The Self-reported Use of Probiotics is Associated with Better Glycaemic Control and Lower Odds of Metabolic Syndrome and its Components in Type 1 Diabetes
Received Date: Oct 18, 2017 / Accepted Date: Oct 30, 2017 / Published Date: Nov 03, 2017
In type 1 diabetes, various metabolic disturbances are frequently observed. Importantly, these may negatively affect individuals’ long-term health outcomes. The use of probiotics has, in other populations, been beneficially associated with many of these risk factors. We, therefore, assessed the cross-sectional associations between the use of probiotics-containing food products or supplements and various health markers in a large population of individuals with type 1 diabetes.
Included were 1039 individuals (mean age 46 ± 14 years, 45% men) with type 1 diabetes and without end-stage renal disease. Based on the entries in the diet questionnaire and the food record, participants were divided into those using (Probiotics+) and not using (Probiotics–) probiotics-containing products. Various standard health markers, such as weight, waist circumference, blood pressure, blood lipids, and HbA1c, were measured during the study visit.
In all, 403 (39%) individuals reported using probiotics. Adjusted with potential confounders, the rate of overweight/ obesity, body mass index, and waist-to-hip ratio were higher in the Probiotics– group. Moreover, the odds of metabolic syndrome, and its waist, blood pressure, HDL cholesterol, and triglyceride components were higher amongst those not using probiotics. In the normal-weight individuals, using probiotics was associated with significantly better glycaemic control.
Using probiotics-containing food products or supplements may beneficially affect many of the traditional risk factors related to the diabetic complications. Randomized controlled trials are required to verify these observations.
Keywords: Glycaemic control; Lipid profile; Metabolic syndrome; Obesity; Probiotics; Type 1 diabetes
Diabetes is characterized by pathologically increased plasma glucose levels . Importantly, hyperglycaemia is an independent risk factor for the development of vascular complications  and mortality . In addition to glycaemia, however, various other metabolic abnormalities are frequently present in diabetes. In one Finnish study, 55% of individuals with type 1 diabetes, for example, failed to meet the LDLcholesterol concentration goals . We have also previously shown, in the Finnish Diabetic Nephropathy (Finn Diane) Study that, of the individuals with type 1 diabetes and without diabetic nephropathy, only 35% reached the target levels for the LDL-cholesterol concentration . In the same study, of the diabetic nephropathy-free individuals with type 1 diabetes, 45% were observed to reach the blood pressure targets, while the respective figure for those with diabetic nephropathy was only 19% . In one review, the reported rates of obesity or overweight, among adult individuals with type 1 diabetes, ranged between 44% and 78% . These risk factors, especially the clustering of multiple risk factors, are associated with increased risk of various vascular complications , detrimental to the longevity of the affected individuals .
The importance of managing these risk factors is stressed in various national and international treatment guidelines [9-11]. According to these guidelines, lifestyle management is a fundamental aspect in diabetes care, and includes components such as nutrition therapy, physical activity, and smoking cessation. Beyond lifestyle modification, however, pharmacological approaches are frequently required in order to achieve the treatment goals.
The role of the intestinal microbiome, in modifying various metabolic risk factors, has in recent years gained increasing interest. In the human intestine, Bacteroidetes and Firmicutes form the majority of the total microbial population . The relative abundance of these phyla has, however, been observed to differ between lean and obese, with higher proportion of Firmicutes to Bacteroidetes in the obese . Moreover, lower bacterial richness in the human gut has been associated with markedly higher body weight and fat mass . In addition to the body weight-related variables, the quality of the intestinal ecosystem has been associated with systemic inflammation, plasma lipids, glycaemia, and blood pressure [14-16].
