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Energy balance-related behavioural patterns in 5-year-old children and the longitudinal association with weight status development in early childhood

Published online by Cambridge University Press:  29 November 2011

Jessica S Gubbels*
Affiliation:
Department of Health Promotion, Maastricht University, NUTRIM School for Nutrition, Toxicology and Metabolism, PO Box 616, 6200 MD Maastricht, The Netherlands
Stef PJ Kremers
Affiliation:
Department of Health Promotion, Maastricht University, NUTRIM School for Nutrition, Toxicology and Metabolism, PO Box 616, 6200 MD Maastricht, The Netherlands
R Alexandra Goldbohm
Affiliation:
TNO, Leiden/Zeist, The Netherlands
Annette Stafleu
Affiliation:
TNO, Leiden/Zeist, The Netherlands
Carel Thijs
Affiliation:
Department of Epidemiology, Maastricht University, School for Public Health and Primary Care (CAPHRI), Maastricht, The Netherlands
*
*Corresponding author: Email Jessica.Gubbels@maastrichtuniversity.nl
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Abstract

Objective

The current study examined clustering of dietary intake and activity behaviours (i.e. physical activity (PA) and sedentary behaviour) in 5-year-old children, as well as the longitudinal association with BMI and overweight development.

Design

Principal component analysis (PCA) was used to identify behavioural patterns. Backward regression analyses were used to examine the association of behavioural patterns with parent and child background characteristics, as well as the association of the patterns with BMI Z-score and overweight development up to ages 7 and 8 years.

Setting

The Netherlands.

Subjects

Data originated from the KOALA Birth Cohort Study (n 2074 at age 5 years).

Results

Four patterns emerged: a ‘sedentary-snacking’ pattern (including television viewing and snack consumption), a ‘healthy intake’ pattern (including healthy items such as fruit, vegetables and fish), a ‘sandwich’ pattern (including bread and sandwich fillings) and a ‘sporty-traditional meal’ pattern (including sports, meat and potatoes). The patterns were related to child gender, general appetite and various parental characteristics. The sedentary-snacking pattern was positively associated with longitudinal BMI development.

Conclusions

Cross-behavioural energy balance-related behavioural patterns exist at age 5 years. Different activity types (e.g. sports, television viewing) clustered differently with the behavioural patterns, indicating the need to incorporate these different types instead of one general PA measure in energy balance-related pattern analyses. The clustering and potential synergy between activity behaviours and dietary intake, as well as the associations with weight status development, stress the importance of an integrated approach to PA and healthy nutrition promotion in preventing childhood overweight.

Type
Research paper
Copyright
Copyright © The Authors 2012

Overweight and obesity are a rapidly growing problem, affecting not only adults but children worldwide as well( 1 , 2 ). Furthermore, overweight children often become overweight or obese adults( Reference Singh, Mulder and Twisk 3 ). The most important determinants of childhood overweight and obesity include the consumption of energy-dense foods, frequent television viewing and computer use, and low levels of physical activity (PA)( Reference Rennie, Johnson and Jebb 4 ). Several studies have examined the co-occurrence, or ‘clustering’, of such ‘energy balance-related behaviours’ (see below for examples). Clustering is defined as a combination of behaviours which is more prevalent than expected based on the prevalence of the separate behaviours( Reference Schuit, van Loon and Tijhuis 5 ). The potential synergy between energy balance-related behaviours could be used in obesity prevention interventions, applying an integrated approach addressing multiple behaviours simultaneously( Reference Kremers, De Bruin and Schaalma 6 ).

