MedPath

Involvement of the Gut Microbiota-brain Cross-talk in the Loss of Eating Control

Recruiting
Conditions
Obesity
Registration Number
NCT05646901
Lead Sponsor
Institut d'Investigació Biomèdica de Girona Dr. Josep Trueta
Brief Summary

Overweight and obesity are increasingly prevalent worldwide. These bodyweight disorders are closely related to deficiencies in the control of food intake. A potential yet unexplored mechanism to explain the loss of eating control is the interaction between the gut microbiota and the brain. The mechanisms underlying the communication between the gut microbiome and the host remain largely unexplored. These mechanisms could occur in part through small non-coding RNAs, called microRNAs (miRNAs). miRNAs regulate epigenetic mechanisms to control gene expression.

Two hypotheses have been proposed:

I. The interaction between the gut microbiota and the brain and its associated epigenetic changes play an important role in the overweight-related loss of eating control and metabolic imbalance.

II.The composition and functionality of the gut microbiota are associated with circulating microRNAs and glycemic variability and modify the effect of physical activity on cognitive parameters and brain microstructure (R2\*).

The study includes a cross-sectional design (comparison of subjects with and without obesity) to evaluate parameters associated with food addiction through validated questionnaires. The metabolic and behavioral profiles of the cohort will be characterized. The medial prefrontal cortex connectivity will be studied using functional magnetic resonance imaging (fMRI). The composition and functionality of the gut metagenome of the subjects will be analyzed in association with metabolic and behavioral parameters and imaging data. miRNAs can act as mediators of epigenomics of the effects of the metagenome that impact the brain, therefore it will be analyzed a broad profile of miRNAs circulating in plasma.

Detailed Description

The study includes a cross-sectional design (comparison of subjects with and without obesity) to assess parameters associated with food addiction through validated questionnaires. The metabolic and behavioral profile of the cohort and medial prefrontal cortex (mPFC) connectivity using fMRI will be characterized. The composition and functionality of the gut metagenome of these subjects will be analyzed in terms of its links to metabolic and behavioral parameters and imaging data. Since miRNAs may act as epigenomic mediators of metagenome effects impacting the brain, a broad profile of miRNAs circulating in plasma will also be analyzed.

Subjects and methods:

A cohort of subjects (n=100, 50% with obesity) will be recruited in whom parameters of food addiction (reward sensitivity, punishment sensitivity, and Yale Food Addiction Scale (YFAS 2.0 score) will be collected. The project will be carried out in subjects with obesity (25 men, 25 women, Body mass index (BMI) \> = 30kg/m2) and subjects without obesity, similar in age and sex (25 men, 25 women, BMI \<30kg/m2). A comprehensive metabolic profile (body weight, glucose and lipid profile, insulin resistance, blood pressure, and plasma and fecal metabolomics) will be analyzed.

A. Cross-sectional study:

Patients with obesity previously scheduled at the Service of Endocrinology, Diabetes, and Nutrition (UDEN) of the Hospital "Dr. Josep Trueta" of Girona (Spain) will be recruited and studied. Subjects without obesity will also be recruited through a public announcement.

A glycemia sensor will be implanted for ten days, as well as an activity and sleep tracker device to record physical activity during this period of time. Interstitial subcutaneous glucose concentrations will be monitored on an outpatient basis for a period of time of 10 consecutive days using a glucose sensor validated by the FDA (Dexcom G6 ®). The sensor will be implanted on day 0 and will retire on day 10 mid-morning. Glucose records will preferably be evaluated on days 2 to 9 to avoid the bias caused by the insertion and removal of the sensor, which prevents a sufficient stabilization of the monitoring system. The characteristic glycemic pattern of each patient will be calculated on average from the profiles obtained on days 2 to 9.

After 10 days, urine and feces will be collected for the study of the gut microbiota. Subjects will undergo a fasting blood test and after eating, neuropsychological testing will be performed. Subsequently, the sensor and the device for monitoring physical activity/sleep will be removed. Lastly, fMRI will be done to evaluate the iron content in the brain (R2\*) and the parameters of "Diffusion Tensor Imaging" in different brain territories. We will characterize mPFC connectivity in subjects in this cohort by resting-state functional MRI and structural connectivity by MRI.

