Hostname: page-component-cd9895bd7-hc48f Total loading time: 0 Render date: 2024-12-26T06:56:37.247Z Has data issue: false hasContentIssue false

The association between milk consumption and the metabolic syndrome: a cross-sectional study of the residents of Suzhou, China and a meta-analysis

Published online by Cambridge University Press:  22 January 2020

Khemayanto Hidayat
Affiliation:
Department of Nutrition and Food Hygiene, School of Public Health, Soochow University, Suzhou215123, People’s Republic of China
Lu-Gang Yu
Affiliation:
Suzhou Industrial Park Centers for Disease Control and Prevention, Suzhou215021, People’s Republic of China
Jin-Rong Yang
Affiliation:
Department of Nutrition and Food Hygiene, School of Public Health, Soochow University, Suzhou215123, People’s Republic of China
Xue-Ying Zhang
Affiliation:
Suzhou Vocational Health College, Suzhou215009, People’s Republic of China
Hui Zhou
Affiliation:
Suzhou Industrial Park Centers for Disease Control and Prevention, Suzhou215021, People’s Republic of China
Yu-Jie Shi
Affiliation:
Jinshan Branch Company, Inner Mongolia Yili Industrial Group Co., Ltd., Hohhot010110, People’s Republic of China
Biao Liu*
Affiliation:
Jinshan Branch Company, Inner Mongolia Yili Industrial Group Co., Ltd., Hohhot010110, People’s Republic of China
Li-Qiang Qin*
Affiliation:
Department of Nutrition and Food Hygiene, School of Public Health, Soochow University, Suzhou215123, People’s Republic of China
*
*Corresponding authors: Li-Qiang Qin, fax +86 512 6588 0071, email qinliqiang@suda.educn; Biao Liu, fax +86 471357947, email bliu@yili.com
*Corresponding authors: Li-Qiang Qin, fax +86 512 6588 0071, email qinliqiang@suda.educn; Biao Liu, fax +86 471357947, email bliu@yili.com
Rights & Permissions [Opens in a new window]

Abstract

The association between milk consumption and the metabolic syndrome remains inconclusive, and data from Chinese populations are scarce. We conducted a cross-sectional study to investigate the association between milk consumption and the metabolic syndrome and its components among the residents of Suzhou Industrial Park, Suzhou, China. A total of 5149 participants were included in the final analysis. A logistic regression model was applied to estimate the OR and 95 % CI for the prevalence of the metabolic syndrome and its components according to milk consumption. In addition, the results of our study were further meta-analysed with other published observational studies to quantify the association between the highest v. lowest categories of milk consumption and the metabolic syndrome and its components. There was no significant difference in the odds of having the metabolic syndrome between milk consumers and non-milk consumers (OR 0·86, 95 % CI 0·73, 1·01). However, milk consumers had lower odds of having elevated waist circumference (OR 0·78, 95 % CI 0·67, 0·92), elevated TAG (OR 0·83, 95 % CI 0·70, 0·99) and elevated blood pressure (OR 0·85, 95 % CI 0·73, 0·99). When the results were pooled together with other published studies, higher milk consumption was inversely associated with the risk of the metabolic syndrome (relative risk 0·80, 95 % CI 0·72, 0·88) and its components (except elevated fasting blood glucose); however, these results should be treated with caution as high heterogeneity was observed. In summary, the currently available evidence from observational studies suggests that higher milk consumption may be inversely associated with the metabolic syndrome.

Type
Full Papers
Copyright
© The Authors 2020

The metabolic syndrome is a cluster of cardiometabolic risk factors that may increase the risk of developing type 2 diabetes mellitus and CVD. These cardiometabolic risk factors include elevated blood glucose, elevated blood pressure, dyslipidaemia and abdominal obesity. Maintaining a healthy diet is essential for the prevention of the metabolic syndrome(Reference Pérez-Martínez, Mikhailidis and Athyros1). There is emerging evidence that certain nutrients in dairy products (e.g. protein, Ca, Mg, K and vitamin D) may have a beneficial effect on metabolic syndrome components(Reference Rice, Cifelli and Pikosky2Reference Mozaffarian and Wu5). The evidence of the association between dairy product consumption and the metabolic syndrome remains inconclusive. Although observational studies generally demonstrate an inverse association between dairy product consumption and the metabolic syndrome(Reference Mena-Sánchez, Becerra-Tomás and Babio6,Reference Kim and Je7) , many aspects of the association between dairy product consumption and the metabolic syndrome remain unclear. In this case, the potential effect modifiers (e.g. dairy product type, fat content and subpopulation) for this association have not been well elucidated. Evidence on the association between dairy consumption and the metabolic syndrome is predominantly derived from studies conducted in Western countries(Reference Lutsey, Steffen and Stevens8Reference Beydoun, Fanelli-Kuczmarski and Beydoun18), with only a few studies from Asian countries(Reference Azadbakht, Mirmiran and Esmaillzadeh19Reference Shin, Lee and Kim24). Given that Asian populations differ from Western populations with respect to dietary pattern, cultural characteristics or amounts and types of dairy products consumed(Reference He, Yang and Xia25,Reference Jun, Ha and Chung26) , better understanding of the association between consumption of dairy product and the metabolic syndrome in Asian populations may provide valuable information that could be useful to refine the evidence on this topic. Thus far, a number of studies have investigated the association between milk consumption and the metabolic syndrome in Western(Reference Liu, Song and Ford15Reference Beydoun, Fanelli-Kuczmarski and Beydoun18,Reference Damião, Castro and Cardoso27) and Asian(Reference Kwon, Lee and Park21Reference Shin, Lee and Kim24,Reference Lin, Chang and Tseng28Reference Strand, Perry and Wang30) populations. However, these studies have yielded inconsistent results, possibly due to the heterogeneity in study design, milk consumption levels and metabolic syndrome definition. Nearly all Asian studies investigating the association between milk consumption and the metabolic syndrome were conducted in Korean populations. To the best of our knowledge, only two studies(Reference Guo, Gao and Ma29,Reference Strand, Perry and Wang30) have investigated this association in Chinese populations; however, both studies did not investigate the extent to which milk consumption may influence the metabolic syndrome components. Milk consumption may influence the metabolic syndrome components to different extents(Reference Beydoun, Fanelli-Kuczmarski and Beydoun18,Reference Kwon, Lee and Park21Reference Kim and Kim23) . We conducted a cross-sectional study to investigate the association between milk consumption and the metabolic syndrome and its components among the residents of Suzhou Industrial Park, which represent Southeast Chinese populations. In addition, we also performed a meta-analysis of observational studies to quantify the association between milk consumption and the metabolic syndrome and its components.

