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Development and calibration of a dietary nitrate and nitrite database in the NIH–AARP Diet and Health Study

Published online by Cambridge University Press:  02 December 2015

Maki Inoue-Choi
Affiliation:
Occupational and Environmental Epidemiology Branch, Division of Cancer Epidemiology & Genetics, National Cancer Institute, National Institutes of Health, Department of Health and Human Services, 9609 Medical Center Drive, 6E314, Rockville, MD 20850, USA National Institute on Minority Health and Health Disparities, National Institutes of Health, Department of Health and Human Services, Bethesda, MD, USA
Mandeep K Virk-Baker
Affiliation:
Cancer Prevention Fellowship Program, Division of Cancer Prevention, National Cancer Institute, National Institutes of Health, Rockville, MD, USA
Briseis Aschebrook-Kilfoy
Affiliation:
Occupational and Environmental Epidemiology Branch, Division of Cancer Epidemiology & Genetics, National Cancer Institute, National Institutes of Health, Department of Health and Human Services, 9609 Medical Center Drive, 6E314, Rockville, MD 20850, USA Division of Biologic Sciences, Department of Public Health Sciences, University of Chicago, Chicago, IL, USA
Amanda J Cross
Affiliation:
Department of Epidemiology and Biostatistics, School of Public Health, Imperial College London, London, UK
Amy F Subar
Affiliation:
Epidemiology and Genomics Research Program, Risk Factor Assessment Branch, Division of Cancer Control and Population Sciences, National Cancer Institute, Rockville, MD, USA
Frances E Thompson
Affiliation:
Epidemiology and Genomics Research Program, Risk Factor Assessment Branch, Division of Cancer Control and Population Sciences, National Cancer Institute, Rockville, MD, USA
Rashmi Sinha
Affiliation:
Nutritional Epidemiology Branch, Division of Cancer Epidemiology & Genetics, National Cancer Institute, National Institutes of Health, Department of Health and Human Services, Rockville, MD, USA
Mary H Ward*
Affiliation:
Occupational and Environmental Epidemiology Branch, Division of Cancer Epidemiology & Genetics, National Cancer Institute, National Institutes of Health, Department of Health and Human Services, 9609 Medical Center Drive, 6E314, Rockville, MD 20850, USA
*
*Corresponding author: Email wardm@exchange.nih.gov
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Abstract

Objective

Nitrate and nitrite are probable human carcinogens when ingested under conditions that increase the formation of N-nitroso compounds. There have been limited efforts to develop US databases of dietary nitrate and nitrite for standard FFQ. Here we describe the development of a dietary nitrate and nitrite database and its calibration.

Design

We analysed data from a calibration study of 1942 members of the NIH–AARP (NIH–AARP, National Institutes of Health–AARP) Diet and Health Study who reported all foods and beverages consumed on the preceding day in two non-consecutive 24 h dietary recalls (24HR) and completed an FFQ. Based on a literature review, we developed a database of nitrate and nitrite contents for foods reported on these 24HR and for food category line items on the FFQ. We calculated daily nitrate and nitrite intakes for both instruments, and used a measurement error model to compute correlation coefficients and attenuation factors for the FFQ-based intake estimates using 24HR-based values as reference data.

Results

FFQ-based median nitrate intake was 68·9 and 74·1 mg/d, and nitrite intake was 1·3 and 1·0 mg/d, in men and women, respectively. These values were similar to 24HR-based intake estimates. Energy-adjusted correlation coefficients between FFQ- and 24HR-based values for men and women respectively were 0·59 and 0·57 for nitrate and 0·59 and 0·58 for nitrite; energy-adjusted attenuation factors were 0·59 and 0·57 for nitrate and 0·47 and 0·38 for nitrite.

Conclusions

The performance of the FFQ in assessing dietary nitrate and nitrite intakes is comparable to that for many other macro- and micronutrients.

Type
Research Papers
Copyright
Copyright © The Authors 2015 

Nitrate is ingested from dietary sources and drinking water. Vegetables, especially dark green leafy and certain root vegetables, are usually the primary source when levels of nitrate in drinking water are below 50 mg/l, the regulatory limit in many countries( Reference Chilvers, Inskip and Caygill 1 ). Once ingested, nitrate can be reduced to nitrite by the oral bacteria. In the gastrointestinal tract, especially in the stomach, nitrite further reacts with amines and amides to form N-nitroso compounds (NOC), known animal carcinogens( Reference Bogovski and Bogovski 2 ) and probable human carcinogens( 3 Reference Vermeer, Pachen and Dallinga 5 ). Nitrate and nitrite also are used as food additives in processed meats for curing as well as to enhance colour and flavour. Dietary intake of nitrite comes primarily from the consumption of cured meats and fish, baked goods and cereal products. As such, elevated levels of endogenously formed nitrite from nitrate and higher intake of dietary nitrite may increase endogenous NOC formation and thus individuals’ risk for cancer.

