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How does a simplified recipe collection procedure in dietary assessment tools affect the food group and nutrient intake distributions of the population

Published online by Cambridge University Press:  16 March 2020

Liangzi Zhang
Affiliation:
National Institute for Public Health and the Environment (RIVM), Bilthoven3721 MA, The Netherlands Division of Human Nutrition, Wageningen University & Research, Wageningen6708 PB, The Netherlands
Hendriek Boshuizen
Affiliation:
National Institute for Public Health and the Environment (RIVM), Bilthoven3721 MA, The Netherlands Division of Human Nutrition, Wageningen University & Research, Wageningen6708 PB, The Netherlands
Marga Ocké*
Affiliation:
National Institute for Public Health and the Environment (RIVM), Bilthoven3721 MA, The Netherlands Division of Human Nutrition, Wageningen University & Research, Wageningen6708 PB, The Netherlands
*
*Corresponding author: Marga Ocké, email marga.ocke@rivm.nl
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Abstract

Technology advancements have driven the use of self-administered dietary assessment methods in large-scale dietary surveys. Interviewer-assisted methods generally have a complicated recipe recording procedure enabling the adjustment from a standard recipe. In order to decide if this functionality can be omitted for self-administered dietary assessment, this study aimed to assess the extent of standard recipe modifications in the Dutch National Food Consumption Survey and measure the impact on the food group and nutrient intake distributions of the population when the modifications were disregarded. A two-scenario simulation analysis was conducted. Firstly, the individual recipe scenario omitted the full modifications to the standard recipes made by people who knew their recipes. Secondly, the modified recipe scenario omitted the modifications made by those who partially modified the standard recipe due to their limited knowledge. The weighted percentage differences for the nutrient and food group intake distributions between the scenarios and the original data set were calculated. The highest percentage of energy consumed through mixed dishes was 10 % for females aged 19–79 years. Comparing the combined scenario and the original data set, the average of the absolute percentage difference for the population mean intakes was 1·6 % across all food groups and 0·6 % for nutrients. The soup group (−6·6 %) and DHA (−2·3 %) showed the largest percentage difference. The recipe simplification caused a slight underestimation of the consumed amount of both foods (−0·2 %) and nutrients (−0·4 %). These results are promising for developing self-administered 24-hour recalls or food diary applications without complex recipe function.

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Full Papers
Creative Commons
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This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Authors 2020

Inappropriate dietary intakes have been recognised as major risk factors for developing chronic diseases(Reference Arens-Volland, Spassova and Bohn1,Reference Mozaffarian, Wilson and Kannel2) . Many countries, therefore, carry out national food consumption surveys to monitor food consumption and nutrient intakes of their populations(Reference Huybrechts, Aglago and Mullee3). The most frequently used dietary assessment methods in Europe for collecting national food consumption data are 24-hour recalls (24hR) and food records(Reference Rippin, Hutchinson and Evans4); both open methods aim to assess the intake of all foods and drinks on a specific day(s). 24hR require low literacy levels of participants and are less likely to alter eating behaviours than food records(Reference Ahluwalia, Dwyer and Terry5,Reference Jacques, Lemieux and Lamarche6) , whereas food records have less recalling bias(Reference Shim, Oh and Kim7). To collect harmonised data among the EU Member states, the European Food Safety Authority recommended collecting two non-consecutive 24hR for adults and two non-consecutive food records for children. Moreover, the use of validated and standardised software was advised, for example, GloboDiet (formerly known as Epic-Soft)(Reference Slimani, Casagrande and Nicolas810). The EFSA guidelines were based on the experiences and recommendations from various European projects, such as the EFCOSUM-project(Reference Brussaard, Lowik and Steingrimsdottir11), the EFCOVAL project(Reference de Boer, Slimani and van’t Veer12), the PANCAKE project(Reference Ocke, Brants and Dofkova13) and the PAN-EU project(Reference Ambrus, Horváth and Farkas14).

Although detailed food consumption information can be captured, the current interviewer-administered dietary assessment method induces high costs and logistic complications for data collection and handling(Reference Thompson, Subar, Coulston, Boushey, Ferruzzi and Delahanty15,Reference Ocké, Slimani and Brants16) . This limitation encourages efforts to explore solutions that could enhance the cost-efficiency of implementing large-scale nutrition monitoring surveys(Reference Touvier, Kesse-Guyot and Mejean17). The increased access to the Internet has fostered the development of many self-administered dietary assessment methods, including web-based and smartphone-based tools(Reference Taren, Dwyer and Freedman18). The overall quality of collected data from these tools is comparable with the interviewer-administered method(Reference Kirkpatrick, Subar and Douglass19). Participants have greater flexibility and fewer time constraints to complete the survey(Reference Touvier, Kesse-Guyot and Mejean17). Costs could be greatly reduced with automated coding and less interviewer involvement. Moreover, the incorporation of more objective food recognition features (e.g. photographs and barcodes) could enhance efficiency and reducing unintentional under-reporting in recording real-time food intake(Reference Ambrosini, Hurworth and Giglia20Reference Cade23). Review studies have indicated great potential for mobile dietary assessment applications to be used in large-scale studies(Reference Ambrosini, Hurworth and Giglia20,Reference Eldridge, Piernas and Illner24,Reference Sharp and Allman-Farinelli25) . Hence, moving towards self-administered tools from interviewer-administered tools seems a promising effort to explore for future national food consumption surveys(Reference Subar, Kirkpatrick and Mittl26). However, the complexity of self-reporting tools is a real concern for certain people to participate and complete the survey(Reference Touvier, Kesse-Guyot and Mejean17). Simplification of certain comprehensive features might be a crucial step in facilitating migrations from interviewer-administered tool to a self-administered tool.

