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Fatty Liver Index and Mortality: The Cremona Study in the 15th Year of Follow-Up Giliola Calori,1 Guido Lattuada,1,4 Francesca Ragogna,1 Maria Paola Garancini,2 Paolo Crosignani,5 Marco Villa,6 Emanuele Bosi,1 Giacomo Ruotolo,1,7 Lorenzo Piemonti,3 and Gianluca Perseghin1,4 A fatty liver, which is a common feature in insulin-resistant states, can lead to chronic liver disease. It has been hypothesized that a fatty liver can also increase the rates of non–hepaticrelated morbidity and mortality. Therefore, we wanted to determine whether the fatty liver index (FLI), a surrogate marker and a validated algorithm derived from the serum triglyceride level, body mass index, waist circumference, and c-glutamyltransferase level, was associated with the prognosis in a population study. The 15-year all-cause, hepatic-related, cardiovascular disease (CVD), and cancer mortality rates were obtained through the Regional Health Registry in 2011 for 2074 Caucasian middle-aged individuals in the Cremona study, a population study examining the prevalence of diabetes mellitus in Italy. During the 15-year observation period, 495 deaths were registered: 34 were hepatic-related, 221 were CVD-related, 180 were cancer-related, and 60 were attributed to other causes. FLI was independently associated with the hepatic-related deaths (hazard ratio 5 1.04, 95% confidence interval 5 1.02-1.05, P < 0.0001). Age, sex, FLI, cigarette smoking, and diabetes were independently associated with all-cause mortality. Age, sex, FLI, systolic blood pressure, and fibrinogen were independently associated with CVD mortality; meanwhile, age, sex, FLI, and smoking were independently associated with cancer mortality. FLI correlated with the homeostasis model assessment of insulin resistance (HOMA-IR), a surrogate marker of insulin resistance (Spearman’s q 5 0.57, P < 0.0001), and when HOMA-IR was included in the multivariate analyses, FLI retained its association with hepatic-related mortality but not with all-cause, CVD, and cancer-related mortality. Conclusion: FLI is independently associated with hepatic-related mortality. It is also associated with all-cause, CVD, and cancer mortality rates, but these associations appear to be tightly interconnected with the risk conferred by the correlated insulin-resistant state. (HEPATOLOGY 2011;54:145-152) See Editorial on Page 6 N onalcoholic fatty liver disease (NAFLD) is common in insulin-resistant subjects1 and affects 20% to 30% of the adult population and more than 50% of overweight and obese individuals.2 NAFLD is associated with an increased risk of developing advanced fibrosis and cirrhosis3 and incident type 2 diabetes.4 Because of its association with metabolic syndrome and type 2 diabetes, it has been hypothesized that NAFLD may also be associated with increased rates of cardiovascular disease (CVD)5; in particular, patients with NAFLD have elevated levels of plasma biomarkers of Abbreviations: BMI, body mass index; CI, confidence interval; CVD, cardiovascular disease; FLI, fatty liver index; GGT, c-glutamyltransferase; HOMA-IR, homeostasis model assessment of insulin resistance; HR, hazard ratio; IGT, impaired glucose tolerance; NAFLD, nonalcoholic fatty liver disease; OGTT, oral glucose tolerance test. From the 1Division of Metabolic and Cardiovascular Sciences, 2Medical Direction, and 3Diabetes Research Institute, H. San Raffaele Scientific Institute, Milan, Italy; 4Department of Sport, Nutrition, and Health Sciences, University of Milan, Milan, Italy; 5National Cancer Institute, Milan, Italy; 6Epidemiology Service, Local Health Authority of the Province of Cremona, Cremona, Italy; and 7AstraZeneca R&D, Molndal, Sweden. Received January 17, 2011; accepted April 1, 2011. This work was supported by a liberal donation from the family of Angela Musazzi and Mario Stellato. Giliola Calori contributed to