Literature DB >> 31908434

Risk Factors For Hyperuricemia In Chinese Centenarians And Near-Centenarians.

Qiu-Xia Han1,2,3, Dong Zhang1, Ya-Li Zhao4, Liang Liu5, Jing Li5, Fu Zhang5, Fu-Xin Luan5, Dong-Wei Liu3, Zhang-Suo Liu3, Guang-Yan Cai1,2, Xiang-Mei Chen1,2, Han-Yu Zhu1.   

Abstract

PURPOSE: Hyperuricemia is an important potential pathogenic factor for hypertension, cardiovascular disease and stroke. The current study aimed to investigate the prevalence of hyperuricemia and its relationship to lifestyle characteristics and dietary habits in centenarians and near-centenarians. PATIENTS AND METHODS: In total, 966 centenarians and 788 near-centenarians were included. Community-based surveys were conducted to collect information about lifestyle. Blood examinations were performed using enzymatic assays. T-tests and χ2 tests were used to investigate significant indicators of hyperuricemia, and multivariate logistic regression was used to analyze the related risk factors. A comprehensive analysis of nineteen modifiable factors, including lifestyle characteristics, dietary habits, general characteristics and blood test indexes, was conducted.
RESULTS: The prevalence of hyperuricemia was 29.02%. The percentage of men, waist circumference (WC), waist-hip ratio, estimated glomerular filtration rate (eGFR), levels of total protein (TP), alanine aminotransferase, aspartate aminotransferase, triglycerides, high-density lipoprotein cholesterol, serum homocysteine, serum uric acid, serum urea and serum creatinine, passive smoking, alcohol consumption, snoring, preference for fried flavors, and meat, seafood and vegetable consumption were significantly different between the hyperuricemia group and the normouricemia group (p<0.05). Multivariate logistic regression analysis showed that WC (OR=1.020), eGFR (OR=0.960), TP level (OR=1.038), serum urea level (OR=1.154), passive smoking (OR=2.589), snoring (OR=2.003), meat consumption (OR=2.506), seafood consumption (OR=1.422) and vegetable consumption (OR=0.521) were significantly associated with the risk of hyperuricemia (p<0.05).
CONCLUSION: Low eGFR and vegetable consumption, high WC, TP, and serum urea levels, passive smoking, snoring, and high meat and seafood consumption were independent risk factors for hyperuricemia. It is recommended that people at high risk for hyperuricemia should actively limit their intake of fried food, alcohol and purine-rich food, increase their intake of fresh vegetables, actively treat sleep apnea syndrome, avoid passive smoking, maintain a healthy WC and seek to improve their kidney and liver function.
© 2019 Han et al.

Entities:  

Keywords:  centenarians; dietary; hyperuricemia; lifestyle; risk factors

Mesh:

Substances:

Year:  2019        PMID: 31908434      PMCID: PMC6927493          DOI: 10.2147/CIA.S223048

Source DB:  PubMed          Journal:  Clin Interv Aging        ISSN: 1176-9092            Impact factor:   4.458


Introduction

Hyperuricemia is a disease in which purine metabolism is abnormal for various reasons, resulting in an increase in uric acid concentration in the blood.1 With improvements in living standards and changes in dietary habits, the prevalence of hyperuricemia has increased annually.2 The 2007–2008 National Health and Nutrition Examination Survey (NHANES) found that the overall prevalence of hyperuricemia in the US population was 21.5%, an increase of 2.4% compared to the 1988–1994 NHANES-III results.3 Though hyperuricemia in the normal population does not cause clinically obvious symptoms, it is generally considered a precursor of gout and a potential pathogenic factor in metabolic syndrome, hypertension, diabetes, cardiovascular diseases and stroke.4,5 Therefore, it is important to identify patients who are at high risk of hyperuricemia in a timely manner and treat them, preventing subsequent related diseases and the consequential increased financial burden. Further analysis showed that the prevalence of hyperuricemia gradually increased with increasing age. The prevalence rate was 27.7% in the 60-year-old age group, 31.5% in the 70-year-old age group, and 36.8% in the 80-year-old age group.3 Thus, exploring the prevalence of hyperuricemia and associated risk factors in late life is very important, especially in centenarians. Centenarians are a widely accepted model of successful aging and represent an extreme of human life expectancy, because they have reached the limit of the human life span. The study of centenarians has allowed us to identify and focus on some of the most interesting biological problems of aging and longevity. However, there have been no reports on the prevalence of hyperuricemia in Chinese centenarians. The China Hainan Centenarian Cohort Study (CHCCS) was conducted in Hainan Province, which has the highest density of centenarians in China. Given that only a few modifiable factors associated with hyperuricemia have been identified, this study conducted a comprehensive analysis of nineteen modifiable factors, including lifestyle characteristics, dietary habits, general characteristics and blood test indexes. Our study aimed to investigate the prevalence of hyperuricemia and identify the related risk factors to enable us to implement appropriate preventive and treatment measures for at-risk individuals.

