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Whole-grain consumption and the risk of all-cause, CVD and cancer mortality: a meta-analysis of prospective cohort studies

Published online by Cambridge University Press:  24 May 2016

Honglei Wei
Affiliation:
Department of Sports, Jiaotong University, Chengdu, Sichuan Province, 611756, People’s Republic of China School of Economics and Management, Southwest Jiaotong University, Chengdu, Sichuan Province, 611756, People’s Republic of China
Zong Gao
Affiliation:
Department of Neurosurgery, the Affiliated Hospital of Shandong Traditional Chinese Medicine University, Jinan, Shandong Province, 250011, People’s Republic of China
Rui Liang
Affiliation:
Department of Sports, Jiaotong University, Chengdu, Sichuan Province, 611756, People’s Republic of China
Zengqiang Li
Affiliation:
Department of Sports, Jiaotong University, Chengdu, Sichuan Province, 611756, People’s Republic of China
Hong Hao
Affiliation:
School of Mathematics, Southwest Jiaotong University, Chengdu, Sichuan Province, 611756, People’s Republic of China
Xu Liu*
Affiliation:
Department of Sports, Jiaotong University, Chengdu, Sichuan Province, 611756, People’s Republic of China
*
*Corresponding author: Professor X. Liu, fax +86 028 6636 7449, email [email protected]
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Abstract

Results of the relationships between dietary whole-grain consumption and the risk of all-cause, CVD and cancer-specific mortality are mixed. We summarised the evidence based on a meta-analysis of prospective cohort studies. Pertinent studies were identified by searching articles in the MEDLINE and EMBASE databases up to 20 January 2016 and by reviewing the reference lists of the retrieved articles. Random-effects models were used to calculate summary relative risks (SRR) and 95 % CI. In all, eleven prospective studies (ten publications) were included in the meta-analysis. There were a total of 816 599 subjects and 89 251 cases of all-cause mortality. On the basis of the highest v. the lowest categories of intake, whole grains may be associated with a lower risk of mortality from all causes (SRR 0·87; 95 % CI 0·84, 0·90), CVD (SRR 0·81; 95 % CI 0·75, 0·89) and all cancers (SRR 0·89; 95 % CI 0·82, 0·96). For each 3 servings/d increase in whole-grain intake, there was a 19 % reduction in the risk of all-cause mortality (SRR 0·81; 95 % CI 0·76, 0·85), a 26 % reduction in CVD mortality (SRR 0·74; 95 % CI 0·66, 0·83) and a 9 % reduction in cancer mortality (SRR 0·91; 95 % CI 0·84, 0·98). The current meta-analysis provides some evidence that high intake of whole grains was inversely associated with the risk of all-cause, CVD and cancer-specific mortality. Further well-designed studies, including clinical trials and in different populations, are required to confirm our findings.

Type
Full Papers
Copyright
Copyright © The Authors 2016 

Many dietary guidelines have recommended consumption of whole-grain foods by the general population( 1 ). Whole grains consist of three botanically defined parts: bran, germ and endosperm. The outer bran and germ contain various nutrients, including fibre, several vitamins and minerals and phytochemicals. Human feeding trials and mechanistic research have suggested that whole-grain foods and its constituents have beneficial effects on glucose metabolism, blood lipid profiles, endothelial function and inflammation( Reference Price, Wallace and Hamill 2 , Reference Goletzke, Buyken and Joslowski 3 ). In addition, an inverse association between consumption of whole grain and the risk of obesity( Reference Liu, Willett and Manson 4 , Reference Steffen, Jacobs and Murtaugh 5 ), type 2 diabetes mellitus (DM)( Reference Aune, Norat and Romundstad 6 , Reference Parker, Liu and Van Horn 7 ), CVD( Reference von Ruesten, Feller and Bergmann 8 ) and certain cancers( Reference von Ruesten, Feller and Bergmann 8 , Reference Knudsen, Kyro and Olsen 9 ) has been found in a number of large prospective studies.