Methods

Study population

A total of 7998 residents of Suzhou Industrial Park (Suzhou City, Jiangsu Province) aged 18 years and older were randomly recruited via hospitals and health examination centres throughout Suzhou Industrial Park between July 2013 and November 2014. Of these 7998 participants, 614 participants with missing information on milk consumption and 2235 participants with missing information on any of the metabolic syndrome components were excluded. Finally, a total of 5149 participants remained for the present analysis. The research protocol was approved by the Ethics Committee of Soochow University. Written informed consent was obtained from all participants.

Blood samples and measurements

The overnight 10–12-h fasting blood samples were drawn by venepuncture to measure serum glucose, total cholesterol, TAG, HDL-cholesterol and LDL-cholesterol. The concentrations of glucose, total cholesterol, TAG, HDL-cholesterol and LDL-cholesterol in plasma were measured enzymatically using an autoanalyzer (Olympus AU640). Systolic and diastolic blood pressure levels were measured in a seated position three times consecutively at 1-min intervals using a manual mercury sphygmomanometer. Body weight, height and waist circumference were measured by trained personnel according to a standard protocol. Measurements of height and waist circumference were taken to the nearest 0·1 cm, while weight was measured to the nearest 0·1 kg. Waist circumference was measured at the narrowest point between the lower costal border and the top of the iliac crest. BMI was calculated as weight in kg divided by height in m2.

Dietary intake assessment

An interviewer-administered FFQ was used to collect information about dietary intake. Briefly, the participants were asked about the frequency and portion size of each major food group (red meat, poultry, fish, fruit, vegetables, soya, nut, salted vegetables and milk) consumed in the previous year. The frequency of food group intake was recorded as never, less than once/month, 1–3 times/month, 1–2 times/week, 3–4 times/week, 5–6 times/week, 1 time/d and 1 time/d. The portion size was estimated using traditional weight units (i.e. 1 jin = 0·5 kg; 1 liang = 0·5 g). The retrieved records were then converted into mean daily consumption (g/d) by multiplying the standard portion size (g) by the consumption frequency for each food and making the appropriate division for the period assessed to obtain daily consumption. Although the information regarding the food groups mentioned above was collected, the information on other important dietary factors, including total energy intake and dietary nutrient intake (e.g. carbohydrate, protein, fat, cholesterol, vitamin, mineral and fibre), was not collected because the survey was not specifically established for nutritional studies.

Other covariates

All participants were interviewed by trained interviewers using a standardised questionnaire to collect the information about age, sex, education level, physical activity, alcohol intake, smoking status, sleep duration, television watching duration and the use of medications for diabetes, dyslipidaemia or hypertension. Education level was classified into lower than high school, high school or vocational school, and college or above. Smoking status was categorised into never, former and current smokers. Alcohol intake was classified into three groups: 0/week, 1–3/week and >3/week.

Metabolic syndrome definition

The metabolic syndrome was defined according to the joint interim statement (JIS) issued by several internationally renowned institutions(Reference Alberti, Eckel and Grundy31). According to the JIS criteria, participants were judged as having the metabolic syndrome if they had three or more of the following components:

  1. Elevated waist circumference for Asian populations (≥90 cm in men and ≥80 cm in women).

  2. Elevated TAG (≥150 mg/dl (1·7 mmol/l) or drug treatment for elevated TAG).

  3. Reduced HDL-cholesterol (<40 mg/dl (1·04 mmol/l) in men and <50 mg/dl (1·3 mmol/l) in women or drug treatment for reduced HDL-cholesterol).

  4. Elevated blood pressure (≥130 mmHg systolic or ≥85 mmHg diastolic or drug treatment for elevated blood pressure).

  5. Elevated fasting blood glucose (≥100 mg/dl (5·6 mmol/l) or drug treatment for elevated blood glucose).

Data analysis

The mean daily intake of milk in this population was very low (approximately 20 g/d), as more than 80 % (n 4244) of the study participants did not consume milk. Therefore, we preferred not to report the results according to different categories of milk intake. As a solution to this issue, we compared milk consumers and non-milk consumers (reference group). Participants who reported consuming any amount of milk were considered as ‘milk consumers’, whereas participants who reported zero quantity of milk were classified as ‘non-milk consumers’. The χ 2 test (for categorical variables) and multiple linear regressions (for continuous variables) were used to analyse the difference in characteristics between milk consumers and non-milk consumers. Continuous variables and categorical variables were reported as means and standard deviations and as numbers and percentages, respectively. A logistic regression model was applied to estimate the OR and 95 % CI for the prevalence of the metabolic syndrome and its components. The multivariable models were adjusted for age, sex, education, smoking, alcohol, physical activity, sleep duration, television watching duration, BMI and consumption of red meat, poultry, fish, fruit, vegetable, nut, soya and salted vegetable. All statistical analyses were performed using SPSS version 20.0 (SPSS Inc.). All P values were two-sided, and the level of significance was set at <0·05.

Meta-analysis

We conducted a meta-analysis that included data from the present study and published observational studies that reported the risk estimates (OR or hazard ratios) for the association between milk consumption and the metabolic syndrome in adults. The studies were identified through a PubMed database search from inception to July 2019, with no restrictions. The following search terms were used to identify the relevant studies: (milk OR dairy) AND (metabolic syndrome OR insulin resistance syndrome). From each study, we extracted the most fully adjusted risk estimates. For statistical purposes, the hazard ratios from cohort studies and the OR from cross-sectional studies were deemed equivalent to the relative risks (RR). Study-specific results were pooled under a random-effects model(Reference DerSimonian and Laird32) to estimate the summary RR with corresponding CI for the association between the highest v. lowest categories of milk consumption and the metabolic syndrome and its components. For the metabolic syndrome, we also performed stratified and meta-regression analyses according to study design (prospective cohort and cross-sectional), study populations (Asian and Western), the metabolic syndrome criteria (JIS and National Cholesterol Education Program Adult Treatment Panel III) and adjustment for certain confounders to investigate the source of heterogeneity and potential effect modifiers. The statistical heterogeneity across studies was assessed by the I 2 statistic for which the degree of heterogeneity was classified into the following cut-off points: <25 % (low heterogeneity), 25–50 % (moderate heterogeneity) and >50 (high heterogeneity)(Reference Higgins, Thompson and Deeks33). The potential publication bias was evaluated by Begg’s rank correlation test and Egger’s linear regression test(Reference Egger, Davey Smith and Schneider34). If publication bias was detected, the trim and fill method was performed to adjust the bias(Reference Duval and Tweedie35). All statistical analyses were performed using STATA software, version 11.0 (StataCorp.).

