Literature DB >> 26083112

Dietary Patterns Modulate the Risk of Non-Alcoholic Fatty Liver Disease in Chinese Adults.

Chao-Qun Yang1, Long Shu2, Shuai Wang3, Jia-Jia Wang4, Yu Zhou5, Yu-Jie Xuan6, Su-Fang Wang7.   

Abstract

Although previous studies reported the associations between the intakes of individual foods or nutrients and the risk of non-alcoholic fatty liver disease (NAFLD), the relationship between dietary patterns and NAFLD in the Chinese population has been rarely studied to date. This study aimed to investigate the associations between dietary patterns and the risk of NAFLD in a middle-aged Chinese population. The Study subjects were 999 Chinese adults aged 45-60 years in the Anhui province who participated in the Hefei Nutrition and Health Study. Dietary intake was collected by a semi-quantitative food frequency questionnaire. NAFLD was defined as the presence of moderate-severe hepatic steatosis (by B-ultrasonic examination); the absence of excessive alcohol use (>20 g day(-1) in men and 10 g day(-1) in women); no use of steatogenic medications within the past six months; no exposure to hepatotoxins; and no history of bariatric surgery. Log-binomial regression analysis was used to examine the association between dietary patterns and NAFLD with adjustment of potential confounding variables. Out of 999 participants, 345 (34.5%) were classified as having NAFLD. Four major dietary patterns were identified: "Traditional Chinese", "Animal food", "Grains-vegetables" and "High-salt" dietary patterns. After adjusting for potential confounders, subjects in the highest quartile of the "Animal food" pattern scores had greater prevalence ratio for NAFLD (prevalence ratio (PR) = 1.354; 95% confidence interval (CI): 1.063-1.724; p < 0.05) than did those in the lowest quartile. After adjustment for body mass index (BMI), compared with the lowest quartile of the "Grains-vegetables" pattern, the highest quartile had a lower prevalence ratio for NAFLD (PR = 0.777; 95% CI: 0.618-0.977, p < 0.05). However, the "traditional Chinese" and "high-salt" dietary patterns showed no association with the risk of NAFLD. Our findings indicated that the "Animal food" dietary pattern was associated with an increased risk of NAFLD.

Entities:  

Keywords:  China; dietary patterns; factor analysis; non-alcoholic fatty liver disease

Mesh:

Year:  2015        PMID: 26083112      PMCID: PMC4488813          DOI: 10.3390/nu7064778

Source DB:  PubMed          Journal:  Nutrients        ISSN: 2072-6643            Impact factor:   5.717


1. Introduction

Non-alcoholic fatty liver disease (NAFLD), including simple steatosis, non-alcoholic steatohepatitis (NASH) and cirrhosis, is the most common cause of chronic liver disease worldwide [1]. In China, NAFLD, parallel with increased obesity, has been recognized as a major health problem and the prevalence is increasing year by year [2,3]. In the United States, NAFLD is a significant health problem and affects 70 million adults (~30% of the adult population) [4]. A close and bi-directional relationship links NAFLD with the metabolic syndrome: not only the former is the hepatic manifestation of the latter, but also a common precursor to the development of the full-blown metabolic syndrome and its individual components [5,6,7]. Over the past decades, diet has been considered as an important pathogenic factor of NAFLD. Many epidemiological studies have examined the associations between the intakes of individual foods or nutrients and the risk of NAFLD [4,8,9]. Nevertheless, more commonly in reality, people do not take nutrients alone but consume meals containing many combinations of foods and nutrients [10,11]. In this context, dietary pattern analysis has emerged as a more recognizable approach to assess dietary exposures in nutritional epidemiology. Moreover, due to its ability to examine the holistic effect of diet, dietary pattern analysis also has been used to identify the associations between diet and many chronic diseases [12,13,14]. Recently, there has been considerable attention focused on the associations between overall dietary patterns and the risk of NAFLD. In particular, the Mediterranean diet has been reported to have beneficial effects in the prevention and the treatment of NAFLD [14]. To date, however, there is little published information on the relationship between dietary patterns and the risk of NAFLD in the Chinese population. Given this gap in knowledge, the purpose of this study was to find the association of different dietary patterns and the risk of NAFLD among Chinese adults aged 45–60 years.

