Development of a Behavioral Observer for Type 1 Diabetes Mellitus
NCT ID: NCT01434030
Last Updated: 2014-09-04
Study Results
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View full resultsBasic Information
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COMPLETED
NA
57 participants
INTERVENTIONAL
2010-04-30
2011-06-30
Brief Summary
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Detailed Description
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Conditions
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Study Design
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NA
SINGLE_GROUP
NONE
Study Groups
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Behavioral Observer
Focus group methodology was chosen to obtain qualitative and quantitative data on participants' desire to use glucose advisory systems to manage their diabetes, their concerns about and desired features and functions of these systems, and their perceived confidence with behavioral event recording. At the outset of each interview, the personalized glucose advisory system (PGASystem) was described to participants as a system composed of a continuous glucose monitor (CGM) device and insulin pump, into which they would input daily information about their insulin, food, and physical activity. The system would then use their data to create personalized algorithms and advice about various aspects of their diabetes management, such as suggestions regarding bolus and basal rate dosing. The interview consisted of open-ended, multiple choice, and dichotomous questions.
Focus Group
Focus group methodology was chosen to obtain qualitative and quantitative data on participants' desire to use glucose advisory systems to manage their diabetes, their concerns about and desired features and functions of these systems, and their perceived confidence with behavioral event recording. At the outset of each interview, the personalized glucose advisory system (PGASystem) was described to participants as a system composed of a continuous glucose monitor (CGM) device and insulin pump, into which they would input daily information about their insulin, food, and physical activity. The system would then use their data to create personalized algorithms and advice about various aspects of their diabetes management, such as suggestions regarding bolus and basal rate dosing. The interview consisted of open-ended, multiple choice, and dichotomous questions.
Interventions
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Focus Group
Focus group methodology was chosen to obtain qualitative and quantitative data on participants' desire to use glucose advisory systems to manage their diabetes, their concerns about and desired features and functions of these systems, and their perceived confidence with behavioral event recording. At the outset of each interview, the personalized glucose advisory system (PGASystem) was described to participants as a system composed of a continuous glucose monitor (CGM) device and insulin pump, into which they would input daily information about their insulin, food, and physical activity. The system would then use their data to create personalized algorithms and advice about various aspects of their diabetes management, such as suggestions regarding bolus and basal rate dosing. The interview consisted of open-ended, multiple choice, and dichotomous questions.
Eligibility Criteria
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Inclusion Criteria
* Use of an insulin pump to treat their diabetes for at least six months.
* Actively using a bolus calculator function with the current insulin pump with pre-defined parameters for glucose goal, carbohydrate ratio, and insulin sensitivity factor.
* Age 21 - 65 years. The investigators will not be studying children since the DexCom Seven® Plus is not approved for use in children. Adults over age 65 are likely to have medical exclusions for the follow-up Phase 2 study, which involves induced hypoglycemia.
* Willingness to participate in the study for 6 weeks wearing a DexCom Seven® Plus CGM and OmniPod® insulin pump, performing self-monitoring blood glucose (SMBG) with the integral FreeStyle glucometer 4 times per day (before meals and bedtime) in addition to SMBG required to calibrate the CGM or to validate a low or high BG alarm (\<70 mg/dl or \>300 mg/dl), and recording behavioral events by tagging SMGB values throughout the study with meal and activity descriptors.
* Willingness to avoid consumption of acetaminophen-containing products for the duration of the study.
* Demonstration of proper mental status and cognition for completion of the study.
Exclusion Criteria
* Psychiatric disorders that would interfere with study tasks (e.g. mental retardation, substance abuse)
* History of a systemic deep tissue infection with methicillin-resistant staph aureus or Candida albicans
* Known bleeding diathesis or dyscrasia
* Active enrollment in another clinical trial
* Medical requirement for acetaminophen-containing products during the study period for more than 1 week
* Medical condition that would make operating a CGM or insulin pump difficult (e.g. blindness, severe arthritis, extensive scar tissue at sites where devices are inserted).
* Need for magnetic resonance imaging (MRI)/magnetic resonance angiogram (MRA) during the study.
21 Years
65 Years
ALL
No
Sponsors
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National Institute of Diabetes and Digestive and Kidney Diseases (NIDDK)
NIH
University of Virginia
OTHER
Responsible Party
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Boris Kovatchev, PhD
Professor
Principal Investigators
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Boris P Kovatchev, Ph.D.
Role: PRINCIPAL_INVESTIGATOR
University of Virginia
Locations
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University of Virginia - Center for Diabetes Technology
Charlottesville, Virginia, United States
Countries
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References
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Shepard JA, Gonder-Frederick L, Vajda K, Kovatchev B. Patient perspectives on personalized glucose advisory systems for type 1 diabetes management. Diabetes Technol Ther. 2012 Oct;14(10):858-61. doi: 10.1089/dia.2012.0122. Epub 2012 Aug 2.
Other Identifiers
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14956
Identifier Type: -
Identifier Source: org_study_id
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