Results

The present study

The selected participant characteristics according to milk consumption are summarised in Table 1. Compared with non-milk consumers, milk consumers were younger, more educated, more active physically, less likely to be current smokers, drank less alcohol and spent more time watching television. Milk consumers had a lower body weight, BMI, waist circumference, LDL-cholesterol, systolic blood pressure and diastolic blood pressure but had a higher HDL-cholesterol. Furthermore, milk consumers had a lower consumption of poultry, red meat, fish and soya but had a higher consumption of fruit and nut. In general, milk consumers appeared to have a healthier lifestyle, healthier eating habits and more favourable cardiometabolic risk factors than non-milk consumers.

Table 1. Selected participant characteristics according to milk consumption

(Mean values and standard deviations; numbers and percentages)

BP, blood pressure.

The prevalence of the metabolic syndrome was 40·8 % among milk consumers and 47·5 % among non-milk consumers. The OR for the prevalence of the metabolic syndrome and its components according to milk consumption are presented in Table 2. In the unadjusted model, the odds of having the metabolic syndrome were 24 % (OR 0·76, 95 % CI 0·66, 0·88) lower for milk consumers compared with non-milk consumers; however, the observed inverse association was attenuated to become statistically non-significant (OR 0·86, 95 % CI 0·73, 1·01) in the multivariable model. Regarding the metabolic syndrome components, milk consumers had lower odds of having elevated waist circumference (OR 0·78, 95 % CI 0·67, 0·92), elevated TAG (OR 0·83, 95 % CI 0·70, 0·99) and elevated blood pressure (OR 0·85, 95 % CI 0·73, 0·99) after adjustment for potential confounders; no association was observed for reduced HDL-cholesterol (OR 1·14, 95 % CI 0·96, 1·36) and elevated fasting blood glucose (OR 0·99, 95 % CI 0·82, 1·20).

Table 2. Prevalence of the metabolic syndrome and its components according to milk consumption

(Numbers and percentages; odds ratios and 95 % confidence intervals)

Ref., referent.

* Multivariable model was adjusted for age, sex, education, smoking, alcohol, physical activity, sleep duration, television watching duration, BMI, and consumption of red meat, poultry, fish, fruits, vegetables, nut, soya and salted vegetables.

Meta-analysis of the present study and published observational studies

The flow chart of the study selection process with the reasons for exclusion is presented in online Supplementary Fig. S1. We identified eleven studies that were eligible for inclusion in the present meta-analysis. The characteristics of the included studies are summarised in online Supplementary Table S1. In the main meta-analysis of the present study and eleven other studies(Reference Liu, Song and Ford15Reference Beydoun, Fanelli-Kuczmarski and Beydoun18,Reference Kwon, Lee and Park21Reference Shin, Lee and Kim24,Reference Damião, Castro and Cardoso27Reference Guo, Gao and Ma29) , the pooled RR of the metabolic syndrome for the highest v. lowest categories of milk consumption was 0·80 (95 % CI 0·72, 0·88; Fig. 1), with high heterogeneity (I 2 73·5 %). In general, a consistent tendency towards an inverse association was observed across subgroups, although some did not reach statistical significance (Table 3). Meta-regression analyses revealed that the overall findings were not significantly different by study design, study populations, metabolic syndrome criteria and adjustment for certain confounders (all P meta-regression ≥ 0·26). Although study design did not appear to modify the overall association (P meta-regression = 0·66), a significant inverse association was only evident in cross-sectional studies (RR 0·78, 95 % CI 0·68, 0·88) but not in prospective cohort studies (RR 0·83, 95 % CI 0·64, 1·06). The non-significant inverse association in prospective cohort studies was possibly driven by the only study(Reference Lin, Chang and Tseng28) showing a tendency towards positive association (RR 1·21, 95 % CI 0·90, 1·62), as the association became significant after exclusion of the present study (RR 0·74, 95 % CI 0·57, 0·98). There was no evidence of publication bias (P Begg’s = 0·14; P Egger’s = 0·25).

Fig. 1. Forest plot of the association between the highest v. lowest categories of milk consumption and the metabolic syndrome. Weights are from random-effects analysis. RR, relative risk.

Table 3. Subgroup and meta-regression analyses of the association highest v. lowest categories of milk consumption and the metabolic syndrome

(Numbers; relative risks (RR) and 95 % confidence intervals; I 2)

NCEP ATP III, National Cholesterol Education Program Adult Treatment Panel III; JIS, Joint Interim Statement.

* RR after excluding a study(Reference Lin, Chang and Tseng28) that reported conflicting result yielded was 0·74 (95 % CI 0·57, 0·98).

The association between the highest v. lowest categories of milk consumption and the metabolic syndrome components is shown in Fig. 2. In the analyses of the metabolic syndrome components(Reference Beydoun, Fanelli-Kuczmarski and Beydoun18,Reference Kwon, Lee and Park21Reference Shin, Lee and Kim24) , high milk consumption was inversely associated with elevated waist circumference (RR 0·84, 95 % CI 0·77, 0·91), elevated blood pressure (RR 0·90, 95 % CI 0·82, 0·98) and elevated TAG (RR 0·82, 95 % CI 0·76, 0·89) but not with elevated fasting blood glucose (RR 0·95, 95 % CI 0·82, 1·10) and reduced HDL-cholesterol (RR 0·86, 95 % CI 0·71, 1·03). When the analyses were restricted to the Asian studies(Reference Kwon, Lee and Park21Reference Shin, Lee and Kim24), high milk consumption was inversely associated with elevated waist circumference (RR 0·83, 95 % CI 0·76, 0·90), blood pressure (RR 0·87, 95 % CI 0·76, 0·99), elevated TAG (RR 0·83, 95 % CI 0·73, 0·88) and reduced LDL-cholesterol (RR 0·82, 95 % CI 0·69, 0·97) but not with fasting blood glucose (RR 0·95, 95 % CI 0·80, 1·13).

Fig. 2. Forest plot of the association between the highest v. lowest categories of milk consumption and metabolic syndrome components. Weights are from random-effects analysis. RR, relative risk.