Identifying behavioural patterns in young children is important, since dietary and PA habits are formed at early life stages and track into later life( Reference Reilly, Jackson and Montgomery 7 , Reference Kelder, Perry and Klepp 8 ). Moreover, childhood dietary patterns have been shown to track into adulthood( Reference Mikkila, Rasanen and Raitakari 9 , Reference Northstone and Emmett 10 ). Principal component analysis (PCA) and cluster analysis are both frequently used and validated methods for examining the existence of dietary patterns( Reference Hu, Rimm and Smith-Warner 11 , Reference Millen, Quatromoni and Copenhafer 12 ). Numerous studies have applied one of these techniques to examine either dietary patterns( Reference Mikkila, Rasanen and Raitakari 9 , Reference Northstone and Emmett 10 , Reference Ritchie, Spector and Stevens 13 Reference Rasanen, Lehtinen and Niinikoski 19 ) or activity patterns( Reference Jago, Fox and Page 20 , Reference te Velde, De Bourdeaudhuij and Thorsdottir 21 ) in children. Fewer studies have looked into cross-behavioural clustering (i.e. clustering between PA and dietary intake) in children. These studies show some comparable behavioural patterns, including a ‘sedentary-snacking’ pattern, in which intake of unhealthy food items (e.g. snacks, soft drinks) clusters with sedentary behaviour (i.e. television and computer use)( Reference Gubbels, Kremers and Stafleu 22 Reference van der Sluis, Lien and Twisk 28 ). In addition, previous studies often report an ‘all-round-healthy’ pattern of healthy food intake and high levels of PA( Reference Lioret, Touvier and Lafay 23 Reference Yen, Chiu and Wu 26 , Reference van der Sluis, Lien and Twisk 28 , Reference Sabbe, De Bourdeaudhuij and Legiest 29 ) and/or low levels of sedentary behaviour( Reference Cameron, Crawford and Salmon 24 , Reference van der Sluis, Lien and Twisk 28 ). However, in contrast to the food groups used in behavioural pattern analyses, which are often assessed thoroughly using validated FFQ or other detailed instruments, activity behaviours are often assessed quite poorly or aggregated into one or two measures summarizing all activity behaviours. All cross-behavioural clustering studies described above were limited to only one measure of PA (e.g. minutes of exercise( Reference Yannakoulia, Ntalla and Papoutsakis 25 )), except for one study that differentiated between moderate and vigorous PA( Reference Sabbe, De Bourdeaudhuij and Legiest 29 ).

Energy balance-related behavioural patterns have been found to be associated with various background characteristics of the child and parents. For instance, girls were more likely to have a healthy intake pattern( Reference Seghers and Rutten 27 ), while boys were more likely to have a sporty-healthy eating pattern( Reference Sabbe, De Bourdeaudhuij and Legiest 29 ) or a high active/high sedentary behavioural pattern( Reference Seghers and Rutten 27 ). A lower parental educational level has been found to be positively associated with unhealthy behavioural patterns, and negatively with healthy patterns( Reference Gubbels, Kremers and Stafleu 22 ). Maternal obesity( Reference Gubbels, Kremers and Stafleu 22 ) and lower socio-economic status( Reference Lioret, Touvier and Lafay 23 ) predicted higher scores on the unhealthy sedentary-snacking pattern.

Various behavioural patterns have previously been linked to overweight-related measures. A healthy behavioural pattern (high levels of PA and/or healthy diet) was inversely associated with overweight risk( Reference Lioret, Touvier and Lafay 23 , Reference Yannakoulia, Ntalla and Papoutsakis 25 ), while the sedentary-snacking pattern was positively associated with overweight( Reference Lioret, Touvier and Lafay 23 ). However, other studies find no association with BMI or overweight( Reference Gubbels, Kremers and Stafleu 22 , Reference Cameron, Crawford and Salmon 24 , Reference Seghers and Rutten 27 , Reference Sabbe, De Bourdeaudhuij and Legiest 29 ), possibly due to the cross-sectional design of those studies.

The current study examined clustering of energy balance-related behaviours of 5-year-olds. In line with previous findings we hypothesized to find patterns similar to the general patterns described above (e.g. a healthy pattern, a sedentary-snacking pattern). The current study adds to previous research by using detailed behavioural measures for both dietary intake and activity behaviours. We further examined the association of the identified patterns with background variables of the child (e.g. gender) and parents (e.g. educational level). Finally, we examined the longitudinal association of the dietary patterns with BMI and weight status.

