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Effects of synbiotic supplementation on insulin resistance in subjects with the metabolic syndrome: a randomised, double-blind, placebo-controlled pilot study

Published online by Cambridge University Press:  22 May 2014

Tannaz Eslamparast
Affiliation:
Department of Clinical Nutrition and Diet Therapy, Faculty of Nutrition and Food Technology, National Nutrition and Food Technology, Research Institute Shahid Beheshti University of Medical Science, National Nutrition and Food Technology Research Institute, Shahid Beheshti University of Medical Science, Tehran, Iran Liver and Pancreatobiliary Diseases Research Center, Digestive Diseases Research Institute, Tehran University of Medical Sciences, Shariati Hospital, Tehran, Iran
Farhad Zamani
Affiliation:
Gastroenterology and Liver Disease Research Center, Firoozgar Hospital, Iran University of Medical Sciences, Tehran, Iran
Azita Hekmatdoost*
Affiliation:
Department of Clinical Nutrition and Diet Therapy, Faculty of Nutrition and Food Technology, National Nutrition and Food Technology, Research Institute Shahid Beheshti University of Medical Science, National Nutrition and Food Technology Research Institute, Shahid Beheshti University of Medical Science, Tehran, Iran
Maryam Sharafkhah
Affiliation:
Liver and Pancreatobiliary Diseases Research Center, Digestive Diseases Research Institute, Tehran University of Medical Sciences, Shariati Hospital, Tehran, Iran
Sareh Eghtesad
Affiliation:
Liver and Pancreatobiliary Diseases Research Center, Digestive Diseases Research Institute, Tehran University of Medical Sciences, Shariati Hospital, Tehran, Iran
Reza Malekzadeh
Affiliation:
Liver and Pancreatobiliary Diseases Research Center, Digestive Diseases Research Institute, Tehran University of Medical Sciences, Shariati Hospital, Tehran, Iran
Hossein Poustchi*
Affiliation:
Liver and Pancreatobiliary Diseases Research Center, Digestive Diseases Research Institute, Tehran University of Medical Sciences, Shariati Hospital, Tehran, Iran
*
*Corresponding authors: A. Hekmatdoost, fax +98 2122360657, email [email protected]; H. Poustchi, fax +98 2182415400, email: [email protected]
*Corresponding authors: A. Hekmatdoost, fax +98 2122360657, email [email protected]; H. Poustchi, fax +98 2182415400, email: [email protected]
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Abstract

To evaluate the effects of synbiotic supplementation on insulin resistance and lipid profile in individuals with the metabolic syndrome, we conducted a randomised, double-blind, placebo-controlled pilot study on thirty-eight subjects with the metabolic syndrome; they were supplemented with either synbiotic capsules containing 200 million of seven strains of friendly bacteria plus fructo-oligosaccharide or placebo capsules twice a day for 28 weeks. Both the synbiotic (G1) and the placebo (G2) groups were advised to follow an energy-balanced diet and physical activity recommendations. Parameters related to the metabolic syndrome and insulin resistance were measured every 7 weeks during the course of the study. After 28 weeks of treatment, the levels of fasting blood sugar and insulin resistance improved significantly in the G1 group (P< 0·001). Both the G1 and G2 groups exhibited significant reductions in TAG levels ( − 71·22 v. − 10·47 mg/dl ( − 0·80 v. − 0·12 mmol/l) respectively; P< 0·001) and total cholesterol levels ( − 21·93 v. − 14·2 mg/dl ( − 0·57 v. − 0·37 mmol/l) respectively; P= 0·01), as well as increases in HDL levels (+7·7 v. +0·05 mg/dl (+0·20 v. +>0·01 mmol/l) respectively; P< 0·001). The mean differences observed were greater in the G1 group. No significant changes were observed in LDL levels, waist circumference, BMI, metabolic equivalent of task and energy intake between the groups. The present results indicate that synbiotic supplementation increases the efficacy of diet therapy in the management of the metabolic syndrome and insulin resistance.

