Introduction
As the global obesity rate rises, nonalcoholic fatty liver disease (NAFLD) has emerged as one of the most common chronic liver diseases (CLDs). The global prevalence of NAFLD is approximately 25.2% [1], with Korea having a 32.9% prevalence due to a westernized lifestyle [2]. NAFLD is a common disease, but some cases are dangerous because nonalcoholic steatohepatitis, or liver fibrosis, can progress to cirrhosis or liver cancer. Thus far, liver biopsy has been the gold standard for diagnosing liver fibrosis in patients with NAFLD. However, because liver biopsies are invasive, the patient faces the risk of complications and high costs. As a result, new biomarkers have been developed, including the NAFLD fibrosis score (NFS), fibrosis-4 (FIB-4), aspartate aminotransferase (AST)/platelet ratio index (APRI), and BARD score [3].
The previous meta-analysis, which included several cohort studies, examined the relationship between biomarkers and liver fibrosis in patients with NAFLD [4–6] and whether biomarkers could predict long-term outcomes in patients with NAFLD [7–10]. As a result, the European Association for the Study of the Liver (EASL) and the American Association for the Study of Liver Diseases (AASLD) guidelines endorsed the NFS and FIB-4 as a diagnostic measure for ruling out advanced liver fibrosis [11,12].
However, data on the general population that included asymptomatic patients with CLD were insufficient, and studies with the Korean general population have been limited. Since the leading causes of burden of disease in Korea have been liver cirrhosis and liver cancer and the leading cause of death among Koreans in their 40s and 50s has been liver diseases [13], it is necessary to investigate the liver fibrosis biomarkers with the Korean population.
The objectives of this study were to 1) assess the associations of NFS, FIB-4, APRI, and BARD score with overall and cardiovascular disease (CVD) mortality and 2) compare the performances of NFS, FIB-4, APRI, and BARD score using the Harrell’s concordance index (c-index) [14], adaptation of area under of receiver operating characteristic curve in a general Korean population of 50 years.
Materials and methods
Subjects
The Dong-gu study is a prospective study implemented to assess risk factors of chronic diseases among Korean citizens aged ≥50 years. Details of the Dong-gu study were described in a previous publication [15]. Potential participants were identified using Korean national resident registration records. Trained researchers called 34,040 residents aged 50 and up in the Dong-gu district of Gwangju Metropolitan City, South Korea. Finally, from 2007 to 2010, 9,260 people participated in the baseline study. There were 1,558 subjects excluded from this study for the following reasons: no blood test (n = 134), history of liver diseases such as cirrhosis, cancer, or hepatitis (n = 339), no alcohol data (n = 134), or significant alcohol intake (30 g/day in men and 20 g/day in women) (n = 951). In total, 7,702 people were included in the study. This study was conducted in accordance with the Helsinki Declaration guidelines, and all participants provided informed consent. The institutional review board of Chonnam National University Hospital approved the study protocol (No. I-2008-05-056).
Data collection
All subjects were interviewed by trained examiners using a questionnaire designed to elicit information on the status of current smoking, alcohol intake, regular walking, and the diagnosis of hypertension (HTN) and diabetes. Height and weight were measured to the nearest 0.1 cm and 0.1 kg, respectively. Body weight (in kg) divided by height squared (in m2) yielded the body mass index (BMI). After subjects had rested for at least 5 min in a seated position, blood pressure was measured on the right upper arm with a mercury sphygmomanometer (Baumanometer; WA Baum Co., Inc., Copiague, NY, USA) and an appropriately sized cuff. The first appearance (phase I) and disappearance (phase V) of Korotkoff’s sounds were used to calculate systolic blood pressure (SBP) and diastolic blood pressure (DBP), which was then read to the nearest 2 mmHg. Three consecutive SBP and DBP measurements were obtained, and the average values were used in the analysis.