Participants And Methods

Study Subjects

We used data from the CHCCS, which was one of the largest centenarian health interdisciplinary studies that was designed to investigate centenarians’ physical and mental health statuses and their social conditions.6 The researchers obtained ethical approval of the study protocol from the Ethics Committee of Hainan Branch of Chinese PLA General Hospital (serial no.: 301HNLL-2016-01). Participants received an extensive description of the study and signed an informed participation consent form that included permission to perform analyses on the biological specimens that were collected and stored. For those unable to fully consent because of cognitive or physical problems, surrogate consent was obtained from a close relative. There were 1824 participants enrolled in the CHCCS, and 1754 of these had basic information and blood biochemical index data available. The details of how the participants were recruited and proceeded to medical tests are shown in Figure 1.
Figure 1

Diagram of the study population.

Diagram of the study population.

Experimental Procedures

A community-based survey was conducted to collect demographic information (gender, age and ethnicity). Questionnaires were administered and blood samples were obtained from each participant. The ethnicities of the participants were classified as either Han or non-Han. Health-related variables such as standing height, weight, heart rate, systolic blood pressure (SBP), diastolic blood pressure (DBP), waist circumference (WC), and hip circumference were measured as described in He et al.6 Blood samples were obtained after the patients had fasted for 12 hrs and rested for at least 15 mins and were stored separately in refrigerated containers until they were analyzed on the same day. Blood biochemical examinations and blood routine examinations were performed using enzymatic assays (Roche Products Ltd., Basel, Switzerland) on a fully automatic biochemical autoanalyzer (Cobas 8000; Roche Products Ltd, Basel, Switzerland). Smoking habits were categorized as current, former, and never. Passive smoke exposure, defined as living or working with smokers and therefore unintentionally inhaling smoke and various toxic substances, was categorized as yes (at least once per week for more than 1 year) or no.7 The consumption of alcohol, meat, seafood, vegetables and fruits were categorized into two groups, namely frequent (>3 times/week) and occasional/never (≤3 times/week). Late bedtimes were dichotomized as yes (used to going to sleep after 11 o’clock at night) or no. Information on whether the patient snores was provided by relatives (yes or no). Personal preferences were also recorded, including drinking habits (tea, coffee and other), taste preferences (salt, sweet, fried, spicy), a regular diet and noon break (yes and no) and eating habits (half full or full). We defined hyperuricemia as serum uric acid (SUA) >416 μmol/L (7 mg/dL) for men and >357 μmol/L (6 mg/dL) for women.3 The estimated glomerular filtration rate (eGFR) was calculated according to the Chronic Kidney Disease Epidemiology Collaboration (CKD-EPI) equation.8

Statistical Analysis

Normally distributed data were expressed as the mean ±standard deviation and were compared using unpaired Student’s t-tests. Nonnormally distributed data were expressed as medians with the corresponding 25th and 75th percentiles (interquartile range) and compared using Mann–Whitney U-tests. The χ2 test or Fisher’s exact test was used to compare categorical variables. Multivariate logistic regression analyses were used to determine the independent factors associated with hyperuricemia. P values less than 0.05 were considered statistically significant. The statistical analyses were performed using SPSS software (version 19.0 SPSS, Chicago IL, USA).

Results

Prevalence Of Hyperuricemia And General Characteristics Of Participants

The prevalence of hyperuricemia was 28.26% (32.57% in males and 27.31% in females) in centenarians and 29.95% (34.18% in males and 27.12% in females) in near-centenarians (Table 1). The overall prevalence of hyperuricemia was 29.02% (33.60% in males and 27.24% in females).
Table 1

Participant Recruitment In CHCCS

CentenariansNear-CentenariansTotal
Age inclusion criteriaOver 100 years old80~100 years old—–
Recruited10218031824
 Men: N (%)182 (17.83%)326 (40.60%)508 (27.85%)
 Women: N (%)839 (82.17%)477 (59.40%)1316 (72.15%)
Both basic information and blood biochemical indexes are available9667881754
 Hyperuricemia (%)273 (28.26%)236 (29.95%)509 (29.02%)
 Normouricemia (%)693 (71.74%)552 (70.05%)1245 (70.98%)
Men: N (%)175316491
 Hyperuricemia (%)57 (32.57%)108 (34.18%)165 (33.60%)
 Normouricemia (%)118 (67.43%)208 (65.82%)326 (66.40%)
Women: N (%)7914721263
 Hyperuricemia (%)216 (27.31%)128 (27.12%)344 (27.24%)
 Normouricemia (%)575 (72.69%)344 (72.88%)919 (72.76%)

Abbreviation: CHCCS, The China Hainan Centenarian Cohort Study.

