Optimal Metabolic Health Through Continuous Glucose Monitoring (CGM)

November 14, 2022 updated by: University of South Florida

Improving Cognitive-Behavioral and Cardio-Metabolic Health Through Continuous Glucose Monitoring (CGM)

The primary focus of this study is to evaluate the role of Continuous Glucose Monitoring (CGM) with Levels Health software as a tool to provide feedback and accountability necessary to create sustainable behavioral changes in nutrition associated with improved metabolic health and resilience against chronic and infectious diseases.

Study Overview

Status

Completed

Conditions

Detailed Description

Achieving optimal metabolic health and glycemic control is a common goal among not only diabetics, but also for healthy individuals, athletes, elite military operators and for infectious disease prevention and resilience. No isolated biomarker is currently ubiquitously accepted as a marker of overall metabolic health and most rely on isolated snapshot (single time point) analyses and not a continuous closed-loop biomarker data assessment. Glycosylated hemoglobin (A1c) provides limited characterization of glycemic variability, which contributes to the progression of glycemic dysregulation. For example, emerging evidence links the amplitude and duration of glycemic variability as an independent risk factor linked to cardiovascular disease (CVD) (Di Flaviani 2011, Monnier 2006). Hyperglycemia-induced endothelial dysfunction and oxidative stress are greater with larger glycemic variability (Monnier 2006, Buscemi 2010). Glycemic variability is more deleterious for the cardiovascular system than sustained hyperglycemia (Nalysnyk 2010). Few technologies allow for continuous biomarker monitoring over time, and under a range of conditions like daily activities, swimming, exercise, sleep, etc. Multiple lines of evidence strongly suggest the predictive impact and value of monitoring glycemic variability on acute and chronic health of diabetes populations and non-diabetes populations (Rodriguez-Segade 2018, Zeevi 2015). Thus, there has been emerging interest in therapeutic approaches that seek to reduce glycemic variability. This potential for early detection of glycemic dysregulation is likely to be the single most beneficial effect of using CGM as an informational device, especially in the context of other biomarkers measures periodically. It is likely that people will make lifestyle modifications if they are aware of an impending health problem, detected through real time GCM-tracked glycemic variability. Lifestyle modifications are proven to be the most effective intervention for restoring normal fasting glucose levels and preventing diabetes among dysglycemic subjects, reducing the conversion to diabetes by 58% over placebo, and by 39% over metformin in one large US study (Diabetes Prevention Program Research Group 2002). Long terms follow-ups on other international studies have shown equally significant results at 4 years (Tuomilehto 2001) and 14 years (Li 2008) after the controlled lifestyle interventions ended, including reductions in diabetes incidence of 58%, and 43% respectively.

It is known that metabolic health is on a spectrum and long-term studies in diabetic populations have demonstrated that reducing glycemic variability is more important than lowering baseline hyperglycemia in terms of reducing cardiovascular complications (Hall 2018). Therefore, there exists a scientific rationale to study interventions that can optimize metabolic health in non-diabetics since the potential benefits of metabolic awareness extend beyond the diabetic population. Emerging technology that can provide tight feedback on lifestyle effects could be a valuable mechanism for non-diabetics seeking to improve education and reduce their lifetime risk of disease. Though such outcomes have not yet been demonstrated in long term studies, the existing research reveals promising results, including improved screening for metabolic risk (Rodriguez-Segade 2018), clear observability of effects of lifestyle intervention (Hall 2018, Brynes 2005, Freckmann 2007), and acceptance of a minimal-risk strategy for use as a preventative tool in a non-diabetic population (Liao 2018). The Diabetes Prevention Program Research Group called for a shift in response in order to reverse these trends, stating that: "methods of treating diabetes remain inadequate and that prevention is preferable (Diabetes Prevention Program Research Group 2002)." Though unproven as a preventative measure, monitoring of glycemic variability is - at worst - unlikely to exacerbate the problem. At best, however, if it becomes a widespread lifestyle tool, the benefits of improved individual metabolic awareness and educated action could have compounding effects at a larger societal scale.

Therefore, there exists a scientific rationale to study interventions that can optimize metabolic health with improved glycemic monitoring technologies (Danne 2017). It is becoming clear, that in addition to diabetic populations, normal, healthy populations can benefit from stable, controlled blood sugar levels, and that feedback mechanisms, including wearable technologies, can be employed. Thus, CGM could be a promising method of improving biomarkers of metabolic health for virtually anyone. In addition, optimal metabolic health is typically associated with improved behavioral health and cognitive resilience and decision making (Hadj-Abo 2020). Thus, optimizing and monitoring glycemic control may be useful for mental health and may be a valuable tool for military personnel and first responders under metabolic stress. Advances in software and hardware technologies have been developed to measure, analyze and predict glycemic variability and provides insight on how this dynamic biomarker correlates to metabolic fitness. Specifically, new advances in CGM technologies offer the potential to monitor, predict and change behavior through a closed-loop feedback system. By comparing CGM data with blood markers of metabolic health (eg.HbA1c , Insulin, etc.), and inflammation (e.g. hsCRP, cytokines) and along with assessments of emotion, cognition and behavior, a more robust interpretation and deconvolution of CGM data with experimental interventions may be possible.

