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Excess body iron and the risk of type 2 diabetes mellitus: a nested case–control in the PREDIMED (PREvention with MEDiterranean Diet) study

Published online by Cambridge University Press:  17 October 2014

Victoria Arija*
Affiliation:
Nutrition and Public Health Unit, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain Reus-Altebrat Primary Care, Institut d'Investigació en Atencio Primària (IDIAP) Jordi Gol, Reus, Spain Pere Virgili Health Research Institute, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain
José C. Fernández-Cao
Affiliation:
Nutrition and Public Health Unit, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain
Josep Basora
Affiliation:
Reus-Altebrat Primary Care, Institut d'Investigació en Atencio Primària (IDIAP) Jordi Gol, Reus, Spain Pere Virgili Health Research Institute, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain Human Nutrition Unit, Universitat Rovira i Virgili, Reus, Tarragona, Spain CIBERobn Physiopathology of Obesity and Nutrition, Instituto de Salud Carlos III, Madrid, Spain
Mònica Bulló
Affiliation:
Pere Virgili Health Research Institute, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain Human Nutrition Unit, Universitat Rovira i Virgili, Reus, Tarragona, Spain CIBERobn Physiopathology of Obesity and Nutrition, Instituto de Salud Carlos III, Madrid, Spain
Nuria Aranda
Affiliation:
Nutrition and Public Health Unit, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain Pere Virgili Health Research Institute, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain
Ramón Estruch
Affiliation:
CIBERobn Physiopathology of Obesity and Nutrition, Instituto de Salud Carlos III, Madrid, Spain Department of Internal Medicine, Hospital Clínic, Institut d'Investigació Biomèdica August Pi i Sunyer (IDIBAPS), University of Barcelona, Barcelona, Spain
Miguel A. Martínez-González
Affiliation:
CIBERobn Physiopathology of Obesity and Nutrition, Instituto de Salud Carlos III, Madrid, Spain Department of Preventive Medicine and Public Health, University of Navarra, Pamplona, Spain
Jordi Salas-Salvadó*
Affiliation:
Pere Virgili Health Research Institute, Universitat Rovira i Virgili, C/Sant Llorenç 21, 43201 Reus, Tarragona, Spain Human Nutrition Unit, Universitat Rovira i Virgili, Reus, Tarragona, Spain CIBERobn Physiopathology of Obesity and Nutrition, Instituto de Salud Carlos III, Madrid, Spain
*
*Corresponding authors: Dr V. Arija, fax +34 977 759322, email victoria.arija@urv.cat; Dr J. Salas-Salvadó, fax +34 977 759322, email jordi.salas@urv.cat
*Corresponding authors: Dr V. Arija, fax +34 977 759322, email victoria.arija@urv.cat; Dr J. Salas-Salvadó, fax +34 977 759322, email jordi.salas@urv.cat
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Abstract

A prospective nested case–control study within the PREvention with MEDiterranean Diet (PREDIMED) was conducted to evaluate the relationship between excess body Fe (measured as serum ferritin (SF), soluble transferrin receptor (sTfR) and sTfR:ferritin ratio) and the risk of type 2 diabetes mellitus (T2DM) in a Mediterranean population at a high risk of CVD, without T2DM at the start of the study. The study contained 459 subjects, 153 with incident T2DM (cases) and 306 without incident T2DM (controls). The follow-up period was for 6·0 (interquartile range 3·9–6·5) years. For each incident diabetic subject, two subjects were selected as controls who were matched broadly for age as well as for sex, intervention group and BMI. We observed a relationship between SF values >257 μg/l in males and >139 μg/l in females and the risk of T2DM, following adjustment in the conditional logistic regression model for high-sensitivity C-reactive protein, fasting glucose and other components of the metabolic syndrome (OR 3·62, 95 % CI 1·32, 19·95; P= 0·022). We also found an association between low sTfR:ferritin ratio levels and the incidence of T2DM (OR 3·02, 95 % CI 1·09, 8·39; P= 0·042), but no association with sTfR (OR 1·29, 95 % CI 0·51, 3·23; P= 0·722). Oxidative stress has been hypothesised to contribute to the development of insulin resistance and β-cell dysfunction, the two key events in the clinical development of T2DM. Following adjustment for other risk factors for T2DM, excess body Fe (measured as SF and sTfR:ferritin ratio) was associated with an increased risk of developing T2DM in a Mediterranean population at a high risk of CVD.

Type
Full Papers
Copyright
Copyright © The Authors 2014 

The worldwide prevalence of diabetes in adults was estimated as 6·4 % in 2010, and has been forecast to increase to 7·7 % by 2030( Reference Shaw, Sicree and Zimmet 1 ). Recently, excess body Fe has been shown to be a risk factor for type 2 diabetes mellitus (T2DM)( Reference Montonen, Boeing and Steffen 2 ).