The feature of recording mixed meal intake comprises complicated procedures in GloboDiet. Mixed recipes are collected through a specific recipe pathway(Reference Cosgrove, Flynn and Kiely27), which starts by automatically searching entered recipes within a pre-existing standard recipe list(Reference Slimani, Deharveng and Charrondiere9,Reference Raper, Perloff and Ingwersen28) . The standard recipe is entered into the system unless the participants know that the actual recipe they consumed has different ingredient than the standard recipe. In this case, ingredients in standard recipes can be replaced and the amounts of ingredients can be adjusted(Reference Thompson, Subar, Coulston, Boushey, Ferruzzi and Delahanty15,Reference Slimani, Ferrari and Ocke29) . Different from portion size estimation of reported single food items which are always estimated ‘as consumed’, for mixed recipes, more steps are needed to estimate the amount of each ingredient. After the portion size of the consumed mixed dish has been estimated, the ingredient amounts in the whole prepared recipe can be reported as raw or as consumed. With only raw amounts known, a consumed amount is calculated using pre-defined algorithms and standard food-specific coefficients (e.g. raw-to-cooked yield factors, density or edible part coefficients)(Reference Slimani, Deharveng and Charrondiere9,10) . This additional ingredient adjustment is complicated to implement and requires much work and knowledge from the participants. Besides, estimating ingredient amounts in a mixed meal is without question a difficult task, given that people already find it hard to estimate portions in a single food item(Reference Ambrus, Horváth and Farkas14). The common practice for current self-administered tools is to choose standard mixed dishes directly or to create new recipes from scratch(Reference Jacques, Lemieux and Lamarche6,Reference Leclercq, Arcella and Piccinelli30) . Although omitting modifications to the standard recipes can save much effort, it could potentially bias the actual ingredient intake. Hence, the impact of using standard recipes without modifications on the nutrient and food group intake at the population level should be investigated.

This study aims to provide evidence to support the decision on whether a standard recipe modification feature in self-administered 24hR or food diary apps is needed for large-scale dietary surveys. Firstly, we evaluated how often a home-prepared mixed meal is consumed in the Dutch diet and how often alterations were being made to standard recipes. Subsequently, we did a simulation analysis using national survey data in which standard recipes were adjusted by the interviewers and assessed the impact of ignoring these changes but using the standard ingredients. We then compared the observed food group and nutrient intake distributions of the population between the original and simulated data.

Methods

Data collection

In this study, the importance of recipes in the Dutch diet was analysed and a simulation study was conducted using the data of the Dutch National Food Consumption Survey 2012–2016(Reference Van Rossum, Nelis and Wilson31). This survey was conducted among 4313 Dutch men and women aged 1–79 years old. Subjects were excluded if they were pregnant, lactating or institutionalised. Participants completed a questionnaire covering various background factors, such as educational level, working status, native country, family composition, various lifestyle factors, such as patterns of physical activity, smoking, use of alcoholic beverages and various general characteristics of the diet. Dietary intake of participants was collected through two 24hR on non-consecutive days with 2–6 weeks in between. The 24hR for children between 1 and 15 years old and older adults between 70 and 79 years old were collected by face-to-face interviews by trained dietitians with a food diary completed 1 day before the interview as an aid. For children aged 1 to 8 years, their parents or caretakers were interviewed. The 24hR for 16- to 70-year-olds were conducted through two telephone interviews. In both the face-to-face and the telephone-based 24hR interviews, a computer-assisted software called GloboDiet developed by the International Agency for Research on Cancer was used(Reference Slimani, Casagrande and Nicolas8).

Current recipe collection

The feature within GloboDiet that could record mixed meal intakes was called the recipe pathway. As a starting point, a standard recipe list with 378 pre-defined recipes embedded in the recipe pathway was used if a pre-defined recipe resembled the mixed dish reported by the participants. Then, participants were asked whether the recipe was commercial or home-made. Commercial recipes were those with brand names from commercial sources such as supermarkets and restaurants. For home-prepared dishes, different procedures were followed depending on the participant’s knowledge of their dishes. For those who were aware of the detailed information, an individual recipe was created by going through several steps to modify the standard ingredients according to their situations. For people not knowing much about their dishes, standard recipes were applied instead. For situations that ingredients were visually recognised in the mixed dish, ingredients in standard recipes were substituted, this type of recipes was regarded as a modified recipe. For ingredients that were reported as raw, raw-to-cooked yield factors and edible part coefficients were multiplied with the raw amount to calculate the consumed amount. A complete flow chart explaining the recipe pathway can be found in Fig. 1. All reported food items, including the recipe ingredients, were linked to the most appropriate food code in the Dutch National Food Composition Database (NEVO table 2016/5.0)(32) by trained dietitians. Each food item/ingredient was categorised according to the GloboDiet food group classification system(Reference Van Rossum, Buurma-Rethans and Vennemann33).