Type
Full Papers
Copyright
Copyright © The Authors 2014 

The metabolic syndrome is a rapidly growing worldwide pandemic that increases the risk of developing many chronic diseases, especially CVD and type 2 diabetes( Reference Grundy 1 ). Although several aetiological factors are involved in the development of the metabolic syndrome, insulin resistance and obesity play a key role. Recently, gut microbiota has been considered to be a regulator of energy homeostasis and ectopic fat deposition due to its effects on metabolic disorders( Reference Musso, Gambino and Cassader 2 , Reference Tilg 3 ). In particular, studies comparing obese v. matched lean individuals have found a shift in bacterial phyla and observed more Firmicutes and less Bacteroidetes in the distal gut of obese subjects, and this alteration was found to be abolished after diet-induced weight loss( Reference Turnbaugh 4 , Reference Ley 5 ). Pathogens in the gut can decrease the permeability of the intestinal wall and enter the circulation, where they induce metabolic and inflammatory cascades. Recent evidence has indicated that circulating lipopolysaccharides (LPS), components of Gram-negative bacterial cell walls, are correlated with insulin levels, glucose levels and insulin resistance (as measured by homeostasis model assessment – insulin resistance (HOMA-IR))( Reference Al-Attas, Al-Daghri and Al-Rubeaan 6 , Reference Ghanim 7 ). In addition, high levels of TAG and low levels of HDL-cholesterol that often exist during insulin resistance and the metabolic syndrome are the most essential factors involved in LPS molecule conservation in the circulation( Reference Wendel, Paul and Heller 8 ).

It has been suggested that probiotics and prebiotics might counteract the development of the metabolic syndrome by replacing the aggravating bacteria in the gut, which in turn can improve serum lipid levels and insulin resistance( Reference Vasiljevic and Shah 9 ). Currently, it has been shown in preclinical studies that probiotics are effective at attenuating the metabolic syndrome; however, only few pilot studies in human subjects have been carried out with promising preliminary results( Reference Cani 10 Reference Bogsan, Florence and Perina 12 ). Previous studies have reported that the synergistic effects of synbiotic supplementation on the intestinal and faecal microflora and immune system are significantly greater than the effects of either prebiotic or probiotic supplementation alone( Reference Frece, Kos and Svetec 13 , Reference Worthley, Le Leu and Whitehall 14 ). Considering the various beneficial effects of prebiotics and probiotics and the lack of published data on this issue, the present study was designed to evaluate the effects of supplementation with a type of synbiotic on insulin resistance and serum lipid levels in subjects with the metabolic syndrome.

Research design and methods

Participants

The present study was a prospective, randomised, double-blind, placebo-controlled study. Men and women aged 18 years and above with a diagnosis of the metabolic syndrome were selected from the Haraz clinic of Amol. The metabolic syndrome was diagnosed as having three of the following five features: increased waist circumference ( ≥ 102 cm in men and ≥ 88 cm in women); elevated TAG levels ( ≥ 150 mg/dl ( ≥ 1·69 mmol)); reduced HDL-C levels ( < 40 mg/dl ( < 1·03 mmol/l) in men and < 50 mg/dl ( < 1·29 mmol/l) in women); elevated blood pressure ( ≥ 130/85 mmHg or on treatment for hypertension); elevated glucose levels ( ≥ 100 mg/dl ( ≥ 5·55 mmol/l)), according to the National Cholesterol Education Program Adult Treatment Panel III report( 15 ), and the diagnosis was confirmed via careful questioning by the primary physician and dietitians. Individuals with decompensated diabetes mellitus, untreated hypothyroidism, clinically or biochemically recognised systemic diseases, and psychiatric disorders impairing their ability to provide written informed consent, as well as pregnant/breast-feeding women or those of child-bearing age without effective birth control use, were excluded from the study. If a participant was found to have missed ≥ 10 % of his or her supplement dose at follow-up, he or she was also excluded from the study. The present study was registered at ClinicalTrials.gov ID: NCT02008838.

Study design

A total of 102 individuals were assessed for participation eligibility; of these, forty met the inclusion criteria of the study and two declined to participate, resulting in a sample size of thirty-eight participants (Fig. 1). The thirty-eight participants were then randomly assigned to the synbiotic (G1; n 19) group or the placebo (G2; n 19) group. The G1 group was given a synbiotic supplementation (as a capsule), while the G2 group was given an identical appearing placebo capsule (250 mg maltodextrin) twice a day for 28 weeks. The participants were instructed to consistently take the capsules 2 h after consumption of the same meal each day.

Fig. 1 Flow chart depicting the study design.

Each synbiotic capsule (Protexin) contained 2 × 108 colony-forming units of seven strains of friendly bacteria (Lactobacillus casei, Lactobacillus rhamnosus, Streptococcus thermophilus, Bifidobacterium breve, Lactobacillus acidophilus, Bifidobacterium longum and Lactobacillus bulgaricus), prebiotics (250 mg fructo-oligosaccharide) and a probiotic culture (magnesium stearate (source: mineral and vegetable) and vegetable capsule (hydroxypropyl methylcellulose)). As previous studies had used various combinations of VSL#3, Lactobacillus longum and fructo-oligosaccharide, demonstrating their beneficial effects on intestinal microflora( Reference Li, Yang and Lin 16 Reference Malaguarnera, Vacante and Antic 18 ), this synbiotic capsule was chosen for the present study as it contained all these strains in addition to others.