Serum ferritin (SF) is the most widely used biomarker of body Fe stores in epidemiological studies, despite being shown to be affected by inflammation status. Conversely, soluble transferrin receptor (sTfR) is not altered by inflammatory processes( Reference Désidéri-Vaillant, Galinat and Sapin-Lory 3 ), and their levels in blood are proportional to the cell requirements for Fe( Reference Speeckaert, Speeckaert and Delanghe 4 ).

Several prospective studies( Reference Montonen, Boeing and Steffen 2 , Reference Jehn, Guallar and Clark 5 Reference Le, Bae and Ed Hsu 14 ) have identified excess Fe as a risk factor for T2DM. Oxidative stress could be the mechanism by which excess Fe is associated with a higher incidence of T2DM. Oxidative stress would mediate in the pathophysiology of several key events related to the onset of T2DM, such as insulin resistance (IR) and β-cell dysfunction( Reference Swaminathan, Fonseca and Alam 15 ). Most of these studies( Reference Montonen, Boeing and Steffen 2 , Reference Jehn, Guallar and Clark 5 Reference Guo, Zhou and An 12 ) used SF as a biomarker to estimate body Fe levels. However, in assessing the relationships between SF and the risk of T2DM, few studies had adjusted for fasting glucose levels( Reference Salomaa, Havulinna and Saarela 8 ) and other components of the metabolic syndrome (MetS)( Reference Jehn, Guallar and Clark 5 ), which are the parameters with a high predictive capacity for T2DM( Reference Buijsse, Simmons and Griffin 16 ). As such, it is still not clear whether the relationship between SF levels and the risk of T2DM is independent of these risk factors.

Few prospective studies evaluating the association between excess body Fe and the risk of T2DM have used sTfR as a biomarker( Reference Montonen, Boeing and Steffen 2 , Reference Rajpathak, Wylie-Rosett and Gunter 7 , Reference Aregbesola, Voutilainen and Virtanen 11 ), and despite having found that elevated SF levels increased the risk of T2DM, the relationship between sTfR and T2DM was not clear. Thus, while the Potsdam European Prospective Investigation into Cancer and Nutrition (EPIC) cohort study did not observe any association( Reference Montonen, Boeing and Steffen 2 ), the Diabetes Prevention Program (DPP) cohort study( Reference Rajpathak, Wylie-Rosett and Gunter 7 ) observed that high levels of sTfR increased the risk of T2DM. Also, the recent Kuopio IHD Risk Factor (KIHD) study observed a U-shaped association( Reference Aregbesola, Voutilainen and Virtanen 11 ).

To date, no studies have been conducted in southern Europe exploring the relationship between excess Fe and the risk of T2DM. Of note is that some characteristics of Fe metabolism, such as genetic predisposition and/or dietary intake in southern Europe, are quite different from the populations studied earlier, such as those in the USA( Reference Rajpathak, Wylie-Rosett and Gunter 7 ), China( Reference Sun, Zong and Pan 10 ) and northern Europe( Reference Montonen, Boeing and Steffen 2 ). For example, while in northern Europe, the prevalence of the C282Y polymorphism in the haemochromatosis (HFE) gene is 5–10 % and that of the H63D polymorphism is 10–20 %, in southern Europe, the prevalence is 1–5 % and >20 %, respectively( Reference Kucinskas, Juzenas and Sventoraityte 17 ). In Spain, the prevalence of the H63D mutation reaches 46 % in certain regions( Reference Aranda, Viteri and Fernández-Ballart 18 ). Furthermore, the consumption of food items of animal origin is greater in northern compared with southern Europe( 19 ).

To test the hypothesis that high body Fe stores increase the risk of T2DM in our geographical area, we measured excess body Fe (as SF, sTfR and sTfR:ferritin ratio) in relation to the risk of T2DM in a Mediterranean population at a high risk of CVD, without T2DM at the start of the prospective study.

Experimental methods

Study design

This is a case–control study nested in the PREDIMED (PREvention with MEDiterranean Diet) cohort, followed-up for a median of 6·0 (interquartile range 3·9–6·5) years. The PREDIMED trial( Reference Martínez-González, Corella and Salas-Salvadó 20 ) was intended to test the effectiveness of the Mediterranean diet on the primary prevention of CVD. The comparisons were between two traditional Mediterranean diets (one enriched with extra virgin olive oil and the other with nuts) v. advice alone on a low-fat diet. The present study was registered at ClinicalTrials.gov (registration no. ISRCTN35739639; http://www.controlledtrials.com/ISRCTN35739639).