Participant Recruitment In CHCCS Abbreviation: CHCCS, The China Hainan Centenarian Cohort Study. As shown in Table 2, most of the participants (88.6%) were of Han ethnicity. The percentage of men (p=0.008), WC (p<0.001) and waist-hip ratio (WHR) (p=0.010) were greater in the hyperuricemia group than in the normouricemia group. The eGFR was lower in the hyperuricemia group than in the normouricemia group (p<0.001). However, age, ethnicity, heart rate, body mass index (BMI), SBP, and DBP were not significantly different between the two groups (p=0.438, 0.324, 0.236, 0.134, 0.346 and 0.231, respectively).
Table 2

Baseline Characteristics Of Participants By Serum Uric Acid Levels

Total (n=1754)Hyperuricemia (n=509)Normouricemia (n=1245)P-value
Age (years)100 (85, 102)100 (85, 102)100 (85, 102)0.438
Men (%)491 (28.0)165 (32.4)326 (26.2)0.008**
Ethnic Han (%)1554 (88.6)445 (87.4)1109 (89.1)0.324
Heart rate (bpm)76 (70, 85)76 (69, 84)76 (70, 86)0.236
BMI (kg/m2)18.2 (15.9, 20.3)18.4 (16.3, 20.7)18.1 (15.9, 20.3)0.134
WC (cm)76.0 (70.0, 83.0)78.0 (72.3, 85.0)76.0 (70.0, 82.0)<0.001***
Waist-hip ratio0.88 (0.84, 0.93)0.89 (0.85, 0.93)0.88 (0.84, 0.92)0.010*
SBP (mmHg)148 (132, 168)149 (133, 170)148 (132, 167)0.346
DBP (mmHg)76 (69, 85)76 (68, 84)76 (69, 85)0.231
eGFR (mL/min/1.73m2)59.8 (47.6, 71.5)49.2±16.664.2 (52.9, 73.7)<0.001***

Notes: *P<0.05, **P<0.01, ***P<0.001.

Abbreviations: BMI, body mass index; WC, Waist circumference; SBP, Systolic blood pressure; DBP, Diastolic blood pressure; eGFR, estimated glomerular filtration rate.

Baseline Characteristics Of Participants By Serum Uric Acid Levels Notes: *P<0.05, **P<0.01, ***P<0.001. Abbreviations: BMI, body mass index; WC, Waist circumference; SBP, Systolic blood pressure; DBP, Diastolic blood pressure; eGFR, estimated glomerular filtration rate.

Analyses Of Hyperuricemia With Blood Test Indexes

In the blood test results (Table 3), we found that the levels of total protein (TP) (p=0.001), alanine aminotransferase (ALT) (p=0.001), aspartate aminotransferase (AST) (p=0.048), triglycerides (p<0.001), serum homocysteine (p<0.001), SUA (p<0.001), serum urea (p<0.001) and serum creatinine (Scr) (p<0.001) were greater in the hyperuricemia group than in the normouricemia group. The high-density lipoprotein cholesterol (HDL-C) level was lower in the hyperuricemia group than in the normouricemia group (p<0.001). However, the levels of red blood cells, mean corpuscular volume, hemoglobin, albumin, fasting plasma glucose, total cholesterol and low-density lipoprotein cholesterol (LDL-C) levels were not significantly different between the two groups (p=0.828, 0.994, 0.655, 0.078, 0.707, 0.592 and 0.158, respectively).
Table 3