Probiotics-containing food products or supplements have been used to favourably modify the gut’s microbial composition . According to the definition, published by the joint Food and Agriculture Organization/World Health Organization Expert Consultation, probiotics are “live microorganisms which when administered in adequate amounts confer a health benefit on the host” . These health benefits have been investigated in various populations. For example, in a meta-analysis of nine randomized controlled trials among adults with or without hypertension, probiotic interventions were observed to reduce systolic and diastolic blood pressure . In another meta-analysis of individuals with high, borderline high, and normal cholesterol levels, reduction in total and LDL-cholesterol concentrations, following probiotics-intervention, was reported . Finally, significant lowering of HbA1c, fasting blood glucose, and fasting plasma insulin concentrations, and amelioration of insulin resistance have been seen after interventions with probioticscontaining products in type 2 diabetes [21,22]. To the best of our knowledge, the health effects of probiotics amongst individuals with type 1 diabetes, a population at high risk of vascular complications, have not been investigated.
The aim of the current study was to assess the cross-sectional associations between reported use of probiotics-containing food products or supplements and selected health parameters in a large population of well-defined individuals with type 1 diabetes.
Materials and Methods
Study subjects were individuals with type 1 diabetes participating in the Finn Diane Study. Type 1 diabetes was presumed if age at diabetes onset was below 35 years and if permanent insulin treatment was initiated within one year of the diagnosis. Included, in the current analyses, were all individuals who had completed the diet questionnaire within two years from the study visit [median (interquartile range) interval between the study visit and the completion of diet questionnaire was 6 (0-61) days]. Those with endstage renal disease (undergoing dialysis or with a kidney transplantation) were excluded from the analyses. In all, data from a total of 1039 individuals (mean age 46 ± 14 years, 45% men) were included. The study protocol was approved by the Ethics Committee of the Helsinki University Central Hospital. Study subjects provided written informed consent prior to participation.
During the Finn Diane study visit, participants’ height and weight were measured in light clothing, and body mass index was calculated (BMI; kg/m2). Overweight and obesity were defined as BMI ≥ 25 kg/m2 and ≥ 30 kg/m2, respectively. Waist and hip circumferences were measured using an inelastic tape measure. Following a minimum of ten-minute rest, blood pressure was measured while seated. A second measure was performed with a two-minute interval. Mean of the two measurements was used in the analyses. HbA1c was determined locally using standardized assays. Serum lipid and lipoprotein concentrations were measured centrally at the research laboratory of the Helsinki University Central Hospital. Serum triglyceride concentration was measured using a Konelab 60i analyser (Thermo Fisher Scientific Inc., Waltham, MA, USA), and serum HDL-cholesterol concentration was measured with a HTS 7000 plus Bio Assay Reader (Perkin Elmer Inc., Waltham, MA, USA). Renal status was assessed based on the urinary albumin excretion rate (AER) in at least two out of three timed 24-h or overnight urine collections. Diabetic nephropathy was assumed when AER ≥ 200 μg/min or ≥ 300 mg/24 h. Serum hs-CRP concentration was measured by immunoassay (Modular analyzer, Roche). Individuals with hs-CRP values above 10 mg/l were excluded from the hs-CRP analyses, as they likely had an acute infection. Smoking was selfreported. The attending physician recorded medication use on a standardized questionnaire. From these questionnaires, data regarding antihypertensive and blood lipid medication were collected. Information on the use of antibiotics within 6 months prior to the study visit was obtained from the Drug Prescription Register of the Social Insurance Institute of Finland.
The criteria established by International Diabetes Federation Task Force on Epidemiology and Prevention; National Heart, Lung, and Blood Institute; American Heart Association; World Heart Federation; International Atherosclerosis Society; and International Association for the Study of Obesity was used to define the metabolic syndrome . Accordingly, metabolic syndrome exists when the minimum of three of the following components coexist: waist circumference ≥ 94 cm in men and ≥ 80 cm in women, triglyceride concentration ≥ 1.70 mmol/l (or medication to lower triglyceride concentration), HDLcholesterol concentration <1.00 mmol/l in men and <1.30 mmol/l in women (or medication to increase HDL-cholesterol concentration), blood pressure ≥ 130/85 mmHg (or antihypertensive medication), and fasting blood glucose concentration ≥ 6.11 mmol/l. Diagnosed with type 1 diabetes, all patients were defined to fulfil the hyperglycaemia criterion.
