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‘I don't have to go to the gym because I ate very healthy today’: the development of a scale to assess diet-related compensatory health beliefs

Published online by Cambridge University Press:  22 May 2012

Maartje P Poelman*
Affiliation:
Department of Health Sciences and the EMGO Institute for Health and Care Research, VU University, De Boelelaan 1085, 1081 HV Amsterdam, The Netherlands
Willemijn M Vermeer
Affiliation:
Department of Health Sciences and the EMGO Institute for Health and Care Research, VU University, De Boelelaan 1085, 1081 HV Amsterdam, The Netherlands
Ellis L Vyth
Affiliation:
Department of Health Sciences and the EMGO Institute for Health and Care Research, VU University, De Boelelaan 1085, 1081 HV Amsterdam, The Netherlands
Ingrid HM Steenhuis
Affiliation:
Department of Health Sciences and the EMGO Institute for Health and Care Research, VU University, De Boelelaan 1085, 1081 HV Amsterdam, The Netherlands
*
*Corresponding author: Email m.p.poelman@vu.nl
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Abstract

Objective

Nutritional interventions to decrease energy intake, aimed at portion sizes and front-of-package labelling, are effective only if people do not compensate for their reduced energy intake. Since several observational studies indicate that these interventions could prompt compensation behaviour, it is important to assess underlying beliefs. Therefore, the purpose of the two studies reported here was to develop a Diet-related Compensatory Health Beliefs Scale (Diet-CHBS).

Design

Cross-sectional surveys were conducted for the scale development. Study 1 provided data on the factor analysis and convergent validity, while Study 2 assessed the Diet-CHBS’ test–retest reliability.

Settings

VU University Amsterdam (Study 1) and twenty-five worksite cafeterias in the Netherlands (Study 2).

Subjects

Study 1 was conducted among 179 students and their parents; Study 2 was conducted among 119 worksite cafeteria visitors.

Results

The results of Study 1 showed that the scale consisted of the hypothesized factors of compensation beliefs with regard to portion sizes (α = 0·73), front-of-package health logos (α = 0·77) and exercise (α = 0·75). The scale's overall Cronbach's α was 0·82. The Diet-CHBS had a Pearson correlation of 0·32 with a general health compensatory beliefs scale, signifying satisfactory convergent validity. Study 2 showed that the intra-class correlation coefficient between T1 and T2 was 0·69, indicating adequate test–retest reliability.

Conclusion

The Diet-CHBS is a valid and reliable instrument for assessing diet-related compensatory health beliefs in response to nutritional interventions. It is important to take such beliefs into account in further intervention studies aimed at preventing overweight and obesity.

Type
Assessment and methodology
Copyright
Copyright © The Authors 2012

In response to the increasing prevalence of overweight and obesity and its associated consequences, several nutritional interventions have been developed aimed at reducing energy intake(1, Reference Hill, Peters and Catenacci2). Nutritional interventions aimed at reducing energy intake can have a quantitative dimension (reducing the overall amount of foods eaten) or a qualitative dimension (stimulating the intake of products with a more favourable nutrient composition)(Reference Herman and Polivy3Reference Vyth, Steenhuis and Mallant5).

Despite these interventions to reduce people's energy intake, overweight and obesity prevalence is not decreasing(Reference Lioret, Touvier and Dubuisson6, Reference Schokker, Visscher and Nooyens7). Although several factors and individual differences contribute to this problem, part of the explanation might be found in the fact that people compensate in response to nutritional interventions. That is, people compensate for the reduced energy intake that was accomplished by the intervention with other behaviour before or afterwards (e.g. when people believe that it is not necessary to go to the gym because they already ate healthy foods or they believe they can eat a larger amount of healthier variants of snacks compared with the unhealthier variants). Consequently, the intervention effect is neutralized (e.g. when people would burn an equal amount of energy if they went to the gym instead of eating healthier as a result of the nutritional intervention) or the nutritional intervention results in an even more positive energy balance because of compensating (e.g. when people would have a lower energy intake if they ate just one unhealthy snack instead of more – but healthier – snacks).