Of chronic non-communicable diseases, cancer and CVD are the main causes of death( Reference Lozano, Naghavi and Foreman 10 ). Worldwide, chronic non-communicable diseases caused two out of every three deaths in 2010, increasing by approximately eight million between 1990 and 2010( Reference Lozano, Naghavi and Foreman 10 ). Given the reduction in risk of the main chronic non-communicable observed in whole-grain eaters, we hypothesised that whole-grain intake might be associated with a reduced risk of all-cause mortality. A number of epidemiological studies have investigated the relationship between consumption of whole grains and risk of all-cause mortality( Reference Liu, Sesso and Manson 11 Reference Johnsen, Frederiksen and Christensen 20 ). Some have found an inverse relationship between whole-grain intake and risk of all-cause mortality( Reference Liu, Sesso and Manson 11 , Reference Jacobs, Andersen and Blomhoff 13 Reference Huang, Xu and Lee 16 ); others have found no significant associations( Reference Sahyoun, Jacques and Zhang 17 ). To our knowledge, no meta-analyses have looked at the effects of whole-grain consumption on the risk of all-cause, CVD and cancer mortality. We therefore undertook a meta-analysis of prospective cohort studies exploring these associations.

Methods

Literature search

The meta-analysis was undertaken in accordance with the preferred reporting items for systematic reviews and meta-analysis guidelines( Reference Moher, Liberati and Tetzlaff 21 ). Two investigators (H. W. and Z. G.) systematically searched MEDLINE and EMBASE from their inception through 20 January 2016 in order to identify all published articles on this topic. The search strategy included the following medical subject headings or key words: (1) cereals OR grains OR wheat OR rice OR bread; (2) fatal OR death OR mortality; (3) prospective OR cohort. The search was limited to studies in English. References from all relevant articles were hand-searched to identify additional relevant studies.

Study selection

The same two reviewers (H. W. and Z. G.) independently analysed citations at the levels of title, abstract and full text. To be included, studies had to meet the following criteria: (1) prospective cohort study design; (2) whole grains as the exposure of interest with all-cause mortality as the end point of interest; (3) relative risks (RR) and corresponding 95 % CI given for the association between whole-grain intake and the occurrence of total, CVD and cancer mortality. If the same population was the subject of more than one report, we included in our meta-analysis the one with the longest follow-up time. Studies on foods that were based on individual grain components (e.g. bran or germ) or specific types of grain (such as brown rice or oats) were excluded. Studies that examined the effects of high fibre, dietary fibre or cereal fibre, but in which the specific effect of whole grains could not be determined, were also excluded.

Data extraction and study quality assessment

We extracted the data using a standardised form. Publication characteristics were recorded as follows: first author’s surname, publication year, study location, length of follow-up, number of participants, baseline mean age, methods of dietary assessment, number of events, confounding factors and RR estimates from the most fully adjusted model and the corresponding 95 % CI. Two researchers (H. W. and Z. G.) independently extracted the data. Disagreements were resolved by discussion involving a third researcher (X. L.). We used the nine-star Newcastle–Ottawa Scale (NOS) to assess the risk of bias( Reference Higgins, Thompson and Deeks 26 ); scores of seven or more were taken to indicate high-quality studies( Reference Higgins, Thompson and Deeks 26 ).

Statistical methods

Adjusted RR and 95 % CI were combined and weighted to produce summary RR using a random-effects model. This was chosen, rather than a fixed-effects model, in order to account for anticipated heterogeneity between studies( Reference DerSimonian and Laird 22 ). RR were plotted against their corresponding standard errors to produce funnel plots, which were checked for asymmetry in order to investigate publication bias using Begg’s adjusted rank correlation test and Egger’s linear regression test( Reference Begg and Mazumdar 23 , Reference Egger, Davey Smith and Schneider 24 ). To estimate the effect of publication bias, we used the trim-and-fill computation( Reference Duval and Tweedie 25 ).

The extent of heterogeneity in pooled estimates was investigated using both the Q statistic and the I 2. Results were classed as heterogeneous if P<0·10. I 2 is the part of the total variation that is explained by between-study variables. I 2 values of approximately 25, 50 and 75 % are considered to indicate low, moderate and high heterogeneity, respectively( Reference Higgins, Thompson and Deeks 26 ). To explore the sources of heterogeneity, subgroup and meta-regression analyses were performed according to sex, baseline mean age, duration of follow-up and methods of dietary assessment. Adjustments were made for confounding factors, including histories of hypertension, dyslipidaemia and type 2 DM. Further sensitivity analysis was performed to evaluate whether there was evidence of excessive influence from individual study by removing each individual study and assessing the resulting effect on estimates and measures of heterogeneity( Reference Aune, Chan and Lau 27 ).