Following 12-h overnight fasts, blood samples were drawn from antecubital veins; serum samples were separated within 30 min and then stored at −70°C before analysis. Using enzymatic methods on an automatic analyzer (Hitachi-7600; Hitachi, Ltd., Tokyo, Japan), the concentrations of AST, alanine aminotransferase (ALT), gamma-glutamyl transpeptidase (GGT), total cholesterol, triglycerides, high-density lipoprotein (HDL) cholesterol, platelet count, and serum albumin were measured. Glycated hemoglobin (HbA1c) levels were assessed by high-performance liquid chromatography using the VARIANT II system (Bio-Rad, Hercules, CA, USA).
Ascertainment of death
Linking with National Statistical Office registries yielded death information. The date of death was ascertained until December 31, 2020. The International Classification of Diseases, 10th revision (ICD-10) was used to code the causes of death. Cardiovascular deaths were classified as ICD-10 codes I20–25.
Measurement of liver fibrosis
Liver fibrosis was assessed by four biomarkers: NFS, FIB-4, APRI, and BARD score.
NFS = −1.675 + 0.037 × age (years) + 0.094 × BMI (kg/m2) + 1.13 × impaired fasting glucose or diabetes (yes = 1, no = 0) + 0.99 × AST/ALT ratio −0.013 × platelet count (109/L) − 0.66 × serum albumin (g/dL) [16].
FIB-4 = age (years) × AST (U/L) / platelet count (109/L) × ALT (U/L)1/2 [17].
APRI = 100 × AST (U/L)/(upper limit of normal)/platelet count (109/L), where the upper limit of normal is 34 U/L for females and 36 U/L for males [18].
BARD score = BMI ≥28 kg/m2 = 1 point; AST/ALT ratio ≥0.8 = 2 points; and diabetes mellitus (DM) = 1 point [19].
Based on previous studies [16–19], low/intermediate/high risk categories for each biomarker were provided; for NFS, <−1.455, −1.455–0.676, and >0.676; for FIB-4, <1.30, 1.30–2.67, and >2.67; for APRI, <0.5, 0.5–1.5, and >1.5; and for BARD score, 0–1, 2–3, and 4.
Statistical analysis
All values are given as a percentage or as a mean standard deviation. The χ2 or Student’s t-test was used to compare differences between now-deceased and deceased subjects. To approximate normal distributions, waist circumference, SBP, HbA1c, total cholesterol, triglycerides, HDL cholesterol, and GGT data were log-transformed. Analysis of variance was used to evaluate variable comparisons based on biomarker categories. Cox proportional hazards models were used to examine the relationships between liver fibrosis biomarkers and overall and CVD mortality. The initial model was unadjusted. The second model was adjusted for sex, log-waist circumference, smoking, alcohol intake, regular walking, hypertension, log-SBP, log-HbA1c, log-total cholesterol, log-triglycerides, log-HDL, and log-GGT. Diabetes for FIB-4, age and diabetes for APRI, and age for BARD score were additionally included and adjusted in the second model. Kaplan-Meier curves of cumulative overall mortality, compared by log-rank tests, were used for assessing different incidence of death between individuals with low, intermediate and high risk of NFS, FIB-4, APRI, and BARD score.
In addition, using the somersd package, the Harrell’s c-index was calculated to compare the performance of each liver fibrosis biomarker. Statistical analyses were performed using Stata 15.0 (StataCorp, College Station, TX, USA). P < 0.05 was considered to be significant.
Results
Table 1 shows the subjects’ baseline characteristics. Of the 7,702 subjects, 1,141 (14.8%) died. The average duration of follow-up was 10.3 ± 2.2 years. In non-deceased subjects, the follow-up duration, weight, BMI, alcohol intake, regular walking, total cholesterol concentration, HDL cholesterol concentration, platelet concentration, and albumin concentration were higher; in deceased subjects, the frequency of male sex, older age, history of smoking, HTN, DM, SBP, HbA1c concentration, AST concentration, GGT concentration, NFS, FIB-4, APRI, and BARD score was higher.
