| Literature DB >> 31583990 |
Laura M Harms1, Augustin Scalbert2, Raul Zamora-Ros3, Sabina Rinaldi2, Mazda Jenab2, Neil Murphy2, David Achaintre2, Anne Tjønneland4,5, Anja Olsen4, Kim Overvad6,7, Francesca Romana Mancini8,9, Yahya Mahamat-Saleh8,9, Marie-Christine Boutron-Ruault8,9, Tilman Kühn10, Verena Katzke10, Antonia Trichopoulou11,12, Georgia Martimianaki11, Anna Karakatsani11,13, Domenico Palli14, Salvatore Panico15, Sabina Sieri16, Rosario Tumino17, Carlotta Sacerdote18, Bas Bueno-de-Mesquita19,20,21,22, Roel C H Vermeulen19,23,24, Elisabete Weiderpass2, Therese Haugdahl Nøst25, Cristina Lasheras26, Miguel Rodríguez-Barranco27,28, José María Huerta28,29, Aurelio Barricarte28,30,31, Miren Dorronsoro32, Johan Hultdin33, Julie A Schmidt34, Marc Gunter2, Elio Riboli19, Krasimira Aleksandrova1,35.
Abstract
Experimental studies have reported on the anti-inflammatory properties of polyphenols. However, results from epidemiological investigations have been inconsistent and especially studies using biomarkers for assessment of polyphenol intake have been scant. We aimed to characterise the association between plasma concentrations of thirty-five polyphenol compounds and low-grade systemic inflammation state as measured by high-sensitivity C-reactive protein (hsCRP). A cross-sectional data analysis was performed based on 315 participants in the European Prospective Investigation into Cancer and Nutrition cohort with available measurements of plasma polyphenols and hsCRP. In logistic regression analysis, the OR and 95 % CI of elevated serum hsCRP (>3 mg/l) were calculated within quartiles and per standard deviation higher level of plasma polyphenol concentrations. In a multivariable-adjusted model, the sum of plasma concentrations of all polyphenols measured (per standard deviation) was associated with 29 (95 % CI 50, 1) % lower odds of elevated hsCRP. In the class of flavonoids, daidzein was inversely associated with elevated hsCRP (OR 0·66, 95 % CI 0·46, 0·96). Among phenolic acids, statistically significant associations were observed for 3,5-dihydroxyphenylpropionic acid (OR 0·58, 95 % CI 0·39, 0·86), 3,4-dihydroxyphenylpropionic acid (OR 0·63, 95 % CI 0·46, 0·87), ferulic acid (OR 0·65, 95 % CI 0·44, 0·96) and caffeic acid (OR 0·69, 95 % CI 0·51, 0·93). The odds of elevated hsCRP were significantly reduced for hydroxytyrosol (OR 0·67, 95 % CI 0·48, 0·93). The present study showed that polyphenol biomarkers are associated with lower odds of elevated hsCRP. Whether diet rich in bioactive polyphenol compounds could be an effective strategy to prevent or modulate deleterious health effects of inflammation should be addressed by further well-powered longitudinal studies.Entities:
Keywords: C-reactive protein; Chronic diseases; Inflammation; Plasma measurements; Polyphenols
Mesh:
Substances:
Year: 2020 PMID: 31583990 PMCID: PMC7015881 DOI: 10.1017/S0007114519002538
Source DB: PubMed Journal: Br J Nutr ISSN: 0007-1145 Impact factor: 3.718
Serum high-sensitivity C-reactive protein (hsCRP) concentrations by participant characteristics (n 315)
(Numbers and percentages; medians and 25th and 75th percentiles)
| Serum hsCRP (mg/l) | ||||||
|---|---|---|---|---|---|---|
| Variable | % | Median | 25th percentile | 75th percentile | ||
