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Dietary inflammatory index potentially increases blood pressure and markers of glucose homeostasis among adults: findings from an updated systematic review and meta-analysis

Published online by Cambridge University Press:  11 November 2019

Mahdieh Abbasalizad Farhangi*
Affiliation:
Research Center for Evidence Based Medicine, Health Management and Safety Promotion Research Institute, Tabriz University of Medical Sciences, Attar Neyshabouri Street, 5166614766 Tabriz, Iran
Leila Nikniaz
Affiliation:
Tabriz Health Services Management Research Center, Health Management and Safety Promotion Research Institute, Tabriz University of Medical Sciences, Tabriz, Iran
Zeinab Nikniaz
Affiliation:
Liver and Gastrointestinal Diseases Research Center, Tabriz University of Medical Sciences, Tabriz, Iran
Parvin Dehghan
Affiliation:
Department of Biochemistry and Nutrition, School of Nutrition and Food Sciences, Tabriz University of Medical Sciences, Tabriz, Iran
*
*Corresponding author: Email [email protected]
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Abstract

Objective:

In the current meta-analysis, we aimed to systematically review and summarize eligible studies for the association between dietary inflammatory index (DII) and blood pressure, hypertension (HTN) and glucose homeostasis biomarkers.

Design/Setting:

In a systematic search of PubMed, Scopus and Google Scholar electronic databases up to February 2019, relevant studies were included in the literature review. Observational studies evaluating the association between DII and HTN, hyperglycaemia, systolic blood pressure (SBP), diastolic blood pressure (DBP), fasting blood glucose (FBG), insulin, homeostatic model assessment of insulin resistance (HOMA-IR) and glycated Hb (HbA1c) were included.

Participants:

Not applicable.

Results:

Total numbers of studies were as follows: OR for DII and HTN (n 12), OR for DII and hyperglycaemia (n 9), HTN prevalence (n 9), mean (sd) of SBP and DII (n 12), mean (sd) of DBP and DII (n 10), mean (sd) of FBS and DII (n 13), mean (sd) of HbA1c and DII (n 3), mean (sd) of insulin and DII (n 6), mean (sd) of HOMA-IR and DII (n 7). Higher DII scores were associated with higher odds of HTN (OR = 1·13; 95 % CI 1·01, 1·27; P < 0·001), SBP (weighted mean difference (WMD) = 1·230; 95 % CI 0·283, 2·177; P = 0·011), FBS (WMD = 1·083; 95 % CI 0·099, 2·068; P = 0·031), insulin (WMD = 0·829; 95 % CI 0·172, 1·486; P = 0·013), HbA1c (WMD = 0·615; 95 % CI 0·268, 0·961; P = 0·001) and HOMA-IR (WMD = 0·192; 95 % CI 0·023, 0·361; P = 0·026) values compared with lowest DII categories.

Conclusions:

Lower inflammatory content of diets for prevention of cardiovascular risk factors is recommended.

