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Effects of physical form of β-lactoglobulin and calcium ingestion on GLP-1 secretion, gastric emptying and energy intake in humans: a randomised crossover trial

Published online by Cambridge University Press:  30 January 2024

Jonathan D. Watkins
Affiliation:
Centre for Nutrition, Exercise and Metabolism, Department for Health, University of Bath, Bath, UK
Harry A. Smith
Affiliation:
Centre for Nutrition, Exercise and Metabolism, Department for Health, University of Bath, Bath, UK
Aaron Hengist
Affiliation:
Centre for Nutrition, Exercise and Metabolism, Department for Health, University of Bath, Bath, UK
Søren B. Nielsen
Affiliation:
Arla Foods Ingredients Group P/S, Viby J, Denmark
Ulla Ramer Mikkelsen
Affiliation:
Arla Foods Ingredients Group P/S, Viby J, Denmark
John Saunders
Affiliation:
Royal United Hospital, Bath, UK
Francoise Koumanov
Affiliation:
Centre for Nutrition, Exercise and Metabolism, Department for Health, University of Bath, Bath, UK
James A. Betts
Affiliation:
Centre for Nutrition, Exercise and Metabolism, Department for Health, University of Bath, Bath, UK
Javier T. Gonzalez*
Affiliation:
Centre for Nutrition, Exercise and Metabolism, Department for Health, University of Bath, Bath, UK
*
*Corresponding author: Javier T. Gonzalez, email [email protected]
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Abstract

The aim of this study was to assess whether adding Ca2+ to aggregate or native forms of β-lactoglobulin alters gut hormone secretion, gastric emptying rates and energy intake in healthy men and women. Fifteen healthy adults (mean ± sd: 9M/6F, age: 24 ± 5 years) completed four trials in a randomised, double-blind, crossover design. Participants consumed test drinks consisting of 30 g of β-lactoglobulin in a native form with (NATIVE + MINERALS) and without (NATIVE) a Ca2+-rich mineral supplement and in an aggregated form both with (AGGREG + MINERALS) and without the mineral supplement (AGGREG). Arterialised blood was sampled for 120 min postprandially to determine gut hormone concentrations. Gastric emptying was determined using 13C-acetate and 13C-octanoate, and energy intake was assessed with an ad libitum meal at 120 min. A protein × mineral interaction effect was observed for total glucagon-like peptide-1 (GLP-1TOTAL) incremental AUC (iAUC; P < 0·01), whereby MINERALS + AGGREG increased GLP-1TOTAL iAUC to a greater extent than AGGREG (1882 ± 603 v. 1550 ± 456 pmol·l−1·120 min, P < 0·01), but MINERALS + NATIVE did not meaningfully alter the GLP-1 iAUC compared with NATIVE (1669 ± 547 v. 1844 ± 550 pmol·l−1·120 min, P = 0·09). A protein × minerals interaction effect was also observed for gastric emptying half-life (P < 0·01) whereby MINERALS + NATIVE increased gastric emptying half-life compared with NATIVE (83 ± 14 v. 71 ± 8 min, P < 0·01), whereas no meaningful differences were observed between MINERALS + AGGREG v. AGGREG (P = 0·70). These did not result in any meaningful changes in energy intake (protein × minerals interaction, P = 0·06). These data suggest that the potential for Ca2+ to stimulate GLP-1 secretion at moderate protein doses may depend on protein form. This study was registered at clinicaltrials.gov (NCT04659902).

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of The Nutrition Society

Glucagon-like peptide-1 (GLP-1) and peptide tyrosine-tyrosine (PYY) are gut hormones produced by intestinal L-cells(Reference Holst1,Reference Tatemoto and Mutt2) . Whilst GLP-1 stimulates glucose-dependent insulin secretion(Reference Weir, Mojsov and Hendrick3,Reference Vilsboll, Krarup and Madsbad4) , both GLP-1 and PYY delay gastric emptying(Reference Krieger, Arnold and Pettersen5,Reference Read, French and Cunningham6) and reduce food intake(Reference Batterham, Cowley and Small7,Reference Flint, Raben and Astrup8) . These actions can contribute to improved metabolic health, such that GLP-1 agonism has been targeted for obesity and type 2 diabetes management(Reference Drucker9). Strategies including the administration of GLP-1 agonists and dipeptidyl peptidase-IV inhibitors (DPP4; which rapidly cleaves GLP-1 upon binding) have been effective at promoting weight loss and greater glycaemic control in patients with obesity or type 2 diabetes, respectively(Reference Duez, Cariou and Staels10,Reference Wilding, Batterham and Calanna11) . Moreover, one mechanism proposed for the dramatic weight loss and diabetic remission associated with bariatric surgery is increased gut hormone availability(Reference Buchwald, Estok and Fahrbach12,Reference Madsbad, Dirksen and Holst13) . However, many of these approaches are either expensive and/or carry risks of unwanted side effects, so additional strategies to increase gut hormone availability are still sought as alternatives or adjunct to pharmacological approaches.

