Literature DB >> 29951593

Relationships between the inflammatory potential of the diet, aging and anthropometric measurements in a cross-sectional study in Pakistan.

Iftikhar Alam1,2, Nitin Shivappa3,4, James R Hebert3,4, Graham Pawelec5,6, Anis Larbi7,8.   

Abstract

BACKGROUND: Little is known about associations between dietary inflammation, age and anthropometric measurements.
OBJECTIVE: In this regard, we examine how DII is related to age, anthropometrics [weight, Body mass index (BMI), waist to hip ratio (WHR)] and other parameters of nutrition (energy, protein, fats and cholesterol intake, Net Endogenous Acid Production (NEAP) and Phytochemical Index (PI)) in a cross-sectional study in Pakistan.
DESIGN: Only men (n = 651, age 54-95 years) participated in the study. Anthropometric data were collected using standard methods. DII was calculated from nutrients derived from 24-hr Dietary Recall questionnaires. NEAP and PI were calculated by established algorithms using information on nutrient intake.
RESULTS: The results show that with increasing age, there was a significant increase in the DII score (p < 0.05). Similarly significant positive correlations were found between DII score and weight, BMI, WHR and % BF (p, for all trends < 0.05). DII score significantly positively correlated with the dietary factors studied i.e. energy, protein, and fats (p, for all trends < 0.0001) but non-significantly with cholesterol (p > 0.05). Similarly, a significant positive correlation with NEAP (p < 0.0001) was found, but negative with PI (p < 0.0001).
CONCLUSION: In conclusion, the present study shows direct positive correlations between the DII, age and indices of obesity, and thus supports the hypothesis that diet may have a role in the development of obesity through inflammatory modulation mechanisms in elderly.

Entities:  

Keywords:  Aging; anthropometrics; diet; dietary inflammatory index (DII); inflammation

Year:  2018        PMID: 29951593      PMCID: PMC6004925          DOI: 10.3233/NHA-180042

Source DB:  PubMed          Journal:  Nutr Healthy Aging


Introduction

Evidence linking diet with inflammation has been accumulating recently [1-7]. It is likely that a Western-style diet is associated with higher systemic levels of inflammatory cytokines [2], whereas the Mediterranean-style diet may be accompanied by lower levels of these factors [3, 4]. Similar influences have been recorded for some other dietary items and nutrients, such as fruits and vegetables, polyunsaturated fatty acids and vitamins [5-7]. Aging is also closely linked with raised systemic inflammatory markers and studies focusing on how to measure these in the context of dietary interventions are paramount [8]. Blood levels of the acute phase response factors C-reactive protein (CRP), interleukin-6 (IL-6), and tumor necrosis factor α (TNFα) tend to increase during aging in elderly people [9]. Chronically elevated acute phase proteins are risk indicators for high mortality in the National Health and Nutrition Examination Survey (NHANES III), those over 60 with elevated CRP > 0.30 mg/dl serum had 2.7-fold higher mortality than those below this threshold [10] and even in younger individuals in this study the tendency for those with higher levels of IL 6 to suffer earlier mortality over 10-year follow-up was already present [11]. Clinical biomarkers of inflammation are used to study the effect of dietary constituents on inflammation [8-12]. CRP is a common clinical biomarker of cardiac-related inflammation and general inflammation [13]. Other common clinical indicators of inflammation are a high erythrocyte sedimentation rate (ESR), a high white blood cell count, and a low albumin level. However, these tests are nonspecific, meaning an abnormal result might result from a condition not related to inflammation. Various cytokines and adhesion molecules are useful for research but are not commonly used clinically because they do not identify the source of inflammation [6, 14, 15]. A novel dietary inflammatory index (DII), to assess the overall diet quality with regard to inflammatory potential, has been developed [6], used and validated extensively in a number of studies [17-22]. The purpose of creating the DII was to provide a tool that could assess an individual’s diet on a continuum from maximally anti-inflammatory to maximally pro-inflammatory. The DII has been validated using CRP measurements in the Seasonal Variation in Blood Lipids Study (SEASONS), a longitudinal study of approximately 500 individuals followed with intensive dietary and physical activity monitoring for a year [16, 21]. We have integrated the DII in a cross-sectional study in Pakistan with the aim to understand how it related to age, anthropometrics and other parameters of nutrition such as energy, protein, fats and cholesterol intake, Net Endogenous Acid Production (NEAP) and Phytochemical Index (PI). This study shows novel data supporting the role of diet in the development of inflammation-related conditions (obesity and inflammaging).

