Hostname: page-component-586b7cd67f-g8jcs Total loading time: 0 Render date: 2024-11-22T06:59:23.212Z Has data issue: false hasContentIssue false

Relative validity of a short screener to assess diet quality in patients with severe obesity before and after bariatric surgery

Published online by Cambridge University Press:  04 July 2022

Laura Heusschen*
Affiliation:
Vitalys Obesity Clinic, Part of Rijnstate Hospital, Arnhem, 6800 TA, The Netherlands Divison of Human Nutrition and Health, Wageningen University, Wageningen, The Netherlands
Agnes AM Berendsen
Affiliation:
Divison of Human Nutrition and Health, Wageningen University, Wageningen, The Netherlands
Michiel GJ Balvers
Affiliation:
Divison of Human Nutrition and Health, Wageningen University, Wageningen, The Netherlands
Laura N Deden
Affiliation:
Vitalys Obesity Clinic, Part of Rijnstate Hospital, Arnhem, 6800 TA, The Netherlands
Jeanne HM de Vries
Affiliation:
Divison of Human Nutrition and Health, Wageningen University, Wageningen, The Netherlands
Eric J Hazebroek
Affiliation:
Vitalys Obesity Clinic, Part of Rijnstate Hospital, Arnhem, 6800 TA, The Netherlands Divison of Human Nutrition and Health, Wageningen University, Wageningen, The Netherlands
*
*Corresponding author: Email [email protected]
Rights & Permissions [Opens in a new window]

Abstract

Objective:

To determine the relative validity and reproducibility of the Eetscore FFQ, a short screener for assessing diet quality, in patients with (severe) obesity before and after bariatric surgery (BS).

Design:

The Eetscore FFQ was evaluated against 3-d food records (3d-FR) before (T0) and 6 months after BS (T6) by comparing index scores of the Dutch Healthy Diet index 2015 (DHD2015-index). Relative validity was assessed using paired t tests, Kendall’s tau-b correlation coefficients (τb), cross-classification by tertiles, weighted kappa values (kw) and Bland–Altman plots. Reproducibility of the Eetscore FFQ was assessed using intraclass correlation coefficients (ICC).

Setting:

Regional hospital, the Netherlands.

Participants:

Hundred and forty participants with obesity who were scheduled for BS.

Results:

At T0, mean total DHD2015-index score derived from the Eetscore FFQ was 10·2 points higher than the food record-derived score (P < 0·001) and showed an acceptable correlation (τb = 0·42, 95 % CI: 0·27, 0·55). There was a fair agreement with a correct classification of 50 % (kw = 0·37, 95 % CI: 0·25, 0·49). Correlation coefficients of the individual DHD components varied from 0·01–0·54. Similar results were observed at T6 (τb = 0·31, 95 % CI: 0·12, 0·48, correct classification of 43·7 %; kw = 0·25, 95 % CI: 0·11, 0·40). Reproducibility of the Eetscore FFQ was good (ICC = 0·78, 95 % CI: 0·69, 0·84).

Conclusion:

The Eetscore FFQ showed to be acceptably correlated with the DHD2015-index derived from 3d-FR, but absolute agreement was poor. Considering the need for dietary assessment methods that reduce the burden for patients, practitioners and researchers, the Eetscore FFQ can be used for ranking according to diet quality and for monitoring changes over time.

Type
Research Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://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 Author(s), 2022. Published by Cambridge University Press on behalf of The Nutrition Society

Obesity is reaching epidemic proportions, and bariatric surgery (BS) is proven to be one of the most effective treatments, resulting in substantial and long-term weight loss and improvement of obesity-related comorbidities(Reference Gloy, Briel and Bhatt1Reference Sjostrom, Peltonen and Jacobson3). BS is performed in individuals with a BMI above 40 kg/m2 or a BMI above ≥ 35 kg/m2 with obesity-related comorbidities such as diabetes mellitus type 2, hypertension, obstructive sleep apnoea and dyslipidaemia(Reference Fried, Yumuk and Oppert4). Worldwide, the Roux-en-Y gastric bypass (RYGB) and sleeve gastrectomy are the most commonly performed bariatric procedures(Reference Angrisani, Santonicola and Iovino5).

After BS, the amount of food that can be ingested is significantly reduced, resulting in a lower energy intake(Reference Al-Najim, Docherty and le Roux6). Additionally, food intolerances after surgery may lead to avoidance of food groups which in turn may impact diet quality(Reference Freeman, Overs and Zarshenas7). Poor diet quality is consistently reported in patients with (severe) obesity, including those presenting for BS(Reference Harbury, Collins and Callister8Reference Zarshenas, Tapsell and Neale10). This could impact their risk of developing nutritional deficiencies as well as the success of their weight loss after surgery(Reference Zarshenas, Tapsell and Neale10Reference Lupoli, Lembo and Saldalamacchia12). Therefore, monitoring diet quality is an important component in the BS programme.

Diet quality can be assessed with the Dutch Healthy Diet index 2015 (DHD2015-index)(Reference Looman, Feskens and de Rijk13). The DHD2015-index measures adherence to the Dutch food-based dietary guidelines published in 2015 by the Health Council of the Netherlands(Reference Kromhout, Spaaij and de Goede14). The DHD2015-index can be calculated using data from multiple food records, 24-h dietary recalls or a single FFQ. Unfortunately, these methods are time-consuming and burdensome and therefore less likely to be used in everyday clinical practice. For this reason, a short screener, the Eetscore FFQ, was developed to estimate the DHD2015-index in time-limited situations. The Eetscore FFQ showed to be acceptably correlated with the DHD2015-index derived from a full-length FFQ in a normal-weight adult population(Reference de Rijk, Slotegraaf and Brouwer-Brolsma15). However, the Eetscore FFQ has not been evaluated in patients with (severe) obesity before or after undergoing BS.