[Figure omitted. See PDF.]
The characteristics of the subjects according to the level of NFS, FIB-4, APRI, and BARD score are shown in Table 2. The follow-up duration, sex distribution, height, HTN prevalence, triglycerides concentration, AST concentration, ALT concentration, GGT concentration, and platelet concentration differed significantly according to the level of NFS, FIB-4, APRI, and BARD score. In addition, albumin concentration decreased significantly with increasing level of NFS, FIB-4, APRI, and BARD score; age increased significantly with increasing level of NFS, FIB-4, APRI, and BARD score. The deceased by overall increased significantly as NFS, FIB-4, and APRI levels increased and the deceased by CVD increased significantly as NFS and FIB-4 levels increased.
[Figure omitted. See PDF.]
The hazard ratios (HRs) for overall and CVD mortality according to the level of NFS, FIB-4, APRI, and BARD score are shown in Table 3. With the multivariate adjustment, overall mortality increased with increasing NFS level [HR 1.9, 95% confidence interval (CI) 1.7–2.2 for intermediate risk vs. low risk; HR 4.3, 95% CI 3.3–5.5 for high risk vs. low risk], increasing FIB-4 level (HR 1.7, 95% CI 1.5–2.0 for intermediate risk vs. low risk; HR 3.5, 95% CI 2.9–4.4 for high risk vs. low risk), and increasing APRI level (HR 1.3, 95% CI 1.0–1.6 for intermediate risk vs. low risk; HR 3.5, 95% CI 2.1–5.8 for high risk vs. low risk) but not with BARD score. Additionally, with multivariate adjustment, CVD mortality increased with increasing NFS level (HR 3.6, 95% CI 1.8–6.9 for intermediate/high risk vs. low risk), increasing FIB-4 level (HR 2.6, 95% CI 1.3–5.2 for intermediate/high risk vs. low risk) but not with APRI and BARD score.
[Figure omitted. See PDF.]
In Kaplan-Meier survival estimates (Fig 1), overall survival was lower at higher risk for NFS, FIB-4, and APRI (Log-rank test p<0.001), but not for BARD score (Log-rank test p = 0.126).
[Figure omitted. See PDF.]
Table 4 shows the comparison of Harrell’s c-index between NFS, FIB-4, APRI, and BARD score. The Harrell’s c-index (95% CI) showed that the NFS and FIB-4 were more predictive of overall mortality, with 0.643 (0.626–0.660) and 0.633 (0.616–0.650), compared with that of 0.508 (0.490–0.527) for APRI and 0.548 (0.533–0.562) for BARD score.
[Figure omitted. See PDF.]
The adjusted HRs of FIB-4 for overall mortality according to the BMI level are shown in Fig 2. Comparing high risk level with low risk level of FIB-4, the adjusted HRs for higher BMI were higher than those for lower BMI.
[Figure omitted. See PDF.]
Discussion
We examined the links between liver fibrosis biomarkers and overall CVD mortality in the Korean population aged ≥50 years. After controlling for covariates, NFS, FIB-4, and APRI showed a significant relationship with the overall mortality, and NFS and FIB-4 showed a significant relationship with the CVD mortality. Furthermore, the Harrell’s c-index revealed that the NFS and FIB-4 were more predictive of overall mortality than the APRI and BARD score.