Data on the participants’ dietary intake were collected using two separate methods, as previously described . In short, at the study visit, participants were provided with a validated  diet questionnaire. With this questionnaire, we aimed at obtaining an overview of the subjects’ dietary intake. Amongst others, we enquired the types of milk, bread, spread, and cooking fat typically consumed. As part of the questionnaire, a short food frequency questionnaire was included. Of interest for the current study, we also queried about the use of probiotics-containing food products or supplements over the past month (no/yes, if yes provide the trade name and amount or dose consumed). Upon returning the diet questionnaire, subjects were sent a 3-day exercise and food record. In this record, along with reporting physical activity and insulin administration, all foods and drinks consumed over the allocated consecutive days (two weekdays and one weekend day), were recorded. Another 3-day food record was completed with a 10-week interval. Up to two reminders were sent to non-responders. Dietary composition of the food record entries was analysed using the Diet 3.2 software (version 188.8.131.52, AIVO, Turku, Finland) and, from August 2014 onwards, AivoDiet software (version 184.108.40.206, AIVO, Turku, Finland), both based on the Finnish National Food Composition Database. In the analyses the health markers of individuals, reporting (Probioticsyes) and not reporting (Probioticsno) the use of probiotics-containing food products or supplements, either in the diet questionnaire or in the food record, were compared.
Leisure-time physical activity (LTPA) was estimated using a validated questionnaire, as previously described . In this form, participants reported frequency, single session duration, and intensity of a number of most typical physical activities. Based on these reports, weekly LTPA was calculated as the metabolic equivalent of task hours (MET h/week).
Descriptive statistics are reported as percentages for categorical data, mean ± standard deviation for continuous normally distributed data, and median (interquartile range) for continuous non-normally distributed data. The respective between-group comparisons were done using Chi-squared test, independent samples t-test, and Mann- Whitney U-test. The difference in the outcome variables, between the two probiotics-groups, were further tested in the multivariable models. For dichotomous outcome variables, logistic regression analyses were applied, while with continuous variables, generalised linear regression analyses were conducted. Analyses of waist circumference and HDLcholesterol concentration were conducted separately for men and women, as there are sex-specific cut off values for these variables also in the definition of the metabolic syndrome. HbA1c analyses were conducted separately for normal-weight and overweight or obese individuals, as there is indication that probiotics may have distinctive effects depending on the adiposity . Confounders were selected to the multivariable models if they significantly differed between the two groups or probiotics-consumption, or if they were considered to significantly contribute to the outcome variable (e.g., lipid lowering medication in blood lipid analyses, and antihypertensive medication in blood pressure analyses). A two-tailed P value <0.05 was considered statistically significant. All data were analysed using IBM SPSS Statistics for Windows, Version 22.0 (IBM Corp, Armonk, NY, USA).
Of the 1039 participants, 403 (39%) reported using probioticscontaining food stuffs or supplements (Probioticsyes, Table 1). In this group, the proportion of men and those with diabetic nephropathy was lower. No differences were observed, between the groups, in mean age, the frequency of antibiotic use within 6 months prior to the study visit, the frequency of smoking, or the level of physical activity.