Fig. 1. Flow chart of the mixed meal pathway in GloboDiet. Dishes were defined as home-made dishes if they could be found in the pre-defined recipe list and were not derived from commercial sources. Individual recipes were defined when people knew the information, they could substitute the predefined ingredients or adjust the amount of the ingredients of a standard recipe. For those who did not know the recipe, standard recipes would be used instead. For situations where the participants partly knew the recipe, adjustments of the ingredients were possible. These were regarded as modified recipes. New recipes were created if the name of the dish could not be found in the pre-defined recipe list.

Simulation procedure

A two-scenario simulation study was conducted to evaluate whether the distributions of population nutrient and food group intake changed significantly when only standard recipes were used. The individual recipe scenario only ignored modifications to standard recipes for people who knew the recipes. In other words, the ingredients of individual recipes were switched to ingredients of standard recipes. The modified recipe scenario only ignored modifications to standard recipes during or after the interview for people who did not know all details of the recipe (but they could see some ingredients or had some insight in the used ingredients but not amounts). In both scenarios, the portion consumed for each recipe was kept the same with the original individual or modified recipe. The amount of ingredients was calculated according to the predefined percentage of the recipe total weight. All the ingredients were linked to the food code in the NEVO automatically if the same food item was linked already in the original database; otherwise, they were linked by dietitians. The individual recipe scenario and the modified recipe scenario were also taken together in a combined scenario. Scenario analyses were run with all participants including those that did not use recipes, and in the subset of participants that did consume either mixed recipes that were reported as individual recipes or modified recipes. The details of preparing commercial recipes were not known by the participants, and newly created recipes were created from scratch without having a corresponding standard recipe to compare with. Hence, the ingredients were kept unchanged for recipes that were originally commercial, for unmodified standard recipes and for new recipes.

Data analysis

The following study population characteristics were summarised. The highest educational level of the participants or the parents/carers of participants under the age of 19 years, who is the main earner of the family was recorded. Educational level was categorised into low (primary education, lower vocational education and advanced elementary education), middle (intermediate vocational education and higher secondary education) and high (higher vocational education and university). Percentages of energy and macronutrient intake consumed through recipes from the individual’s total intake were calculated for the total population and per age and sex category. Percentage of energy intake consumed through recipes per eating occasion, recipe types and recipe groups was calculated. All population means were weighted for socio-demographic characteristics, day of the week and season of data collection, to give results that are representative for the Dutch population and representative for all days of the week and all seasons.

The nutrient level and quantities of food groups consumed were summarised per person by day and averaged over 2 days in both the data set with original ingredients and the one with ingredients from standard recipes. The weighted mean, median, 5th, 25th, 75th, 95th percentile and the percentage differences of consumption per nutrient and food group between the original and the new data set were calculated for the total population and within people who used individual and modified recipes in each scenario. The nutrient intake estimation was conducted for two scenarios, both separately and combined. The number of food items in each food group was also compared between the original state and the combined scenario. The descriptive summary and population nutrient intake distributions were conducted using the SAS 9.4; the replacement of ingredients from standard recipes to original data set was conducted using R x64 3.5.0. The percentage differences between the original and newly linked data set were calculated using Excel 2016 software.

Results

The general characteristics of the survey participants are shown in Table 1. The study included equal percentages for each age–sex group. The average BMI for boys (18·0 kg/m2) and males (26·0 kg/m2) were similar with those for girls (18·1 kg/m2) and females (26·6 kg/m2), respectively. More than half of the boys and girls had a highly educated head of the household (54 %). More adult males (38 %) had a higher education level than females (28 %). The mean intake of energy per d was generally higher in boys (8318 kJ) and males (10 640 kJ) than in girls (7050 kJ) and females (7782 kJ). The percentages of energy consumed through mixed dishes were lower or equal to 10 % for the four age–sex groups; adult female (10 %) consumed more energy through mixed dishes than other age–sex groups.

Table 1. General characteristics of the population aged 1–79 years old from the Dutch National Food Consumption Survey 2012–2016, weighted for socio-demographic characteristics and season, and day of the week

(Mean values and standard deviations; numbers and percentages)

* To convert kcal to kJ, multiply by 4·184.

Fig. 2 illustrates the percentage of energy consumed through mixed dishes differentiated by eating occasions, by recipe types (new, individual, modified, standard) and by recipe groups based on the food group of the main ingredients. Dinner was the main occasion for consuming mixed dishes (73·2 %). More than half of the people who consumed mixed dishes knew the content of the recipe and reported individual recipes (62·9 %). The modified recipes (15·1 %) were reported as the second most frequent recipe type. Among all the recipe groups, energy from cereal-based (52·5 %) and vegetable-based (22·6 %) mixed dishes was higher than other recipe groups.

Fig. 2. Energy consumed through mixed dishes partitioned (%) by different occasions, recipe types and recipe groups from the Dutch National Food Consumption Survey 2012–2016.

Stratified by food groups, the impact of the combined scenario on the consumed amount of ingredients at a population level is shown in Table 2. In the individual recipe scenario, we disregarded modifications made by people who knew their recipes, while in the modified recipe scenario, the substitutions made by people who did not know the exact recipes were disregarded. Detailed results for sub-food groups can be found in online Supplementary Appendix 1. From Table 2, the average of the percentage difference in mean intakes over all food groups was −0·2 %, while the average of the absolute percentage difference was 1·6 %. For eight out of seventeen food groups, the percentage difference in mean consumed amount was larger than 1 % or lower than −1 % between the combined scenario and the original data set. Among the food groups that were overestimated by the standard recipes, meat has the highest percentage difference (3·6 %). Specifically, ingredients from the meat group were overestimated the most by the standard recipes of hamburgers and meat wraps. Potatoes (1·2 %) and legumes (0·7 %) also showed an overestimation of the consumed amount but an underestimation in the count of the food ingredients by the standard recipes. Another observation was that the standard recipes tended to be less specific for certain food groups. For example, there were more unclassified meat products in standard recipes than in individual recipes (online Supplementary Appendix 1). A similar finding was also observed in the fats group.