Nutrition potently regulates enteroendocrine cell action and subsequent peptide hormone release through nutrient sensing and absorption(Reference Spreckley and Murphy14,Reference Modvig, Kuhre and Holst15) . Different receptors related to GLP-1 secretion may be targeted by specific macro/micronutrient intake(Reference Bodnaruc, Prud’homme and Blanchet16). One such receptor, the Ca2+-sensing receptor (CaSR), has been implicated in gut hormone release evidenced by in vitro (Reference Tolhurst, Zheng and Parker17,Reference Conigrave and Brown18) , ex vivo (Reference Mace, Schindler and Patel19) and in vivo experiments in rodent models(Reference Alamshah, Spreckley and Norton20). The CaSR is a class C G-protein-coupled receptor that is responsive to extracellular Ca (principal ligand) and amino acids/peptides(Reference Ojha21,Reference Conigrave, Quinn and Brown22) and is expressed in intestinal L-cells(Reference Sheinin, Kallay and Wrba23). Human studies, however, have provided conflicting results regarding the effects of protein-Ca2+ co-ingestion on gut hormone secretion. GLP-1 secretion was enhanced by about 25 % when Ca is added to a large (50 g) bolus of whey protein hydrolysate in lean individuals(Reference Chen, Smith and Hengist24), but Ca did not increase GLP-1 secretion when added to a more moderate dose of a whey protein hydrolysate (25 g) in individuals with overweight/obesity(Reference Watkins, Smith and Hengist25). The nature of these conflicting data could be due to several factors, including population, protein dose and/or protein form.

β-Lactoglobulin is the major protein in whey protein isolate. Under denaturing conditions, β-lactoglobulin can unfold from its native form and subsequently form aggregates and gel networks. When aggregates of β-lactoglobulin produced by thermal aggregation are subjected to acidification in the stomach, they are prone to further association near the isoelectric point of about 5·2 to form gel structures(Reference Jung, Savin and Pouzot26,Reference Wagner, Biliaderis and Moschakis27) . This at least in part occurs by inducing the formation of intermolecular bridges between chains, via shielding of negatively charged carboxylic groups(Reference Khaldi, Croguennec and André28). Furthermore, Ca2+ is thought to modulate the heterogeneity of the microstructure formed by β-lactoglobulin aggregates which may affect digestive properties(Reference Kharlamova, Chassenieux and Nicolai29,Reference Kharlamova, Nicolai and Chassenieux30) . Since gelation of glucose solutions via the use of gel fibres can slow gastric emptying rates and decrease energy intake(Reference Holt, Carter and Tothill31,Reference Wanders, Mars and Borgonjen-van den Berg32) , it could be speculated that gelation of β-lactoglobulin in the acidic environment of the stomach may also slow gastric emptying rates, with effects on gut hormone availability, appetite and energy intake.

Accordingly, the primary aim of this study was to assess gut hormone secretion and gastric emptying rates in humans following ingestion of β-lactoglobulin in native and aggregate form, both with and without co-ingestion of Ca2+. It was hypothesised that Ca2+ co-ingestion would potentiate gut hormone secretion and slow gastric emptying rates, but that these effects would be more pronounced with the aggregate form of β-lactoglobulin than the native form.

Methods

Experimental design

To establish whether the form of β-lactoglobulin influences the ability of Ca to stimulate GLP-1 secretion and gastric emptying, we employed human experiments with postprandial blood and breath sampling. A Ca-rich milk mineral supplement was used as the vehicle for providing Ca and phosphate on the basis that Ca phosphate may display specific effects on the structural integrity of protein aggregates, providing greater external validity.

Fifteen metabolically healthy men and women (Table 1) were recruited to participate in a double-blinded randomised crossover study with four trial arms. Inclusion criteria included age: 18–65 y, BMI: 18·5–25·0 kg·m−2, no history of metabolic or gastrointestinal disease, and free from allergies or intolerances to Ca or milk proteins. Following written consent, participants were randomly assigned to a trial sequence by a researcher who was not involved in data collection. The study protocol was approved by the NHS Central Bristol Research Ethics Committee (20/SW/060; IRAS: 277805). All procedures were carried out in accordance with the latest version of the Declaration of Helsinki. The study was registered at clinicaltrials.gov (NCT04659902).

Table 1. Participant characteristics

Data are means ± sd.