Methods

Respondents and procedure

The KOALA Birth Cohort Study (The Netherlands) is a prospective cohort study which started in 2000. Healthy pregnant women were recruited from an existing cohort, as well as through ‘alternative lifestyle’ recruitment channels (e.g. anthroposophist midwives, organic food shops)( Reference Kummeling, Thijs and Penders 30 ). The latter group (17·9 %) could have an alternative lifestyle with regard to dietary habits (e.g. organic, vegetarian), child rearing, vaccination schemes or antibiotics use. All participants signed informed consent, and ethical approval was obtained from the Maastricht University/University Hospital Maastricht medical ethics committee. A total of 2834 women completed questionnaires during pregnancy and after birth.

Questionnaire

When the children reached the age of about 5 years old, parents completed an extensive questionnaire regarding various background characteristics, their children's dietary intake, activity behaviours and BMI, and other relevant factors (n 2074; 73·2 %). Follow-up questionnaires, assessing only child BMI, were sent around ages 7 years (n 2002; 96·5 %) and 8 years (n 1828; 88·1 %). The questionnaires are described in more detail below.

Child activity behaviour

Children's activity behaviour was assessed using the Standard Questionnaire for measuring Physical Activity, used in Dutch Youth Health Care( 31 ). Parents were asked on how many days in a normal week during the last 4 weeks their child had gone to school on foot or by bicycle, played sports at school (e.g. during physical education lessons), played sports at a sports club and played outside (outside school hours). A second question assessed the average duration of each activity. The duration and number of days were multiplied to calculate the total number of minutes spent on each activity per week. Sedentary screen-based behaviour was assessed in a similar manner, asking for television watching (including videos and DVDs) and computer playing. Table 1 provides an overview of the activity behaviours assessed.

Table 1 Energy balance-related behavioural categories and their descriptive statistics among the study population (n 2074): KOALA Birth Cohort Study, The Netherlands

†Average total physical activity = 795 (sd 378) min/week, average sedentary time = 411 (sd 293) min/week.

‡Average total energy intake = 43 210 (sd 8994) kJ/week.

Child dietary intake

Children's dietary intake was assessed using a detailed FFQ, developed to assess children's energy intake and validated using the doubly labelled water method (Pearson correlation coefficient = 0·62)( Reference Dutman, Stafleu and Kruizinga 32 ). Parents indicated their child's average consumption frequency during the 4 weeks preceding the questionnaire, by checking one of six frequency categories ranging from ‘never’ to ‘6–7 d/week’. Respondents were asked to report portion sizes in natural units (e.g. pieces, slices), household units (e.g. glasses, spoons) or grams. Intake frequency and portion size were then multiplied to obtain average intake.

The intake of the foods was categorized into twenty-four food groups (Table 1). The energy intake (in kilojoules) per week from each group was calculated using the 2001 Netherlands Food Composition (NEVO) table( 33 ). The energy intake was calculated per week in order to facilitate comparison with the activity behaviours. Nutritional values of products that were not included in the 2001 NEVO table were estimated by a dietitian.

Child BMI and weight status

Parents were asked in the 5-year questionnaire to report their child's weight and height (measured without shoes and clothes, specified to one decimal), in order to calculate the child's BMI (i.e. weight (kg)/[height (m)]2). BMI was then recoded into age- and gender-specific BMI Z-scores compared with the national reference population( Reference Fredriks, van Buuren and Wit 34 ). Parents were asked to indicate their child's weight and height again in follow-up questionnaires at ages 7 and 8 years, in order to calculate BMI Z-scores for those ages. A BMI Z-score ≥85th percentile was considered overweight( Reference Barlow 35 ).

Child and parental background factors

Child gender was assessed in a previous questionnaire. In the 5-year questionnaire, parents were asked to indicate their child's general appetite and activity style, using two items each. For general appetite, parents were asked to indicate on a scale from 1 (‘completely disagree’) to 5 (‘completely agree’) to what extent the following statements applied to their child: ‘Compared to peers, my child is always hungry’ and ‘Compared to peers, my child has a small appetite’. The latter item was reverse coded, after which the two items were averaged to get a score from 1 to 5 for the child's general appetite. The activity style was assessed in a similar way using the items ‘Compared to peers, my child is very active’ and ‘Compared to peers, my child never sits still’.

Various parental background factors were assessed, including the number of hours per week that fathers and mothers worked, their highest completed educational level and their country of birth. Educational level was recoded into three levels (low, medium, high)( 36 ). Country of birth was recoded into ‘Netherlands’ v. ‘other’. Parents were further asked to indicate their own weight and height, in order to calculate parental BMI (in kg/m2).

