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Eating ‘attentively’ reduces later energy consumption in overweight and obese females

Published online by Cambridge University Press:  16 June 2014

Eric Robinson*
Affiliation:
Eleanor Rathbone Building, University of Liverpool, Liverpool L69 7ZA, UK
Inge Kersbergen
Affiliation:
Eleanor Rathbone Building, University of Liverpool, Liverpool L69 7ZA, UK
Suzanne Higgs
Affiliation:
University of Birmingham, Edgbaston, Birmingham B15 2TT, UK
*
*Corresponding author: Dr E. Robinson, email eric.robinson@liv.ac.uk
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Abstract

Attentional and memory processes underpin appetite control, but whether encouraging overweight individuals to eat more ‘attentively’ can promote reductions in energy consumption is unclear. In the present study with a between-subjects design, a total of forty-eight overweight and obese females consumed a fixed lunchtime meal. Their ad libitum energy intake of high-energy snack food was observed during a second laboratory session that occurred later that day. In the focused-attention condition, participants ate their lunch while listening to audio instructions that encouraged them to pay attention to the food being eaten. In a control condition, participants ate while listening to an audio book with a neutral (non-food-related) content. To test whether focused attention influenced food intake via enhancing the memory of the earlier consumed meal, we measured the participants' memory of their lunchtime meal. Ad libitum snack intake was approximately 30 % lower for participants in the focused-attention condition than for those in the control condition, and this difference was statistically significant. There was limited evidence that attention decreased later food intake by enhancing memory representation of the earlier consumed meal. Eating attentively can lead to a substantial decrease in later energy intake in overweight and obese individuals. Behavioural strategies that encourage a more ‘attentive’ way of eating could promote sustained reductions in energy intake and weight loss.

Type
Full Papers
Copyright
Copyright © The Authors 2014 

Appetite is governed by complex interactions between multiple regulatory factors, including cognition( Reference Speakman 1 Reference Hetherington 3 ). Identifying key cognitive drivers of appetite and energy consumption is likely to be important, as it may enable us to develop more effective interventions to help overweight and obese individuals make sustained reductions in their energy consumption and support weight loss( Reference Higgs, Robinson and Lee 4 ).

We recently meta-analysed studies that have examined the role of attention and memory in energy consumption( Reference Robinson, Aveyard and Daley 5 ). The results of these studies indicated that eating while distracted increases energy intake( Reference Blass, Anderson and Kirkorian 6 ) and that enhancing and impairing episodic memory for recent eating experiences is associated with decreases and increases in later food intake, respectively( Reference Higgs and Donohoe 7 , Reference Oldham-Cooper, Hardman and Nicoll 8 ). We interpreted these findings using an episodic memory account, whereby memory informs appetite regulation by providing information about the satiating effects of recent eating experiences( Reference Higgs 9 , Reference Higgs 10 ). Based on this framework, we proposed that eating more ‘attentively’ (by focusing attention towards the food being consumed) could be a way of promoting reductions in energy consumption. Higgs & Donohoe( Reference Higgs and Donohoe 7 ) tested this proposition in healthy-weight female college students and found that focusing attention during a lunchtime meal reduced later food consumption, and this reduction in food intake was associated with enhanced memory for the earlier consumed meal.

Although mindfulness techniques or encouraging a more ‘mindful’ approach to eating behaviour has received some attention( Reference Tapper, Shaw and Ilsey 11 ) and behavioural monitoring can help individuals make changes to their dietary behaviour and lose weight( Reference Baker and Kirschenbaum 12 ), these techniques are distinct to ‘attentive’ eating, as they do not target appetite through memory or attentional processes. Instead, they encourage individuals to experience difficult thoughts or feelings rather than trying to avoid them( Reference Tapper, Shaw and Ilsey 11 ) and prompt them to monitor goal progress( Reference Baker and Kirschenbaum 12 ). Although encouraging a more attentive way of eating could be an effective way of helping people reduce their energy intake and lose weight( Reference Robinson, Higgs and Daley 13 ), we are not aware of any experimental studies that have examined whether this could be an effective approach for overweight and obese individuals to adopt. Given that increasing attention to food being consumed as it is eaten has been shown to decrease later food intake among healthy-weight participants( Reference Higgs and Donohoe 7 ), the primary aim of the present study was to test whether increasing attention to food being consumed (‘attentive eating’) leads to reductions in later energy consumption in overweight and obese participants.