In most previous studies, liver fibrosis biomarkers showed a consistent association with overall and liver-related mortality [8], but the relationship between liver fibrosis and CVD mortality was inconsistent. In two studies using NHANES [20,21], liver fibrosis as measured by NFS and FIB-4 was significantly associated with CVD mortality. Similarly, in another study with the Italian cohort aged 65 years or older, NFS and FIB-4 showed a significant association with CVD mortality [22]. However, in a cohort study with Brazilian patients with diabetes, the authors demonstrated that NFS and FIB-4 were significantly associated with overall mortality, but not with CVD mortality [7]. Additionally, in a 16-year prospective cohort study with the Korean general population [23], the NFS and FIB-4 were significantly associated with overall and liver-specific mortality, but not with CVD mortality, which was different from our results. This may be due to variations in the study population, follow-up periods, and measures of liver fibrosis. In particular, the prior Korean study set cutoff values of NFS and FIB-4 to −2.08 and 1.22, respectively [23]. This may have lowered the strength of the association by including subjects with early liver fibrosis. In a previous cohort study with patients with NAFLD, only those with fibrosis 3–4 had increased CVD mortality [24].
Liver fibrosis is developed by a variety of etiologies, such as hepatitis B and C virus infections, metabolic disorders, and excessive alcohol intake [25]. Fibrosis is a long-term, staggering wound healing process that results increased deposition of extracellular matrix [26]. Persistent fibrosis causes cirrhosis and stiffness of the liver, impairing its physiological function, which can eventually lead to cirrhosis of the liver, end-stage liver disease, or hepatocellular cancer [25,27]. In a multicenter cohort study of 320 NAFLD patients, higher liver fibrosis is associated with increased risk for liver related complications such as gastroesophageal bleeding, hepatopulmonary syndrome, cirrhosis complication, hepatocellular carcinoma, and liver transplantation [9]. Moreover, other epidemiologic studies have indicated that liver fibrosis is associated with aortic stiffness [28], heart failure, atrial fibrillation, and coronary heart disease [29–32].
Liver biopsy is the best method for risk stratification of patients with NAFLD, but due to some limitations, various simple biomarkers have been developed. Therefore, it has been very important to find the most accurate predictor among various biomarkers. In several systematic reviews [4,8,10], investigators analyzed massive cohort data and demonstrated that FIB-4 and NFS showed higher prognostic accuracy for the mortality than APRI. Accordingly, AASLD guidelines and EASL endorsed NFS and FIB-4 as a diagnostic measure for ruling out advanced liver fibrosis [11,12]. However, there are limitations in applying the optimal biomarker to Korean patients with NAFLD due to the lack of studies comparing the performance of liver fibrosis biomarkers with Korean people. In the present study, the Harrell’s c-index revealed that the NFS and FIB-4 were more predictive of overall mortality than the APRI and BARD score, similar to previous studies. In this study, BARD score and APRI showed lower performance than NFS and FIB-4, but BARD score and APRI also have advantages. The BARD score can predict histological fibrosis with reasonable accuracy. Researchers reported that area under curve ROC of BARD score was 0.67 in predicting fibrosis, which was similar to 0.68 of NFS [6]. In addition, since APRI can be easily calculated with only two indicators (AST and platelets), the World Health Organization (WHO) recommends APRI to determine the stage of fibrosis in countries with limited resources [33].
In the present study, the HRs for overall mortality according to the BMI level were higher in obese subjects than in lean subjects. Several previous studies reported an “obesity paradox” in which the mortality rate of obese subjects with CLD was lower than that of subjects with normal weight [34–36]. However, the evidence for the obesity paradox in CLD was not robust. In the study with 1999–2016 NHANES data [37], the 15-year cumulative overall mortality was higher in nonobese patients with NAFLD than in obese patients with NAFLD. However, after adjusting for other covariates, the association between nonobese NAFLD and high overall mortality disappeared. Additionally, in a Swedish cohort study of 646 patients with biopsy-proven NAFLD [38], lean patients with NAFLD had an increased risk of developing serious liver disease, but no association with the overall mortality rate. In the analysis with the Korean cohort study [23], the authors demonstrated that the association between liver fibrosis and mortality was more prominent in lean subjects than in obese subjects, which was inconsistent with our results. However, the obesity paradox requires some careful attention in interpreting the results [39]. First, there is a limitation of BMI as an obesity indicator. Second, patients with severe CLD lose weight more. Third, there might be a survivor bias that more obese patients have already died.
