EEG-Changes During Insulininduced Hypoglycemia in Type 1 Diabetes
NCT ID: NCT00810420
Last Updated: 2008-12-18
Study Results
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Basic Information
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COMPLETED
OBSERVATIONAL
2007-02-28
2008-04-30
Brief Summary
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1. Detection of hypoglycemia-induced EEG changes using subcutaneous electrodes
2. Ambulatory EEG monitoring using subcutaneous electrodes
Detailed Description
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For these reasons, a number of studies have been carried out with the aim of developing automatic detection systems, which can warn the diabetic patients before blood glucose levels are reduced to the level at which severe neuroglycopenia develops, typically about 2.0-2.5 mmol/l. Most studies have evaluated the potential of continuous glucose monitoring (CMG) to decrease the frequency of hypoglycemia. Although, smaller studies have reported a lower risk of hypoglycemia using CMG compared with conventional glucose measurements (10,11), larger multi-center studies have failed to reproduce these findings (11-14). This could be explained by a low accuracy in the low range of glucose values and delay in detection time during rapid changes using CMG (11,13,14). In fact, CMG only recognizes less than 50% of hypoglycemic events (15). Thus, even with a marginal improvement compared with conventional glucose measurements, CMG is far from the goal of completely avoiding severe hypoglycemic episodes.
The EEG signal reflects the functional state and metabolism of the brain. The brain is almost totally dependent on a continuous supply of glucose, and when this is lower than the metabolic requirements of the brain, its function deteriorates. Indeed, neuroglycopenic hypoglycemia in insulin-treated diabetic patients is associated with characteristic changes in EEG with a decrease in alpha activity, an increase in delta activity, and in particular an increase in theta activity (16-19). These changes are clearly seen at \~2.0 mmol/l (16,17), but may be present already at higher glucose levels (\~3.0 mmol/l), in particular in type 1 diabetic patients with hypoglycemic unawareness (19,20). It has been shown that the most characteristic changes, the increase in theta activity, appears 19 min before severe cognitive impairment (20). This suggests a "window" between hypoglycemia-induced EEG changes and severe neuroglycepenia, which is an important prerequisite in developing an automatic detection system capable of warning the patient.
A number of studies have characterized the changes in the EEG that results from hypoglycemia (16-20), but none have proposed a method of processing and testing in real-time. With a device, which can perform real-time monitoring and processing of EEG signals and automatically detect and warn the patient of hypoglycemia-induced EEG changes, it would be possible for the patient to avoid severe neuroglypenic symptoms e.g. by ingestion of carbohydrates. The construction of an EEG-based hypoglycemia alarm system must fulfill the following criteria. First, the device should be able to distinguish hypoglycemia-induced EEG changes from normal changes in EEG, noise and artifacts with high sensitivity and specificity using a mathematical algorithm that classifies the EEG in real-time. Second, these EEG changes should be observed in the majority of insulin-treated diabetic patients during hypoglycemia. Third, there should be a "window" between hypoglycemia-induced EEG changes and severe cognitive impairment. Moreover, the device should be fully compatible with normal everyday activities. Thus, the electrodes should be thin and implanted subcutaneously, and the monitoring and processing unit should be small, have sufficient battery power, and capable of communicating with a PDA or cell phone.
Conditions
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Keywords
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Eligibility Criteria
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Inclusion Criteria
* Type 1 diabetics with complete or partial hypoglycemia unawareness.
* Ability to comprehend and a willingness to sign an informed consent form
Exclusion Criteria
* Current use of neuroactive medication or recreational drugs.
* Pregnancy.
* Patients with known heart disease, former myocardial infarction or cardiac arrhythmia
* Patients with known epilepsy or in treatment with anti-epileptic drugs for all purposes
* Patients treated with drugs that are known to influence the EEG, including benzodiazepines and other anxiolytics, anti-depressants and beta-blocking agents
* Patients that are judged incapable of understanding the patient information or who are not capable of carrying through the investigation
* Cancer of any kind
18 Years
60 Years
ALL
No
Sponsors
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UNEEG Medical A/S
INDUSTRY
Responsible Party
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HypoSafe A/S
Principal Investigators
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Claus B Juhl, Phd
Role: PRINCIPAL_INVESTIGATOR
HypoSafe A/S
Locations
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Odense University Hospital
Odense, , Denmark
Countries
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References
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Juhl CB, Hojlund K, Elsborg R, Poulsen MK, Selmar PE, Holst JJ, Christiansen C, Beck-Nielsen H. Automated detection of hypoglycemia-induced EEG changes recorded by subcutaneous electrodes in subjects with type 1 diabetes--the brain as a biosensor. Diabetes Res Clin Pract. 2010 Apr;88(1):22-8. doi: 10.1016/j.diabres.2010.01.007. Epub 2010 Jan 15.
Other Identifiers
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Hyposafe-hypo-01
Identifier Type: -
Identifier Source: org_study_id