The present study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving human subjects were approved by the Clinical Research Ethics Committee of the Hospital Sant Joan de Reus. Written informed consent was obtained from all subjects.

Subjects

The present study was conducted with 459 Caucasian subjects aged 55–80 years, free of T2DM at baseline, and with three or more CVD risk factors; 153 were incident T2DM (cases) and 306 non-incident (control) individuals. The study population was recruited in the Primary Care Centres of Reus, Barcelona and Pamplona. For every incident diabetic individual identified, two subjects were randomly selected as controls matched for age ( ≤ 67 v. >67 years), sex, intervention group and BMI ( ≤ 27 v. >27 kg/m2), using an incidence density sampling procedure.

Ascertainment of incident type 2 diabetes mellitus

The 153 cases of incident T2DM were diagnosed during the follow-up, according to the American Diabetes Association criteria( 21 ), i.e. fasting plasma glucose concentration ≥ 7·0 mmol/l or plasma glucose concentration ≥ 11·1 mmol/l measured 2 h after a 75 g oral glucose load. A routine glucose test was performed on all participants in the PREDIMED study at least once a year to detect new cases of diabetes. When new-onset T2DM was identified by the physicians of Primary Care Centres, the test was repeated within the next 3 months to confirm the diagnosis. The homeostasis model assessment (HOMA) index was calculated for each individual as follows:

$$\begin{eqnarray} HOMA\hyphen IR = fasting\,insulin\,(U/l)\times fasting\,glucose\,(mmol/l)/22\cdot 5). \end{eqnarray}$$

Biochemical determination

All blood samples were collected after an overnight fast at the beginning of the study. Aliquots of serum and EDTA plasma were immediately processed, coded and shipped to a central laboratory in a portable cooler ( − 4°C), and stored at − 80°C until analysis. The time between blood sampling and freezing was less than 1 h. Serum levels of fasting glucose, total TAG, total and HDL-cholesterol were measured by standard enzymatic methods. LDL-cholesterol was calculated using the Friedewald equation. Fasting plasma insulin concentrations were measured in duplicate by ELISA (Ezhi-14K; Millipore). Plasma concentrations of high-sensitivity C-reactive protein (hs-CRP) were measured using a highly sensitive immunoassay (Helica Biosystems, Inc.). The assay has a sensitivity of 0·2 μg/l, with intra- and inter-assay CV of ≤ 3·7 and < 4·8 %, respectively. SF (Elecsys Ferritin; Roche Diagnostics) and sTfR (Access sTfR 0QC; Beckman Coulter) were measured by immunochemiluminescence. The assay has a sensitivity of 0·05 μg/l for ferritin, and intra- and inter-assay CV of ≤ 2 and < 3·5 %, respectively, for SF. The assay has a sensitivity of 0·05 nmol/l for sTfR, and intra- and inter-assay CV of ≤ 5 and ≤ 8 %, respectively (1 mg/l = 13·55 nmol/l of sTfR).

Other measures

At baseline and at each annual visit, a general questionnaire on sociodemographic and lifestyle characteristics was administered, and anthropometric variables were measured. Also, a semi-quantitative 137-item FFQ that had been previously validated( Reference Fernández-Ballart, Piñol and Zazpe 22 ) was applied. Nutrients and energy intake were quantified according to the Spanish food composition tables( Reference Mataix, Mataix and Manas 23 ). Leisure-time physical activity was assessed according to a validated questionnaire( Reference Elosua, Marrugat and Molina 24 ). Blood pressure was measured in triplicate using a calibrated semi-automatic oscillometer (Omron HEM-705CP; Omron Healthcare Europe BV)( Reference Redón and Coca 25 ).

Statistical methods

Variables showing a non-normality of distribution were log-transformed to normalise the distributions. Qualitative variables were compared using the χ2 test. Quantitative variables were compared using the Student's t test or the Mann–Whitney test. Data are presented as percentages, means or geometric means and standard deviations, and medians and interquartile ranges in the case of variables being non-normally distributed.

Partial correlation coefficients of SF, sTfR and the sTfR:ferritin ratio adjusted for sex, age and BMI, as well as for several T2DM risk factors such as MetS components, fasting insulin, HOMA-IR and hs-CRP were calculated in the overall study sample, controls and cases (Table 2). A multiple linear regression analysis was applied to evaluate the influence of SF on IR.