Vegetables contain nutrients that can inhibit endogenous nitrosation, such as vitamin C and polyphenols. Although nitrate from both vegetables and drinking water undergoes reduction to nitrite in the body, nitrate from vegetables probably results in less endogenous NOC formation because of the presence of inhibitors of nitrosation( Reference Mirvish 6 ). Higher nitrite intake from processed meats has been shown to result in elevated NOC formation in animal studies( Reference Mirvish, Haorah and Zhou 4 , Reference Zhou, Anwar and Zahid 7 ). The combination of higher intake of nitrate with an amine source and low intake of vitamin C has been shown to increase the endogenous formation of NOC in human biomonitoring studies( Reference Vermeer, Pachen and Dallinga 5 , Reference Mirvish, Grandjean and Reimers 8 , 9 ). However, to date, only a limited number of prospective cohort studies have evaluated overall dietary nitrate and nitrite intakes( Reference Keszei, Goldbohm and Schouten 10 Reference Inoue-Choi, Jones and Anderson 17 ) or nitrite intake from animal foods or processed meats( Reference Knekt, Jarvinen and Dich 14 , Reference Aschebrook-Kilfoy, Ward and Gierach 15 , Reference Cross, Freedman and Ren 18 Reference Dellavalle, Daniel and Aschebrook-Kilfoy 22 ) in relation to risk of various cancers, and results are inconclusive.

An extensive body of literature exists on nitrate and nitrite contents in foods and several large databases have been developed for European epidemiological studies in the UK, France, the Netherlands and Spain( Reference Jakszyn, Agudo and Ibanez 23 Reference Ysart, Miller and Barrett 26 ). To date, there have been limited efforts to develop US databases of nitrate and nitrite contents in foods and by extension for FFQ( Reference Griesenbeck, Steck and Huber 27 Reference Mayne, Risch and Dubrow 29 ). Here, we describe a dietary nitrate and nitrite database developed for an early version of the National Cancer Institute (NCI) Diet History Questionnaire (DHQ), which was used to assess dietary and supplement intakes in the NIH–AARP (National Institutes of Health–AARP) Diet and Health Study. We analysed data from a calibration study to evaluate the performance of the DHQ for estimated nitrate and nitrite intakes using intakes from 24 h dietary recalls (24HR) as reference data.

Methods

The NIH–AARP Diet and Health Study

From 1995 through 1996, a baseline questionnaire was mailed to 3·5 million current AARP members aged 50–71 years residing in California, Florida, Pennsylvania, New Jersey, North Carolina and Louisiana, or two metropolitan areas (Atlanta, Georgia and Detroit, Michigan)( Reference Schatzkin, Subar and Thompson 30 ). Usual dietary intake and use of dietary supplements were assessed with the NCI DHQ (described below). Among 567169 persons who had a satisfactory baseline questionnaire, we excluded 76975 individuals as described previously( Reference Schatzkin, Subar and Thompson 30 , Reference Gierach, Freedman and Andaya 31 ). Major reasons for exclusion included prior diagnosis of cancer (except for non-melanoma skin cancer; n 51193), questionnaires completed by proxies (n 15760) and extreme values for total energy intake (beyond twice the interquartile range of Box–Cox log-transformed intake; total n 4382). The final cohort for assessment of dietary nitrate and nitrite intakes included 490194 participants (292125 men, 198069 women).

Dietary intake data collection

Dietary intake during the previous 12 months was assessed at baseline using an early version of the NCI DHQ, an FFQ including the frequency of consumption and corresponding portion sizes of 124 food items. The food items, portion sizes, nutrient database and pyramid food servings database were constructed using methods developed by Subar et al. ( Reference Subar, Midthune and Kulldorff 32 ) with national dietary data from the US Department of Agriculture’s 1994–1996 Continuing Survey of Food Intakes by Individuals (CSFII)( Reference Friday and Bowman 33 ). Participants were queried about their frequency of intake in ten categories ranging from ‘never’ to ‘≥2 times per day’ for foods and from ‘never’ to ‘≥6 times per day’ for beverages. Each food item was accompanied by three portion size categories established based on sex- and age group-specific portion sizes from the CSFII( Reference Subar, Midthune and Kulldorff 32 ). Use of selected dietary supplements was also assessed.