Pre-trial standardisation

Participants recorded their diet using a paper food diary for 24 h prior to trial 1 and then replicated this diet for 24 h prior to each subsequent trial. Participants were asked to eat habitually although refrain from caffeine, alcohol and any vigorous unaccustomed physical activity for 24 h prior to a trial day. Participants were provided with a standardised meal (Tesco spinach and ricotta cannelloni 440 g; 463 kcal, 56 g carbohydrate, 10 g sugars, 25 g fat and 24 g protein), which was consumed no later than 22.00 the evening before a trial day. A gluten-free alternative standardised meal (Amy’s Kitchen vegetable lasagne 255 g; 360 kcal, 41 g carbohydrate, 6 g sugars, 15 g fat and 15 g protein) was provided for one participant. In an effort to reflect real-life conditions, women were tested at different phases of their menstrual cycle, that is, menstrual cycle was not standardised within or between participants. While we acknowledge this could be considered a limitation, to check if this influenced the overall inferences of the study, sensitivity analysis was performed with females included v. removed from the analyses (there was no indication of differential responses). The washout period between trials was between 2 and 7 d.

Trial days

Participants arrived at the laboratory between 09.00 and 10.00 h following a 10–14 h overnight fast (standardised within participants) having only consumed about 473 ml (pint) of water between waking and attending the laboratory. Water consumption was permitted ad libitum and recorded on first condition and replicated on the subsequent trials. Height was measured using a stadiometer (Seca Ltd), with participants barefoot in the Frankfurt plane. Body mass was measured using digital scales (Tanita) with participants barefoot and wearing light clothing.

Arterialised blood samples were obtained by retrograde cannulation of a pre-heated dorsal hand vein. One participant was cannulated in the antecubital vein which was still arterialised by heating the arm, and sensitivity analysis indicated that this did not influence the overall inference. Site was then matched within participants. A subset of participants (n 3) was fitted with a nasogastric tube by a qualified researcher. The nasogastric tube was roughly 0·5 cm wide and passed about 60 cm down in the stomach from the nostrils. Litmus paper was used to check the correct position of the tube. To assess whether the use of a nasogastric tube influenced the responses, sensitivity analysis was performed with v. without these three participants in the overall dataset, and the inferences remained unaltered.

Baseline measures of blood, breath, visual analogue scales (VAS) of appetite and, if applicable, gastric aspirate were collected prior to the test meal. Test solutions were consumed within a 5-min window (trial commenced upon the first mouthful of the test solution). The time taken to ingest the test solution on trial 1 was recorded and replicated for each subsequent trial. Following the ingestion of the test solution, a palatability and blinding validation scale were completed. Breath samples for the quantification of gastric emptying were collected every 5 min, and blood samples were taken at 15, 30, 45, 60, 90, and 120-min following consumption of the test solutions. VAS was obtained at 60 and 120 min. If applicable, gastric aspirate from the stomach was sampled at every time point at which blood was sampled. At the end of this period, participants ingested an ad libitum lunch (Tesco Hearty Food Co. cheese and tomato pasta 400 g; nutritional info per 100 g, 118 kcal, 20 g carbohydrate, 16 g sugars, 7 g fat and 14 g protein) in isolation, free from distractions, until they were comfortably full. Meals were prepared in a large bowl and replenished every about 5 min so that the contents of the bowl never completely emptied. A gluten-free alternative (Amy’s Kitchen mac and cheese 255 g; nutritional info per 100 g, 181 kcal, 23 g carbohydrate, 2 g sugars, 7 g fat and 6 g protein) was provided for one participant (the inclusion/removal of this participant did not influence the overall statistical inferences). This was followed by another VAS and palatability scale. Upon the completion of the final trial, participants completed a restrained eating questionnaire. The protocol is outlined in Fig. 1.

Fig. 1. Schematic of trial days.

Test solutions

There were four test solutions consumed in a randomised order (researchrandomizer.org; JG) over four trials: (1) β-lactoglobulin (derived from whey protein isolate) in a native form (NATIVE) (32 g providing 30 g protein; Lacprodan BLG 100 Neutral (Arla Foods Ingredients, Viby J)); (2) NATIVE plus milk minerals rich in Ca (NATIVE + MINERALS) (9547 mg to provide 2497 mg Ca; Capolac® MM-0525 BG (containing calcium phosphate, Arla Foods Ingredients, Viby J)); (3) β-lactoglobulin in an aggregate form (AGGREG) (500 ml to provide about 30 g protein (Arla Foods Ingredients, Viby J)); and (4) AGGREG plus milk minerals rich in Ca (AGGREG + MINERALS) (9547 mg to provide 2497 mg Ca; Capolac®). The Ca content in the local tap water was 99·58 mg·l−1(33), and day-to-day variation is < 15 mg which is unlikely to alter any responses measured(Reference Chen, Smith and Hengist24). Ca content was matched to that of the highest doses in our previous study(Reference Watkins, Smith and Hengist25). Thirty litres of 6 % AGGREG pH 7·0 was prepared by hydration of NATIVE powder in 25 litres of demineralised water followed by pH adjustment to 7·0 using 7 % NaOH and final adjustment with demineralised water to 30 litres. Aggregates were produced during ultra-high temperature treatment at 143°C for 4 s using a plate heat exchanger after which the sample was cooled to 10°C and tapped into sterile bottles.

