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Inflammatory potential of diet and risk of colorectal cancer: a case–control study from Italy

Published online by Cambridge University Press:  08 June 2015

Nitin Shivappa*
Affiliation:
Cancer Prevention and Control Program, University of South Carolina, 915 Greene Street, Columbia, SC29208, USA Department of Epidemiology and Biostatistics, Arnold School of Public Health, University of South Carolina, 915 Greene Street, Columbia, SC29208, USA
Antonella Zucchetto
Affiliation:
SOC di Epidemiologia e Biostatistica, Centro di Riferimento Oncologico, Aviano (PN), Italy Department of Clinical Sciences and Community Health, Università degli Studi di Milano, Milan, Italy
Maurizio Montella
Affiliation:
Department of Epidemiology, ‘Fondazione G. Pascale’, Istituto Nazionale Tumori, Naples, Italy
Diego Serraino
Affiliation:
SOC di Epidemiologia e Biostatistica, Centro di Riferimento Oncologico, Aviano (PN), Italy
Susan E. Steck
Affiliation:
Cancer Prevention and Control Program, University of South Carolina, 915 Greene Street, Columbia, SC29208, USA Department of Epidemiology and Biostatistics, Arnold School of Public Health, University of South Carolina, 915 Greene Street, Columbia, SC29208, USA
Carlo La Vecchia
Affiliation:
Department of Clinical Sciences and Community Health, Università degli Studi di Milano, Milan, Italy
James R. Hébert
Affiliation:
Cancer Prevention and Control Program, University of South Carolina, 915 Greene Street, Columbia, SC29208, USA Department of Epidemiology and Biostatistics, Arnold School of Public Health, University of South Carolina, 915 Greene Street, Columbia, SC29208, USA
*
*Corresponding author: Dr N. Shivappa, email shivappa@sc.edu
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Abstract

Diet and inflammation have been suggested to be important risk factors for colorectal cancer (CRC). In the present study, we examined the association between the dietary inflammatory index (DII) and the risk of CRC in a multi-centre case–control study conducted between 1992 and 1996 in Italy. The study included 1225 incident colon cancer cases, 728 incident rectal cancer cases and 4154 controls hospitalised for acute non-neoplastic diseases. The DII was computed based on dietary intake assessed using a validated seventy-eight-item FFQ that included assessment of alcohol intake. Logistic regression models were used to estimate the OR adjusted for age, sex, study centre, education, BMI, alcohol drinking, physical activity and family history of CRC. Energy intake was adjusted using the residual method. Subjects with higher DII scores (i.e. with a more pro-inflammatory diet) had a higher risk of CRC, with the DII being used both as a continuous variable (ORcontinuous 1·13, 95 % CI 1·09, 1·18) and as a categorical variable (ORquintile 5 v. 1 1·55, 95 % CI 1·29, 1·85; P for trend < 0·0001). Similar results were observed when the analyses were carried out separately for colon and rectal cancer cases. These results indicate that a pro-inflammatory diet is associated with an increased risk of CRC.

Type
Full Papers
Copyright
Copyright © The Authors 2015 

Colorectal cancer (CRC) is the second most common cancer both among Italian men (after prostate cancer), with an age-standardised incidence rate of 84·1 cases per 100 000 per year in 2006–9, and among women (after breast cancer), with a rate of 52·1 cases per 100 000 per year( 1 ). It also is the second most common cause of cancer death after lung cancer in both men and women( Reference Malvezzi, Bertuccio and Levi 2 ).

Inflammation is the body's reaction to any kind of tissue injury or insult, and it is the direct response to inflammatory stimulants such as cytokines( Reference Keibel, Singh and Sharma 3 , Reference Pan, Lai and Dushenkov 4 ). Chronic inflammation, which is characterised by the continuous presence of inflammatory cytokines in the circulation and in the tissues, is known to play a key role in the development of various epithelial cancers, with the strongest association evident in CRC( Reference Chung and Chang 5 Reference Toriola, Cheng and Neuhouser 7 ).