Accurate measures of diet quality are needed to optimise nutritional care provided to these patients during the BS programme, but validated dietary assessment tools in this specific population are lacking(Reference Legault, Leblanc and Marchand16). Therefore, this study aimed to evaluate the relative validity and reproducibility of the Eetscore FFQ as a screener for diet quality in patients with (severe) obesity before and 6 months after BS.

Methods

Study design and participants

Between October 2018 and September 2019, patients with obesity who were eligible and scheduled for BS at Vitalys Obesity Clinic, part of Rijnstate hospital (Arnhem, the Netherlands), were asked to participate in this prospective cohort study. Participants were included approximately 6 weeks pre-surgery (T0) and followed up until 6 months post-surgery (T6). Exclusion criteria were a non-Dutch eating pattern, suffering from an eating disorder, inability to fill in questionnaires or food records and a previous bariatric procedure other than an adjustable gastric band.

In total, 200 participants signed the informed consent and were included in the study. Both before and after BS, we evaluated the Eetscore FFQ against 3-d food records (3d-FR) as reference method by comparing index scores of the DHD2015-index derived from both methods. At both time points, demographic information was collected and participants were asked to complete the Eetscore FFQ, followed by a 3d-FR as reference method. At T0, the Eetscore FFQ was completed twice (Eetscore FFQ1, Eetscore FFQ2) with an interval of approximately 5 weeks in order to analyse reproducibility.

From the total study sample of 200 participants, we excluded 60 participants with no Eetscore FFQ and 3d-FR (n 18), a missing Eetscore FFQ (n 5) or a missing/incomplete 3d-FR (n 37) at T0. The final study sample for data analysis at T0 consisted of 140 participants, of whom 116 completed both Eetscore FFQ1 and Eetscore FFQ2 (Fig. 1). For the study sample at T6, we additionally excluded 37 participants with no Eetscore FFQ and 3d-FR (n 22), a missing Eetscore FFQ (n 4) or a missing 3d-FR (n 11) at T6, resulting in a final study sample of 103 participants for data analysis at T6 (Fig. 1).

Fig. 1 Flow chart of the study population at T0 and T6. 3d-FR, 3-d food records

Data collection

Demographic information

Socio-demographic (age, sex and educational level) and health-related information (anthropometrics, type of surgery, comorbidities and smoking status) were obtained from electronic patient records. Educational level was defined as low (primary education and prevocational secondary education), medium (senior general secondary education, pre-university education and secondary vocational education) or high (higher vocational education and university). Anthropometric measurements were performed during standard visits at the hospital. Body weight was measured to the nearest 0·1 kg with a digital weighing scale (Tanita BC-420MA), after removal of heavy clothing and shoes. Height was measured in standing position with a wall-mounted stadiometer (Seca 206). BMI was calculated as weight (kg) divided by squared height (m2). TBWL at 6 months was calculated as weight loss divided by body weight before surgery, multiplied by 100 %.

Physical activity at T0 was assessed with the validated Baecke Questionnaire(Reference Baecke, Burema and Frijters17) that evaluates a person’s habitual physical activity and separates it into three domains: work index, sports index and leisure index. Each domain could receive a score from 1 to 5 points, resulting in a total score ranging from 3 to 15. A score of 15 indicates being physically active at a high intensity.

DHD2015-index

The development of the DHD2015-index has been previously described(Reference Looman, Feskens and de Rijk13). The DHD2015-index consists of fifteen components representing the Dutch food-based dietary guidelines of 2015(Reference Kromhout, Spaaij and de Goede14): vegetables, fruit, wholegrain products, legumes, nuts, dairy, fish, tea, fats and oils, coffee, red meat, processed meat, sweetened beverages, alcohol and Na. Additionally, the component ‘unhealthy food choices’ was added based on the guideline of the Netherlands Nutrition Centre(Reference Brink, van Rossum and Postma-Smeets18). Food items that contributed most to total energy, saturated fat, and mono- and disaccharide intake according to the Dutch National Food Consumption Survey (DNFCS) 2007–2010 were included in this component, such as sweet spreads, pastries, chocolate, savoury snacks, sauces and use of sugar in coffee or tea.

A complete overview of the sixteen components and their cut-off and threshold values is presented in Table 1. For every component, the score ranges from 0 (no adherence) to 10 points (complete adherence), resulting in a total score between 0 and 160 points. A graphic presentation of the scoring of the different types of components can be seen in Supplemental Fig. 1. For adequacy components (vegetables, fruit, legumes, nuts, fish and tea), no intake is awarded with 0 points and intakes between the cut-off and threshold value are scored proportionally. For moderation components (red meat, processed meat, sweetened beverages, Na, alcohol and unhealthy food choices), intakes between the cut-off and threshold value are also scored proportionally, but no intake is awarded with 10 points. Optimum components (dairy) have an optimal range of intake, and ratio components (fat and oils) reflect replacement of less preferred foods (e.g. solid fats) by more preferred foods (e.g. liquid fats and oils). The wholegrain product component is scored based on two sub-components: an adequacy component for wholegrain consumption and a ratio component to reflect replacement of refined grain products by wholegrain products. The coffee component is a qualitative component, based on the type of coffee (filtered v. unfiltered). As information on the type of coffee used was not available from the food records, this component could not be included in the validity analyses. For this reason, total score ranged between 0 and 150 for this part of the study.

Table 1 Cut-off and threshold values for the calculation of the DHD2015-index components and the component ‘Unhealthy food choices’. Adapted from De Rijk et al. (Reference de Rijk, Slotegraaf and Brouwer-Brolsma15)

DHD2015-index, Dutch Healthy Diet index 2015; A, adequacy component (consume an adequate amount); R, ratio component (replace less healthy products by more healthy alternatives); O, optimum component (optimal consumption range); Q, qualitative component (choose healthier option); M, moderation component (limit consumption).

* Maximum of 40 g/d cheese could be included.

Maximum of 4 g/d lean fish could be included.