This is a well-established, large general population cohort study with an extremely high follow-up rate. Furthermore, to the best of our knowledge, this is the first study to compare the performance of liver fibrosis biomarkers in a Korean population. However, this study has some limitations. First, accurate information about liver fibrosis was lacking due to the general population’s lack of access to liver biopsy. Second, data on the severity of hypertension and diabetes were not available. Instead, SBP and HbA1c were used as surrogates to adjust for blood pressure and diabetes severity. Third, since all potential confounding factors, such as progression and reversal of liver fibrosis, and changes in body mass index (BMI) and NAFLD, were not adjusted for, residual confounding may affect the main results. Finally, information on drugs for hypertension, diabetes, and hyperlipidemia has not been measured. Recently, some studies reported that the use of statin [40], angiotensin converting enzyme inhibitor (ACEI) [41], and diabetic medication [42] reduce the risk of advanced fibrosis.
Conclusion
The NFS, FIB-4, and APRI showed a significant relationship with the overall mortality, and NFS and FIB-4 showed a significant relationship with the CVD mortality. In addition, the Harrell’s c-index showed that the NFS and FIB-4 were more predictive of overall mortality than the APRI and BARD score in Korean adults aged ≥50 years.
Citation: Choi S-W, Kweon S-S, Lee Y-H, Ryu S-Y, Nam H-S, Shin M-H (2022) Association of liver fibrosis biomarkers with overall and CVD mortality in the Korean population: The Dong-gu study. PLoS ONE 17(12): e0277729. https://doi.org/10.1371/journal.pone.0277729
About the Authors:
Seong-Woo Choi
Roles: Conceptualization, Investigation, Writing – original draft
Affiliation: Department of Preventive Medicine, Chosun University Medical School, Gwangju, Republic of Korea
ORICD: https://orcid.org/0000-0002-6150-3934
Sun-Seog Kweon
Roles: Formal analysis, Investigation, Methodology
Affiliation: Department of Preventive Medicine, Chonnam National University Medical School, Hwasun, Jeollanam-do, Republic of Korea
Young-Hoon Lee
Roles: Data curation, Visualization
Affiliation: Department of Preventive Medicine & Institute of Wonkwang Medical Science, Wonkwang University School of Medicine, Iksan, Jeollabuk-do, Republic of Korea
So-Yeon Ryu
Roles: Data curation, Methodology
Affiliation: Department of Preventive Medicine, Chosun University Medical School, Gwangju, Republic of Korea
Hae-Sung Nam
Roles: Investigation, Writing – review & editing
Affiliation: Department of Preventive Medicine, Chungnam National University Medical School, Daejeon, Republic of Korea
Min-Ho Shin
Roles: Conceptualization, Supervision, Validation, Writing – review & editing
E-mail: [email protected]
Affiliation: Department of Preventive Medicine, Chonnam National University Medical School, Hwasun, Jeollanam-do, Republic of Korea