The dose–response relationships in forest plots were assessed by 3 servings/d increments. We used the generalised least-squares trend estimation method developed by Greenland & Longnecker( Reference Greenland and Longnecker 28 ) and Orsini & Greenland( Reference Orsini and Greenland 29 ). This requires that the distribution of cases and person-years or non-cases and the RR with variance estimates for at least three quantitative exposure categories be known. When this information was not available, we estimated dose–response slopes using variance-weighted least-squares regression( Reference Greenland and Longnecker 28 , Reference Orsini and Greenland 29 ). The median or mean level of whole-grain intake in each category was assigned to the corresponding RR for each study. If such values were not reported, we took the estimated midpoint between the upper and lower boundaries in each category as the average intake level. If the highest or lowest category was open-ended, we assumed the size of the open-ended interval to be the same as that of the adjacent interval. In studies that reported the intakes in grams per day, we used 30 g as a serving size for recalculation of the intakes to a common scale (servings)( Reference Aune, Chan and Lau 27 ). Potential non-linear dose–response relationships were examined using the best-fitting fractional polynomial models( Reference Royston 30 ), defined as those with the least deviance. A likelihood ratio test was used to determine the difference between non-linear and linear models to assess non-linearity( Reference Royston 30 ).

We used STATA, version 11.0 (StataCorp. LP) and R package, version 2.11.0 beta (R Development Core Team) for the statistical analyses. A two-tailed P<0·05 was considered statistically significant.

Results

Search results and study characteristics

The search strategy yielded 802 articles, fifty-four of which had potential value and were available as full-text articles (Fig. 1). An additional three potential articles were found from scrutinising references. Following examination of the fifty-seven potential articles, forty-seven were excluded from the meta-analysis for a variety of reasons. The remaining ten articles were included in the meta-analysis. One article( Reference Wu, Flint and Qi 14 ) included two cohorts: the Nurses’ Health Study and the Health Professionals Follow-Up Study. Consequently, eleven prospective cohort studies were analysed (Table 1).

Fig. 1 Flow diagram of the systematic literature search undertaken on whole-grain intake and the risk of all-cause and CVD mortality.

Table 1 Characteristics of the studies of the association between whole-grain consumption and risk of all-cause and cause-specific mortality (Risk estimations and 95 % confidence intervals (highest v. lowest))

NOS, Newcastle–Ottawa Scale; NCS, Norwegian County Study; M, male; F, female; PHS, Physicians’ Health Study; ARIC, Atherosclerosis Risk in Communities Study; IWHS, Iowa Women’s Health Study; PREDIMED, Prevención con Dieta Mediterránea; NIH-AARP, National Institutes of Health-American Association of Retired Persons; NHS, Nurses’ Health Study; HPFS, Health Professionals Follow-Up Study; BWHS, Black Women’s Health Study; DASH, Dietary Approaches to Stop Hypertension.

These eleven studies included a total of 816 599 subjects, ranging from 535 in the smallest cohort to 367 442 in the largest cohort. The median duration of follow-up was 14 years (range: 5·5–26 years). There were 89 251 cases of all-cause mortality (range: 165–46 067), 23 280 CVD deaths (range: 89–11 283) and 35 189 cancer deaths (range: 169–19 043). Eight studies were performed in the USA, one in Norway, one in Spain and one in Scandinavia. One study( Reference Huang, Xu and Lee 16 ) used a 3-d food record as a tool to collect dietary information, and the others used a validated FFQ. All studies provided RR that were adjusted for age, smoking, alcohol use, BMI and physical activity. Most studies provided RR that were adjusted for hypertension or measured blood pressure (seven studies), DM (five studies) and dyslipidaemia (four studies). According to the NOS, all studies were of high quality (online Supplementary Table S1).