Type
Review Article
Copyright
© The Authors 2019

Inflammation characterized by the presence of pro-inflammatory cytokines in the body is a protective bodily response against injury for removing the damaged cells and neutralizing the harmful agents(Reference Keibel, Singh and Sharma1). However, chronic and continuous inflammation is associated with numerous chronic diseases including cardiovascular events, diabetes, stroke, metabolic syndrome and cancers(Reference Pearson, Mensah and Alexander2Reference Festa, D’Agostino and Howard4). Diet-induced inflammation is a chronic low-grade inflammatory status caused by overnutrition and inappropriate dietary habits leading to obesity, insulin resistance, diabetes and cardiovascular events(Reference Li, Chen and Wang5). Overnutrition induces lipid accumulation in the body, especially in the adipocytes, which activates inflammatory pathways and increases the production of pro-inflammatory cytokines including TNF-α, IL-1β, IL-6 and high-sensitivity C-reactive protein(Reference Shoelson, Lee and Goldfine6,Reference Ramadori, Kroy and Streetz7) . It has been demonstrated that inflammatory biomarkers are potent mediators of hyperglycaemia independent of insulin resistance and infusion of pro-inflammatory cytokines like TNF-α is associated with a sustainable increase in fasting blood glucose(Reference Van der Poll, Romijn and Endert8). Accordingly, inflammatory cytokines are potent inducers of hypertension (HTN) via disturbance of the renin–angiotensin system, vascular inflammation and reduced NO production(Reference Miguel, Rudemiller and Abais9). The dietary inflammatory index (DII), first identified by Shivappa et al., is a valid and reliable tool for assessing the pro-inflammatory and anti-inflammatory potential of diets. It was developed according to the review and scoring of 1943 papers; the final scoring algorithm was based on forty-five food parameters and their effects on several inflammatory parameters including high-sensitivity C-reactive protein, IL-1, IL-4, IL-6, IL-8, IL-10 and TNF-α(Reference Shivappa, Steck and Hurley10,Reference Farhangi and Najafi11) . Numerous studies have reported the association between DII and inflammatory cytokines; in the study by Shivappa et al.(Reference Shivappa, Hebert and Marcos12), higher DII scores were associated with increased levels of various inflammatory markers including TNF-α, IL-1β, IL-2, interferon-γ and vascular cell adhesion molecule; in another study by Phillips et al.(Reference Phillips, Shivappa and Hébert13), higher energy-adjusted DII scores were positively correlated with higher complement component C3, C-reactive protein (both P < 0·05), IL-6 and TNF-α concentrations, higher leucocyte counts and ratio of neutrophils to lymphocytes, and lower adiponectin levels (all P < 0·001). Since its development, numerous studies have examined the effects of DII on several chronic diseases including cardiovascular events(Reference Farhangi and Najafi11), several types of cancer(Reference Zucchetto, Serraino and Shivappa14Reference Zamora-Ros, Shivappa and Steck18), metabolic syndrome, pre-diabetes and diabetes(Reference Vahid, Shivappa and Karamati19Reference Phillips, Shivappa and Hébert22), memory function(Reference Frith, Shivappa and Mann23) and cataract(Reference Shivappa, Hebert and Rashidkhani24). In addition, numerous reports are available evaluating the association between DII and cardiometabolic risk factors including HTN(Reference Phillips, Shivappa and Hébert25), blood pressure(Reference Phillips, Shivappa and Hébert22,Reference Park, Choi and Lee26,Reference Naja, Shivappa and Nasreddine27) , insulin resistance(Reference Vahid, Shivappa and Karamati19) and blood glucose(Reference Park, Choi and Lee26,Reference Mirmajidi, Izadi and Saghafi-Asl28) . Moreover, several reviews have been developed evaluating the association between DII and numerous chronic diseases including cancers(Reference Shivappa, Godos and Hébert29Reference Steck, Guinter and Zheng32), CVD(Reference Zhong, Guo and Zhang33Reference Namazi, Larijani and Azadbakht35), obesity(Reference Varkaneh, Fatahi and Tajik36) and depressive outcomes(Reference Lassale, Batty and Baghdadli37). However, it would be worthwhile to summarize and evaluate the association of DII with biomarkers of these chronic diseases including blood pressure and markers of glycaemic status. In the current systematic review and meta-analysis, we systematically reviewed all of the studies investigating the association between DII and blood pressure, HTN and markers of glucose homeostasis; then, relevant studies were included into meta-analyses to estimate the effect sizes of the mentioned associations including the association of DII with HTN, systolic and diastolic blood pressure (SBP, DBP), insulin, fasting blood sugar (FBS), insulin resistance markers and glycated Hb (HbA1c) concentration.

Methods

Search strategy

A systematic search was performed in PubMed, Scopus and Google Scholar electronic databases for studies that evaluated the association between DII, glycaemic status and blood pressure up to February 2019. No language restriction was applied. Additionally, hand-searching from reference lists of all relevant papers, previous reviews and meta-analyses was performed to cover all relevant publications. For creating a strategy search, a combination of the MeSH (Medical Subject Headings) terms from the PubMed database and free text words was used. For each electronic database, the search strategy was adapted. The PICO (patients, intervention, comparator and outcome) strategy for studies’ selection is presented in Table 1. The PICO model used in the current study is one of the most widely used models for formulating clinical questions and one of the frequently used tools for structuring clinical research questions in connection with evidence syntheses. The Cochrane Handbook for Systematic Reviews of Interventions specifies using PICO as a model for developing a review question, thus ensuring that the relevant components of the question are well defined(Reference Miller and Forrest38,Reference Higgins, Thomas and Chandler39) . The protocol of the current meta-analysis has been registered in the International Prospective Register of Systematic Reviews (PROSPERO; registration number CRD42019122269).

Table 1 PICO criteria used for the current systematic review

DII, dietary inflammatory index; HTN, hypertension; SBP, systolic blood pressure; DBP, diastolic blood pressure; FBS, fasting blood sugar; HOMA-IR, homeostatic model assessment of insulin resistance.

Selection and characteristics of the included studies

Our search obtained 119 manuscripts from PubMed, 137 from Scopus and 110 from Google Scholar databases. After removal of duplicates, a total of eighty-seven manuscripts remained. From the remaining manuscripts, twenty-nine manuscripts were excluded according to their title and abstract. Thereafter, fifty-eight manuscripts remained and were subjected to full-text screening. Finally, twenty-eight manuscripts were excluded because of their irrelevant design (being reviews or conference/seminar presentations), not relevant age groups, not evaluating the association of the studied parameters (DII, HTN, blood pressure and markers of glycaemia) or not measuring the routine DII. Accordingly, thirty manuscripts were included in the systematic review (Fig. 1).