Blood Test Indexes Of Participants By Serum Uric Acid Levels

Total(n=1754)Hyperuricemia (n=509)Normouricemia (n=1245)P-value
RBC (10^12/L)4.2 (3.8, 4.6)4.2 (3.7, 4.7)4.2 (3.8, 4.5)0.828
MCV (fl)120.0 (109.0, 131.0)119.0 (106.0, 133.0)120.0 (110.0, 130.0)0.994
Hemoglobin (g/L)92.9 (87.8, 96.5)92.8 (88.0, 96.6)92.9 (87.6, 96.4)0.655
Total protein (g/dL)70.3 (66.2, 74.2)70.9 (67.0, 75.0)70.0 (65.7, 73.9)0.001**
Albumin (g/dL)40.5 (37.5, 42.9)40.8 (37.8, 43.1)40.4 (37.4, 42.8)0.078
FPG (mmol/L)4.6 (4.0, 5.5)4.7 (3.9, 5.7)4.6 (4.0, 5.5)0.707
ALT (U/L)10.6 (8.1, 14.2)11.0 (8.3, 15.6)10.4 (8.0, 13.7)0.001**
AST (U/L)21.3 (18.3, 25.3)22.0 (18.5, 26.0)21.1 (18.3, 25.0)0.048*
TC (mmol/L)4.7 (4.2, 5.5)4.7 (4.2, 5.6)4.7 (4.2, 5.4)0.592
TG (mmol/L)1.1 (0.8, 1.4)1.2 (0.9, 1.6)1.0 (0.8, 1.4)<0.001***
HDL-C (mmol/L)1.4 (1.1, 1.7)1.3 (1.1, 1.6)1.4 (1.2, 1.7)<0.001***
LDL-C (mmol/L)2.8 (2.3, 3.4)2.9 (2.4, 3.5)2.8 (2.3, 3.4)0.158
Serum HCY (µmol/L)23.1 (18.5, 28.5)25.9 (21.3, 32.1)22.1 (17.8, 27.2)<0.001***
SUA (µmol/L)326.0 (266.0, 393.0)439.0 (395.5, 484.0)394.0 (247.0, 333.0)<0.001***
Serum urea (mmol/L)5.7 (4.5, 7.0)6.6 (5.2, 8.4)5.3 (4.3, 6.5)<0.001***
Scr (µmol/L)79.0 (65.0, 98.0)96.0 (78.0, 118.0)74.0 (62.0, 90.0)<0.001***

Notes: *P<0.05, **P<0.01, ***P<0.001.

Abbreviations: RBC, red blood cells; MCV, Mean corpuscular volume; FPG, Fasting plasma glucose; ALT, Alanine aminotransferase; AST, Aspartate aminotransferase; TC, Total cholesterol; TG, Triglycerides; HDL-C, High-density lipoprotein cholesterol; LDL-C, Low-density lipoprotein cholesterol; HCY, homocysteine; SUA, Serum uric acid; Scr, Serum creatinine.

Blood Test Indexes Of Participants By Serum Uric Acid Levels Notes: *P<0.05, **P<0.01, ***P<0.001. Abbreviations: RBC, red blood cells; MCV, Mean corpuscular volume; FPG, Fasting plasma glucose; ALT, Alanine aminotransferase; AST, Aspartate aminotransferase; TC, Total cholesterol; TG, Triglycerides; HDL-C, High-density lipoprotein cholesterol; LDL-C, Low-density lipoprotein cholesterol; HCY, homocysteine; SUA, Serum uric acid; Scr, Serum creatinine.

Analyses Of Hyperuricemia With Lifestyle Characteristics And Dietary Habits

According to Table 4, we found that exposure to passive smoking (p=0.049), alcohol consumption (p<0.001), snoring (p<0.001), fried flavor preference (p=0.018), meat consumption (p=0.006), seafood consumption (p<0.001) and vegetable consumption (p=0.006) were significantly different between the hyperuricemia group and the normouricemia group. However, there were no significant differences between the two groups in terms of active smoking, staying up late, regular noon break, drinking habits, regular diet, eating habits, salty flavor preference, sweet flavor preference, spicy flavor preference and fruit consumption (all p>0.05).
Table 4

Lifestyle Characteristics And Dietary Habits Of The Participants By Serum Uric Acid Levels

Total (n=1754)Hyperuricemia (n=509)Normouricemia (n=1245)P-value
Active smoking (%)0.092
 Current2.53.62.1
 Former7.96.68.5
 Never89.589.889.5
Passive smoking (%)0.049*
 Yes27.330.525.8
 No72.769.574.2
Alcohol drinking (%)<0.001***
 Frequent13.218.511.1
 Occasional/never86.881.588.9
Stay up late (%)0.076
 Yes19.416.820.5
 No80.683.279.5
Snoring (%)<0.001***
 Yes22.431.318.8
 No77.668.781.2
Regular noon break (%)0.626
 Yes83.082.383.3
 No17.017.716.7
Drinking habits (%)0.126
 Tea1.82.61.5
 Coffee1.40.81.7
 Other96.796.696.8
Regular diet (%)0.342
 Yes94.793.995.0
 No5.36.15.0
Eating habits (%)0.375
 Half full63.261.663.8
 Full36.838.436.2
Salt flavor preference (%)0.516
 Yes13.614.513.3
 No86.485.586.7
Sweet flavor preference (%)0.134
 Yes61.063.859.9
 No39.036.240.1
Fried flavor preference (%)0.018*
 Yes2.74.22.1
 No97.395.897.9
Spicy flavor preference (%)0.419
 Yes2.93.42.7
 No97.196.697.3
Meat consumption (%)0.006**
 Frequent59.164.257.1
 Occasional/never40.935.842.9
Seafood consumption (%)<0.001***
 Frequent60.069.056.3
 Occasional/never40.031.043.7
Vegetable consumption (%)0.006**
 Frequent90.487.391.6
 Occasional/never9.612.78.4
Fruit consumption (%)0.080
 Frequent39.336.140.6
 Occasional/never60.763.959.4