The performance of the NCI DHQ in the NIH–AARP Diet and Health Study population was previously evaluated for major macro- and micronutrients( Reference Thompson, Kipnis and Midthune 34 ). Energy-adjusted correlations between FFQ- and 24HR-based intake estimates ranged from 0·40 (vitamin E) to 0·76 (saturated fat) and from 0·36 (vitamin E) to 0·70 (vitamin B6) among men and women, respectively. Energy-adjusted attenuation factors ranged from 0·26 (protein) to 0·68 (saturated fat) and from 0·24 (vitamin E) to 0·62 (vitamin B6) among men and women, respectively.

Estimation of nitrate and nitrite concentrations in foods

We estimated the nitrate and nitrite contents of the food groups asked on the NCI DHQ based on a literature review of published studies and reports. We used twenty-six studies or reports published between 1967 and 2008( Reference Chilvers, Inskip and Caygill 1 , Reference Jakszyn, Agudo and Ibanez 23 , Reference Cornee, Lairon and Velema 25 , Reference Ysart, Miller and Barrett 26 , Reference Achtzehn and Hawat 35 Reference White 56 ) (see online supplementary material, Table S1). This range of publication years was chosen based on the time frame of our dietary intake assessment, particularly because the allowed levels of added nitrate and nitrite in processed meats have changed in past decades. First, we included studies with published values for nitrate or nitrite focusing on food products in the USA and Canada because nitrate and nitrite levels in some foods (e.g. processed meats, cheeses) can vary internationally( Reference White 56 , Reference Honikel 57 ). Nitrate and nitrite levels for most commonly consumed food items were identified in literature in the USA or Canada. However, because of limited US or Canadian data on nitrate and nitrite values for some other food items, many of which were ingredients included in recipes for mixed dishes, we expanded our literature search to studies performed in other countries. Information regarding cooking method, number of samples analysed, ranges of values, means and standard deviations was abstracted, if available. If multiple studies were available for a particular food/cooking method combination, we calculated the average nitrate or nitrite level, weighted by the number of samples analysed in each study. For vegetable items specified as cooked in the FFQ where only a raw value was available in the literature, the changes in nitrate through cooking were estimated because the process of cooking typically lowers nitrate concentrations. For example, at least 50% of nitrate in vegetables can be removed by cooking in water( 58 ).

Nitrate and nitrite composition of each FFQ line item (e.g. tomatoes) was computed by weighting the food-specific values by age group- and sex-specific intake amounts found in the CSFII and summing over all foods defined in the FFQ line item. For example, we used composition estimates for raw, canned and cooked tomatoes to derive a weighted composition estimate for the FFQ line item ‘tomato’. Nitrate and nitrite values were assigned to FFQ mixed dish food items (e.g. vegetable soup, beef stew, chicken pot pie, various salads, sandwiches, meatloaf) using standardized recipes. The values assigned to these mixed dishes were a weighted average of the nitrate and nitrite contents of the foods in the recipe. For a few mixed dishes, values for a food in the recipe were not available in the literature (e.g. water chestnut) and we substituted a value for a food we thought might have similar nitrate and nitrite levels (e.g. white potato).

Dietary nitrate and nitrite intakes in the NIH–AARP Diet and Health Study

For each cohort participant, daily intake estimates of nitrate and nitrite were calculated by multiplying the nitrate and nitrite composition of each FFQ food item by the reported frequency of consumption and portion size, and summing values across all food items. The average daily intake level was calculated for the entire cohort overall and for men and women separately. Nitrate and nitrite intakes from plant, animal and processed meat sources were computed separately. The percentage contribution of each FFQ food item to total daily nitrate and nitrite intakes was also calculated.

Measurement of nitrate and nitrite in processed meat products

We used a database of nitrate and nitrite amounts that was previously developed for ten types of processed meat representing 90% of the processed meats consumed in the USA, according to the CSFII 1994–1996( Reference Sinha, Cross and Curtin 59 , Reference Ward, Cross and Divan 60 ), to evaluate whether our daily intake estimates of nitrate and nitrite from processed meats based on a literature review are comparable to intake estimates based on the measurement-based database for processed meat products. For each of ten meat types, we measured the nitrate, nitrite and multiple NOC composition from composites prepared from major brand name meats that were available from grocery stores in the Blacksburg, Virginia area in 2004. If major brand name products were not available, a local/regional or store brand product was substituted. We computed nitrate and nitrite intake estimates from processed meat based on these measured nitrate and nitrite amounts multiplied by reported daily intakes in the FFQ in the calibration study population. As previously described, NOC were not detected in any processed meats( Reference Sinha, Cross and Curtin 59 ).

