Predicting Hypoglycaemia and Arrhythmias in the Vulnerable Patient With Diabetes and Chronic Kidney Disease
NCT ID: NCT02315300
Last Updated: 2016-06-15
Study Results
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Basic Information
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COMPLETED
NA
62 participants
INTERVENTIONAL
2014-11-30
2016-05-31
Brief Summary
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Detailed Description
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Various pathophysiological mechanisms may contribute to the increased cardiovascular mortality after hypoglycemia including hypoglycemia-induced release of catecholamines, pro-arrhythmogenic ECG alterations, inflammatory changes, direct effects in the vascular wall such as impaired endothelial function as well as abnormalities in coagulation and platelet function \[7, 8\].
Morphological and functional alterations of the heart occurring in CKD further contribute to these mechanisms. Several small studies performing simultaneous glucose monitoring and ECG recordings addressed the question whether spontaneous hypoglycemic events in patients with diabetes directly lead to cardiac arrhythmias \[9-11\], but hitherto no clear association has been found. These studies were limited by a short duration of glucose and ECG monitoring and by the fact that only 3 lead Holter-ECGs were used, thus not allowing the assessment of more sophisticated ECG abnormalities such as QT dispersion, T-wave alternans, or late potentials. Therefore no clear data exist to predict arrhythmias and SCD and its relation to hypoglycemia in patients with diabetes. Ideally, a SCD risk score could identify and characterize high-risk patients but to date little is known about hypoglycemia-associated ECG markers for the identification of patients at risk for arrhythmias and SCD.
In the general population, various ECG risk markers for SCD have been identified such as heart rate, cardiac rhythm abnormalities, AV block, QT length, QT dispersion, heart-rate variability (HRV), T-wave alternans, late potentials, as well as left- (LBBB) or right-bundle branch block (RBBB) (reviewed in \[12\]). In patients with diabetes hypoglycemia, diabetic cardiomyopathy, as well as the presence of autonomic neuropathy may lead to such ECG abnormalities. Under experimental conditions some of these ECG surrogate parameters have been studied in patients with diabetes in association with hypoglycemia. As such, clamp studies revealed that hypoglycemia prolongs the QT interval and increases QT dispersion (difference between the longest and shortest QT interval in a 12-lead Holter ECG) \[10, 13\], which in conjunction with an increased release of catecholamines during hypoglycemia may promote ventricular arrhythmias. In addition, controlled hypoglycemia in patients with type 1 diabetes alters cardiac repolarization by changing the T-wave amplitude \[11\]. Sparse data exist on the effect of spontaneous hypoglycemic episodes and changes in ECG parameters with only a small study in patients with type 1 diabetes demonstrating that nocturnal hypoglycemia is associated with a decrease in the low-frequency component of heart rate variability \[14\]. To date, more sophisticated markers such as QT dispersion (difference between the longest and shortest QT interval in a 12-lead Holter ECG), late potentials, or T-wave alternans (periodic beat-to-beat variation in the morphology, amplitude or timing of the T waves in ECGs) were not examined in a "real-life setting", most likely because these markers require a 12 lead ECG registration of longer duration.
However, for the establishment of a risk algorithm for the prediction of hypoglycemia-associated arrhythmias it is mandatory to perform long duration simultaneous glucose monitoring and 12 lead ECG registration to capture these ECG risk markers for SCD.
Conditions
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Study Design
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NA
SINGLE_GROUP
PREVENTION
NONE
Study Groups
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Study Tretament
Long term ECG measurement is performed with the 12-lead ECG system medilogĀ® DARWIN FD12 from Schillermed to detect different ECG parameter. The continuous glucose monitoring (CGM) system G4 from Dexcom use a tiny sensor inserted under the skin to check glucose levels in tissue fluid. The sensor stays in place for 7 days in parallel to the ECG measurement. A transmitter sends information about glucose levels via radio waves from the sensor to a pagerlike wireless monitor.
medilogĀ® DARWIN FD12
Continuous Glucose Monitoring
Interventions
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medilogĀ® DARWIN FD12
Continuous Glucose Monitoring
Other Intervention Names
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Eligibility Criteria
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Inclusion Criteria
2. CKD with eGFR \< 40 ml/min (determined using the MDRD formula)
3. Stable anti-diabetic and cardiac medication prior to inclusion
4. Male or female aged \> 18 years
5. Written informed consent prior to study participation
Exclusion Criteria
2. Life expectancy below 6 months
3. Participation in another clinical trial within the previous 2 months
4. History of any other illness, which, in the opinion of the investigator, might pose an unacceptable risk when administering study medication
5. Any current or past medical condition and/or required medication to treat a condition that could affect the evaluation of the study
6. Alcohol or drug abuse
7. Patient has been committed to an institution by legal or regulatory order
8. Expected non-compliance
9. Patients unwilling or unable to give informed consent, or with limited ability to comply with instructions for this study
10. Participation in a parallel interventional clinical trial
18 Years
ALL
No
Sponsors
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RWTH Aachen University
OTHER
Responsible Party
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Principal Investigators
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Nikolaus Marx, Prof.
Role: PRINCIPAL_INVESTIGATOR
Uniklinik RWTH Aachen
Locations
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Medizinische Klinik I
Aachen, North Rhine-Westphalia, Germany
Countries
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Other Identifiers
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14-030
Identifier Type: -
Identifier Source: org_study_id
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