All-cause mortality

High v. low analysis

In all, eleven studies from ten publications investigated the association between whole-grain intake and all-cause mortality risk. The summary relative risk (SRR) was 0·87 (95 % CI 0·84, 0·90) for subjects in the highest category of whole-grain consumption compared with those in the lowest category, with evidence of high heterogeneity among studies (P heterogeneity<0·001; I 2=67·3 %; Fig. 2(a)).

Fig. 2 The summary risk association between the intake of whole grains and all-cause mortality according to (a) the highest v. lowest analysis; (b) linear dose–response analysis (per 3 serving/d). Weights are from random-effects analysis. NHS, Nurses’ Health Study; HPFS, Health Professionals Follow-Up Study; F, female; M, male.

Dose–response analysis

In all, eight studies from seven publications were included in the dose–response analysis of whole-grain consumption and all-cause mortality risk (Fig. 2(b)). The SRR per 3 servings/d was 0·81 (95 % CI 0·76, 0·85), with evidence of heterogeneity (I 2=79·3 %, P heterogeneity<0·001).

CVD mortality

High v. low analysis

Nine studies from eight publications investigated the association between whole-grain intake and CVD mortality risk. The SRR was 0·81 (95 % CI 0·75, 0·89) for subjects in the highest category of whole-grain consumption compared with those in the lowest category, with evidence of high heterogeneity among studies (P heterogeneity=0·013; I 2=56·9 %; Fig. 3(a)).

Fig. 3 The summary risk association between the intake of whole grains and CVD mortality according to (a) the highest v. lowest analysis; (b) linear dose–response analysis (per 3 serving/d). Weights are from random-effects analysis. NHS, Nurses’ Health Study; HPFS, Health Professionals Follow-Up Study; F, female; M, male.

Dose–response analysis

Eight studies from seven publications were included in the dose–response analysis of whole-grain consumption and CVD mortality risk (Fig. 3(b)). The SRR per 3 servings/d was 0·74 (95 % CI 0·66, 0·83), with evidence of high heterogeneity (I 2=76·3 %, P heterogeneity<0·001).

Total cancer mortality

High v. low analysis

Seven studies from six publications investigated the association between whole-grain intake and total cancer mortality risk. The SRR was 0·89 (95 % CI 0·82, 0·96) for subjects in the highest category of whole-grain consumption compared with those in the lowest category, with evidence of high heterogeneity (P heterogeneity=0·007; I 2=63·6 %; Fig. 4(a)).

Fig. 4 The summary risk association between the intake of whole grains and cancer mortality according to (a) the highest v. lowest analysis; (b) linear dose–response analysis (per 3 serving/d). Weights are from random-effects analysis. F, Female; M, male; NHS, Nurses’ Health Study; HPFS, Health Professionals Follow-Up Study.

Dose–response analysis

Six studies from five publications were included in the dose–response analysis of whole-grain consumption and total cancer mortality risk (Fig. 4(b)). The SRR per 3 servings/d was 0·91 (95 % CI 0·84, 0·98), with evidence of high heterogeneity (I 2=78·4 %, P heterogeneity<0·001).

Subgroup, meta-regression and sensitivity analyses

Subgroup and meta-regression analyses are shown in Table 2. Overall, only study location modified the association between whole-grain intake and cancer mortality (USA: SRR 0·95; 95 % CI 0·91, 0·99; Europe: SRR 0·78; 95 % CI 0·70, 0·87; P for difference=0·011). However, other variables, such as sex, duration of follow-up, baseline mean age and adjustments for DM, dyslipidaemia and hypertension did not significantly alter these associations. For example, there were significant inverse associations for both women (SRR 0·85; 95 % CI 0·81, 0·90; P heterogeneity=0·052; I 2=61·1 %) and men (SRR 0·89; 95 % CI 0·83, 0·96; P heterogeneity=0·018; I 2=75·0 %) for the association between whole grains and all-cause mortality. Stratified analyses by duration of follow-up showed a similar risk relationship. Meta-regression analysis showed that no variables may account for the heterogeneity across studies on the association between whole-grain intake and total mortality.

Table 2 Subgroup and meta-regression analyses for the association between whole-grain consumption and all-cause, CVD and cancer mortality (Relative risks (RR) and 95 % confidence intervals)

P h, P heterogeneity; P d, P for difference.