the study concept and design, the acquisition of the data, the analysis and interpretation of the data, the critical revision of the article for important intellectual content, and the statistical analysis. Guido Lattuada and Francesca Ragogna contributed to the analysis and interpretation of the data and the critical revision of the article for important intellectual content. Maria Paola Garancini contributed to the study concept and design, the acquisition of the data, and the analysis and interpretation of the data. Paolo Crosignani and Marco Villa contributed to the acquisition of the data and the critical revision of the article for important intellectual content. Emanuele Bosi contributed to the critical revision of the manuscript for important intellectual content. Giacomo Ruotolo and Lorenzo Piemonti contributed to the study concept and design, the analysis and interpretation of the data, and the critical revision of the article for important intellectual content. Gianluca Perseghin contributed to the study concept and design, the acquisition of the data, the analysis and interpretation of the data, the drafting of the article, and the acquisition of funding. 145 146 CALORI ET AL. inflammation, endothelial dysfunction, markers of subclinical cardiovascular risk, and a higher prevalence of clinically manifesting CVD.6 Some studies have also reported a higher incidence of major outcomes,7-10 such as nonfatal CVD events,7 deaths due to CVD,8,9 revascularization procedures,9 and all-cause mortality.10 The data were obtained from community-based cohorts,7,10 nested casecontrol studies,8,9 the general population,7,10 or patients with type 2 diabetes8,9; NAFLD was established with abdominal ultrasonography,7,10 liver biopsy,8,9 or c-glutamyltransferase (GGT) levels.10 These studies had a maximum follow-up of 7.3 years. The fatty liver index (FLI) is a surrogate marker of a fatty liver. It was validated in a large group of subjects with or without suspected liver disease11 and was associated with coronary heart disease and early atherosclerosis in a cross-sectional study.12 The aim of this study was to assess the relationship between FLI and hepatic-related, all-cause, CVD, and cancer mortality rates in the Cremona study, a 19901991 population survey designed to establish the prevalence of diabetes in Lombardy, Italy.13,14 In this cohort, the vital status and the time of death were ascertained through Regional Health Registry files, and the causes of death were classified with the International Classification of Diseases. The follow-up was 15 years, which is the shortest time needed to explore the effects of metabolic risk factors (diabetes status, insulin resistance, body fatness, and metabolic syndrome) on mortality.15,16 Patients and Methods Study Cohort and Follow-Up. The Cremona study was a large population survey in the health district of Cremona (38,643 inhabitants from three representative municipalities: Cremona, Casalbuttano, and Vescovato) that was performed (1) to estimate the prevalence of diagnosed and undiagnosed diabetes and impaired glucose tolerance (IGT) according to the oral glucose tolerance test (OGTT) and the World Health Organization criteria in Northern Italy and (2) to set up a population cohort in anticipation of a follow-up study.13,14 After an information campaign, 2074 randomly selected subjects who were more than 40 years old visited one of the three clinics set up for this program (one in each town), and data for 2011 of these HEPATOLOGY, July 2011 subjects were available for this analysis. The anthropometric and laboratory features are summarized in Table 1. The subjects’ medical histories, anthropometric parameters, and clinical data were collected according to a standard protocol by trained interviewers. Venous blood samples were collected after 12 hours of overnight fasting and 2 hours after the oral administration of 