Fig. 1 Flow diagram of the study screening and selection process for the current systematic review and meta-analysis (DII, dietary inflammatory index; HTN, hypertension; SBP, systolic blood pressure; DBP, diastolic blood pressure; FBS, fasting blood sugar; HbA1c, glycated Hb; HOMA-IR, homeostatic model assessment of insulin resistance)

Inclusion criteria

In the current systematic review and meta-analysis, observational studies with the design of cross-sectional, case–control or cohort evaluating the association of DII with HTN, SBP, DBP, serum or plasma glucose, insulin, HbA1c, homeostatic model of insulin resistance (HOMA-IR), homeostatic model of pancreatic β-cell function (HOMA-B) or quantitative insulin sensitivity check index (QUICKI) were included. According to our set of parameters, we conducted numerous meta-analyses. The DII–HTN or DII–hyperglycaemia meta-analysis included studies that evaluated the odds ratio, relative risk or prevalence of HTN or hyperglycaemia in the highest v. lowest DII categories. Accordingly, in DII–blood pressure or DII–glycaemic markers meta-analysis, the study must have reported the mean and standard deviation of SBP or DBP or glycaemic markers (including fasting serum or plasma glucose (FBS) or insulin, HbA1c, HOMA-IR, HOMA-B or QUICKI) in participants in the highest DII v. lowest DII category as the reference group. The reviewed literatures were inserted into the EndNote software version X8 for Windows (Thomson Reuters, Philadelphia, PA, USA). Consequently, retrieved citations were merged, duplications were eliminated, and the review process facilitated. Titles and abstracts of all articles were evaluated independently by three reviewers (M.A.F., L.N. and Z.N.). Articles not meeting the eligibility criteria were excluded. Moreover, the reference lists of relevant review articles were also evaluated to include additional studies. Full texts of relevant articles meeting the eligibility criteria were retrieved and evaluated. Any disagreements were discussed and resolved by consensus.

Quality assessment

The methodological quality assessment of the included papers was performed by the 9-star Newcastle–Ottawa scale (NOS) for quality assessment of the cross-sectional, case–control and cohort studies. The 9-point NOS has scoring range from 0 to 9, and is categorized into selection, comparability and ascertaining of outcome. Studies with ≥7 stars were categorized as high quality(Reference Stang40).

Data collection and extraction

Data were collected using a standard data extraction form that gathered information about the study characteristics including first author’s name, publication year, geographical area and study design; information about the population including participants’ age range, mean age of case and control groups, number of cases and controls, dietary assessment tool, setting, gender and sample size; and study results including the main findings, estimates of associations and information about adjusting for possible confounders.

Data synthesis and analysis

In the current meta-analysis, three meta-analysis approaches were used. (i) When the association between HTN or hyperglycaemia and DII was analysed by estimating the OR and 95 % CI, the logarithm of the OR and its standard error were calculated as the effect size of the meta-analysis. The pooled OR (and 95 % CI) was estimated using a weighted random-effect model (the DerSimonian–Laird approach)(Reference Hardy and Thompson41). (ii) When the comparison of continuous variables including SBP, DBP, FBS, insulin and HOMA-IR between the highest v. the lowest DII category as reference group was performed, the unstandardized mean difference was measured as the effect size and the pooled estimate was calculated as the weighted mean difference (WMD) with 95 % CI using fixed-effects and random-effects models. (iii) The prevalence of HTN and hyperglycaemia in the highest v. the lowest DII category as reference group was performed by recalculating the proportions of interest from the relevant numerator and denominator. The overall proportions of interest were derived using meta-analysis techniques with the metaprop command in Stata and presented along with the 95 % CI calculated using a normal approximation.

Cochran’s Q test and the I 2 test were used to identify between-study heterogeneity: I 2 < 25 % indicates no heterogeneity; I 2 = 25–50 % indicates moderate heterogeneity; and I 2 > 50 % indicates large heterogeneity(Reference Higgins and Thompson42). The heterogeneity was considered significant if either the Q statistic had P < 0·1 or I 2 > 50 %. Sensitivity analysis was used to explore the extent to which inferences might depend on a particular study or a number of publications. Subgroup analysis was performed to identify possible sources of heterogeneity, if required. Begg’s funnel plots were assessed to evaluate the publication bias followed by Egger’s regression asymmetry test and Begg’s adjusted rank correlation for formal statistical assessment of funnel plot asymmetry. The data were analysed using the statistical software package Stata version 13 and P values less than 0·05 were considered statistically significant

Results

Description of studies reporting associations of dietary inflammatory index with hypertension or blood pressure