A 7-week supply of capsules was given to the participants at the time of randomisation and the remainder at the time of the 7th-, 14th- and 21st-week follow-up visits. The participants, investigators and staff were blinded to the treatment assignment until the end of the study. All the participants signed an informed consent form after a full review of the risks and benefits of the study, which were approved by the ethics committee of the National Nutrition and Food Technology Research Institute (NNFTRI) of Shahid Beheshti University of Medical Sciences and the Digestive Diseases Research Institute (DDRI) of Shariati Hospital, Tehran, Iran.

An interviewer completed a questionnaire for each participant, which contained information on each individual's past medical history, family history and medication history, as well as lifestyle behaviours such as smoking, drinking, diet and exercise. Both groups were counselled to follow an energy-balanced diet and physical activity recommendations based on the Clinical Guidelines on the Identification, Evaluation, and Treatment of Overweight and Obesity in Adults from the National Institutes of Health and the North American Association for the Study of Obesity( 19 , 20 ). Each individual was advised to follow a diet containing 2092–4184 kJ less energy than his or her usual daily intake. The distribution of nutrients in relation to the total energy value was as follows: total fat ≤ 30 % total energy value; SFA 8–10 %; MUFA 15 %; PUFA 5 %; protein 10–15 %; carbohydrates 50–60 %; dietary cholesterol < 300 mg/d; fibre 20–30 g/d. They were also advised to perform at least 20–30 min of high-intensity exercise 3–4 d per week( 21 ).

Follow-up

The initial and follow-up visits took place at Haraz clinic. After baseline data collection, follow-up assessments were performed at weeks 7, 14 and 21 and during the last visit, at week 28. Phone calls were also made to each participant on a monthly basis to assess compliance with the study supplementation and the development of any adverse events.

Measurement of anthropometric parameters and blood pressure

Anthropometric measurements of height and weight, as well as waist and hip circumferences, were made at baseline. The measurements were repeated at weeks 7, 14, 21 and 28. Height was measured to the nearest 0·5 cm; weight was measured in light clothing and barefoot to the nearest 0·1 kg. Waist circumference was measured to the nearest 0·1 cm using a flexible tape at the mid-point between the lowest rib and the iliac crest. Hip circumference was measured around the widest portion of the buttocks, with the tape parallel to the floor. The waist:hip ratio was calculated according to WHO recommendations( 22 ). BMI was also calculated by dividing each participant's weight in kg by his or her height in m2. All the measurements were taken by the same person to decrease the error rate. Each participant's blood pressure was measured by a trained nurse on two occasions, before and after sitting for a 15 min period, using a manual blood pressure cuff; the mean blood pressure reading was used for the present analysis( Reference Hardy, Kuh and Langenberg 23 ).

Assessment of dietary intake

Dietary intake was assessed at five time points during the course of the study using food records. At each time point, the participants were instructed to record their daily food and beverage intake for 3 d, including a weekend day. Food scales and models were also used to enhance portion size accuracy. For standardisation purposes, portion sizes were converted from household measurements to grams, and every food and beverage item was subsequently coded according to the protocol and analysed for energy content and other nutrients using Nutritionist 4 (First DataBank), which was modified using the national composition food tables( Reference Ghaffarpour, Houshiar-Rad and Kianfar 24 ). Physical activity was also assessed using the metabolic equivalent of task (MET) questionnaire( Reference Ainsworth, Haskell and Whitt 25 ) at weeks 0, 7, 14, 21 and 28.

Measurement of biochemical parameters

Each participant underwent a biochemical test at baseline, during each follow-up visit and at the end of the study. After a 12 h fast, blood was drawn from the antecubital vein into evacuated tubes containing EDTA, and serum lipid profile, fasting blood sugar levels and insulin levels were determined. All the biochemical assessments were carried out in the same laboratory using standard laboratory methods. Serum TAG, HDL and total cholesterol (TC) levels were determined using a photometric assay (Reckon), while LDL-cholesterol levels were determined using the following equation: LDL = TC–HDL–0·16(TAG). Hypertriacylglycerolaemia was defined as having fasting TAG levels ≥ 150 mg/dl ( ≥ 1·69 mmol/l) and hypercholesterolaemia as having fasting cholesterol levels >200 mg/dl (>5·17 mmol/l). Fasting HDL levels < 50 mg/dl ( < 1·29 mmol/l) for women and < 40 mg/dl ( < 1·03 mmol/l) for men were considered to be low, and LDL levels ≥ 130 mg/dl ( ≥ 3·36 mmol/l) were considered to be high. Fasting glucose levels were measured using the GOD/POD method. Fasting insulin levels were measured using ELISA (Mercodia AB).