To analyse the relationship between body Fe levels and the incidence of T2DM, participants were categorised into quartiles according to the distributions of SF, sTfR and sTfR:ferritin ratio at baseline in control individuals. Given the documented differences between males and females with respect to body Fe stores, the independent variables were adjusted for sex. The adjusted variables were categorised to avoid any assumption of linearity, and to evaluate the dose–response relationship in the onset of T2DM. Several conditional logistic regression (CLR) models were applied. A crude model (without adjustment) was fitted with each independent variable. The model was re-fitted with adjustment for lifestyle variables including the following: marital status (married/not married); educational level (primary/secondary/tertiary); smoking (current smoker/former smoker/never smoked); alcohol consumption (drinker/non-drinker); physical activity (200 metabolic equivalents (MET)-min/d/ ≥ 200 MET-min/d); family history of T2DM (yes/no). Adjustment also included four diagnostic criteria of the MetS, according to the harmonised criteria proposed by International Diabetes Federation (IDF) and the American Heart Association/National Heart, Lung, and Blood Institute (AHA/NHLBI)( Reference Alberti, Eckel and Grundy 26 ), i.e. blood pressure ≥ 135/85 mmHg, serum TAG ≥ 1·7 mmol/l, HDL-cholesterol < 1·03 mmol/l in males and < 1·3 mmol/l in females, and waist circumference ≥ 102 cm in men and ≥ 88 cm in women. Dietary variables measured in relation to the risk of T2DM were categorised by quartiles, and included energy, Mg, vitamins D and E, dairy products, meat, vegetables and fruits( Reference Salas-Salvadó, Martinez-González and Bulló 27 ). Then, hs-CRP (mg/l) was introduced in model 1. Finally, fasting glucose concentration ≥ 5·6 mmol/l was introduced into the model. The test for linear trend across the quartiles was performed by assigning the median value to each category and introducing these new variables into the CLR as continuous variables.

The effects of SF and fasting glucose on the risk of T2DM were evaluated in another CLR model adjusted as ‘enter’ mode for all the variables included in model 1, except SF and fasting glucose, which were introduced as ‘conditional’ mode (CLR-conditional). We performed the same analysis for sTfR and the sTfR:ferritin ratio.

All data analyses were performed with the SPSS package for Windows (version 20.0; SPSS, Inc.). A value of P< 0·05 was considered statistically significant.

Results

Of the 459 subjects, two individuals were removed from the study for not having the values of SF and sTfR recorded, and another two for having extreme values of SF. The final analysis contained 455 individuals.

There were no significant interactions between SF, sTfR and the sTfR:ferritin ratio v. sex (P>0·05). These interactions were assessed in the same CLR models in which we studied the association between high SF, sTfR and the sTfR:ferritin ratio levels and the risk of T2DM.

Table 1 summarises the baseline characteristics of the overall group, as well as the case and control groups separately. Of the participants, 71 % had abdominal obesity, 42 % the MetS, 34 % hypertriacylglycerolaemia, 97 % hypertension and 25 % IR. Additionally, prevalences of the MetS and IR were higher in the cases than in the controls. Compared with the controls, patients with incident diabetes had greater waist circumference and higher levels of fasting glucose, insulin, TAG and IR. Also, SF levels were higher in the cases than in the controls, while sTfR levels were similar in both groups.

Table 1 Baseline characteristics of the overall study participants, and segregated by cases and controls (Mean values and standard deviations; medians and interquartile ranges (IQR))

HOMA-IR, homeostasis model assessment for insulin resistance; SF, serum ferritin; sTfR, soluble transferrin receptor; hs-CRP, high-sensitivity C-reactive protein; HTG, hypertriacylglycerolaemia; HT, hypertension.

* Geometric mean.

High waist circumference for men ≥ 102 cm and women ≥ 88 cm.

Low HDL-cholesterol for men ≤ 1·03 mmol/l and women ≤ 1·30 mmol/l.

§ HTG (TAG ≥ 1·70 mmol/l).

HT (blood pressure ≥ 135–85 mmHg).

High fasting glucose ( ≥ 5·6 mmol/l).

Table 2 summarises the partial correlation coefficients adjusted for sex, age and BMI between SF, sTfR and the sTfR:ferritin ratio together and several T2DM risk factors such as MetS components, fasting insulin, HOMA-IR and hs-CRP in the overall study sample, and in the controls as well as cases. SF and sTfR:ferritin ratio, but not sTfR levels, correlated significantly with fasting glucose, fasting insulin and HOMA-IR in the overall study sample. Furthermore, both biomarkers of body Fe stores significantly correlated with fasting insulin and HOMA-IR in non-incident diabetic individuals, and with SF alone in incident diabetic subjects. Conversely, SF was not correlated with hs-CRP, while sTfR was positively correlated with this biomarker of inflammation. SF and the sTfR:ferritin ratio were poorly correlated with the components of the MetS. Nevertheless, components such as blood pressure, TAG and HDL-cholesterol were significantly correlated with sTfR in the overall non-incident diabetic group.