Methods

Study Site, participants, and data collection

The study was conducted in Peshawar, Khyber Pakhtunkhwa Pakistan from 2009–2014. Participants in the current study included a cohort of elderly men (n = 651, age 54–95 years), who participated in our previous studies conducted for the assessment of anthropometrics, nutritional status, selected blood chemistry values, and immunological parameters [23]. For the recruitment of the subjects, city registration data were obtained from the local office of the National Database and Registration Authorities in Peshawar. Addresses of the elderly subjects, who fulfilled the age and health criteria for the study, were obtained from the lists provided by the National Database and Registration Authorities. Potential subjects expressing interest in participating in the study were first screened by obtaining a verbal medical history to rule out any health conditions or medication use that could significantly affect their dietary habits. Only otherwise medically healthy subjects with no evident disease or infection, and those who were not taking medication on a chronic basis, were included. The subjects were measured for their anthropometric characteristics. Weight and height were measured according to the standardized procedures, and body mass index (BMI) was calculated as weight/height2 according to the standard procedures (kg/m2) as previously reported [23]. Based on BMI, subjects were classified in either of the three groups i.e. obese (OB = BMI=>30), overweight (OW = BMI=25 – 29.9) and normal weight (NW = BMI=16.9 – 24.9). The dietary data were collected using 24-hour dietary recalls (24-HR) through face-to-face interviews as we previously reported [23]. Briefly, a well-structured and extensively validated questionnaire was used for 24-HR in face-to-face interviews. During these interview sessions, the subjects were asked to recall what they had eaten during the previous day starting from breakfast in the morning until their last meals at night before sleep. During the 24-HR interviews, the intake reported by the subject was verified by someone in the household to avoid over- or underestimation of dietary intake because the elderly might easily forget what they had eaten during the previous 24 hours. Household measures such as cups, bowls, and spoons were used to help estimate quantities of foods consumed. Quantities were recorded according to the amount of food consumed from a particular bowl (for instance, half of the small brown bowl). When interviewees gave answers like “I used a little or a lot of milk in tea,” they were asked to show this with the cup they used, and the cup volume was later measured to estimate the amount. Nutrient intakes were computed using an in-house nutrient calculator in Microsoft Office Excel 2003 (Microsoft Corporation, Redmond, WA). This calculator is based on data from the food composition tables forPakistan.

Estimation of DII, NEAP and PI

Dietary inflammatory index

The design and development of the DII has been described elsewhere [22]. Briefly, the DII is a scoring algorithm based on an extensive review of the literature published from 1950 to 2010, linking 1943 articles to a total of forty-five food parameters and including various macronutrients, micronutrients, flavonoids and food items. These dietary parameters were scored according to whether they increased ( ± 1), decreased (–1) or had no effect (0) on six inflammatory biomarkers (IL-1β, IL-4, IL-6, IL-10, TNF-α and C-reactive protein (CRP). An overall food parameter-specific inflammatory effect score was calculated and multiplied by a centered percentile value for each food. This percentile was calculated by first linking the dietary data from a study to the regionally representative world database intake, which was based on actual human consumption in eleven populations from different parts of the world that provided a robust estimate of a mean and standard deviation for each parameter. These values then become the multipliers to express an individual’s exposure, relative to the ‘standard global mean’ as a z-score. This was achieved by subtracting the ‘standard global mean’ from the amount reported, and dividing this value by the standard deviation. To minimize the effect of ‘right skewing’, this value was then converted to a centered percentile score. The centered percentile score for each food parameter for each individual was multiplied by the respective food parameter effect score that was derived from the literature review in order to obtain a food parameter-specific DII score for an individual. All of the food parameter-specific DII scores were then summed to create the overall DII score for every participant in the study. The greater the DII score, the more pro-inflammatory the diet, and more negative values represent more anti-inflammatory diets. The DII score could take on values ranging from 7.98 (maximally pro-inflammatory) to –8.87 (maximally anti-inflammatory).