There is growing evidence that specific dietary components influence both inflammation( Reference de Mello, Schwab and Kolehmainen 8 Reference Michaud, Fuchs and Liu 11 ) and CRC( Reference Michaud, Fuchs and Liu 11 Reference Miller, Lazarus and Lesko 13 ). Research on the role of diet in inflammation has suggested that diet represents a complicated set of exposures that often interact, and whose cumulative effect modifies both inflammatory responses and health outcomes. The literature-derived, population-based dietary inflammatory index (DII) was developed to assess the inflammatory potential of an individual's diet( Reference Shivappa, Steck and Hurley 14 ). It has been validated with various inflammatory markers, including C-reactive protein( Reference Shivappa, Steck and Hurley 15 , Reference Wirth, Burch and Shivappa 16 ), IL-6( Reference Shivappa, Hebert and Rietzschel 17 , Reference Wood, Shivappa and Berthon 18 ) and homocysteine( Reference Shivappa, Hebert and Rietzschel 17 ). Additionally, the DII has been shown to be associated with the glucose intolerance and dyslipidaemic components of the metabolic syndrome( Reference Wirth, Burch and Shivappa 16 , Reference Alkerwi, Shivappa and Crichton 19 ); shift work status in a large population-based survey in the USA( Reference Wirth, Burch and Shivappa 20 ); bone mineral density among postmenopausal women in Iran( Reference Shivappa, Hebert and Karamati 21 ); asthma in Australia( Reference Wood, Shivappa and Berthon 18 ); CRC in a case–control study in Spain( Reference Zamora-Ros, Shivappa and Steck 22 ) and in cohort studies of women in the USA( Reference Shivappa, Prizment and Blair 23 , Reference Tabung, Steck and Ma 24 ); and pancreatic and prostate cancers in Italy( Reference Shivappa, Bosetti and Zucchetto 25 , Reference Shivappa, Bosetti and Zucchetto 26 ).

Our hypothesis is that a higher DII score (indicating a pro-inflammatory diet) increases the risk of CRC incidence. Therefore, in the present study, we examined the association between the DII and the risk of CRC using a large multi-centre case–control study conducted in Italy( Reference Franceschi, Favero and La Vecchia 27 ). This provided original information on the association between the DII and the risk of CRC in a southern European population, which may differ from North America and Spain where other DII and CRC investigations have been conducted, due to differences in dietary and lifestyle habits and awareness of diet-related health issues( Reference Zamora-Ros, Shivappa and Steck 22 Reference Tabung, Steck and Ma 24 ).

Methods

A case–control study of CRC was conducted between January 1992 and June 1996 in six Italian regions: provinces of Pordenone and Gorizia in north-eastern Italy; urban areas of Milan and Genoa; provinces of Forlì in the North; Latina and the urban area of Naples in the Centre South( Reference Franceschi, Favero and La Vecchia 27 ). Cases were subjects with histologically confirmed CRC diagnosed no longer than 1 year before the interview and with no previous diagnoses of cancer at other sites. Overall, 1225 subjects with colon cancer (688 men and 537 women, median age 62 years, range 19–74 years) and 728 subjects with rectal and recto-sigmoid junction cancers (437 men and 291 women, median age 62 years, range 23–74 years) were included (Table 1). Controls were patients with no history of cancer, admitted to major teaching and general hospitals in the same catchment areas as cases for acute non-neoplastic conditions unrelated to hormonal or digestive tract diseases or to long-term modifications of diet. They included 2073 men and 2081 women aged 19–74 years (median age 58 years), belonging to the following diagnostic categories: traumas, mostly fractures and sprains (27 %); other orthopaedic disorders, such as low back pain and disc disorders (24 %); acute surgical conditions (18 %); eye diseases (24 %); other miscellaneous diseases, such as ear, nose, throat, skin and dental conditions (7 %). The same structured questionnaire and coding manual were used in each centre, and all interviewers were centrally trained and routinely supervised. The present study was approved by the appropriate ethics committee, and performed in accordance with the ethical standards laid down in the guidelines of the 1964 Declaration of Helsinki.

Table 1 Characteristics of 4154 controls across quintiles of the energy-adjusted dietary inflammatory index (DII) in Italy during 1992–6 (Mean values and standard deviations; number of subjects and percentages)

* ANOVA and χ2 tests were used for continuous and categorical variables, respectively.