Table 2 Partial correlation coefficients (adjusted for sex, age and BMI) between serum ferritin (SF), soluble transferrin receptor (sTfR) and sTfR:ferritin ratio and risk factors of type 2 diabetes in the overall study sample, and segregated by cases and controls

HOMA-IR, homeostasis model assessment for insulin resistance; hs-CRP, high-sensitivity C-reactive protein.

* P< 0·05.

To evaluate the association between the levels of SF and the risk of T2DM, several CLR models were applied (Table 3). The OR for the crude model (without adjustment for any variable) was 1·99 (95 % CI 1·12, 3·52; P= 0·022). Model 1 adjusted for lifestyle variables, family history of T2DM, and four components of the MetS showed an improvement in the trend (OR 2·39, 95 % CI 1·11, 5·16; P= 0·030). This trend did not substantially change when hs-CRP was included in the multivariable model (OR 2·38, 95 % CI 1·10, 5·14; P= 0·031). Finally, adjusting the model for fasting glucose showed an improvement in the trend (OR 3·62, 95 % CI 1·32, 9·95; P= 0·017).

Table 3 Risk of type 2 diabetes segregated by quartiles of serum ferritin (SF), soluble transferrin receptor (sTfR) and sTfR:ferritin ratio, and adjusted for sex (Odds ratios and 95 % confidence intervals)

Q, quartile; hs-CRP, high-sensitivity C-reactive protein.

* Crude: unadjusted.

Model 1: marital status (married/not married); educational level (low/medium/high); smoking status (current/former/never); physical activity ( < 200 metabolic equivalents (MET)-min/d or ≥ 200 MET-min/d); alcohol consumption (yes/no); family history of diabetes (yes/no); waist circumference (men < 102 or ≥ 102 cm, women < 88 or ≥ 88 cm); hypertension ( < 135, 85 or ≥ 135/85 mmHg); hypertriacylglycerolaemia ( < 1·70 or ≥ 1·70 mmol/l); HDL-cholesterol (men ≥ 1·03 or < 1·03 mmol/l, women ≥ 1·30 or < 1·30 mmol/l); diet (energy, dairy products, meat, vegetables, fruits, Mg, and vitamins D and E).

hs-CRP in mg/l.

§ Glucose < 5·6 or ≥ 5·6 mmol/l.

The same models were employed in evaluating the relationship between the sTfR:ferritin ratio and the risk of T2DM. In the crude model, low levels of the sTfR:ferritin ratio showed a significant trend towards increased incidence of T2DM (OR 1·73, 95 % CI 0·99, 3·05; P= 0·042). In model 1 the trend increased (OR 2·32, 95 % CI 1·08, 4·98; P= 0·035). The introduction of hs-CRP did not alter the relationship very much (OR 2·31, 95 % CI 1·08, 4·97; P= 0·036). Finally, following the inclusion of glucose as a potential confounding variable, the association increased considerably (OR 3·02, 95 % CI 1·09, 8·39; P= 0·42).

In contrast to SF and the sTfR:ferritin ratio, no significant association was observed between sTfR and T2DM after applying the same models. The corresponding multivariate OR for the lowest v. highest quartile of sTfR was 1·29 (95 % CI 0·51, 3·23; P= 0·722).

When we introduced SF and fasting glucose as ‘conditional’ mode (CLR-conditional), we observed that fasting glucose was the strongest predictor of diabetes (OR 20·07, 95 % CI 8·36, 48·20; P< 0·001) along with SF (OR 3·62, 95 % CI 1·32, 9·95; P< 0·017). In the model of sTfR, the OR of glucose was 16·58 (95 % CI 7·15, 38·41; P< 0·001) and of sTfR was 1·29 (95 % CI 0·51, 3·23; P< 0·722). Finally, in the sTfR:ferritin ratio model, the OR of glucose was 17·51 (95 % CI 7·50, 40·89; P< 0·001) and of the sTfR:ferritin ratio was 3·02 (95 % CI 1·09, 8·39; P< 0·042).

Discussion

In the present study, a direct relationship was demonstrated between high body Fe stores (measured as SF and sTfR:ferritin ratio) and the incidence of T2DM in a Mediterranean cohort with an elevated risk of CVD. This association was found after adjustment for hs-CRP, fasting glucose and other components of the MetS. These findings add data from population that is different from those previously studied, i.e. a southern European population. We did not observe any association between the levels of sTfR and the incidence of T2DM.

The prospective design of the study helps reduce temporality bias. Also, the study design enables a better control of confounding factors such as sex and ranges of age and BMI since each case in the incident T2DM group was broadly matched for these variables with two control individuals without T2DM.