Discussion

The present study

In the present cross-sectional studies of 5149 residents of Suzhou Industrial Park, there was no significant difference in the odds of having the metabolic syndrome between milk consumers and non-milk consumers. However, milk consumers had lower odds of having elevated waist circumference, elevated TAG and elevated blood pressure than non-milk consumers.

The results of the present study should be treated within the context of the following caveats. First, the cross-sectional design of our study limits the ability to infer causal relationships between milk consumption and the metabolic syndrome and its components. Second, the low consumption of milk among the participants of our study did not allow more meaningful analyses according to the categories of milk consumption or the fat content of milk. Third, the validity of the observed findings is dependent on our ability to control for confounding factors. In our study, milk consumption appeared to be a reflection of healthier lifestyles and eating habits that may contribute to the prevention of the metabolic syndrome(Reference Pérez-Martínez, Mikhailidis and Athyros1). Notably, milk consumers were more likely to be physically active and drink less alcohol, less likely to be current smokers, had a higher consumption of fruit and nut and had a lower consumption of red meat. The observed inverse association between milk consumption and the metabolic syndrome in the unadjusted model became statistically non-significant in the multivariable model, suggesting that the inverse association between milk consumption and the metabolic syndrome in our study population could partially be explained by the difference in lifestyle and dietary characteristics between milk consumers and non-milk consumers. Although a wide range of covariates have been taken into account in the multivariable model, we did not have the information on important dietary factors, including total energy intake and dietary nutrient intake (e.g. carbohydrate, protein, fat, cholesterol, vitamin, mineral and fibre). It is known that dietary energy density(Reference Mendoza, Drewnowski and Christakis36,Reference Esmaillzadeh and Azadbakht37) and the intake of certain nutrients(Reference Pérez-Martínez, Mikhailidis and Athyros1,Reference Liu, Wu and Xia38Reference Shang, Scott and Hodge44) are associated with the metabolic syndrome. Thus, our inability to consider such factors in our analyses may have resulted in unmeasured or residual confounding. Finally, dietary consumption was assessed with a FFQ. The accuracy of information obtained with a FFQ is dependent on the memory and sincerity of the participants. For example, people tend to overestimate the intake of foods perceived as healthy and underreport the intake of foods perceived as less healthy(45). Several fatty acids (C14 : 0, C15 : 0, C17 : 0 and trans-C16 : 1n-7) have been used as biomarkers of dairy intake(Reference Pranger, Joustra and Corpeleijn46Reference Imamura, Fretts and Marklund48) to overcome the shortcomings of FFQ. Combining the classic dietary assessment with validated dairy biomarkers may improve the robustness of dietary assessment in epidemiological studies. Of interest, dairy fat biomarkers have been shown to have a neutral association with the incidence of CVD(Reference de Oliveira Otto, Lemaitre and Song47) and an inverse association with the incidence of type 2 diabetes mellitus (Reference Imamura, Fretts and Marklund48). To the best of our knowledge, no studies have investigated the associations between these fatty acids and the metabolic syndrome; this possibility warrants further study.

Nearly all of the Asian studies investigating the association between milk consumption and the metabolic syndrome were conducted in South Korea. The present study adds to the limited evidence available on the association between milk(Reference Guo, Gao and Ma29,Reference Strand, Perry and Wang30) or dairy product(Reference Li, Zhao and Yu20,Reference Wang, Yu and Yue49) consumption and the metabolic syndrome in Chinese populations. A small-scale study(Reference Strand, Perry and Wang30) in Yuci District (Jinzhong City, Shanxi Province) indicated that participants who rarely consumed milk had higher odds of having the metabolic syndrome compared with participants who often consumed milk. A nationally representative cross-sectional survey(Reference Cheng, Wang and Wang50) using data from the China Health and Nutrition Survey 2009 identified low daily consumption of milk and dairy product as one of the dietary factors that correlated with increased numbers of the metabolic syndrome components in women. By comparison, the China National Nutrition and Health Survey 2010–2012(Reference Li, Zhao and Yu20) showed that dairy consumption was not significantly associated with the metabolic syndrome in both men and women. A matched case–control study(Reference Wang, Yu and Yue49) of policemen demonstrated an inverse association between dairy product consumption and the metabolic syndrome. A multi-ethnic cross-sectional study(Reference Guo, Gao and Ma29) in rural Xinjiang found that participants whose consumption of ≥1·5 litres fresh milk per week was associated with 36 % lower odds of having the metabolic syndrome. Unlike our study, all previous Chinese studies(Reference Li, Zhao and Yu20,Reference Guo, Gao and Ma29,Reference Strand, Perry and Wang30,Reference Wang, Yu and Yue49) only investigated the metabolic syndrome but did not consider the extent to which milk or dairy product consumption may influence the metabolic syndrome components. In the present study, the significant inverse association appeared to be confined to elevated waist circumference, elevated TAG and elevated blood pressure, as no association was found for elevated fasting glucose and reduced HDL-cholesterol. Of interest, a few studies(Reference Guo, Zhu and Pan51Reference Villegas, Gao and Dai53) have investigated the association between milk or dairy consumption and cardiometabolic conditions in the Chinese population. A recent large cross-sectional study(Reference Guo, Zhu and Pan51) of Northern Chinese populations investigating the association between dairy consumption and cardiometabolic conditions showed that higher dairy consumption was inversely associated with the prevalence of overweight, obesity, central obesity and hyperlipidaemia but not with the prevalence of diabetes and hypertension. A prospective study(Reference Zong, Sun and Yu52) concluded that dairy consumption was significantly associated with a lower risk of type 2 diabetes mellitus and favourable changes in fasting blood glucose, waist circumference, BMI and systolic and diastolic blood pressure among middle-aged and older Chinese in Beijing and Shanghai. Another prospective cohort study(Reference Villegas, Gao and Dai53) indicated that higher consumption of fresh milk and powdered milk was associated with a lower risk of developing type 2 diabetes mellitus in Shanghai women. Briefly, the evidence in Chinese populations, while limited, suggests that consuming milk and dairy product consumption as part of a healthy balanced diet might contribute to the prevention of some of the most prevalent cardiometabolic conditions related to lifestyle and eating habits.