1. Younossi ZM, Koenig AB, Abdelatif D, Fazel Y, Henry L, Wymer M. Global epidemiology of nonalcoholic fatty liver disease—Meta-analytic assessment of prevalence, incidence, and outcomes. Hepatology 2016;64(1):73–84. pmid:26707365
2. Li J, Zou B, Yeo YH, Feng Y, Xie X, Lee DH, et al. Prevalence, incidence, and outcome of non-alcoholic fatty liver disease in Asia, 1999–2019: a systematic review and meta-analysis. Lancet Gastroenterol Hepatol 2019;4(5):389–398. pmid:30902670
3. Sebastiani G, Gkouvatsos K, Plebani M. Non-invasive assessment of liver fibrosis: it is time for laboratory medicine. Clin Chem Lab Med 2011;49(1):13–32. pmid:20961196
4. Sun W, Cui H, Li N, Wei Y, Lai S, Yang Y, et al. Comparison of FIB-4 index, NAFLD fibrosis score and BARD score for prediction of advanced fibrosis in adult patients with non-alcoholic fatty liver disease: A meta-analysis study. Hepatol Res 2016;46(9):862–870. pmid:26763834
5. Aykut UE, Akyuz U, Yesil A, Eren F, Gerin F, Ergelen R, et al. A comparison of FibroMeter™ NAFLD Score, NAFLD fibrosis score, and transient elastography as noninvasive diagnostic tools for hepatic fibrosis in patients with biopsy-proven non-alcoholic fatty liver disease. Scand J Gastroenterol 2014;49(11):1343–1348. pmid:25259621
6. Ruffillo G, Fassio E, Alvarez E, Landeira G, Longo C, Domínguez N, et al. Comparison of NAFLD fibrosis score and BARD score in predicting fibrosis in nonalcoholic fatty liver disease. J Hepatol 2011;54(1):160–163. pmid:20934232
7. Leite NC, Cardoso CRL, Salles GF. Importance of non-invasive liver fibrosis scores for mortality and complications development in individuals with type 2 diabetes. J Diabetes Complications 2021;35(5):107879. pmid:33573891
8. Lee J, Vali Y, Boursier J, Spijker R, Anstee QM, Bossuyt PM, et al. Prognostic accuracy of FIB-4, NAFLD fibrosis score and APRI for NAFLD-related events: A systematic review. Liver Int 2021;41(2):261–770. pmid:32946642
9. Angulo P, Bugianesi E, Bjornsson ES, Charatcharoenwitthaya P, Mills PR, Barrera F, et al. Simple noninvasive systems predict long-term outcomes of patients with nonalcoholic fatty liver disease. Gastroenterology 2013;145(4):782–789.e4. pmid:23860502
10. Salomone F, Micek A, Godos J. Simple scores of fibrosis and mortality in patients with NAFLD: A systematic review with meta-analysis. J Clin Med 2018;7(8):219. pmid:30111756
11. Chalasani N, Younossi Z, Lavine JE, Charlton M, Cusi K, Rinella M, et al. The diagnosis and management of nonalcoholic fatty liver disease: Practice guidance from the American Association for the Study of Liver Diseases. Hepatology 2018;67(1):328–357. pmid:28714183
12. European Association for the Study of the Liver, European Association for the Study of Diabetes, European Association for the Study of Obesity, EASL-EASD-EASO clinical practice guidelines for the management of non-alcoholic fatty liver disease. J Hepatol 2016;64:1388–1402. pmid:27062661
13. Institute for Health Metrics and Evaluation, Global burden of disease profile: South Korea, 2019. https://vizhub.healthdata.org/gbd-compare/. (Accessed 27 June 2022).