2. Subjects and Methods

2.1. Study Population

This cross-sectional study was carried-out in Hefei, the capital of Anhui Province in China from December 2011 to June 2012. Hefei is composed of four areas (Shushan, Yaohai, Luyang and Baohe) and four counties (Feidong, Feixi, Lujiang and Changfeng). It is a region characterized by high intakes of fruit, pork, poultry, rice, vegetables, aquatic products and nuts in China [15]. We chose two residential communities/villages from every area/country randomly, and according to resident health records, all people aged 45–60 years, living in the selected communities/villages, were included in the study. A total of 1776 subjects, aged between 45 and 60, were invited to the Medical Center for Physical Examination. In the Anhui Province Hospital of Armed Police Forces, study participants were interviewed by a trained staff with food frequency questionnaires. After exclusion of 274 participants with missing or incomplete dietary information in their questionnaires, 1502 participants were included for the analysis of dietary pattern. In addition, we further excluded 503 participants who self-reported a history of drug usage, drinking or hereditary diseases. Finally, 999 participants remained for the analysis of the relationship between dietary patterns and NAFLD. The study was approved by the institutional review and ethics committee of Anhui medical university, China, and written informed consent was obtained from each participant.

2.2. Anthropometric and Physical Activity Measurements

Body height was measured to the nearest 0.1 cm with subjects standing without shoes. Body weight in light clothes was measured to the nearest 0.1 kg. Body mass index (BMI) was calculated as weight in kilograms divided by squared height in meters. Waist circumstance (WC) was measured as the middle between the lowest rib and the superior border of the iliac crest with an inelastic measuring tape at the end of normal expiration to the nearest 1 mm and hip circumstance was measured at the maximum level over light clothing, using an inelastic plastic tape [16,17]. Information on physical activity was collected using a validated physical activity questionnaire (including the level of physical activity at work, transportation, exercise, sitting, sleeping and household activities.). The physical activity levels were measured as metabolic equivalent in hours per week (MET-h week−1) in which different MET levels were ranged on a scale from sleeping (0.9 METs) to high-intensity physical activities (>6 METs). The level of physical activity was the product of time spent in each activity multiplied by specific metabolic equivalent values based on the compendium of physical activities [18].

2.3. Assessment of Dietary Intake

Dietary intake was assessed by using a 143-item (57 food groups) semi-quantitative food frequency questionnaire (FFQ). The FFQ was based on the food frequency questionnaire used in the 2010 China National Nutrition and Health Survey (CNNHS). Participants were asked to recall the frequency of each food item during the past year and the estimated portion size, using local weight units (1 Liang = 50 g) or natural units (cups). Intakes of food were converted into g day−1 and were used in the following analysis.

2.4. Clinical and Laboratory Examination

Blood samples were collected between 7:00 and 9:00 a.m. after fasting overnight (12 h), allowing to clot at room temperature for 1–3 h. Subsequently, a separation of serum was made via centrifugation for 15 min at 3000 rpm. The samples were analyzed in the Medical Center for Physical Examination, Anhui Province Hospital of Armed Police Forces for fasting blood glucose, serum triglycerides, total cholesterol, HDL and LDL cholesterol, and uric acid, using the Hitachi 7180 auto-analyzer (Hitachi, Tokyo, Japan).

2.5. Blood Pressure Measurement

For blood pressure measurement, participants were first asked to rest for 10 min. Then, a trained nurse measured the blood pressure twice on seated participants using a standard mercury sphygmomanometer, and the mean of two measurements was considered as the participants blood pressure.

2.6. Definition of Other Variables

Hypertension was defined as a systolic pressure of 140 mmHg or higher and/or a diastolic pressure of 90 mmHg or higher [19]; Obesity was defined by BMI ≥ 28 kg m−2 and abdominal adiposity was defined as (male: WC ≥ 85 cm; female: WC ≥ 80 cm); Dyslipidemia was defined as presenting ≥ 1 of the following individual components: hypertriglyceridemia (triglycerides ≥ 150 mg dL−1 or ≥ 1.7 mmol L−1), hypercholesterolemia (serum total cholesterol ≥ 200 mg dL −1), low HDL-cholesterol (HDL-C < 50 mg dL−1 or <1.3 mmol L−1), and high LDL-cholesterol (LDL-C ≥ 130 mg dL−1) [20]. NAFLD was defined as the presence of moderate-severe hepatic steatosis (by B-ultrasonic examination), the absence of excessive alcohol use (>20 g day−1 in men and 10 g day−1 in women), no use of steatogenic medications within the past six months, no exposure to hepatotoxins, and no history of bariatric surgery [21].