Test solutions were prepared by two researchers not involved with data collection. Each drink contained 80 mg of low-energy-sweetened chocolate flavouring (My Protein) and was labelled with 150 mg (1–13C)-sodium acetate and 100 mg (1–13C)-sodium octanoate for the measurement of gastric emptying. Five hundred millilitres of water were added to NATIVE and NATIVE + MINERALS to volume match the test solutions. The composition of test solutions is given in Table 2.

Table 2. Nutritional composition of each 500 ml test solution for each condition

* NATIVE, β-lactoglobulin derived from whey protein isolate, native form

†NATIVE + MINERALS, NATIVE with Capolac®.

‡AGGREG, β-lactoglobulin derived from whey protein isolate, aggregate form

§AGGREG + MINERALS, AGGREG with Capolac®.

||Reported Ca value includes the estimated tap water content based on 50 mg of Ca per 500 ml(33).

Blood sampling and analysis

A 5-ml sample of arterialised venous blood was collected at each time point. This was dispensed into 5 ml of EDTA collection tubes (Sarstedt) treated with 2500 KIU aprotinin (Sigma-Aldrich Company Ltd) to inhibit DPP4 activity. The tube underwent immediate centrifugation at 4000 g for 10 min at 4°C, and the plasma was transferred to new tubes and stored on dry ice for the remainder of the trial. Plasma samples were stored at −80°C until analysis.

Plasma GLP-1TOTAL (EZGLP1T-36), GLP-1ACTIVE (EZGLPHS-35K), PYYTOTAL (EZHPYYT66K), DPP4 (DC260B) and insulin (EZHI-14K) were measured using commercially available ELISA (Merck Millipore, except DPP4 which was from R&D systems). The antibodies in the GLP-1TOTAL assay detect both GLP-17–36amide and GLP-19–36amide, whereas the antibodies in the GLP-1ACTIVE are specific to GLP-17–36amide only. The GLP-1TOTAL assay is therefore indicative of total secretion, whereas the GLP-1ACTIVE assay is more indicative of hormone action(Reference Holst, Albrechtsen and Rosenkilde34). Similarly, the antibodies in the PYYTOTAL are specific to both PYY1–36 and PYY3–36. DPP4 ELISA plates failed to detect any DPP4 in the samples of five participants, which limited the sample size for this outcome (n 10). Total amino acid concentrations for plasma samples were measured using an L-amino acid quantification assay (Merck Millipore). All samples for comparison between treatments within each participant were included on the same plate, and the respective intra-plate CV for GLP-1TOTAL, GLP-17–36amide, PYYTOTAL, Insulin and total amino acids were 10·1 %, 6·8 %, 9·9 %, 9·6 % and 7·3 %, respectively. It is acknowledged that a CV > 10 % is a limitation of this study.

Subjective appetite ratings

Subjective ratings of appetite were assessed using a previously validated 100-mm VAS(Reference Flint, Raben and Blundell35). The four questions from this scale: ‘How hungry do you feel?’, ‘How full do you feel?’, ‘How satisfied do you feel?’ and ‘How much do you think you can eat?’ were converted into a composite appetite score. This score combines hunger, fullness, satisfaction and prospective consumption using the following equation(Reference Anderson, Catherine and Woodend36):

$$\hskip-140pt{{\rm{Composite}}\;{\rm{appetite}}\;{\rm{score}}}$$
$${= {{\left( {{\rm{hunger}} + {\rm{prospective}}\;{\rm{food}}\;{\rm{consumption}} + \left( {100 - {\rm{fullness}}} \right) + \left( {100 - {\rm{satisfaction}}} \right)} \right)} \over 4}}$$

Gastric emptying and aspiration

Five ml stomach aspirate was sampled at baseline, 30, 60 and 120 min, and aliquoted appropriately for analyte profiling. The (1–13C)-acetate/octanoate technique was employed to measure both the liquid and semi-solid phases of gastric emptying as previously described(Reference Braden, Adams and Duan37,Reference Ghoos, Maes and Geypens38) . Each test solution was labelled with 150 mg (1–13C)-sodium acetate and 100 mg (1–13C)-sodium octanoate. Breath samples were then collected every 5 min after the ingestion of the liquid test meal and were analysed for isotopic enrichment by an isotope ratio mass spectrometer (Iso-Analytical) with an online gas chromatographic purification system. All δ values were expressed v. the Pee Dee Belemnite international standard and related to the baseline value. This was converted to the percentage (13C) recovery per hour and to the cumulative recovery after 2 h, which acts as a marker of gastric emptying(Reference Ghoos, Maes and Geypens38,Reference Schoeller, Klein and MacLean39) .