Estimation of NEAP

For the estimation of dietary acid load, several algorithms have been developed [24] and also reported by ourselves. Briefly, Fassetto et al. (1998) calculated the estimated net endogenous acid production (NEAP) from the protein-potassium ratio of the diet [25]. Another algorithm developed by Remer et al. that estimates the diet-induced potential renal acid load (PRAL) [26]. In this study, both markers of diet-induced acid load were calculated. We in our previous study [15] have used both these methods. The method calculates the diet’s protein/potassium ratio expressed as g/mEq. The rationale and algorithm of this method have been described previously and the estimated NEAP could account for about 70% of the variation in renal net acid excretion [25]. We also performed additional analyses using the PRAL as a second marker for diet-induced acid load, and the PRAL was calculated using an algorithm described by Remer et al. [26, 27] NEAP of the subjects was estimated indirectly from the participants’ diets [24-26].

Estimation of PI

The dietary phytochemical index was calculated based on the modified method previously developed by McCarty (2004); [PI=(phytochemical-rich foods g/d/ total food intake g/d)×100] [27]. Foods included in the phytochemical-rich category were fruits and vegetables, legumes, whole grains, nuts, soy products, olives and olive oil, and additionally, tea, coffee and spices. Potatoes were not considered as vegetables because they are often consumed as a starch component rather than as vegetables. Natural fruit and vegetable juices as well as tomato sauces were included in the fruit and vegetable groups because these are also considered as rich sources of phytochemicals.

Statistical Analysis

Data analysis was performed using GraphPad Prism software Inc. (USA). Means (std) were calculated for all variables. The variables of interest were analyzed according to the tertiles of the DII score. The DII score was divided into tertiles for all analyses. We examined tertiles of the DII, instead of quartiles or quintiles, because our sample size was small in comparison with that of other studies using the DII. Comparisons of baseline characteristics of participants across tertiles of the DII were made by using one-factor ANOVA for continuous variables or chi-square tests for categorical variables, whichever was applicable. Pearson correlations were performed for the dietary inflammatory index and other variables using the scores as continuous variables. A p-value of < 0.05 was considered as statistically significant.

Results

A total of 651 old men participated in the study. The mean ( ± SD) age of the study participants was 69.02 ± 8.9 years. Based on their BMI values, 72.5% of participants were NW, while 21% and 7.0% were OW and OB respectively. The DII ranged from –1.432 to 3.208 with the median of –0.93 in the lowest tertile and 1.114 in the highest tertile. The other basic characteristics of the study participants are given in Table 1. As shown, anthropometrics (weight, BMI, WC.WHR. % BF), nutrients intake (energy, protein, fats, cholesterol), NEAP and PI of the participants were analyzed in tertiles according to their DII scores. Participants in the lowest tertile of DII score were significantly younger, more likely to be having significantly lower BMI, WC, WHR and % BF. Also, participants in the lowest tertile of DII score were significantly consuming lower energy, protein, fats and cholesterol. Moreover, participants with a higher DII score had higher NEAP but lower PI values than those in the lowest tertile.
Table 1

Baseline characteristics of the participants according to tertiles of the DII1 score