The gut metagenomic composition and functionality associated with these cognitive traits, miRNA, and metabolites in plasma and brain imaging data will be studied.

Visit planning:

Visit 1(day 1): Physical examination, Nutritional survey, Bioimpedance, Densitometry, glycemia sensor, and activity and sleep tracker device. Consent form.

Visit 2 (day 10): Sample: blood, urine, and feces. Diet questionnaire, Neuropsychological assessment, Glycemia sensor withdrawal. Activity and sleep tracker device withdrawal, fMRI.

DATA COLLECTION OF SUBJECTS OF CROSS-SECTIONAL STUDY:

1. Subsidiary data: Age, sex, and birth date.

2. Clinical variables:

* Weight

* height,

* body mass index

* waist and hip perimeters

* waist-to-hip ratio

* blood pressure (systolic and diastolic)

* fat mass and fat free-mass (bioelectric impedance and DEXA)

* smoking status

* alcohol intake

* registry of usual medicines

* personal history of blood transfusion and/or donation

* a record of family history of obesity, cardiovascular events, and diabetes

* psychiatric and eating disorder history.

3. Laboratory variables: 15cc of blood will be extracted from fasted subjects to determine the following variables using the usual routine techniques of the clinical laboratory:

* hemogram

* glucose

* bilirubin

* aspartate aminotransferase (AST/GOT)

* alanine aminotransferase (ALT/GPT)

* gamma-glutamyl transpeptidase (GGT)

* urea

* creatinine

* uric acid

* total proteins,

* albumin

* total cholesterol \| HDL cholesterol \| LDL cholesterol

* triglycerides,

* glycated hemoglobin (HbA1c)

* ferritin \| soluble transferrin receptor

* ultrasensitive C reactive protein

* erythrocyte sedimentation rate

* lipopolysaccharide binding protein

* free thyroxine (free T4) \| thyroid stimulating hormone (TSH) \| baseline cortisol -plasma insulin

* inflammation markers \| interleukin 6 (IL-6). An additional 20cc of blood (plasma-EDTA), 18cc of serum, and 20cc of plasma with heparin will be extracted for further analysis.

4. Stool samples collection: A stool sample will be provided from each patient. The sample should be collected at home or in the hospital, sent to the laboratory within 4 hours from the collection, fragmented, and stored at -80ºC.

Analysis of gut microbiota in stool:

\*Fecal genomic DNA extraction and whole-genome sequencing. Total DNA will be extracted from frozen human stool using the QIAamp DNA mini stool kit (Qiagen, Courtaboeuf, France). DNA quantification will be performed with a Qubit 3.0 fluorometer (Thermo Fisher Scientific, Carlsbad, CA, USA). Subsequently, 1 ng of each sample (0.2 ng/μl) will be used for the preparation of shotgun libraries for high-throughput sequencing, using the Nextera DNA Flex Library Prep kit (Illumina, Inc., San Diego, CA, USA) according to the manufacturer's protocol. Sequencing will be performed on a NextSeq 500 sequencing system (Illumina) with 2 X 150-bp paired-end chemistry, at the facilities of the Sequencing and Bioinformatics Service of the FISABIO (Valencia, Spain).

5. Urine sample collection: Necessary to determine alterations in the metabolic pathways involved in tryptophan metabolism, and to determine the role of the intestinal microbiota in these metabolic changes.

6. Metabolomics in plasma and feces: In addition to metabolomic analyses in urine samples, metabolomic analyses will be performed using techniques such as 1H-NMR and HPLC-MS/MS in plasma and stool samples.