HOMA-IR index

The HOMA-IR index was used to determine the degree of insulin resistance using the following formula( Reference Matthews, Hosker and Rudenski 26 ):

$$\begin{eqnarray} HOMA - IR = (fasting\ blood\ glucose\ (mmol/l)\times fasting\ insulin\ (\mu U/ml))/22\cdot 5. \end{eqnarray}$$

QUICKI index

Insulin sensitivity was assessed using the quantitative insulin sensitivity check index (QUICKI) equation: QUICKI = 1/(log insulin (μU/ml)+log glucose (mg/dl))( Reference Hřebíček, Janout and Malinčíková 27 ). A low QUICKI index indicates low insulin sensitivity, while a high QUICKI index indicates high insulin sensitivity.

$$\begin{eqnarray} The\ conversion\ factor\ for\ glucose\ is\ mg/dl = mmol/l\times 18\ and\ for\ insulin\ is\ \mu U/ml = pmol/l/6.9 \end{eqnarray}$$

Statistical analyses

Data were analysed using the STATA software (version 11, StataCorp). For all analyses, a P value < 0·05 was considered statistically significant. Continuous and categorical data are reported as means and standard deviations and frequency (%), respectively. Demographic variables were analysed using χ2 or t test, as appropriate. Pearson's correlation coefficient was calculated to assess the relationship between some outcomes. Means and 95 % CI for changes in outcome variables from baseline were compared at 7, 14, 21 and 28 weeks using ANCOVA models at each time point. All the ANCOVA models were adjusted for sex, age, baseline value of each outcome and mean change in BMI, waist:hip ratio, MET and energy. Means and 95 % CI for HOMA-IR and QUICKI values were plotted v. time from baseline to the end of the treatment.

The sample size was obtained of eighteen subjects per group to discover a difference of 10 % on the mean values of HOMA-IR( Reference Aller, De Luis and Izaola 28 ) between the G1 and G2 groups after 28 weeks of treatment, to a probability of error 5 % and to a test power 80 %.

Results

Characteristics of the participants

The inclusion criteria of the study were met by thirty-eight participants, and they were included in the analysis. No participant was lost to follow-up in the present study. A flow chart depicting the study design is shown in Fig. 1. The baseline clinical and demographic characteristics of both groups are summarised in Table 1. Among the participants, 8 % were smokers and 60·53 % were female. The baseline anthropometric characteristics of both groups were similar (Table 1).

Table 1 Baseline characteristics of the study participants (Mean values and standard deviations)

FBS, fasting blood sugar; TC, total cholesterol; HOMA-IR, homeostasis model assessment – insulin resistance; QUICKI, quantitative insulin sensitivity check index; MET, metabolic equivalent of task.

Findings recorded in the two groups of participants before and after treatment

All the participants completed the trial. From baseline to the end of the study, both groups exhibited similar reductions in many of the study parameters. The in-between group changes were as follows: BMI – 32·13 (sd 2·7) to 30·91 (sd2·5) kg/m2 in the G1 group v. 31·51 (sd 1·47) to 30·37 (sd 2·2) kg/m2 in the G2 group; P =0·656; waist girth – 103·42 (sd 7·5) to 101·42 (sd 6·5) cm in the G1 group v. 102·37 (sd 6·4) to 99·79 (sd 5·7) cm in the G2 group; P =0·516; energy intake – 9785·5 (sd 2351) to 8104·28 (sd 1465·6) kJ/d in the G1 group v. 9294·63 (sd 1764·8) to 7933·95 (sd 1271·3) kJ/d in the G2 group; P =0·284; MET – 32·25 (sd 4·25) to 33·93 (sd 4·15) MET/h per d in the G1 group v. 31·47 (sd 4·13) to 33·06 (sd 4·32) MET/h per d in the G2; P =0·524 group.

On comparing the baseline and end-of-the-study results, a significant improvement in several metabolic parameters was observed within each of the groups and also between them. Although fasting blood sugar and insulin levels decreased significantly in both groups, this decrease was greater in the G1 group than in the G2 group, as follows: fasting blood sugar – 5·62 (sd 1·12) to 5·16 (sd 0·22) mmol/l in the G1 group v. 5·77 (sd 1·47) to 5·59 (sd 1·46) mmol/l in the G2 group; P <0·001 (Table 2), and insulin – 71·39 (sd 33·34) to 57·92 (sd 29·17) pmol/l in the G1 group v. 75·63 (sd 24·31) to 68·82 (sd 22·92) pmol/l in the G2 group; P =0·014. Insulin resistance also improved; the HOMA-IR index decreased from 2·59 (sd 1·5) to 1·94 (sd 1·1) in the G1 group and from 2·8 (sd 1·1) to 2·42 (sd 0·9) in the G2 group (P =0·046), while the QUICKI index increased from 0·342 (sd 0·027) to 0·357 (sd 0·028) in the G1 group v. 0·333 (sd 0·022) to 0·339 (sd 0·024) (P <0·001) in the G2 group (Fig. 2). A mean reduction of 11 % in HOMA-IR (25 % reduction in the G1 group and 14 % in the G2 group) was achieved, meeting our aim, which was set at 10 %.