OverallT1T2T3 P 2
DII Score–1.432 – 3.208–1.432 – <0.37300.3730 – <1.4481.448 – <3.208<0.0001
Age (Yrs)69.02 ± 8.962.91 ± 11.83 67 ± 12.375.13 ± 16.4<0.0001
Weight (Kg)63.08 ± 13.256 ± 11.23 61.05 ± 9.469.05 ± 10.2<0.0001
BMI (Kg/m2)22.4 ± 3.419.8 ± 1.321.5 ± 1.624 ± 1.8<0.0001
WC (cm)79.81 ± 9.573.15 ± 6.979.67 ± 8.385.4 ± 7.4<0.0007
WHR0.95 ± 0.070.93 ± 0.100.97 ± 0.120.99 ± 0.11<0.0001
% BF26.2 ± 4.323.26 ± 3.825.61 ± 7.928.52 ± 6.8<0.0001
Energy (Kcal/day)1664 ± 3681459 ± 1781619 ± 1541773 ± 177<0.0001
Protein (g/day)43.8 ± 11.536.1 ± 5,8142.2 ± 6.4448.63 ± 3.99<0.0001
Fats (g/day)75.4 ± 21.460.68 ± 12.776.95 ± 11.991.05 ± 14.9<0.091
Cholesterol (mg/day)167.2 ± 85.5110 ± 23.1133 ± 43.1198.3 ± 39.9<0.0001
NEAP43.2 ± 9.537.55 ± 8.942.93 ± 9.849.24 ± 7.9<0.0001
PI23.9 ± 4.826.8 ± 5.3324.1 ± 6.1121.77 ± 4.12<0.0001

1Dietary Inflammatory Index. 2Chi-square test was used for categorical variables; ANOVA was used for continuous variables. 3Mean ± SD (all such values).

Baseline characteristics of the participants according to tertiles of the DII1 score 1Dietary Inflammatory Index. 2Chi-square test was used for categorical variables; ANOVA was used for continuous variables. 3Mean ± SD (all such values). Figure 1 shows the comparison of mean values of DII scores of Normal Weight (NW) and Overweight/Obese (OW/OB) individuals. As evident, the DII score of NW individuals was significantly lower (p = 0.0008) than that of the OW/OB individuals.
Fig.1

Comparison of DII Scores of Normal Weight (NW) (BMI < 23) and Over Weight/Obese (OW/OB) (BMI > 23).

Comparison of DII Scores of Normal Weight (NW) (BMI < 23) and Over Weight/Obese (OW/OB) (BMI > 23). Figures 2–4 demonstrate the relationship between DII score age, anthropometrics and other parameters of nutrition (energy, protein, fats and cholesterol intake, Net Endogenous Acid Production (NEAP) and Phytochemical Index (PI). As evident, with increasing age there was a significant increase in the DII score (p = 0.05) (Fig. 2 A). Similarly significant and positive correlation was observed with weight, BMI and % BF (p, for all trends < 0.05) (Fig. 2B, C, D, E, F). A weak but positive correlation (p = 0.037) existed between DII score and WHR. Figure 3 shows the correlation between DII score, and selected nutrients. As clear, significant and positive correlation was observed with NEAP (p < 0.0001) but negative with PI (p < 0.0001). Figure 4 shows the relationship between DII score and selected nutrients. As evident, DII was significantly positively correlated with nutrients studied i.e. energy, protein, and fats (p, for all trends < 0.0001) but non-significantly with cholesterol (p > 0.05).
Fig.2

Scatterplot for DII score Vs Age (A), Weight (B), BMI (C), WC (D), WHR €, and % BF (F).

Fig.4

Scatterplot of DII score vs. Energy Intake (A), Protein Intake (B), Fats Intake (C) and cholesterol intake (D).

Fig.3

Scatterplot of DII Score Vs NEAP (A) and PI (B).

Scatterplot for DII score Vs Age (A), Weight (B), BMI (C), WC (D), WHR €, and % BF (F). Scatterplot of DII Score Vs NEAP (A) and PI (B). Scatterplot of DII score vs. Energy Intake (A), Protein Intake (B), Fats Intake (C) and cholesterol intake (D).