75 g of glucose monohydrate. Further details about the study protocol have been reported previously.13,14 Fifteen years later, the vital status and the time of death were ascertained through Regional Health Registry files, and the causes of death were classified with the International Classification of Diseases, Ninth Revision (death codes 401-448 for CVD, death codes 140.0-208.9 for cancer, death codes 155-156 for hepatic diseases related to hepatocarcinoma, and death codes 571-573 for hepatic diseases related to cirrhosis). The median follow-up was 180 months, and the median follow-up for those still alive was 182 months (98% of those who were still alive had a minimum follow-up period of 174 months). Data for 2011 of the 2074 individuals were available. Definition of Diabetes, IGT, and Metabolic Syndrome. Diabetes was defined by the use of oral hypoglycemic agents or insulin and according to the World Health Organization diagnostic criteria for the OGTT (basal plasma glucose level >7.8 mmol/L or >11.1 mmol/L after a 2-hour oral glucose load). Patients with manifest diabetes did not undergo the OGTT. IGT was defined as a basal plasma glucose level <7.8 mmol/L and a plasma glucose level >7.8 mmol/L but <11 mmol/L after a 2-hour oral glucose load. Metabolic syndrome was defined according to the National Cholesterol Education Program Adult Treatment Program III criteria. Analytical Determinations. Blood, serum, and plasma substrates were assessed as previously described.13,14 Calculations. The body mass index (BMI) was calculated as the weight (kg) divided by the square of the height (m2). Alcohol consumption was calculated as grams of alcohol (20 g for a glass of wine, 30 g for an aperitif, and 80 g for liquor). The homeostasis model assessment of insulin resistance (HOMA-IR) score was calculated as previously described,17 and low-density lipoprotein cholesterol levels were calculated with the Friedwald formula. FLI was calculated according to a previously published report by Bedogni et al.11: Address reprint requests to: Gianluca Perseghin, M.D., Division of Metabolic and Cardiovascular Sciences, H. San Raffaele Scientific Institute, Via Olgettina 60, Milan, Italy 20132. E-mail: [email protected]; fax: 0039-02-26432771. C 2011 by the American Association for the Study of Liver Diseases. Copyright V View this article online at wileyonlinelibrary.com. DOI 10.1002/hep.24356 Potential conflict of interest: Nothing to report. HEPATOLOGY, Vol. 54, No. 1, 2011 CALORI ET AL. 147 Table 1. Anthropometric and Laboratory Parameters of the Cohort Anthropometric parameters Age (years) BMI (kg/m2) Waist circumference (cm)* Smoking [n (%)]* Alcohol consumption (g/day)* Systolic blood pressure (mm Hg) Diastolic blood pressure (mm Hg) Heart rate (beats/minute) Biochemical laboratory parameters Glucose (mmol/L) Cholesterol (mmol/L) High-density lipoprotein cholesterol (mmol/L) Triglycerides (mmol/L)* Alanine aminotransferase (U/L)* Aspartate aminotransferase (U/L)* GGT (U/L)* Alkaline phosphatase (U/L) Fibrinogen (mg/dL) Hormones Insulin (pmol/L) Other parameters HOMA-IR Metabolic syndrome [n (%)] Diabetes [n (%)] FLI* Women (n 5 1126) Men (n 5 885) All (n 5 2011) 58 6 11 26.3 6 4.8 85 6 12 170 (14.6) 17 6 26 144 6 22 79 6 12 76 6 12 57 6 11 26.7 6 3.8 95 6 10 290 (31.8) 68 6 71 146 6 20 81 6 12 72 6 13 57 6 11 26.5 6 4.4 89 6 12 460 (22.2) 42 6 58 145 6 21 80 6 12 75 6 12 5.25 6 1.13 6.20 6 1.16 1.46 6 0.36 1.29 6 0.65 21 6 14 25 6 10 29 6 52 180 6 75 297 6 74 5.39 6 1.06 5.91 6 1.06 1.25 6 0.39 1.63 6 1.28 30 6 26 30 6 17 53 6 67 174 6 60 268 6 70 5.31 6 1.10 6.07 6 1.12 1.37 6 0.39 1.44 6 0.99 25 6 20 27 6 14 39 6 61 177 6 69 284 6 73 94 6 61 100 6 83 97 6 72 3.86 6 3.58 393 (34) 109 (9.4) 32 6 26 4.19 6 4.27 313 (34) 87 (9.5) 52 6 26 4.00 6 3.90 706 (34) 196 (9.5) 41 6 28 Unless otherwise indicated, the data are presented as means and standard deviations. *There was a