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Molecular weight of barley β-glucan influences energy expenditure, gastric emptying and glycaemic response in human subjects

Published online by Cambridge University Press:  07 June 2013

P. S. Thondre
Affiliation:
Department of Sport and Health Sciences, Faculty of Health and Life Sciences, Functional Food Centre, Oxford Brookes University, Gipsy Lane, OxfordOX3 0BP, UK
A. Shafat
Affiliation:
Department of Physiology, School of Medicine, National University of Ireland, Galway, Republic of Ireland
M. E. Clegg*
Affiliation:
Department of Sport and Health Sciences, Faculty of Health and Life Sciences, Functional Food Centre, Oxford Brookes University, Gipsy Lane, OxfordOX3 0BP, UK
*
*Corresponding author: Dr M. E Clegg, email mclegg@brookes.ac.uk
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Abstract

Barley β-glucan (BG) has been shown to reduce glycaemic response (GR) in some studies. It is hypothesised that this reduction may be a function of its physical properties that delay gastric emptying (GE). The effect of these changes in GR and GE on diet-induced thermogenesis (DIT) is not known. The aim of the present study was to assess the effect of BG of different molecular weights and purities on GR, GE and DIT in healthy subjects. This was a randomised, single-blind, repeated-measures design where fifteen healthy subjects were tested on three occasions following an overnight fast. Following the baseline measurements, the volunteers were fed a soup containing high-molecular-weight BG (HBG), a soup containing low-molecular-weight BG (LBG) or a control soup with no BG (CHO). Following the consumption of the breakfast, GR was measured using finger-prick blood samples, GE was determined using the 13C-octanoic acid breath test and DIT was measured using indirect calorimetry. There was a difference in GR AUC between the soups after 60 min but not after 120 min. The CHO and LBG meals had a greater GR than the HBG meal. There were differences in all GE time points, with the HBG meal having the slowest GE time. There was a correlation between the GR and the initial GE times. There were differences in total DIT between the three test meals with the HBG meal having the lowest DIT. The present study indicates that HBG has the ability to delay GE due to increased viscosity, resulting in a decreased GR and DIT.

Type
Full Papers
Copyright
Copyright © The Authors 2013 

A worldwide increase in type 2 diabetes along with the prevalence of obesity has prompted the development of nutritional and lifestyle interventions to improve glycaemia and increase energy expenditure. Soluble dietary fibres may have beneficial effects on glycaemic and insulin responses and cholesterol levels as well as body weight maintenance(Reference Ahmad, Anjum and Zahoor1Reference Jenkins, Marchie and Augustin3). Barley β-glucan (BG) is one such fibre that forms a highly viscous solution in the stomach and small intestine, which entraps glucose molecules and slows down their intestinal absorption(Reference Dikeman and Fahey4). However, barley BG in foods has not always been effective in lowering glycaemic response (GR)(Reference Thondre and Henry5Reference Chillo, Ranawana and Pratt8) due to variations in its physical properties such as molecular weight and viscosity. Soluble fibres in foods may increase gastric distension, delay gastric emptying (GE) and alter the levels of gut hormones involved in appetite and satiety(Reference Kristensen and Jensen9, Reference Brownlee10). However, the effect of BG on GE has shown variation with meal consistency and is not always correlated with GR(Reference Juntunen, Niskanen and Liukkonen11). On the other hand, delayed GE has been reported irrespective of any difference in GR or satiety(Reference Hlebowicz, Wickenberg and Fahlstrom12). Juvonen et al. (Reference Juvonen, Purhonen and Salmenkallio-Marttila13) reported changes in glycaemia, insulinaemia and GE after reducing the viscosity of oat BG in a liquid meal. Elsewhere, the reduced GR could not be associated with a delayed GE rate(Reference Hlebowicz, Darwiche and Bjorgell14). Hence, it is evident that the variable effect of BG on GE is not fully understood.