Table 2 Mean values of some outcome variables at 7, 14, 21 and 28 weeks after baseline (Mean values and standard deviations)

FBS, fasting blood sugar; TC, total cholesterol.

* Based on ANCOVA model regressing change from baseline on the treatment group, baseline value of the outcome, sex, age, and mean change in BMI, waist, MET and energy.

Fig. 2 Mean values obtained for the (a) homeostasis model assessment – insulin resistance (HOMA-IR) index and (b) quantitative insulin sensitivity check index (QUICKI) during treatment and follow-up. The number of participants at each visit and within each treatment group was 19. Error bars indicate 95 % CI. *P< 0·05.

On comparing the two groups, significant changes were also observed in serum lipid parameters. In both the G1 and G2 groups, particularly, there was a significant decrease in TAG levels (2·58 (sd 0·6) to 1·78 (sd 0·54) mmol/l in the G1 group v. 2·66 (sd 1·04) to 2·54 (sd 1·09) mmol/l in the G2 group; P <0·001) and TC levels (3·84 (sd 0·79) to 3·26 (sd 0·73) mmol/l in the G1 group v. 4·28 (sd 0·96) to 3·92 (sd 0·93) mmol/l in the G2 group; P =0·013). Serum HDL levels differed significantly between the G1 and G2 groups (0·2; from 1·15 (sd 0·14) to 1·35 (sd 0·1) mmol/l in the G1 group v. < 0·01; from 1·12 (sd 0·13) to 1·12 (sd 0·16) mmol/l in the G2 group; P <0·001). This difference was due to the significant increase in HDL levels in the G1 group, while its levels remained unchanged in the G2 group. There were no significant changes in serum LDL levels within and between the groups before and after adjustments (Table 2). All the observed differences in the study parameters, except for TC, were significant between the two groups starting at week 7 of the treatment. TC levels decreased significantly after week 21.

None of the participants who completed the trial had any serious adverse events, indicating tolerance to the treatment. In the G1 group, one participant complained of moderate headache. In the G2 group, one participant reported abdominal pain. Neither complaint resulted in participant dropout from the study or reoccurred.

Discussion

To our knowledge, this is the first randomised, double-blind, placebo-controlled clinical study to demonstrate that a synbiotic supplement can increase the efficacy of conventional lifestyle modification in the treatment of the metabolic syndrome. Synbiotic supplementation for 28 weeks led to significant improvements in insulin resistance indices and TAG, TC and HDL levels, while LDL levels remained unchanged. This efficacy of treatment can at least partially be attributed to the effects of the synbiotic on gut flora modification, further causing alterations in carbohydrate absorption, improvement of insulin resistance or modulation of inflammatory signalling pathways( Reference O'Hara and Shanahan 29 , Reference Neish 30 ).

The effects of synbiotic therapy on insulin resistance, one of the defining features of the metabolic syndrome, have only been investigated in a small number of studies. In the present study, we were able to demonstrate the significant positive effects of synbiotic supplementation on insulin resistance. When comparing healthy individuals with individuals having diabetes mellitus or insulin resistance, studies have found LPS to be present at higher levels in the blood of the latter group( Reference Pickup 31 ). Circulating LPS levels have also been found to be correlated with insulin and glucose levels and HOMA-IR( Reference Ghanim 7 ). Interventional studies suggest that such increases in LPS levels may play a direct role in the progression of insulin resistance, as a bolus injection of LPS into healthy subjects has been shown to cause a 35 % reduction in frequently sampled intravenous glucose tolerance, used for measuring the insulin sensitivity index( Reference Mehta, McGillicuddy and Anderson 32 ). Possible mechanisms by which synbiotic supplementation can improve insulin resistance are as follows: through the modification of gut flora and the reduction of endotoxin levels and also through the reduction of the production and absorption of intestinal toxins and elevation of faecal pH( Reference Compare, Coccoli and Rocco 33 ). All these mechanisms can suppress and modify small intestinal bacterial overgrowth, including the reduction of the abundance of Gram-negative bacteria and their by-products such as LPS while at the same time causing the reduction of proinflammatory cytokine production, leading to a decrease in fasting insulin levels and consequently insulin resistance( Reference Li, Yang and Lin 16 , Reference Peraldi and Spiegelman 34 ).