2.7. Statistical Analyses

Factor analysis (principal component) was used to derive dietary patterns based on the frequency of consumption of 57 food groups in the FFQ. The factors were rotated using an orthogonal transformation (varimax rotation) to obtain a simpler structure with better interpretability. The eigenvalue and scree plot were applied to decide which factors remained [22]. Labeling of dietary patterns was based on the interpretation of foods with high factor loadings for each dietary pattern [23]. Only foods with a factor loading ≥ |0.25| were included in this study. Factor scores were categorized into quartiles (quartile 1 represented a low intake of the food pattern; quartile 4 represented a high intake of the food pattern). The characteristics of study participants were calculated across quartiles of each dietary pattern. Data for continuous variables is presented as mean values and standard deviation. Categorical variables are presented as sum and percentages. We used Analysis of variance (ANOVA) to describe mean differences by continuous and the chi-squared test to examine the difference between categorical variables. Log-binomial regression analysis was used to evaluate the relationship between dietary patterns and the risk of NAFLD, adjusted for gender, physical activity, WC, BMI, fasting plasma glucose and blood pressure. Two-sided p-values < 0.05 were considered statistically significant. All analyses were performed on the Statistical Package for Social Sciences (version 16.0, SPSS Inc., Chicago, IL, USA).

3. Results

Overall prevalence of NAFLD in our study population was 34.5%. Demographic, anthropometric, and clinical characteristics of participants with and without NAFLD are presented in Table 1 (n = 999). There were significant differences between participants with and without NAFLD by gender, smoking status, education economic income and central obesity.
Table 1

Demographic and lifestyle characteristics of participants in the Hefei Nutrition and Health Study.

VariablesParticipants with NAFLD n = 345Participants without NAFLD n = 654Significance *
Demographic
Age (years)51.06 ± 4.4550.92 ± 4.76p = 0.651
Gender
Male245 (71.0)220 (33.6)p = 0.000
Female101 (29.0)434 (66.4)
Smoking status (%)
Never226 (65.5)561 (85.8)p = 0.000
Former10 (2.9)4 (0.6)
Current109 (31.6)89 (13.6)
Education (%)
<High school72 (20.9)181 (27.7)p = 0.034
High school105 (30.4)201 (30.7)
>High school168 (48.7)272 (41.6)
Monthly income per person (%)
≤1000 (RMB)85 (24.6)193 (29.6)p = 0.036
1000–2000 (RMB)158 (45.8)245 (37.5)
>2000 (RMB)102 (29.6)216 (32.9)
Physical activity (%)
Light231 (82.8)416 (80.5)p = 0.542
Moderate42 (15.0)81 (15.7)
Vigorous6 (2.2)18 (3.5)
Central obesity (%)
Yes278 (80.6)251 (38.4)p = 0.000
No67 (19.4)403 (61.6)

Categorical variables are presented as sum and percentages, and continuous variables are presented as Mean ± SD. Abbreviation: NAFLD: Non-alcoholic fatty liver disease. * p values for continuous variables (Analysis of variance) and for Categorical variables (chi-square test).

Demographic and lifestyle characteristics of participants in the Hefei Nutrition and Health Study. Categorical variables are presented as sum and percentages, and continuous variables are presented as Mean ± SD. Abbreviation: NAFLD: Non-alcoholic fatty liver disease. * p values for continuous variables (Analysis of variance) and for Categorical variables (chi-square test). Four major dietary patterns were identified by factor analysis: the “traditional Chinese” pattern (high intakes of staple food, coarse grains, fruits, eggs, fish and shrimp, milk, and tea), the “animal food” pattern (high intakes of kelp/seaweed and mushroom, pork, beef, mutton, poultry, cooked meat, eggs, fish and shrimp, beans and grease); the “grains-vegetables” pattern (high intakes of coarse grains, tubers, vegetables, mushroom and kelp/seaweed, cooked meat, and beans), and the “high-salt” pattern (high intake of rice, pickled vegetables, processed meat, bacon, salted deck egg, salted fish and tea). The four factors explained 33.4% of the total variables in dietary intake (9.1%, 8.9%, 7.8% and 7.6%, respectively). In addition, the factor-loading matrixes for these dietary patterns are shown in Table 2.
Table 2

Rotated factor loading matrix for the four dietary patterns among 999 Chinese people aged 45–60 years *.