Analyses

The analyses were conducted using the SPSS statistical software package version 15·0 (SPSS Inc., Chicago, IL, USA). P values <0·05 were considered statistically significant.

PCA with oblique rotation was performed to examine behavioural patterns( Reference Field 37 ). All variables were standardized, and a scree plot was used to determine the number of components( Reference Field 37 ). Behavioural items with absolute component loadings >0·4 were considered part of the pattern( Reference Stevens 38 ). Behavioural pattern scores were calculated using the regression method( Reference Field 37 ).

Given the explorative nature of the analyses( Reference Field 37 ), backward linear regression analyses were conducted to examine the association between various background characteristics and the pattern scores. The background characteristics included in the analyses were child gender, BMI Z-score at age 5 years, general appetite and activity style, and maternal and paternal working hours, educational level, country of birth and BMI. Dummy variables for high and low compared with medium educational level were created for the regression analyses. The analyses were further adjusted for recruitment group (alternative v. conventional lifestyle).

Separate backward linear and logistic regression analyses were conducted to examine the association of each of the pattern scores with children's BMI and weight status at the follow-up points at age 7 and 8 years, corrected for BMI or weight status at age 5 years, respectively. For this purpose, the children were divided into tertiles for each pattern. The dummy variables for each tertile were included as independent variables in the analyses. These analyses were corrected for various background characteristics: child gender, BMI Z-score at age 5 years, general appetite and activity style, parental working hours, educational level, country of birth and BMI, and recruitment group. As these analyses were corrected for BMI Z-score or weight status at age 5 years, the outcomes reflect development of BMI and weight status between ages 5 and 7 years, and between ages 5 and 8 years, respectively.

Results

In total, 51·3 % of the children participating at age 5 years were male. Mean birth weight was 3524 (sd 508) g, mean BMI Z-score at age 5 years was −0·27 (sd 0·99). Fathers worked for an average of 37·8 (sd 10·1) h/week, while mothers worked for 17·9 (sd 11·1) h/week. More than half of the mothers (54·2 %) and fathers (53·4 %) had a high educational level, while only 8·0 % of the mothers and 12·8 % of the fathers had a low educational level. Almost all parents (97·0 % of the mothers, 96·3 % of the fathers) were born in The Netherlands. Mean maternal BMI was 24·0 (sd 3·8) kg/m2, mean paternal BMI was 25·0 (sd 3·1) kg/m2.

Child behaviour

Table 1 provides an overview of the averages of the activity and dietary intake behaviours. Most time was spent playing outside: almost 1·5 h/d (623 min/week) on average. Other PA behaviours were performed far less. The total average time spent being physically active was 795 (sd 378) min/week. The total sedentary time (i.e. television and computer use) was 411 (sd 293) min/week.

The average total energy intake of the children was 43 210 (sd 8994) kJ/week. Children consumed by far most of their energy from the ‘Bread and breakfast products’ (7267 kJ/week) and ‘Dairy’ (6829 kJ/week) groups. Other food groups that contributed substantially to children's energy intake were ‘Pastry and cookies’, ‘Sugar-sweetened drinks’, ‘Meat and meat substitutes’ and ‘Composite dishes’.

Clustering of child behaviour: behavioural patterns

Based on a scree plot, the PCA revealed four patterns. The component loadings of each behaviour for each of these patterns can be found in Table 2. The first pattern, named the ‘sedentary-snacking pattern’, was characterized by much television watching, and high intakes of sweets and sugar, pastry and cookies, savoury snacks and sauce. A second pattern included high intake of rice and pasta, fish and seafood, legumes, vegetables and fruit, and was called the ‘healthy intake pattern’. The third pattern comprised high intakes of bread and breakfast products, sweet sandwich fillings and fats, the ‘sandwich pattern’. A fourth pattern included sports at school and at the sports club, as well as intakes of potatoes, meat and meat substitutes, and was characterized as the ‘sporty-traditional meal pattern’. The four patterns explained 26·1 % of the variation in the energy balance-related behaviours, and showed mutual correlations ranging from 0·007 (NS) between the sedentary-snacking pattern and the healthy intake pattern, up to −0·161 (P < 0·0 0 1) between the healthy intake pattern and the sporty-traditional meal pattern.