Notes: *P<0.05, **P<0.01, ***P<0.001.

Lifestyle Characteristics And Dietary Habits Of The Participants By Serum Uric Acid Levels Notes: *P<0.05, **P<0.01, ***P<0.001.

Multivariate Logistic Regression Analyses

We performed multivariate logistic regression and adjusted for all related factors including the percentage of men, WC, WHR, eGFR, TP, ALT, AST, triglyceride, HDL-C, serum homocysteine, serum urea, and Scr levels, exposure to passive smoking, alcohol consumption, snoring, fried flavor preference, meat consumption, seafood consumption and vegetable consumption (Table 5). Multivariate logistic regression analysis showed that WC (OR=1.020, 95% CI: 1.006–1.035), TP level (OR=1.038, CI: 1.014–1.062), serum urea level (OR=1.154, 95% CI: 1.079–1.234), passive smoking (OR=2.589, 95% CI: 1.841–3.642), snoring (OR=2.003, 95% CI: 1.339–2.995), meat consumption (OR=2.506, 95% CI: 1.746–3.598), and seafood consumption (OR=1.422, 95% CI: 1.052–1.922) were independent risk factors for hyperuricemia, while a high eGFR (OR=0.960, 95% CI: 0.940–0.981) and increased vegetable consumption (OR=0.521, 95% CI: 0.319–0.850) were protective factors against hyperuricemia.
Table 5

Significant Factors Affecting Hyperuricemia Identified By Logistic Regression Analysis

VariablesβSEWaldOR95% CIP-value
WC (cm)0.020.0077.3191.0201.006–1.0350.007**
eGFR (mL/min/1.73m2)−0.0410.01114.2340.9600.940–0.981<0.001***
Total protein (g/dL)0.0370.0129.9381.0381.014–1.0620.002**
Serum urea (mmol/L)0.1430.03417.5991.1541.079–1.234<0.001***
Passive smoking0.9510.17429.8782.5891.841–3.642<0.001***
Snoring0.6950.20511.4442.0031.339–2.9950.001**
Meat consumption0.9190.18424.8192.5061.746–3.598<0.001***
Seafood consumption0.3520.1545.2561.4221.052–1.9220.022*
Vegetable consumption−0.6530.256.8010.5210.319–0.8500.009**

Notes: *P<0.05, **P<0.01, ***P<0.001.

Abbreviations: WC, Waist circumference; eGFR, estimated glomerular filtration rate; β, logistic regression coefficient; SE, standard error; OR, odds ratio; CI, confidence interval.

Significant Factors Affecting Hyperuricemia Identified By Logistic Regression Analysis Notes: *P<0.05, **P<0.01, ***P<0.001. Abbreviations: WC, Waist circumference; eGFR, estimated glomerular filtration rate; β, logistic regression coefficient; SE, standard error; OR, odds ratio; CI, confidence interval.