From all of the relevant papers included in the systematic review (Table 2), a total of twenty-four manuscripts reported the association of DII with HTN or blood pressure. The findings of all of these reports could be categorized in three dimensions: (i) those that reported a positive association between DII and odds of HTN or a higher prevalence of HTN or higher SBP or DBP values in the highest DII category(Reference Ren, Zhao and Wang21,Reference Phillips, Shivappa and Hébert22,Reference Mazidi, Shivappa and Wirth43Reference Neufcourt, Assmann and Fezeu49) ; (ii) those that reported an inverse association between DII and odds of HTN or a lower prevalence of HTN or lower SBP or DBP values in the highest DII category(Reference Sokol, Wirth and Manczuk20,Reference Park, Choi and Lee26,Reference Shivappa, Bonaccio and Hebert50Reference Sánchez-Villegas, Ruíz-Canela and De La Fuente-Arrillaga53) ; and (iii) those studies that reported no significant association between the mentioned parameters(Reference Farhangi and Najafi11,Reference Park, Choi and Lee26,Reference Naja, Shivappa and Nasreddine27,Reference Nikniaz, Nikniaz and Shivappa54Reference Alkerwi, Vernier and Crichton59) . Three studies reported the association between DII and blood pressure by gender, providing separate results for men and women(Reference Sokol, Wirth and Manczuk20,Reference Bodén, Wennberg and Van Guelpen46,Reference Wirth, Shivappa and Hurley48) . Bodén et al.(Reference Bodén, Wennberg and Van Guelpen46) reported the association between DII and risk of first myocardial infarction in a prospective population-based study. In the separate analysis of baseline parameters, significantly higher SBP in the highest quartile of DII compared with the lowest was observed only among men (P = 0·005) and not in women (P = 0·673). In Mazidi et al.’s study(Reference Mazidi, Shivappa and Wirth43) analysing results from the National Health and Nutrition Examination Survey (NHANES) with 15 693 participants, in a model fully adjusted for confounders, women in the fourth quartile of DII were 1·25 times more likely to develop high blood pressure compared with women in the first quartile (OR = 1·25; 95 % CI 1·07, 1·45; P < 0·001), while this association was not significant among men. Sokol et al.(Reference Sokol, Wirth and Manczuk20) evaluated data from the Polish-Norwegian (PONS) Study involving more than 1290 men and 2572 women from the general population and reported the inverse association between DII and odds of HTN among women, while no association among men was observed. In another study, Neufcourt et al.(Reference Neufcourt, Assmann and Fezeu49) evaluated the prospective association between DII and odds of metabolic syndrome among the general population of the Supplémentation en Vitamines et Minéraux AntioXydants (SU.VI.MAX) cohort with 3726 participants. DII was associated with higher SBP values at baseline and with higher SBP and DBP values after 13-year follow-up. Park et al. also reported lower DBP values in the highest DII tertile among a metabolically unhealthy obese population while no association was observed among metabolically healthy obese individuals(Reference Park, Choi and Lee26).

Table 2 Characteristics of studies included in the current systematic review owing to reporting the association between dietary inflammatory index (DII) and central obesity

CABG, coronary artery bypass grafting; E-DII, energy-adjusted dietary inflammatory index; ADII, adapted dietary inflammatory index; HTN, hypertension; SBP, systolic blood pressure; FBS, fasting bold sugar; DBP, diastolic blood pressure; FPG, fasting plasma glucose; HOMA-IR, homeostatic model assessment of insulin resistance; HbA1c, glycated Hb; MI, myocardial infarction; PA, physical activity; LDL-C, LDL-cholesterol; PAL, physical activity level; TV, television.

Description of studies reporting associations of dietary inflammatory index with hyperglycaemia or markers of glycaemic status

In total twenty-one manuscripts reported the association between DII and hyperglycaemia or markers of glycaemic status(Reference Farhangi and Najafi11,Reference Vahid, Shivappa and Karamati19Reference Phillips, Shivappa and Hébert22,Reference Park, Choi and Lee26Reference Mirmajidi, Izadi and Saghafi-Asl28,Reference Mazidi, Shivappa and Wirth43,Reference Neufcourt, Assmann and Fezeu49Reference Alkerwi, Shivappa and Crichton52,Reference Nikniaz, Nikniaz and Shivappa54Reference Abdurahman, Azadbakhat and Rasouli56,Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez58Reference Mazidi, Shivappa and Wirth63) . Among them, fourteen studies reported a positive association between DII and hyperglycaemia or a higher prevalence of hyperglycaemia among individuals in the highest category of DII, or higher insulin, FBS, HOMA-IR or HOMA-B values in the highest DII category v. the lowest category as the reference group(Reference Vahid, Shivappa and Karamati19Reference Phillips, Shivappa and Hébert22,Reference Park, Choi and Lee26,Reference Mazidi, Shivappa and Wirth43,Reference Neufcourt, Assmann and Fezeu49,Reference Nikniaz, Nikniaz and Shivappa54,Reference Kim, Lee and Kim55,Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez58,Reference Denova-Gutiérrez, Muñoz-Aguirre and Shivappa60Reference Van Woudenbergh, Theofylaktopoulou and Kuijsten62) . Six studies reported no significant association between DII and markers of glycaemic status or the prevalence of hyperglycaemia in different DII categories(Reference Farhangi and Najafi11,Reference Naja, Shivappa and Nasreddine27,Reference Moslehi, Ehsani and Mirmiran51,Reference Alkerwi, Shivappa and Crichton52,Reference Abdurahman, Azadbakhat and Rasouli56,Reference Alkerwi, Vernier and Crichton59) and only one study observed an inverse association between DII and glycaemic status, reporting lower FBS concentrations in individuals of the highest DII category v. the lowest(Reference Shivappa, Bonaccio and Hebert50). Ren et al.(Reference Ren, Zhao and Wang21) reported 17 % higher odds of hyperglycaemia in women of the highest v. the lowest DII category, while no significant association was reported among men or in combined analysis of both genders. The study by Park et al. reported higher HOMA-IR values in the highest tertile of DII only among metabolically healthy overweight and obese adults and not in metabolically unhealthy adults(Reference Park, Choi and Lee26). Kim et al.(Reference Kim, Lee and Kim55) also reported 1·30 times greater chance of developing hyperglycaemia among 3682 men aged 19–65 years of the highest DII quartile, while no association was observed among 5609 women. Neufcourt et al.(Reference Neufcourt, Assmann and Fezeu49) reported higher FBS concentrations in the highest v. lowest DII category among 3726 participants of the SU.VI.MAX cohort while no difference was observed after 13 years of follow-up.