The results of the present study indicate a significant reduction in fasting blood sugar and insulin levels, as also reflected by improvements in HOMA-IR and QUICKI indices. Malaguarnera et al. ( Reference Malaguarnera, Vacante and Antic 18 ) also observed a significant reduction in the HOMA-IR index, but no significant change in serum insulin levels. This could partially be explained by the fact that Malaguarnera et al. ( Reference Malaguarnera, Vacante and Antic 18 ) used one strain of probiotics – B. longum – along with fructo-oligosaccharide, but in the present study several strains were used together, possibly contributing to the significant differences observed in insulin levels. Yet other studies using other strains of probiotics have also found significant reductions in insulin resistance. For instance, Yadav et al. ( Reference Yadav, Jain and Sinha 35 ) observed this change in high-fructose diet-fed mice that were supplemented with dahi containing L. acidophilus. The results of the present study are consistent with those of previous studies showing different strains of bacteria to reduce insulin resistance in animals and human subjects with other metabolic disorders( Reference Yadav, Jain and Sinha 35 , Reference Ma, Hua and Li 36 ).

Although there were significant changes in HDL, TC and TAG levels in both groups in the present study, the mean changes were greater in the G1 group than in the G2 group. In a randomised, placebo-controlled study involving twenty-nine women, using synbiotic-containing yogurt, Kiessling et al. ( Reference Kiessling, Schneider and Jahreisl 37 ) also found a significant increase in HDL-cholesterol levels. The increase in serum HDL levels in the G1 group can be attributed to the reduction in serum TAG levels, as a reduction in TAG levels can affect HDL levels. The mechanism responsible for this change has not been elucidated yet; however, possible mechanisms have been suggested. One of these mechanisms is that TAG-rich lipoprotein particles such as VLDL and intermediate-density lipoprotein can exchange TAG for cholesteryl esters from HDL particles, in a process catalysed by cholesteryl ester transfer proteins. This process occurs at a higher rate in hypertriacylglycerolaemic states and HDL particles become TAG-rich, cholesterol-poor HDL particles, which are better substrates for hepatic lipases. These enzymes, through lipolysis of TAG, transform TAG-rich, cholesterol-poor HDL particles into small, dense HDL particles, which are catabolised more rapidly than their larger counterparts, consequently leading to reduced serum HDL levels( Reference Khalatbari Soltani, Jamaluddin and Tabibi 38 ).

Although other studies had also found a significant decrease in LDL levels( Reference Schaafsma, Meuling and Van Dokkum 39 , Reference Malaguarnera, Vacante and Antic 18 ), in the present study, LDL levels were not found to change significantly. This may be because the baseline LDL levels of the participants of the present study were within the normal range, whereas those of the participants of other studies were above the normal range( Reference Malaguarnera, Vacante and Antic 18 ). Therefore, it is possible that normal LDL levels are not affected by probiotics.

Some of the important strengths of the present study include its relatively long duration, the evaluation of insulin resistance indices, its randomised design, and the inclusion of subjects newly diagnosed with the metabolic syndrome who had not yet received any treatment for their conditions. Also, discrepancies in the composition of the two groups were minimised because the patient population was well defined by the inclusion and exclusion criteria.

The present study also has some limitations. Faecal bacterial loads were not measured before and after synbiotic treatment. Another limitation is that the study participants were not followed up further to test the sustainability of the results obtained after the termination of synbiotic treatment. Future randomised, placebo-controlled studies should also include a washout period.

In conclusion, this randomised, double-blind, placebo-controlled study has found some evidence that synbiotic supplementation augments the effects of lifestyle modification in the treatments of the metabolic syndrome at least partially through the attenuation of insulin resistance and serum lipid levels.

Acknowledgements

The present study was supported by a grant from the NNFTRI and the DDRI. The authors are grateful to the Protexin Company, UK, for gifting the synbiotic supplements. They are indebted to the Haraz clinic at the 17-Shahrivar Hospital in Amol for providing the equipment used in the study. They also thank Mr Mostafa Fallah, Mrs Farzaneh Zamani and Ms Mansoureh Maadi for their assistance.

The authors' contributions are as follows: T. E., A. H. and H. P. designed the study protocol and prepared the initial draft of the manuscript; T. E., A. H., M. S. and H. P. contributed to the data analysis and interpretation of results; F. Z. and R. M. ethically and financially supported the study; T. E., F. Z., A. H., M. S., S. E., R. M. and H. P. contributed to the writing and editing of the manuscript. All authors had access to all data and had final responsibility for the manuscript content, while H. P. and A. H. had final responsibility for the decision to submit the manuscript for publication.