Calibration study

A calibration study for dietary nitrate and nitrite intake estimates from the FFQ was conducted in the subset of cohort members previously described in the calibration analyses of macro- and micronutrients( Reference Thompson, Kipnis and Midthune 34 ). Briefly, from 38691 individuals who completed the baseline FFQ and were eligible for selection into the calibration study, 6150 individuals were randomly selected by a combination of fixed and random stratified sampling to ensure approximate representation by sex and to enhance minority inclusion and increase heterogeneity of dietary intakes of fat, fruits and vegetables, fibre and red meat. Participants with extreme intakes (10% in each of the lowest and highest intake categories) on any of these four dietary variables were sampled at a higher rate than others. Telephone numbers were obtained for 3901 individuals and recruitment was attempted by telephone calls for 3647; of these, 2923 individuals were reached. After excluding 128 individuals who could not be located, had language problems or were too ill to participate, 2795 individuals were invited to participate in the calibration study and 2053 completed the first 24HR. Of these respondents, 1445 individuals also completed the second 24HR. The two 24HR were both unannounced ahead of time and well separated in time from March to September 1996, mostly within a year from the FFQ completion. In the 24HR interviews, participants were asked to report all foods and beverages consumed on the day preceding the interview. Trained interviewers used a Food Probe List containing standardized probes specific to foods in over 100 food categories. Data were coded using the Food Intake Analysis System (FIAS), version 2·3, developed at the University of Texas. The 24HR reports with extremely high values for fat, total energy, total fruit and vegetable intakes were examined, and coding errors were corrected accordingly if errors were found.

From the 2053 respondents to the first 24HR, we excluded 100 individuals who met exclusion criteria consistent with the overall baseline cohort including subsequent drop-outs (n 78), registry-ascertained history of cancer (n 9) and death-only reports of cancer (n 13). As a result, 1953 individuals (987 men and 966 women) who completed the baseline FFQ and at least the first 24HR remained in the calibration study. For each day of the 24HR, we assigned food-specific nitrate and nitrite values to reported food items and computed daily nitrate and nitrite intakes by multiplying the nitrate and nitrite contents of each food item by the reported amounts of intake, and summing values across all food items. We performed an additional literature review to find nitrate and nitrite values for food items that were not included in the FFQ. Nitrate and nitrite intake averages over the two days were computed for each calibration study participant. For the sixty-three individuals who did not complete a second 24HR, only the first 24HR was used in measurement error modeling (see below).

Statistical analysis

We determined the average percentage contribution to nitrate and nitrite intakes from each food item for FFQ and 24HR data for men and women separately. We evaluated the performance of the FFQ by determining two parameters: the Pearson correlation coefficient (r Q,T) and the attenuation factor (λ Q) for FFQ-reported intakes (Q) using 24HR-based values (T) as the reference ‘true intake’( Reference Thompson, Kipnis and Midthune 34 ). We estimated the correlation and attenuation factor by fitting a measurement error model for the FFQ and 24HR measurements suggested by Kipnis et al. to all participants of the calibration study using the maximum likelihood approach( Reference Kipnis, Midthune and Freedman 61 ). An assumption of this approach is that the error in the reference measure (24HR data) is independent of the true intake and independent of the error in FFQ-based data( Reference Kipnis, Midthune and Freedman 61 ).

The correlation r Q,T determines the extent of misclassification in the FFQ-based intake (as quantiles). The attenuation factor is a slope in the regression of true intake v. FFQ-reported intake. In a univariate model for the association between dietary exposures and risk of disease, the observed relative risk (RR) for a given change in the dietary exposure is equal to the true RR raised to power λ Q. In studies evaluating dietary exposures, λ Q is usually confined between 0 and 1, therefore attenuating a true RR (biasing a RR towards 1). An attenuation factor close to 0 indicates severe attenuation and an attenuation factor close to 1 indicates very little attenuation. For example, if λ Q=0·5, a true RR of 2 would be observed as 20·5=1·41 and if λ Q=0·1 as 20·1=1·07.