Statistical analysis

The primary outcome was plasma GLP-1TOTAL incremental AUC (iAUC). Gastric emptying, in vitro GLP-1TOTAL secretion, concentrations of plasma GLP-17–36amide, PYYTOTAL, DPP4, insulin and plasma amino acid profiles were secondary outcomes, alongside VAS and ad libitum energy intake. The sample size calculation was based on our previous data(Reference Chen, Smith and Hengist24): the mean difference for postprandial plasma GLP-1TOTAL between the co-ingestion of whey protein and Capolac® v. whey protein alone was 9·1 ± 6·9 pmol·l−1 × 120 min (mean ± sd). Using this effect size (d = 1·32), fifteen participants would provide about 85 % probability (power: 0·86) of detecting such an effect with an α-level of 0·05 using a one-way, repeated-measures ANOVA with two tails. Data are presented as means ± sd in text and means ± 95 % CI in figures. The iAUC or total AUC (tAUC) was calculated for all variables (other than ad libitum energy intake and in vitro GLP-1TOTAL) using the Time Series Response Analyser(Reference Narang, Atkinson and Gonzalez40).

Time series data were compared by three-way (time × protein form × minerals) repeated-measures ANOVA. Summary data (e.g. iAUC) were compared by two-way (protein form × minerals) repeated-measures ANOVA. ANOVA statistical tests are considered robust to violations to normality assumptions(Reference Maxwell and Delaney41). Where an interaction effect was determined, post hoc Bonferroni adjustments were applied for multiple comparisons. A cubic model was used to determine gastric emptying half-times on the basis that this provided an r 2 of > 0·996. A two-tailed P value of ≤ 0·05 was deemed statistically significant. Results were analysed using Microsoft Excel version 16.0, SPSS statistical software version 25.0 and GraphPad Prism version 8.4.3.

Results

Plasma glucagon-like peptide-1 and peptide tyrosine-tyrosine concentrations

For plasma GLP-1TOTAL concentrations, no minerals × protein form × time interaction was detected (P = 0·06; Fig. 2(a)), although the GLP-1TOTAL iAUC did display a minerals × protein form interaction effect (P = 0·002; Fig. 2(b)), whereby the GLP-1 TOTAL iAUC was higher MINERALS + AGGREG compared with AGGREG (P < 0·01), but not with MINERALS + NATIVE compared with NATIVE (P = 0·09).

Fig. 2. Plasma GLP-1TOTAL concentrations (a), GLP-1TOTAL iAUC (b), GLP-17–36 concentrations (c), GLP-17–36 iAUC (d), PYYTOTAL concentrations (e) and PYYTOTAL iAUC (f) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15. GLP-1, glucagon-like peptide-1; iAUC, incremental AUC; PYY, peptide tyrosine-tyrosine.

A minerals × protein form × time interaction was detected for GLP-17–36 concentrations (P = 0·05; Fig. 2(c)), although post hoc comparisons were not significant following adjustment for multiple comparisons. Similarly, no minerals × protein form interaction effect was detected for the GLP-17–36 iAUC (P = 0·18; Fig. 2(d)).

Similarly, no minerals × protein form × time interaction was detected for PYYTOTAL concentrations (P = 0·51; Fig. 2(e)) and no minerals × protein interaction for PYYTOTAL iAUC (P = 0·31; Fig. 2(f)).

Plasma insulin, amino acid and dipeptidyl peptidase-IV concentrations

No minerals × protein form × time interactions were detected for concentrations of insulin, amino acids or DPP4 (P = 0·8, 0·3 and 0·4, respectively; Fig. 3). Similarly, the iAUC for insulin, amino acids and DPP4 did not display a minerals × protein form interaction (P = 0·45, 0·17 and 0·9, respectively; Fig. 3).

Fig. 3. Plasma insulin concentrations (a), insulin iAUC (b), amino acid concentrations (c), amino acid iAUC (d), PYYTOTAL concentrations (e) and PYYTOTAL iAUC (f) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15. iAUC, incremental AUC; PYY, peptide tyrosine-tyrosine.

Gastric emptying and gastric pH

Gastric emptying half-life displayed a min effect of minerals (P < 0·01), whereby addition of minerals increased gastric emptying half-life. In addition, a minerals × protein form interaction was detected (P = 0·03), whereby MINERALS + NATIVE increased gastric emptying half-life compared with NATIVE (P < 0·01; Fig. 4(a)), whereas no such effect was observed between MINERALS + AGGREG compared with AGGREG (P = 0·7). Gastric pH demonstrated a similar response in the subgroup of n 3, whereby a main effect of minerals was detected (P = 0·02), where addition of minerals increased pH iAUC, although a minerals × protein interaction was not observed (P = 0·17; Fig. 4(b)).