Food GroupsDietary Patterns
Traditional ChineseAnimal FoodGrains-VegetableHigh-Salt
Rice---0.569
Steamed bun/noodles0.440---
Coarse grains0.438-0.379-
Tubers--0.641-
Vegetables--0.654-
Pickled vegetables---0.686
Mushroom-0.3100.471-
Fresh fruits0.615---
Livestock meat-0.660--
poultry-0.550--
Processed meat-0.5020.328-
Bacon and salted fish---0.594
Eggs0.4990.286--
Fish and shrimp0.3670.362--
Dairy products0.609--
Legumes0.2780.2710.321-
Fats and oils-0.326--
Fast foods-- 0.273
Tea0.257--0.307

* Absolute values < 0.25 were excluded for simplicity.

Rotated factor loading matrix for the four dietary patterns among 999 Chinese people aged 45–60 years *. * Absolute values < 0.25 were excluded for simplicity. The characteristics of study participants across quartile categories of the dietary pattern scores are shown in Table 3. Those participants in the highest quartile of the “traditional Chinese” pattern were more likely to be females, were less likely to be smokers, and were significantly in a higher education level and income, lower prevalence of NAFLD and moderate physical activity. Conversely, compared with the lowest quartile of the “Animal food” pattern there were more likely to be male and smokers, a lower age, higher BMI, WC, and were significantly higher prevalence of obese and NAFLD. In addition, participants in the highest quartile of the “Grains-vegetables” pattern were less likely to be smokers and were more likely to be females, were significantly at a higher age, and showed a lower prevalence of NAFLD than those in the lowest quartile. Participants in the highest quartile of the “high-salt” pattern were more likely to be male, smokers, low income, higher BMI, WC and higher prevalence of NAFLD than those in the lowest quartile.
Table 3

Characteristics of the study participants by quartile (Q) categories of dietary pattern scores in the Hefei Nutrition and Health Study.

Traditional Chinese p Animal Food p Grains-Vegetables p High-Salt p
Q1 (n = 250)Q4 (n = 250)Q1 (n = 250)Q4 (n = 250)Q1 (n = 250)Q4 (n = 250)Q1 (n = 250)Q4 (n = 250)
Age (year)51.28 ± 4.7950.89 ± 4.640.35351.25 ± 4.7550.22 ± 4.33<0.0550.54 ± 4.5151.38 ± 4.70<0.0550.86 ± 4.5451.20 ± 4.770.415
BMI (kg m−2)24.44 ± 2.9124.00 ± 3.020.09824.06 ± 2.6924.71 ± 2.93<0.0524.09 ± 3.0024.17 ± 3.000.74624.00 ± 2.9424.75 ± 2.80<0.01
WC (cm)84.24 ± 9.0582.68 ± 9.390.06082.59 ± 8.5585.59 ± 8.70<0.00183.80 ± 9.4983.90 ± 9.000.91081.96 ± 8.2885.70 ± 8.80<0.001
Obese (%)27 (10.8)24 (9.6)0.40618 (7.2)34 (13.6)<0.0122 (8.8)33 (13.2)0.21425 (10.0)30 (12.0)0.080
Hypertension (%)75 (30.0)58 (23.2)0.08567 (26.8)72 (28.8)0.61874 (29.6)68 (27.2)0.55265 (26.0)81 (32.4)0.116
NAFLD (%)101 (40.4)68 (27.2)<0.0166 (26.4)112 (44.8)<0.00199 (39.6)76 (30.4)<0.0570 (28.0)94 (37.6)<0.05
Gender
Male152 (60.8)89 (35.6)<0.00189 (35.6)150 (60.0)<0.001134 (53.6)111 (44.4)<0.0570 (28.0)155 (62.0)<0.001
Female98 (39.2)161 (64.4) 161 (64.4)100 (40.0) 116 (46.4)139 (55.6) 180 (72.0)95 (38.0)
Smoking Status (%)
Never185 (74.0)213 (85.2)<0.01212 (84.8)171 (68.4)<0.001178 (71.2)203 (81.2)<0.05211 (84.4)187 (74.8)<0.05
Former4 (1.6)4 (1.6) 2 (0.8)5 (2.0) 2 (0.8)4 (1.6) 3 (1.2)4 (1.6)
Current61 (24.4)33 (13.2) 36 (14.4)74 (29.6) 70 (28.0)43 (17.2) 36 (14.4)59 (23.6)
Education (%)
<High school82 (32.8)48 (19.2)<0.00173 (29.2)63 (25.2)0.54971 (28.4)58 (23.2)0.11050 (20.0)67 (26.8)0.142
High school93 (37.2)69 (27.6) 74 (29.6)74 (29.6) 68 (27.2)89 (35.6) 77 (30.8)78 (31.2)
>High school75 (30.0)133 (53.2) 103 (41.2)113 (45.2) 111 (44.4)103 (41.2) 123 (49.2)105 (42.0)
Monthly Income Per Person (%)
≤1000 (RMB)104 (41.6)53 (21.2)<0.00180 (32.0)60 (24.0)0.13365 (26.0)65 (26.0)0.44949 (19.6)88 (35.2)<0.001
1000–2000 (RMB)94 (37.6)97 (38.8) 89 (35.6)97 (38.8) 114 (45.6)102 (40.8) 98 (39.2)106 (42.4)
>2000 (RMB)52 (20.8)100 (40.0) 81 (32.4)93 (37.2) 71 (28.4)83 (33.2) 103 (41.2)56 (22.4)
Physical Activity (%)
Light182 (72.8)222 (88.8)<0.001199 (79.6)213 (85.2)0.247213 (85.2)211 (84.4)0.656222 (88.8)209 (83.6)0.111
Moderate54 (21.6)26 (10.4) 40 (16.0)30 (12.0) 33 (13.2)32 (12.8) 26 (10.4)34 (13.6)
Vigorous14 (5.6)2 (0.8) 11 (4.4)7 (2.8) 4 (1.6)7 (2.8) 2 (0.8)7 (2.8)