|Age, years||46 ± 14||46 ± 13||0.45|
|Use of antibioticsa, %||30||32||0.439|
|Diabetic nephropathy, %||14||9||0.008|
|Physical activity, MET h/week||12 (2-27)||13 (1-28)||0.641|
|Dichotomous outcome variables|
|Overweight or obese, %||58||49||0.006|
|Metabolic syndrome, %||70||58||<0.001|
|MS-Blood pressure component, %||81||72||0.002|
|MS-HDL-cholesterol component, %||47||35||<0.001|
|MS-TG component, %||47||33||<0.001|
|MS-waist component, %||58||51||0.032|
|Continuous outcome variables|
|HbA1c (NW), mmol/mol||64 (57-75)||62 (54-69)||0.01|
|HbA1c (OW/OB), mmol/mol||65 (57-74)||66 (60-74)||0.277|
|HbA1c (NW), %||8.0 (7.4-9.0)||7.8 (7.1-8.5)||0.01|
|HbA1c (OW/OB), %||8.1 (7.4-8.9)||8.2 (7.6-8.9)||0.277|
|BMI, kg/m2||25.9 (23.3-28.6)||25.0 (23.0-27.8)||0.011|
|Waist-to-hip ratio||0.89 (0.83-0.96)||0.87 (0.82-0.92)||<0.001|
|Waist circumference (men), cm||94 (86-102)||92 (84-98)||0.041|
|Waist circumference (women), cm||84 (77-92)||82 (75-91)||0.093|
|Systolic blood pressure, mmHg||136 (126-149)||133 (124-147)||0.032|
|Diastolic blood pressure, mmHg||77 (71-84)||76 (70-83)||0.09|
|Total cholesterol, mmol/l||4.6 (4.0-5.2)||4.6 (4.1-5.1)||0.582|
|HDL cholesterol (men), mmol/l||1.42 (1.17-1.67)||1.50 (1.21-1.79)||0.072|
|HDL cholesterol (women), mmol/l||1.64 (1.35-1.96)||1.72 (1.45-2.09)||0.026|
|TG, mmol/l||0.99 (0.76-1.42)||0.91 (0.69-1.23)||<0.001|
|TG-HDL-cholesterol ratio||0.65 (0.43-1.08)||0.56 (0.37-0.82)||<0.001|
|hs-CRP, mg/l||1.11 (0.54-2.53)||0.97 (0.51-2.27)||0.212|
Table 1: Participant characteristics divided by the reported use of probiotics. Data are presented as frequencies (%) for categorical variables, mean ± standard deviation, or median (inter-quartile range). Between-group comparisons are conducted using Chi squared test, independent samples t-test, and Mann-Whitney U-test, respectively. aUse of antibiotics within 6 months prior to the study visit. MET, metabolic equivalent of task, a measure of physical activity; MS, metabolic syndrome; HDL, high density lipoprotein; TG, triglyceride; NW, normal-weight (BMI <25 kg/m2); OW/OB, overweight or obese (BMI ≥ 25 kg/m2); BMI, body mass index; hs-CRP, high-sensitivity C-reactive protein.
Compared to those reporting the use of probiotics, various overweight-related measures were more prevalent amongst those not using probiotics (Table 1). For example, BMI and waist-to-hip ratio were higher in the Probioticsno group. Moreover, the prevalence of overweight or obesity, and the frequency of fulfilling the waist component of the metabolic syndrome were higher in the Probioticsno group. In addition, the metabolic syndrome and all the remaining components of the metabolic syndrome were more prevalent amongst those who reported not using probiotics.
In the normal-weight individuals, the median glycaemic control was significantly better in the group using probiotics (Table 1). However, in overweight or obese individuals, no difference in HbA1c was observed between the two groups. Of the blood lipid variables, the triglyceride concentration and the TG-HDL-cholesterol ratio were lower in the Probioticsyes group. In women reporting the use of probiotics, the HDL-cholesterol concentration was higher. Finally, of the continuous outcome variables, systolic blood pressure was lower amongst those using probiotics.
No differences were observed in the dietary intake of total energy, macronutrients, and fibre between those using and not using probiotics (Table 2). Moreover, the relative distribution of fatty acid intakes was similar between the groups. However, significantly higher median sucrose intake was observed amongst those using probiotics.
|Energy, kJ||7705 (6426-9219)||7677 (6371-8998)||0.745|
|Energy, kcal||1841 (1536-2204)||1835 (1523-2150)||0.742|
|Carbohydrates, E%||43 (38-48)||43 (39-48)||0.682|
|Sucrose, g||29.1 (20.2-48.4)||34.5 (22.2-48.9)||0.027|
|Proteins, E%||17 (15-19)||17 (15-19)||0.883|
|Fats, E%||36 (31-40)||35 (31-40)||0.252|
|PUFA, E%||6 (5-7)||6 (5-7)||0.774|
|SAFA, E%||13 ± 3||12 ± 3||0.295|
|MUFA, E%||12 (10-14)||12 (10-14)||0.267|
|Alcohol, E%||0.7 (0-3.1)||1.1 (0-3.5)||0.345|
|Total fibre, g||20.7 (15.8-26.4)||21.3 (16.5-27.1)||0.401|
|Soluble fibre, g||4.8 (3.7-6.2)||5.1 (3.9-6.5)||0.198|
Table 2: Dietary intake divided by the reported use of probiotics. Data are presented as median (interquartile range) or mean ± standard deviation. Between-group comparisons with Mann-Whitney U-test or independent samples t-test, respectively. E%, percentage of total energy intake.