Fig. 4. Gastric emptying half-life iAUC determined by 13C-acetate and 13C-octanoate breath tests (a) and gastric pH iAUC (b) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15 for panel a and 3 for panel b. iAUC, incremental AUC.

Appetite ratings and energy intake

The composite appetite score did not display a minerals × protein form × time interaction effect (P = 0·6; Fig. 5(a)). However, energy intake did display a main effect of protein form (P = 0·02), whereby AGGREG tended to lower energy intake compared with NATIVE, albeit a minerals × protein form interaction effect was not detected (P = 0·06; Fig. 5(b)).

Fig. 5. Compositive appetite score (a) and ad libitum energy intake (b) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15 for panel a and 3 for panel b. iAUC, incremental AUC.

Standardisation and blinding

The test solutions were well tolerated by all participants and were correctly identified on 19 % of occasions, with 33 % of participants unable to identify a single drink correctly. There was no difference in the time taken to consume the test solutions between conditions (P = 0·18; NATIVE (283 ± 137 s); NATIVE + MINERALS (273 ± 118 s); AGGREG (268 ± 120 s); AGGREG + MINERALS (279 ± 131 s). Data were checked for order effects, and the only parameter to exhibit any evidence of systematic variance between repeated trials was ad libitum energy intake (P = 0·002). Ad libitum energy intake (kcal) was lower in trial 1 compared with all other trials (all P < 0·05). Although, there was no trial order × condition interaction detected (P = 0·06).

Discussion

In the present study, postprandial GLP-1 secretion was modestly increased by the co-ingestion of Ca-rich milk minerals (about 2600 mg Ca) with the aggregate form of β-lactoglobulin (about 30 g), but no such effect was seen when Ca was added to the native form of β-lactoglobulin. There were no differences between conditions in plasma GLP-17–36amide or PYYTOTAL, nor were there any differences in plasma insulin, total amino acids or DPP4 between conditions. Both stable isotope and pH measures suggested that addition of Ca could slow gastric emptying rates, which was seen most clearly when added to the native form of β-lactoglobulin. These changes in GLP-1 and gastric emptying did not clearly translate into a change in appetite ratings or energy intake.

Interestingly, in the present study, GLP-1TOTAL iAUC was only enhanced by Ca when added to the aggregate form of β-lactoglobulin and not the native form. Previous work has demonstrated enhanced GLP-1 concentrations following meals supplemented with Ca in comparison with the same meals without Ca(Reference Gonzalez and Stevenson42Reference Jones, Eller and Parnell44), and the combination of Ca and protein/amino acids has been shown to stimulate GLP-1, in vivo (Reference Chen, Smith and Hengist24) and ex vivo (Reference Mace, Schindler and Patel19) to a greater extent than protein/amino acids alone. Despite this, in our previous work, co-ingestion of whey protein hydrolysate and Ca enhanced GLP-1TOTAL iAUC in comparison with whey protein hydrolysate alone on one occasion,(Reference Chen, Smith and Hengist24) but not the other(Reference Watkins, Smith and Hengist25). These contrasting findings may be due to the dose and/or type of protein ingested, in addition to other macronutrients. The observed effect following perfusion of L-phenylalanine and Ca through rodent small intestine on GLP-1 secretion was observed at supraphysiological concentrations of 10 mM for 90 min(Reference Mace, Schindler and Patel19). In humans, the data from the present study and others suggest that any effect of Ca on further stimulating GLP-1 secretion with whey protein may require protein doses above 30 g. This may be due to the rate of protein digestion, whereby ingesting above 30 g protein in a bolus leads to greater amino acid accumulation in the intestine(Reference Schoenfeld and Aragon45) to allow interactions with Ca on L-cells. Interestingly, Ca did further stimulate GLP-1 secretion with only 30 g of protein, when the β-lactoglobulin was in aggregate form. In the present study, the difference observed in GLP-1TOTAL iAUC was not sustained for GLP-1ACTIVE iAUC, and this may be explained by a couple of reasons. First, it is well known that GLP-1ACTIVE is degraded at a rapid rate, and because of this, it is possible that the detection threshold was not consistently reached by the time GLP-1ACTIVE was sampled in the arm. This is supported by the greater variance in GLP-1ACTIVE compared with GLP-1TOTAL. Second, there is a possibility that a type 2 error has been committed. Overall, these findings suggest that not only protein dose, but also protein form may modulate the effects of Ca-protein co-ingestion on GLP-1 secretion.