Table 2. Food group intake distribution of the population between the combined scenario and the original data

(Mean values; medians; 75th and 95th percentiles (P75 and P95, respectively))

|percentage difference|, absolute value of percentage difference.

For the food groups with an underestimated consumed amount by the standard recipes, soups and stocks had been underestimated to the greatest extent in average intake (−6·6 %). The underestimation was mainly due to the existence of water in standard recipes of soups that were made from soup powders, whereas stock from the soup group was reported in individual and modified recipes. Similarly, the total amount of vegetables was underestimated by the standard recipes, especially in spaghetti bolognese, Greek salad, chicken-related dishes (e.g. wrap, curry and siam) and in different kinds of soups. On the contrary, there was a higher occurrence of different vegetables in standard ingredients. When we looked at the detailed results of food subgroups (online Supplementary Appendix 1), fruiting vegetables, cabbages, mushrooms and stalk vegetables were the main contributors to the contradictory result. In other words, these subgroups were used more often in standard recipes but in small amounts.

As for the results of the nutrient analysis, Table 3 shows the percentage difference and the difference of the actual amount of twenty-six nutrients between the combined scenario and the original data set within the total population. The average of the percentage difference was 0·6 % for the absolute mean intakes across all nutrients. The averages for the other five percentiles of the intake distributions were slightly higher; the 25th percentile has the highest average of 1·0 %. The percentage difference in mean of five nutrients was larger than 1·0 % or lower than −1·0 %. Most nutrient intakes (73 %) were underestimated by using standard recipes, with an average percentage difference of −0·4 % for the population mean intakes. The largest negative mean percentage difference was in DHA (−2·3 %) with an actual amount difference of −2·6 mg, while the largest positive mean percentage difference was in vitamin B1 (1·8 %) with an actual amount difference of 0·02 mg. A relatively larger percentage difference with a low actual amount difference was also observed in trans-fatty acids (−1·1 %, −0·01 g). To compare the impact to the total population with only those who consumed mixed dishes, seven nutrients that have higher percentage differences than the other nineteen nutrients from the combined scenario are included in Fig. 3(a). The impact within people who consumed mixed dishes was larger than the impact on the total population for every nutrient. When we looked at online Supplementary Appendix 2b that has the percentage, and actual amount difference for all nutrients, the effect within people consumed mixed dishes has more nutrients with a mean percentage difference larger than 1·0 % or lower than −1·0 % than within total population.

Table 3. Nutrient intake distribution of the population between the combined scenario and the original data

(Mean values; medians; 5th, 25th, 75th, 95th percentiles (P5, P25, P75 and P95, respectively))

ALA, α-linolenic acid; TFA, trans-fatty acids; |percentage difference|, absolute value of percentage difference.

* To convert kcal to kJ, multiply by 4·184.

Fig. 3. (a) Percentage difference of the mean intake of seven nutrients of the total population and within people who consumed mixed dishes between the combined scenario and the original data set. (b) Percentage difference of the mean intake of seven nutrients of the total population between each scenario and the original data set. (a) , Mean intake of people consumed mixed dishes; , mean intake of total population. (b) , Mean intake in individual recipe scenario; , mean intake in modified recipe scenario. TFA, trans-fatty acids.

The separate effects of each scenario on the nutrient intake of the total population are shown in Fig. 3(b). Either scenario has a smaller impact than the combined effect as shown in Fig. 3(a). The individual recipe scenario has a larger impact on the nutrient intake distribution than the modified recipe scenario. The results with all nutrients for each scenario separately are shown in online Supplementary Appendix 3a and 3b. The individual recipe scenario has an average of the absolute mean percentage difference of 0·5 % with five nutrients larger than 1·0 % or lower than −1·0 %. While the modified recipe scenario has an average of the absolute mean percentage difference of 0·2 % with all nutrients fell within –1·0 % to 1·0 %. About 63 % of the nutrients were underestimated in scenario 1, while 88 % of the nutrients were underestimated in scenario 2. Fig. 3(a) and (b) also illustrate that the intake of most nutrients was underestimated by using standard recipes. Exceptions were vitamin B1 and α-linolenic acid. Vitamin B1 was overestimated in all scenarios. α-Linolenic acid showed contradictory results between the two scenarios and was higher in combined scenarios than the original data set.