Because distributions of nitrate and nitrite intakes were highly skewed, the measurement error model was fitted after excluding extreme outliers and transforming intake values to approximate normality using a transformation within the Box–Cox transformation family( Reference Thompson, Kipnis and Midthune 34 ). Box–Cox transformation also aimed to improve 24HR-based intake as a reference instrument by making the random error more homoscedastic. After excluding outliers, 1942 individuals (984 men and 958 women) were included in the analysis. We computed correlation and attenuation factors for total nitrate and nitrite intakes and nitrite from animal and plant sources separately in unadjusted and adjusted models using the residual energy adjustment method( Reference Willett, Howe and Kushi 62 ). We did not separate nitrate intake into animal and plant sources because, on average, about 94% of dietary nitrate was derived from plant foods. We also computed correlations of estimated daily nitrate and nitrite intakes from processed meat based on a literature review with the estimates based on measured nitrate and nitrite concentrations in processed meat products.

Results

The estimated nitrate and nitrite composition (mg/100 g food weight) in the FFQ line items are presented in the online supplementary material, Table S2. Nitrate levels ranged from 0 to 180·0 mg/100 g with the highest concentrations in certain vegetables. Raw spinach and lettuce contained the highest amounts of nitrate (180 mg/100 g and 170 mg/100 g, respectively), whereas sweets, nuts, fats and oils contained only trace amounts. Nitrite contents ranged from 0 to 7·2 mg/100 g with the highest concentrations in processed meats. FFQ food items including ham (not luncheon) and cold cuts/sausage/hot dogs had the highest nitrite concentrations (7·2 and 2·4 mg/100 g, respectively). Much smaller amounts of nitrite (0–0·7 mg/100 g) were found in cottage cheese, fat-rich foods such as butter or margarine, and various fruit juices.

As reported previously, the calibration sub-cohort represented the overall baseline cohort with regard to selected demographic (e.g. age, race/ethnicity, educational level), lifestyle (e.g. smoking, physical activity, diet, BMI, hormone use), self-reported health status and family history of cancer( Reference Thompson, Kipnis and Midthune 34 ). Although stratified sampling was implemented to select the calibration sub-cohort to increase heterogeneity of dietary intake distributions, the median values and distributions of the selected dietary intakes (total energy, total fat, carbohydrate, protein, and fruit and vegetables) were similar between the calibration sub-cohort and the overall cohort( Reference Thompson, Kipnis and Midthune 34 ).

Based on FFQ data for the entire cohort, average daily nitrate intake was 85·3 mg/d (men) and 91·6 mg/d (women). Average daily nitrite intake was 1·3 mg/d (men) and 1·1 mg/d (women). Average intake of nitrate from plant sources was 79·8 mg/d (men) and 86·9 mg/d (women), representing 94–95% of total dietary nitrate intake on average; whereas average intake of nitrite from plant sources was 0·8 mg/d (men) and 0·7 mg/d (women), representing 64–70% of total dietary nitrite intake on average.

From the calibration study, the median and interquartile range of nitrate and nitrite intakes derived from FFQ and 24HR data are presented separately for men and women in Table 1. Overall, estimated median nitrate and nitrite intakes based on the FFQ and 24HR were similar. When comparing nitrate and nitrite intakes from the first and second 24HR, higher nitrate intake was reported in the second 24HR especially among women. Nitrite intake values (total and from animal and plant sources) were nearly identical between the two 24HR.

Table 1 Estimated median and interquartile range (IQR) of daily intakes of nitrate and nitrite (mg/d) by sex for the FFQ and the 24 h dietary recalls (24HR) in the calibration sub-study: NIH–AARP Diet and Health Study, 1995–1996

NIH–AARP, National Institutes of Health–AARP.