| Sex | ||||||
| All | 315 | 100·0 | 2·15 | 1·06 | 4·05 | 0·001 |
| Male | 116 | 36·8 | 1·65 | 0·76 | 3·19 | |
| Female | 199 | 63·2 | 2·56 | 1·17 | 4·43 | |
| Age (years) | ||||||
| <40 | 5 | 1·6 | 2·33 | 1·73 | 2·81 | 0·21 |
| 40–49 | 41 | 13·0 | 1·65 | 0·56 | 2·61 | |
| 50–59 | 143 | 45·4 | 2·25 | 0·97 | 4·33 | |
| 60–69 | 120 | 45·4 | 2·15 | 1·14 | 4·27 | |
| ≥70 | 6 | 1·9 | 2·72 | 2·15 | 7·02 | |
| Highest school level | ||||||
| Not specified | 7 | 2·2 | 4·11 | 1·37 | 5·39 | 0·012 |
| None | 19 | 6·0 | 1·64 | 1·08 | 4·43 | |
| Primary school completed | 123 | 39·0 | 2·62 | 1·44 | 5·16 | |
| Technical/professional school | 69 | 21·9 | 1·77 | 0·76 | 3·17 | |
| Secondary school | 47 | 14·9 | 2·42 | 1·09 | 3·84 | |
| Longer education | 50 | 15·9 | 1·58 | 0·74 | 2·91 | |
| Diabetes mellitus | ||||||
| Not specified | 25 | 7·9 | 1·83 | 1·06 | 3·63 | 0·67 |
| No | 276 | 87·6 | 2·21 | 1·07 | 4·05 | |
| Yes | 14 | 4·4 | 2·47 | 0·88 | 6·49 | |
| CVD | ||||||
| Not specified | 39 | 12·4 | 2·69 | 1·09 | 5·16 | 0·028 |
| No | 178 | 56·5 | 1·91 | 0·85 | 3·69 | |
| Yes | 98 | 31·1 | 2·57 | 1·25 | 4·40 | |
| Smoking status | ||||||
| Not specified | 1 | 0·3 | 3·76 | 3·76 | 3·76 | 0·87 |
| Never | 150 | 47·6 | 2·15 | 0·97 | 3·85 | |
| Former | 96 | 30·5 | 1·98 | 1·10 | 4·08 | |
| Current | 68 | 21·6 | 2·24 | 1·14 | 4·07 | |
| Alcohol consumption (g/d) | ||||||
| Non-drinkers | 16 | 5·1 | 4·14 | 0·93 | 7·02 | 0·35 |
| ≤10 | 164 | 52·1 | 2·33 | 1·11 | 4·02 | |
| 10–40 | 112 | 35·6 | 1·87 | 0·91 | 3·81 | |
| >40 | 23 | 7·3 | 2·19 | 1·31 | 3·90 | |
| Physical activity | ||||||
| Not specified | 13 | 4·1 | 2·85 | 1·09 | 3·85 | 0·78 |
| Inactive | 31 | 9·8 | 1·62 | 0·97 | 3·90 | |
| Moderately inactive | 91 | 28·9 | 2·48 | 0·90 | 4·65 | |
| Moderately active | 148 | 47·1 | 2·17 | 1·12 | 3·79 | |
| Active | 32 | 10·2 | 1·89 | 0·81 | 4·41 | |
| BMI (kg/m2) | ||||||
| <20 | 6 | 1·9 | 1·26 | 0·47 | 3·99 | <0·001 |
| 20–24·9 | 112 | 35·6 | 1·77 | 0·66 | 2·90 | |
| 25–29·9 | 151 | 47·9 | 2·31 | 1·11 | 4·24 | |
| ≥30 | 46 | 14·6 | 3·14 | 1·83 | 5·65 | |
| Waist circumference (cm) | ||||||
| Men | ||||||
| <94 | 50 | 43·1 | 1·26 | 0·55 | 2·60 | 0·025 |
| ≥94 | 66 | 56·9 | 1·83 | 1·09 | 3·90 | |
| Women | ||||||
| <80 | 87 | 43·7 | 1·79 | 0·85 | 3·54 | <0·0001 |
| ≥80 | 112 | 56·3 | 3·17 | 1·81 | 4·72 | |
| Total energy intake (kJ/d) | ||||||
| Men | ||||||
| ≤10 460 | 72 | 62·1 | 1·83 | 0·83 | 3·69 | 0·43 |
| >10 460 | 44 | 37·9 | 1·52 | 0·76 | 2·63 | |
| Women | ||||||
| ≤8368 | 123 | 61·8 | 2·78 | 1·42 | 4·70 | 0·11 |
| >8368 | 76 | 38·2 | 2·13 | 1·04 | 4·21 | |
| Total dietary fibre (g/d) | ||||||
| ≤20 | 119 | 37·8 | 2·66 | 1·62 | 5·00 | <0·001 |
| 20–30 | 151 | 47·9 | 1·91 | 0·89 | 3·87 | |
| >30 | 45 | 14·3 | 1·50 | 0·73 | 2·56 | |
| Processed and red meat intake (g/d) | ||||||
| ≤50 | 80 | 25·4 | 1·90 | 1·21 | 3·13 | 0·17 |
| 50–150 | 210 | 66·7 | 2·39 | 1·01 | 4·72 | |
| >150 | 25 | 7·9 | 1·54 | 0·82 | 2·62 | |
| Fish and shellfish intake (g/d) | ||||||
| Non-consumers | 13 | 4·1 | 2·15 | 1·50 | 3·77 | 0·78 |
| ≤50 | 236 | 74·9 | 2·22 | 1·07 | 4·02 | |
| >50 | 66 | 21·0 | 1·96 | 1·02 | 4·05 | |
P values by Wilcoxon–Mann–Whitney test or Kruskal–Wallis test among subgroups for each variable.