Discussion

The findings of the study are particularly important for developing countries like Pakistan where obesity is more related to dietary factor. Therefore, there is a need of exploring all possible reasons and causes of diet induced obesity. The inflammatory potential of diet may be one of these causes. A diet seemingly balanced in terms of nutrient may be potentially inflammatory and hence may cause chronic inflammation (obesity). To the best of our knowledge, this is the first study in Pakistan to report relationship between diet-induced inflammation and age, BMI, NEAP and PI. Diet-induced inflammation is a serious health challenge. Knowledge on inflammatory factors in the diet is therefore important to consider when prescribing therapeutic diets or giving dietary advice in general. A novel dietary inflammatory index (DII) to assess the overall diet quality with regard to inflammation potential has been developed [21] and used and validated extensively in a number of studies [16, 19–22]. The DII has been validated using CRP measurements in the Seasonal Variation in Blood Lipids Study (SEASONS); a longitudinal study of approximately 500 individuals followed with intensive dietary and physical activity monitoring for a year [16, 21]. In the present study, a higher pro-inflammatory diet (i.e. higher DII score) was observed in the older participants and in those with a higher BMI, WC, and % BF. The highest tertile of the DII was associated with the corresponding highest tertiles of these variables. In the context of aging in particular, these results also suggest the hypothesis that beside many dietary factors [3-7], aging is also a contributing factor to diet-induced inflammation [8-11]. The underlying mechanism is still to be investigated, but it may simply be argued that old age is associated with more unhealthy and unbalanced diet [23], which may contribute to higher DII scores in aged population as shown in the current study. Aging in man is accompanied by changes which may impair food acquisition, digestion, and metabolism [23]. Many conditions such as disability, acute and chronic diseases may influence nutritional status in ageing patients [1]. There is convincing evidence of dietary changes with aging [1, 23], which may promote inflammation that might contribute to increasing or maintaining obesity, especially abdominal obesity, in a population that is mostly overweight or obese. We observed a steady decrease in DII score with increasing phytochemical index (PI). PI is a strong indicator of the presence of phytochemicals, which are bioactive non-nutrient plant chemicals found in high amount in fruits, vegetables, grains, nuts and legumes, may provide desirable health benefits and reduce the risk of major chronic diseases [27]. Phenolic compounds are ones of the important phytochemicals [28]. Research has demonstrated that these provide strong protection against inflammation, cardiovascular diseases, diabetes (type-II), oxidative stress and vascular dysfunction [28, 29]. Monitoring phytochemical intakes in a population-based study is usually not feasible due to huge expenses and hence usually laborious and virtually impractical. To overcome this difficulty, McCarty suggested a simple but applied method for the quantification of phytochemical intake in diet. The proposed tool is known as phytochemical index (PI). which is defined as: “the percent of dietary calories derived from foods rich in phytochemicals” [27]. In this method, calories derived from vegetables and fruits, legumes, nuts, whole grains, nuts, fruit/vegetable juices, seeds, soy products, wine, beer, and cider are counted in this index. According to PI, the vegan diet (excluding potato products, hard liquors and refined sugar) has the highest score of 100, whereas unhealthy dietary patterns such as Western diets always score below that [27]. Because it is not known whether the PI score is associated with a reduction in DII score, the present study also aimed to determine the correlation of PI score with DII score in Pakistani adults. The present study has certain limitations; the main one being the cross-sectional nature of our analyses. It is, therefore, unclear whether obese individuals are more likely to choose pro-inflammatory diets, or if pro-inflammatory diets contribute to promoting or maintaining obesity. Both weight reduction and an overall healthy dietary pattern have the capacity to reduce inflammatory markers. Thus, the association between the DII and obesity indices remains to be confirmed in prospective analyses. Another limitation is that anthropometric measures are surrogate markers of abdominal obesity. Waist circumference and WHR do not differentiate between visceral adipose tissue and subcutaneous abdominal adipose tissue. Therefore, we cannot determine whether the DII is more strongly associated with visceral, subcutaneous or both types of abdominal fat mass. Finally, the DII is limited by the existing knowledge of the inflammatory factors involved in obesity.