significant difference between men and women (P < 0.05 according to an independent t test). FLI ¼ e0:953loge Triglycerides þ0:139 BMI þ0:718loge GGT þ0:053 Waist circumference 15:745 ð1 þ e = 0:953loge Triglycerides þ0:139 BMI þ0:718loge GGT þ0:053 Waist circumference 15:745 Statistical Analysis. Analyses were performed with SAS software (version 9.1). Concentrations are presented as means and standard deviations unless otherwise stated. Because of the skewed distributions of serum insulin, triglycerides, fibrinogen, and glucose, log-transformed values were used in the analysis. The association of each investigated risk factors with all-cause, CVD, cancer, and hepatic-related mortality rates after the 15-year observation period were estimated with a Cox proportional hazards model with adjustments for age and sex. Hazard ratios (HRs) and 95% confidence intervals (CIs) are presented. A multivariate Cox proportional model (stepwise), which included parameters with P values <0.1 in the univariate analysis, was used to investigate the independent association of the risk factors with all-cause, CVD, cancer, and hepatic-related mortality rates. Results Anthropometric and Laboratory Characteristics of the Study Subjects (Table 1). The population consisted of overweight individuals; 22.2% of the study Þ 100 subjects were active smokers, and they had higher than normal systolic blood pressures and total cholesterol levels. Metabolic syndrome was detected in 34% of the population, and diabetes was detected in 9.5%. FLI was significantly higher in men versus women (P < 0.0001; Table 1). It was also significantly higher in individuals with type 2 diabetes and IGT versus individuals with normal glucose tolerance (55 6 28 versus 38 6 27, P < 0.0001). Hepatic-Related Mortality During the 15-Year Observation Period. Tables 2 and 3 summarize the results for hepatic-related mortality. During the 15-year observation period, 34 hepatic-related deaths were recorded. Table 2 summarizes the results of the univariate analysis, and Table 3 summarizes the results of the multivariate analysis. Age, sex, low-density lipoprotein cholesterol, and FLI were all independently associated with allcause mortality. The inclusion of HOMA-IR in the multivariate analysis did not change the outcome. When the FLI factors were tested individually in the multivariate model in place of FLI, BMI, waist circumference, and GGT were associated with hepatic-related mortality. 148 CALORI ET AL. HEPATOLOGY, July 2011 Table 2. Age- and Sex-Adjusted HRs Associated With 15-Year Hepatic-Related Mortality By Univariate Analysis Table 4. Age- and Sex-Adjusted HRs Associated With 15-Year All-Cause Mortality By Univariate Analysis Variable HR 95% CI P Value Variable HR 95% CI BMI (kg/m2) Waist circumference (cm) Fasting glucose (mmol/L) Fasting insulin (pmol/L) Diabetes HOMA-IR Smoking Alcohol consumption (g/day) Fibrinogen (mg/dL) Low-density lipoprotein cholesterol (mmol/L) High-density lipoprotein cholesterol (mmol/L) Triglycerides (mmol/L) GGT (U/L) Systolic blood pressure (mm Hg) Diastolic blood pressure (mm Hg) Heart rate (beats/minute) FLI 1.128 1.054 1.013 1.036 2.643 1.116 1.071 1.001 0.994 0.987 1.051-1.210 1.024-1.085 1.002-1.024 1.025-1.048 1.172-5.957 1.078-1.156 0.692-1.657 0.996-1.005 0.988-1.000 0.978-0.997 0.0008 0.0004 <0.0203 <0.0001 <0.0191 <0.0001 0.76 0.77 0.0436 0.0084 1.02 1.01 1.01 1.02 1.06 1.74 1.11 1.77 1.00 1.00 0.99 1.00-1.04 0.99-1.02 1.01-1.01 1.01-1.02 1.04-1.07 1.39-2.18 1.02-1.22 1.42-2.20 0.99-1.00 1.00-1.00 0.99-0.99 0.0528 0.0766 <0.0001 <0.0001 <0.0001 <0.0001 0.0187 <0.0001 0.30 0.021 0.880 0.989 0.965-1.013 0.35 1.00 0.99-1.00 0.323 1.002 1.004 1.011 1.035 1.028 1.036 1.001-1.004 1.003-1.006 0.995-1.028 1.009-1.060 1.005-1.052 1.021-1.052 0.001 <0.0001 0.167 0.007 0.0193 <0.0001 BMI (kg/m2) Waist circumference (cm) Fasting glucose (mmol/L) Fasting insulin (pmol/L) HOMA-IR Diabetes