7. Magnetic Resonance Imaging: All MRI examinations will be performed on a 1.5-T scanner (Ingenia ®; Philips Medical Systems). First, a fluid-attenuated inversion recovery (FLAIR) sequence will be used to exclude subjects with preexisting brain lesions. Brain iron load will be assessed by means of R2\* values. T2\* relaxation data will be acquired with a multi-echo gradient-echo sequence with 10 equally spaced echoes (first echo=4.6ms; inter echo spacing=4.6ms; repetition time=1300ms). T2\* will be calculated by fitting the single exponential terms to the signal decay curves of the respective multi-echo data.R2\* values will be calculated as R2\*=1/T2\* and expressed as Hz. In addition, R2\* values will be converted to μmol Fe/g units as previously validated on phantom tests. Brain iron images from control subjects will be normalized to a standard space using a template image for this purpose (EPI MNI template). Subsequently, all normalized images will be averaged for the determination of normal iron content. Normal values (mean and SD) will be also calculated for anatomical regions of interest using different atlas masks, addressing possible differences between gender and age. The brain iron comparison between control and obese subjects will be performed using voxel-based analysis. Obese-subject images will be normalized to a standard space. The normalized image will be compared to the normal population using t-test analysis with age and sex as co-variables. As result, a parametric map will show individual differences in the iron deposition. Based on previous observational studies showing increased brain iron load at some specific regions and the evidence suggesting hippocampal and hypothalamic changes in association with obesity and insulin resistance, the statistical and image analyses will be focused on iron differences at the caudate, lenticular, thalamus, hypothalamus, hippocampus, and amygdala.

8. Neuropsychological examination: Different domains of cognition will be explored: memory (Test aprendizaje verbal-TAVEC, Rey-Osterrieth Complex Figure) attention, and executive function(WAIS-IV, Trail making test (Part A y B), Stroop test), social cognition(POFA and BFRT), language (animals). Furthermore, depression (PHQ9), anxiety (State-Trait Anxiety Inventory (STAI)), impulsivity (Impulsive Behavior Scale (UPPS-P)), sensitivity to punishment and reward (Sensitivity to Punishment and Sensitivity to Reward (SRSPQ)), food addiction (Yale Food Addiction Scale (YFAS II)), binge eating disorder (Binge Eating scale), subjective well being, positive and negative affect (Positive and Negative Affect Schedule (PANAS)), emotion recognition (Pictures of Facial Affect and Benton Facial Recognition Test) will be explored through psychological tests.

9. Profile of circulating miRNAs: Additionally, to metabolomic analyses in urine samples, metabolomic analyses will be performed using techniques such as 1H-NMR and HPLC-MS/MS in plasma and stool samples.

* Circulating RNA extraction and purification: Plasma will be obtained by standard venipuncture and centrifugation using EDTA-coated Vacutainer tubes (Becton-Dickinson, Franklin Lakes, NJ). Plasma separation will be performed by double centrifugation using a laboratory centrifuge (Beckman J-6M Induction Drive Centrifuge, Beckman Instruments Inc). RNA extraction will be performed from an initial volume of 300 μL of plasma using the mirVana PARIS isolation kit (Applied Biosystems, Darmstadt, Germany).

* Retrotranscription of circulating miRNAs and preamplification: A fixed volume of 3 μL of RNA solution from the 40 mL, eluate of the RNA isolate will be used as input for retrotranscription using the TaqMan miRNA reverse transcription kit (Life Technology, Darmstadt, Germany). Preamplification will be carried out using the TaqMan PreAmp Master Mix (Life Technology, Darmstadt, Germany).

* Analysis of individual miRNAs by TaqMan hydrolysis probes: Gene expression will be assessed by real-time PCR using the LightCycler 480 real-time PCR system (Roche Diagnostics, Barcelona, Spain), using the appropriate TaqMan technology for the quantification of relative gene expression.

10. Drosophila

The relevant gut microbiota identified in the human cohort will first be tested in Drosophila. High-throughput screening in Drosophila of the metabolic and behavioral effects of the gut microbiota identified in mice with loss of feeding control will be performed. Microbial strains obtained from the storage facilities will be cultured in high yield under conditions suitable for selecting aerotolerant bacteria to associate with flies. These bacteria will be used to generate mono-associated gnotobiotic flies, which will be analyzed for alterations in feeding behavior using the high-throughput quantitative flyPAD feeding assay. We will test both fully-fed flies and flies deprived of amino acids. Bacterial strains identified as modifiers of the drive to eat will be evaluated for their effects on fly metabolism using standard metabolomic approaches. This task will identify specific bacterial strains capable of modifying the feeding drive, and behavioral and metabolic responses of Drosophila.