Discussion

A replacement of complete recipe recording steps with a simplified recipe recording procedure would help improve the cost-effectiveness of recording mixed meal intake and was explored to be used in the Dutch National Food Consumption Surveys (DNFCS). Therefore, the impact of replacing individual with standard recipes was investigated using data collected in DNFCS 2012–2016. With a few exceptions, this study found that using only pre-defined standard recipes caused <1 % differences in mean nutrient intakes and food consumption compared with standard recipes being modified according to participant declaration. The main contributing factor for the insignificant impact was the small portion of the energy consumed (approximately 10 %) from home-made mixed meals, according to DNFCS 2012–2016. This observation is in line with the trend of preparing less mixed dishes at home due to people’s tendency to eating quick and ready meals(Reference Geurts, Bakel and Van Rossum34). Also, compared with countries where mixed dishes were dominant(Reference Yun, Choi and Kim35), the western diet includes relatively few dishes that mix all ingredients(Reference Wang, Gellynck and Verbeke36). An additional explaining factor was that 20 % of the home-made mixed meals were entered as new recipes or unmodified standard recipes, both of which could not be simplified in this study.

Despite the small overall difference in main food groups, a larger difference was found in some subgroups of the main food group. The reason is that the standard recipes contained more ingredients from undefined food subgroups, while individual recipes contained more ingredients from specific food subgroups. A seemingly contradictory outcome was found in several food groups where the average consumed amount was lower, while the number of food items was higher in standard recipes, the vegetable group is a notable example of this. One possible explanation might be that the participants deemed vegetables as healthy foods hence overestimated the consumed amount in individual recipes(Reference Macdiarmid and Blundell37). Another reason is that the standard recipes in our study were purposely created with more varieties of vegetables in smaller portion size of each type in order to make them representative for different versions of a recipe (lasagne with mushrooms, or with leek, or with carrots).

The change in the ingredients would inevitably cause a change in nutrient intake(Reference Fitt, Mak and Stephen38,Reference Fitt, Prynne and Teucher39) . The overall difference was small across nutrients with only a few exceptions. DHA has the largest average percentage difference and was underestimated when replacing individual recipes with standard recipes (−2·3 %), which was mainly due to the fact that people put fish in dishes that do not have fish in the corresponding standard recipes (e.g. oven dishes, salads and foreign dishes). On the contrary, vitamin B1 has the largest positive average percentage difference of 1·8 %, which was probably due to the higher average amount of dairy products, cereals and meat in standard recipes. These differences seem unsubstantial for dietary monitoring purposes with a large sample size. However, to better accommodate real-life variations, the development of future standard recipes should consider the fact that people tend to take fewer varieties from certain food groups (e.g. vegetables) but higher amounts of available varieties in certain dishes. The specificity of food subgroups should be defined in standard recipes with ingredients from, for example, the meat group. Also, acknowledge that people might exclude or replace the main ingredients of certain dishes with ingredients from other food groups. Without the modification functionality, identical standard recipes with different main ingredient options should be listed individually, with key ingredients shown in the recipe title for easier identification. A study comparing nutrition results from more varieties of unmodifiable standard recipes with results from original modifiable standard recipes could provide more relevant insight.

As far as we know, this is the first study investigating the impact of replacing individual with standard recipes. The study contained a large sample size (n 4313), the population was representative of the Dutch population and the survey results were representative for all days of the week and all seasons. The study results are transferable to surveys which use GloboDiet as their main instrument of collecting dietary data; however, it may not apply to countries where mixed dishes are dominant in the diet. Unlike many other large food consumption surveys that allocate a composite dish into one food group(Reference Sui, Raubenheimer and Rangan40,Reference Agudo41) , surveys that use GloboDiet disaggregate ingredients of recipes and distinguish the food group of every ingredient(Reference Roe, Bell and Oseredczuk42). The disaggregation simplifies the procedure of replacing old ingredients with standard ingredients and calculating nutrient and food group difference between the original and new scenarios. Another advantage of the study is that the between-person variation did not impact the results since the manipulated data set was derived from the original data set, and thus on data from the same participants(Reference Macdiarmid and Blundell37).

There are also some limitations to the study. Firstly, some of the complex foods were not considered as recipes in GloboDiet(Reference Slimani, Deharveng and Charrondiere9), such as cakes, biscuits, desserts, sauces and some snacks. As a result, the percentage of the home-prepared mixed meal might have been underestimated as well as the impact on intake. However, the influence is estimated to be small due to a high proportion of eating industrially prepared food and out-of-home eating for sweets, especially for northern European countries such as the Netherlands(Reference Fitt, Prynne and Teucher39,Reference Slimani, Deharveng and Southgate43,Reference Orfanos, Naska and Trichopoulos44) . Secondly, only the impact on food groups and nutrients was considered, while other aspects related to food can also be important. For example, since standard recipes contain mostly generic food items, this would underestimate the consumption of branded or specific food items and hence their environmental impact as well as exposure to potentially harmful substances of the population. Lastly, the quality, completeness and specificity of the standard recipe database are also an essential aspect in estimating the actual intake of the population. In our study, the standard recipe list was derived from a widely used cookbook in the Netherlands; the deviation of standard recipes from the real-life intake is unknown.

As opposed to creating a new individual recipe from scratch, good-quality standard recipes could save time, supplement commonly forgotten ingredients such as seasonings(Reference Shim, Oh and Kim7,Reference Yun, Choi and Kim35) and correct misreporting out of embarrassment and inconvenience(Reference Macdiarmid and Blundell45). Hence, standard recipes were embedded in most of the dietary apps and software, as well as dietary assessment surveys in many countries(Reference Fitt, Prynne and Teucher39,Reference Shinozaki, Murakami and Masayasu46) . While numerous commercial and research-based apps have the option of creating new individual recipes(Reference Zhang, Nawijn and Boshuizen47), there are no self-administered methods incorporated modifiable standard recipes as far as we know(48). The reason for the less popularity of modifiable standard recipes in self-administered software is that incorporating recipe modification would increase the time and effort for the participants and part of the respondents might not provide valuable answers due to their limited knowledge about the recipe. Also, when applying technologies like photo recognition and analysis in smartphones(Reference Macdiarmid and Blundell45,Reference Bucher, Weltert and Rollo49,Reference Yang, Jia and Bucher50) , challenges exist especially for mixed dishes where not all ingredients are visible(Reference Naska, Lagiou and Lagiou51).