Several experimental studies have shown that nutritional interventions aimed at promoting products with a more favourable nutritional composition by means of a so-called ‘front-of-package label’ could provoke compensation behaviour. Front-of-package labels are labels or logos on the front of a food package that represent a simplified and overall representation of the main nutrient composition and can define the ‘healthiness’ of products within a certain food category(Reference Feunekes, Gortemaker and Willems8). Furthermore, experimental studies have indicated that interventions which stimulate the intake of smaller food portions also might elicit compensation behaviour. For example, studies showed that when products were healthy, or described as healthier, people ate more of these products compared with the unhealthy variants(Reference Provencher, Polivy and Herman9, Reference Chandon and Wansink10). Another study revealed that people also tend to systematically underestimate the energy content of healthy food(Reference Carels, Harper and Konrad11). In addition, a study into diet foods showed that the consumption of such products encouraged people to overeat(Reference Fowler, Williams and Hunt12). Moreover, a study in which different plate sizes were offered during a buffet showed that the people with the smallest plates ate the same amount of food as those who had the biggest plates. They compensated for their small plate size by walking to the buffet more often(Reference Rolls, Roe and Halverson13).

Additionally, studies in the area of the ‘licensing effect’ reveal the likelihood of energy balance compensation behaviour. The licensing effect refers to people's perceived license to engage in indulgent behaviour after engaging in positive behaviour(Reference Khan and Dhar14). A previous study demonstrated that individuals who sampled an item framed as healthy consumed more than those who sampled an item framed as tasty. This outcome counted in particular for participants who were less concerned about their weight(Reference Finkelstein and Fishbach15). Another study into licensing effects as a consequence of the use of dietary supplements showed that participants who took what they believed to be a dietary supplement (actually a placebo) revealed less desire for exercise, more desire for hedonic activities and were more likely to prefer the buffet over an organic meal(Reference Chiou, Yang and Wan16).

Although these studies indicate the presence of compensation behaviour, none of them has revealed the rationale behind compensation behaviour. In order to get more insight into the drive behind behaviour, it is essential to assess beliefs. Understanding beliefs can be helpful in the development and evaluation of interventions. For example, health educational programmes can be developed to shape people's beliefs or make them aware about the ineffectual consequences of compensation behaviour in reaction to nutritional interventions. Additionally, in effect evaluations of diet-related health promotion interventions, insight into beliefs can be helpful in understanding study results. Furthermore, the impact of diet-related compensation beliefs on the main outcomes can be determined. In doing so, more comprehensive study results can be presented. Nevertheless, no scale to assess diet-related compensatory health beliefs is yet available.

Therefore, the aim of the two studies reported in the present paper was to develop a valid and reliable questionnaire to assess such diet-related compensation beliefs. The first study describes the development of the scale and provides data on its internal consistency and convergent validity. The objective of the second study was to test the scale's reliability over time.

Study 1: Development of the Diet-CHBS items and testing the scale's internal consistency and validity

Methods

Scale item development

Experts in the field of obesity prevention created the items of the so-called ‘Diet-related Compensatory Health Beliefs Scale’ (Diet-CHBS). Based on the literature, different aspects of diet-related compensation beliefs were explored and discussed. As mentioned before, previous research indicated that interventions aimed at decreasing energy intake by means of portion sizes or front-of-package labelling could provoke compensation behaviour. Therefore, items about compensation behaviours in reaction to these types of interventions were developed. Furthermore, physical activity was taken into account in the development of the items since it was hypothesized that people could decrease or eliminate physical activity as a means to compensate for nutritional interventions.

Fourteen items were created, all having a 5-point Likert response option (‘totally disagree’ to ‘totally agree’). All items measure compensatory beliefs by which potential positive effects of nutritional interventions can be neutralized by negative effects of other behaviour. Examples of items are ‘If I eat a small meal, there is no harm in eating more cookies and candies’ and ‘When I eat less, it's not necessary to have a lot of exercise’.