The questionnaire included information on sociodemographic characteristics, such as education and occupation, lifetime smoking and alcohol-drinking habits, physical activity, anthropometric measures at various ages, a problem-oriented personal medical history, and family history of cancer. A reproducible( Reference Franceschi, Negri and Salvini 28 ) and validated( Reference Decarli, Franceschi and Ferraroni 29 ) FFQ was used to assess the patient's usual diet in the 2 years preceding cancer diagnosis (for cases) or hospital admission (for controls). The FFQ included the average weekly consumption of seventy-eight food items or food groups and of five alcoholic beverages. Intakes lower than once per week, but at least once per month, were coded as 0·5 per week.

FFQ-derived dietary data were used to calculate DII scores for each study subject. A complete description of the DII is available elsewhere( Reference Shivappa, Steck and Hurley 14 ). Briefly, to calculate the DII for the subjects in the present study, the dietary data were first linked to a world database that provided a robust estimate of the mean and standard deviation for each food parameter included in the DII. These parameters then became the multipliers to express a subject'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 minimise the effect of ‘right skewing’, this value was then converted to a centred percentile score. The centred percentile score for each food parameter for each subject was then multiplied by the respective food parameter effect score in order to obtain a food parameter-specific DII score. All of the food parameter-specific DII scores were then summed up to create the overall DII score for each study subject. Data were available for thirty-one of the forty-five food parameters included in the development of the DII score, i.e. carbohydrate, protein, fat, alcohol, fibre, cholesterol, SFA, MUFA, PUFA, n-3, n-6, niacin, thiamin, riboflavin, vitamin B6, Fe, Zn, vitamin A, vitamin C, vitamin D, vitamin E, folic acid, β-carotene, anthocyanidins, flavan-3-ol, flavonol, flavonones, flavones, isoflavones, caffeine and tea. Previously, we showed that DII scores can range from a maximally pro-inflammatory value of +7·98 to a maximally anti-inflammatory value of − 8·87( Reference Shivappa, Steck and Hurley 14 ).

Height and weight were self-reported. BMI was calculated as weight (kg) divided by height (m) squared, and categorised into normal weight (BMI < 25·0 kg/m2), overweight (25·0 kg/m2< BMI < 30·0 kg/m2) and obese (BMI ≥ 30·0 kg/m2). The DII was analysed both as a continuous variable (i.e. for a one-unit increment in the DII corresponds to approximately 7 % of its global range) and by quintiles of exposure, determined on the basis of the entire study population. The DII was also examined across the strata of selected factors such as age, education, BMI and physical activity for the controls and cases separately using the ANOVA test for continuous variables or the χ2 test for categorical variables. The OR and the corresponding 95 % CI were estimated using logistic regression models, adjusting only for age, and then additionally for sex, study centre (Pordenone/Gorizia, Milan, Genoa, Forlì, Naples and Latina), education ( < 7, 7–11 and ≥ 12 years), BMI ( < 25·0, 25·0–29·9 and ≥ 30·0 kg/m2), alcohol drinking (0, 1–21 and >21 drinks/week) and history of CRC (yes/no). Energy intake was adjusted using the residual method( Reference Willett and Stampfer 30 ). Linear tests for trend were performed using the median value within each quintile as an ordinal variable. Analyses were carried out for CRC and by major subtypes (colon and rectal cancer). Stratified analyses were carried out by sex. Sensitivity analyses were also performed, in which we adjusted risk estimates for smoking and diabetes. Effect modification by age, BMI and physical activity on the association between the DII and CRC was examined. None of these variables interacted with the DII to exert an effect on CRC, and thus the results are not shown. Statistical analyses were performed using SAS® 9·3 (SAS Institute, Inc.).

Results

The DII score in the present study ranged from a maximally pro-inflammatory score of +4·89 to a maximally anti-inflammatory score of − 5·40 with a standard deviation of 1·84. Among the cases, the mean DII value was 0·14 (sd 1·39) and among the controls, it was − 0·06 (sd 1·38), indicating a more pro-inflammatory diet for the cases. The characteristics of the controls and cases across the quintiles of the DII are provided in Tables 1 and 2. There were some significant differences in sociodemographic, anthropometric and lifestyle habits across the quintiles of the DII. Among the controls, subjects in the highest quintile (Q5) were slightly younger and more likely to be male, to have a BMI < 25 kg/m2, to report a low physical activity, and to be less-frequent alcohol drinkers compared with those in the lowest quintile (Q1) (Table 1). Among the cases, subjects in Q5 were younger and more likely to be male compared with those in Q1 (Table 2).