According to the study results and current limitation on technology, a recipe function that could balance the workload of participants and capture deviation with real-life intakes is proposed. In self-reported food diaries or 24hR, participants could choose well-described unchangeable standard recipes if they are representative for the real preparation habits of the population. For participants that have consumed a mixed dish that cannot be classified as one of the available recipes, an individual recipe could be created. In this way, the number of participants that are requested to provide recipe details is limited. Such an approach needs to be evaluated in terms of usability for the users and in terms of the validity of the consumption data.

Conclusion

Disregarding modification steps of a recipe functionality in 24hR software has a small impact on the distribution of food group consumption and nutrient intake of the Dutch population. Therefore, there seems to be minor loss in validity for food group and nutrient intake if no recipe function is available and mixed dishes are treated as food (with standard ingredients). Using good quality standard recipes without modification is a promising solution for reducing participant burden on self-administered 24hR or food diary.

Acknowledgements

We thank Zohreh Ghameshlou and Maryse Niekerk for their assistance explaining the data and suggestions given to the project. We thank Ido Toxopeus and Marjolein de Jong for providing feedback to the manuscript.

This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. DNFCS 2012-2016 was funded by the Dutch Ministry of Health, Welfare and Sports.

M. O. formulated the research question, M. O., H. B. and L. Z. designed the study, L. Z. carried out the simulation study, L. Z. analysed data, H. B. provided guidance on methodology and data analysis, L. Z. wrote the manuscript, M. O. and H. B. edited the manuscript and L. Z. had primary responsibility for final content. All authors have read and approved the final manuscript.

The authors declare that there are no conflicts of interest.

Supplementary material

For supplementary material referred to in this article, please visit https://doi.org/10.1017/S0007114520000999