Table 2 Component loadings of principal component analysis on energy balance-related behaviour among the study population: KOALA Birth Cohort Study, The Netherlands

Results of oblique principal component analysis. Bold component loadings are >0·4 and are thus considered part of the pattern.

Pattern 1 = ‘sedentary-snacking pattern’; pattern 2 = ‘healthy intake pattern’; pattern 3 = ‘sandwich pattern’; pattern 4 = ‘sporty-traditional meal pattern’.

†Activity behaviours are measured in min/week.

‡Dietary intake is measured in kJ/week.

§Total variance in the behavioural variables explained by the four patterns is 26·1 %.

Associations of background characteristics with behavioural patterns

Various child and parental background characteristics were related to the pattern scores (Table 3). Girls scored lower than boys on the sedentary-snacking pattern and the sandwich pattern. A large general appetite was associated with higher scores on the healthy intake and sandwich patterns.

Table 3 Association of child and parental background variables with pattern scores: KOALA Birth Cohort Study, The Netherlands

β, standardized regression coefficient; NL, Netherlands.

Results of backward regression analyses. All analyses were adjusted for recruitment group (alternative v. conventional lifestyle). Variables excluded in all four final models: child BMI Z-score and activity style; father's working hours and country of birth.

Pattern 1 = ‘sedentary-snacking pattern’; pattern 2 = ‘healthy intake pattern’; pattern 3 = ‘sandwich pattern’; pattern 4 = ‘sporty-traditional meal pattern’.

*P < 0·05; **P < 0·01; ***P < 0·001.

†Variable not included in the final model.

Higher parental BMI was related with higher scores on the sporty-traditional meal pattern. Higher maternal BMI was further associated with lower scores on the healthy intake pattern, while higher paternal BMI was associated with higher scores on the sedentary-snacking pattern and lower scores on the sandwich pattern. Parents’ educational level was inversely related with scores on the sedentary-snacking pattern. Maternal educational level was further positively associated with the sandwich pattern and higher paternal educational level was positively related with the healthy intake pattern and negatively with the sporty-traditional meal pattern. The more hours mothers worked, the lower the scores on the sandwich and sporty-traditional meal patterns. Children of mothers who were not born in The Netherlands scored lower on the sporty-traditional meal pattern.

Association of behavioural patterns with BMI and weight status development

All analyses with BMI or weight status at follow-up points as a dependent variable were corrected for BMI and weight status respectively at age 5 years, as well for background variables. The results can be found in Table 4. The sedentary-snacking pattern was positively related to children's BMI at age 7 years (n 2002), as well as at 8 years (n 1828). Children in the highest tertile of the sedentary-snacking pattern had a significantly higher BMI Z-score at age 7 years (standardized regression coefficient, β = 0·110, P < 0·001) than those in the lowest and middle tertiles. Also at age 8 years, the BMI Z-score in the highest tertile of the sedentary-snacking pattern was higher (β = 0·089, P < 0·001) compared with the lowest and middle tertiles. With regard to weight status, children in the highest tertile of the sedentary-snack pattern were also significantly more often overweight at age 7 years (OR = 2·222, P < 0·01). None of the other patterns was significantly related to the children's longitudinal BMI or overweight development.

Table 4 Association of pattern scores with longitudinal BMI and weight status: KOALA Birth Cohort Study, The Netherlands

β, standardized regression coefficient.

Results of backward regression analyses. All analyses were adjusted for recruitment group; child gender, BMI Z-score at age 5 years, general appetite and activity style; parental educational level, working hours, country of birth and BMI.

Pattern 1 = ‘sedentary-snacking pattern’; pattern 2 = ‘healthy intake pattern’; pattern 3 = ‘sandwich pattern’; pattern 4 = ‘sporty-traditional meal pattern’.

*P < 0·05; **P < 0·01; ***P < 0·001.

†Variable not included in the final model.