SF and sTfR were measured using immunochemiluminescence, a widely used method with high sensitivity and specificity. The diagnosis of T2DM was according to the criteria of the reference organisation, i.e. the American Diabetes Association( 21 ). Of note is that, in the present study, not only was there an adjustment made for classical variables predictive of T2DM risk (such as age, family history of T2DM, smoking, dietary intake, waist circumference and inflammation), but also adjustment for fasting glucose and other components of the MetS since these components are strongly associated with the development of T2DM( Reference Zeng, Zhu and Zhang 28 ).

We need to highlight the limitation of extrapolating the results of the present study to the general population, given that the study was conducted in a population with various CVD risk factors. As occurs in cohort studies, there is no assurance that some of the control individuals would not develop T2DM subsequent to the follow-up period. However, the median period of follow-up of 6·0 (interquartile range 3·9–6·5) years is greater than that in the majority of studies conducted to date( Reference Montonen, Boeing and Steffen 2 , Reference Jehn, Guallar and Clark 5 Reference Rajpathak, Wylie-Rosett and Gunter 7 , Reference Sun, Zong and Pan 10 , Reference Salonen, Tuomainen and Nyyssönen 13 ).

SF, which closely reflects the estimation of body Fe levels, has been observed to be influenced by inflammation status. Hence, hs-CRP was measured in the present study. The objective was to adjust for this confounding variable when evaluating the effect of excess Fe in relation to T2DM.

Also, we assessed the relationship of another marker that measures Fe status, i.e. sTfR. sTfR in plasma is directly proportional to the cell requirements for Fe( Reference Speeckaert, Speeckaert and Delanghe 4 ). Hence, it is considered to represent a good biomarker in the evaluation of body Fe status( Reference Désidéri-Vaillant, Galinat and Sapin-Lory 3 ). However, some studies have suggested that sTfR levels are increased by other factors such as the degree of glucose tolerance or IR( Reference Fernández-Real, Moreno and López-Bermejo 29 ), hyperinsulinaemia( Reference Davis, Corvera and Czech 30 ), inflammation( Reference Kasvosve, Gomo and Nathoo 31 ), general obesity and/or abdominal obesity( Reference Tussing-Humphreys, Nemeth and Fantuzzi 32 ). Also, the sTfR:ferritin ratio appears to be a better marker of Fe stores( Reference Malope, MacPhail and Alberts 33 ). It is especially useful in population studies since it is sensitive not only to elevated, but also decreased, levels of Fe stores( Reference Skikne 34 ).

In the present results, we observed significantly higher levels of ferritin (127·59 (sd 2·53) v. 105·22 (sd 2·53) μg/l) and lower levels of sTfR:ferritin ratio (9·9 (sd 2·80) v. 12·03 (sd 2·80)) with borderline significance in subjects with incident diabetes compared with those with non-incident diabetes. However, we did not observe any difference in sTfR levels. When analysing the relationship using adjusted CLR models, we observed that the values of SF >257 μg/l in males and >139 μg/l in females were associated with a high risk of the appearance of T2DM. These values of SF are typical of Fe overload status, according to the WHO (>200 μg/l in males and >150 μg/l in females)( 35 ), and are similar to the values found in the studies of Norfolk( Reference Forouhi, Harding and Allison 6 ) and Potsdam( Reference Montonen, Boeing and Steffen 2 ) of the EPIC cohort and the Atherosclerosis Risk in Communities (ARIC) study( Reference Jehn, Guallar and Clark 5 ) conducted in the general population.

The associations encountered between SF and T2DM were maintained following the adjustment for classic risk factors including inflammation, fasting glucose and other components of the MetS. The MetS, and its components, have been strongly associated with the development of T2DM, especially with an elevated level of fasting glucose( Reference Zeng, Zhu and Zhang 28 ). Many prospective studies have adjusted their models using some of these classic risk factors, including inflammation( Reference Montonen, Boeing and Steffen 2 , Reference Jehn, Guallar and Clark 5 Reference Rajpathak, Wylie-Rosett and Gunter 7 , Reference Jiang, Manson and Meigs 9 Reference Aregbesola, Voutilainen and Virtanen 11 ). However, the associations, following the adjustment for fasting glucose and other components of the MetS, have not been observed previously. Only the ARIC study( Reference Jehn, Guallar and Clark 5 ), conducted with US males and females between 45 and 64 years of age, observed the association, and which was lost when adjusted for the components of the MetS. Another study, conducted with cohorts from the Finish FINRISK and Health 2000( Reference Salomaa, Havulinna and Saarela 8 ) studies composed of males and females >25 years of age, encountered increased SF levels related to the incidence of T2DM even following the adjustment for glucose, but not for the components of the MetS. In the present study, SF and fasting glucose entered the CLR-conditional model significantly, suggesting that the two variables are risk factors for T2DM. This is in concordance with the current consensus that glucose is the principal risk factor for T2DM, which can indicate that, apart from glucose, SF plays an aetiologic role in the development of this pathology. Another study performed in the general adult population have as well observed SF and glucose as the risk factors of T2DM( Reference Salomaa, Havulinna and Saarela 8 ).