Conclusion

The present study shows direct positive correlations between the DII, age and indices of obesity and thus supports the hypothesis that diet may have a role in the development of obesity through inflammatory modulation mechanisms in elderly. Recent analyses have tested the relationship between nutrition and immune modulation and suggest the usefulness of some immune biomarkers [30]. For the purpose of the current study, DII as indicator of diet-induce inflammation. The development of DII included 6 inflammatory molecules to test the inflammatory profile of nutrients. The usefulness of these biomarkers should be further reviewed regarding (i) their correlation with clinical endpoint (ii) link to causal pathway (iii) biological sensitivity (iv) technical feasibility (v) robustness and others. A recent report [23] discussed the driving forces leading to low grade inflammation in elderly individuals. The gut-brain axis (including microbiota) and the effect of nutritional interventions (omega-3 fatty acid, probiotic, prebiotic, antioxidant and polyphenol) were the two areas requiring better understanding in order to identify ways to slow, control or reverse low grade inflammation. This could have a significant impact on the development of conditions in older adults and extend health span.

Disclosure statement

Dr. James R. Hébert owns the controlling interest in Connecting Health Innovations LLC (CHI), a company planning to license the right to his invention of the dietary inflammatory index (DII) from the University of South Carolina in order to develop computer and smart phone applications for patient counselling and dietary intervention in clinical settings. Dr. Nitin Shivappa is an employee of CHI. The subject matter of this paper will not have any direct bearing on that work, nor has that activity exerted any influence on this project. All the remaining authors disclose ‘no conflict of interest’.

Authors’ contribution

Iftikhar Alam, Graham Pawelec and Anis Larbi conceived the research, and designed the study. Iftikhar Alam collected the field data. Iftikhar Alam, Graham Pawelec and Anis Larbi did the statistical analysis of the data. Dietary inflammatory index (DII) scores were calculated by Nitin Shivappa and James R. Hebert. Iftikhar Alam drafted the manuscript and Graham Pawelec, Anis Larbi, Nitin Shivapp and James R. Hebert reviewed the manuscript.
  28 in total

Review 1.  What do we mean by the term "inflammation"? A contemporary basic science update for sports medicine.

Authors:  A Scott; K M Khan; C R Roberts; J L Cook; V Duronio
Journal:  Br J Sports Med       Date:  2004-06       Impact factor: 13.800

2.  Standardizing terminology for estimating the diet-dependent net acid load to the metabolic system.

Authors:  Lynda A Frassetto; Susan A Lanham-New; Helen M Macdonald; Thomas Remer; Anthony Sebastian; Katherine L Tucker; Frances A Tylavsky
Journal:  J Nutr       Date:  2007-06       Impact factor: 4.798

3.  Construct validation of the dietary inflammatory index among postmenopausal women.

Authors:  Fred K Tabung; Susan E Steck; Jiajia Zhang; Yunsheng Ma; Angela D Liese; Ilir Agalliu; Melanie Hingle; Lifang Hou; Thomas G Hurley; Li Jiao; Lisa W Martin; Amy E Millen; Hannah L Park; Milagros C Rosal; James M Shikany; Nitin Shivappa; Judith K Ockene; James R Hebert
Journal:  Ann Epidemiol       Date:  2015-03-19       Impact factor: 3.797

4.  Aging affects the proportions of T and B cells in a group of elderly men in a developing country--a pilot study from Pakistan.

Authors:  Iftikhar Alam; David Goldeck; Anis Larbi; Graham Pawelec
Journal:  Age (Dordr)       Date:  2012-07-19

Review 5.  Influence of nutrition on acid-base balance--metabolic aspects.

Authors:  T Remer
Journal:  Eur J Nutr       Date:  2001-10       Impact factor: 5.614

Review 6.  Health relevance of the modification of low grade inflammation in ageing (inflammageing) and the role of nutrition.

Authors:  Philip C Calder; Nabil Bosco; Raphaëlle Bourdet-Sicard; Lucile Capuron; Nathalie Delzenne; Joel Doré; Claudio Franceschi; Markus J Lehtinen; Tobias Recker; Stefano Salvioli; Francesco Visioli
Journal:  Ageing Res Rev       Date:  2017-09-09       Impact factor: 10.895

7.  Brief Report: Implementing a Mediterranean Diet Intervention into a RCT: Lessons Learned from a Non-Mediterranean Based Country.