According to the Chinese dietary guidelines (2016)(Reference Wang, Lay and Yu54), Chinese residents are recommended to consume 300 g of milk and dairy products per d. Unfortunately, the average consumption of milk and dairy products Chinese people in general consume was far below the recommended levels. According to the data from China Health and Nutrition Surveillance 2010–2012(Reference He, Yang and Xia25), the average consumption of milk and dairy products in big city, small- and medium-sized city, normal rural area and poor rural area was 64·3, 24·2, 9·1 and 4·9 g/d, respectively, with only 23·7 % of the whole populations consumed milk and dairy products daily. Similarly, the average milk consumption in our study was only approximately 20 g/d, with 80 % of the total study populations did not consume milk. As the overall dairy consumption in China is expected to increase over the next few years(55), future nationwide surveys may have more power to refine the current evidence on this topic.

Meta-analysis of the present study and published observational studies

Studies investigating the association between milk consumption and the metabolic syndrome have yielded inconsistent results, possibly due to the differences in the study design, the metabolic syndrome definition and cultural characteristics and dietary patterns underlying study populations. When the results of our study were pooled together with other published observational studies, high milk consumption was inversely associated with the metabolic syndrome and its components (except elevated fasting blood glucose).

The majority of studies included in our meta-analysis had a cross-sectional design(Reference Liu, Song and Ford15,Reference Elwood, Pickering and Fehily16,Reference Kwon, Lee and Park21,Reference Kim22,Reference Shin, Lee and Kim24,Reference Guo, Gao and Ma29) , with only a few prospective cohort studies(Reference Babio, Becerra-Tomás and Martínez-González17,Reference Beydoun, Fanelli-Kuczmarski and Beydoun18,Reference Kim and Kim23,Reference Damião, Castro and Cardoso27,Reference Lin, Chang and Tseng28) . In general, a clear tendency towards an inverse association (RR ranged from 0·38 to 0·93) was evident in all studies, with the exception of a tendency towards positive association (RR 1·21) observed in a study(Reference Lin, Chang and Tseng28) among community-dwelling elderly in Taiwan. The inverse association was observed in both cohort and cross-sectional studies, although this association did not reach statistical significance in cohort studies. The non-significant finding in cohort studies appeared to be largely driven by the study mentioned above(Reference Lin, Chang and Tseng28), as the inverse association became significant after the omission of the present study from the analysis.

The included studies used National Cholesterol Education Program Adult Treatment Panel III (including modified version) criteria or JIS criteria. Notably, while both National Cholesterol Education Program Adult Treatment Panel III (56) and JIS(Reference Alberti, Eckel and Grundy31) define the metabolic syndrome as the presence of three of the five cardiometabolic factors (elevated waist circumference, elevated TAG, reduced HDL-cholesterol, elevated blood pressure and elevated fasting blood glucose), the cut-points to define elevated fasting blood glucose (≥6·1 mmol/l v. ≥5·6 mmol/l) and elevated waist circumference (if not modified according to populations or ethnic groups) are higher according to National Cholesterol Education Program Adult Treatment Panel III criteria than according to JIS criteria. If the higher cut-points were used, fewer individuals could be diagnosed as having the metabolic syndrome than if the lower cut-points were used. Nonetheless, our results indicated that the study criteria did not appear to modify the observed association.

Rapid globalisation, urbanisation and economic growth among developing countries have led to the dietary transition from traditional whole foods, plant-based diet to the ‘Western’ diet high in processed foods, sweetened foods and animal sources foods(Reference Popkin57). In this case, although milk and dairy product consumption is generally still higher in Western populations than in Asian populations, milk and dairy product consumption has been increasing in Asian countries, particularly in China(55). Thus, the present study and other Asian studies provide relevant and timely insights into the association between milk consumption and the metabolic syndrome, which may contribute to public health intervention in Asian countries that are affected by the dietary transition. Our subgroup analyses indicated that high milk consumption was inversely associated with the metabolic syndrome in Asian populations and Western populations.

There are several limitations to consider when interpreting the results of the meta-analysis of observational studies. First, although the results of the meta-analysis of observational studies are encouraging, the limited available data from prospective cohort studies preclude solid conclusions regarding the potential role of milk in the prevention of the metabolic syndrome. Second, the high heterogeneity across studies indicates that the results of the present meta-analysis should be interpreted with caution. The heterogeneity was low in studies that adjusted for Western populations and in studies that adjusted for fruit intake. Nonetheless, nearly all studies included in the present meta-analysis showed a tendency towards an inverse association, suggesting that the observed heterogeneity was likely due to the difference in the strength of association (significant v. non-significant) rather than the direction of the association (inverse v. positive). Third, observational studies are subject to residual and unmeasured confounders that may influence the observed findings. Subgroup analyses revealed that the inverse association between high milk consumption and the metabolic syndrome remained significant in the studies that adjusted for energy intake, fruit consumption, vegetable consumption, physical activity or exercise, alcohol or smoking. Finally, all studies on this topic have relied on FFQ, which may subject to bias-related memory and sincerity.

Potential mechanisms

The inverse association between milk or dairy product consumption and the metabolic syndrome may be collectively or individually mediated by specific nutrients within milk and dairy products. There is emerging evidence that milk protein may have the potential to improve body composition(Reference Hidayat, Chen and Wang58), glucose metabolism(Reference Hidayat, Du and Shi59) and lipid profile(Reference Fekete, Givens and Lovegrove3). Milk protein and its derived peptides have been shown to reduce blood pressure, possibly via inhibition of angiotensin I-converting enzyme(Reference Fekete, Givens and Lovegrove4,Reference Hidayat, Du and Yang60) . Ca, K and Mg in milk or dairy products may help regulate blood pressure homoeostasis via various mechanisms(Reference Rice, Cifelli and Pikosky2). Additionally, Ca may improve lipid profile(Reference Lorenzen and Astrup61) and induce weight loss(Reference Jacobsen, Lorenzen and Toubro62) through the potential mediation of increased faecal fat excretion. While low levels of vitamin D are found naturally in milk, fortified milk is an excellent source of vitamin D. Vitamin D deficiency has been implicated in the development of certain cardiometabolic conditions, such as obesity, diabetes and hypertension(Reference Awad, Alappat and Valerio63). Although milk and dairy products are nutrient-rich foods, high-fat milk and dairy products are also a major source of cholesterol-raising SFA, which have been considered to be involved in the pathogenesis of CVD. The currently available evidence, while inconclusive, suggests that high-fat milk and dairy product consumption may not be associated with increased risks of CVD and other cardiometabolic conditions(Reference Hidayat, Du and Shi59,Reference Drouin-Chartier, Côté and Labonté64) . The results from three cohorts of American adults(Reference Chen, Li and Sun65) showed that dairy fat was not associated with an increased risk of CVD. However, replacing dairy fat with plant-based fat or PUFA was associated with a lower risk of CVD, suggesting that dairy fat may not be an optimal type of fat in the human diet. In this sense, although consuming high-fat dairy products in moderation may not be associated with an increased risk of CVD and other cardiometabolic conditions(Reference Hidayat, Du and Shi59,Reference Drouin-Chartier, Côté and Labonté64) , consuming low-fat dairy products is preferable to limit saturated fat intake but still offers decent amounts of nutrients.