Low-glycaemic index foods have been shown to increase satiety and decrease hunger(Reference Ludwig15, Reference Raben16), yet there is no evidence of low-glycaemic index foods resulting in weight loss(Reference Raatz, Torkelson and Redmon17, Reference Sloth, Krog-Mikkelsen and Flint18) due to problems in study designs, lack of sufficient data on energy expenditure and substrate oxidation. Diet-induced thermogenesis (DIT) is the amount of energy required for the absorption and metabolism of food and represents 10 % of the total energy expenditure(Reference Westerterp19). Some studies(Reference Diaz, Galgani and Aguirre20Reference Pereira, Swain and Goldfine22) have shown the ability of low-glycaemic index foods to increase DIT, and the ingestion of soluble dietary fibres is one such method that may be explored further(Reference Khossousi, Binns and Dhaliwal23).

The role of cereal BG in DIT has not been studied or understood yet. Therefore, we hypothesised that barley BG will increase DIT and the effect will depend on its molecular weight and viscosity. Hence, the main objective of the present study was to investigate the effect of barley BG in a semi-solid meal on postprandial GR, GE, short-term satiety and DIT in healthy subjects. A secondary objective was to examine the differences in the above-mentioned responses depending on the variation in purity and molecular weight of the BG used.

Methods

The present study was a randomised, single-blind, repeated-measures design with volunteers being fed three different test meals on three different days.

Subjects

Fifteen healthy subjects (three males and twelve females, age 27·6 (sd 5·9) years, height 168·7 (sd 7·4) cm, weight 67·4 (sd 13·3) kg and BMI 23·5 (sd 3·0) kg/m2) were recruited for the study by means of advertisements and personal communications over a period of 3 months. Before inclusion into the study, potential participants were briefed on all aspects of the experiment and were given the opportunity to ask questions. This was followed by a health assessment, which included anthropometric measurements and a health questionnaire (giving details of food allergies/intolerances, metabolic diseases, special dietary needs and smoking habits). Those who fulfilled all the acceptable criteria (age 18–60 years, BMI < 30 kg/m2, blood pressure 110–120/75–85mmHg, fasting blood glucose levels < 6 mmol/l, not on prescription medication, and no genetic or metabolic diseases) were included in the study. On the day before each test, the subjects were asked to restrict their intake of alcohol and caffeine-containing drinks and to refrain from any strenuous physical activity.

The present study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving human subjects were approved by the Oxford Brookes University Research Ethics Committee. Written informed consent was obtained from all subjects/patients. On each test day, the subjects arrived between 07.00 and 09.00 hours in the morning after an overnight fasting (10–12 h before testing time) and without undertaking any physical activity.

Test meals

The test meals consisted of a soup (Potato and Leek, Cup a Soup, Batchelors; Premier Foods Group). The energy and macronutrient composition of the test meals are given in Table 1. Available carbohydrates were calculated for each test meal using the Food and Agricultural Organization/WHO procedure(24) according to the nutrition information available from the soup label and the BG suppliers (Polycell Technologies) to provide 25 g of available carbohydrates. Barley balance with a purity of 25 % was used as the source of high-molecular-weight BG (HBG). Glucagel with a purity of 75 % was used as the source of low-molecular-weight BG (LBG). Both were provided by DKSH Great Britain Limited. The preparation of the meals was according to the product instructions. The subjects were blinded as to which soup they consumed on each test day.

Table 1 Energy and nutrient composition of the soup test meals – high-molecular-weight β-glucan (HBG), low-molecular-weight β-glucan (LBG) or a control containing no β-glucan (CHO)*

* Calculations were based on the label of the soup and the nutritional information supplied by the manufacturers of the barley β-glucan.