Authors:  G Middleton; R Keegan; M F Smith; A Alkhatib; M Klonizakis
Journal:  J Nutr Health Aging       Date:  2015-12       Impact factor: 4.075

8.  Proposal for a dietary "phytochemical index".

Authors:  Mark F McCarty
Journal:  Med Hypotheses       Date:  2004       Impact factor: 1.538

9.  A population-based dietary inflammatory index predicts levels of C-reactive protein in the Seasonal Variation of Blood Cholesterol Study (SEASONS).

Authors:  Nitin Shivappa; Susan E Steck; Thomas G Hurley; James R Hussey; Yunsheng Ma; Ira S Ockene; Fred Tabung; James R Hébert
Journal:  Public Health Nutr       Date:  2013-10-10       Impact factor: 4.022

10.  Apple phytochemicals and their health benefits.

Authors:  Jeanelle Boyer; Rui Hai Liu
Journal:  Nutr J       Date:  2004-05-12       Impact factor: 3.271

View more
  7 in total

1.  Perspective: The Dietary Inflammatory Index (DII)-Lessons Learned, Improvements Made, and Future Directions.

Authors:  James R Hébert; Nitin Shivappa; Michael D Wirth; James R Hussey; Thomas G Hurley
Journal:  Adv Nutr       Date:  2019-03-01       Impact factor: 8.701

Review 2.  Contribution of RAGE axis activation to the association between metabolic syndrome and cancer.

Authors:  Ma Eugenia Garay-Sevilla; Armando Gomez-Ojeda; Ileana González; Claudia Luévano-Contreras; Armando Rojas
Journal:  Mol Cell Biochem       Date:  2021-01-04       Impact factor: 3.396

Review 3.  Association of dietary inflammatory potential with cardiometabolic risk factors and diseases: a systematic review and dose-response meta-analysis of observational studies.

Authors:  Zahra Aslani; Omid Sadeghi; Motahar Heidari-Beni; Hoda Zahedi; Fereshteh Baygi; Nitin Shivappa; James R Hébert; Sajjad Moradi; Gity Sotoudeh; Hamid Asayesh; Shirin Djalalinia; Mostafa Qorbani
Journal:  Diabetol Metab Syndr       Date:  2020-10-07       Impact factor: 3.320

Review 4.  Dietary Inflammatory Index and Non-Communicable Disease Risk: A Narrative Review.

Authors:  Catherine M Phillips; Ling-Wei Chen; Barbara Heude; Jonathan Y Bernard; Nicholas C Harvey; Liesbeth Duijts; Sara M Mensink-Bout; Kinga Polanska; Giulia Mancano; Matthew Suderman; Nitin Shivappa; James R Hébert
Journal:  Nutrients       Date:  2019-08-12       Impact factor: 5.717

5.  Recurrent circadian fasting (RCF) improves blood pressure, biomarkers of cardiometabolic risk and regulates inflammation in men.

Authors:  Iftikhar Alam; Rahmat Gul; Joni Chong; Crystal Tze Ying Tan; Hui Xian Chin; Glenn Wong; Radhouene Doggui; Anis Larbi
Journal:  J Transl Med       Date:  2019-08-19       Impact factor: 5.531

6.  A pro-inflammatory diet increases the likelihood of obesity and overweight in adolescent boys: a case-control study.

Authors:  Farhad Vahid; Fatemeh Bourbour; Maryam Gholamalizadeh; Nitin Shivappa; James R Hébert; Khatereh Babakhani; Alireza Mosavi Jarrahi; Samaneh Mirzaei Dahka; Saeid Doaei
Journal:  Diabetol Metab Syndr       Date:  2020-04-07       Impact factor: 3.320

7.  Intake of dietary advanced glycation end products influences inflammatory markers, immune phenotypes, and antiradical capacity of healthy elderly in a little-studied population.

Authors:  Ali Madi Almajwal; Iftikhar Alam; Mahmoud Abulmeaty; Suhail Razak; Graham Pawelec; Wajid Alam
Journal:  Food Sci Nutr       Date:  2020-01-10       Impact factor: 2.863

  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.