Discussion

The current study examined energy balance-related behavioural patterns in 5-year-old Dutch children, as well as the longitudinal association with overweight and BMI development. The study is the first to structurally assess and incorporate different types of physical activity (i.e. active transport, school sports, sports at a sports club, and playing outside) in the cross-behavioural pattern analyses of young children's energy balance-related behaviours, together with separate sedentary behaviours and a detailed selection of food groups. We found that these different types of physical activity indeed clustered differently with the various behavioural patterns. Despite the fact that some activity behaviours did not cluster with any of the behavioural patterns, our findings do stress the importance of differentiation of PA types in energy balance-related behaviour clustering studies, instead of incorporating one general PA measure. These findings are in line with a study of Jago and colleagues( Reference Jago, Fox and Page 20 ), who examined clustering within activity behaviour (but not with dietary intake behaviour), and also found that different sedentary behaviours and PA types clustered within different behavioural patterns.

The current study identified four behavioural patterns, two of which were similar to previously found patterns: the sedentary-snack pattern and the healthy intake pattern. The sedentary-snack pattern included television watching and intake of relatively unhealthy sweet and savoury snacks. This is a very common pattern in children, encountered in many studies( Reference Gubbels, Kremers and Stafleu 22 Reference van der Sluis, Lien and Twisk 28 ). In addition, various of the studies that only included dietary intake items reported similar clustering of high intakes of snacks and other unhealthy energy-dense foods( Reference Northstone and Emmett 10 , Reference Ritchie, Spector and Stevens 13 Reference Shin, Oh and Park 16 , Reference Pryer and Rogers 18 , Reference Rasanen, Lehtinen and Niinikoski 19 ). Apparently, this sedentary-snacking pattern is a universal behavioural pattern, found in developed countries all over the world (i.e. Europe, Asia, Australia, USA). Various plausible mechanisms behind the association between television watching and snacking have previously been proposed, including the stimulating influence of snack commercials( Reference Halford, Boyland and Hughes 39 ), the provision of a context during sedentary activities that promotes passive snacking or overeating( Reference Coon, Goldberg and Rogers 40 ), and the distracting influence of television watching while eating, disrupting habituation to food cues (e.g. satiety)( Reference Temple, Giacomelli and Kent 41 ). High levels of sedentary behaviour and intake of energy-dense foods are both important risk factors for childhood obesity( Reference Rennie, Johnson and Jebb 4 ), putting children who score high on this pattern at a double risk for developing overweight or obesity. This is reflected in the positive association between this pattern and subsequent BMI and overweight development we found, in line with previous research( Reference Lioret, Touvier and Lafay 23 ). The fact that many previous studies( Reference Gubbels, Kremers and Stafleu 22 , Reference Cameron, Crawford and Salmon 24 , Reference Seghers and Rutten 27 , Reference Sabbe, De Bourdeaudhuij and Legiest 29 ) did not find such an association between behavioural patterns and weight status can probably be attributed to the cross-sectional design of those studies. We also failed to find such a cross-sectional association, but the current study is one of the first to examine the longitudinal association of energy balance-related behavioural patterns with weight status in young children.

The second common pattern, the healthy intake pattern, included high intakes of mostly healthful foods such as fruit, vegetables, legumes and fish. Various studies have reported a similar pattern( Reference Mikkila, Rasanen and Raitakari 9 , Reference Northstone and Emmett 10 , Reference Ritchie, Spector and Stevens 13 Reference Shin, Oh and Park 16 , Reference Pryer and Rogers 18 , Reference Gubbels, Kremers and Stafleu 22 , Reference Yannakoulia, Ntalla and Papoutsakis 25 ), sometimes with the additional inclusion of high levels of PA( Reference Lioret, Touvier and Lafay 23 Reference Yen, Chiu and Wu 26 , Reference van der Sluis, Lien and Twisk 28 ) and/or low levels of sedentary behaviour( Reference Cameron, Crawford and Salmon 24 , Reference van der Sluis, Lien and Twisk 28 ). It is not clear why the PA behaviours in the current study did not cluster with the healthy intake pattern. A possible explanation could lie in the subdivision of PA into different PA types (e.g. active transport, sports at a sports club). However, secondary PCA with a sum score of all PA instead of the subtypes showed that this was not the case: the sum score of PA did not cluster with any of the patterns, while several of the subcomponents in the original analysis (i.e. school sports and sports at a sports club) did. An alternative explanation might lie in the make-up the KOALA cohort study. Findings of a previous clustering study in the KOALA cohort at age 2 years are in line with this explanation, as that study also revealed a healthy intake pattern without the inclusion of PA in that pattern( Reference Gubbels, Kremers and Stafleu 22 ). Due to choice of recruitment methods, relatively many (17·9 %) parents with an alternative lifestyle were included in the cohort. The majority of these alternative respondents have an explicit preference for healthy nutrition (e.g. vegetarian, organic( Reference Kummeling, Thijs and Penders 30 )), while they do not have specific pronounced opinions regarding PA, as far as we know. The fact that recruitment channel was found to be a significant positive predictor of the healthy intake pattern score (β = 0·24; P < 0·001) supports this hypothesis. Alternatively, PA might actually just not be associated with healthy dietary intake in the current population. Finally, a lower variability of certain variables in our population (compared with others) might limit the detection of such an association in the PCA.