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

References

1 Grundy, SM (2004) Obesity, metabolic syndrome, and cardiovascular disease. J Clin Endocrinol Metab 89, 25952600.CrossRefGoogle ScholarPubMed
2 Musso, G, Gambino, R & Cassader, M (2010) Gut microbiota as a regulator of energy homeostasis and ectopic fat deposition: mechanisms and implications for metabolic disorders. Curr Opin Lipidol 21, 7683.Google Scholar
3 Tilg, H (2010) Obesity, metabolic syndrome, and microbiota: multiple interactions. J Clin Gastroenterol 44, S16S18.CrossRefGoogle ScholarPubMed
4 Turnbaugh, PJ (2009) A core gut microbiome in obese and lean twins. Nature 457, 480484.Google Scholar
5 Ley, RE (2010) Obesity and the human microbiome. Curr Opin Gastroenterol 26, 511.Google Scholar
6 Al-Attas, OS, Al-Daghri, NM, Al-Rubeaan, K, et al. (2009) Changes in endotoxin levels in T2DM subjects on anti-diabetic therapies. Cardiovasc Diabetol 8, 20.Google Scholar
7 Ghanim, H (2009) Increase in plasma endotoxin concentrations and the expression of Toll-like receptors and suppressor of cytokine signaling-3 in mononuclear cells after a high-fat, high-carbohydrate meal: implications for insulin resistance. Diabetes Care 32, 22812287.Google Scholar
8 Wendel, M, Paul, R & Heller, AR (2007) Lipoproteins in inflammation and sepsis. II. Clinical aspects. Intens Care Med 33, 2535.Google Scholar
9 Vasiljevic, T & Shah, NP (2008) Probiotics – from Metchnikoff to bioactives. Int Dairy J 18, 714728.CrossRefGoogle Scholar
10 Cani, PD (2006) Improvement of glucose tolerance and hepatic insulin sensitivity by oligofructose requires a functional glucagon-like peptide 1 receptor. Diabetes 55, 14841490.Google Scholar
11 Andreasen, AS (2010) Effects of Lactobacillus acidophilus NCFM on insulin sensitivity and the systemic inflammatory response in human subjects. Br J Nutr 104, 18311838.Google Scholar
12 Bogsan, CSB, Florence, ACR, Perina, N, et al. (2011) Probiotics intake and metabolic syndrome: a proposal. Trends Food Sci Technol 22, 457464.Google Scholar
13 Frece, J, Kos, B, Svetec, IK, et al. (2009) Synbiotic effect of Lactobacillus helveticus M92 and prebiotics on the intestinal microflora and immune system of mice. J Dairy Res 76, 98104.CrossRefGoogle ScholarPubMed
14 Worthley, DL, Le Leu, RK, Whitehall, VL, et al. (2009) A human, double-blind, placebo-controlled, crossover trial of prebiotic, probiotic, and synbiotic supplementation: effects on luminal, inflammatory, epigenetic, and epithelial biomarkers of colorectal cancer. Am J Clin Nutr 90, 578586.CrossRefGoogle ScholarPubMed
15 National Cholesterol Education Program (NCEP) Expert Panel on Detection E, and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III) (2002) Third Report of the National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III) final report. Circulation 106, 31433421.Google Scholar
16 Li, Z, Yang, S, Lin, H, et al. (2003) Probiotics and antibodies to TNF inhibit inflammatory activity and improve nonalcoholic fatty liver disease. Hepatology 37, 343350.CrossRefGoogle Scholar
17 Chen, JJ, Wang, R, Li, X-F, et al. (2011) Bifidobacterium longum supplementation improved high-fat-fed-induced metabolic syndrome and promoted intestinal Reg I gene expression. Exp Biol Med 236, 823831.CrossRefGoogle ScholarPubMed
18 Malaguarnera, M, Vacante, M, Antic, T, et al. (2012) Bifidobacterium longum with fructo-oligosaccharides in patients with non alcoholic steatohepatitis. Dig Dis Sci 57, 545553.Google Scholar
19 The National Heart Lung and Blood Institute Expert Panel on the Identification, Evaluation, and Treatment of Overweight and Obesity in Adults (1998) Executive summary of the clinical guidelines on the identification, evaluation, and treatment of overweight and obesity in adults. J Am Diet Assoc 98, 11781191.Google Scholar
20 National Institutes of Health, National Heart, Lung, and Blood Institute, NHLBI Obesity Education Initiative, North American Association for the Study of Obesity (2000) The Practical Guide: Identification, Evaluation, and Treatment of Overweight and Obesity in Adults. Bethesda, MD: NIH.Google Scholar