The information will remain registered in a notebook and will be computerized in the database of the study.

STATICAL METHODS:

Sample size: There are no previous data showing expected differences for sample size estimation regarding glucose variability, physical activity, the composition of gut microbiota, and cognitive function. In a previous study, differences in brain iron content were observed in 20 obese vs. 20 nonobese subjects. Thus, the proposed sample size is at least 20 individuals per group, with balanced age and gender (pre-and postmenopausal women) representation.

Student's t-test for independent samples will be used to compare the variables of subjects with obesity vs subjects without obesity. Prior to statistical analysis, the data will be normalized using specific normalization procedures. Next, the normal distribution and homogeneity of variances will be tested. Parameters that do not meet these requirements will be logarithmically transformed (log10). Student's t-test for paired samples will be used to study differences before and after follow-up. Significant associations, whether positive or negative, will be studied further (simple linear and multivariate regression analysis).

Metagenomic analysis.

Raw counts will be transformed using a centered logarithmic transformation (clr) as implemented in the R package "ALDEx2". Bacterial species and functions associated with brain iron and circulating microRNAs will be identified using robust linear regression models such as those implemented in the R package. Limma R, adjusting for age, body mass index, sex, and years of education. Taxa and bacterial functions will be previously filtered so that only those with more than 10 reads in at least five samples will be selected. The p-values will be adjusted for multiple comparisons using sequential goodness of fit as implemented in the R package "SGoF". SGoF has been shown to perform particularly better than FDR methods with a high number of tests and low sample size, which is the case for large omics data sets. Statistical significance will be set at p adjusted \<0.1.

Continuos glucose monitoring

The glycemic risks and measures of variability to be assessed are standard deviation (SD), coefficient of variation (CV), mean amplitude of glycemic excursions (MAGE), risk index (RI), low blood glucose index (LBGI), and high blood glucose index (HBGI). In addition, percent (%) time in range (70-180mg/dL), % time in euglycemia (70 - 140 mg/dL), hypoglycemia (\<70mg/dL), and hyperglycemia (\>180 mg/dL). Measures of glycemia variability were calculated using Matlab software (R2018a).

Recruitment & Eligibility

Status
RECRUITING
Sex
All
Target Recruitment
100
Inclusion Criteria
  1. Men and women aged 30-65 years.
  2. Informed consent for participation in the study.
Exclusion Criteria
  1. Serious systemic disease unrelated to obesity such as cancer, severe kidney, or liver disease, known as type 1 or type 2 diabetes.
  2. Systemic diseases with intrinsic inflammatory activity such as rheumatoid arthritis, Crohn's disease, asthma, chronic infection (e.g., HIV, active tuberculosis), or any type of infectious disease.
  3. Pregnancy and lactation.
  4. Patients with severe disorders of eating behavior.
  5. Persons whose liberty is under the legal or administrative requirement.
  6. Clinical symptoms and signs of infection in the previous month.
  7. Antibiotic, antifungal or antiviral treatment in the previous 3 months.
  8. Anti-inflammatory chronic treatment with steroidal and/or non-steroidal anti-inflammatory drugs.
  9. Major psychiatric antecedents.
  10. Excessive alcohol intake, either acute or chronic (alcohol intake greater than 40 g a day (women) or 80 g/day (men)) or drug abuse.
  11. Serum liver enzyme (AST, ALT) activity over twice the upper limit of normal.
  12. History of disturbances in iron balance (e.g., genetic hemochromatosis, hemosiderosis from any cause, atransferrinemia, paroxysmal nocturnal hemoglobinuria).
  13. Creatinine greater than 1.2 and glomerular filtration rate less than 40.
  14. Immunosuppressants treatment.
  15. Chronic constipation (depositional habit ≥ 7 days)
  16. Kidney failure, history of a kidney transplant, or current treatment with dialysis.
  17. Treatment with a slimming product during the previous two months.
  18. Class III or IV heart failure (according to the New York Heart Association), medical records of ischemic cardiovascular disease.
  19. Current treatment for malignant neoplasm.