Study Type

Interventional

Enrollment (Actual)

66

Phase

  • Not Applicable

Contacts and Locations

This section provides the contact details for those conducting the study, and information on where this study is being conducted.

Study Locations

    • Florida
      • Wesley Chapel, Florida, United States, 33544
        • Florida Medical Clinic

Participation Criteria

Researchers look for people who fit a certain description, called eligibility criteria. Some examples of these criteria are a person's general health condition or prior treatments.

Eligibility Criteria

Ages Eligible for Study

18 years to 69 years (Adult, Older Adult)

Accepts Healthy Volunteers

No

Genders Eligible for Study

All

Description

Inclusion Criteria:

  • Ages 18-69 years of age
  • Desire to improve metabolic health through nutritional, fitness, cognitive, and behavioral therapies.
  • Voluntarily participate in either a live or virtual 12-week, multidisciplinary wellness program created and led by Allison Hull, DO.
  • Body Mass Index (BMI) > 20 kg/m2
  • Fasting Blood Glucose (FBG) of 85-125 mg/dl
  • HbA1c of 5.0-6.4 %

Exclusion Criteria:

  • Type 1 or 2 Diabetes.
  • Chronic Kidney Disease
  • End Stage Liver Disease
  • Use of any weight loss medications currently or in the past 3 months.
  • Disordered Eating - anorexia or bulimia nervosa.
  • Pregnant or Breastfeeding females.

Study Plan

This section provides details of the study plan, including how the study is designed and what the study is measuring.

How is the study designed?

Design Details

  • Primary Purpose: Treatment
  • Allocation: Randomized
  • Interventional Model: Parallel Assignment
  • Masking: Single

Arms and Interventions

Participant Group / Arm
Intervention / Treatment
Experimental: Wellness Program combined with Continuous Glucose Monitoring (CGM)
Continuous Glucose Monitoring (CGM) sensor combined with Levels CGM software that provides real-time visualization, analysis and feedback will be added to a Wellness Program incorporating a low carbohydrate diet (<50 g carbohydrate). Subjects in the group will be manually randomized and listed in a sealed envelope by someone who is not part of the study team
Continuous glucose monitor - a device that monitors blood glucose levels in a continuous closed-loop manner. This can also refer to the process of continuous glucose monitoring
Other Names:
  • CGM
  • Continuous Glucose Monitor Software
  • CGM Software
Other Names:
Active Comparator: Wellness Program
Wellness Program incorporating a low carbohydrate diet (<50 g carbohydrate). Subjects in the group will be manually randomized and listed in a sealed envelope by someone who is not part of the study team
Other Names:

What is the study measuring?

Primary Outcome Measures

Outcome Measure
Measure Description
Time Frame
Glucose stability from baseline to 12 weeks as measured by Continuous Glucose Monitoring (CGM)
Time Frame: 12 weeks
The intervention arm will have Continuous Glucose Monitoring (CGM) data collected over 12 weeks per protocol design. Subjects will be considered stable with no more than a 10% increase in average CGM from baseline. This outcome with be presented as mean glucose and Hba1c concentration as well as the number of subjects that improved average CGM from baseline.
12 weeks
Glucose stability from baseline to 12 weeks as measured by hemoglobin A1c (HbA1c)
Time Frame: 12 weeks
Both arms will have HbA1c collected over 12 weeks per protocol design. HbA1c is considered pre-diabetes when between 5.7-6.4% and abnormally high when above 6.4%. Subjects will be considered stable with no more than a 10% increase in HbA1c from baseline. This outcome with be presented as mean Hba1c concentration as well as the number of subjects that improved average HbA1c from baseline.
12 weeks