The Eetscore FFQ

The development of the Eetscore FFQ has been described in detail elsewhere(Reference de Rijk, Slotegraaf and Brouwer-Brolsma15). Briefly, the Eetscore FFQ was developed to assess the DHD2015-index as a measure of adherence to the Dutch food-based dietary guidelines. The Eetscore FFQ assesses dietary intake over the previous month, based on fifty-five food items that account for 85 % of energy intake from the adult population of the DNFCS 2007–2010(Reference Van Rossum, Fransen and Verkaik-Kloosterman19). The six answer categories for questions on frequency of consumption range from ‘never’ to ‘every day’ for regularly consumed foods and from ‘not this month’ to ‘4 times a month’ for episodically consumed foods. Portion sizes are assessed in standard portions and commonly used household measures. Average daily intakes of food items are calculated by multiplying frequency of consumption by portion size in grams. The Eetscore FFQ directly reports index scores of the sixteen components of the DHD2015-index.

Three-day food records

A 3-d estimated food record was used as the reference method. This method is considered acceptable for the assessment of usual dietary intake and is commonly used in dietary validation studies(Reference Cade, Thompson and Burley20). We used structured open-ended food records containing predefined food groups (including the option ‘others’) at six food occasions (breakfast, lunch, dinner and three eating occasions between the main meals). All participants received verbal instructions and were provided with a written example. They were asked to record all foods and beverages consumed over the 3 d in as much detail as possible, to describe the amounts consumed in units, household measures or provide weights when known, to report cooking methods and to include the recipes for any mixed dishes. At both time points, recorded days were randomly selected and consisted of 2 weekdays (Monday–Thursday) and 1 weekend day (Friday–Sunday) within a 1-week period. Completed food records were reviewed by the researcher for completeness with regard to portion sizes, cooking methods and description of foods. Telephone interviews with the participants were conducted in case of any uncertainties. Dietary intake data were entered in Compl-eat™, a computer-based nutrition calculation programme that is linked to the Dutch Food Composition Database (NEVO-online, version 2016)(21). All foods and beverages from the food records were categorised into one of the fifteen DHD components (excluding coffee) to calculate the scores of the DHD2015-index. In case of missing recipes for mixed meals such as pasta or rice dishes, standard recipes of the Dutch Food Composition Database (NEVO-online, version 2016) were used(21). Food items that did not fall into one of the DHD components (e.g. potatoes and soups) were not included. Total dietary intake of the fifteen DHD components in grams was averaged over the number of completed days before calculating corresponding index scores.

Statistical analysis

General characteristics of the study population are reported as medians and interquartile ranges (Q1–Q3) for continuous data and as frequencies and percentages for categorical data. Total DHD2015-index score and individual component scores calculated from the Eetscore FFQ and the 3d-FR are presented as means and standard deviations.

Relative validity of the Eetscore FFQ compared to the 3d-FR was assessed by calculating Kendall’s tau-b (τb) as well as Spearman’s rho (ρ) correlation coefficients between the DHD index scores derived from both methods. At T0, we used data of the Eetscore FFQ that was completed in the same month as the 3d-FR. CI for the correlations were obtained using Fisher’s z-transformation. Correlation coefficients less than 0·20 were classified as poor, 0·20–0·49 as acceptable and ≥ 0·50 as good(Reference Lombard, Steyn and Charlton22). Additionally, total DHD2015-index scores derived from the Eetscore FFQ and the 3d-FR were categorised into tertiles. If ≥ 50 % of the participants were classified into the same tertile and/or ≤ 10 % into the opposite tertile, this was considered a good outcome(Reference Lombard, Steyn and Charlton22). Weighted kappa coefficients (k w ) were calculated to further evaluate the relative level of agreement. k w coefficients less than 0·20 indicated a poor level of agreement, 0·21–0·40 fair agreement, 0·41–0·60 moderate agreement, 0·61–0·80 good agreement and greater than 0·80 a very good level of agreement(Reference Masson, McNeill and Tomany23). Paired t tests were used to test the mean differences in the DHD index scores between the two methods. Bland–Altman plots with 95 % limits of agreement were used to visualise the differences in the total DHD2015-index score.

We additionally explored the degree of potential misreporting of dietary intake by comparing reported energy intake calculated from the food records at T0 with energy requirements as identified by the revised Goldberg cut-off method(Reference Black24). BMR was estimated using the Mifflin-St Jeor Equation(Reference Mifflin, St Jeor and Hill25) as this method provides the best estimation in individuals with (severe) obesity(Reference Cancello, Soranna and Brunani26Reference Madden, Mulrooney and Shah28). We used a physical activity level of 1·55, reflecting a moderate active lifestyle that was in line with the median physical activity score resulting from the Baecke Questionnaire.

Reproducibility of the Eetscore FFQ was examined by calculating single-measures intraclass correlation coefficients (ICC) of absolute agreement between the DHD index scores of both FFQ at T0, using a two-way mixed model. ICC less than 0·50 indicated poor reproducibility, 0·50–0·75 moderate, 0·75–0·90 good and greater than 0·90 excellent reproducibility(Reference Koo and Li29).

All analyses were conducted using SPSS statistics 25.0 (IBM).

Results

Participant characteristics

The study population at T0 consisted of 140 participants. The majority was female (79·3 %), never smoked (55·0 %), had a medium educational level (62·8 %) and no comorbidities (51·4 %) (Table 2). Median age was 49·0 (36·5–55·0) years, and median BMI was 41·5 (39·1–45·7) kg/m2. Median physical activity score of the Baecke Questionnaire was 8·4 (7·1–9·1).

Table 2 Baseline characteristics of the study population at T0 (n 140)

OSAS, obstructive sleep apnoea syndrome.

* Low education = primary education and prevocational secondary education; medium education = senior general secondary education, pre-university education and secondary vocational education; high education = higher vocational education and university. Missing for n 11.