Table 2 Characteristics of 1953 cases across quintiles of the energy-adjusted dietary inflammatory index (DII) in Italy during 1992–6 (Mean values and standard deviations; number of subjects and percentages)

* ANOVA and χ2 tests were used for continuous and categorical variables, respectively.

The OR and 95 % CI for CRC according to the quintiles of the DII and as continuous measures of the DII are provided in Table 3. When the analyses were carried out using the DII as a continuous variable, a significant positive association with the risk of CRC was observed (multivariable OR 1·13, 95 % CI 1·09, 1·18). When fit as quintiles, subjects in Q3, Q4 and Q5 were at a higher risk of developing CRC compared with those in Q1 (ORQ3 v. Q1 1·23, 95 % CI 1·03, 1·47; ORQ4 v. Q1 1·39, 95 % CI 1·16, 1·67; ORQ5 v. Q1 1·55, 95 % CI 1·29, 1·85; P for trend < 0·0001). For the analysis focusing on specific anatomic subsites, a significant positive association was observed with colon cancer for both DII as a continuous variable (OR 1·09, 95 % CI 1·04, 1·14) and fit as quintiles (ORQ5 v. Q1 1·39, 95 % CI 1·13, 1·71; P for trend = 0·0002). A similar positive association was found for rectal cancer (ORcontinuous 1·12, 95 % CI 1·06, 1·19; ORQ5 v. Q1 1·47, 95 % CI 1·14, 1·90; P for trend = 0·0004). Additional adjustment for smoking and diabetes did not meaningfully change the risk estimates (data not shown).

Table 3 OR for the relationship between the dietary inflammatory index (DII) and colorectal cancer among 1953 cases of colorectal cancer, 1225 cases of colon cancer, 728 cases of rectal cancer and 4154 controls in Italy during 1992–6 (Number of cases, odds ratios and 95 % confidence intervals)

* The logistic regression model controlled for age.

The logistic regression model additionally controlled for sex, study centre, education, ( < 7, 7–11 and ≥ 12 years), BMI ( < 25·0, 25·0–29·9 and ≥ 30·0 kg/m2), alcohol drinking (0, 1–21 and >21 drinks/week), physical activity (low, medium and high) and history of colorectal cancer (yes/no); energy intake was adjusted using the residual method.

When stratified by sex, the DII was associated with CRC in both males and females, but with a stronger association among males (ORQ5 v. Q1 1·90, 95 % CI 1·47, 2·45 in males v. ORQ5 v. Q1 1·27, CI 1·00, 1·65 in females; P for trend = 0·01; Table 4). Among males, the DII was associated with both colon cancer (ORQ5 v. Q1 1·71, 95 % CI 1·27, 2·28) and rectal cancer (ORQ5 v. Q1 1·47, 95 % CI 1·14, 1·90) (Table 4), whereas for females, a significant association was observed with rectal cancer for the DII fit as continuous (OR 1·10, 95 % CI 1·01, 1·19), but no significant association was observed for colon cancer (Table 4).

Table 4 OR for the association between the dietary inflammatory index (DII) and colorectal cancer stratified by sex in Italy during 1992–6 (Number of cases, odds ratios and 95 % confidence intervals)

* The logistic regression model controlled for age.

The logistic regression model additionally controlled for study centre, education, ( < 7, 7–11 and ≥ 12 years), BMI ( < 25·0, 25·0–29·9 and ≥ 30·0 kg/m2), alcohol drinking (0, 1–21 and >21 drinks/week), physical activity (low, medium and high), history of colorectal cancer (yes/no); energy intake was adjusted using the residual method.

Discussion

In the present large case–control study, consuming a more pro-inflammatory diet, as reflected in higher DII scores, was associated with an increased risk of CRC. The results showed a significant positive association between the DII and colon and rectal cancers separately. When stratified by sex, we found positive associations between the DII and CRC for both sexes, with larger effect sizes for males. CI were narrower for males due to a larger sample size relative to that for females.