Study design and participants

A cross-sectional survey was conducted among Dutch students (n 68) and aspiring students and their parents (n 128). Students were recruited during a second year Health Sciences lecture and the aspiring students and their parents were recruited during an information lecture about studying at VU University Amsterdam. They were asked to complete the questionnaire that was handed out.

The majority of the participants were female (79·1 %) and participants’ ages ranged from 17 to 61 years (mean 27 (sd 13·2) years). The prevalence of overweight in this sample was 10·4 %, whereas 42 % of adult females and 51 % of adult males in the Dutch population are overweight or obese(Reference Schokker, Visscher and Nooyens7).

Measures

The questionnaire consisted of the fourteen Diet-CHBS items, seventeen items from the compensatory health belief scale (CHBS)(Reference Knäuper, Rabiau and Cohen17) and four demographic questions (i.e. date of birth, sex, height and body weight).

The CHBS was included in this questionnaire to validate the Diet-CHBS. The CHBS is a valid and reliable seventeen-item questionnaire which examines beliefs regarding the extent to which several types of unhealthy behaviour could compensate for or neutralize healthy behaviour and the other way around (how healthy behaviour could be compensated by unhealthy behaviour). The CHBS contains items such as ‘Smoking can be compensated for by exercising’ and ‘Too little sleep during the week can be compensated for by sleeping in on the weekends’(Reference Knäuper, Rabiau and Cohen17). Its Cronbach's α was 0·61.

Statistical methods

Internal consistency. In order to measure the internal consistency of the Diet-CHBS, an exploratory principal components factor analysis with oblique rotation was used. The items were not allowed to have a correlation above 0·9 and the values of the anti-image matrix had to be higher than 0·5 to be included in the remaining analyses. Further, items were retained in the analysis when the eigenvalues that were associated with each factor were above 1·0. Last, the scale items had to load above 0·4 on one of the factors(Reference Field18).

Cronbach's α was calculated to test the internal consistency of the Diet-CHBS. Cronbach's α values were analysed for the total scale and for the different factors. Based on criteria set in the literature, a value of Cronbach's α above 0·8 was considered to be an indicator for a good reliability and Cronbach's α above 0·7 was defined as an indicator for an adequate reliability. Factors with Cronbach's α values below 0·4 indicated a low internal consistency of the items related to that factor and were excluded from further analyses(Reference Field18).

Validation. The aim of the validation was to gather evidence of the convergent validity with reference to the CHBS of Knäuper et al.(Reference Knäuper, Rabiau and Cohen17). In order to explore the validity, the relationship between the Diet-CHBS and the CHBS was examined with a Pearson correlation test. It was hypothesized that there would be a positive correlation between them because both scales assess compensatory health beliefs. Additionally, a Pearson correlation test was also conducted between the diet subscale of the CHBS and the solely diet subscales of the Diet-CHBS (Table 3; subscales 2 and 3). The correlation had to be below 0·9. All data were analysed using the SPSS for Windows statistical software package version 15·0.

Results

Participants

Of the 196 participants, 179 participants had answered all measures of the questionnaire and were included in the analysis.

Internal consistency

The fourteen items of the Diet-CHBS were subjected to factor analysis to explore the factor structure. Since most of the created items about diet-related compensatory health beliefs were related to portion sizes, front-of-package labelling and exercise, subscales related to these topics were expected.

The determinant of the correlation matrix (0·11), the Kaiser–Meyer–Olkin test of sampling adequacy (0·80) and Bartlett's test of sphericity (780 149, df = 91, P < 0·001) showed that the data were suitable for factor analysis.