Based on Baecke Questionnaire; total score ranging from 3 to 15. Missing for n 27.

Baseline characteristics of the study population at T6 (n 103) were similar to those of the study population at T0 (see online supplementary material, Supplemental Table 1). The majority had undergone a RYGB (80·7 %), and median BMI 6 months after surgery was 30·9 (28·5–34·3) kg/m2, resulting in a median TBWL of 25·8 (21·1–29·3) per cent.

Relative validity of the Eetscore FFQ compared to 3-d food records

Average time difference between completing the Eetscore FFQ and the 3d-FR at T0 was 5·8 ± 7·2 d. Mean total DHD2015-index score derived from the Eetscore FFQ was 10·2 points higher than the score derived from the 3d-FR (91·8 ± 18·6 v. 81·5 ± 17·7 points, P < 0·001; Table 3a). Visual inspection of the Bland–Altman plot additionally showed relatively wide limits of agreement (–21·1 and 41·5 points, Fig. 2(a)). Index scores for the individual DHD components were significantly different for vegetables, fruit, wholegrain products, legumes, nuts, dairy, fish, tea, processed meat and Na (P < 0·05 for all).

Table 3a Mean DHD2015-index scores derived from the 3d-FR and the Eetscore FFQ and corresponding validity statistics in 140 participants before BS (T0)

DHD2015-index, Dutch Healthy Diet index 2015; BS, bariatric surgery; 3d-FR, 3-d food records.

* The component coffee was not assessed in the 3d-FR.

The total score ranges between 0 and 150 points (excluding coffee component).

Fig. 2 (a) Bland–Altman plot of the total DHD2015-index score derived from the Eetscore FFQ and 3d-FR at T0 (n 140). Middle line indicates the mean difference; upper and lower lines indicate limits of agreement based on mean difference ± 1·96 × sd (10·2 ± 31·3). (b) Bland–Altman plot of the total DHD2015-index score derived from the Eetscore FFQ and 3d-FR at T6 (n 103). Middle line indicates the mean difference; upper and lower lines indicate limits of agreement based on mean difference ± 1·96 × sd (17·4 ± 32·0). 3d-FR, 3-d food records; DHD2015-index, Dutch Healthy Diet index 2015

Correlation of the total DHD2015-index score was acceptable (τb = 0·42, 95 % CI: 0·27, 0·55), and there was a fair level of agreement between the two methods (k w = 0·37, 95 % CI: 0·25, 0·49). The Eetscore FFQ correctly classified 50·0 % of the participants into the same tertile as the 3d-FR, and 5·7 % was misclassified into the opposite tertile. For the individual DHD components, a good correlation (≥ 0·50) was observed for alcohol (τb = 0·54, 95 % CI: 0·40, 0·65). Poor correlations (< 0·20) were observed for red meat (τb = 0·01, 95 % CI: –0·16, 0·18) and legumes (τb = 0·04, 95 % CI: –0·13, 0·20). Correlation coefficients of all other components ranged between 0·20 and 0·49.

At T6, average time difference between completing the Eetscore FFQ and the 3d-FR was 8·5 ± 7·4 d. Similar to T0, mean total DHD2015-index score derived from the Eetscore FFQ was higher than from the 3d-FR (mean difference of 17·4 points, P < 0·001; Table 3b) with relatively wide limits of agreement (–14·6 and 49·4 points, Fig. 2(b)). Index scores for the individual DHD components were significantly different for vegetables, fruit, wholegrain products, legumes, nuts, fish, fats and oils, processed meat, sweetened beverages and unhealthy food choices (P < 0·05 for all).

Table 3b Mean DHD2015-index scores derived from the 3d-FR and the Eetscore FFQ and corresponding validity statistics in 103 participants after BS (T6)

DHD2015-index, Dutch Healthy Diet index 2015; BS, bariatric surgery; 3d-FR, 3-d food records.

* The component coffee was not assessed in the 3d-FR.

The total score ranges between 0 and 150 points (excluding coffee component).

Correlation of the total DHD2015-index score was acceptable (τb = 0·31, 95 % CI: 0·12, 0·48), and there was a fair level of agreement between the two methods (k w = 0·25, 95 % CI: 0·11, 0·40). The Eetscore FFQ correctly classified 43·7 % of the participants into the same tertile as the 3d-FR, and 9·7 % was misclassified into the opposite tertile. For the individual DHD components, a good correlation (≥ 0·50) was observed for tea (τb = 0·53, 95 % CI: 0·36, 0·66). Poor correlations (< 0·20) were observed for processed meat (τb = 0·06, 95 % CI: –0·14, 0·25), legumes (τb = 0·07, 95 % CI:–0·13, 0·26), Na (τb = 0·15, 95 % CI: –0·05, 0·33), red meat (τb = 0·16, 95 % CI: –0·04, 0·34) and fats and oils (τb = 0·17, 95 % CI: –0·03, 0·35). Correlations coefficients of all other components ranged between 0·20 and 0·49.

Misreporting

According to the revised Goldberg cut-off method, 57·1 % of the participants was classified as potential under-reporters of energy intake at T0 and 58·3 % of the participants at T6. We did not identify potential over-reporters of energy intake. Excluding potential misreporters did not markedly affect our results regarding the relative validity of the Eetscore FFQ at both time points (see online supplementary material, Supplemental Table 2a and b).