We also conducted a sensitivity analysis by omitting one study at a time and calculating the pooled RR for the remainder of studies, and we found that there were no changes in the direction of effect when any one study was excluded (data not shown). For example, by excluding one study that reported findings for the consumption of whole-grain breakfast cereals( Reference Liu, Sesso and Manson 11 ), there were significant associations between whole-grain intake and all-cause mortality (SRR 0·87; 95 % CI 0·84, 0·91; P heterogeneity=0·001; I 2=69·4 %). On excluding one study that included participants with the evidently older baseline age (mean: 72 years)( Reference Sahyoun, Jacques and Zhang 17 ), the significant associations did not change. Moreover, repeated analysis of high v. low intake using the studies included in the linear dose–response analysis for intake produced results that were similar to those of the original analysis (data not shown).

Non-linear dose–response analyses

There was evidence of a non-linear association between whole-grain intake and the risk of mortality from all causes (P non-linearity<0·001, online Supplementary Fig. S1A) and CVD (P non-linearity=0·003, online Supplementary Fig. S1B). However, there was no evidence of a non-linear association between whole-grain intake and the risk of mortality from cancer (P non-linearity=0·170, online Supplementary Fig. S1C).

Publication biases

Egger’s test revealed the publication bias (P=0·002) for the association between whole-grain consumption and all-cause mortality risk, whereas Begg’s test did not confirm this (P=0·945; online Supplementary Fig. S2A). The trim-and-fill method suggested that no additional risk estimate was required to balance the funnel plot. In case of the association with CVD death, there was no indication of publication bias by both Egger’s test (P=0·834) and Begg’s test (P=0·107; online Supplementary Fig. S2B). For the association with cancer death, there was no indication of publication bias by both Egger’s test (P=0·959) and Begg’s test (P=0·174; online Supplementary Fig. S2C).

Discussion

In this meta-analysis, we found that higher consumption of whole grains was associated with a decreased risk of all-cause, CVD and cancer mortality; eating an additional three servings of whole grains daily reduced all-cause mortality by 19 %, CVD death by 26 % and cancer death by 9 %. There was evidence of a non-linear risk association between whole-grain intake and the risk of mortality due to all causes and CVD, but a linear risk association with the risk of mortality due to cancer.

Clinical trials have suggested that consumption of whole grains may positively affect risk factors for CVD and cancer, including hypertension( Reference Flint, Hu and Glynn 31 , Reference Wang, Gaziano and Liu 32 ), weight gain/obesity( Reference Liu, Willett and Manson 4 , Reference Steffen, Jacobs and Murtaugh 5 , Reference Bazzano, Song and Bubes 33 , Reference Koh-Banerjee, Franz and Sampson 34 ), total and LDL-cholesterol( Reference Magnusdottir, Landberg and Gunnarsdottir 35 , Reference Ye, Chacko and Chou 36 ) and type 2 DM( Reference Aune, Norat and Romundstad 6 , Reference Parker, Liu and Van Horn 7 , Reference Sun, Spiegelman and van Dam 37 , Reference Johansson, Lee and Riserus 38 ). For instance, Magnusdottir et al.( Reference Magnusdottir, Landberg and Gunnarsdottir 35 ) found that increased consumption of whole-grain rye was associated with lower blood levels of LDL-cholesterol. A randomised cross-over trial found that, when compared with refined wheat crisp bread, consumption of whole-grain rye crisp bread is associated with lower postprandial glucose and insulin responses( Reference Johansson, Lee and Riserus 38 ).