14. Harrell FE Jr, Lee KL, Mark DB. Multivariable prognostic models: issues in developing models, evaluating assumptions and adequacy, and measuring and reducing errors. Stat Med 1996;15(4):361–387. pmid:8668867
15. Kweon SS, Shin MH, Jeong SK, Nam HS, Lee YH, Park KS, et al. Cohort Profile: The Namwon Study and the Dong-gu Study. Int J Epidemiol 2014;43(2):558–567. pmid:23505254
16. Angulo P, Hui JM, Marchesini G, Bugianesi E, George J, Farrell GC, et al. The NAFLD fibrosis score: A noninvasive system that identifies liver fibrosis in patients with NAFLD. Hepatology 2007;45(4):846–854. pmid:17393509
17. Shah AG, Lydecker A, Murray K, Tetri BN, Contos MJ, Sanyal AJ. Comparison of noninvasive markers of fibrosis in patients with nonalcoholic fatty liver disease. Clin Gastroenterol Hepatol 2009;7(10):1104–1112. pmid:19523535
18. Calès P, Lainé F, Boursier J, Deugnier Y, Moal V, Oberti F, et al. Comparison of blood tests for liver fibrosis specific or not to NAFLD. J Hepatol 2009;50(1):165–173. pmid:18977552
19. Harrison SA, Oliver D, Arnold HL, Gogia S, Neuschwander-Tetri BA. Development and validation of a simple NAFLD clinical scoring system for identifying patients without advanced disease. Gut 2008;57(10):1441–1447. pmid:18390575
20. Unalp-Arida A, Ruhl CE. Liver fibrosis scores predict liver disease mortality in the United States population. Hepatology 2017;66(1):84–95. pmid:28195363
21. Le MH, Devaki P, Ha NB, Jun DW, Te HS, Cheung RC, et al. Prevalence of non-alcoholic fatty liver disease and risk factors for advanced fibrosis and mortality in the United States. PLOS ONE 2017;12(3):e0173499. pmid:28346543
22. De Vincentis A, Costanzo L, Vespasiani-Gentilucci U, Picardi A, Bandinelli S, Ferrucci L, et al. Association between non-invasive liver fibrosis scores and occurrence of health adverse outcomes in older people. Dig Liver Dis 2019;51(9):1330–1336. pmid:30808572
23. Oh TJ, Kim K, Moon JH, Choi SH, Cho NH, Jang HC. Liver Fibrosis Indices for the Prediction of Mortality in Korean Subjects: A 16-Year Prospective Cohort Study. J Endocr Soc 2021;5(10):bvab123. pmid:34396022
24. Ekstedt M, Hagström H, Nasr P, Fredrikson M, Stål P, Kechagias S, et al. Fibrosis stage is the strongest predictor for disease-specific mortality in NAFLD after up to 33 years of follow-up. Hepatology 2015;61(5):1547–1554. pmid:25125077
25. Bataller R, Brenner DA. Liver fibrosis. J Clin Invest 2005;115:209–218. pmid:15690074
26. Bansal R, Nagórniewicz B, Prakash J. Clinical advancements in the targeted therapies against liver fibrosis. Mediators Inflamm 2016;2016:e7629724. pmid:27999454
27. Samuel CS, Lekgabe ED, Mookerjee I. The effects of relaxin on extracellular matrix remodeling in health and fibrotic disease. Adv Exp Med Biol 2007;612:88–103. pmid:18161483
28. Leite NC, Villela-Nogueira CA, Ferreira MT, Cardoso CRL, Salles GF. Increasing aortic stiffness is predictive of advanced liver fibrosis in patients with type 2 diabetes: the Rio-T2DM cohort study. Liver Int 2016;36:977–85. pmid:26509555
29. Ostovaneh MR, Ambale-Venkatesh B, Fuji T, Bakhshi H, Shah R, Murthy VL, et al. Association of liver fibrosis with cardiovascular diseases in the general population: The multi-ethnic study of atherosclerosis (MESA). Circ Cardiovasc Imaging 2018;11(3):e007241. pmid:29523555
30. Baratta F, Pastori D, Angelico F, Balla A, Paganini AM, Cocomello N, et al. Nonalcoholic fatty liver disease and fibrosis associated with increased risk of cardiovascular events in a prospective study. Clin Gastroenterol Hepatol. 2020;18:2324–2331.e4. pmid:31887443
31. Pisetta C, Chillè C, Pelizzari G, Pigozzi MG, Salvetti M, Paini A, Muiesan ML, et al. Evaluation of cardiovascular risk in patient with primary non-alcoholic fatty liver disease. High Blood Press Cardiovasc Prev 2020;27:321–330. pmid:32436128
32. Ballestri S, Mantovani A, Baldelli E, Lugari S, Maurantonio M, Nascimbeni F, et al. Liver fibrosis biomarkers accurately exclude advanced fibrosis and are associated with higher cardiovascular risk scores in patients with NAFLD or viral chronic liver disease. Diagnostics 2021;11:98. pmid:33435415
33. World Health Organization. Guidelines for the prevention, care and treatment of persons with chronic hepatitis B infection. Geneva: World Health Organization; 2015.