Reproducibility of the Eetscore FFQ

Average time difference between completing the first and second Eetscore FFQ at T0 was 4·8 ± 2·3 weeks. Mean total DHD2015-index score was 100·4 ± 19·1 points for Eetscore FFQ1 and 103·3 ± 18·3 points for Eetscore FFQ2 (Table 4) with an ICC of 0·78 (95 % CI: 0·69, 0·84). Index scores of the individual DHD components were fairly similar for most components, with ICC ranging from 0·26 to 0·78. Good reproducibility (ICC 0·75–0·90) was observed for fruit (ICC = 0·76, 95 % CI: 0·67, 0·83), fish (ICC = 0·76, 95 % CI: 0·68, 0·83) and coffee (ICC = 0·78, 95 % CI: 0·70, 0·84). Poor reproducibility (ICC < 0·50) was observed for dairy (ICC = 0·26, 95 % CI: 0·08, 0·42), red meat (ICC = 0·29, 95 % CI: 0·11, 0·44), processed meat (ICC = 0·43, 95 % CI: 0·27, 0·57), fats and oils (ICC = 0·46, 95 % CI: 0·30, 0·59) and sweetened beverages (ICC = 0·46, 95 % CI: 0·30, 0·59). ICC of all other components ranged between 0·50 and 0·75 (Table 4).

Table 4 Mean DHD2015-index scores derived from the first and second Eetscore FFQ and corresponding intraclass correlation coefficients (ICC) in 116 participants before BS (T0)

DHD2015-index, Dutch Healthy Diet index 2015; BS, bariatric surgery.

* The total score ranges between 0 and 160 points.

Discussion

In this study, we determined the relative validity and reproducibility of the Eetscore FFQ as a screener for diet quality in patients with (severe) obesity before and after BS by comparing index scores of the DHD2015-index derived from the Eetscore FFQ to the scores derived from 3d-FR (reference method). We demonstrated an overall reasonable relative agreement between the two methods, although the Eetscore FFQ showed higher index scores in comparison with the 3-FR and absolute agreement between the two methods was poor. Correlation coefficients for the DHD component scores varied widely with best coefficients observed for fruit and tea, and worst for legumes and red meat. Reproducibility of the Eetscore FFQ was considered good.

We observed lower correlations for the total DHD2015-index score based on fifteen components (excluding coffee) between the Eetscore FFQ and 3d-FR than reported in the study of de Rijk et al., who compared the Eetscore FFQ to a full-length FFQ(Reference de Rijk, Slotegraaf and Brouwer-Brolsma15). They reported a Kendall’s tau-b coefficient of 0·51 (95 % CI: 0·47, 0·55) for the total DHD2015-index score based on thirteen DHD components (excluding fish, fats and oils, and coffee). This could be explained by a difference in the number of DHD components included in the total score as well as a difference in reference method. The Eetscore FFQ is also an FFQ; therefore, more correlated errors might be expected with a full-length FFQ, resulting in higher correlations. Yet, a full-length FFQ might capture habitual dietary intake more accurately than three food records. Although all days of the week were equally represented across all records, foods that are not consumed on a daily basis, for example fish or legumes, could have been underestimated when recording only 3 d. This is also reflected in relative large absolute differences for these components. It has been suggested that when dietary methods assessing habitual dietary intake, such as the Eetscore FFQ, are validated against food records, a certain degree of disagreement can be expected due to the greater within-subject variations that occur over the shorter reference period of a food record(Reference Cade, Thompson and Burley20).

In a study of Papadaki et al., Pearson’s correlation coefficient of 0·52 was observed comparing the English version of the ‘Mediterranean Diet Adherence Screener’ to 3d-FR in patients with high cardiovascular risk in the UK(Reference Papadaki, Johnson and Toumpakari30). Schröder et al. found Pearson’s correlation coefficient of 0·61 when they compared the ‘Diet Quality Index’ derived from the ‘Short Diet Quality Screener’ to ten 24-h dietary recalls in a Spanish population(Reference Schroder, Benitez Arciniega and Soler31). In the same study, they also observed a correlation of 0·40 for the ‘Modified Mediterranean Diet Score’ derived from the ‘Brief Mediterranean Diet Screener’ compared with the score derived from ten 24-h dietary recalls(Reference Schroder, Benitez Arciniega and Soler31). These values are comparable to Spearman’s Rho correlations observed in the current study (ρ = 0·60, 95 % CI: 0·47, 0·70 at T0 and ρ = 0·44, 95 % CI: 0·26, 0·59 at T6).

In contrast to the findings on relative agreement, absolute agreement between the Eetscore FFQ and the 3d-FR was poor. According to the Bland–Altman plots, the Eetscore FFQ systematically overestimated the total DHD2015-index score compared to the 3d-FR at both time points with relatively wide limits of agreement. However, no significant proportional bias was observed. This is in line with other studies that also found higher mean index scores derived from a diet screener in comparison with food records(Reference de Rijk, Slotegraaf and Brouwer-Brolsma15,Reference Papadaki, Johnson and Toumpakari30Reference Radd-Vagenas, Fiatarone Singh and Inskip32) .

As most FFQ, the Eetscore FFQ can be considered more appropriate for ranking patients according to their diet quality or monitoring relative differences over time, rather than assessing absolute individual scores. It is however important to note that a food record is also no golden reference method and has its own limitations with regard to assessing dietary intake. Furthermore, we evaluated the intake of food groups instead of nutrients which is more difficult because of the high day-to-day variation. This may have impacted our findings with respect to the poor absolute agreement between the two methods.

With regard to the individual DHD components, correlations varied widely with highest values found for fruit and tea, and lowest values for legumes and red meat. For legumes, we observed many participants with an extreme difference of 10 points between the index score derived from the Eetscore FFQ compared to the food record-derived score, meaning that these participants had a score of 10 for legumes according to the Eetscore FFQ, whereas their score was 0 based on the food records. This resulted in large mean differences for this component (5·7 v. 0·8 points at T0 and 5·5 v. 1·4 points at T6, P < 0·001). This could be due to the fact that food records might not accurately capture habitual dietary intake, especially for foods that are not consumed on a daily basis such as legumes, as mentioned earlier. This is in concordance with an Australian study (age ≥ 70) validating a six-item dietary screener against three 24-h dietary recalls that also observed a poor agreement for legume intake (k w = 0·12)(Reference Gadowski, McCaffrey and Heritier33).