In the logistic regression analyses, adjusting for age, sex, nephropathy status, sucrose intake, physical activity, and smoking, the use of probiotics was associated with a 35% (P=0.006) lower odds of overweight or obesity and a 40% (P=0.003) lower odds of the metabolic syndrome (Table 3). Similarly, the odds of fulfilling the blood pressure, HDL-cholesterol, triglyceride, and waist components of the metabolic syndrome were 42% (P=0.009), 32% (P=0.025), 33% (P=0.019), and 34% (P=0.013) lower, respectively, amongst those using probiotics.
|Model 1||Model 2|
|B||Exp(B)||95% CI for Exp(B)||P||B||Exp(B)||95% CI for Exp(B)||P|
Table 3: Association between probiotic use and selected dichotomous health markers. Model 1 is adjusted for age, sex, and nephropathy status. Model 2 is further adjusted for sucrose intake, physical activity and smoking. CI, confidence interval; OW/OB, overweight or obese (BMI ≥ 25 kg/m2); MS, metabolic syndrome; MS/BP, blood pressure component of the metabolic syndrome; MS/HDL, HDL cholesterol component of the metabolic syndrome; MS/TG, triglyceride component of the metabolic syndrome; MS/waist, waist component of the metabolic syndrome. Logistic regression.
Of the continuous outcome variables the use of probiotics was, in the fully adjusted models, associated with lower BMI (P=0.049), waistto- hip ratio (P=0.002), total cholesterol concentration (P=0.049), triglyceride concentration (P=0.001), and TG-HDL-cholesterol ratio (P<0.001) (Table 4). Moreover, among the normal-weight individuals, use of probiotics was associated with better glycaemic control (P=0.026), and in women it was associated with smaller waist circumference (P=0.009). However, in the multivariable models, the use of probiotics was no longer associated with systolic blood pressure or HDL-cholesterol concentration.
|Model 1||Model 2|
|B (95% Wald CI)||Probioticsno Mean (SE)||Probioticsyes Mean (SE)||P||B (95% Wald CI)||Probioticsno Mean (SE)||Probioticsyes Mean (SE)||P|
|HbA1c (NW), mmol/mol, %||-0.31 (-0.55--0.07)||67 (1.07)||64 (1.35)||0.011||-0.31 (-0.58--0.04)||66 (1.29)||63 (1.47)||0.026|
|8.27 (0.08)||7.96 (0.09)||8.20 (0.10)||7.90 (0.10)|
|HbA1c (OW/OB), mmol/mol, %||0.04 (-0.16-0.23)||67 (0.80)||67 (1.21)||0.703||0.05 (-0.17-0.28)||66 (0.90)||67 (1.34)||0.66|
|8.24 (0.06)||8.28 (0.08)||8.19 (0.07)||8.24 (0.09)|
|BMI, kg/m2||-0.47 (-0.98-0.04)||26.2 (0.16)||25.8 (0.20)||0.07||-0.60 (-1.19--0.01)||26.3 (0.19)||25.7 (0.23)||0.049|
|WHR||-0.01 (-0.02--0.01)||0.89 (0.01)||0.88 (0.01)||0.037||-0.02 (-0.03--0.01)||0.89 (0.01)||0.88 (0.01)||0.002|
|Waist (men), cm||-2.53 (-4.84--0.22)||94.9 (0.65)||92.3 (0.98)||0.032||-1.91 (-4.60-0.79)||94.8 (0.79)||92.9 (1.12)||0.165|
|Waist (women), cm||-1.28 (-3.28-0.73)||85.3 (0.69)||84.1 (0.76)||0.212||-2.91 (-5.11--0.72)||85.9 (0.76)||83.0 (0.81)||0.009|
|SBP, mmHg||-0.43 (-2.41-1.55)||137 (0.62)||137 (0.79)||0.667||-1.94 (-4.27-0.39)||138 (0.75)||136 (0.91)||0.103|
|DBP, mmHg||-0.67 (-1.84- 0.50)||77 (0.37)||77 (0.47)||0.263||-0.96 (-2.37-0.45)||77 (0.45)||76 (0.55)||0.182|
|TC, mmol/l||-0.09 (-0.20-0.02)||4.7 (0.03)||4.6 (0.04)||0.109||-0.13 (-0.25--0.01)||4.69 (0.04)||4.56 (0.05)||0.049|
|HDL (men), mmol/l||0.06 (-0.03-0.14)||1.48 (0.02)||1.53 (0.04)||0.212||0.01 (-0.10-0.11)||1.52 (0.03)||1.52 (0.04)||0.947|
|HDL (women), mmol/l||0.07 (0.01-0.15)||1.70 (0.03)||1.77 (0.03)||0.045||0.07 (-0.01-0.16)||1.71 (0.03)||1.79 (0.03)||0.085|
|TG, mmol/l||-0.16 (-0.26--0.06)||1.24 (0.03)||1.08 (0.04)||0.002||-0.17 (-0.26--0.07)||1.19 (0.03)||1.02 (0.04)||0.001|
|TG/HDL||-0.13 (-0.21--0.04)||0.87 (0.03)||0.74 (0.03)||0.004||-0.15 (-0.23--0.06)||0.82 (0.03)||0.68 (0.03)||<0.001|
|hs-CRP, mg/l||-0.24 (-0.49-0.01)||1.91 (0.08)||1.67 (0.10)||0.058||-0.27 (-0.56-0.02)||1.90 (0.09)||1.63 (0.11)||0.067|