Conclusions

In summary, the currently available evidence suggests that higher milk consumption is inversely associated with the metabolic syndrome. Nonetheless, this evidence was mainly based on cross-sectional studies, and additional data from prospective cohort studies are warranted to determine the direction and shape of the association between milk consumption, preferably stratified by fat content (high-fat milk and low-fat milk), and subsequent metabolic syndrome risk across different subpopulations and genetic variations. Finally, it is also important to answer the question of whether replacing milk with non-dairy plant-based milk alternatives (e.g. soya, rice, oat, almond, hazelnut and coconut) and vice versa may improve cardiometabolic health to a greater extent.

Acknowledgements

The present study was financially supported by grants from the National Key R&D Program of China (2017YFC1310700 and 2017YFC1310701), National Natural Science Foundation of China (no. 81973024) and key technologies of prevention and control of major diseases and infectious diseases in Suzhou City (GWZX201804 and GWZX201907).

K. H. contributed to the literature search, data extraction and data interpretation. K. H. wrote the paper. L.-G. Y. and H. Z. performed data curation. J.-R. Y and X.-Y. Z performed statistical analyses. L.-Q. Q., L.-G. Y., Y.-J. S. and B. L. critically reviewed the manuscript for important intellectual content. L.-Q. Q. and B. L. supervised the research. All authors read and approved the final manuscript.

The authors Y.-J. S. and B. L. are affiliated with Jinshan Branch Company, Inner Mongolia Yili Industrial Group Co. Ltd. in China. The authors K. H., L.-G. Y., J.-R. Y., X.-Y. Z., H. Z. and L.-Q. Q. state that they have no potential conflicts of interest.

Supplementary material

For supplementary materials referred to in this article, please visit https://doi.org/10.1017/S0007114520000227