Four factors with an eigenvalue above 1·0 were extracted, which was similar to the scree plot that also showed four factors. Nevertheless, the eigenvalue of the fourth factor, containing three items that were all about compensation behaviour related to eating unhealthy snacks, was only 1·10. Further, this factor had a Cronbach's α of 0·36 which was below 0·4. Therefore, the fourth factor was excluded and only the first three factors, with a total of eleven items, were included in further analyses.

Factor extraction was repeated on the remaining eleven items. Oblique rotation (direct oblimin) was used because it was assumed that the items of the different factors were interrelated to some degree. The correlation matrix (Table 1) showed that the items did not correlate above 0·9 and the values of the anti-image matrix were all above 0·5. The inter-class correlations of the Diet-CHBS showed that the factors were interrelated (Table 2). Furthermore, all items had a factor loading above 0·4 (Table 3) and therefore no items were deleted. Based on these outcomes, the three factors remained in the scale.

Table 1 Correlation matrix of the eleven items of the Diet-related Compensatory Health Beliefs Scale (Diet-CHBS)

Pearson correlation coefficients between all pairs of the items. All correlation coefficients are below 0·9.

Table 2 Inter-correlations of the three factors of the Diet-related Compensatory Health Beliefs Scale (Diet-CHBS)

The inter-correlation matrix indicates the acceptable use of oblique rotation.

Table 3 Cronbach's α values, factor loadings, mean scores and standard deviations of the Diet-related Compensatory Health Beliefs Scale (Diet-CHBS)

The items of the Diet-CHBS after factor extraction. The second column shows the Cronbach's α value for the overall scale and for the separate subscales. The next three columns show the factor loadings that are from the pattern matrix after oblique rotation. All bold factor loadings are above 0·4 and relate to the described factor. The last two columns show the mean scores and standard deviation of the corresponding factor.

The first factor (items 1–4, Table 3) contained items that reflected compensatory beliefs related to exercise and had an α of 0·75. The second factor was concerned with compensatory beliefs related to portion sizes (items 5–8, Table 2) and had an α of 0·73. The third factor reflected compensatory beliefs associated with products with front-of-package logos (items 9–11, Table 3) and had an α of 0·77. The mean scores and standard deviations for each factor were subsequently 2·02 (sd 0·79), 2·73 (sd 0·80) and 2·60 (sd 0·99). The overall Cronbach's α of the Diet-CHBS was 0·82.

Validation

To analyse the convergent validity of the scale, the Pearson correlation was measured between the Diet-CHBS and the CHBS. The test showed a significant correlation of 0·32 (P ≤ 0·001), indicating a positive association between the two scales. Furthermore, the correlation between the diet-related items of the CHBS and the diet-related items of the Diet-CHBS (Table 3; subscales 2 and 3) was somewhat higher (0·34, P ≤ 0·001).

Study 2: Test–retest reliability of the Diet-CHBS

Methods

Study design and participants

In order to test the test–retest reliability of the Diet-CHBS, a group of Dutch worksite cafeteria visitors of various companies were included in the study. This population had already participated in a study that assessed the effectiveness of offering worksite cafeteria visitors a small portion of a hot meal in addition to the available size in order to decrease energy intake(Reference Vermeer, Steenhuis and Leeuwis19). In the present study, a total of 384 visitors of twenty-five worksite cafeterias received four online questionnaires. For pre-test purposes, these respondents filled in the Diet-CHBS that was part of the fourth online questionnaire. Afterwards, 191 of the initial 384 respondents were willing to participate in the retest. Two weeks later, they received an online version of the Diet-CHBS again. Finally, 119 participants completed the post-test and were included in the test–retest analysis. The majority of these participants were female (61·1 %) and their age ranged from 19 to 63 years (mean 41 (sd 10·9) years). The overweight and obesity prevalence in this sample was 32·2 %.

Statistical methods

Participants. To be included in the analysis, participants had to fill in all eleven items of the Diet-CHBS at both test moments.