Whole-grain intake may lower all-cause mortality rates by decreasing the risk of major chronic diseases, including CVD( Reference von Ruesten, Feller and Bergmann 8 , Reference Ye, Chacko and Chou 36 ) and some cancers( Reference von Ruesten, Feller and Bergmann 8 , Reference Ortiz-Martinez, Winkler and Garcia-Lara 39 , Reference Aune, Chan and Lau 40 ), which are significant causes of mortality worldwide. On the basis of ten prospective studies, Ye et al.( Reference Ye, Chacko and Chou 36 ) found that, compared with never/rare consumers of whole grains, those consuming 3–5 servings of whole grain/d had a 21 % lower risk of CVD (RR 0·79; 95 % CI 0·74, 0·85). Associations between whole-grain intakes and cancer mortality remain inconclusive. Several previous reports( Reference Jacobs, Andersen and Blomhoff 13 , Reference Wu, Flint and Qi 14 , Reference Jacobs, Meyer and Solvoll 18 ) have found that consumption of whole grains was inversely associated with the risk of cancer death. These associations were attenuated after further adjustment for dietary factors and other healthy lifestyle factors. With regard to the association with various cancer deaths, some researchers observed an inverse association between whole-grain consumption and risk of mortality from colorectal cancer in men. However, they did not find significant associations with mortality from prostate cancer, breast cancer or lung cancer( Reference Wu, Flint and Qi 14 ). In addition, the associations with cancer incidence may depend on the population characteristics and vary by specific types of cancer. An analysis of six prospective cohort studies found that the RR of colorectal cancer was 0·83 (95 % CI 0·78, 0·89) per increment of three servings of whole grains daily( Reference Aune, Chan and Lau 40 ). However, no significant associations were found for incidence of ovarian cancer, prostate cancer, breast cancer or endometrial cancer( Reference Aarestrup, Kyro and Christensen 41 Reference Nicodemus and Jacobs 43 ).

Several mechanisms may explain the inverse association between whole-grain consumption and all-cause mortality. Both the bran and germ layers of whole grains are high in fibres, antioxidants, phytochemicals and minerals (including Mg, K and Ca). Dietary fibre consumption is inversely associated with the risk of a number of chronic diseases, including CHD( Reference Kokubo, Iso and Saito 44 ), stroke, colorectal adenoma and carcinoma( Reference Aune, Chan and Lau 27 , Reference Ben, Sun and Chai 45 ) and breast cancer( Reference Aune, Chan and Greenwood 46 ). Dietary fibre has been shown to increase the production of SCFA and the rate of bile excretion, leading to reduced serum cholesterol levels( Reference Jakobsdottir, Nilsson and Blanco 47 ). In addition, it is postulated that dietary fibre may reduce the risk of bowel cancer by reducing the contact time between potential carcinogens and mucosal cells, and by increasing the binding of carcinogens to bile acids( Reference Young, Hu and Le Leu 48 ). Observational studies and clinical trials have shown that an increased intake of Mg and K is inversely associated with the risk of certain chronic diseases( Reference Aburto, Hanson and Gutierrez 49 , Reference Nie, Wang and Zhou 50 ). Whole grains are rich in these nutrients.

To the best of our knowledge, this is the first meta-analysis to explore the relationship between whole-grain consumption and the risk of all-cause mortality. All of the studies included in this meta-analysis were prospective cohort studies, which minimises recall and selection biases. The meta-analysis included more than 810 000 subjects and nearly 90 000 cases of all-cause mortality. The large numbers meant that it had sufficient statistical power to detect moderate associations. All of the studies included in this meta-analysis were of high quality. Moreover, the majority adjusted for important confounders, such as smoking, alcohol, physical activity, BMI and intermediate biomarkers, such as DM, hypertension and dyslipidaemia. Finally, we were able to confirm our findings using both linear and non-linear dose–response analyses.

However, our study had some limitations. Measurement errors were inevitable, as it is very difficult for individuals to accurately report their intake of whole grains. All the included studies used total whole grains as a category, and we excluded studies that investigated only specific types of whole grains, such as brown rice( Reference Muraki, Wu and Imamura 51 ). The aggregation of consumption data may have masked the beneficial effects of specific whole grains. In addition, the definition of whole grains differed somewhat between studies. For example, one considered breakfast cereals to be made of whole grains if the product contained >25 % whole grain or bran by weight( Reference Liu, Sesso and Manson 11 ), whereas some studies did not provide definitions of whole grains. On the other hand, whole-grain intake was determined using self-administered FFQ in all but one study. This may have resulted in inaccuracies, although it is reassured in one cohort study( Reference Liu, Manson and Stampfer 52 ), which found that when compared with a 7-d dietary record assessment of whole-grain consumption by the use of FFQ had relatively high validity (r>0·70). Misclassification may bias the results towards the null hypothesis. Consequently, the reduction we found in the all-cause mortality risk may have been more evident.