Categorical variables are presented as sum and percentages, and continuous variables are presented as Mean ± SD. Abbreviation: WHR, Waist hip rate; BMI, Body mass index; WC, Waist circumference; NAFLD: Non-alcoholic fatty liver disease. * p values for continuous variables (Analysis of variance) and for Categorical variables (chi-square test).

Characteristics of the study participants by quartile (Q) categories of dietary pattern scores in the Hefei Nutrition and Health Study. Categorical variables are presented as sum and percentages, and continuous variables are presented as Mean ± SD. Abbreviation: WHR, Waist hip rate; BMI, Body mass index; WC, Waist circumference; NAFLD: Non-alcoholic fatty liver disease. * p values for continuous variables (Analysis of variance) and for Categorical variables (chi-square test). The associations between different dietary patterns and the risk of NAFLD by Log-binomial regression were shown in Table 4. After adjusting for potential confounders, subjects in the highest quartile of the “Animal food” pattern scores had greater prevalence ratio for NAFLD (PR = 1.354; 95% CI: 1.063–1.724; p < 0.05) than did those in the lowest quartile. After adjustment for BMI, compared with the lowest quartile of the “Grains-vegetables” pattern, the highest quartile had a lower prevalence ratio for NAFLD (PR = 0.777; 95% CI: 0.618–0.977, p < 0.05). However, the “traditional Chinese” and “high-salt” dietary patterns showed no association with the risk of NAFLD.
Table 4

Multivariable models adjusted for non-alcohol fatty liver disease across the quartile (Q) categories of the dietary patterns in Anhui Province, China.

Model 1 1Model 2 2Model 3 3
PR 95% CIPR 95% CIPR 95% CI
Traditional Chinese
Q11.000 1.000 1.000
Q20.8910.713, 1.1140.9340.751, 1.1610.9580.772, 1.188
Q30.8550.681, 1.0741.0230.820, 1.2770.9710.782, 1.206
Q40.6730.523, 0.8670.8610.674, 1.1010.8370.660, 1.063
P <0.01 >0.05 >0.05
Animal Food
Q11.000 1.000 1.000
Q21.1520.871, 1.5231.0840.828, 1.4181.0550.814, 1.366
Q31.3841.063, 1.8021.1920.922, 1.5411.2020.935, 1.545
Q41.6971.324, 2.1761.3541.063, 1.7241.2550.991, 1.589
P <0.01 <0.05 >0.05
Grains-Vegetables
Q11.000 1.000 1.000
Q20.8890.708, 1.1160.9740.782, 1.2150.9050.727, 1.126
Q30.8320.658, 1.0510.9300.736, 1.1760.8600.683, 1.083
Q40.7680.603, 0.9780.8210.651, 1.0360.7770.618, 0.977
P <0.05 >0.05 <0.05
High-Salt
Q11.000 1.000 1.000
Q21.0860.826, 1.4270.9490.724, 1.2441.0110.771, 1.325
Q31.5061.177, 1.9271.1080.871, 1.4091.0500.827, 1.331
Q41.3431.041, 1.7330.9330.725, 1.2010.9140.713, 1.171
P <0.05 >0.05 >0.05

1 unadjusted; 2 Further adjusted gender, age, physical activity, smoking status and blood pressure; 3 Additionally adjusted for body mass index.