References

Arens-Volland, AG, Spassova, L & Bohn, T (2015) Promising approaches of computer-supported dietary assessment and management-current research status and available applications. Int J Med Inform 84, 9971008.CrossRefGoogle ScholarPubMed
Mozaffarian, D, Wilson, PWF & Kannel, WB (2008) Beyond established and novel risk factors: lifestyle risk factors for cardiovascular disease. Circulation 117, 30313038.CrossRefGoogle ScholarPubMed
Huybrechts, I, Aglago, EK, Mullee, A, et al. (2017) Global comparison of national individual food consumption surveys as a basis for health research and integration in national health surveillance programmes. Proc Nutr Soc 76, 549567.CrossRefGoogle ScholarPubMed
Rippin, H, Hutchinson, J, Evans, C, et al. (2018) National nutrition surveys in Europe: a review on the current status in the 53 countries of the WHO European region. Food Nutr Res 62, 10.29219/fnr.v62.1362.CrossRefGoogle ScholarPubMed
Ahluwalia, N, Dwyer, J, Terry, A, et al. (2016) Update on NHANES dietary data: focus on collection, release, analytical considerations, and uses to inform public policy. Adv Nutr 7, 121134.CrossRefGoogle ScholarPubMed
Jacques, S, Lemieux, S, Lamarche, B, et al. (2016) Development of a web-based 24-h dietary recall for a French–Canadian population. Nutrients 8, E724.CrossRefGoogle ScholarPubMed
Shim, J-S, Oh, K & Kim, HC (2014) Dietary assessment methods in epidemiologic studies. Epidemiol Health 36, e2014009e2014009.CrossRefGoogle ScholarPubMed
Slimani, N, Casagrande, C, Nicolas, G, et al. (2011) The standardized computerized 24-h dietary recall method EPIC-Soft adapted for pan-European dietary monitoring. Eur J Clin Nutr 65, Suppl 1, S5S15.CrossRefGoogle ScholarPubMed
Slimani, N, Deharveng, G, Charrondiere, RU, et al. (1999) Structure of the standardized computerized 24-h diet recall interview used as reference method in the 22 centers participating in the EPIC project. European Prospective Investigation into Cancer and Nutrition. Comput Methods Programs Biomed 58, 251266.CrossRefGoogle ScholarPubMed
European Food Safety Authority (2014) Guidance on the EU Menu methodology. EFSA J 12, 3944.Google Scholar
Brussaard, JH, Lowik, MR, Steingrimsdottir, L, et al. (2002) A European food consumption survey method – conclusions and recommendations. Eur J Clin Nutr 56, Suppl. 2, S89S94.CrossRefGoogle ScholarPubMed
de Boer, EJ, Slimani, N, van’t Veer, P, et al. (2011) The European Food Consumption Validation Project: conclusions and recommendations. Eur J Clin Nutr 65, S102107.CrossRefGoogle ScholarPubMed
Ocke, M, Brants, H, Dofkova, M, et al. (2015) Feasibility of dietary assessment methods, other tools and procedures for a pan-European food consumption survey among infants, toddlers and children. Eur J Nutr 54, 721732.CrossRefGoogle ScholarPubMed
Ambrus, Á, Horváth, Z, Farkas, Z, et al. (2013) Pilot study in the view of a pan-European dietary survey – adolescents, adults and elderly. EFSA Support Publ 10, 508E-n/a.Google Scholar
Thompson, FE & Subar, AF (2017) Dietary assessment methodology. In Nutrition in the Prevention and Treatment of Disease, pp. 548 [Coulston, AM, Boushey, CJ, Ferruzzi, MG and Delahanty, LM, editors]. Amsterdam: Elsevier.CrossRefGoogle Scholar
Ocké, MC, Slimani, N, Brants, H, et al. (2011) Potential and requirements for a standardized pan-European food consumption survey using the EPIC-Soft software. Eur J Clin Nutr 65, S48.CrossRefGoogle ScholarPubMed
Touvier, M, Kesse-Guyot, E, Mejean, C, et al. (2011) Comparison between an interactive web-based self-administered 24 h dietary record and an interview by a dietitian for large-scale epidemiological studies. Br J Nutr 105, 10551064.CrossRefGoogle Scholar
Taren, D, Dwyer, J, Freedman, L, et al. (2002) Dietary assessment methods: where do we go from here? Public Health Nutr 5, 10011003.CrossRefGoogle Scholar
Kirkpatrick, SI, Subar, AF, Douglass, D, et al. (2014) Performance of the Automated Self-Administered 24-hour Recall relative to a measure of true intakes and to an interviewer-administered 24-h recall. Am J Clin Nutr 100, 233240.CrossRefGoogle Scholar
Ambrosini, GL, Hurworth, M, Giglia, R, et al. (2018) Feasibility of a commercial smartphone application for dietary assessment in epidemiological research and comparison with 24-h dietary recalls. Nutr J 17, 5.CrossRefGoogle ScholarPubMed
Illner, AK, Freisling, H, Boeing, H, et al. (2012) Review and evaluation of innovative technologies for measuring diet in nutritional epidemiology. Int J Epidemiol 41, 11871203.CrossRefGoogle ScholarPubMed
Maringer, M, van’t Veer, P, Klepacz, N, et al. (2018) User-documented food consumption data from publicly available apps: an analysis of opportunities and challenges for nutrition research. Nutr J 17, 59.CrossRefGoogle ScholarPubMed
Cade, JE (2017) Measuring diet in the 21st century: use of new technologies. Proc Nutr Soc 76, 276282.CrossRefGoogle ScholarPubMed
Eldridge, AL, Piernas, C, Illner, AK, et al. (2018) Evaluation of new technology-based tools for dietary intake assessment – an ILSI Europe dietary intake and exposure task force evaluation. Nutrients 11, E55.CrossRefGoogle ScholarPubMed
Sharp, DB & Allman-Farinelli, M (2014) Feasibility and validity of mobile phones to assess dietary intake. Nutrition 30, 12571266.CrossRefGoogle ScholarPubMed
Subar, AF, Kirkpatrick, SI, Mittl, B, et al. (2012) The automated self-administered 24-hour dietary recall (ASA24): a resource for researchers, clinicians, and educators from the National Cancer Institute. J Acad Nutr Diet 112, 11341137.CrossRefGoogle ScholarPubMed
Cosgrove, M, Flynn, A & Kiely, M (2005) Impact of disaggregation of composite foods on estimates of intakes of meat and meat products in Irish adults. Public Health Nutr 8, 327337.CrossRefGoogle ScholarPubMed
Raper, N, Perloff, B, Ingwersen, L, et al. (2004) An overview of USDA’s dietary intake data system. J Food Compos Anal 17, 545555.CrossRefGoogle Scholar
Slimani, N, Ferrari, P, Ocke, M, et al. (2000) Standardization of the 24-hour diet recall calibration method used in the European Prospective Investigation into Cancer and Nutrition (EPIC): general concepts and preliminary results. Eur J Clin Nutr 54, 900917.CrossRefGoogle ScholarPubMed
Leclercq, C, Arcella, D & Piccinelli, R, et al. (2009) The Italian National Food Consumption Survey INRAN-SCAI 2005-06: main results in terms of food consumption. Public Health Nutr 12, 25042532.CrossRefGoogle ScholarPubMed