Table 4: Association between the use of probiotics and selected continuous health markers. Model 1 is adjusted for age, sex, and nephropathy status. Model 2 is further adjusted for sucrose intake, physical activity and smoking. Final blood pressure models are additionally adjusted for the use of antihypertensive medication; blood lipid and hs-CRP models are additionally adjusted for the use of lipid lowering medication. CI, confidence interval; SE, standard error; NW, normal-weight (BMI 25 < kg/m2); OW/OB, overweight or obese (BMI ≥ 25 kg/m2); BMI, body mass index; WHR, waist-to-hip ratio; SBP, systolic blood pressure; DBP, diastolic blood pressure; TC, total cholesterol; HDL, high-density lipoprotein cholesterol; TG, triglyceride; TG/HDL, triglyceride-high-density lipoprotein cholesterol ratio; hs-CRP, high-sensitivity C-reactive protein. Generalized linear model.
In the current study, we observed that the use of probioticscontaining food products or supplements was associated with a number of beneficial health markers in type 1 diabetes. In particular, the use of probiotics was associated with lower odds of overweight or obesity. Also the odds of metabolic syndrome, and its blood pressure, HDL-cholesterol, triglyceride, and waist components were significantly lower amongst those using probiotics. Moreover, in normal-weight individuals, the use of probiotics was associated with better glycaemic control.
While, to our knowledge, this is the first study to focus on the health effects of probiotics in individuals with type 1 diabetes, a number of studies have been conducted in other populations. Of interest in diabetes, probiotics may improve glycaemic control. The exact mechanisms by which probiotics could affect glycaemia, is not known. However, it has been speculated that beneficial gut bacteria could increase the secretion of glucagon-like peptide 1 which would subsequently improve carbohydrate metabolism . Other proposed mechanisms are related to improved intestinal permeability, regulation of the immune system, and reduction of Toll-like receptor 4 signalling. In their meta-analysis, Li et al. reported significant reduction in fasting blood glucose levels, following probiotics-intervention, in patients with type 2 diabetes . However, no effect was observed in HbA1c. As a long-term measure of glycaemia, the included intervention trials (mostly ≤ 8 weeks) may have been too short to show significant changes in HbA1c. In contrast, Sun and Buys reported, in their metaanalysis of individuals with type 2 diabetes or with diabetes-associated risk factors, a significant reduction in the participants’ HbA1c following 6-12 weeks’ probiotic intervention . In their study, the glycaemia-reducing effect of probiotics was most pronounced in those with diabetes, and when multiple strains were used. Interestingly, Firouzi et al. reported, in a population of individuals with type 2 diabetes, that among normal-weight participants a 12-week probioticsintervention resulted in greater improvements in HbA1c than in those overweight or obese . Encouraged by these observations, we also investigated the glycaemic control separately in normal-weight and in overweight/obese. Indeed, in the current study, the use of probiotics was associated with lower HbA1c levels in the normal-weight individuals, while no association was observed amongst those with higher BMIs. While the mechanism behind this phenomenon is not known, the differences frequently observed in the Bacteroidetes to Firmicutes -ratio in the gut of obese and lean subjects, could be responsible for the observed differences. Also, it has been speculated that the dosage of probiotics, commonly used, may not be sufficient to produce beneficial effects in glycaemia in obese but, instead, weightbased dosages may be required .