Overall, the present results are in accordance with those previously obtained from studies showing protective effects of food groups such as vegetables, fruit, fish, total antioxidant capacity of the diet( Reference La Vecchia, Decarli and Serafini 31 ), flavonoids( Reference Rossi, Negri and Talamini 32 ) and high proanthocyanidin intake( Reference Rossi, Negri and Parpinel 33 ) on the risk of CRC, all of which include anti-inflammatory components or exert anti-inflammatory effects. Conversely, in a previous case–control study by our group( Reference Franceschi, Favero and La Vecchia 27 ), increased risks of CRC have been associated with food groups such as bread and pasta, potatoes, cakes and desserts, and refined sugar, which would be expected to be more concentrated with pro-inflammatory components such as saturated fat, trans-fatty acids and low fibre content.

Previous studies investigating the effect of specific food items on the risk of CRC have reported an increased risk with a high consumption of red and processed meat( Reference Miller, Lazarus and Lesko 12 , Reference Parr, Hjartaker and Lund 34 , Reference Ananthakrishnan, Du and Berndt 35 ) and high alcohol drinking( Reference Bagnardi, Rota and Botteri 36 ). Generally, inverse associations have been found for dairy foods and for foods high in fibre, fruits and vegetables( Reference Bruce, Giacca and Medline 37 ). A limitation of this single food/nutrient-based approach is that these foods or nutrients are usually consumed with other food items and nutrients; thus, dietary interactions may modify the actual effects of the food or nutrient under study. A high correlation between nutrients and among foods can produce instability in risk estimation due to multicollinearity, resulting in the possible loss of statistical power and distortion of risk estimates. In the formulation of the DII, an entirely different approach was taken by focusing on the functional effects of foods and nutrients. As such, the DII relies on reviewing and scoring of the peer-reviewed literature on the subject of diet and inflammation. Also, it standardises individuals' dietary intakes of pro- and anti-inflammatory food constituents to world reference values, resulting in values that are not dependent on units of consumption and can be used for comparison across studies.

The results of the present study support findings from our previous research indicating increased risks of CRC with increasing DII scores among postmenopausal women in two US cohort studies, the Iowa Women's Health Study( Reference Shivappa, Prizment and Blair 23 ) and the Women's Health Initiative( Reference Tabung, Steck and Ma 24 ). Previous studies have been conducted to examine other dietary patterns and indices in relation to CRC( Reference Miller, Lazarus and Lesko 13 , Reference Reedy, Mitrou and Krebs-Smith 38 , Reference Randi, Edefonti and Ferraroni 39 ). In the National Institutes of Health–American Association of Retired Persons cohort, after adjustment for multiple confounders, significant inverse associations were observed between CRC incidence and the Healthy Eating Index (HEI)-2005, but not the alternate HEI or Mediterranean diet scores( Reference Reedy, Mitrou and Krebs-Smith 38 ). A case–control study conducted in Pennsylvania, USA, showed significant associations between low HEI-2005 scores and dietary patterns high in meat, potatoes and refined grains and the risk of CRC among women( Reference Miller, Lazarus and Lesko 12 , Reference Miller, Lazarus and Lesko 13 ). In one case–control study, a starch-rich dietary pattern was found to increase the risk of both colon and rectal cancers, whereas the vitamins and fibre pattern reduced the risk of rectal cancer and the unsaturated fats patterns reduced the risk of colon cancer( Reference Bravi, Edefonti and Bosetti 40 ).

In addition to CRC, the associations between the DII and cancers of other organ sites, including pancreatic and prostate cancers, have been examined in case–control studies( Reference Shivappa, Bosetti and Zucchetto 25 , Reference Shivappa, Bosetti and Zucchetto 26 ) conducted in Italy. Similar to the present findings, consuming a more pro-inflammatory diet was associated with increased odds of pancreatic cancer (ORQ5 v. Q1 2·48, 95 % CI 1·50, 4·10) and prostate cancer (ORQ4 v. Q1 1·33, 95 % CI 1·01, 1·76) in those studies( Reference Shivappa, Bosetti and Zucchetto 25 , Reference Shivappa, Bosetti and Zucchetto 26 ).