For red meat, we observed poor correlations of < 0·20 at both time points, whereas mean index scores for this component were fairly similar between the two methods (8·7 v. 8·9 points at T0 and 9·5 v. 9·2 points at T6, P > 0·05). This might be explained by a low variation in the index scores for red meat. Over half of the participants scored 10 points based on the Eetscore FFQ as well as the 3d-FR. As a result, the few observations with (relatively) large differences in index score could have biased the correlation towards zero.

We also aimed to define participants who substantially under- or overreported their dietary intake by using the revised Goldberg cut-off method in which energy intake is compared with (estimated) energy expenditure. However, adequately estimating energy expenditure in subjects with (severe) obesity is challenging. In a study of Cancello et al.(Reference Cancello, Soranna and Brunani26), predictive equations for resting energy expenditure were compared to indirect calorimetry in 4247 subjects with obesity (69 % women, mean age 48 ± 19 years, mean BMI 44 ± 7 kg/m2). The authors found that the Mifflin-St Jeor equation had the highest performance for both accuracy and bias but emphasise that the accuracy is still far from ideal(Reference Cancello, Soranna and Brunani26). Furthermore, the revised Goldberg cut-off method cannot be applied after BS as the condition of weight stability is violated, resulting in an invalid ratio between reported energy intake and energy requirement. We therefore assumed that participants who were identified as potential misreporters of dietary intake at T0 also misreported their intake at T6.

At both time points, the rate of potential misreporters was relatively high with 57·1 % of the study population potentially underreporting their dietary intake at T0 and 58·3 % at T6. According to a review of Poslusna et al., the percentage of under-reporters in studies using estimated food records ranged from 12 to 44 %(Reference Poslusna, Ruprich and de Vries34), which is lower than the observed percentages in the present study. This is in line with previous research showing that a higher BMI is associated with underreporting of dietary intake(Reference Trijsburg, Geelen and Hollman35).

Overall, excluding potential misreporters did not markedly affect our results, although caution is needed in the interpretation because of the aforementioned limitations in the use of the Goldberg cut-off method within this population.

Reproducibility of the Eetscore FFQ before surgery was considered good. The observed ICC of 0·78 was slightly lower than reported in previous research by de Rijk et al., who found an ICC of 0·91 for the total DHD2015-index score(Reference de Rijk, Slotegraaf and Brouwer-Brolsma15). This could be due to a difference in study population as well as the multidisciplinary lifestyle programme that all participants started before undergoing BS. During this programme, patients received general information on healthy eating behaviour and dietary counselling. For most participants, the first Eetscore FFQ was administered before entering the multidisciplinary programme while they completed the second Eetscore FFQ during the programme. It is therefore plausible that participants already implemented beneficial changes with respect to their diet. This might explain the slightly higher DHD2015-index score resulting from the second Eetscore FFQ. Future studies are needed to confirm our findings while limiting the influence of such external factors. For the individual DHD components, most correlation coefficients ranged between 0·5 and 0·7 which are common in reproducibility studies of FFQ(Reference Cade, Thompson and Burley20).

Dietary assessment is an important component in the BS programme. Currently, dietary intake of patients undergoing BS is often assessed by a dietitian with the use of food records. This assessment method is very time-consuming, might be prone to reactivity and recall bias and only reflects the intake of the past days. The Eetscore FFQ is a short, web-based tool that can be used to assess general aspects of a healthy nutrient-dense diet such as the consumption of fruits and vegetables, wholegrains and dairy. However, the Eetscore FFQ does not include additional information about patients’ eating behaviour including the distribution of food intake (e.g. few large meals or frequent smaller feedings) and the separation of food and beverages. Also, other factors affecting dietary intake may be missed by the Eetscore FFQ, such as food preparation methods and non-included food items (e.g. plant-based dairy, meat substitutes and fast food). The Eetscore FFQ can therefore be used as an additional dietary assessment tool in the BS programme rather than as a replacement for the current methodology.

Considering the need for dietary assessment methods that reduce the burden for patients, practitioners and researchers, the Eetscore FFQ can be used for ranking patients according to diet quality and for monitoring relative changes in intake over time in order to indicate an improvement or a deterioration in diet quality. This can be relevant before undergoing surgery, during annual follow-up in the late post-operative phase or in case of weight regain. Dietary assessment methods assessing actual intake may be preferred in the early post-operative phase when patients are still adapting to the new eating habits and in case of food-related complaints such as dumping syndrome or hypoglycaemia.

The main strength of this study is the validation of an existing dietary assessment tool in patients with (severe) obesity before and after BS as there is a clear lack of validated, easy-to-use tools within this patient population. Another strength is the use of multiple statistical tests to provide a comprehensive insight into various facets of validity. As Kendall’s tau-b correlation coefficients tend to be smaller, we also reported Spearman’s Rho correlations to allow for comparison with other research. Furthermore, by choosing 3d-FR as reference method, we minimised the risk of correlated measurement errors between the two methods(Reference Cade, Thompson and Burley20).

We aimed to determine relative validity of the Eetscore FFQ both before and after BS, but thirty-seven participants dropped out between T0 and T6, resulting in two different study populations. We are aware that the study population at T0 and T6 is therefore not mutually exclusive and direct comparisons between the populations cannot be made. Nonetheless, both populations and the dropouts were similar with respect to sex, age, BMI, smoking status, education, physical activity, prevalence of comorbidities and type of surgery. Moreover, both the study population at T0 and T6 were found representative of the general Dutch bariatric patient population(36), indicating a minor risk of selection bias.

Another limitation is the lack of a golden standard reference method for dietary intake. To reduce participant burden, we chose for 3d-FR using household measures, which are prone to report bias and are not ideal for foods that are not consumed daily. For future research, we suggest to evaluate the Eetscore FFQ against dietary biomarkers that are suitable for patients after BS to provide an objective measure of dietary intake.