High-sensitivity C-reactive protein (hsCRP) concentrations and estimated risk for elevated hsCRP (>3 mg/l) according to quartiles (Q) of polyphenol concentrations and per standard deviation increase
(Geometric mean values and 95 % confidence intervals; odds ratios and 95 % confidence intervals)
| Polyphenol subclasses | Quartiles of polyphenol concentrations | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Q1 ( | Q2 ( | Q3 ( | Q4 ( | Per | ||||||||
| Mean | 95 % CI | Mean | 95 % CI | Mean | 95 % CI | Mean | 95 % CI |
| OR | 95 % CI |
| |
| Combined polyphenols | ||||||||||||
| hsCRP (mg/l) | ||||||||||||
| Geometric mean | 2·34 | 1·76 | 2·15 | 1·80 | – | |||||||
| Model 1 | 2·32 | 1·81, 2·97 | 1·77 | 1·39, 2·27 | 1·99 | 1·58, 2·52 | 1·50 | 1·14, 1·97 | 0·12 | |||
| Model 2 | 2·23 | 1·70, 2·91 | 1·68 | 1·28, 2·20 | 1·75 | 1·34, 2·28 | 1·34 | 1·00, 1·79 | 0·069 | |||
| OR for hsCRP ≥3 mg/l3 | 1·00 | 1·16 | 0·52, 2·60 | 0·57 | 0·25, 1·29 | 0·42 | 0·16, 1·11 | 0·038 | 0·71 | 0·50, 0·99 | 0·045 | |
| Flavonoids | ||||||||||||
| hsCRP (mg/l) | ||||||||||||
| Geometric mean | 2·12 | 2·23 | 1·77 | 1·91 | – | |||||||
| Model 1 | 2·02 | 1·40, 2·89 | 2·10 | 1·63, 2·71 | 1·85 | 1·43, 2·39 | 1·62 | 1·23, 2·15 | 0·51 | |||
| Model 2 | 1·88 | 1·29, 2·73 | 1·99 | 1·52, 2·61 | 1·71 | 1·29, 2·25 | 1·41 | 1·04, 1·91 | 0·24 | |||
| OR for hsCRP ≥3 mg/l3 | 1·00 | 0·86 | 0·26, 2·87 | 0·74 | 0·22, 2·53 | 0·43 | 0·12, 1·59 | 0·10 | 0·71 | 0·44, 1·15 | 0·17 | |
| Phenolic acids | ||||||||||||
| hsCRP (mg/l) | ||||||||||||
| Geometric mean | 2·11 | 2·14 | 1·84 | 1·92 | – | |||||||
| Model 1 | 2·18 | 1·69, 2·81 | 2·10 | 1·65, 2·68 | 1·72 | 1·36, 2·17 | 1·65 | 1·27, 2·15 | 0·30 | |||
| Model 2 | 2·13 | 1·62, 2·79 | 1·91 | 1·47, 2·48 | 1·61 | 1·23, 2·09 | 1·40 | 1·06, 1·86 | 0·11 | |||
| OR for hsCRP ≥3 mg/l3 | 1·00 | 0·82 | 0·37, 1·85 | 0·63 | 0·28, 1·43 | 0·28 | 0·11, 0·72 | 0·008 | 0·74 | 0·54, 1·02 | 0·066 | |
| Lignans | ||||||||||||
| hsCRP (mg/l) | ||||||||||||
| Geometric mean | 2·59 | 1·92 | 1·99 | 1·61 | – | |||||||
| Model 1 | 2·70 | 2·12, 3·45 | 1·86 | 1·46, 2·36 | 1·82 | 1·45, 2·29 | 1·45 | 1·14, 1·84 | 0·003 | |||
| Model 2 | 2·34 | 1·80, 3·04 | 1·75 | 1·33, 2·29 | 1·63 | 1·26, 2·09 | 1·41 | 1·07, 1·84 | 0·028 | |||
| OR for hsCRP ≥3 mg/l3 | 1·00 | 0·53 | 0·24, 1·14 | 0·42 | 0·18, 0·95 | 0·34 | 0·15, 0·79 | 0·012 | 0·71 | 0·52, 0·98 | 0·034 | |
| Stilbenes (resveratrol only) | ||||||||||||
| hsCRP (mg/l) | ||||||||||||
| Geometric mean | 2·32 | 1·63 | 1·97 | 1·9 | – | |||||||
| Model 1 | 2·22 | 1·81, 2·72 | 1·46 | 1·09, 1·96 | 1·81 | 1·42, 2·31 | 1·78 | 1·38, 2·29 | 0·13 | |||
| Model 2 | 2·06 | 1·64, 2·60 | 1·35 | 0·99, 1·84 | 1·67 | 1·28, 2·19 | 1·61 | 1·20, 2·16 | 0·12 | |||
| OR for hsCRP ≥3 mg/l3 | 1·00 | 0·38 | 0·15, 0·94 | 0·86 | 0·41, 1·82 | 0·79 | 0·34, 1·83 | 0·95 | 1·07 | 0·78, 1·45 | 0·69 | |
| Tyrosols | ||||||||||||
| hsCRP (mg/l) | ||||||||||||
