; Mark DePristo; Namrata Gupta; Stefan A Escher; Jan-Håkan Jansson; Natalie Van Zuydam; Colin N A Palmer; Nicholas Wareham; Werner Koch; Thomas Meitinger; Annette Peters; Wolfgang Lieb; Raimund Erbel; Inke R Konig; Jochen Kruppa; Franziska Degenhardt; Omri Gottesman; Erwin P Bottinger; Christopher J O'Donnell; Bruce M Psaty; Christie M Ballantyne; Goncalo Abecasis; Jose M Ordovas; Olle Melander; Hugh Watkins; Marju Orho-Melander; Diego Ardissino; Ruth J F Loos; Ruth McPherson; Cristen J Willer; Jeanette Erdmann; Alistair S Hall; Nilesh J Samani; Panos Deloukas; Heribert Schunkert; James G Wilson; Charles Kooperberg; Stephen S Rich; Russell P Tracy; Dan-Yu Lin; David Altshuler; Stacey Gabriel; Deborah A Nickerson; Gail P Jarvik; L Adrienne Cupples; Alex P Reiner; Eric Boerwinkle; Sekar Kathiresan
Journal:  N Engl J Med       Date:  2014-06-18       Impact factor: 91.245

Review 7.  Apolipoprotein C-III: From Pathophysiology to Pharmacology.

Authors:  Giuseppe Danilo Norata; Sotirios Tsimikas; Angela Pirillo; Alberico L Catapano
Journal:  Trends Pharmacol Sci       Date:  2015-10       Impact factor: 14.819

Review 8.  A dual role of lipasin (betatrophin) in lipid metabolism and glucose homeostasis: consensus and controversy.

Authors:  Ren Zhang; Abdul B Abou-Samra
Journal:  Cardiovasc Diabetol       Date:  2014-09-13       Impact factor: 9.951

9.  Association between betatrophin/ANGPTL8 and non-alcoholic fatty liver disease: animal and human studies.

Authors:  Yong-Ho Lee; Sang-Guk Lee; Chan Joo Lee; Soo Hyun Kim; Young-Mi Song; Mi Ra Yoon; Byung Hun Jeon; Jae Hyuk Lee; Byung-Wan Lee; Eun Seok Kang; Hyun Chul Lee; Bong-Soo Cha
Journal:  Sci Rep       Date:  2016-04-05       Impact factor: 4.379

10.  Higher serum betatrophin level in type 2 diabetes subjects is associated with urinary albumin excretion and renal function.

Authors:  Chang-Chiang Chen; Hendra Susanto; Wen-Han Chuang; Ta-Yu Liu; Chih-Hong Wang
Journal:  Cardiovasc Diabetol       Date:  2016-01-07       Impact factor: 9.951

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1.  The Lipid Energy Model: Reimagining Lipoprotein Function in the Context of Carbohydrate-Restricted Diets.

Authors:  Nicholas G Norwitz; Adrian Soto-Mota; Bob Kaplan; David S Ludwig; Matthew Budoff; Anatol Kontush; David Feldman
Journal:  Metabolites       Date:  2022-05-20

2.  The Clinical Role of Angiopoietin-Like Protein 3 in Evaluating Coronary Artery Disease in Patients with Obstructive Sleep Apnea.

Authors:  Juan Li; Yunyun Yang; Xiaolu Jiao; Huahui Yu; Yunhui Du; Ming Zhang; Chaowei Hu; Yongxiang Wei; Yanwen Qin
Journal:  Cardiovasc Drugs Ther       Date:  2020-12       Impact factor: 3.727

3.  Angiopoietin-like proteins 3, 4 and 8 are linked to cardiovascular function in naïve sub-clinical and overt hypothyroid patients receiving levothyroxine therapy.

Authors:  Sahar Hossam El Hini; Yehia Zakaria Mahmoud; Ahmed Abdelfadel Saedii; Sayed Shehata Mahmoud; Mohamed Ahmed Amin; Shereen Riad Mahmoud; Ragaa Abdelshaheed Matta
Journal:  Endocr Connect       Date:  2021-11-29       Impact factor: 3.335

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