We cannot completely exclude the influence of residual confounders. It is well known that ‘healthy’ behaviours occur in clusters. For example, individuals who eat a lot of whole grains will probably also have lower rates of smoking, alcohol use and obesity and higher levels of physical exercise than those who do not eat much whole grains( Reference Steffen, Jacobs and Stevens 12 , Reference Liu, Manson and Stampfer 52 ). Healthy lifestyles have been shown to reduce the risk of CVD( Reference Peng, Wu and Jiang 53 , Reference Goldstein 54 ) and cancer. Most of the studies included in our meta-analysis did adjust for important possible confounders, although only four( Reference Jacobs, Andersen and Blomhoff 13 Reference Huang, Xu and Lee 16 ) adjusted for other dietary factors. Studies have indicated that the intake of red meat and fruit and vegetable is significantly associated with the risk of total mortality( Reference Wang, Ouyang and Liu 55 , Reference Abete, Romaguera and Vieira 56 ). Only one of the included studies adjusted for dietary fibre intake( Reference Huang, Xu and Lee 16 ). High levels of dietary fibre intake are associated with lower rates of total mortality( Reference Kim and Je 57 ). A confounding effect of dietary fibre, red meat, fruit and vegetable intake on mortality is therefore possible. Intermediate end points such as DM, hypertension and hypercholesterolaemia that occurred during follow-up could have led to individuals changing their diets, which could have confounded the associations between diet and outcome. Reassuringly, when we restricted the analysis to studies that were adjusted for intermediate variables, the magnitude of the associations in the subgroups was similar to those overall( Reference Ye, Chacko and Chou 36 ).

While the number of mortality events was large, our data came only from the USA. It will be desirable to conduct researches in other populations, particularly in oriental ones.

Finally, Egger’s test did provide evidence of publication bias for the association with total mortality risk; however, the results obtained from Begg’ tests did not provide evidence for such bias. Furthermore, the trim-and-fill method showed that no additional risk estimates were required to balance the funnel plot.

In conclusion, our meta-analysis of prospective cohort studies found that a higher intake of whole grains is associated with a reduced risk of all-cause and CVD-specific mortality. Further well-designed studies, including clinical trials and in different population, are required to confirm our findings.

Acknowledgements

This research received no specific grant from any funding agency, commercial or not-for-profit sectors.

H. W., Z. G. and X. L. designed the study; H. W., Z. G. and R. L. conducted the search and data extraction; H. W., Z. G. and Z. L. collected the data; Z. L., H. H. and X. L. analysed the data and wrote the manuscript. All authors read and approved the final content.

There are no conflicts of interest.

Supplementary Material

For supplementary material/s referred to in this article, please visit http://dx.doi.org/doi:10.1017/S0007114516001975

Footnotes

Both authors contributed equally to this work.

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Figure 0

Fig. 1 Flow diagram of the systematic literature search undertaken on whole-grain intake and the risk of all-cause and CVD mortality.

Figure 1

Table 1 Characteristics of the studies of the association between whole-grain consumption and risk of all-cause and cause-specific mortality (Risk estimations and 95 % confidence intervals (highest v. lowest))

Figure 2

Fig. 2 The summary risk association between the intake of whole grains and all-cause mortality according to (a) the highest v. lowest analysis; (b) linear dose–response analysis (per 3 serving/d). Weights are from random-effects analysis. NHS, Nurses’ Health Study; HPFS, Health Professionals Follow-Up Study; F, female; M, male.

Figure 3

Fig. 3 The summary risk association between the intake of whole grains and CVD mortality according to (a) the highest v. lowest analysis; (b) linear dose–response analysis (per 3 serving/d). Weights are from random-effects analysis. NHS, Nurses’ Health Study; HPFS, Health Professionals Follow-Up Study; F, female; M, male.

Figure 4

Fig. 4 The summary risk association between the intake of whole grains and cancer mortality according to (a) the highest v. lowest analysis; (b) linear dose–response analysis (per 3 serving/d). Weights are from random-effects analysis. F, Female; M, male; NHS, Nurses’ Health Study; HPFS, Health Professionals Follow-Up Study.

Figure 5

Table 2 Subgroup and meta-regression analyses for the association between whole-grain consumption and all-cause, CVD and cancer mortality (Relative risks (RR) and 95 % confidence intervals)

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