Study design

The volunteers participated in a randomised, balanced, controlled cross-over study where they consumed a high-BG (HBG) soup, a low-BG (LBG) soup and a control (CHO) soup with no BG on separate days in a random order. The volunteers were randomly assigned each day's test meal using a pseudo-random number generator by setting a random seed (using srand, a function in the programming language C) and by shuffling the order with no restrictions. This was completed by one researcher and testing itself was undertaken by another researcher. On the day before testing, the volunteers were asked to record the food they consumed and repeat it before subsequent tests.

Energy expenditure

On arrival to the laboratory, the volunteers were asked to rest for 30 min in a supine position on a bed before baseline measurements of RMR were taken. RMR was determined in the morning between 07.00 and 09.00 hours. RMR was measured at 1 min intervals for 30 min under the ventilated hood indirect calorimetry system (Deltatrac™ II Metabolic Monitor; Datex-Ohmeda, Inc.). The analyser was calibrated on each test day with standardised gases containing 5 % CO2 and 95 % O2.

DIT was determined for 180 min after the ingestion of the test meal, with measurements taken for 15 min in every 30 min(Reference Reed and Hill25). The first 5 min of every 15 min time period were discarded to allow for stabilisation within the Deltatrac hood, and the average of the remaining 10 min was used. This time period was recommended to be appropriate to measure the thermic effect of foods(Reference Reed and Hill25). DIT was calculated as the increase in energy expenditure per min above pre-meal values for 3 h after the intake of a meal. Energy expenditure and fat oxidation were calculated using the equations of Lusk(Reference Lusk26).

Glycaemic response

The protocol used to measure the blood glucose response was adopted from that described by Brouns et al. (Reference Brouns, Bjorck and Frayn27), and it is in line with the procedures recommended by the Food and Agricultural Organization/WHO(24). Blood was obtained by finger prick using the Unistik 3 single-use lancing device (Owen Mumford). Before a finger prick, the subjects were encouraged to warm their hand to increase blood flow. To minimise plasma dilution, fingertips were not squeezed to extract blood but instead gently massaged starting from the base of the hand moving towards the tips. The first two drops of the extracted blood were discarded, and the next drop was used for testing.

Blood glucose levels were measured using the HemoCue 201+ Glucose analyser (HemoCue Limited). The HemoCue method is reliable for blood glucose analysis(Reference Stork, Kemperman and Erkelens28). Fasting blood samples were taken at − 5 and 0 min, and the test food was consumed immediately afterwards within 15 min at a comfortable pace. Further blood samples were then taken at 15, 30, 45, 60, 90, 120, 150 and 180 min after the consumption of the test meal.

The change in GR was calculated by computing the difference between the blood glucose concentration at a time point and the mean baseline blood glucose concentration (based on two baseline values recorded 5 min apart). Because it represented the relative increment in the GR at any time point compared with the baseline value, it was this change in GR that was used for all further analyses, including incremental AUC (iAUC) calculations, blood glucose response curve construction and statistics. The total blood glucose response was expressed as the iAUC ignoring the area beneath the baseline and was calculated geometrically using the trapezoidal rule(Reference Lusk26, Reference Wolever29).