Based on the FFQ in the calibration study, lettuce was the top contributor to total nitrate intake in both men (32·5%) and women (35·0%), followed by other vegetables such as spinach and other greens (raw and cooked), broccoli, string beans and coleslaw/cabbage/sauerkraut (Table 2). Other top contributors to dietary nitrate intake included potatoes (white), bananas, cantaloupe and other melons. The 24HR data showed similar food items among the top twenty contributors to dietary nitrate intake. However, certain food items that were not listed in the FFQ were among the top twenty contributors to dietary nitrate in the 24HR. These food items included avocado/guacamole (17th in men and 15th in women) and pickled vegetables/fruits (16th in men and 12th in women). Food items identified as top contributors to total nitrite intake were similar in FFQ- and 24HR-based data (Table 3). Based on FFQ-reported intake in the calibration study, a top contributor to nitrite in men was cold cuts (8·6%), followed by bread, pasta, rice/grains and hot breakfast cereal. In women, similar food items were identified as top contributors to total nitrite intake. Processed meats such as ham and hot dogs were among top twenty contributors to total nitrite intake in both men and women based on both the FFQ and the 24HR. When we compared the FFQ-based nitrite intake estimate from processed meats using the database we developed from our literature review with daily intake estimates using measured values in composite samples, the two estimtes were highly correlated (r=0·99). Nitrate intake estimates from processed meats based on our database from a literature review and based on measured values were also highly correlated (r=0·95).

Table 2 Top twenty food items contributing to total dietary nitrate intake from the FFQ and 24 h dietary recalls (24HR) by sex in the calibration sub-study: NIH–AARP Diet and Health Study, 1995–1996

NIH–AARP, National Institutes of Health–AARP.

* Vegetables other than those listed as line items on an FFQ, such as beets and celeries.

Table 3 Top twenty food items contributing to total dietary nitrite intake from the FFQ and 24 h dietary recalls (24HR) by sex in the calibration sub-study: NIH–AARP Diet and Health Study, 1995–1996

NIH–AARP, National Institutes of Health–AARP.

Estimated unadjusted correlation coefficients between the FFQ-reported nitrate intake and the true intake based on the 24HR were moderate both in men (r=0·53) and women (r=0·48; Table 4). When adjusted for energy intake, the correlations became slightly higher, especially in women (r=0·57). Attenuation factors for dietary nitrate intake were 0·49 in men and 0·46 in women. Again, adjusting for energy intake improved attenuation factors in both men (r=0·59) and women (r=0·57). Compared with total nitrate, lower unadjusted correlation coefficients for total nitrite intake were observed in men (r=0·45) and women (r=0·37). However, energy-adjusted correlation coefficients for nitrite were similar to those for dietary nitrate intake (r=0·59 and 0·58 for men and women, respectively). Similarly, attenuation factors for total nitrite intake improved considerably after adjusting for energy intake (0·47 in men and 0·38 in women); however, attenuation in FFQ-based nitrite intake was more severe than attenuation in FFQ-reported nitrate intake. Similar correlation and attenuation factors were observed for nitrite from animal and plant sources, both of which were slightly higher than those for total nitrite intake.

Table 4 Estimated correlation coefficients and attenuation factors between the FFQ and true intakes based on the 24 h dietary recalls using a measurement error model, unadjusted and adjusted for energy intake, in the calibration sub-study: the NIH–AARP Diet and Health Study, 1995–1996

NIH–AARP, National Institutes of Health–AARP.

Discussion

In the NIH–AARP Diet and Health Study, we found that total dietary nitrate intake was mostly from green leafy vegetable consumption, while total dietary nitrite intake was mostly from cold cuts and starchy foods, such as pasta and bread. Our calibration study demonstrated moderate correlations and attenuation factors for dietary nitrate and nitrite intakes assessed using the NCI DHQ compared with intake estimates based on the 24HR.

Although nitrate and nitrite have been measured in all major foods in numerous countries( Reference Jakszyn, Agudo and Ibanez 23 , Reference Cornee, Lairon and Velema 25 , Reference Ysart, Miller and Barrett 26 , Reference Choi 28 ), limited efforts have been made to establish a dietary nitrate and nitrite database for the food supply in the USA and thus for FFQ( Reference Griesenbeck, Steck and Huber 27 Reference Mayne, Risch and Dubrow 29 ). No dietary nitrate and nitrite database was available for the FFQ used to assess dietary intake in the NIH–AARP Diet and Health cohort study. Therefore, we compiled, selected and weighted the reported literature values for foods relevant to the NCI DHQ to generate an estimate for each food item. In order to evaluate FFQ-based intake estimates, we also assigned composition values to the foods reported in 24HR in the NIH–AARP calibration study. Average total daily intake of nitrite (1·2 mg/d) based on FFQ data among our total cohort participants was consistent with values reported in other US studies (0·9–1·4 mg/d)( Reference Aschebrook-Kilfoy, Shu and Gao 16 , Reference Inoue-Choi, Jones and Anderson 17 , Reference Kilfoy, Zhang and Park 63 ). Average nitrate intake in the whole cohort was somewhat lower than previously reported values (100–123 mg/d)( Reference Aschebrook-Kilfoy, Shu and Gao 16 , Reference Inoue-Choi, Jones and Anderson 17 , Reference Kilfoy, Zhang and Park 63 ). Given that the FFQ did not capture some less frequently consumed foods that contain higher amounts of nitrate, it is possible that total daily intake levels based on FFQ data are somewhat underestimated. In our study, avocado/guacamole and pickled vegetables/fruits were among the top twenty foods contributing to dietary nitrate intake based on 24HR data in both men and women. However, these food items were not included in our FFQ and nitrate intake from these food items was not captured. In future studies, it is important to ensure that known major contributors of dietary nitrate and nitrite in the study population are included in dietary intake assessment tools such as FFQ.