Findings from meta-analysis of OR and proportions for association of dietary inflammatory index with hypertension

The forest plot of the meta-analysis of OR of DII and HTN is presented in Fig. 2. Totally twelve studies were included in the meta-analysis(Reference Sokol, Wirth and Manczuk20,Reference Ren, Zhao and Wang21,Reference Naja, Shivappa and Nasreddine27,Reference Vissers, Waller and van der Schouw44,Reference Ramallal, Toledo and Martínez-González47,Reference Wirth, Shivappa and Hurley48,Reference Alkerwi, Shivappa and Crichton52,Reference Nikniaz, Nikniaz and Shivappa54Reference Abdurahman, Azadbakhat and Rasouli56,Reference Wirth, Burch and Shivappa61,Reference Mazidi, Shivappa and Wirth63) . Among these twelve studies reporting the OR of HTN in the highest v. the lowest DII category, a positive association was observed between HTN and DII in the random-effects model (OR = 1·13; 95 % CI 1·01, 1·27; P < 0·001). In other words, being in the highest category of DII increased the chance of HTN by 13 %. A minimum between-study heterogeneity was observed (heterogeneity χ 2 = 31·51, df = 14, P = 0·005; I 2 = 55·6 %; estimate of between-study variance τ 2 = 0·0224). A subgroup analysis was performed to obtain the source of heterogeneity (see online supplementary material, Supplemental Table S1) and accordingly continent, dietary assessment tool and gender were the sources of heterogeneity. Totally, nine studies reported the prevalence of HTN in the highest v. lowest DII category(Reference Farhangi and Najafi11,Reference Phillips, Shivappa and Hébert25,Reference Park, Choi and Lee26,Reference Vissers, Waller and van der Schouw44,Reference Ramallal, Toledo and Martínez-González47,Reference Shivappa, Bonaccio and Hebert50,Reference Sánchez-Villegas, Ruíz-Canela and De La Fuente-Arrillaga53,Reference Hayden, Beavers and Steck57,Reference Mazidi, Shivappa and Wirth63) . The forest plot of the prevalence of HTN by subgroups of lowest and highest DII categories is presented in Fig. 3. Accordingly, the prevalence of HTN was 16 (95 % CI 0·16, 0·16) % in the highest v. 18 (95 % CI 0·17, 0·18) % in the lowest category of DII. No heterogeneity was observed in the meta-analysis.

Fig. 2 Forest plot illustrating OR for hypertension in the highest v. the lowest category of dietary inflammatory index. The study-specific OR and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled OR, and the width of the open diamond represents the pooled 95 % CI

Fig. 3 Forest plot illustrating proportion of hypertension in the highest and the lowest categories of dietary inflammatory index (DII). The study-specific effect size (ES) and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled ES, and the width of the open diamond represents the pooled 95 % CI

Findings from meta-analysis of OR for association of dietary inflammatory index with hyperglycaemia

The odds of hyperglycaemia in different DII categories were reported in a total of nine studies(Reference Sokol, Wirth and Manczuk20,Reference Ren, Zhao and Wang21,Reference Naja, Shivappa and Nasreddine27,Reference Moslehi, Ehsani and Mirmiran51,Reference Alkerwi, Shivappa and Crichton52,Reference Nikniaz, Nikniaz and Shivappa54,Reference Kim, Lee and Kim55,Reference Abdurahman, Azadbakhat and Rasouli56,Reference Wirth, Burch and Shivappa61) . The forest plot of the mentioned association is presented in Fig. 4. Accordingly, no significant association was observed between hyperglycaemia and DII in the random-effects model (OR = 1·13; 95 % CI 0·95, 1·35; P = 0·17). A high heterogeneity was observed (heterogeneity χ 2 = 25·47, df = 10, P = 0·005; I 2 = 60·7 %; estimate of between-study variance τ 2 = 0·0463). A subgroup analysis was performed to obtain the source of heterogeneity (see online supplementary material, Supplemental Table S2). Accordingly, none of the studied parameters explained the possible sources of heterogeneity. In sensitivity analysis, when we removed the study by Sokol et al. in women(Reference Sokol, Wirth and Manczuk20), the effect size reached a significant level and the heterogeneity reduced (OR = 1·180; 95 % CI 0·997, 1·395; P = 0·054; I 2 = 49·4 %).