As we have stated above, the sTfR:ferritin ratio seems to be a good biomarker of Fe deposits given that it is sensitive to elevated as well as decreased levels of Fe( Reference Skikne 34 ). However, it is possible that, since we did not find any association between sTfR and T2DM, the association encountered between the sTfR:ferritin ratio and T2DM could be due exclusively to SF concentrations. Further support for this hypothesis comes from the observation of a strong partial correlation (adjusted for sex, age and BMI) between SF and the sTfR:ferritin ratio, but not so strong a correlation between sTfR and the sTfR:ferritin ratio (Table 2).

The present results and those of previous studies( Reference Montonen, Boeing and Steffen 2 Reference Le, Bae and Ed Hsu 14 ) suggest that the observed association between ferritin and the sTfR:ferritin ratio v. T2DM was very probably due to the excess levels of Fe. Ferritin, in addition to reflecting body Fe status, increases with inflammation. We measured hs-CRP concentrations to control for this effect in the multivariate analyses of the relationship between excess Fe and the onset of T2DM. In the present results, we observed that hs-CRP levels were similar in incident and non-incident diabetic individuals, while SF was significantly higher in the incident diabetic group. This supports the hypothesis that excess Fe acts independently of the level of inflammation in the development of T2DM. Further support for this interpretation comes from previous studies that have analysed the relationship between ferritin and T2DM following adjustments for one( Reference Montonen, Boeing and Steffen 2 , Reference Rajpathak, Wylie-Rosett and Gunter 7 , Reference Jiang, Manson and Meigs 9 , Reference Sun, Zong and Pan 10 ) or more( Reference Forouhi, Harding and Allison 6 ) inflammatory markers showing similar findings to ours.

In the DPP( Reference Rajpathak, Wylie-Rosett and Gunter 7 ) cohort of obese subjects with impaired basal glucose, an association was found not only between SF and T2DM, but also between sTfR and T2DM. This latter relationship was contrary to expectation, i.e. increased levels of sTfR, indicative of low Fe stores, were associated with an increased risk of T2DM. More recently, the Finnish KIHD cohort( Reference Aregbesola, Voutilainen and Virtanen 11 ), conducted with middle-aged men, also observed that Fe deficiency and excess Fe (using sTfR as a biomarker) increased the risk of T2DM. A recent review has concluded that extreme conditions of Fe deficiency, as well as Fe overload, were associated with increased risk of CVD( Reference Lapice, Masulli and Vaccaro 36 ). As such, the hypothesis is that Fe deficiency could also cause an increase in the incidence of T2DM.

Of considerable note as well is that sTfR levels were much higher in those cohorts in whom an association was observed between sTfR and T2DM, e.g. DPP( Reference Rajpathak, Wylie-Rosett and Gunter 7 ) (median 4th quartile 4·4 mg/l; mean of the overall sample 3·4 mg/l) and KIHD( Reference Aregbesola, Voutilainen and Virtanen 11 ) (0·6–8·2 mg/l) studies compared with the present study (0·69–2·65 mg/l) and the EPIC Potsdam study( Reference Montonen, Boeing and Steffen 2 ) (mean of the overall sample 1·13 mg/l), albeit Fe stores measured by SF were similar in these four cohort studies. Also, sTfR levels have been documented to be affected by mechanisms other than those related to Fe metabolism (such as insulin sensitivity and obesity), and they could be causally linked to T2DM( Reference Speeckaert, Speeckaert and Delanghe 4 ). As such, not only lower Fe storage would lead to increased levels of sTfR, but also sTfR would be a biomarker of another factor causally related to the risk of T2DM.