Metabolic syndrome Smoking Alcohol consumption (g/day) Fibrinogen (mg/dL) Low-density lipoprotein cholesterol (mmol/L) High-density lipoprotein cholesterol (mmol/L) Triglycerides (mmol/L) GGT (U/L) Systolic blood pressure (mm Hg) Diastolic blood pressure (mm Hg) Heart rate (beats/minute) FLI 1.00 1.001 1.00 1.00 1.01 1.006 1.00-1.00 1.000-1.002 1.00-1.01 1.00-1.01 1.01-1.02 1.002-1.009 0.0295 0.004 0.131 0.417 0.0019 0.0013 All-Cause Mortality During the 15-Year Observation Period. Tables 4 and 5 summarize the results for all-cause mortality. During the 15-year observation period, 495 deaths were registered. Table 4 summarizes the results of the univariate analysis, and Table 5 summarizes the results of the multivariate analysis. Age, sex, cigarette smoking, diabetes, and FLI were all independently associated with all-cause mortality. When HOMA-IR was included in the multivariate analysis, FLI did not retain its independent association. When the FLI factors were tested individually in the multivariate model in place of FLI, only GGT was associated with all-cause mortality. CVD Mortality During the 15-Year Observation Period. Tables 6 and 7 summarize the results for CVD mortality. During the 15-year observation peTable 3. Cox Proportional Hazards Model (Stepwise Selection) of the Predictors of 15-Year Hepatic-Related Mortality By Multivariate Analysis Variable HR 95% CI P Value Age (years) Sex Low-density lipoprotein cholesterol (mmol/L) FLI 1.079 0.406 0.981 1.041-1.118 0.178-0.926 0.971-0.991 <0.0001 0.032 0.0003 1.037 1.022-1.053 <0.0001 The summary report related to the multivariate analysis was performed with all the variables significant at P < 0.1 in the univariate analysis (with the exclusion of BMI, waist circumference, and serum triglycerides). Only variables remaining significantly associated are shown. When the FLI factors were individually tested in the multivariate models in place of FLI, the following factors were associated with hepatic-related mortality: BMI (HR ¼ 1.14, 95% CI ¼ 1.061.21, P < 0.001), waist circumference (HR ¼ 1.06, 95% CI ¼ 1.03-1.09, P ¼ 0.0002), and GGT (HR ¼ 1.005, 95% CI ¼ 1.003-1.006, P < 0.0001). P Value riod, 221 CVD-related events were registered. Table 6 summarizes the results of the univariate analysis, and Table 7 summarizes the results of the multivariate analysis. Age, sex, systolic blood pressure, fibrinogen, and FLI were independently associated with CVD mortality. When HOMA-IR was included in the multivariate analysis, FLI did not retain its independent association. When the FLI factors were tested individually in the multivariate model in place of FLI, only BMI was associated with CVD mortality. Cancer Mortality During the 15-Year Observation Period. Tables 8 and 9 summarize the results for cancer mortality. During the 15-year observation period, 180 cancer-related events were registered. Table 8 summarizes the results of the univariate analysis, and Table 9 summarizes the results of the multivariate analysis. Table 5. Cox Proportional Hazards Model (Stepwise Selection) of the Predictors of 15-Year All-Cause Mortality By Multivariate Analysis Variable HR 95% CI P Value Age (years) Sex Diabetes FLI Cigarette smoking 1.106 0.508 1.688 1.004 1.139 1.095-1.116 0.406-0.635 1.338-2.129 1.001-1.007 1.009-1.286 <0.0001 <0.0001 <0.0001 0.0238 0.0354 The summary report related to the multivariate analysis was performed with all the variables significant at P < 0.1 in the univariate analysis (with the exclusion of BMI, waist circumference, serum triglycerides, and HOMA-IR). Only variables remaining significantly associated are shown. When the FLI factors were individually tested in the multivariate models in place of FLI, the following factor was associated with all-cause mortality: GGT (HR ¼ 1.001, 95% CI ¼ 1.000-1.002, P ¼ 0.046). HEPATOLOGY, Vol. 54, No. 1, 2011 CALORI ET AL. Table 6. Age- and Sex-Adjusted HRs