Methods

Participants

A total of forty-eight overweight and obese females, with a mean age of 32·6 (sd 13·5) years, participated in the present study. The study was advertised as examining ‘taste and food preference’ and participants were recruited from a UK university campus and the surrounding community. Participants who registered interest in the study were only eligible for participation if they were female, aged 18 years or older, fluent speakers of English, were not taking medication that affected their appetite, had no known history of food allergies and had a self-reported BMI ≥ 25 kg/m2. Based on the large effect size that Higgs & Donohoe( Reference Higgs and Donohoe 7 ) observed (standardised mean difference 0·88), a power calculation (75 % power, G*Power 3.1; http://www.softpedia.com/get/Science-CAD/G-Power.shtml) indicated that we would require a sample size of approximately forty-six participants. We recruited slightly above this number in case any participants withdrew from the study. All participants completed the study. The present study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures were approved by the University of Liverpool Research Ethics Committee. Written informed consent was obtained from all participants.

Design

Participants were randomly assigned to one of two conditions. In the focused-attention condition, participants listened to verbal instructions that encouraged them to pay attention to the food they were eating. They were instructed to focus on and pay attention to the look, smell and flavour of the food( Reference Higgs and Donohoe 7 ). In the control condition, participants listened to a fragment of a neutral audio book about the cuckoo bird. The piece describes the arrival of the cuckoo in Britain, the upbringing of their young and their notable cry. Both audio clips lasted 3 min. We opted for a between-subjects design in the present study, as use of a repeated-measures design for a study of this nature would heighten demand awareness and make the aims apparent to the participants( Reference Oldham-Cooper, Hardman and Nicoll 8 ).

Test foods

Participants were offered a ham sandwich and a portion of crisps for lunch. Vegetarians ate a cheese sandwich instead of ham. There were two vegetarians in the control condition and one vegetarian in the focused-attention condition. The ham sandwich was 879 kJ/100 g (210 kcal/100 g), comprising 1004 kJ (240 kcal), 5 g fat (2 g saturated), 34 g carbohydrates (3 g sugars) and 14 g protein per portion. The cheese sandwich was 1172 kJ/100 g (280 kcal/100 g), comprising 1611 kJ (385 kcal), 18 g fat (10 g saturated), 27 g carbohydrates (2 g sugars) and 13 g protein per portion. The crisps were 2201 kJ/100 g (526 kcal/100 g), comprising 715 kJ (171 kcal), 10 g fat (1 g saturated), 17 g carbohydrates (0 g sugars) and 2 g protein per portion. For the afternoon ad libitum snack, participants were provided with well-stocked bowls of three types of cookie, broken into quarters; chocolate fingers (2176 kJ/100 g (520 kcal/100 g)), digestive biscuits (2071 kJ/100 g (495 kcal/100 g)) and chocolate-chip cookies (2138 kJ/100 g (511 kcal/100 g)). Foods were purchased from Tesco Supermarket, UK.

Procedure

After being screened for eligibility, participants attended the first test session that took place between 12.00 and 14.00 hours. Participants first completed a medical history questionnaire to ensure they did not have any food-related allergies. Participants next completed a set of 100 mm paper-based visual analogue scales (anchors: ‘not at all’ to ‘extremely’) to measure hunger (e.g. ‘how hungry do you feel right now?’) and various mood dimensions. Next, the researcher brought the lunchtime meal with a glass of water and provided the participants with headphones. Participants were instructed to listen carefully to the audio clip and were told that they would have approximately 10 min to consume their lunch and that they should try to finish all of the meal. After 10 min, the researcher returned and provided the participants with the same set of appetite and mood rating scales to complete. To corroborate the cover story, participants also completed a questionnaire that asked them to rate how the meal tasted (e.g. ‘how salty was the meal?’). We did not specifically draw attention to the purpose of the audio clips, but in line with the cover story of ‘taste perception’, we reasoned that participants may believe that the study examined how an audio clip influenced taste perception.