The association between gut microbiota and obesity has been shown both in animals and humans . Beyond the before-mentioned differences in the Bacteroidetes to Firmicutes ratio, it has also been shown that compared to lean, obese individuals display decreased diversity of the gut microbiota; beneficial changes take place in the composition of the fecal microbiota during weight loss interventions; and a more diverse microbial community is observed amongst subjects with greater weight loss . Indeed, there is some indication that the so called “obese microbiome” has an increased capacity to harvest energy from the diet, which in due course could contribute to obesity . Our results fit well with previous observations as the reported use of probiotics was favourably associated with many of the body weightrelated variables.
According to one meta-analysis of randomized controlled trials in type 2 diabetes, probiotics-intervention increased HDL-cholesterol concentration, but had no significant effect on LDL-cholesterol, total cholesterol or triglyceride concentration . Another meta-analysis of randomized controlled trials among subjects with high, borderline high, or normal cholesterol levels, reported significant reductions in total cholesterol and LDL-cholesterol concentrations, but found no effects in HDL-cholesterol and triglyceride concentrations . There are a number of proposed mechanisms by which gut bacteria are anticipated to affect circulating lipid concentrations. Probiotic bacteria may, for example, interfere with the absorption of cholesterol from the intestine by directly assimilating it and using it as a substrate for bacterial growth . Bacteria may also deconjugate bile acids, which makes them less likely to be reabsorbed into the enterohepatic circulation . Increased excretion of bile acids subsequently increases the need for de novo synthesis of cholesterol-containing bile acids, which reduces the total amount of cholesterol in the circulation. Finally, the short-chain fatty acids (SCFAs) produced by the probiotics and quickly absorbed from the intestine, may inhibit hepatic cholesterol synthesis or participate in the redistribution of cholesterol from plasma to the liver . In the current study, consumption of probiotics was associated with slightly but significantly lower total cholesterol and triglyceride concentration, and also a lower triglyceride–HDL-cholesterol ratio, compared to the group not using probiotics. We were not able to find any previous reports on the association between probiotics and triglyceride–HDL-cholesterol ratio. This ratio is, however, a marker of insulin resistance. An increase in the triglyceride-HDL-cholesterol ratio is associated with parameters of cardiovascular risk, and it may predict the development of coronary heart disease and cardiovascular mortality . Keeping the ratio down may, thus, be relevant also in type 1 diabetes.
The effect of probiotics on blood pressure has also been investigated, and according to a meta-analysis of such randomized controlled trials, probiotics-intervention significantly reduced both systolic and diastolic blood pressure in adult subjects with or without hypertension . Importantly, interventions of a duration of at least 8 weeks were required for the observed effects. Also, those with higher blood pressure at baseline, seemed to benefit the most from the intervention, and the blood pressure-reducing effects were more evident in trials using multiple species of probiotics, as opposed to single species. Probiotics may affect blood pressure via various proposed mechanisms . Gut microbiota-derived SCFAs may take part in the regulation of the renin-angiotensin system, or the probiotics may increase the absorption of nutrients and phytoestrogens with vasodilatory effects. The blood-pressure reducing effect of probiotics may also result from the reduction in adiposity. In the current study, while those reporting the use of probiotics had significantly lower systolic blood pressure, the statistical significance of this difference did not persist after controlling for confounding factors. Despite this, those reporting using probiotics had lower odds of fulfilling the blood pressure component of the metabolic syndrome. In this entity, not only systolic blood pressure, but also diastolic blood pressure and the use of antihypertensive medication are, however, taken into account.