One of the possible mechanisms for the positive association between the DII and the risk of CRC (and other cancers) might be through the effect of a pro-inflammatory diet on insulin resistance by increasing systemic inflammation( Reference Festa, D'Agostino and Howard 41 ). Consumption of food items such as meat and butter has been shown to affect systemic inflammation by increasing levels of high-sensitivity CRP, E-selectin and soluble vascular cell adhesion molecule-1( Reference Esmaillzadeh, Kimiagar and Mehrabi 42 ), which then are responsible for increasing insulin resistance( Reference Festa, D'Agostino and Howard 41 ). Increasing insulin resistance is associated with CRC by increasing circulating levels of insulin, TAG and NEFA( Reference Bruce, Giacca and Medline 37 , Reference Bruce, Wolever and Giacca 43 ), which promote excessive proliferation of colonic epithelial cells and expose them to reactive oxygen species, thereby increasing the risk of CRC. Another theory suggests the role of diet on local inflammation and oxidation in the colon; local inflammation and oxidative stress as a result of the activation of the cyclo-oxygenase-2 enzyme in colonic epithelial cells results in focal proliferation and mutagenesis( Reference Bruce, Giacca and Medline 37 ).

The strengths of the present study include the large sample size, where both cases and controls came from comparable catchment areas and were interviewed by uniformly trained interviewers in their respective hospital settings. Subjects were unaware of any particular study-related hypothesis in relation to diet and CRC, thereby reducing potential selection and information bias( Reference D'Avanzo, La Vecchia and Katsouyanni 44 ). The FFQ was satisfactorily reliable( Reference Franceschi, Negri and Salvini 28 ) and validated with a 7 d dietary record( Reference Decarli, Franceschi and Ferraroni 29 ). Participation among eligible cases and controls was almost complete, and we excluded from the controls patients who were hospitalised for diseases likely to be related to long-term dietary intakes. The present results were adjusted for several potential confounders that are known risk factors for CRC, including education, alcohol drinking and BMI, in addition to demographic factors and total reported energy intake. After controlling for all of these factors, the associations became stronger after multivariable analyses including terms for energy intake.

In conclusion, Italian men and women who consumed a more pro-inflammatory diet were at an increased risk of CRC compared with those who consumed a more anti-inflammatory diet. The results suggest that encouraging intake of more anti-inflammatory dietary factors, such as plant-based foods rich in fibre and phytochemicals, and reducing intake of pro-inflammatory factors, such as fried foods or processed foods rich in saturated fat or trans-fatty acids, may be a strategy for reducing the risk of CRC.

Acknowledgements

The present study was supported by the Italian Foundation for Research on Cancer and by the National Cancer Institute grant R01 CA39742. J. R. H. was supported by an Established Investigator Award in Cancer Prevention and Control from the Cancer Training Branch of the National Cancer Institute (K05 CA136975).

N. S. was involved in the calculation of DII in this dataset, performed all the analyses and drafted the first version of the manuscript. C. L. V. helped with the analyses, data acquisition, and interpretation of data and critical revision of the manuscript. A. Z., M. M., D. S. and S. E. S. contributed to the data interpretation and drafting of the manuscript. J. R. H. provided expertise and oversight throughout the process. All authors approved the final version.

J. R. H. owns controlling interest in Connecting Health Innovations LLC (CHI), a company planning to license the right to his invention of the DII from the University of South Carolina in order to develop computer and smart applications for patient counselling and dietary intervention in clinical settings. N. S. is an employee of CHI. The subject matter of this article will not have any direct bearing on that work, nor has that activity exerted any influence on this project. The rest of the authors declare that they have no conflicts of interest.

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Figure 0

Table 1 Characteristics of 4154 controls across quintiles of the energy-adjusted dietary inflammatory index (DII) in Italy during 1992–6 (Mean values and standard deviations; number of subjects and percentages)

Figure 1

Table 2 Characteristics of 1953 cases across quintiles of the energy-adjusted dietary inflammatory index (DII) in Italy during 1992–6 (Mean values and standard deviations; number of subjects and percentages)

Figure 2

Table 3 OR for the relationship between the dietary inflammatory index (DII) and colorectal cancer among 1953 cases of colorectal cancer, 1225 cases of colon cancer, 728 cases of rectal cancer and 4154 controls in Italy during 1992–6 (Number of cases, odds ratios and 95 % confidence intervals)

Figure 3

Table 4 OR for the association between the dietary inflammatory index (DII) and colorectal cancer stratified by sex in Italy during 1992–6 (Number of cases, odds ratios and 95 % confidence intervals)