At 2–3 h later, participants returned for the second test session. They completed the same appetite and mood rating scales, before being provided with the snacks. Participants were left for 10 min and provided with another taste rating questionnaire to complete and were told that they could eat as much as they liked once they were finished. Participants then completed the appetite and mood rating scales again. Next, they were asked to rate how vivid their memory of their lunchtime meal was (100 mm paper-based visual analogue scale, with anchors ranging from ‘not at all’ to ‘extremely’), as well as were asked how many calories they thought they had eaten at lunch (no guidance or instructions were provided). Participants next completed the Dutch Eating Behaviour Questionnaire( Reference Van Strien, Frijters and Bergers 14 ) and demographic questions, and wrote down what they thought the study was about. Participants were then weighed and had their height measured to calculate BMI and were debriefed. A non-blinded researcher scored all ratings made on the visual analogue scales.

Statistical analysis

We compared the conditions on all outcome measures using independent-sample t tests as data were normally distributed. To examine whether ad libitum consumption was associated with meal memory, we used Pearson's correlation coefficient (r).

Results

Participants

The mean BMI measured on the day of testing was 29·3 (sd 3·4) kg/m2. The two groups did not differ significantly in age, BMI, eating behaviour traits or baseline hunger (see Tables 1 and 2), indicating that randomisation was successful. Only five participants did not consume all of the lunchtime meal (four from the focused-attention condition and one from the control condition). Controlling for energy consumed at lunch did not influence the significant and non-significant patterns of any of the observed results relating to later ad libitum intake or hunger.

Table 1 Characteristics of the study participants as a function of condition (Mean values and standard deviations)

DEBQ, Dutch Eating Behaviour Questionnaire.

* df = 46.

Scale scores are summed averages.

Table 2 Self-reported hunger* by condition (Mean values and standard deviations)

* Hunger measured using a 100 cm visual analogue scale, with anchors ranging from ‘not at all’ to ‘extremely’.

df = 46.

Ad libitum snack intake

Participants in the focused-attention condition ate significantly less than those in the control condition during the afternoon session (t(46) = 2·5, P= 0·015). The mean consumption of participants in the focused-attention condition was 1046 (sd 385) kJ (250 (sd 92) kcal) and that of participants in the control condition was 1490 (sd 774) kJ (356 (sd 185) kcal), which constitutes a 30 % reduction in energy consumption.

We also examined whether the effect of condition on intake differed according to the three different types of cookie used. Entering condition (focused attention v. control) as a between-subject factor and cookie type (chocolate chip, chocolate fingers and digestive biscuits) as a within-subject factor into ANOVA, the interaction between condition and cookie type was not found to be statistically significant (F= 1·851, P= 0·16), suggesting that participants ate less in general and the specific type of cookie used did not significantly moderate whether an effect of condition on intake was observed. The mean intake of each cookie type for the two conditions was as follows: chocolate-chip cookies – focused attention 14 g and control condition 23 g; chocolate fingers – focused attention 24 g and control condition 33 g; digestive biscuits – focused attention 11 g and control condition 13 g.

Hunger

Although participants in the focused-attention condition ate significantly less than those in the control condition during the ad libitum intake session, the two groups reported similar post-consumption hunger levels (P= 0·90). There was no evidence of between-condition differences for self-reported hunger at any of the other time points during the study (see Table 2).

Memory measures

Participants in both conditions had similarly vivid memories of their lunchtime meal (t(46) = 0·9, P= 0·86; focused-attention condition 83·0 (sd 13·3) and control condition 83·7 (sd 9·7)). We measured the participants' memory accuracy for the amount of food they had eaten by subtracting the actual lunch energy content from later estimated consumption (how close the participants were to the exact value). Both conditions overestimated how much they had eaten and the focused-attention condition (380·7 (sd 679·5) kJ (91·0 (sd 162·4) kcal)) tended to be more accurate than the control condition (648·9 (sd 630·1) kJ (155·1 (sd 150·6) kcal)), although this difference was not statistically significant (t(46) = 1·4, P= 0·16). Neither memory vividness (r − 0·12, P= 0·42), nor accuracy for the amount of food eaten (r 0·06, P= 0·67) was associated with energy consumption.