Associated With 15-Year CVD Mortality by Univariate Analysis 149 Table 8. Age- and Sex-Adjusted HRs Associated With 15-Year Cancer Mortality by Univariate Analysis P Value Variable HR 95% CI P Value 1.01-1.07 1.00-1.02 1.01-1.02 1.01-1.02 1.04-1.08 1.37-2.59 1.09-1.42 1.02-2.09 0.99-1.00 1.00-1.00 0.99-1.00 0.0193 0.0842 <0.0001 <0.0001 <0.0001 0.0001 0.0011 0.0377 0.652 0.0115 0.191 1.014 1.006 1.007 1.019 1.003 1.606 1.013 2.214 1.002 1.001 0.997 0.980-1.048 0.993-1.019 1.001-1.013 1.011-1.027 1.002-1.005 1.092-2.361 0.880-1.166 1.549-2.912 1.000-1.004 0.999-1.003 0.994-1.001 0.422 0.385 0.015 <0.0001 0.0001 0.016 0.856 <0.0001 0.020 0.322 0.179 0.99 0.98-0.99 0.0506 1.001 0.991-1.010 0.896 1.00 1.001 1.01 1.01 1.02 1.007 1.00-1.00 1.000-1.002 1.01-1.02 1.00-1.02 1.01-1.03 1.002-1.012 0.391 0.21 0.0002 0.0862 0.0033 0.0078 BMI (kg/m2) Waist circumference (cm) Fasting glucose (mmol/L) Fasting insulin (pmol/L) HOMA-IR Diabetes Metabolic syndrome Smoking Alcohol consumption (g/day) Fibrinogen (mg/dL) Low-density lipoprotein cholesterol (mmol/L) High-density lipoprotein cholesterol (mmol/L) Triglycerides (mmol/L) GGT (U/L) Systolic blood pressure (mm Hg) Diastolic blood pressure (mm Hg) Heart rate (beats/minute) FLI 1.000 1.002 0.998 1.003 1.005 1.006 0.999-1.002 1.001-1.003 0.991-1.005 0.992-1.015 0.994-1.016 1.000-1.011 0.658 0.0002 0.572 0.336 0.403 0.0321 Variable HR 95% CI BMI (kg/m2) Waist circumference (cm) Fasting glucose (mmol/L) Fasting insulin (pmol/L) HOMA-IR Diabetes Metabolic syndrome Smoking Alcohol consumption (g/day) Fibrinogen (mg/dL) Low-density lipoprotein cholesterol (mmol/L) High-density lipoprotein cholesterol (mmol/L) Triglycerides (mmol/L) GGT (U/L) Systolic blood pressure (mm Hg) Diastolic blood pressure (mm Hg) Heart rate (beats/minute) FLI 1.04 1.01 1.01 1.02 1.06 1.88 1.25 1.46 1.00 1.00 0.99 Age, sex, cigarette smoking, and FLI were independently associated with cancer mortality. When HOMAIR was included in the multivariate analysis, FLI did not retain its independent association. When the FLI factors were tested individually in the multivariate model in place of FLI, only GGT was associated with cancer mortality. Correlation Between FLI, HOMA-IR, and Markers of Low-Grade Inflammation. FLI was associated with the surrogate marker of insulin resistance (HOMA-IR; Spearman’s q ¼ 0.57, P < 0.0001) for the entire population. The relationship was detectable regardless of the diabetes status. In fact, FLI was associated with HOMA-IR in individuals with normal glucose tolerance (Spearman’s q ¼ 0.54, P < 0.0001) and in patients with IGT and type 2 diabetes (Spearman’s q ¼ 0.57, P < 0.0001). Table 7. Cox Proportional Hazards Model (Stepwise Selection) of the Predictors of 15-Year CVD Mortality by Multivariate Analysis Variable HR 95% CI P Value Age (years) Sex Systolic blood pressure (mm Hg) Fibrinogen (mg/dL) FLI 1.138 0.401 1.010 1.002 1.006 1.120-1.157 0.302-0.534 1.004-1.017 1.000-1.004 1.000-1.011 <0.0001 <0.0001 <0.0013 0.0173 0.0387 The summary report related to the multivariate analysis was performed with all the variables significant at P < 0.1 in the univariate analysis (with the exclusion of BMI, waist circumference, and HOMA-IR). Only variables remaining significantly associated are shown. When the FLI factors were individually tested in the multivariate models in place of FLI, the following factor was associated with CVD mortality: BMI (HR ¼ 1.033, 95% CI ¼ 1.001-1.066, P ¼ 0.046). FLI was associated with fibrinogen (Spearman’s q ¼ 0.06, P ¼ 0.007) as a surrogate marker of low-grade inflammation. To corroborate this association, we looked for other parameters; in previous studies, measurements of surrogate markers of low-grade inflammation were obtained for subgroups of individuals within the Cremona study. In particular, monocyte chemoattractant protein 1/chemokine (C-C motif ) ligand 2, tumor necrosis factor a soluble receptor