Study & Design

Study Type
OBSERVATIONAL
Study Design
Not specified
Primary Outcome Measures
NameTimeMethod
The glycaemic risk measured with high blood glucose index (HBGI).10 days

High blood glucose index (HBGI) is a parameter that quantifies the risk of glycaemic.

The glycaemic variability measured with mean amplitude of glycaemic excursions (MAGE).10 days

measured in mg/dl

Minutes light sleep10 days

Mean and standard deviation of minutes light sleep measures by activity and sleep tracker device.

The percentage of time in glucose target range (glucose level 100mg/dl-125mg/dl)10 days
Minutes deep sleep10 days

Mean and standard deviation of minutes deep sleep measures by activity and sleep

Impulsivity10 days

It will be measured by Impulsive Behavior Scale (UPPS-P). The test evaluates: Negative urgency (tendency to act rashly under extreme negative emotions), Lack of Premeditation (tendency to act without thinking), Lack of Perseverance (inability to remain focused on a task) and Sensation Seeking (tendency to seek out novel and thrilling experiences). All items are rated on a four point scale from 1 (strongly agree) to 4 (strongly disagree).

Behavioral inhibition10 days

It will be measured by Sensitivity to Punishment and Sensitivity to Reward (SPSRQ). The scale of sensitivity to punishment is related to the behavioral inhibition system. It is made up of two subscales of 24 items each, where the higher the score, the greater the sensitivity to punishment.

Concentration of advanced glycation end products (AGE) receptor agonists.10 days

Enzyme-linked immunosorbent assay (ELISA).

Glycemic variability.10 days

Mean and standard deviation of glucose measures in mg/dL using a continuous glucose monitoring during 10 days.

Effect on gut microbiota.2 months

Gut microbiota will be analysed by metagenomics and metabolomics.

Audioverbal memory10 days

It will be measured by California Verbal Learning Test (CVLT). Minimum/maximum scale values (0-16), where 16 is a better audioverbal memory.

Attention and working memory10 days

It will be measured by the Digits subtest of Wechsler Adult Intelligence Scales, Fourth Edition (WAIS-IV).

Inhibition10 days

It will be measured by Stroop Color-Word Test.

Minutes rapid eye movement (REM)10 days

Mean and standard deviation of minutes REM measures by activity and sleep tracker device.

Visual memory10 days

It will be measured by Rey-Osterrieth Complex Figure. Minimum/maximum scale values (0-36), where 36 is a better visual memory.

Food Addiction10 days

It will be measured by Yale Food Addiction Scale.It is a symptom score from 0-11, based on the Diagnostic and Statistical Manual of Mental Disorders (DSM-IV) criteria, for substance dependence. Food addiction is diagnosed if ≥3 symptoms are reported.

Visoconstructive function10 days

It will be measured by Rey-Osterrieth Complex Figure. Minimum/maximum scale values (0-36), where 36 is a better visoconstructive function.

Facial recognition10 days

It will be measured by Benton Facial Recognition Test. The participant is shown a face and then must recognize it among six faces placed together.

The glycaemic risk measured with low blood glucose index (LBGI)10 days

Low blood glucose index (LBGI) is a parameter that quantifies the risk of glycaemic

Behavioral activation10 days

It will be measured by Sensitivity to Punishment and Sensitivity to Reward (SPSRQ). The reward sensitivity scale is related to the behavioral activation system. It is made up of two subscales of 24 items each, where the higher the score, the greater the sensitivity to reward.

Semantic verbal fluency10 days

It will be measured by Animals test. The person must name as many animals as possible in 1 minute. The result is corrected by standard scores, according to age and level of education.

Binge eating disorder10 days

It will be measured by Binge Eating Scale (BES). The BES is one of the most widely used measures to assess binge eating disorder symptomatology. The BES score ranges from 0 to 46 and its cut-off point is greater than or equal to 27. Subjects with scores higher than 27 are more likely to suffer from binge eating disorder.