Test–retest analysis. First, the Cronbach's α for the overall scale was measured at both test moments. Further, the test–retest reliability was analysed by measuring the intra-class coefficient (ICC) for single measures between the scores of the two test moments. An ICC of minimal 0·7 indicates that the scale has good test–retest reliability.

Results

Participants

Of the initial 384 worksite cafeteria visitors, 119 participants (31 %) completed all items of the Diet-CHBS at both test moments and were included in the test–retest analysis.

Test–retest analysis

The Cronbach's α values for the Diet-CHBS were 0·79 (T1) and 0·81 (T2), indicating a good internal reliability. The single measure ICC of the Diet-CHBS between T1 and T2 was 0·69 (P < 0·001). This value is almost 0·7 and therefore an adequate test–retest reliability was assumed.

General discussion

In the present paper, a scale measuring diet-related compensatory health beliefs was developed. The scale's internal consistency, convergent validity and test–retest reliability were assessed. The Diet-CHBS is an eleven-item questionnaire and can be used to determine diet-related compensatory health beliefs in response to nutritional interventions aimed at food portion sizes or products with front-of-package labelling to reduce energy intake. To our best knowledge, the Diet-CHBS is the first scale that focuses specifically on diet-related compensatory health beliefs in response to nutritional interventions. Furthermore, the paper highlights the importance of paying attention to this potentially negative side-effect of nutritional interventions aimed at preventing overweight and obesity.

As hypothesized, factors about compensation beliefs related to exercise, food portions and front-of-package labelling were generated. The first factor comprises beliefs about the idea that if you eat small food portions or products with a front-of-package logo, exercise is not required in order to balance your weight. The second factor comprises beliefs about the idea that you can eat unhealthy snacks or large meals if you want to balance your weight, you just have to eat smaller portions or meals in between. The third factor comprises beliefs about the idea that the amount of foods eaten is of less importance in balancing body weight, as long as the product contains a front-of-package logo.

In addition to these expected factors, a fourth factor was extracted from the analysis. Nevertheless, this factor was excluded from the final Diet-CHBS because of its low eigenvalue and Cronbach's α. A viable explanation for the low internal consistency compared with the other factors of the Diet-CHBS is that all items of this factor were snack-related. It is possible that eating unhealthy snacks is associated with a different type of behaviour, i.e. a more affective – hedonistic – type which is not related to healthy eating or compensation behaviour at all.

As hypothesized, the Diet-CHBS had a significant association with the CHBS because both scales measure compensatory health beliefs(Reference Knäuper, Rabiau and Cohen17). Also the diet-related items of the Diet-CHBS showed a significant positive association with the diet-related subscale of the CHBS. Furthermore, the test–retest showed an adequate ICC between T1 and T2. These outcomes indicated the validity of the Diet-CHBS and that it is stable over time. Therefore it can be concluded that the scale is a valid instrument with high internal consistency and adequate test–retest reliability.

Although observational studies have indicated that compensation behaviour can be a side-effect of interventions in order to decrease energy intake aimed at portion sizes and front-of-package logos, so far no study has focused specifically on such underlying diet-related compensatory health beliefs. Therefore the present study contributes to the literature by offering new insights into people's eating behaviour when they are faced with nutritional interventions. An additional strength of the study is that two different populations were used to test the internal consistency, convergent validity and test–retest reliability of the Diet-CHBS. Strengths of the scale are the high internal consistency of both the overall scale and the separate subscales. Furthermore, this scale determines a new important area of nutritional behaviour.

The study and Diet-CHBS also have some limitations. The population used to test the scale's internal consistency and validity was quite young and presumably had a high socio-economic status since all participants were recruited at a university. The majority of the participants were female and had a healthy body weight. Since the overweight and obesity prevalence was much lower in this sample as compared with the Dutch population, it appears that this sample was not representative for the whole Dutch population. The difference in BMI is probably the due to the highly educated population used in Study 1. The sample that participated in Study 2 was more representative for the Dutch population.