References

Pérez-Martínez, P, Mikhailidis, DP, Athyros, VG, et al. (2017) Lifestyle recommendations for the prevention and management of metabolic syndrome: an international panel recommendation. Nutr Rev 75, 307326.CrossRefGoogle ScholarPubMed
Rice, BH, Cifelli, CJ, Pikosky, MA, et al. (2019) Dairy components and risk factors for cardiometabolic syndrome: recent evidence and opportunities for future research. Adv Nutr 2, 396407.CrossRefGoogle Scholar
Fekete, ÁA, Givens, DI & Lovegrove, JA (2016) Can milk proteins be a useful tool in the management of cardiometabolic health? An updated review of human intervention trials. Proc Nutr Soc 75, 328341.CrossRefGoogle ScholarPubMed
Fekete, ÁA, Givens, DI & Lovegrove, JA (2013) The impact of milk proteins and peptides on blood pressure and vascular function: a review of evidence from human intervention studies. Nutr Res Rev 26, 177190.CrossRefGoogle ScholarPubMed
Mozaffarian, D & Wu, JHY (2018) Flavonoids, dairy foods, and cardiovascular and metabolic health: a review of emerging biologic pathways. Circ Res 122, 369384.CrossRefGoogle ScholarPubMed
Mena-Sánchez, G, Becerra-Tomás, N, Babio, N, et al. (2019) Dairy product consumption in the prevention of metabolic syndrome: a systematic review and meta-analysis of prospective cohort studies. Adv Nutr 10, S144S153.CrossRefGoogle ScholarPubMed
Kim, Y & Je, Y (2016) Dairy consumption and risk of metabolic syndrome: a meta-analysis. Diabet Med 33, 428440.CrossRefGoogle ScholarPubMed
Lutsey, PL, Steffen, LM & Stevens, J (2008) Dietary intake and the development of the metabolic syndrome: the Atherosclerosis Risk in Communities Study. Circulation 117, 754761.CrossRefGoogle ScholarPubMed
Huo Yung Kai, S, Bongard, V, Simon, C, et al. (2014) Low-fat and high-fat dairy products are differently related to blood lipids and cardiovascular risk score. Eur J Prev Cardiol 21, 15571567.Google ScholarPubMed
Ruidavets, JB, Bongard, V, Dallongeville, J, et al. (2007) High consumptions of grain, fish, dairy products and combinations of these are associated with a low prevalence of metabolic syndrome. J Epidemiol Community Health 61, 810817.CrossRefGoogle ScholarPubMed
Pereira, MA, Jacobs, DR Jr, Van Horn, L, et al. (2002) Dairy consumption, obesity, and the insulin resistance syndrome in young adults: the CARDIA Study. JAMA 287, 20812089.CrossRefGoogle ScholarPubMed
Drehmer, M, Pereira, MA, Schmidt, MI, et al. (2016) Total and full-fat, but not low-fat, dairy product intakes are inversely associated with metabolic syndrome in adults. J Nutr 146, 8189.CrossRefGoogle Scholar
Louie, JC, Flood, VM, Rangan, AM, et al. (2013) Higher regular fat dairy consumption is associated with lower incidence of metabolic syndrome but not type 2 diabetes. Nutr Metab Cardiovasc Dis 23, 816821.CrossRefGoogle Scholar
Martins, ML, Kac, G, Silva, RA, et al. (2015) Dairy consumption is associated with a lower prevalence of metabolic syndrome among young adults from Ribeirão Preto, Brazil. Nutrition 31, 716721.CrossRefGoogle ScholarPubMed
Liu, S, Song, Y, Ford, ES, et al. (2005) Dietary calcium, vitamin D, and the prevalence of metabolic syndrome in middle-aged and older U.S. women. Diabetes Care 28, 2926–2332.CrossRefGoogle ScholarPubMed
Elwood, PC, Pickering, JE, Fehily, AM (2007) Milk and dairy consumption, diabetes and the metabolic syndrome: the Caerphilly Prospective Study. J Epidemiol Community Health 61, 695698.CrossRefGoogle ScholarPubMed
Babio, N, Becerra-Tomás, N, Martínez-González, , et al. (2015) Consumption of yogurt, low-fat milk, and other low-fat dairy products is associated with lower risk of metabolic syndrome incidence in an elderly Mediterranean population. J Nutr 145, 23082316.Google Scholar
Beydoun, MA, Fanelli-Kuczmarski, MT, Beydoun, HA, et al. (2018) Dairy product consumption and its association with metabolic disturbance in a prospective study of urban adults. Br J Nutr 119, 706719.CrossRefGoogle Scholar
Azadbakht, L, Mirmiran, P, Esmaillzadeh, A, et al. (2005) Dairy consumption is inversely associated with the prevalence of the metabolic syndrome in Tehranian adults. Am J Clin Nutr 82, 523530.CrossRefGoogle ScholarPubMed
Li, Y, Zhao, L, Yu, D, et al. (2018) Metabolic syndrome prevalence and its risk factors among adults in China: a nationally representative cross-sectional study. PLOS ONE 13, e0199293.CrossRefGoogle ScholarPubMed
Kwon, HT, Lee, CM, Park, JH, et al. (2010) Milk intake and its association with metabolic syndrome in Korean: analysis of the third Korea National Health and Nutrition Examination Survey (KNHANES III). J Korean Med Sci 25, 14731479.CrossRefGoogle Scholar
Kim, J (2013) Dairy food consumption is inversely associated with the risk of the metabolic syndrome in Korean adults. J Hum Nutr Diet 26 Suppl. 1, 171179.CrossRefGoogle ScholarPubMed
Kim, D & Kim, J (2017) Dairy consumption is associated with a lower incidence of the metabolic syndrome in middle-aged and older Korean adults: the Korean Genome and Epidemiology Study (KoGES). Br J Nutr 117, 148160.CrossRefGoogle Scholar
Shin, S, Lee, HW, Kim, CE, et al. (2017) Association between milk consumption and metabolic syndrome among Korean adults: results from the Health Examinees Study. Nutrients 9, E1102.CrossRefGoogle ScholarPubMed
He, Y, Yang, X, Xia, J, et al. (2016) Consumption of meat and dairy products in China: a review. Proc Nutr Soc 75, 385391.CrossRefGoogle ScholarPubMed
Jun, S, Ha, K, Chung, S, et al. (2016) Meat and milk intake in the rice-based Korean diet: impact on cancer and metabolic syndrome. Proc Nutr Soc 75, 374384.CrossRefGoogle ScholarPubMed
Damião, R, Castro, TG, Cardoso, MA, et al. (2006) Dietary intakes associated with metabolic syndrome in a cohort of Japanese ancestry. Br J Nutr 96, 532538.Google Scholar
Lin, YH, Chang, HT, Tseng, YH, et al. (2013) Characteristics and health behavior of newly developed metabolic syndrome among community-dwelling elderly in Taiwan. Int J Gerontol 7, 9096.CrossRefGoogle Scholar
Guo, H, Gao, X, Ma, R, et al. (2017) Prevalence of metabolic syndrome and its associated factors among multi-ethnic adults in rural areas in Xinjiang, China. Sci Rep 7, 17643.CrossRefGoogle ScholarPubMed
Strand, MA, Perry, J, Wang, P, et al. (2015) Risk factors for metabolic syndrome in a cohort study in a north China urban middle-aged population. Asia Pac J Public Health 27, 255265.CrossRefGoogle Scholar
Alberti, KG, Eckel, RH, Grundy, SM, et al. (2009) 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. Circulation 120, 16401645.CrossRefGoogle Scholar
DerSimonian, R & Laird, N (1986) Meta-analysis in clinical trials. Control Clin Trials 7, 177188.CrossRefGoogle ScholarPubMed
Higgins, JPT, Thompson, SG, Deeks, JJ, et al. (2003) Measuring inconsistency in meta-analyses. BMJ 327, 557560.CrossRefGoogle ScholarPubMed
Egger, M, Davey Smith, G, Schneider, M, et al. (1997) Bias in meta-analysis detected by a simple, graphical test. BMJ 315, 629634.CrossRefGoogle ScholarPubMed
Duval, S & Tweedie, R (2000) Trim and fill: a simple funnel-plot-based method of testing and adjusting for publication bias in meta-analysis. Biometrics 56, 455463.CrossRefGoogle ScholarPubMed
Mendoza, JA, Drewnowski, A & Christakis, DA (2007) Dietary energy density is associated with obesity and the metabolic syndrome in U.S. adults. Diabetes Care 30, 974979.CrossRefGoogle ScholarPubMed