Conclusion

The Eetscore FFQ is a short screener of diet quality that assesses adherence to the Dutch dietary guidelines. Based on our findings, the Eetscore FFQ was considered an acceptable screener for ranking individuals according to their diet quality and showed good reproducibility to monitor relative changes in diet quality over time. However, the tool showed poor absolute agreement and is not suitable for assessing diet quality on the individual level. Future research is needed to improve the use of the Eetscore FFQ for this purpose.

Acknowledgements

Financial support: This project was financially supported by the Nutrition and Healthcare Alliance, the Netherlands. The Nutrition and Healthcare Alliance had no role in the design, analysis or writing of this article. Authorship: Conceptualisation and Funding acquisition: M.G.J.B., L.N.D., J.H.M.V. and E.J.H. Methodology: L.H., A.A.M.B., M.G.J.B., L.N.D., J.H.M.V. and E.J.H. Investigation and Project administration: L.H. Formal analysis: L.H., A.A.M.B. and J.H.M.V. Writing – original draft: L.H., A.A.M.B. and J.H.M.V. Writing – review and editing: L.H., A.A.M.B., M.G.J.B., L.N.D., J.H.M.V. and E.J.H. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving research study participants were approved by the Local Ethical Committee of Rijnstate Hospital. Written informed consent was obtained from all subjects.

Conflicts of interest:

There are no conflicts of interest.

Supplementary material

For supplementary material/s referred to in this article, please visit https://doi.org/10.1017/S1368980022001501

References

Gloy, VL, Briel, M, Bhatt, DL et al. (2013) Bariatric surgery v. non-surgical treatment for obesity: a systematic review and meta-analysis of randomised controlled trials. BMJ 347, f5934.CrossRefGoogle Scholar
O’Brien, PE, Hindle, A, Brennan, L et al. (2019) Long-term outcomes after bariatric surgery: a systematic review and meta-analysis of weight loss at 10 or more years for all bariatric procedures and a single-centre review of 20-year outcomes after adjustable gastric banding. Obes Surg 29, 314.CrossRefGoogle ScholarPubMed
Sjostrom, L, Peltonen, M, Jacobson, P et al. (2012) Bariatric surgery and long-term cardiovascular events. JAMA 307, 5665.CrossRefGoogle ScholarPubMed
Fried, M, Yumuk, V, Oppert, JM et al. (2014) Interdisciplinary European guidelines on metabolic and bariatric surgery. Obes Surg 24, 4255.CrossRefGoogle ScholarPubMed
Angrisani, L, Santonicola, A, Iovino, P et al. (2018) IFSO Worldwide Survey 2016: primary, endoluminal, and revisional procedures. Obes Surg 28, 37833794.CrossRefGoogle ScholarPubMed
Al-Najim, W, Docherty, NG & le Roux, CW (2018) Food intake and eating behavior after bariatric surgery. Physiol Rev 98, 11131141.CrossRefGoogle ScholarPubMed
Freeman, RA, Overs, SE, Zarshenas, N et al. (2014) Food tolerance and diet quality following adjustable gastric banding, sleeve gastrectomy and Roux-en-Y gastric bypass. Obes Res Clin Pract 8, e115200.CrossRefGoogle ScholarPubMed
Harbury, C, Collins, CE & Callister, R (2019) Diet quality is lower among adults with a BMI >/= 40 kgm(–2) or a history of weight loss surgery. Obes Res Clin Pract 13, 197204.CrossRefGoogle ScholarPubMed
Harbury, CM, Verbruggen, EE, Callister, R et al. (2016) What do individuals with morbid obesity report as a usual dietary intake? A narrative review of available evidence. Clin Nutr ESPEN 13, e15e22.CrossRefGoogle ScholarPubMed
Zarshenas, N, Tapsell, LC, Neale, EP et al. (2020) The relationship between bariatric surgery and diet quality: a systematic review. Obes Surg 30, 17681792.CrossRefGoogle ScholarPubMed
Freire, RH, Borges, MC, Alvarez-Leite, JI et al. (2012) Food quality, physical activity, and nutritional follow-up as determinant of weight regain after Roux-en-Y gastric bypass. Nutrition 28, 5358.CrossRefGoogle ScholarPubMed
Lupoli, R, Lembo, E, Saldalamacchia, G et al. (2017) Bariatric surgery and long-term nutritional issues. World J Diabetes 8, 464474.CrossRefGoogle ScholarPubMed
Looman, M, Feskens, EJ, de Rijk, M et al. (2017) Development and evaluation of the Dutch Healthy Diet index 2015. Public Health Nutr 20, 22892299.CrossRefGoogle ScholarPubMed
Kromhout, D, Spaaij, CJ, de Goede, J et al. (2016) The 2015 Dutch food-based dietary guidelines. Eur J Clin Nutr 70, 869878.CrossRefGoogle ScholarPubMed
de Rijk, MG, Slotegraaf, AI, Brouwer-Brolsma, EM et al. (2021) Development and evaluation of a diet quality screener to assess adherence to the Dutch food-based dietary guidelines. Br J Nutr, 111. doi: 10.1017/S0007114521004499.CrossRefGoogle Scholar
Legault, M, Leblanc, V, Marchand, GB et al. (2021) Evaluation of dietary assessment tools used in bariatric population. Nutrients 13, 2250.CrossRefGoogle ScholarPubMed
Baecke, JA, Burema, J & Frijters, JE (1982) A short questionnaire for the measurement of habitual physical activity in epidemiological studies. Am J Clin Nutr 36, 936942.CrossRefGoogle Scholar
Brink, E, van Rossum, C, Postma-Smeets, A et al. (2019) Development of healthy and sustainable food-based dietary guidelines for the Netherlands. Public Health Nutr 22, 24192435.CrossRefGoogle ScholarPubMed
Van Rossum, C, Fransen, HP, Verkaik-Kloosterman, JV et al. (2011) Dutch National Food Consumption Survey 2007–2010. Diet of Children and Adults Aged 7 to 69 Years. Bilthoven: National Institute for Public Health and the Environment.Google Scholar
Cade, J, Thompson, R, Burley, V et al. (2002) Development, validation and utilisation of food-frequency questionnaires – a review. Public Health Nutr 5, 567587.CrossRefGoogle ScholarPubMed
RIVM (2016) NEVO-Online Versie 2016/5.0. https://www.rivm.nl/documenten/nevo-online-versie-50-2016-dat (accessed July 2021).Google Scholar
Lombard, MJ, Steyn, NP, Charlton, KE et al. (2015) Application and interpretation of multiple statistical tests to evaluate validity of dietary intake assessment methods. Nutr J 14, 40.CrossRefGoogle ScholarPubMed
Masson, LF, McNeill, G, Tomany, JO et al. (2003) Statistical approaches for assessing the relative validity of a food-frequency questionnaire: use of correlation coefficients and the kappa statistic. Public Health Nutr 6, 313321.CrossRefGoogle ScholarPubMed
Black, AE (2000) Critical evaluation of energy intake using the Goldberg cut-off for energy intake:basal metabolic rate. A practical guide to its calculation, use and limitations. Int J Obes Relat Metab Disord 24, 11191130.CrossRefGoogle ScholarPubMed
Mifflin, MD, St Jeor, ST, Hill, LA et al. (1990) A new predictive equation for resting energy expenditure in healthy individuals. Am J Clin Nutr 51, 241247.CrossRefGoogle ScholarPubMed
Cancello, R, Soranna, D, Brunani, A et al. (2018) Analysis of predictive equations for estimating resting energy expenditure in a large cohort of morbidly obese patients. Front Endocrinology 9, 367.CrossRefGoogle Scholar
Frankenfield, D, Roth-Yousey, L & Compher, C (2005) Comparison of predictive equations for resting metabolic rate in healthy nonobese and obese adults: a systematic review. J Am Diet Assoc 105, 775789.CrossRefGoogle ScholarPubMed
Madden, AM, Mulrooney, HM & Shah, S (2016) Estimation of energy expenditure using prediction equations in overweight and obese adults: a systematic review. J Hum Nutr Diet 29, 458476.CrossRefGoogle ScholarPubMed
Koo, TK & Li, MY (2016) A guideline of selecting and reporting intraclass correlation coefficients for reliability research. J Chiropr Med 15, 155163.CrossRefGoogle ScholarPubMed
Papadaki, A, Johnson, L, Toumpakari, Z et al. (2018) Validation of the english version of the 14-item Mediterranean diet adherence screener of the PREDIMED study, in people at high cardiovascular risk in the UK. Nutrients 10, 138.CrossRefGoogle ScholarPubMed
Schroder, H, Benitez Arciniega, A, Soler, C et al. (2012) Validity of two short screeners for diet quality in time-limited settings. Public Health Nutr 15, 618626.CrossRefGoogle ScholarPubMed
Radd-Vagenas, S, Fiatarone Singh, MA, Inskip, M et al. (2018) Reliability and validity of a Mediterranean diet and culinary index (MediCul) tool in an older population with mild cognitive impairment. Br J Nutr 120, 11891200.CrossRefGoogle Scholar
Gadowski, AM, McCaffrey, TA, Heritier, S et al. (2020) Development, relative validity and reproducibility of the Aus-SDS (Australian Short Dietary Screener) in adults aged 70 years and above. Nutrients 12, 1436.CrossRefGoogle ScholarPubMed
Poslusna, K, Ruprich, J, de Vries, JH et al. (2009) Misreporting of energy and micronutrient intake estimated by food records and 24 hour recalls, control and adjustment methods in practice. Br J Nutr 101, S7385.CrossRefGoogle ScholarPubMed
Trijsburg, L, Geelen, A, Hollman, PC et al. (2017) BMI was found to be a consistent determinant related to misreporting of energy, protein and potassium intake using self-report and duplicate portion methods. Public Health Nutr 20, 598607.CrossRefGoogle ScholarPubMed
Jaarrapportage (2019) Dutch Institute for Clinical Auditing 2019. https://dica.nl/jaarrapportage-2019/dato (accessed April 2022).Google Scholar
Figure 0