It was expected that the aggregate form of β-lactoglobulin would be susceptible to gelation in the acidic environment of the stomach and that this may be modulated by Ca. In turn, this could delay gastric emptying rates. In contrast to this hypothesis, we saw no effect of Ca co-ingestion on gastric emptying rates when added to AGGREG. Ca did, however, delay gastric emptying rates when added to NATIVE. Bile salts and salts of fatty acids with high affinity for Ca have previously been shown to delay gastric emptying rates due to shrinking of lateral intracellular spaces(Reference Hunt46), and it may be that as the aggregate form of protein already had a marginally slow gastric emptying rate as a baseline, the addition of Ca did not further slow this process. Another possibility is that gelation did not alter gastric emptying rates. Although, we cannot confirm whether gelation did occur as this was not measured, and the absence of such gelation could explain the lack of effect on gastric emptying. It may be expected that slowing gastric emptying rates would decrease amino acid absorption and availability. However, we did not observe any meaningful differences between conditions in the postprandial rise amino acid concentrations. It is possible that gastric emptying is not rate-limiting to amino acid availability with the doses of protein used in the current study. These data also suggest that effects of Ca co-ingested with protein on gastric emptying and energy intake are independent of GLP-1, PYY or amino acid availability.

In addition to gastric emptying and intestinal amino acid availability as hypothesised ways to manipulate endogenous GLP-1 availability, whey proteins have also been demonstrated as sources of DPP4 inhibitors(Reference Nongonierma and FitzGerald47). DPP4 inhibition can reduce the degradation of GLP-17–36, thereby maintaining a high concentration of receptor-active GLP-1(Reference Duez, Cariou and Staels10). In the present study, we saw no effect of protein form or Ca co-ingestion on DPP4 concentrations, nor any clear, meaningful effects on GLP-17–36 concentrations. It is therefore unlikely that the form of β-lactoglobulin alters DPP4 availability or activity in the circulation.

Unlike GLP-1, the addition of Ca to AGGREG did not enhance PYYTOTAL, which is surprising considering that both hormones are similarly released from intestinal L-cells(Reference Tatemoto and Mutt2). Increasing Ca dose augmented PYY release similarly to GLP-1 ex vivo (Reference Mace, Schindler and Patel19), but Ca co-ingestion with protein has not been shown to stimulate PYY release to a greater extent than protein alone in humans(Reference Chen, Smith and Hengist24). In male Wistar rats, intraduodenal L-tryptophan administration with the CaSR antagonist NPS 2143 suppressed GLP-1 release in comparison with L-tryptophan alone, but this was not the case for PYY, suggesting that the CaSR is not involved in mediating PYY secretion(Reference Acar, Cetinkaya and Lay48). Despite this, in isolated loops of rat small intestine, perfusion of amino acids in the presence of NPS 2143 significantly reduced total PYY AUC in comparison to without NPS 2143(Reference Mace, Schindler and Patel19). Furthermore, in mucosal L-cells, PYY-Y1 activation (a PYY receptor) partially mediates an increase in glutamine induced electrical L-cell activity, which is dampened following co-administration of NPS 2143(Reference Joshi, Tough and Cox49). These findings suggest the involvement of CaSR in protein-mediated PYY release is inconclusive and, as of yet, protein and Ca co-ingestion has failed to translate to enhanced PYY release in humans.

Importantly, while an increase in GLP-1TOTAL iAUC with the addition of Ca to the aggregate form was observed, it must also be considered whether this difference is physiologically meaningful and/or has practical relevance. In a previous meta-analysis, a mean GLP-1 infusion rate of just 0·89 pmol·kg−1·min−1 across seven studies (infusions over 0–240 min, mean 60 min) led to a reduction in ad libitum energy intake of about 206 kcal (13·2 %) and about 60 kcal (4·5 %) in lean and overweight individuals, respectively, in comparison with a saline infusion(Reference Verdich, Flint and Gutzwiller50). By contrast, the mean difference in GLP-1TOTAL iAUC following ingestion of the aggregate form with or without Ca was about 2·8 ± 4·7 pmol·l−1·min−1. Therefore, the observed difference may not have been sufficient to affect energy intake in the current study, and higher protein doses may be needed for Ca to exert such an effect(Reference Chen, Smith and Hengist24).

In the present study, ad libitum energy intake was not influenced by the addition of Ca to either form of protein, suggesting the difference in GLP-1TOTAL iAUC between these conditions did not translate into any change in energy intake. It should be noted that the sample size was based on the GLP-1TOTAL iAUC, and therefore it is possible that the sample size was too low to detect small effects in energy intake and other variables (e.g. GLP-17–36 and PYYTOTAL). Furthermore, the difference in energy intake observed between protein forms should be considered with some caution. An effect of trial order was observed whereby energy intake was systematically lower in the first trial completed compared with each other trial. Interestingly, the aggregate form without Ca was randomly assigned as the first trial on 6/15 occasions (i.e. with four conditions and fifteen participants, it is impossible to fully counterbalance for every possible permutation of sequences). To determine whether this influenced energy intake, an additional statistical test was conducted to determine whether there was an interaction between trial order and condition. There was no condition × trial order interaction effect. Overall, the data in this study did not provide evidence that addition of Ca to either native or aggregate forms of β-lactoglobulin alters energy intake despite detectable effects on GLP-1 and gastric emptying rates. In addition to effects on energy intake, GLP-1 can increase glucose-stimulated insulin secretion. We did not observe differences in insulin concentrations between conditions, although this may not be surprising given that the test drinks did not contain any appreciable quantities of carbohydrate.