Multivariable models adjusted for non-alcohol fatty liver disease across the quartile (Q) categories of the dietary patterns in Anhui Province, China. 1 unadjusted; 2 Further adjusted gender, age, physical activity, smoking status and blood pressure; 3 Additionally adjusted for body mass index.

4. Discussion

In this cross-sectional study of a middle-aged Chinese population, we identified four dietary patterns by means of factor analysis: “traditional Chinese”, “animal food”, “grains-vegetables” and “high-salt”. Further analysis showed that food consumption in the “animal food” dietary pattern was associated with an increased risk of NAFLD and in the “grains-vegetables” dietary pattern was associated with an decreased risk of NAFLD, whereas “traditional Chinese” and “high-salt” dietary patterns were not associated with NAFLD. These associations were independent of gender, age, physical activity, BMI, smoking status and blood pressure. To our knowledge, this is the first study to examine the associations between different dietary patterns and the risk of NAFLD in a middle-aged Chinese population. The “traditional Chinese” pattern, characterized by a high consumption of staple food, coarse grains, fruits, eggs, fish and shrimp, milk, and tea, is generally considered a healthy dietary pattern. However, we did not find a negative association of this pattern with NAFLD, though the prevalence of NAFLD for the highest category of this pattern was lower compared with the lowest category (27.2% vs. 40.4%). The complex nature of this pattern may explain this finding to some extent. On the one hand, some foods in the “traditional Chinese” pattern are a low-fat and high-carbohydrate, which have been found to promote the development of fatty liver via increased de novo fatty acid synthesis [24]. Additionally, fruits contain large amounts of fructose. Previous studies have found that consumption of fructose is associated with an increased risk of NAFLD [25,26]. On the other hand, some foods in the traditional Chinese dietary pattern have a low glycemic index, which have been shown to decrease total cholesterol levels, resulting in the decreased risk of NAFLD [27]. Moreover, the excess consumption of vegetable and fruits is likely to contribute to a high intake of antioxidant vitamins (e.g., vitamin A, C and E) in this pattern. It is well known that antioxidant vitamins have a protective role against oxidative stress [28], and have been reported to be associated with decreased risk of NAFLD [29,30,31]. Furthermore, dietary fiber intake has also been found to be inversely correlated with insulin resistance, which has been reported to be the risk factor for NAFLD [32]. The “Animal food” pattern, characterized by a high intake of kelp/seaweed and mushroom, pork, beef, mutton, poultry, cooked meat, eggs, fish and shrimp, beans and grease, was positively associated with the risk of NAFLD in the Chinese population, after adjustment for confounding factors. This association was independent of the BMI, suggesting that the association was not linked to obesity. Our finding was consistent with the present knowledge. The positive association between “animal food” pattern and NAFLD could be attributed to this patterns unhealthy constituents (saturated, trans, and monounsaturated fat, and soft drinks). A recent study showed that saturated fatty acids have adverse effects on lipid and glucose homeostasis, which in turn worsen the progression of metabolic syndrome and NAFLD [33]. Moreover, soft drinks contain large amounts of fructose, which has been documented to be associated with increased risk of NAFLD [34]. Meanwhile, soft drinks are also rich in caramel and aspartame that potentially increase insulin resistance and inflammation [35]. Furthermore, previous studies have also indicated that fast-food consumption is positively associated with obesity and insulin resistance, major risk factors for NAFLD [36,37]. The “grains-vegetables” dietary pattern was characterized by high intakes of coarse grains, tubers, vegetables, mushroom and kelp/seaweed, cooked meat, and beans. In this study, we found a trend of an inverse association between the “grains-vegetables” dietary pattern and the risk of NAFLD (PR = 0.777, p < 0.05). Participants in the highest quartile of the “grains-vegetables” dietary pattern had a lower prevalence of NAFLD than those in lowest quartile (30.4% vs. 39.6%). In addition, dietary fiber intake has also been found to be inversely correlated with insulin resistance, which has been reported to be the risk factor for NAFLD [32]. Furthermore, fish contain a large number of unsaturated fatty acids (e.g., omega-3 polyunsaturated fatty acids (omega-3 PUFA)), which have been shown to decrease total cholesterol and triacylglycerol concentrations [38,39]. More recently, the protective role of omega-3 PUFA in NAFLD has also been reported in two pilot clinical trials [40,41]. Mushroom is a low-fat and healthy food, and constituents of this food have been reported to be associated with a reduced risk of NAFLD [29,30,31]. Significant association was found between the “high-salt” dietary pattern and the risk of NAFLD, the prevalence of NAFLD was higher for the highest quartile of this dietary pattern compared with the lowest quartile (37.6% vs. 28.0%). The “high-salt” pattern was also considered an unhealthy dietary pattern, which was characterized by a high consumption of rice, pickled vegetables, processed meat, bacon, salted deck egg, salted fish and tea. The association between this pattern and the risk of NAFLD might partly be explained by the fact that this pattern contained large amounts of meat (including saturated fat and cholesterol), vegetables (including vitamin C and E), fish (including unsaturated fatty acids) and salt. On the one hand, previous studies showed that saturated fatty acids have an adverse effect on NAFLD [33]. Additionally, animal and human studies have shown that a diet high in salt not only increases blood pressure but also deteriorates insulin metabolism [42,43]. On the other hand, vitamin C and E contained in vegetables possess antioxidant properties that protect against the development of NAFLD [29,30,31]. In addition, as previously reported [40,41], omega-3 PUFA contained in fish has a protective role against NAFLD. Furthermore, no association also may be related to moderate and vigorous physical activity in this pattern. A recent review by Mouzaki showed that vigorous physical activity was associated with decreased risk of developing NAFLD [9].