Fig. 4 Forest plot illustrating OR for hyperglycaemia in the highest v. the lowest category of dietary inflammatory index. The study-specific OR and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled OR, and the width of the open diamond represents the pooled 95 % CI

Findings from meta-analysis of mean systolic and diastolic blood pressure across different dietary inflammatory index categories

In the comparison of SBP values in different classifications of DII, totally twelve studies were included(Reference Phillips, Shivappa and Hébert22,Reference Park, Choi and Lee26,Reference Mazidi, Shivappa and Wirth43,Reference Bodén, Wennberg and Van Guelpen46,Reference Neufcourt, Assmann and Fezeu49,Reference Shivappa, Bonaccio and Hebert50,Reference Alkerwi, Shivappa and Crichton52,Reference Nikniaz, Nikniaz and Shivappa54,Reference Abdurahman, Azadbakhat and Rasouli56,Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez58,Reference Wirth, Burch and Shivappa61,Reference Mazidi, Shivappa and Wirth63) . The forest plot is presented in Fig. 5. Accordingly, being in the highest category of DII was accompanied with a 1·2 mmHg significant increase in SBP (WMD = 1·230; 95 % CI 0·283, 2·177; P = 0·011), although a great heterogeneity was observed between included studies (heterogeneity χ 2 = 165·10, df = 14, P < 0·001; I 2 = 91·5 %; estimate of between-study variance τ 2 = 2·4277). Sensitivity analysis showed no significant change in the findings. In subgroup analysis (see online supplementary material, Supplemental Table S3), partly gender-specified results could explain the source of heterogeneity. Other parameters were not considered a source of heterogeneity. The forest plot of the comparison of DBP in different DII categories is presented in Fig. 6 including ten studies(Reference Phillips, Shivappa and Hébert22,Reference Park, Choi and Lee26,Reference Mazidi, Shivappa and Wirth43,Reference Neufcourt, Assmann and Fezeu49,Reference Shivappa, Bonaccio and Hebert50,Reference Alkerwi, Shivappa and Crichton52,Reference Nikniaz, Nikniaz and Shivappa54,Reference Abdurahman, Azadbakhat and Rasouli56,Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez58,Reference Mazidi, Shivappa and Wirth63) . No significant difference in the DBP values in DII categories was identified (WMD = 0·008; 95 % CI −0·686, 0·703; P = 0·98). Although a great heterogeneity was observed between included studies (heterogeneity χ 2 = 132·19, df = 11, P < 0·001; I 2 = 91·7 %; estimate of between-study variance τ 2 = 1·0409), the results of subgroup analysis showed that dietary assessment tool and design of the study could partly explain the source of heterogeneity (Supplemental Table S4).

Fig. 5 Forest plot illustrating the weighted mean difference (WMD) in systolic blood pressure among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Fig. 6 Forest plot illustrating the weighted mean difference (WMD) in diastolic blood pressure among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond represents the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Findings from meta-analysis of mean fasting blood sugar and glycated Hb across different dietary inflammatory index categories

Totally, thirteen studies(Reference Phillips, Shivappa and Hébert22,Reference Park, Choi and Lee26,Reference Mirmajidi, Izadi and Saghafi-Asl28,Reference Mazidi, Shivappa and Wirth43,Reference Neufcourt, Assmann and Fezeu49Reference Alkerwi, Shivappa and Crichton52,Reference Nikniaz, Nikniaz and Shivappa54,Reference Abdurahman, Azadbakhat and Rasouli56,Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez58,Reference Denova-Gutiérrez, Muñoz-Aguirre and Shivappa60,Reference Mazidi, Shivappa and Wirth63) were included in the meta-analysis of the comparison of FBS between different DII categories (Fig. 7). The highest DII category was associated with a 1·08 mg increase in serum or plasma FBS in comparison to the lowest DII category (WMD = 1·083; 95 % CI 0·099, 2·068; P = 0·031). A great heterogeneity was also identified in the included studies (heterogeneity χ 2 = 127·17, df = 14, P < 0·001; I 2 = 89·0 %; estimate of between-study variance τ 2 = 2·32). By subgrouping (see online supplementary material, Supplemental Table S5), dietary assessment tool could partly explain the heterogeneity of studies. In meta-analysis of the association between HbA1c and DII, only three studies were eligible to be included(Reference Mazidi, Shivappa and Wirth43,Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez58,Reference Denova-Gutiérrez, Muñoz-Aguirre and Shivappa60) and the results showed a 0·62 % increase in HbA1c in the highest v. the lowest DII category (WMD = 0·615; 95 % CI 0·268, 0·961; P = 0·001; Fig. 8) with a great heterogeneity (heterogeneity χ 2 = 15·89, df = 2, P < 0·001; I 2 = 87·4 %; estimate of between-study variance τ 2 = 0·0803).