II, and leptin were measured in a subgroup of 363 individuals to establish their relationship with CVD mortality during a follow-up period of 7 years.18 FLI was associated with tumor necrosis factor a soluble receptor II (Spearman’s q ¼ 0.14, P < 0.011) and with leptin (Spearman’s q ¼ 0.38, P < 0.0001) but not with monocyte chemoattractant protein 1/chemokine (C-C motif ) ligand 2 (Spearman’s q ¼ 0.011, P ¼ 0.86). The levels of high-sensitivity C-reactive protein were measured in a Table 9. Cox Proportional Hazards Model (Stepwise Selection) of the Predictors of 15-Year Cancer Mortality by Multivariate Analysis Variable HR 95% CI P Value Age (years) Sex Cigarette smoking FLI 1.069 0.557 1.259 1.006 1.054-1.084 0.389-0.797 1.041-1.522 1.001-1.011 <0.0001 <0.0014 <0.0175 <0.0304 The summary report was performed with all the variables significant at P < 0.1 in the univariate analysis. Only variables remaining significantly associated are shown (with the exclusion of HOMA-IR). When the FLI factors were individually tested in the multivariate models in place of FLI, the following factor was associated with cancer mortality: GGT (HR ¼ 1.002, 95% CI ¼ 1.001-1.003, P < 0.001). 150 CALORI ET AL. subgroup of 447 elderly subjects (65 years old) to establish its interaction with the lipid profile in the Cremona study19 and was associated with FLI (Spearman’s q ¼ 0.29, P < 0.0001). Discussion This work demonstrates an association between FLI and all-cause mortality in middle-aged individuals. FLI was associated not only with hepatic-related mortality but also with CVD and nonhepatic cancer mortality independently of the diabetes/IGT status and metabolic syndrome. For the first time, this surrogate marker was validated as a predictor of all-cause mortality in a population study; moreover, for the first time, an association between NAFLD and mortality rates was established during a 15-year follow-up period. Hepatic-related mortality was independent of the concomitant insulin-resistant state; in contrast, CVD, cancer, and all-cause mortality rates were tightly related to the concomitant insulin-resistant state estimated with HOMA-IR. Comparison With Previous Epidemiological Studies. CVD and cancer were the two most common causes of death in the Cremona population, and chronic liver disease (cirrhosis and hepatocellular carcinoma in particular) accounted for 7% of all deaths. FLI was associated with an absolute reduction of the survival rate. This finding agrees with the data generated by the population study of Olmsted County, MN, in which NAFLD was associated with reduced survival in the general population with a follow-up period of 7 to 8 years20 and in people with type 2 diabetes with a follow-up period of 11 years.21 Also, the finding that FLI was associated with hepatic-related mortality (a combination of hepatocellular carcinoma– related mortality and cirrhosis-related mortality) is in agreement with the Olmsted County study, which also reported higher hepatic-related mortality among people with NAFLD20 with 7 to 8 years of follow-up. The association between FLI and CVD mortality is also in agreement with the reports discussed in the introduction and recently reviewed by Targher et al.,6 who summarized the robust evidence supporting the link between NAFLD and CVD in the literature. In all these studies, fatty livers were established through histological findings, ultrasonography, or surrogate markers such as alanine aminotransferase or GGT levels with different CVD endpoints (nonfatal CVD events, deaths from CVD, revascularization procedures, and all-cause mortality), but the maximum length of these studies was 7 to 8 years. In our study, FLI was HEPATOLOGY, July 2011 independently associated with CVD mortality after a 15-year observation period. These data, therefore, support the view and join the growing body of evidence suggesting that CVD may be the major