Gastric emptying

In the present study, 100 mg of [1-13C]sodium acetate were used to measure GE as acetate is hydrophilic, poorly absorbed in the stomach and rapidly metabolised after absorption. Sodium[1-13C]acetate is considered a reliable and valid substance for identifying changes in GE of semi-solids(Reference Braden, Adams and Duan30). Breath samples were collected by making the volunteers blow gently into a 10 ml Exetainer (Labco) with a drinking straw and replacing the cap just before the end of exhalation. Breath samples were analysed using isotope ratio MS (ABCA), and the results were expressed relative to ViennaPDB, an international standard for known 13C composition. 13CO2 values were expressed as the excess amount in the breath above the baseline and converted into moles. CO2 production was assumed to be 300 mmol/m2 body surface area per h. Body surface area was calculated using a validated weight–height formula(Reference Haycock, Schwartz and Wisotsky31). Data are displayed as the percentage of 13CO2 dose recovered per h and the cumulative percentage of 13CO2 recovered over time. The data were then fitted to a GE model developed by Ghoos et al. (Reference Ghoos, Maes and Geypens32). For all the data, r 2 coefficient between the modelled and raw data was calculated, and r 2 was < 0·95 for all the test meals. From this model, several parameters were measured. Lag phase (T lag) and half-time (T half) were calculated using the formulae derived by Ghoos et al. (Reference Ghoos, Maes and Geypens32). T lag is the time taken for the maximal rate of 13CO2 excretion(Reference Jackson, Leahy and McGowan33) and is equivalent to the time of the inflection point(Reference Schommartz, Ziegler and Schadewaldt34). T half is the time it takes for 50 % of the 13C dose to be excreted(Reference Jackson, Leahy and McGowan33). Latency phase (T lat)(Reference Schommartz, Ziegler and Schadewaldt34) is the point of intersection of the tangent at the inflection point of the 13CO2 excretion curve representing an initial delay in the excretion curve. Ascension time (T asc)(Reference Schommartz, Ziegler and Schadewaldt34) is the time course between T lat and T half, representing a period of high 13CO2 excretion rates.

Measurement of viscosity

Viscosity was measured in order to determine the change in rheological properties of the soups with differing molecular weights of BG. The viscosity of the soups was measured using a Bohlin Gemini 2 Rheometer (Malvern Instruments Limited) fitted with a cone and plate geometry (2° cone angle and 55 mm diameter). All measurements were made at 37°C to mimic stomach temperature and at shear rates ranging from 0·02 to 20 per s.

Statistical analysis

Studies of the analysis of GR in humans have been based on ten subjects, as reviewed by the Food and Agricultural Organization/WHO(24) to take into account the inter-individual variations. Hence, a sample size of 12 was considered adequate for the present study, and fifteen subjects were recruited to avoid losses that may lead to errors in the sample size. Data collection was ended at the point at which fifteen subjects were recruited. Outcome measures consisted of GR, GE and DIT. Statistical analysis was performed using Statistical Package for the Social Sciences (version 20.0; SPSS), and the data and figures were processed in a Microsoft Excel spreadsheet (2006). The iAUC were determined for blood glucose, total DIT and fat oxidation using the trapezoidal rule for values above the baseline. The relative increment in the GR and energy expenditure at any time point compared with the baseline value was used to assess the differences at each time. Power calculation was done for the primary outcome measure of GE, T half(Reference Markey, McClean and Medlow35). A sample size of 11 was required to detect a 40 min difference in T half with α set at 0·05 and a power of 90 %. The differences were assessed using a three-factor repeated-measures ANOVA. Where there was a main effect of meal type, pairwise comparisons were made using Sidak post hoc tests. Significance was set at P< 0·05. Values are presented as means and standard deviations or as means with their standard errors.

Results

All fifteen volunteers completed all three trials fully.

Viscosity

The viscosity of the HBG soup was considerably greater than that of either the CHO soup or the LBG soup (Fig. 1). Similar viscosities were demonstrated by the LBG and CHO soups. There was a significant difference between the viscosity of the HBG soup and that of the LBG soup (P< 0·05) and between the viscosity of the LBG soup and that of the CHO soup (P< 0·05) at a shear rate of 0·02 per s. A greater difference in viscosity was noted between the HBG soup and the CHO soup (P< 0·01).

Fig. 1 Viscosity of the soups containing high-molecular-weight β-glucan (○), low-molecular-weight β-glucan (◆) or a control containing no β-glucan ().