Anxiety10 days

It will be measured by State-Trait Anxiety Inventory (STAI). This questionnaire evaluates state anxiety (S) and trait anxiety (R) through 20 items each, with a likert-type response scale of four alternatives. In the case of state anxiety, the scale goes from 0 (not at all) to 3 (a lot), while for trait anxiety it goes from 0 (almost never) to 3 (almost always). The higher the score, the greater the anxiety in both concepts.

Depressive symptomatology10 days

It will be measured by Patient Health Questionnaire-9 (PHQ-9). Minimum/maximum scale values (0-27), where ≥ 20 is severe depression.

Selective and alternating attention10 days

It will be measured by Trail making test (Part A y B).

Phonemic verbal fluency10 days

It will be measured by PMR

Emotion recognition10 days

It will be measured by Pictures of Facial Affect. The participant will be shown pictures of people and has to recognize what emotion the subjects of the pictures are expressing ( happiness, sadness, etc.).

Secondary Outcome Measures
NameTimeMethod
Diffusion Tensor Imaging brain sequences24 hours

Diffusion Tensor Imaging was acquired at 1.5 T (Philips ingenia) using a single-shot spin echo sequence with echo-planar imaging (EPI), 50 contiguous slices, voxel size 2x2x2.5 mm3, TE/TR of 72/3581 ms/ms, a diffusion-weighting factor b = 800 s/mm2 and diffusion encoding along 32 directions.

Brain iron accumulation24 hours

It will be assessed using magnetic resonance imaging using (R2\*)

The percentage of time in hypoglycaemia (glucose level below 70mg/dl)10 days
The percentage of time in glucose range (glucose level above 200 mg/dl)10 days
Effect on brain structure.10 days

Brain structure will be assessed using magnetic resonance imaging.

Minutes slight activity10 days

Mean and standard deviation of minutes slight activity measures by activity and sleep tracker device.

Calories10 days

Mean and standard deviation of calories measures by activity and sleep tracker device.

Glycosylated hemoglobin (HbA1c) value10 days

Glycosylated hemoglobin (HbA1c) in % or mmol/mol

The percentage of time in hyperglycaemia (glucose level above 250 mg/dl)10 days
The percentage of time in glucose range (glucose level below 100 mg/dl)10 days
The percentage of time in glucose range (glucose level between 126-139 mg/dl)10 days
Steps10 days

Mean and standard deviation of steps measures by activity and sleep tracker device.

Minutes null activity10 days

Mean and standard deviation of minutes null activity measures by activity and sleep tracker device.

Minutes awake10 days

Mean and standard deviation of minutes awake measures by activity and sleep tracker device.

Number time awake10 days

Mean and standard deviation of number time awake measures by activity and sleep tracker device.

Resting-state functional brain sequences24 hours

It will be assessed using magnetic resonance imaging (T2\*-weighted echo-planar imaging). T2 \* relaxation data will be acquired with a multi-echo gradient sequence with 10 equidistant echoes (first echo = 4.6ms; echo spacing = 4.6ms; repetition time = 1300ms). The value value of T2 \* will be calculated by adjusting the simple exponential terms for the signal decay of the respective echo time values.

Insulin resistance10 days

It will be measured by HOMA

Markers of chronic inflammation: C-reactive protein, IL-6, adiponectin and soluble, tumor necrosis factor-α receptor fractions.2 months

Enzyme-linked immunosorbent assay (ELISA) and quantitative polymerase chain reaction (qPCR).

Burned calories10 days

Mean and standard deviation of burned calories measures by activity and sleep tracker device.

Distance10 days

Mean and standard deviation of distance measures by activity and sleep tracker device.

Minutes asleep10 days

Mean and standard deviation of minutes asleep measures by activity and sleep tracker device.

Bed time10 days

Mean and standard deviation of bed time measures by activity and sleep tracker device.

The percentage of time in glucose range (glucose level between 140-199 mg/dl)10 days
Minutes mean activity10 days

Mean and standard deviation of minutes mean activity measures by activity and sleep tracker device.

Minutes high activity10 days

Mean and standard deviation of minutes high activity measures by activity and sleep tracker device.

Trial Locations

Locations (1)

Institut d'Investigació Biomèdica de Girona (IDIBGI)

🇪🇸

Girona, Spain

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