cause of death among individuals with NAFLD. In our opinion, because FLI was also independently associated with cancer mortality regardless of hepatic-related mortality, we should not forgot that these data also suggest a link between NAFLD and mortality due to malignancies, which was also reported in diabetic patients of the Olmsted County study (but only as a trend).21 In our opinion, it is important to emphasize that in our study, FLI was more reliable than the glucose tolerance status (based on the OGTT procedure), metabolic syndrome (based on the Adult Treatment Panel III definition), and aminotransferases. Mechanistic Interpretation. The pathogenesis of diabetes and NAFLD are closely related to insulin resistance and hyperinsulinemia.22 Consequently, we wanted to determine whether the association of FLI with mortality rates was independent of a surrogate index of insulin resistance, HOMA-IR, which is based on the product of the fasting plasma insulin concentration and is frequently used in population studies.23 HOMA-IR has been reported to be associated with CVD mortality in several population studies,24-27 and we observed that HOMA-IR was also associated with cancer mortality in the population of the Cremona study (G. Perseghin, MD, G. Calori, MD, G. Lattuada, PhD, F. Ragogna, PhD, E. Dugnani, PhD, M. P. Garancini, MD, P. Crosignani, MD, M. Villa, MD, E. Bosi, MD, G. Ruotolo, MD, L. Piemonti, MD, unpublished data, 2011). In this set of data, FLI maintained its independent association with hepatic-related mortality; this suggests a specificity of this index that goes beyond the potential effects of other metabolic variables expressed by HOMA-IR. In contrast, FLI did not retain an independent association with CVD and cancer mortality rates when HOMA-IR was included in the analysis. The surrogate marker of insulin resistance appeared to be more important than FLI, and this suggests the primacy of the systemic insulin-resistant state over the fatty liver, which is the hepatic component of metabolic syndrome. We feel that it is very difficult to determine the roles of HOMA-IR and FLI; from a statistical point of view, the correlation between the two variables is considerable, and from a pathophysiological point of view, it is well known that NAFLD not only may be a marker of insulin resistance syndrome but also may be involved in its pathogenesis. In particular, it was hypothesized for CVD HEPATOLOGY, Vol. 54, No. 1, 2011 that the pathogenic process may be mediated through the systemic release of pro-atherogenic mediators from the inflamed liver to peripheral tissues. Following this line of thinking, we noticed that FLI was correlated with surrogate markers of low-grade inflammation, such as fibrinogen, high-sensitivity C-reactive protein, and tumor necrosis factor a soluble receptor II. Another mechanism tightly linking insulin resistance to the fatty liver is the recently reported alteration of hepatic adenosine triphosphate metabolism, which affects patients with type 2 diabetes and has been associated with the severity of the intrahepatic fat accumulation.28 Strengths and Limitations. The major strengths of the present study are as follows: (1) its population, which includes both males and females; (2) its careful and homogeneous acquisition of the anthropometric parameter of interest; and (3) most importantly, its long follow-up period (15 years). Its limitations are as follows: (1) its lack of intermediate data points for the parameters of interest during the 15-year observation period; (2) its lack of data about dietary habits and habitual physical activity, which have a well-recognized impact on insulin sensitivity and a fatty liver; and (3) the inferiority of the homeostasis model assessment versus the glucose clamp technique, which is the gold standard for the assessment of insulin sensitivity. 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