21 Institute of Medicine of the National Academies (2002) Dietary Reference Intakes for Energy, Carbohydrate, Fiber, Fat, Fatty Acids, Cholesterol, Protein, and Amino Acids. Washington, DC: The National Academies Press.Google Scholar
22 World Health Organization (2012) STEPwise Approach to Surveillance (STEPS). Geneva: World Health Organization.Google Scholar
23 Hardy, R, Kuh, D, Langenberg, C, et al. (2003) Birthweight, childhood social class, and change in adult blood pressure in the 1946 British birth cohort. Lancet 362, 11781183.Google Scholar
24 Ghaffarpour, M, Houshiar-Rad, A & Kianfar, H (1999) The Manual for Household Measures, Cooking Yields Factors and Edible Portion of Foods. Tehran: Nashre Olume Keshavarzy.Google Scholar
25 Ainsworth, BE, Haskell, WL, Whitt, MC, et al. (2000) Compendium of physical activities: an update of activity codes and MET intensities. Med Sci Sports Exerc 32, 498504.Google Scholar
26 Matthews, D, Hosker, J, Rudenski, A, et al. (1985) Homeostasis model assessment: insulin resistance and β-cell function from fasting plasma glucose and insulin concentrations in man. Diabetologia 28, 412419.Google Scholar
27 Hřebíček, J, Janout, V, Malinčíková, J, et al. (2002) Detection of insulin resistance by simple quantitative insulin sensitivity check index QUICKI for epidemiological assessment and prevention. J Clin Endocrinol Metab 87, 144147.Google Scholar
28 Aller, R, De Luis, D, Izaola, O, et al. (2011) Effect of a probiotic on liver aminotransferases in nonalcoholic fatty liver disease patients: a double blind randomized clinical trial. Eur Rev Med Pharmacol Sci 15, 10901095.Google Scholar
29 O'Hara, AM & Shanahan, F (2006) The gut flora as a forgotten organ. EMBO Rep 7, 688693.Google Scholar
30 Neish, AS (2009) Microbes in gastrointestinal health and disease. Gastroenterology 136, 6580.Google Scholar
31 Pickup, JC (2004) Inflammation and activated innate immunity in the pathogenesis of type 2 diabetes. Diabetes Care 27, 813823.Google Scholar
32 Mehta, NN, McGillicuddy, FC, Anderson, PD, et al. (2010) Experimental endotoxemia induces adipose inflammation and insulin resistance in humans. Diabetes 59, 172181.Google Scholar
33 Compare, D, Coccoli, P, Rocco, A, et al. (2012) Gut-liver axis: the impact of gut microbiota on non alcoholic fatty liver disease. Nutr Metab Cardiovasc Dis 22, 471476.Google Scholar
34 Peraldi, P & Spiegelman, B (1998) TNF-α and insulin resistance: summary and future prospects. Mol Cell Biochem 182, 169175.Google Scholar
35 Yadav, H, Jain, S & Sinha, PR (2007) Antidiabetic effect of probiotic dahi containing Lactobacillus acidophilus and Lactobacillus casei in high fructose fed rats. Nutrition 23, 6268.Google Scholar
36 Ma, X, Hua, J & Li, Z (2008) Probiotics improve high fat diet-induced hepatic steatosis and insulin resistance by increasing hepatic NKT cells. J Hepatol 49, 821830.Google Scholar
37 Kiessling, G, Schneider, J & Jahreisl, G (2002) Original Communication. Long-term consumption of fermented dairy products over 6 months increases HDL cholesterol. Eur J Clin Nutr 56, 843849.Google Scholar
38 Khalatbari Soltani, S, Jamaluddin, R, Tabibi, H, et al. (2012) Effects of flaxseed consumption on systemic inflammation and serum lipid profile in hemodialysis patients with lipid abnormalities. Hemodial Int 17, 275281.Google Scholar
39 Schaafsma, G, Meuling, W, Van Dokkum, W, et al. (1998) Effects of a milk product, fermented by Lactobacillus acidophilus and with fructo-oligosaccharides added, on blood lipids in male volunteers. Eur J Clin Nutr 52, 436440.Google Scholar
Figure 0

Fig. 1 Flow chart depicting the study design.

Figure 1

Table 1 Baseline characteristics of the study participants (Mean values and standard deviations)

Figure 2

Table 2 Mean values of some outcome variables at 7, 14, 21 and 28 weeks after baseline (Mean values and standard deviations)

Figure 3

Fig. 2 Mean values obtained for the (a) homeostasis model assessment – insulin resistance (HOMA-IR) index and (b) quantitative insulin sensitivity check index (QUICKI) during treatment and follow-up. The number of participants at each visit and within each treatment group was 19. Error bars indicate 95 % CI. *P< 0·05.