Sensitivity analysis

Removal of outliers

In addition to the main analyses described above, we also examined the effect of removing outlying data points on our planned analyses. There was one outlier (defined as a data point of two or more standard deviations away from the mean) for the main dependent variable (ad libitum energy consumption). Removal of this data point did not influence the results. There was an outlier for the measure ‘accuracy for the amount of food eaten’ (overestimation of 2510·4 kJ (600 kcal)). Removal of this data point resulted in the difference between the focused attention (297·1 (sd 548·1) kJ (71·0 (sd 131·0) kcal)) and (649·4 (sd 630·1) kJ (155·2 (sd 150·6) kcal)) becoming significant (t(46) = 2·0, P= 0·047). Removal of outliers did not affect the relationships between ad libitum energy consumption and the two memory measures.

Demand awareness and eligibility criteria

None of the participants correctly identified the main aims of the present study. Of the forty-eight participants, sixteen mentioned that the amount of food they had eaten may have been assessed during the study, but including this as a factor in the analysis (2 × 2 ANOVA: experimental condition by aware v. unaware) did not affect the effect that condition had on energy intake. The BMI of three participants just missed the overweight weight range (e.g. BMI of 24·6 kg/m2) when their BMI was calculated on the day of testing. Removal of their data did not change the observed results.

Discussion

Overweight and obese participants who focused their attention on what they were eating for lunch ate significantly less during a laboratory snack-tasting session later that day than participants in a control condition. The size of this reduction in energy intake was approximately 30 %. Participants in both conditions had similarly vivid memories of their lunchtime meal, suggesting that differences in food memory may not explain the results, although there was some evidence that the focused-attention condition may have had more accurate memory representations of how much they had eaten at lunch. This is the first study to examine the effect that focused attention has on appetite regulation in overweight and obese participants, and our findings support the notion that behavioural strategies that encourage individuals to focus on and pay attention to their food and eat in a more ‘attentive’ manner may help to promote reductions in energy intake( Reference Higgs, Robinson and Lee 4 ).

Higgs & Donohoe( Reference Higgs and Donohoe 7 ) found that self-reported memory vividness was elevated in the focused-attention condition, and this measure was correlated with later energy intake. In the present study, scores for self-reported memory vividness were high across the two conditions, which may have constituted a ceiling effect( Reference Higgs and Jones 15 ). Although there was some evidence that participants in the focused-attention condition were more accurate when estimating the amount of food they had consumed for lunch, this accuracy was not associated with later energy intake. It may be that if we had included a more specific measure of interoceptive memory, it would have explained the effect that attention had on consumption, as episodic memory may primarily govern appetite through providing information about the satiating effects of recent eating experiences( Reference Higgs, Williamson and Attwood 16 , Reference Brunstrom, Burn and Sell 17 ).

The present study had some limitations. We only sampled females and observed ad libitum energy intake during a single laboratory session. Future work will benefit from examining this novel dietary approach over longer periods, in order to determine whether sustained reductions in energy intake are observed. Given that the decrease in food intake that we observed in the focused-attention condition was not associated with an elevation in post-consumption hunger levels, the longer-term effects of this approach now warrant investigation.

Conclusions

Focusing overweight and obese individuals' attention to food they are eating can lead to substantial reductions in later energy intake. A more ‘attentive’ approach to eating could promote sustained reductions in energy intake and weight loss.

Acknowledgements

There is no external funding to report.

The authors' contributions are as follows: E. R., S. H. and I. K. conceived the study, analysed the data and were involved in the writing of the manuscript; I. K. conducted the study.

None of the authors has any conflicts of interest to declare.

References

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Figure 0

Table 1 Characteristics of the study participants as a function of condition (Mean values and standard deviations)

Figure 1

Table 2 Self-reported hunger* by condition (Mean values and standard deviations)