| Geometric mean | 1·89 | 2·27 | 2·07 | 1·8 | – | |||||||
| Model 1 | 1·92 | 1·50, 2·45 | 2·16 | 1·69, 2·76 | 1·84 | 1·44, 2·34 | 1·75 | 1·38, 2·22 | 0·63 | |||
| Model 2 | 1·81 | 1·39, 2·35 | 1·85 | 1·40, 2·43 | 1·76 | 1·34, 2·32 | 1·64 | 1·27, 2·13 | 0·90 | |||
| OR for hsCRP ≥3 mg/l3 | 1·00 | 1·03 | 0·48, 2·25 | 0·80 | 0·36, 1·80 | 0·58 | 0·26, 1·31 | 0·15 | 0·88 | 0·66, 1·17 | 0·38 | |
Values are geometric means (n 315).
Adjusted for age, sex, country and total energy intake
Adjusted for age, sex, country, diabetes, cardiovascular problems, education, smoking status, alcohol intake, red and processed meat consumption, total fibre consumption, fish and shellfish intake, total physical activity and BMI-adjusted waist circumference.
Fig. 1.Risk for high-sensitivity C-reactive protein ≥ 3 mg/l per standard deviation increase of polyphenol concentrations. Models were adjusted for age, sex, country, diabetes, cardiovascular problems, education, smoking status, alcohol intake, red and processed meat consumption, total fibre consumption, fish and shellfish intake, total physical activity and BMI-adjusted waist circumference. Values are adjusted odds ratios, with 95 % confidence intervals represented by horizontal bars.
Fig. 2.Odds ratios and 95 % confidence interval function for high-sensitivity C-reactive protein (hsCRP) ≥ 3 mg/l estimated by a restricted cubic spline function with three knots at the 10th, 50th and 90th percentile of concentrations of total polyphenols and polyphenol classes. Models were adjusted for age, sex, country, diabetes, cardiovascular problems, education, smoking status, alcohol intake, red and processed meat consumption, total fibre consumption, fish and shellfish intake, total physical activity and BMI-adjusted waist circumference. Nonlin., non-linear.
Potential dietary predictors* of combined polyphenol concentrations
(β-Coefficients and 95 % confidence intervals)
| Parameter |
| 95 % CI |
|
|---|---|---|---|
| Pasta-like cereal-based products (not 100 % cereal) | 63·2 | 9·5, 117·1 | 0·021 |
| Sauces (not specified) | 22·6 | 10·9, 34·3 | 0·0001 |
| Tomato sauces | 8·1 | −0·13, 16·3 | 0·053 |
| Kiwi | 2·8 | −0·01, 5·72 | 0·050 |
| Tea | 0·68 | 0·40, 0·96 | 0·001 |
| Coffee | 0·35 | 0·13, 0·57 | 0·002 |
The set of dietary predictors was determined based on linear least absolute shrinkage and selection operator regression model with initial number of variables for reported dietary intakes based on European Prospective Investigation into Cancer and Nutrition FFQ (n 212). Analysis was stratified by the study centre.
The foods within this grouped dietary intake variable include pasta-like cereal-based products such as quenelle, gnocchi and dumplings.
The foods within this grouped dietary intake variable include sauces for pasta, sauces for vegetables, soya sauce, pesto, green sauce, gravy, curry sauce and peanut sauce.