34. Leung JC, Loong TC, Wei JL, Wong GL, Chan AW, Choi PC, et al. Histological severity and clinical outcomes of nonalcoholic fatty liver disease in nonobese patients. Hepatology 2017;65(1):54–64. pmid:27339817
35. Denkmayr L, Feldman A, Stechemesser L, Eder SK, Zandanell S, Schranz M, et al. Lean patients with non-alcoholic fatty liver disease have a severe histological phenotype similar to obese patients. J Clin Med 2018;7(12):562. pmid:30562976
36. Golabi P, Paik J, Fukui N, Locklear CT, de Avilla L, Younossi ZM. Patients with lean nonalcoholic fatty liver disease are metabolically abnormal and have a higher risk for mortality. Clin Diabetes 2019;37(1):65–72. pmid:30705499
37. Zou B, Yeo YH, Nguyen VH, Cheung R, Ingelsson E, Nguyen MH. Prevalence, characteristics and mortality outcomes of obese, nonobese and lean NAFLD in the United States, 1999–2016. J Intern Med 2020;288(1):139–151. pmid:32319718
38. Hagström H, Nasr P, Ekstedt M, Hammar U, Stål P, Hultcrantz R, et al. Risk for development of severe liver disease in lean patients with nonalcoholic fatty liver disease: A long-term follow-up study. Hepatol Commun 2018;2(1):48–57. pmid:29404512
39. Curcic IB, Berkovic MC, Kuna L, Roguljic H, Smolic R, Varzic SC, et al. Obesity paradox in chronic liver diseases: product of bias or a real thing? J Clin Transl Hepatol 2019;7(3):275–279. pmid:31608220
40. Ciardullo S, Perseghin G. Statin use is associated with lower prevalence of advanced liver fibrosis in patients with type 2 diabetes. Metabolism 2021;121:154752. pmid:33716004
41. Corey KE, Shah N, Misdraji J, Dayyeh BKA, Zheng H, Bhan AK, et al. The effect of angiotensin-blocking agents on liver fibrosis in patients with hepatitis C. Liver Int 2009;29:748–753. pmid:19220742
42. Siddiqui MT, Amin H, Garg R, Chadalavada P, Al-Yaman W, Lopez R, et al. Medications in type-2 diabetics and their association with liver fibrosis. World J Gastroenterol 2020;26:3249–3259. pmid:32684739
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Abstract
This study evaluated the associations of liver fibrosis biomarkers [non-alcoholic fatty liver disease fibrosis score (NFS), fibrosis-4 (FIB-4), aspartate aminotransferase/platelet ratio index (APRI), and BARD score] with mortality in Korean adults aged ≥50 years. We analyzed 7,702 subjects who participated in Dong-gu Study. The associations of liber fibrosis biomarkers with mortality were investigated using Cox proportional hazards models. Overall mortality increased with increasing NFS level [adjusted hazard ratio (aHR) 4.3, 95% confidence interval (CI) 3.3–5.5 for high risk vs. low risk], increasing FIB-4 level (aHR 3.5, 95% CI 2.9–4.4 for high risk vs. low risk), and increasing APRI level (aHR 3.5, 95% CI 2.1–5.8 for high risk vs. low risk) but not with BARD score. The Harrell’s concordance index for overall mortality for the NFS and FIB-4 was greater than that for the APRI and BARD score. In conclusion, NFS, FIB-4, and APRI showed a significant relationship with the overall mortality, and NFS and FIB-4 showed a significant relationship with the CVD mortality after adjustment for covariates. In addition, the NFS and FIB-4 were more predictive of overall mortality than the APRI and BARD score in Korean adults aged ≥50 years.
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