Discussion

In recent years, the incidence of hyperuricemia has increased worldwide, making it a global public health issue.2 Our study is the first to report the prevalence of hyperuricemia in a population-based sample of centenarians in China. Furthermore, this study provided associations between the prevalence of hyperuricemia and lifestyle characteristics as well as dietary habits in this population. According to our study, the prevalence rate of hyperuricemia was as high as 29.02%, indicating that hyperuricemia is highly prevalent in Chinese centenarians and near-centenarians. It has been reported that the prevalence of hyperuricemia in adults in China is 8.4%,9,10 and the prevalence of hyperuricemia in elderly individuals in China is 16.7%11 while in the US, it is 21.5%.3 The differences in the prevalence may be due to sex, age, race, culture and dietary habits. In addition, we found that men (33.60%) had a higher prevalence of hyperuricemia than women (27.24%) in our study. Similarly, a previous study found that the SUA level was higher in men than in women.11 Different levels of sex hormones in men and women may be the possible mechanism for this difference.11 Therefore, elderly individuals, especially women, should pay attention to the occurrence of hyperuricemia. Hyperuricemia is caused by increased uric acid production or reduced uric acid discharge. Renal functional decline is an important cause of hyperuricemia due to reduced uric acid clearance.12 We found that the indicators of decreased renal function including eGFR, serum homocysteine, serum urea and Scr were significantly different between the hyperuricemia group and the normouricemia group. In addition, a low eGFR and a high serum urea level were independent risk factors for hyperuricemia. This suggests that people with low renal function should pay attention to monitoring SUA levels and preventing hyperuricemia. A previous study revealed that hyperuricemia is closely related to disorders of lipid metabolism and dietary factors.13 We found that the WC, WHR and triglyceride level were greater but the HDL-C level was lower in the hyperuricemia group than in the normouricemia group. The logistic regression analyses showed that WC was an independent risk factor for hyperuricemia. Our study showed that hyperuricemia is associated with abnormal lipid metabolism and central obesity. The possible mechanism is that abnormal lipid metabolism may affect the afferent arteries and efferent arterioles, resulting in their stenosis or even occlusion and leading to a reduction in uric acid removal by the kidneys.14,15 This decreased SUA clearance in the body leads to a decrease in lipoprotein esterase activity, which in turn significantly reduces the decomposition of triacylglycerol, eventually leading to elevated levels of triacylglycerol and lipid metabolism disorders.16 On the other hand, we found that the proportions of people with a fried flavor preference and dietary consumption of meat and seafood were greater in the hyperuricemia group than the normouricemia group. This phenomenon may be caused by the excessive intake of energy and lipids, leading to obesity and dyslipidemia, which can increase the risk of hyperuricemia.17 In addition, we found that meat and seafood consumption were independent risk factors for hyperuricemia; people who ate meat and seafood more than 3 times per week were 2.5 times and 1.4 times respectively, more likely to have hyperuricemia than people who ate these foods less than 3 times per week. The possible reason is that these are purine-rich foods, and excessive intake of purine-rich foods causes an increase in SUA levels.18,19 Some reports have revealed that high levels of SUA could cause increased oxidative stress in the body, which leads to damage to hepatocytes and is closely related to non-alcoholic fatty liver disease, even individuals with SUA levels in the normal range.20 When a large amount of purine-rich food is consumed, xanthine oxidase activity is enhanced, resulting in increases in the synthesis and concentration of SUA in hepatocytes and increased hepatocyte membrane permeability, which then causes elevations of serum ALT, AST and TP levels.16,21 In contrast, low vegetable consumption was an independent risk factor for hyperuricemia. People who ate vegetables less than 3 times per week were approximately 1.9 times more likely to have hyperuricemia than people ate vegetables more than 3 times per week. The possible mechanism may be that vegetables are low-fat and alkaline foods. Increasing the intake of vegetables in the diet can alkalinize the urine, increasing the solubility of uric acid and facilitating uric acid excretion.4 We found that the proportion of people with exposure to passive smoking was greater in the hyperuricemia group than in the normouricemia group; however, the proportion of active smokers was not different between the two groups. Similarly, some studies reported that passive smoking was a risk factor for hyperuricemia.22,23 In contrast, some previous studies showed that cigarette smoking was negatively associated with the SUA level and gout.24 However, that relationship existed in men but not in women.24 The reason for this inconsistency may be due to the different gender ratios of the study populations. The percentages of women in those studies were very small, while in our study, it was as high as 72.0%. Our results showed that passive smoking was an independent risk factor for hyperuricemia. People with exposure to passive smoking at least once per week for more than 1 year were approximately 2.6 times more likely to have hyperuricemia than people without this exposure. We found that the proportion of people who consumed alcohol was greater in hyperuricemia group than in the normouricemia group. The possible mechanism may be that alcohol intake increases the body’s lactic acid production, which has a competitive inhibitory effect on uric acid excretion. At the same time, ethanol can increase the rate of sputum synthesis in humans and increase urate production.25 Few studies have focused on the relationship between sleep habits and SUA levels. We conducted a comprehensive analysis on the relationship of hyperuricemia and sleep habits. We found that the proportion of people who snored was greater in the hyperuricemia group than in the normouricemia group and that snoring was an independent risk factor for hyperuricemia. People who snored were approximately 2.0 times more likely to have hyperuricemia than the people who did not snore. However, staying up late and taking regular noon break were not significantly different between the two groups. Snoring is a common symptom of sleep apnea syndrome in the elderly.26 The possible mechanism of this interesting phenomenon may be that poor quality sleep leads to further fatigue and energy loss, resulting in the accumulation of metabolic products including uric acid.26 The related mechanism remains unclear and needs to be further studied. The prevention strategies for high-risk subjects should be based on individual circumstances, and the above risk factors should be monitored and modified. It is recommended that people at high risk for hyperuricemia should adjust their lifestyles and diets. For example, they should actively limit their intake of fried food, alcohol and purine-rich food such as meat and seafood. In addition, they should increase their intake of fresh vegetables, actively treat sleep apnea syndrome, avoid passive smoking, maintain a healthy WC and seek to improve their kidney and liver function. Our study had some strengths. First, we reported for the first time the incidence of hyperuricemia in a large population of Chinese centenarians and explored the related risk factors. Second, a considerable number of potential confounding lifestyle and dietary factors were adjusted for to improve the reliability of the multivariable model. The limitations of this study are mainly reflected in the following aspects. First, this was a cross-sectional study and could not determine causality. Thus, further prospective studies are needed to verify the causal relationships between lifestyle characteristics and dietary factors and the prevalence of hyperuricemia. Second, the study individuals were all Chinese, so the results may not be generalizable to patients with other ethnic backgrounds.