The two other behavioural patterns found in the current study were the sandwich pattern and the sporty-traditional meal pattern. Although content-wise these patterns have no ‘universal’ counterparts in other studies, various studies do report the existence of a ‘traditional’ pattern( Reference Mikkila, Rasanen and Raitakari 9 , Reference Northstone and Emmett 10 , Reference Northstone and Emmett 17 , Reference Pryer and Rogers 18 , Reference Kontogianni, Farmaki and Vidra 42 ), of which the content is dependent on the country or region in which the study was conducted. Examples of such traditional patterns are a traditional Finnish pattern (rye, potatoes, milk, butter( Reference Mikkila, Rasanen and Raitakari 9 )), a British pattern (meat, potatoes( Reference Northstone and Emmett 10 , Reference Northstone and Emmett 17 , Reference Pryer and Rogers 18 )) and a Mediterranean pattern (plant foods, oil, high eating frequency( Reference Kontogianni, Farmaki and Vidra 42 )). The traditional Dutch dinner( Reference van Dam, Grievink and Ocke 43 ) is reflected in the sporty-traditional meal pattern, with a high intake of meat and potatoes. In a way, the sandwich pattern is also a traditional Dutch pattern, as the typical Dutch breakfast and lunch consist of sandwiches( Reference Raaijmakers, Bessems and Kremers 44 ). From an energy balance perspective, the two traditional patterns in the current study are considered neither healthy nor unhealthy, which is confirmed by the lack of an association between the pattern scores and longitudinal BMI and overweight development.

Various child characteristics were significantly associated with their pattern scores. Boys scored higher than girls on the sedentary-snacking and sandwich patterns. This adds to previous research showing that boys more often have an unhealthy intake pattern( Reference McNaughton, Ball and Mishra 15 , Reference Rasanen, Lehtinen and Niinikoski 19 ). In addition, children with a large general appetite scored higher on both the healthy intake pattern and the sandwich pattern, while there was no significant relationship with the sedentary-snacking and sporty-traditional meal patterns. This is an interesting finding, because it indicates that children with a larger appetite do not necessarily show less healthy behaviour. Various measures of impaired appetite regulation (e.g. low satiety responsiveness, high external food cue responsiveness) have previously been linked to childhood overweight and obesity( Reference Carnell and Wardle 45 ). However, a large appetite does not necessarily imply an impaired appetite regulation; children with a relatively large appetite might actually need more energy, and apparently get this from fairly healthy sources such as fruit and sandwiches. Parents can guide these children towards such healthy intake behaviours using specific parenting practices adapted to their child's eating style( Reference Gubbels, Kremers and Stafleu 46 ). An alternative explanation is that parents might associate general appetite with intake during the main meals, and not with snacking behaviour.