Glycaemic response

There was no significant difference in GR iAUC between the meals after 120 min (HBG meal: 84·0 (sd 41·2), LBG meal: 99·0 (sd 50·1), and CHO meal: 111·1 (sd 63·1) mmol × min/l; P= 0·186); however, there was a significant difference in GR iAUC after 60 min (HBG meal: 40·0 (sd 17·6), LBG meal: 70·4 (sd 25·4), and CHO meal: 76·4 (sd 27·1) mmol × min/l; P< 0·001). Differences existed between the HBG and LBG meals and between the HBG and CHO meals, with the CHO and LBG meals having a greater GR than the HBG meal. Over the test duration, differences existed between the three meals at 15 min (P= 0·043), 30 min (P< 0·001), 45 min (P= 0·016) and 120 min (P= 0·006; Fig. 2). For the LBG and CHO meals, the blood glucose levels rose rapidly and reached a peak at 30 min and declined rapidly from there. For the HBG meal also, the blood glucose levels also rose at 30 min and reached a much lower peak, but exhibited a slower decline, resulting in a greater GR than the LBG and CHO meals at 120 min.

Fig. 2 Blood glucose response following the consumption of soups containing high-molecular-weight β-glucan (), low-molecular-weight β-glucan () or a control containing no β-glucan (). Values are means, with their standard errors represented by vertical bars (n 15). * Mean values were significantly different between the test meals (P< 0·05).

Gastric emptying

There were significant differences in all GE time points: T half: P< 0·001, T lag: P= 0·001, T lat: P= 0·02, and T asc: P< 0·001. For all time points, the HBG meal had the slowest GE time with the LBG and CHO meals having similar emptying times (Table 2).

Table 2 Gastric emptying times (min), half-time (T half), lag phase (T lag), latency phase (T lat) and ascension time (T asc) of each of the soups containing either high-molecular-weight β-glucan (HBG), low-molecular-weight β-glucan (LBG) or a control containing no β-glucan (CHO). (Mean values and standard deviations, n 15)

* Mean values were significantly different between the test meals (P< 0·05).

Mean values were significantly different from those of the HBG meal (P< 0·05).

There was a significant correlation between the GE T half and the GR (P= 0·024; r 0·344) and the GE T asc and the GR at 60 min (P= 0·012; r 0·382) such that the shorter the GE time, the greater the GR.

Energy expenditure

The RMR were similar on each test day (HBG meal: 4.10 (sd 0.75) kJ/min (0.98 (sd 0.18) kcal/min), LBG meal: 4.06 (sd 0·84) kJ/min (0·97 (sd 0·20) kcal/min), and CHO meal: 4·1 (sd 0·16) kJ/min (0·97 (sd 0·11) kcal/min); P>0·05). There were significant differences in total DIT between the three test meals (HBG meal: 20·9 (sd 18·4) kJ (5·9 (sd 4·4 kcal), LBG meal: 47·3 (sd 34·7) kJ (11·3 (sd 8·3) kcal), and CHO meal: 43·5 (sd 26·4 kJ (10·4 (sd 6·3) kcal); P= 0·032). These differences existed between the HBG meal and the LBG meal (P= 0·037) and between the HBG meal and the CHO meal (P= 0·015), with the HBG meal having the lowest DIT. These differences occurred at 60 min (P= 0·021) and approached significance at 30 and 90 min (P= 0·059 and 0·058, respectively; Fig. 3).

Fig. 3 Diet-induced thermogenesis following the consumption of soups containing high-molecular-weight β-glucan (HBG, ), low-molecular-weight β-glucan () or a control containing no β-glucan (). Values are means, with standard deviations represented by vertical bars (n 15). † Mean values were significantly different from those of the HBG meal (P< 0·05). Error bars for the LBG values were similar in magnitude to the other data and are not presented to improve clarity.

There was no significant difference in total fat oxidation between the three meals (HBG meal: 0·47 (sd 0·69), LBG meal: 0·43 (sd 0·61), and CHO meal: 0·60 (sd 0·61) g; P>0·05).

Discussion

The present study demonstrated that HBG has the ability to reduce GR and delay GE and that it has the lowest DIT in comparison with LBG and a control (CHO).