Conclusion

In conclusion, the prevalence rate of hyperuricemia was as high as 29.39% and was highly prevalent in Chinese centenarians and near-centenarians. Low eGFR and vegetable consumption, high WC, TP, and serum urea levels, passive smoking, snoring, and high meat and seafood consumption were independent risk factors for hyperuricemia. Our results provided a scientific basis for the prevention, early diagnosis and treatment of hyperuricemia. It is recommended that people at high risk for hyperuricemia should actively limit their intake of fried food, alcohol and purine-rich food, increase their intake of fresh vegetables, actively treat sleep apnea syndrome, avoid passive smoking, maintain a healthy WC and seek to improve their kidney and liver function.
  26 in total

1.  Relationship between cigarette smoking and hyperuricemia in middle-aged and elderly population: a cross-sectional study.

Authors:  Tuo Yang; Yi Zhang; Jie Wei; Chao Zeng; Liang-Jun Li; Xi Xie; Yi-Lun Wang; Dong-Xing Xie; Hui Li; Cui Yang; Guang-Hua Lei
Journal:  Rheumatol Int       Date:  2016-10-04       Impact factor: 2.631

2.  Prevalence of hyperuricemia and its correlates in rural Northeast Chinese population: from lifestyle risk factors to metabolic comorbidities.

Authors:  Shasha Yu; Hongmei Yang; Xiaofan Guo; Xingang Zhang; Ying Zhou; Qiaoyun Ou; Liqiang Zheng; Yingxian Sun
Journal:  Clin Rheumatol       Date:  2015-08-21       Impact factor: 2.980

3.  Cohort Profile: The China Hainan Centenarian Cohort Study (CHCCS).

Authors:  Yao He; Yali Zhao; Yao Yao; Shanshan Yang; Jing Li; Miao Liu; Xiaoping Chen; Jianhua Wang; Qiao Zhu; Xiaoying Li; Fu Zhang; Fuxin Luan
Journal:  Int J Epidemiol       Date:  2018-06-01       Impact factor: 7.196

4.  Intake of purine-rich foods, protein, and dairy products and relationship to serum levels of uric acid: the Third National Health and Nutrition Examination Survey.

Authors:  Hyon K Choi; Simin Liu; Gary Curhan
Journal:  Arthritis Rheum       Date:  2005-01

5.  Purine-rich foods, dairy and protein intake, and the risk of gout in men.

Authors:  Hyon K Choi; Karen Atkinson; Elizabeth W Karlson; Walter Willett; Gary Curhan
Journal:  N Engl J Med       Date:  2004-03-11       Impact factor: 91.245

Review 6.  Intensive lowering of low-density lipoprotein cholesterol levels for primary prevention of coronary artery disease.

Authors:  Dean G Karalis
Journal:  Mayo Clin Proc       Date:  2009-04       Impact factor: 7.616

7.  The relationship between normal serum uric acid and nonalcoholic fatty liver disease.

Authors:  In-Cheol Hwang; Sang-Yeon Suh; Ah-Ram Suh; Hong-Yup Ahn
Journal:  J Korean Med Sci       Date:  2011-02-25       Impact factor: 2.153

8.  Serum uric acid predicts incident metabolic syndrome in the elderly in an analysis of the Brisighella Heart Study.

Authors:  Arrigo Francesco Giuseppe Cicero; Federica Fogacci; Marina Giovannini; Elisa Grandi; Martina Rosticci; Sergio D'Addato; Claudio Borghi
Journal:  Sci Rep       Date:  2018-08-01       Impact factor: 4.379

9.  Active smoking, passive smoking, and risk of nonalcoholic fatty liver disease (NAFLD): a population-based study in China.