In line with previous research( Reference Mikkila, Rasanen and Raitakari 9 , Reference Aranceta, Perez-Rodrigo and Ribas 14 , Reference Gubbels, Kremers and Stafleu 22 ), scores on the healthy intake pattern were positively correlated with father's educational level, and scores on the sedentary-snacking pattern were inversely associated with parental educational level and positively associated with father's BMI. An explanation for these associations could lie in the possible mediating role of parenting practices. Mothers with a lower educational level or a higher BMI have previously been found to use less stimulation of healthy intake and PA( Reference Gubbels, Kremers and Stafleu 46 ). Maternal working hours were inversely associated with the ‘Dutch-traditional’ sandwich and sporty-traditional meal patterns. Households that have a non-traditional parental role division (i.e. the mother also works) are possibly also less traditional in their eating patterns. Alternatively, working mothers might have less time to prepare traditional meals.

The current study has some limitations. All data, including dietary intake, activity behaviour and anthropometric data, were self-reported by the parents, which may have led to bias. Some have suggested the use of accelerometry instead of self-report data in studies examining clustering of activity behaviours in children( Reference Saunders, Prince and Tremblay 47 ). However, although accelerometer data provide objective data regarding the intensity and duration of activities, they often cannot distinguish between different activity types( Reference Jago, Fox and Page 48 ) and are thus unsuitable for the current study. The need to distinguish between different activity types is confirmed by the finding that different activity types cluster differently with the various behavioural patterns. The questionnaire used to assess activity behaviour in the current study, although standardized and widely used in The Netherlands, has not been validated previously. Furthermore, caution is warranted when generalizing our results, as there was an over-representation of ‘alternative’( Reference Kummeling, Thijs and Penders 30 ), relatively healthy lifestyle families in our sample. However, all regression analyses were all adjusted for recruitment channel. A final limitation lies in the choice of analytical methods. Both PCA, used in the current study, and cluster analysis rely on various subjective choices that may influence the outcomes. One of those subjective choices to be made is the cut-off point for component loadings. In the current study we chose a cut-off point of 0·4, in line with recommendations( Reference Stevens 38 ), although cut-off points in previous studies varied from 0·2 to 0·6. Various behavioural items (including the items that were now not included in any of the patterns) would have been included in one of the patterns if a lower cut-off point had been used in the current study (e.g. television viewing for the sporty-traditional meal pattern).

Conclusions

The current study found clustering of energy balance-related behaviours, within the behavioural categories of activity behaviour and dietary intake (i.e. the healthy intake and sandwich patterns), as well as across these categories (i.e. the sedentary-snacking and sporty-traditional meal patterns). The sedentary-snacking pattern was positively related to longitudinal BMI and overweight development up to age 8 years. Furthermore, various parental and child background characteristics were associated with these patterns, providing indications for target groups for future childhood obesity prevention interventions. Especially children of parents with a lower educational level or a higher BMI seem important target groups. Such interventions should aim at targeting both dietary intake and activity behaviours simultaneously, thereby utilizing the synergy between activity behaviours and dietary intake.

Acknowledgements

The collection of data for the study was financially supported by the Dutch Ministry of Economic Affairs, the Dutch Ministry of Health, Welfare and Sports, FrieslandCampina and the Dutch Sugar Bureau, all in The Netherlands. The postdoctoral position of J.S.G. was financed by the NUTRIM School for Nutrition, Toxicology and Metabolism and the Faculty of Health, Medicine and Life Sciences, Maastricht University. The sponsors had no influence on the analysis and reporting of the study. None of the authors have any conflicts of interest to declare. All authors made substantial contributions to the design of the study. J.S.G., R.A.G., A.S. and C.T. were involved in the acquisition of the data. J.S.G. analysed and interpreted the data, and wrote draft versions of the manuscript. S.P.J.K. contributed to the interpretation of the data and the writing of the manuscript. All authors were involved in critically revising the manuscript, and have given their approval for the submitted manuscript.

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Figure 0

Table 1 Energy balance-related behavioural categories and their descriptive statistics among the study population (n 2074): KOALA Birth Cohort Study, The Netherlands

Figure 1

Table 2 Component loadings of principal component analysis on energy balance-related behaviour among the study population: KOALA Birth Cohort Study, The Netherlands

Figure 2

Table 3 Association of child and parental background variables with pattern scores: KOALA Birth Cohort Study, The Netherlands

Figure 3

Table 4 Association of pattern scores with longitudinal BMI and weight status: KOALA Birth Cohort Study, The Netherlands