Food items that were identified as top contributors to dietary nitrate and nitrite intakes could result from high nitrate and nitrite concentrations in foods and/or frequent consumption. For example, the amount in weight of lettuce consumed daily was relatively small; however, because of its high nitrate concentration, lettuce was the top contributor to dietary nitrate intake in our study. Meanwhile, nitrite concentrations in bread and pasta were relatively low. However, these foods were commonly consumed in relatively larger amounts and therefore identified as major contributors to dietary nitrite intake in our study. Thus, it is important to consider nitrate and nitrite concentrations in foods as well as amounts of foods commonly consumed in a study population.

Our estimates are not intended to be comprehensive in terms of all published literature regarding nitrate and nitrite in foods. Rather, the estimates we generated reflect information in the published literature that is relevant to foods consumed in the USA. High correlations between daily nitrate and nitrite intake estimates from processed meats using the database we developed based on a literature review and estimated daily intakes using measured nitrate and nitrite values in processed meat products indicate that our database estimates are comparable to more recent estimates of nitrate and nitrite in processed meats. Future development of a nitrate and nitrite database using a similar approach and including laboratory analysis of nitrate and nitrite contents in other food items commonly available in the USA would be ideal.

Previous analyses of the calibration study of the NCI DHQ found that correlation coefficients (not energy-adjusted) between absolute intake estimates of macro- and micronutrients based on the FFQ and intake estimates based on 24HR ranged from 0·23 to 0·67, and attenuation factors ranged from 0·16 to 0·53( Reference Thompson, Kipnis and Midthune 34 ). When adjusted for energy intake, correlation coefficients and attenuation factors improved; estimated correlation coefficients ranged from 0·36 to 0·76, and attenuation factors ranged from 0·24 to 0·68. In the current analysis of dietary nitrate and nitrite intakes, findings were similar. Energy adjustment was performed in order to evaluate nutrient intake independent of total energy intake as well as to reduce measurement error( Reference Willett 64 ). Energy-adjusted correlation coefficients and attenuation factors for total nitrate, total nitrite, animal nitrite and plant nitrite between FFQ- and 24HR-based values observed in the current analysis were in a similar range to values for macro- and micronutrients in the previous analysis( Reference Thompson, Kipnis and Midthune 34 ). Using the FFQ-based energy-adjusted intake estimates, a true RR of 1·6 in the fifth quintile compared with the first quintile would be observed as 1·25 for nitrite and 1·32 for nitrate in men and 1·20 for nitrite and 1·31 for nitrate in women; whereas the observed RR would be 1·16–1·26 in men and 1·12–1·24 in women for nitrite and nitrate, respectively, if unadjusted intake estimates are used. The statistical power to detect a true RR of 1·5 using a two-sided test with a 5% significance level would be >99% for common cancers such as colon cancer (about 4800 cases accrued over 10 years of follow-up in the NIH–AARP Diet and Health Study) but lower for less common cancers such as stomach cancer (42% power with about 950 cases).

One of the strengths of our study is that our dietary nitrate and nitrite database was developed primarily from previously reported values in the USA and Canada and thus is appropriate for these countries. We expanded our data resources to different countries and time periods for certain minor food items, but the contributions of nitrate and nitrite intakes from these food items to daily nitrate or nitrite intake estimates are small. Another strength is that we measured nitrate and nitrite composition of processed meats, allowing comparison of these measured values to estimates based on values derived from our literature review.