Secondary Outcome Measures

Outcome Measure
Measure Description
Time Frame
Changes in depression severity from baseline to 12 weeks as measured by Patient Health Questionnaire-9 (PHQ-9) assessment
Time Frame: 12 weeks
Both arms will complete the PHQ-9 assessment at baseline and at the end of the 12 week study per protocol design. PHQ-9 score of depression severity ranges from 0-27 as follows: 0-4 none, 5-9 mild, 10-14 moderate, 15-19 moderately severe, 20-27 severe. Subjects will be considered stable if they remain within 2 points of their baseline range. This outcome will be presented as the mean PHQ-9 assessment score as well as the number of subjects that remained stable, increased, or decreased on the scale.
12 weeks
Changes in anxiety from baseline to 12 weeks as measured by GAD-7 assessment
Time Frame: 12 weeks
Both arms will complete the Generalised Anxiety Disorder Assessment (GAD-7) over the 12 week study per protocol design. GAD-7 total score ranges from 0 to 21. 0-4: minimal anxiety. 5-9: mild anxiety. 10-14: moderate anxiety. 15-21: severe anxiety. Subjects will be considered stable if they remain within 2 points of their baseline range. This outcome with be presented as the mean GAD-7 assessment score as well as the number of subjects that remained stable, increased, or decreased on the scale.
12 weeks
Changes in daily stress from baseline to 12 weeks as measured by Short Stress State Questionnaire (SSSQ) assessment
Time Frame: 12 weeks
Daily stress will be assessed by the SSSQ. It is a 1min questionnaire consisting of 24 simple questions regarding their stress level perception. It can be performed on an iPad. Conscious appraisals of stress, or stress states, are an important aspect of human performance. Therefore, we will use a short multidimensional self-report measure of stress state, the SSSQ (Helton, 2004) to evaluate the changes in stress level during the mission. The SSSQ measures task engagement, distress, and worry.
12 weeks
Changes in circulating ghrelin from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating ghrelin over the 12 week study per protocol design. This outcome will be presented as the mean concentration of ghrelin (pg/mL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating glucagon from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating glucagon over the 12 week study per protocol design. This outcome will be presented as the mean concentration of glucagon (pg/mL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating leptin from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating leptin over the 12 week study per protocol design. This outcome will be presented as the mean concentration of leptin (pg/mL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating insulin from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating insulin over the 12 week study per protocol design. This outcome will be presented as the mean concentration of insulin (pg/mL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating GLP-1 from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating GLP-1 over the 12 week study per protocol design. This outcome will be presented as the mean concentration of GLP-1 (pg/mL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating hsCRP from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating hsCRP over the 12 week study per protocol design. This outcome will be presented as the mean concentration of hsCRP (mg/L) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating total cholesterol from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating total cholesterol over the 12 week study per protocol design. This outcome will be presented as the mean concentration of total cholesterol (mg/dL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating HDL from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating HDL over the 12 week study per protocol design. This outcome will be presented as the mean concentration of HDL (mg/dL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating LDL and ApoB from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating LDL and ApoB over the 12 week study per protocol design. This outcome will be presented as the mean concentration of LDL (mg/dL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in circulating triglycerides from baseline to 12 weeks
Time Frame: 12 weeks
Both arms will have blood drawn for analysis of circulating triglycerides over the 12 week study per protocol design. This outcome will be presented as the mean concentration of triglycerides (mg/dL) as well as the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in blood glucose from baseline to 12 weeks using POC finger stick glucometer.
Time Frame: 12 weeks
Subjects in the treatment arm will use a point of care (POC) finger stick glucometer to test their blood glucose levels over the 12 week study per protocol design. Glucose in the range of 70-120mg/dL will be considered normal. This outcome will be presented as the mean glucose concentration, the percent of subjects that remained in the normal range, and the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in blood ketones (beta hydroxybutyrate) from baseline to 12 weeks using POC finger stick ketone meter.
Time Frame: 12 weeks
Subjects in the treatment arm will use a POC finger stick ketone meter to test their blood ketone levels over the 12 week study per protocol design. Beta-hydroxybutyrate in the range of 0-5mM will be considered normal. This outcome will be presented as the mean beta-hydroxybutyrate concentration, the percent of subjects that remained in the normal range, and the number of patients who remained stable, increased, or decreased from baseline over time.
12 weeks
Changes in hepatic steatosis from baseline to 12 weeks as measured by abdominal ultrasound (US).
Time Frame: 12 weeks
Both arms will undergo an abdominal US pre- and post- the 12 week study for assessment of hepatic steatosis as a marker of fatty liver disease. Hepatic fat content will be estimated by assessment of radiographic findings and measurement of liver echogenicity scored by a qualified ultrasound technologist.. This outcome with be presented as none, mild, moderate, or severe for individual subjects as well as the number of subjects that remained stable, increased, or decreased in severity from pre- to post- study.
12 weeks

Collaborators and Investigators

This is where you will find people and organizations involved with this study.

Investigators

  • Principal Investigator: Dominic D'Agostino, PhD, University of South Florida

Publications and helpful links

The person responsible for entering information about the study voluntarily provides these publications. These may be about anything related to the study.

General Publications

Study record dates

These dates track the progress of study record and summary results submissions to ClinicalTrials.gov. Study records and reported results are reviewed by the National Library of Medicine (NLM) to make sure they meet specific quality control standards before being posted on the public website.

Study Major Dates

Study Start (Actual)

May 10, 2021

Primary Completion (Actual)

April 18, 2022

Study Completion (Actual)

April 18, 2022

Study Registration Dates

First Submitted

December 9, 2020

First Submitted That Met QC Criteria

June 8, 2021

First Posted (Actual)

June 9, 2021

Study Record Updates

Last Update Posted (Actual)

November 15, 2022

Last Update Submitted That Met QC Criteria

November 14, 2022

Last Verified

May 1, 2022

More Information

Terms related to this study

Plan for Individual participant data (IPD)

Plan to Share Individual Participant Data (IPD)?

No

Drug and device information, study documents

Studies a U.S. FDA-regulated drug product

No

Studies a U.S. FDA-regulated device product

Yes

This information was retrieved directly from the website clinicaltrials.gov without any changes. If you have any requests to change, remove or update your study details, please contact register@clinicaltrials.gov. As soon as a change is implemented on clinicaltrials.gov, this will be updated automatically on our website as well.

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