Esmaillzadeh, A & Azadbakht, L (2011) Dietary energy density and the metabolic syndrome among Iranian women. Eur J Clin Nutr 65, 598605.CrossRefGoogle ScholarPubMed
Liu, YS, Wu, QJ, Xia, Y, et al. (2019) Carbohydrate intake and risk of metabolic syndrome: a dose–response meta-analysis of observational studies. Nutr Metab Cardiovasc Dis 29, 12881298.CrossRefGoogle ScholarPubMed
Chen, JP, Chen, GC, Wang, XP, et al. (2017) Dietary fiber and metabolic syndrome: a meta-analysis and review of related mechanisms. Nutrients 10, 24.CrossRefGoogle ScholarPubMed
Chen, X, Pang, Z & Li, K (2009) Dietary fat, sedentary behaviors and the prevalence of the metabolic syndrome among Qingdao adults. Nutr Metab Cardiovasc Dis 19, 2734.CrossRefGoogle ScholarPubMed
Freire, RD, Cardoso, MA, Gimeno, SG, et al.; Japanese-Brazilian Diabetes Study Group (2005) Dietary fat is associated with metabolic syndrome in Japanese Brazilians. Diabetes Care 28, 17791785.CrossRefGoogle ScholarPubMed
Hekmatdoost, A, Mirmiran, P, Hosseini-Esfahani, F, et al. (2011) Dietary fatty acid composition and metabolic syndrome in Tehranian adults. Nutrition 27, 10021007.CrossRefGoogle ScholarPubMed
Jang, H & Park, K (2019) Omega-3 and omega-6 polyunsaturated fatty acids and metabolic syndrome: a systematic review and meta-analysis. Clin Nutr (Epublication ahead of print version 5 April 2019)CrossRefGoogle Scholar
Shang, X, Scott, D, Hodge, A, et al. (2017) Dietary protein from different food sources, incident metabolic syndrome and changes in its components: an 11-year longitudinal study in healthy community-dwelling adults. Clin Nutr 36, 15401548.CrossRefGoogle ScholarPubMed
Institute of Medicine (US) & Committee on Dietary Risk Assessment in the WIC Program (2002) Dietary Risk Assessment in the WIC Program. Washington, DC: National Academies Press (US); 5, Food-Based Assessment of Dietary Intake. https://www.ncbi.nlm.nih.gov/books/NBK220560/ (accessed November 2019).Google Scholar
Pranger, IG, Joustra, ML, Corpeleijn, E, et al. (2019) Fatty acids as biomarkers of total dairy and dairy fat intakes: a systematic review and meta-analysis. Nutr Rev 77, 4663.Google ScholarPubMed
de Oliveira Otto, MC, Lemaitre, RN, Song, X, et al. (2018) Serial measures of circulating biomarkers of dairy fat and total and cause-specific mortality in older adults: the Cardiovascular Health Study. Am J Clin Nutr 108, 476484.CrossRefGoogle ScholarPubMed
Imamura, F, Fretts, A, Marklund, M, et al. (2018) Fatty acid biomarkers of dairy fat consumption and incidence of type 2 diabetes: a pooled analysis of prospective cohort studies. PLoS Med 15, e1002670.CrossRefGoogle ScholarPubMed
Wang, YS, Yu, ZR, Yue, S, et al. (2011) A matched case-control study on the risk factors of metabolic syndrome among policemen. Zhonghua Lao Dong Wei Sheng Zhi Ye Bing Za Zhi 29, 567571. [Article in Chinese]Google ScholarPubMed
Cheng, M, Wang, H, Wang, Z, et al. (2017) Relationship between dietary factors and the number of altered metabolic syndrome components in Chinese adults: a cross-sectional study using data from the China Health and Nutrition Survey. BMJ Open 7, e014911.CrossRefGoogle ScholarPubMed
Guo, P, Zhu, H, Pan, H, et al. (2019) Dose–response relationships between dairy intake and chronic metabolic diseases in a Chinese population. J Diabetes 11, 846856.CrossRefGoogle ScholarPubMed
Zong, G, Sun, Q, Yu, D, et al. (2014) Dairy consumption, type 2 diabetes, and changes in cardiometabolic traits: a prospective cohort study of middle-aged and older Chinese in Beijing and Shanghai. Diabetes Care 37, 5663.CrossRefGoogle ScholarPubMed
Villegas, R, Gao, YT, Dai, Q, et al. (2009) Dietary calcium and magnesium intakes and the risk of type 2 diabetes: the Shanghai Women’s Health Study. Am J Clin Nutr 89, 10591067.CrossRefGoogle ScholarPubMed
Wang, SS, Lay, S, Yu, HN, et al. (2016) Dietary guidelines for Chinese residents (2016): comments and comparisons. J Zhejiang Univ Sci B 17, 649656.CrossRefGoogle ScholarPubMed
OECD-FAO Agricultural Outlook (2019–2028). http://www.fao.org/publications/oecd-fao-agricultural-outlook/2019–2028/en/ (accessed November 2019).Google Scholar
National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III). (2002) Third Report of the National Cholesterol Education Program (NCEP) expert panel on detection, evaluation and treatment of high blood cholesterol in adults (Adult Treatment Panel III) final report. Circulation 106, 31433421.CrossRefGoogle Scholar
Popkin, BM (2015) Nutrition transition and the global diabetes epidemic. Current Diabetes Reports 15, 64.CrossRefGoogle ScholarPubMed
Hidayat, K, Chen, GC, Wang, Y, et al. (2018) Effects of milk proteins supplementation in older adults undergoing resistance training: a meta-analysis of randomized control trials. J Nutr Health Aging 22, 237245.CrossRefGoogle ScholarPubMed
Hidayat, K, Du, X & Shi, BM (2019) Milk in the prevention and management of type 2 diabetes: the potential role of milk proteins. Diabetes Metab Res Rev 35, e3187.CrossRefGoogle ScholarPubMed
Hidayat, K, Du, HZ, Yang, J, et al. (2017) Effects of milk proteins on blood pressure: a meta-analysis of randomized control trials. Hypertens Res 40, 264270.CrossRefGoogle ScholarPubMed
Lorenzen, JK & Astrup, A (2011) Dairy calcium intake modifies responsiveness of fat metabolism and blood lipids to a high-fat diet. Br J Nutr 105, 18231831.CrossRefGoogle ScholarPubMed
Jacobsen, R, Lorenzen, JK, Toubro, S, et al. (2005) Effect of short-term high dietary calcium intake on 24-h energy expenditure, fat oxidation, and fecal fat excretion. Int J Obes (Lond) 29, 292301.CrossRefGoogle ScholarPubMed
Awad, AB, Alappat, L & Valerio, M (2012) Vitamin D and metabolic syndrome risk factors: evidence and mechanisms. Crit Rev Food Sci Nutr 52, 103112.CrossRefGoogle ScholarPubMed
Drouin-Chartier, JP, Côté, JA, Labonté, , et al. (2016) Comprehensive review of the impact of dairy foods and dairy fat on cardiometabolic risk. Adv Nutr 7, 10411051.CrossRefGoogle ScholarPubMed
Chen, M, Li, Y, Sun, Q, et al. (2016) Dairy fat and risk of cardiovascular disease in 3 cohorts of US adults. Am J Clin Nutr 104, 12091217.CrossRefGoogle ScholarPubMed
Figure 0

Table 1. Selected participant characteristics according to milk consumption(Mean values and standard deviations; numbers and percentages)

Figure 1

Table 2. Prevalence of the metabolic syndrome and its components according to milk consumption(Numbers and percentages; odds ratios and 95 % confidence intervals)

Figure 2

Fig. 1. Forest plot of the association between the highest v. lowest categories of milk consumption and the metabolic syndrome. Weights are from random-effects analysis. RR, relative risk.

Figure 3

Table 3. Subgroup and meta-regression analyses of the association highest v. lowest categories of milk consumption and the metabolic syndrome(Numbers; relative risks (RR) and 95 % confidence intervals; I2)

Figure 4

Fig. 2. Forest plot of the association between the highest v. lowest categories of milk consumption and metabolic syndrome components. Weights are from random-effects analysis. RR, relative risk.

Supplementary material: File

Hidayat et al. supplementary material

Hidayat et al. supplementary material 1

Download Hidayat et al. supplementary material(File)
File 46.3 KB
Supplementary material: File

Hidayat et al. supplementary material

Hidayat et al. supplementary material 2

Download Hidayat et al. supplementary material(File)
File 45.6 KB