Fig. 7 Forest plot illustrating weighted mean difference (WMD) in fasting blood sugar among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Fig. 8 Forest plot illustrating the weighted mean difference (WMD) in glycated Hb among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Findings from meta-analysis of mean insulin and homeostatic model assessment of insulin resistance across different dietary inflammatory index categories

The meta-analysis of the studies included in the model of insulin comparison between different DII categories(Reference Phillips, Shivappa and Hébert22,Reference Mirmajidi, Izadi and Saghafi-Asl28,Reference Mazidi, Shivappa and Wirth43,Reference Moslehi, Ehsani and Mirmiran51,Reference Alkerwi, Shivappa and Crichton52,Reference Wirth, Burch and Shivappa61) is presented in Fig. 9, revealing a 0·83 µIU/ml increase in insulin concentration in the highest v. lowest DII group (WMD = 0·829; 95 % CI 0·172, 1·486; P = 0·013) while a great between-study heterogeneity was also observed (heterogeneity χ 2 = 37·02, df = 5, P < 0·001; I 2 = 86·5 %; estimate of between-study variance τ 2 = 0·4540). In subgroup analysis (see online supplementary material, Supplemental Table S6), all of the studies were cross-sectional, used FFQ as dietary assessment tool, evaluated both genders and participants were from the general population; therefore, they were placed into subgroups according to continent and sample size, and both parameters could be considered as the sources of heterogeneity according to the findings. The meta-analysis of the eligible studies(Reference Phillips, Shivappa and Hébert22,Reference Park, Choi and Lee26,Reference Mirmajidi, Izadi and Saghafi-Asl28,Reference Mazidi, Shivappa and Wirth43,Reference Moslehi, Ehsani and Mirmiran51,Reference Alkerwi, Vernier and Crichton59) showed that being in the highest DII category increased HOMA-IR value by 0·19 (WMD = 0·192; 95 % CI 0·023, 0·361; P = 0·026; Fig. 10). Again, a great heterogeneity was observed (heterogeneity χ 2 = 89·51, df = 6, P < 0·001; I 2 = 93·3 %; estimate of between-study variance τ 2 = 0·0429). Subgrouping (Supplemental Table S7) also could not explain the heterogeneity, except for continent, which reduced the heterogeneity.

Fig. 9 Forest plot illustrating the weighted mean difference (WMD) in insulin among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Fig. 10 Forest plot illustrating the weighted mean difference (WMD) in homeostatic model assessment of insulin resistance among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Publication bias

The funnel plots revealed moderate asymmetry (see online supplementary material, Supplemental Figs S1S8). However, the Begg’s and Egger’s tests provided no evidence of substantial publication bias for all of the variables, as follows: HTN (OR), Egger’s test (P = 0·123) and Begg’s test (P = 0·533); hyperglycaemia (OR), Egger’s test (P = 0·06) and Begg’s test (P = 0·161); SBP, Egger’s test (P = 0·293) and Begg’s test (P = 0·833); DBP, Egger’s test (P = 0·325) and Begg’s test (P = 0·493); FBS, Egger’s test (P = 0·671) and Begg’s test (P = 0·151); HOMA-IR, Egger’s test (P = 0·444) and Begg’s test (P = 0·881); insulin, Egger’s test (P = 0·508) and Begg’s test (P = 0·188); HbA1c, Egger’s test (P = 0·405) and Begg’s test (P = 0·117).

Discussion

In the current systematic review and meta-analysis of 194 959 participants from the general population, we found that the highest DII category was associated with higher SBP, FBS, insulin, HbA1c and HOMA-IR. Moreover, the chance of HTN occurrence was increased in the highest DII category v. the lowest. No association between DII and DBP and odds of hyperglycaemia was observed. The populations of included studies were general apparently healthy populations or overweight and obese individuals with no serious inflammation-related disease; the studies evaluating the association between DII and cancers, chronic kidney disease and multiple sclerosis were excluded. Moreover, the age range was more than 18 years, and studies among children and adolescents as well as pregnant women or gestational diabetes mellitus were not included in the current meta-analysis. No previous systematic review and meta-analysis is available evaluating the association between DII and blood pressure, HTN, hyperglycaemia and biomarkers of glucose homeostasis.

The heterogeneity of studies included in the current systematic review and meta-analysis should be discussed here. The Western dietary pattern, with high dietary inflammatory potential, is a potent inducer of central obesity and metabolic syndrome; several studies have revealed significant relationships between the Western dietary pattern and increased risk of metabolic syndrome, higher serum cholesterol, and increased waist circumference and BMI. Accordingly, the Western dietary pattern with high content of red meat, eggs and refined grains is associated with increased risk of obesity and increased levels of blood sugar, SBP and TAG, and reduced HDL-cholesterol(Reference Ambrosini, Huang and Mori64Reference Shang, Li and Liu66). As mentioned in the ‘Results’ section, gender, dietary assessment tool and continent could be a source of heterogeneity among observed associations. In the current meta-analysis, DII was calculated from self-reported data gathered by the 24 h recall method, 24 h record method or FFQ, which may be a potential source of bias. Moreover, differences in the items of the studies’ FFQ might be a source of heterogeneity (the FFQ used ranged from sixty-three to 168 items) and local foods in the FFQ could also affect the heterogeneity as described previously(Reference Mueller, Hobiger and Jungbauer67), although almost all of the included studies used a valid and reliable FFQ. FFQ cover a wide range of dietary ingredients and are more accurate than the 24 h recall method reflecting usual dietary intake in a short period of time; it has been confirmed that FFQ could be more helpful in evaluating diet–disease relationships(Reference Shim, Oh and Kim68). Another source of heterogeneity, the continent (i.e. study location), presents the possible role of geographical distribution and cultural factors influencing the association between DII and the studied parameters(Reference Slimani, Fahey and Welch69). In the current meta-analysis, the baseline characteristics of participants were also different and therefore subgrouping was performed according to obesity status; however, findings were more relevant and stronger among studies conducted among general populations as participants rather than obese individuals. This finding might be explained by the fact that obese individuals have greater under-reporting and tend to underestimate usual dietary intakes of total energy and sugar(Reference Heitmann and Lissner70,71) which might affect the results; for example, in the association of DII with DBP in which the WMD shows an inverse association between DII and DBP in obese individuals. The meta-analysis of proportions of HTN in different DII categories in the current study found higher prevalence of HTN in the lowest v. highest DII category, while in meta-analysis of OR of HTN, the odds of HTN were highest in the highest DII category. This inconsistency in finding might be due to the fact that most of the studies reporting the prevalence of HTN and included in the current meta-analysis were baseline self-reported information about HTN without blood pressure measurement(Reference Farhangi and Najafi11,Reference Shivappa, Steck and Hussey45,Reference Ramallal, Toledo and Martínez-González47,Reference Nikniaz, Nikniaz and Shivappa54,Reference Hayden, Beavers and Steck57,Reference Mazidi, Shivappa and Wirth63) , which might be a source of error.