In conclusion, postprandial concentrations of GLP-1TOTAL were potentiated by the addition of Ca-rich milk minerals to an aggregate form of β-lactoglobulin but not when added to the native form. In contrast, gastric emptying rates were decreased by the addition of Ca-rich milk minerals to a native form of β-lactoglobulin. These data suggest that, in addition to protein dose, the form of protein can also modulate the effectiveness of Ca on further stimulating postprandial GLP-1 secretion.

Acknowledgements

J. D. W., J. T. G., F. K., S. B. N. and U. R. M. designed the research, J. D. W. conducted the research, H. A. S. and A. H. prepared the test meals, J. D. W., H. A. S. and A. H. analysed the data, J. D. W. and J. T. G. performed the statistical analysis, J. D. W. and J. T. G. primarily wrote the paper, and all authors read and approved the final version of the manuscript.

This work was funded by Arla Foods Ingredients and the University of Bath.

Conceptualisation: J. D. W., S. B. N., U. R. M., F. K. J. A. B. and J. T. G.; Methodology: J. D. W., J. S., F. K., J. A. B., S. B. N., U. R. M. and J. T. G.; Data collection: J. D. W., H. A. S. and A. H.; Data analysis: J. D. W. and J. T. G.; Manuscript drafting: J. D. W. and J. T. G.; Reviewing and editing manuscript: J. W. D., H. A. S., A. H., S. B. N., U. R. M., J. S., F. K., J. A. B. and J. T. G.

J. D. W. has received research funding as part of their PhD studentship from Arla Foods Ingredients (DK). H. A. S. and A. H. have received research funding as part of their PhD studentship from The Rank Prize Funds. J. A. B. is an investigator on research grants funded by BBSRC, MRC, British Heart Foundation, Rare Disease Foundation, EU Hydration Institute, GlaxoSmithKline, Nestlé, Lucozade Ribena Suntory, Arla foods ingredients, Cosun Nutrition Centre and Salus Optima (L3M Technologies Ltd), has completed paid consultancy for PepsiCo, Kellogg’s, SVGC and Salus Optima (L3M Technologies Ltd), is Company Director of Metabolic Solutions Ltd, receives an annual honorarium as a member of the academic advisory board for the International Olympic Committee Diploma in Sports Nutrition, and receives an annual stipend as Editor-in Chief of International Journal of Sport Nutrition & Exercise Metabolism. J.T.G. is an investigator on research grants funded by BBSRC, MRC, British Heart Foundation, The Rank Prize Funds, The European Society for Clinical Nutrition and Metabolism (ESPEN), Lucozade Ribena Suntory, Arla Foods Ingredients, Cosun Nutrition Centre and Clasado Biosciences and has completed paid consultancy for PepsiCo, Violicom Medical Limited, 6d Sports Nutrition, Tour Racing limited, and SVGC.

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Figure 0

Table 1. Participant characteristics

Figure 1

Fig. 1. Schematic of trial days.

Figure 2

Table 2. Nutritional composition of each 500 ml test solution for each condition

Figure 3

Fig. 2. Plasma GLP-1TOTAL concentrations (a), GLP-1TOTAL iAUC (b), GLP-17–36 concentrations (c), GLP-17–36 iAUC (d), PYYTOTAL concentrations (e) and PYYTOTAL iAUC (f) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15. GLP-1, glucagon-like peptide-1; iAUC, incremental AUC; PYY, peptide tyrosine-tyrosine.

Figure 4

Fig. 3. Plasma insulin concentrations (a), insulin iAUC (b), amino acid concentrations (c), amino acid iAUC (d), PYYTOTAL concentrations (e) and PYYTOTAL iAUC (f) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15. iAUC, incremental AUC; PYY, peptide tyrosine-tyrosine.

Figure 5

Fig. 4. Gastric emptying half-life iAUC determined by 13C-acetate and 13C-octanoate breath tests (a) and gastric pH iAUC (b) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15 for panel a and 3 for panel b. iAUC, incremental AUC.

Figure 6

Fig. 5. Compositive appetite score (a) and ad libitum energy intake (b) following consumption of 30 g β-lactoglobulin in native form (NATIVE) or aggregate form (AGGREG) with (+MINERALS) and without (-MINERALS) Ca-rich milk minerals. Data are means ± 95 % CI. n 15 for panel a and 3 for panel b. iAUC, incremental AUC.