5. Strengths and Limitations

There are a number of strengths and limitations in this study. First, to the best of our knowledge, this is the first study investigating the relationships between different dietary patterns and the risk of NAFLD in a Chinese population. It provides evidence into the association between dietary patterns and the risk of NAFLD in the Chinese context. Second, the use of a validated semi-quantitative FFQ by a face-to-face interview ensured that the data we collected are accurate. Furthermore, for reliability, we have adjusted for potential known confounders in our analyses. Nevertheless, several possible limitations also need to be considered in the interpretation of the present findings. It is noteworthy that the main limitation of this study is its cross-sectional nature, which prevented us from making a causal inference based on our results. Thus, our results remain to be confirmed in a future prospective study. Another limitation is principal component analysis, which requires several arbitrary decisions on the selection of included variables, the number of retained factors, the method of rotation and the labels of the factors [44]. In conclusion, our findings indicate that the “animal food” dietary pattern was significantly associated with an increased risk of NAFLD, and the “grains-vegetable” dietary pattern was significantly associated with a decreased risk of NAFLD where this association was independent of gender, age, physical activity, BMI, smoking status and blood pressure. Nevertheless, future prospective studies are required to confirm these findings. Elucidation of how diet contributes to the development of NAFLD is very important due to its high prevalence and relation to many adverse health outcomes in a Chinese population. Therefore, findings from this study could inform dietary prevention strategies as well as prognosis among subjects with high risk of NAFLD.

6. Conclusions

In conclusion, our findings indicated that the “Animal food” dietary pattern was associated with an increased risk of NAFLD.
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Authors:  Guido Lastra; Sonal Dhuper; Megan S Johnson; James R Sowers
Journal:  Nat Rev Cardiol       Date:  2010-08-10       Impact factor: 32.419

Review 4.  Impact of body weight, diet and lifestyle on nonalcoholic fatty liver disease.

Authors:  Helena Cortez-Pinto; Mariana Machado
Journal:  Expert Rev Gastroenterol Hepatol       Date:  2008-04       Impact factor: 3.869

Review 5.  Regulation of hepatic gene expression by saturated fatty acids.

Authors:  T Vallim; A M Salter
Journal:  Prostaglandins Leukot Essent Fatty Acids       Date:  2010-03-12       Impact factor: 4.006

6.  Soft drink consumption is associated with fatty liver disease independent of metabolic syndrome.

Authors:  Ali Abid; Ola Taha; William Nseir; Raymond Farah; Maria Grosovski; Nimer Assy
Journal:  J Hepatol       Date:  2009-08-21       Impact factor: 25.083

Review 7.  Nonalcoholic fatty liver disease and low-carbohydrate diets.

Authors:  Linda Wasserbach York; Swathy Puthalapattu; George Y Wu
Journal:  Annu Rev Nutr       Date:  2009       Impact factor: 11.848

8.  Food patterns and cardiovascular disease risk factors: the Swedish INTERGENE research program.

Authors:  Christina M Berg; Georgios Lappas; Elisabeth Strandhagen; Alicja Wolk; Kjell Torén; Annika Rosengren; Nibia Aires; Dag S Thelle; Lauren Lissner
Journal:  Am J Clin Nutr       Date:  2008-08       Impact factor: 7.045

9.  Harmonizing the metabolic syndrome: a joint interim statement of the International Diabetes Federation Task Force on Epidemiology and Prevention; National Heart, Lung, and Blood Institute; American Heart Association; World Heart Federation; International Atherosclerosis Society; and International Association for the Study of Obesity.