There are a few limitations as well. The contents of nitrate and nitrite in certain foods, such as processed meats, may vary across countries/regions as well as over time due to differing processing practices( Reference White 56 , Reference Honikel 57 ). Further, the nitrate content in vegetables can vary by region( 58 ), because fertilizers containing ammonia or inorganic nitrates are commonly used for improving crop harvests and the extent of nitrogen fertilizer application to the crop has been associated with the level of nitrate in the plants( Reference Anjana and Iqbal 65 ). Organically grown foods have been reported to have lower nitrate concentrations( Reference Anjana and Iqbal 65 ). In future studies, information on study participants’ consumption of organically grown produce could be collected and food-specific nitrate estimates adjusted. Moreover, data on storage time and temperature, which can decrease nitrate and increase nitrite content due to nitrate reductase enzyme activity, and food processing techniques such as peeling, pureeing, fermentation and canning( 58 , Reference Chung, Chou and Hwang 66 , Reference Schuster and Lee 67 ) were not available and thus not taken into account in our database. Peeling of vegetables can decrease nitrate content by about 30% and boiling in water may reduce nitrate by about 50%; however, the degree of changes in nitrate and nitrite contents of vegetables due to processing can vary considerably by vegetable type( 58 , Reference Leszczynska, Filipiak-Florkiewicz and Cieslik 68 ). Lastly, our reference instrument, the 24HR, in the calibration study is not without error. Because the FFQ and the 24HR are both self-reported measurement tools, correlated errors exist in the two measurements( Reference Kaaks, Riboli and Esteve 69 ). Thus, objective reference measures such as biomarkers and data from feeding studies are ideal; however, they are usually not available in large population-based studies like ours. The 24HR is considered the least biased of the self-report instruments( 70 ) and thus its use as a reference instrument in calibration studies evaluating FFQ is a common practice in large population-based studies.

Conclusion

In conclusion, our findings indicate that dietary nitrate and nitrite intake estimates using the NCI DHQ were moderately correlated with intake estimates based on two 24HR. Given a large number of common cancers accrued in the NIH–AARP Diet and Health Study to date, studies of these cancers and other outcomes using dietary nitrate and nitrite intake estimates assessed using the NCI DHQ are likely to be able to detect moderate elevations in risk (e.g. RR≥1·5) in the highest v. lowest quantiles. Our attenuation factors should be used to de-attenuate or reduce measurement error inherent in risk estimates related to nitrate and nitrite intakes in future analyses in the NIH–AARP Diet and Health Study.

Acknowledgements

Financial support: This research was partially supported by the Intramural Research Program of the NCI, NIH, Department of Health and Human Services. M.I.-C. was partly supported by the Division of Intramural Research of the National Institute on Minority Health and Health Disparities, NIH. M.K.V.-B. was supported by the Cancer Prevention Fellowship at the NCI, NIH. B.A.-K. was supported by an NIH training grant (number TU2CA105666). Conflict of interest: None of the authors have conflicts of interest to disclose. Authorship: M.I.-C. contributed to data analyses, the interpretation of results and wrote the manuscript. M.K.V.-B. contributed to the interpretation of the results and writing of the manuscript. B.A.-K. contributed to the design of the study, data analyses, interpretation of the results and writing of the manuscript. A.J.C., A.F.S., F.E.T and R.S. contributed to the interpretation of the results and writing of the manuscript. M.H.W. designed the study, carried it out, and contributed to data analyses and the writing of the manuscript. All authors read and approved the final manuscript. Ethics of human subject participation: The data collection for the NIH–AARP Diet and Health Study was approved by the NCI and the Westsat, Inc. institutional review boards. Return or completion of FFQ and 24HR was considered to be informed consent.

Supplementary Material

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Figure 0

Table 1 Estimated median and interquartile range (IQR) of daily intakes of nitrate and nitrite (mg/d) by sex for the FFQ and the 24 h dietary recalls (24HR) in the calibration sub-study: NIH–AARP Diet and Health Study, 1995–1996

Figure 1

Table 2 Top twenty food items contributing to total dietary nitrate intake from the FFQ and 24 h dietary recalls (24HR) by sex in the calibration sub-study: NIH–AARP Diet and Health Study, 1995–1996

Figure 2

Table 3 Top twenty food items contributing to total dietary nitrite intake from the FFQ and 24 h dietary recalls (24HR) by sex in the calibration sub-study: NIH–AARP Diet and Health Study, 1995–1996

Figure 3

Table 4 Estimated correlation coefficients and attenuation factors between the FFQ and true intakes based on the 24 h dietary recalls using a measurement error model, unadjusted and adjusted for energy intake, in the calibration sub-study: the NIH–AARP Diet and Health Study, 1995–1996

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