Van Rossum, CT, Nelis, K, Wilson, C, et al. (2018) National dietary survey in 2012-2016 on the general population aged 1–79 years in the Netherlands. EFSA Support Publ EN-1488. 25 pp.Google Scholar
RIVM (2011) NEVO-table. Series NEVO-table. https://nevo-online.rivm.nl/ (accessed July 2018).Google Scholar
Van Rossum, C, Buurma-Rethans, E, Vennemann, F, et al. (2016) The diet of the Dutch: results of the first two years of the Dutch National Food Consumption Survey 2012–2016. Bilthoven, The Netherlands: National Institute for Public Health and the Environment.Google Scholar
Geurts, M, Bakel, AMv, Van Rossum, CT, et al. (2016) Food Consumption in the Netherlands and Its Determinants. Bilthoven, The Netherlands: National Institute for Public Health and the Environment.Google Scholar
Yun, SH, Choi, B-Y & Kim, M-K (2009) The effect of seasoning on the distribution of nutrient intakes by a food-frequency questionnaire in a rural area. Korean J Nutr 42, 246255.CrossRefGoogle Scholar
Wang, O, Gellynck, X & Verbeke, W (2016) Perceptions of Chinese traditional food and European food among Chinese consumers. Br Food J 118, 28552872.CrossRefGoogle Scholar
Macdiarmid, J & Blundell, J (1998) Assessing dietary intake: who, what and why of under-reporting. Nutr Res Rev 11, 231253.CrossRefGoogle ScholarPubMed
Fitt, E, Mak, TN, Stephen, AM, et al. (2010) Disaggregating composite food codes in the UK National Diet and Nutrition Survey food composition databank. Eur J Clin Nutr 64, S32.CrossRefGoogle ScholarPubMed
Fitt, E, Prynne, CJ, Teucher, B, et al. (2009) National diet and nutrition survey: assigning mixed dishes to food groups in the nutrient databank. J Food Compos Anal 22, S52S56.CrossRefGoogle Scholar
Sui, Z, Raubenheimer, D & Rangan, A (2017) Consumption patterns of meat, poultry, and fish after disaggregation of mixed dishes: secondary analysis of the Australian National Nutrition and Physical Activity Survey 2011–12. BMC Nutr 3, 52.CrossRefGoogle ScholarPubMed
Agudo, A (2005) Measuring Intake of Fruit and Vegetables. Kobe, Japan: World Health Organization.Google Scholar
Roe, M, Bell, S, Oseredczuk, M, et al. (2013) Updated food composition database for nutrient intake. EFSA Support Publ 10, 355E.Google Scholar
Slimani, N, Deharveng, G, Southgate, DA, et al. (2009) Contribution of highly industrially processed foods to the nutrient intakes and patterns of middle-aged populations in the European Prospective Investigation into Cancer and Nutrition study. Eur J Clin Nutr 63, Suppl. 4, S206S225.CrossRefGoogle ScholarPubMed
Orfanos, P, Naska, A, Trichopoulos, D, et al. (2007) Eating out of home and its correlates in 10 European countries. The European Prospective Investigation into Cancer and Nutrition (EPIC) study. Public Health Nutr 10, 15151525.CrossRefGoogle ScholarPubMed
Macdiarmid, JI & Blundell, JE (1997) Dietary under-reporting: what people say about recording their food intake. Eur J Clin Nutr 51, 199200.CrossRefGoogle ScholarPubMed
Shinozaki, N, Murakami, K, Masayasu, S, et al. (2019) Development and simulated validation of a dish composition database for estimating food group and nutrient intakes in Japan. Public Health Nutr 22, 23672380.CrossRefGoogle ScholarPubMed
Zhang, L, Nawijn, E, Boshuizen, H, et al. (2019) Evaluation of the recipe function in popular dietary smartphone applications, with emphasize on features relevant for nutrition assessment in large-scale studies. Nutrients 11, E200.CrossRefGoogle ScholarPubMed
National Cancer Institute (2018) Instructions for the ASA24 Researcher Website: ASA24-2018 (U.S. version only). Rockville, MD: National Cancer Institute.Google Scholar
Bucher, T, Weltert, M, Rollo, ME, et al. (2017) The international food unit: a new measurement aid that can improve portion size estimation. Int J Behav Nutr Phys Act 14, 124.CrossRefGoogle ScholarPubMed
Yang, Y, Jia, W, Bucher, T, et al. (2019) Image-based food portion size estimation using a smartphone without a fiducial marker. Public Health Nutr 22, 11801192.Google ScholarPubMed
Naska, A, Lagiou, A & Lagiou, P (2017) Dietary assessment methods in epidemiological research: current state of the art and future prospects. F1000Res 6, 926.CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1. Flow chart of the mixed meal pathway in GloboDiet. Dishes were defined as home-made dishes if they could be found in the pre-defined recipe list and were not derived from commercial sources. Individual recipes were defined when people knew the information, they could substitute the predefined ingredients or adjust the amount of the ingredients of a standard recipe. For those who did not know the recipe, standard recipes would be used instead. For situations where the participants partly knew the recipe, adjustments of the ingredients were possible. These were regarded as modified recipes. New recipes were created if the name of the dish could not be found in the pre-defined recipe list.

Figure 1

Table 1. General characteristics of the population aged 1–79 years old from the Dutch National Food Consumption Survey 2012–2016, weighted for socio-demographic characteristics and season, and day of the week(Mean values and standard deviations; numbers and percentages)

Figure 2

Fig. 2. Energy consumed through mixed dishes partitioned (%) by different occasions, recipe types and recipe groups from the Dutch National Food Consumption Survey 2012–2016.

Figure 3

Table 2. Food group intake distribution of the population between the combined scenario and the original data(Mean values; medians; 75th and 95th percentiles (P75 and P95, respectively))

Figure 4

Table 3. Nutrient intake distribution of the population between the combined scenario and the original data(Mean values; medians; 5th, 25th, 75th, 95th percentiles (P5, P25, P75 and P95, respectively))

Figure 5

Fig. 3. (a) Percentage difference of the mean intake of seven nutrients of the total population and within people who consumed mixed dishes between the combined scenario and the original data set. (b) Percentage difference of the mean intake of seven nutrients of the total population between each scenario and the original data set. (a) , Mean intake of people consumed mixed dishes; , mean intake of total population. (b) , Mean intake in individual recipe scenario; , mean intake in modified recipe scenario. TFA, trans-fatty acids.

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