The essential role of ferritin in the organism is in the storage of Fe. Fe is a catalyst for oxygen reactive species and, as such, contributes to oxidative stress( Reference Watt 37 ). A proposed underlying mechanism is that certain ‘trigger’ molecules associated with some pathologies could open up the structure of the ferritin molecule, thus provoking the liberation of the stored Fe( Reference Watt 37 ). This, in turn, could favour the risk associated with oxidative stress and its consequences. Experimental data and clinical studies have suggested that an oxidative environment contributes to the development of IR( Reference Rains and Jain 38 ) and β-cell dysfunction, which are two key events in the clinical development of T2DM( Reference Swaminathan, Fonseca and Alam 15 ). Also, the increase in oxidative stress provokes an increase in β-cell apoptosis in studies with animal models( Reference Bertelsen, Anggård and Carrier 39 ) and an increase in IR in human in vivo studies( Reference Cooksey, Jouihan and Ajioka 40 ). Similarly, evidence exists from cross-sectional studies( Reference Pham, Nanri and Yi 41 ) that elevated levels of SF are associated with increased IR. We observed this relationship in the present study (β = 0·001; P= 0·020), i.e. for each μg/l of SF, there was an increase of 0·001 in HOMA-IR. Also, ferritin was correlated with HOMA-IR in the overall study sample, as well as in incident and non-incident diabetic individuals. This suggests that this relationship with HOMA-IR could be occurring in the entire general population. The mechanisms that underlie this relationship have not been identified to date, although there has been speculation that the pro-oxidant role of Fe would activate a series of stress avenues related to the family of serine/threonine kinases and, finally, causing a disruption in the insulin signalling process( Reference Rains and Jain 38 ). It is possible then that IR is an intermediate link in the relationship between high Fe deposits and the risk of T2DM.

Conclusion

Excess body Fe (measured as SF and sTfR:ferritin ratio) is associated with an increased risk of T2DM in a Mediterranean population at a high risk of CVD, even following the adjustment for hs-CRP, fasting glucose and other components of the MetS. This association was not evident with sTfR.

The potential mechanism that mediates this relationship could be related to IR. More studies are warranted to confirm this mechanism since it is becoming increasingly evident that excess Fe is related to the incidence of T2DM.

Acknowledgements

The authors thank the participants for their enthusiastic collaboration, the PREDIMED personnel for excellent logistics assistance, and the personnel of all the affiliated Primary Care Centres of Reus-ICS. Also, we thank the FPU programme of Ministry of Education, Culture and Sports. Editorial assistance was provided by Dr Peter R. Turner (http://Tscimed.com).

The study was funded in part by the Spanish Ministry of Health (Instituto de Salud Carlos III; PI1001407, PI1301090, FIS PI10/0082, G03/140, RD06/0045), the FEDER (Fondo Europeo de Desarrollo Regional), the Public Health Division of the Department of Health of the Autonomous Government of Catalonia, and Caixa Tarragona (10-1343). The Fundación Patrimonio Comunal Olivarero and Hojiblanca SA (Málaga, Spain), California Walnut Commission (Sacramento, CA), Borges SA (Reus, Spain) and Morella Nuts SA (Reus, Spain) donated the olive oil, walnuts, almonds and hazelnuts, respectively, used in the PREDIMED study. None of the funding sources played any role in the design, collection, analysis or interpretation of the data or in the decision to submit the manuscript for publication. CIBER de Obesidad y Nutrición is a national initiative of the Instituto de Salud Carlos III. No funding body had any role in the design, analysis or writing of this article.

The authors’ responsibilities are as follows: V. A. took responsibility for designing the study, directing and performing the statistical analyses, interpreting the results, and drafting of the manuscript; J. C. F.-C. contributed to the statistical analyses, interpretation of the data, and the drafting of the manuscript; J. B. conceived and participated in the design of the PREDIMED study, coordinated the fieldwork, participated in the interpretation of the results, and revised the manuscript; M. B. contributed to the interpretation of the results and revised the manuscript; N. A. coordinated the biochemical analyses, contributed to the interpretation of the results, and revised the manuscript; R. E. and M. A. M.-G. conceived and participated in the design of the PREDIMED study and revised the manuscript; J. S.-S. conceived and participated in the design of the PREDIMED study, participated in the interpretation of the results, and revised the manuscript. All authors read and approved the final manuscript.

J. S.-S. is a non-paid member of the Scientific Advisory Board of the International Nut Council. The other authors have no conflict of interest affecting the conduct, or the reporting of, the work submitted.

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Figure 0

Table 1 Baseline characteristics of the overall study participants, and segregated by cases and controls (Mean values and standard deviations; medians and interquartile ranges (IQR))

Figure 1

Table 2 Partial correlation coefficients (adjusted for sex, age and BMI) between serum ferritin (SF), soluble transferrin receptor (sTfR) and sTfR:ferritin ratio and risk factors of type 2 diabetes in the overall study sample, and segregated by cases and controls

Figure 2

Table 3 Risk of type 2 diabetes segregated by quartiles of serum ferritin (SF), soluble transferrin receptor (sTfR) and sTfR:ferritin ratio, and adjusted for sex (Odds ratios and 95 % confidence intervals)