Authors:  Yu Liu; Meng Dai; Yufang Bi; Min Xu; Yu Xu; Mian Li; Tiange Wang; Fei Huang; Baihui Xu; Jie Zhang; Xiaoying Li; Weiqing Wang; Guang Ning
Journal:  J Epidemiol       Date:  2013-02-09       Impact factor: 3.211

10.  Clinical epidemiology of reduced kidney function among elderly male fishing and agricultural population in Taipei, Taiwan.

Authors:  Chi-Mei Kuo; Wu-Hsiung Chien; Hsi-Che Shen; Yi-Chun Hu; Yu-Fen Chen; Tao-Hsin Tung
Journal:  Biomed Res Int       Date:  2013-11-13       Impact factor: 3.411

View more
  9 in total

1.  The Association Between Spicy Food Intake and Risk of Hyperuricemia Among Chinese Adults.

Authors:  Qinwen Luo; Rui Ding; Liling Chen; Xiaoqing Bu; Meng Xiao; Xiang Liu; Yunyun Wu; Jingru Xu; Wenge Tang; Jingfu Qiu; Xianbin Ding; Xiaojun Tang
Journal:  Front Public Health       Date:  2022-07-06

2.  Association of eating out frequency and other factors with serum uric acid levels and hyperuricemia in Chinese population.

Authors:  Ningning Cui; Xiaokang Dong; Wei Liao; Yuan Xue; Xiaotian Liu; Xing Li; Jian Hou; Wenqian Huo; Linlin Li; Zhenxing Mao; Chongjian Wang; Yuqian Li
Journal:  Eur J Nutr       Date:  2021-07-23       Impact factor: 5.614

3.  Gender-Specific Inverse Associations Between Beans Intake, Serum Urate Levels, and Hyperuricemia: A Cross-Sectional Analysis Based on the Henan Rural Cohort Study.

Authors:  Ningning Cui; Xiaokang Dong; Yuan Xue; Wei Liao; Xiaotian Liu; Yuqian Li; Jian Hou; Wenqian Huo; Linlin Li; Zhenxing Mao; Zhaohui Zheng; Chongjian Wang
Journal:  Front Nutr       Date:  2021-01-21

4.  Association between serum uric acid and major chronic diseases among centenarians in China: based on the CHCCS study.

Authors:  Shanshan Yang; Shengshu Wang; Miao Liu; Fuyin Kou; Yao He
Journal:  BMC Geriatr       Date:  2021-04-07       Impact factor: 3.921

5.  Dietary Inflammatory Index and the Risk of Hyperuricemia: A Cross-Sectional Study in Chinese Adult Residents.

Authors:  Chen Ye; Xiaojie Huang; Ruoyu Wang; Mairepaiti Halimulati; Sumiya Aihemaitijiang; Zhaofeng Zhang
Journal:  Nutrients       Date:  2021-12-16       Impact factor: 5.717

6.  Neck Circumference Is Associated With Hyperuricemia in Women With Polycystic Ovary Syndrome.

Authors:  Haiyan Yang; Chang Liu; Congcong Jin; Rong Yu; Lin Ding; Liangshan Mu
Journal:  Front Endocrinol (Lausanne)       Date:  2021-09-06       Impact factor: 5.555

7.  Association of self-reported snoring and hyperuricaemia: a large cross-sectional study in Chongqing, China.

Authors:  Ting Chen; Xianbin Ding; Wenge Tang; Liling Chen; Deqiang Mao; Lingling Song; Xuemei Lian
Journal:  BMJ Open       Date:  2022-04-01       Impact factor: 2.692

8.  The serum uric acid is longitudinally related to patients global assessment of disease activity in male patients with axial spondyloarthritis.

Authors:  Meimei Cai; Wen Liu; Yuanhui Wu; Qing Zheng; Dehao Liu; Guixiu Shi
Journal:  BMC Musculoskelet Disord       Date:  2022-07-27       Impact factor: 2.562

9.  Prevalence of hyperuricemia and the population attributable fraction of modifiable risk factors: Evidence from a general population cohort in China.

Authors:  Huijing He; Pei Guo; Jiangshan He; Jingbo Zhang; Yujie Niu; Shuo Chen; Fenghua Guo; Feng Liu; Rong Zhang; Qiang Li; Shitao Ma; Binbin Zhang; Li Pan; Guangliang Shan; Minying Zhang
Journal:  Front Public Health       Date:  2022-07-28
  9 in total

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