Fig. 1 Flow chart of the study population at T0 and T6. 3d-FR, 3-d food records

Figure 1

Table 1 Cut-off and threshold values for the calculation of the DHD2015-index components and the component ‘Unhealthy food choices’. Adapted from De Rijk et al.(15)

Figure 2

Table 2 Baseline characteristics of the study population at T0 (n 140)

Figure 3

Table 3a Mean DHD2015-index scores derived from the 3d-FR and the Eetscore FFQ and corresponding validity statistics in 140 participants before BS (T0)

Figure 4

Fig. 2 (a) Bland–Altman plot of the total DHD2015-index score derived from the Eetscore FFQ and 3d-FR at T0 (n 140). Middle line indicates the mean difference; upper and lower lines indicate limits of agreement based on mean difference ± 1·96 × sd (10·2 ± 31·3). (b) Bland–Altman plot of the total DHD2015-index score derived from the Eetscore FFQ and 3d-FR at T6 (n 103). Middle line indicates the mean difference; upper and lower lines indicate limits of agreement based on mean difference ± 1·96 × sd (17·4 ± 32·0). 3d-FR, 3-d food records; DHD2015-index, Dutch Healthy Diet index 2015

Figure 5

Table 3b Mean DHD2015-index scores derived from the 3d-FR and the Eetscore FFQ and corresponding validity statistics in 103 participants after BS (T6)

Figure 6

Table 4 Mean DHD2015-index scores derived from the first and second Eetscore FFQ and corresponding intraclass correlation coefficients (ICC) in 116 participants before BS (T0)

Supplementary material: File

Heusschen et al. supplementary material

Tables S1-S2 and Figure S1

Download Heusschen et al. supplementary material(File)
File 67.8 KB