Conclusion

In conclusion, in the current study, after a systematic extensive literature review, we carried out several meta-analyses to summarize the findings of eligible studies about the possible relationship between DII and cardiometabolic risk factors. We found a positive association between DII and SBP, FBS, HTN, insulin, HbA1c and HOMA-IR values. Previously conducted meta-analyses evaluated the association between DII and the risk of CVD and mortality(Reference Namazi, Larijani and Azadbakht35,Reference Ruiz-Canela, Bes-Rastrollo and Martínez-González72) , and our study was the first one evaluating the association of DII with each of the cardiovascular risk factors separately in an independent meta-analysis model.

According to our findings, diets with less inflammatory potential – containing higher amounts of fruits, vegetables, fish or fish oil, walnuts, brown rice and bulgur wheat, and with avoidance of red meat, refined or processed foods and high-fat dairy products – are recommended for prevention of cardiovascular events.

Acknowledgements

Financial support: This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. Conflict of interest: The authors declare that there is no conflict of interest. Authorship: M.A.F. was the main researcher, designed the hypothesis, extracted the data, wrote the manuscript, revised the manuscript and supervised the project. L.N. and Z.N. were involved in data extraction, data analysis and manuscript reading. P.D. was involved in manuscript writing. All authors have read and approved the manuscript. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki and the protocol of the study has been approved by the ethics committee of the Tabriz University of Medical Sciences.

Supplementary material

To view supplementary material for this article, please visit https://doi.org/10.1017/S1368980019003070

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Figure 0

Table 1 PICO criteria used for the current systematic review

Figure 1

Fig. 1 Flow diagram of the study screening and selection process for the current systematic review and meta-analysis (DII, dietary inflammatory index; HTN, hypertension; SBP, systolic blood pressure; DBP, diastolic blood pressure; FBS, fasting blood sugar; HbA1c, glycated Hb; HOMA-IR, homeostatic model assessment of insulin resistance)

Figure 2

Table 2 Characteristics of studies included in the current systematic review owing to reporting the association between dietary inflammatory index (DII) and central obesity

Figure 3

Fig. 2 Forest plot illustrating OR for hypertension in the highest v. the lowest category of dietary inflammatory index. The study-specific OR and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled OR, and the width of the open diamond represents the pooled 95 % CI

Figure 4

Fig. 3 Forest plot illustrating proportion of hypertension in the highest and the lowest categories of dietary inflammatory index (DII). The study-specific effect size (ES) and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled ES, and the width of the open diamond represents the pooled 95 % CI

Figure 5

Fig. 4 Forest plot illustrating OR for hyperglycaemia in the highest v. the lowest category of dietary inflammatory index. The study-specific OR and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled OR, and the width of the open diamond represents the pooled 95 % CI

Figure 6

Fig. 5 Forest plot illustrating the weighted mean difference (WMD) in systolic blood pressure among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Figure 7

Fig. 6 Forest plot illustrating the weighted mean difference (WMD) in diastolic blood pressure among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond represents the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Figure 8

Fig. 7 Forest plot illustrating weighted mean difference (WMD) in fasting blood sugar among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Figure 9

Fig. 8 Forest plot illustrating the weighted mean difference (WMD) in glycated Hb among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Figure 10

Fig. 9 Forest plot illustrating the weighted mean difference (WMD) in insulin among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

Figure 11

Fig. 10 Forest plot illustrating the weighted mean difference (WMD) in homeostatic model assessment of insulin resistance among participants in the highest v. the lowest category of dietary inflammatory index. The study-specific WMD and 95 % CI are represented by the square and horizontal line, respectively; the area of the grey square is proportional to the specific-study weight to the overall meta-analysis. The centre of the open diamond and the vertical dashed line represent the pooled WMD, and the width of the open diamond represents the pooled 95 % CI

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