Authors:  K G M M Alberti; Robert H Eckel; Scott M Grundy; Paul Z Zimmet; James I Cleeman; Karen A Donato; Jean-Charles Fruchart; W Philip T James; Catherine M Loria; Sidney C Smith
Journal:  Circulation       Date:  2009-10-05       Impact factor: 29.690

10.  Fructose consumption as a risk factor for non-alcoholic fatty liver disease.

Authors:  Xiaosen Ouyang; Pietro Cirillo; Yuri Sautin; Shannon McCall; James L Bruchette; Anna Mae Diehl; Richard J Johnson; Manal F Abdelmalek
Journal:  J Hepatol       Date:  2008-03-10       Impact factor: 25.083

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  31 in total

Review 1.  Nutrition and Hepatocellular Cancer.

Authors:  Kerstin Schütte; Christian Schulz; Peter Malfertheiner
Journal:  Gastrointest Tumors       Date:  2015-11-18

Review 2.  Nutritional Approaches to Achieve Weight Loss in Nonalcoholic Fatty Liver Disease.

Authors:  Christine C Hsu; Erik Ness; Kris V Kowdley
Journal:  Adv Nutr       Date:  2017-03-15       Impact factor: 8.701

Review 3.  Magnitude of Nonalcoholic Fatty Liver Disease: Eastern Perspective.

Authors:  Becky Ching-Yeung Yu; Deborah Kwok; Vincent Wai-Sun Wong
Journal:  J Clin Exp Hepatol       Date:  2019-02-07

4.  The association between major dietary patterns with the risk of non-alcoholic fatty liver disease, oxidative stress and metabolic parameters: A case-control study.

Authors:  Fateme Moradi; Seyedeh Parisa Moosavian; Farhang Djafari; Azam Teimori; Zahra Faghih Imani; Amirmansour Alavi Naeini
Journal:  J Diabetes Metab Disord       Date:  2022-03-19

Review 5.  A Fad too Far? Dietary Strategies for the Prevention and Treatment of NAFLD.

Authors:  Mary P Moore; Rory P Cunningham; Ryan J Dashek; Justine M Mucinski; R Scott Rector
Journal:  Obesity (Silver Spring)       Date:  2020-09-06       Impact factor: 5.002

6.  Association between Dietary Patterns and the Indicators of Obesity among Chinese: A Cross-Sectional Study.

Authors:  Long Shu; Pei-Fen Zheng; Xiao-Yan Zhang; Cai-Juan Si; Xiao-Long Yu; Wei Gao; Lun Zhang; Dan Liao
Journal:  Nutrients       Date:  2015-09-17       Impact factor: 5.717

7.  Diet Quality in Midadulthood Predicts Visceral Adiposity and Liver Fatness in Older Ages: The Multiethnic Cohort Study.

Authors:  Gertraud Maskarinec; Unhee Lim; Simone Jacobs; Kristine R Monroe; Thomas Ernst; Steven D Buchthal; John A Shepherd; Lynne R Wilkens; Loïc Le Marchand; Carol J Boushey
Journal:  Obesity (Silver Spring)       Date:  2017-08       Impact factor: 5.002

8.  Dietary intake alters gene expression in colon tissue: possible underlying mechanism for the influence of diet on disease.

Authors:  Andrew J Pellatt; Martha L Slattery; Lila E Mullany; Roger K Wolff; Daniel F Pellatt
Journal:  Pharmacogenet Genomics       Date:  2016-06       Impact factor: 2.089

9.  Association between Dietary Vitamin C Intake and Non-Alcoholic Fatty Liver Disease: A Cross-Sectional Study among Middle-Aged and Older Adults.

Authors:  Jie Wei; Guang-Hua Lei; Lei Fu; Chao Zeng; Tuo Yang; Shi-Fang Peng
Journal:  PLoS One       Date:  2016-01-29       Impact factor: 3.240

10.  Waist circumference is a mediator of dietary pattern in Non-alcoholic fatty liver disease.

Authors:  Alireza Ghaemi; Narjes Hosseini; Saeed Osati; Mohammad Mehdi Naghizadeh; Azizallah Dehghan; Elham Ehrampoush; Behnam Honarvar; Reza Homayounfar
Journal:  Sci Rep       Date:  2018-03-19       Impact factor: 4.379

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