A limitation of the scale is that the items of the Diet-CHBS focus only on compensation beliefs associated with interventions related to portion sizes and products with front-of-package logos. There are also other types of nutritional interventions that aim to reduce people's energy intake. For example, stimulating the intake of lean products can be a qualitative intervention to decrease people's energy intake. These products are suitable in an energy-restricted diet but do not always contain a front-of-package logo. In these situations, people can also show compensation behaviour but these are not measured with the present questionnaire.

Furthermore, research has shown that that the concept of ‘compensation behaviour’ is not always unfavourable in weight balancing. For example, a study from Wammes and colleagues revealed that people use compensation behaviour in reaction to ‘overbalanced’ energy intakes. After bingeing episodes, people tended to eat healthier foods or tended to have more exercise to compensate for their surplus intake and in doing so thought to avoid gaining weight(Reference Wammes, French and Brug20). Further, as mentioned before, Knäuper and collegues developed the CHBS that measures beliefs about how people allow themselves unhealthy behaviour, but compensate for the negative effects and guilt feelings with healthy behaviour afterwards(Reference Rabiau, Knauper and Miquelon21). Translating these beliefs properly into behaviour might neutralize the negative effect of unhealthy behaviour. Nevertheless, compensatory beliefs are not always translated adequately(Reference Kronick, Auerbach and Stich22).

Furthermore, it is important to emphasize that the questionnaire does not explore behaviour, but only beliefs. Beliefs are important to determine behaviour but people have several types of beliefs that counterbalance each other to perform behaviour. In addition to behavioural beliefs which are measured with the Diet-CHBS, people could also have other types of beliefs like normative beliefs or control beliefs. Thus in addition to behavioural beliefs, other beliefs are responsible for performing a particular behaviour(Reference Ajzen23). Besides beliefs, other determinants can influence people's behaviour. For example, physiological factors like hunger can influence people's compensation behaviour(Reference Story, Neumark-Sztainer and French24). In this way, people could eat more products with a more favourable nutrient composition in addition to small meals. Another explanation could be that for some people eating is habitual and therefore not the result of considered reflection(Reference Cohen and Farley25). Therefore, it is recommended to test the Diet-CHBS in intervention studies to explore its overlap with actual compensation behaviour.

Another recommendation is to determine Diet-CHBS scores in more representative populations like target groups for nutritional interventions aimed at decreasing energy intake. Furthermore, it is interesting to compare Diet-CHBS scores for several populations. As described earlier, the participants involved in Study 1 were relatively young, well-educated and had a healthy weight. This is also a likely explanation for the relatively low score on the Diet-CHBS and its subscales. A final recommendation is to determine compensation beliefs in a more wide-ranging perspective than for interventions aimed at portion sizes and front-of-package labelling to decrease energy intake.

Conclusions

The Diet-CHBS is a valid and reliable measure that can help to provide more insight into the beliefs regarding compensatory health beliefs. Whereas the CHBS can be used for a more general assessment of compensatory health beliefs in a broader domain, we suggest using the Diet-CHBS for measuring compensatory health beliefs in the evaluation of nutritional interventions. In doing so, the possible impact of people's diet-related compensatory health beliefs on the main results can be determined.

Acknowledgements

This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. The authors have no conflict of interest to declare. All authors conceived the study idea and design. M.P.P. and W.M.V. collected data, contributed to interpretation of the results and led the writing. I.H.M.S. and E.L.V. provided input and critical feedback on drafts of the manuscript. The authors thank all participants for their contribution in the studies.

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Figure 0

Table 1 Correlation matrix of the eleven items of the Diet-related Compensatory Health Beliefs Scale (Diet-CHBS)

Figure 1

Table 2 Inter-correlations of the three factors of the Diet-related Compensatory Health Beliefs Scale (Diet-CHBS)

Figure 2

Table 3 Cronbach's α values, factor loadings, mean scores and standard deviations of the Diet-related Compensatory Health Beliefs Scale (Diet-CHBS)