It has been shown previously that BG has the ability to reduce GR, but this has not been shown in all studies(Reference Thondre and Henry5Reference Chillo, Ranawana and Pratt8). Several reasons for this have been given in the previous literature. First, BG entraps glucose molecules and slows down their intestinal absorption, resulting in slower release of blood glucose(Reference Dikeman and Fahey4). Second, soluble viscous fibres contribute to the formation of an unstirred layer adjacent to the mucosa of the small-intestinal wall, and this layer acts as a physical barrier to the absorption of nutrients(Reference Wursch and Pi-Sunyer36, Reference Schneeman, McCleary and Prosky37). The present study provides another insight into why barley BG can reduce GR. Barley BG can form a viscous substance when placed in a solution as demonstrated by the rheological data presented. The higher the molecular weight, the greater the viscosity formed due to the entangling of the molecules(Reference Anttila, Sontag-Strohm and Salovaara38). The BG products used in the present study were LBG and HBG having molecular weights of 150 and 650 kDa, respectively, so there was a considerable difference between the two. The increased viscosity results in a slowed transit of food through the gastrointestinal tract. This was evident in the present study from the delayed GE for the HBG soup but not for the LBG soup, reflecting the viscosity data. The effect of GE was also mirrored in the GR data, which was similarly reduced in the HBG soup but not in the LBG soup or the control soup, and the two sets of data were correlated. The present data strongly indicate that the increased viscosity of the HBG soup delayed GE and delayed the delivery of nutrients into the duodenum, hence causing a lag in the uptake of glucose at the brush border, whereas the LBG soup did not. Previous research by our group has shown that BG with a low molecular weight does not influence GR(Reference Thondre and Henry5), whereas HBG does(Reference Thondre and Henry39). Juvonen et al. (Reference Juvonen, Purhonen and Salmenkallio-Marttila13) reported an increase in glycaemic and insulinaemic responses and the acceleration of GE after a reduction in the viscosity of oat BG in a liquid meal. In another study, GR was reduced following the consumption of 4 g oat BG in a semi-solid meal, but there were no changes in the GE rate(Reference Hlebowicz, Darwiche and Bjorgell14). However, in this study, the two test meals used did not contain the same amount of available carbohydrates as would be assumed in GR studies with the oat BG meal containing less available carbohydrates. It is likely that this may have caused the lower GR. The present study is the first to compare GE and GR after the ingestion of BG of different molecular weights and to demonstrate that the GE rate has a large influence on GR due to the increased viscosity.

An interesting finding of the present study was that the LBG and CHO meals had the ability to raise DIT significantly more than the HBG meal. Before commencing the present study, it was hypothesised that adding barley BG to a semi-solid food would increase DIT and the effect would depend on its physicochemical properties such as molecular weight and viscosity. The authors proposed that the increased viscosity would cause an increase in DIT due to the extended time required to digest, absorb and assimilate the nutrients. This theory was supported by previous research that has shown that low-glycaemic index foods result in an increase in DIT(Reference Scazzina, Del Rio and Benini21), which has been attributed to slower carbohydrate absorption and disposal, as a consequence of a slower GE rate, with consequent prolonged energy consumption for the absorption and storage of carbohydrates as glycogen and fat.

However, the opposite effect was observed in the present study with DIT being reduced following the consumption of the HBG test meal. A reduction in DIT after the consumption of a high-fibre meal than after the consumption of a low-fibre meal has been observed in other studies. Heijnen et al. (Reference Heijnen, Deurenberg and van Amelsvoort40) found a reduction in DIT with the addition of resistant starch to a test meal. However, the study did not use equal amounts of digestible carbohydrates in the test meals and instead the resistant starch displaced digestible carbohydrates in the meal. Hence, the amount of available energy was reduced in the resistant starch test meal, which would cause a lower DIT due to lower amounts of carbohydrates to be transported and stored. Another study by Raben et al. (Reference Raben, Christensen and Madsen41) found that with the addition of a pea fibre, DIT was reduced. The study hypothesised that the difference was not due to parasympathetic nervous stimulation but most likely due to sympathetic nervous stimulation due to either the rate of absorption, transport and storage of nutrients or the reduced palatability and cephalic responses of the fibre meal. The second hypothesis is further supported by palatability data obtained from rats(Reference LeBlanc and Labrie42) and intubation studies that have shown that reducing the palatability or bypassing cephalic stimulation causes DIT to be reduced(Reference LeBlanc, Cabanac and Samson43). The present study did not assess the palatability of the two test meals with BG. However, responses from the participants indicated that the main difference in the soups was due to the increase in viscosity caused by the BG.