It has been suggested that the SCFAs, produced by the beneficial gut microbes, may prevent low-grade inflammation via maintaining intestinal integrity . A meta-analysis of the ability of probioticsintervention to reduce CRP levels, in type 2 diabetes, showed an overall non-significant effect . A sub-group analysis in another metaanalysis suggested, however, that a high probiotic dose, longer intervention duration, and the use of multiple strains of probiotics would, indeed, have anti-inflammatory effects . In the current study, the reported use of probiotics was not associated with hs-CRP levels in type 1 diabetes. In the light of the previous reports, our observations could suggest, for example, that the use of probiotics, in this population, is sporadic rather than regular.
This study has a number of limitations that should be discussed. The cross-sectional nature of the study poses a major limitation as it prevents us from making any conclusions about causality between the use of probiotics and the health markers. Self-reporting the use of probiotics is another limitation. Not all individuals may, for example, be aware that the products they use contain probiotics, and will subsequently not report their use. Also, for some participants the reported use of probiotics, at the time of data collection, may have only been an occasional event and does not reflect a more continuous habit. Such an occasional act may not be sufficient to influence the measured variables. Based on the collected data, we cannot calculate the doses of probiotics used. Also, in many cases, the actual strain or strains used was not known. Compared to many intervention trials conducted in this field, the sample size in the current study was, however, much larger. Moreover, our study group is fairly homogenous, as participants were all diagnosed with type 1 diabetes. Finally it has to be acknowledged that more health-conscious individuals may not only consume probiotics but may also have overall healthier lifestyles that may affect the outcome variables. While we adjusted the models with factors such as physical activity, smoking, and dietary intake, we cannot rule out potential residual confounding.
In conclusion, the reported use of probiotics among individuals with type 1 diabetes, was beneficially associated with a number of health markers such as glycaemia, metabolic syndrome, obesity, and lipid parameters. Our results suggest that the use of probiotics could reduce many of the traditional risk factors related to the emergence of diabetic complications. Randomized controlled trials of sufficient duration, preferably using multiple strains of probiotics, are required in order to affirm these observations.
Conflict of interests Professor Per-Henrik Groop has received research grants from Eli Lilly and Roche, is an advisory board member for AbbVie, Astra Zeneca, Boehringer-Ingelheim, Cebix, Eli Lilly, Janssen, MSD, Medscape, Novartis, and Sanofi. He has received lecture fees from Astra Zeneca, Boehringer-Ingelheim, Eli Lilly, Genzyme, MSD, Novartis, Novo Nordisk, and Sanofi. Aila Ahola has received a research grant from Diabetes Wellness Finland. All other authors declare no conflicts of interest.
This study was supported by grants from Academy of Finland, Novo Nordisk Foundation, Signe and Ane Gyllenberg Foundation, Folkhälsan Research Foundation, Wilhelm and Else Stockmann Foundation, Liv och Hälsa Foundation, the Helsinki University Central Hospital Research Funds (EVO), Päivikki and Sakari Sohlberg Foundation, and Diabetes Wellness Finland. Funding agencies did not contribute to the study design, conduct of the study, data analysis, interpretation of findings, writing of the manuscript, or in the decision to submit the manuscript for publication. The skilled technical assistance of Anna Sandelin, Mira Korolainen, Jaana Tuomikangas, and Satu Kinnunen is gratefully acknowledged. The authors also acknowledge all the physicians and nurses at each centre participating in the collection of patients (online appendix).
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Citation: Ahola AJ, Harjutsalo V, Forsblom C, Freese R, Makimattila S, et al. (2017) The Self-reported Use of Probiotics is Associated with Better Glycaemic Control and Lower Odds of Metabolic Syndrome and its Components in Type 1 Diabetes. J Prob Health 5: 188. Doi: 10.4172/2329-8901.1000188
Copyright: © 2017 Ahola AJ, et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricteduse, distribution, and reproduction in any medium, provided the original author and source are credited.
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