The reduction in DIT may also be attributed to the attenuation of GR and GE by HBG, which resulted in a retarded absorption of nutrients and a decrease in metabolisable energy. This is in agreement with the findings of Baer et al. (Reference Baer, Rumpler and Miles44), who proposed an inverse relationship between the intake of soluble fibres and metabolisable energy. Many studies have noticed the increased ability of high-molecular-weight BG to lower serum lipid levels in comparison with low-molecular-weight BG. The ability of BG to bind with fat and decrease its absorption may also have caused the reduction in DIT(Reference Braaten, Wood and Scott45Reference Torronen, Kansanen and Uusitupa47), although no changes were evident in fat oxidation during the 3 h test period. Similar to the effects on GR and GE, the addition of LBG in the soup did not result in a reduction in DIT, probably because it is less efficient in binding to fat and reducing its absorption or due to its inability to retard the absorption of glucose.

There are a few limitations to the present study. Although sufficiently powered for GE, the sample size might have been too small to detect changes in DIT and satiety (data not presented). The satiety testing was only based on subjective measures using the visual analogue scale and not on subsequent energy intake. Continuing the DIT measurement for a longer period of time is also recommended because the fibre might undergo fermentation and result in some changes in energy expenditure(Reference Gao, Yin and Zhang48).

In conclusion, the present study has highlighted the importance of retaining barley BG of a high molecular weight in foods in order to derive the beneficial effects on GR and GE. Although diets high in BG are recommended for weight loss, it may be noted that the effect is not mediated by an increase in postprandial DIT in the case of HBG. Hence, further studies are required to investigate the long-term effects of BG on energy expenditure.

Acknowledgements

The authors acknowledge Oxford Brookes University for providing financial support. P. S. T. and M. E. C. contributed to the study design, data collection, data analysis and writing of the manuscript. A. S. contributed to the data collection and writing of the manuscript. There are no conflicts of interest associated with this paper.

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Figure 0

Table 1 Energy and nutrient composition of the soup test meals – high-molecular-weight β-glucan (HBG), low-molecular-weight β-glucan (LBG) or a control containing no β-glucan (CHO)*

Figure 1

Fig. 1 Viscosity of the soups containing high-molecular-weight β-glucan (○), low-molecular-weight β-glucan (◆) or a control containing no β-glucan ().

Figure 2

Fig. 2 Blood glucose response following the consumption of soups containing high-molecular-weight β-glucan (), low-molecular-weight β-glucan () or a control containing no β-glucan (). Values are means, with their standard errors represented by vertical bars (n 15). * Mean values were significantly different between the test meals (P< 0·05).

Figure 3

Table 2 Gastric emptying times (min), half-time (Thalf), lag phase (Tlag), latency phase (Tlat) and ascension time (Tasc) of each of the soups containing either high-molecular-weight β-glucan (HBG), low-molecular-weight β-glucan (LBG) or a control containing no β-glucan (CHO). (Mean values and standard deviations, n 15)

Figure 4

Fig. 3 Diet-induced thermogenesis following the consumption of soups containing high-molecular-weight β-glucan (HBG, ), low-molecular-weight β-glucan () or a control containing no β-glucan (). Values are means, with standard deviations represented by vertical bars (n 15). † Mean values were significantly different from those of the HBG meal (P< 0·05). Error bars for the LBG values were similar in magnitude to the other data and are not presented to improve clarity.