ECG Monitoring Clinical Trial
— OVERCOMEOfficial title:
Evaluation of the Effectiveness of CRT Therapy Based on the Record From an Implantable Device
NCT number | NCT04061434 |
Other study ID # | OVERCOME |
Secondary ID | |
Status | Completed |
Phase | |
First received | |
Last updated | |
Start date | March 1, 2019 |
Est. completion date | July 30, 2020 |
Verified date | October 2021 |
Source | Medical University of Warsaw |
Contact | n/a |
Is FDA regulated | No |
Health authority | |
Study type | Observational |
Cardiovascular diseases (CVD) are associated with high healthcare costs,as well as are a leading cause of mortality and hospitalizations. One of CVDs is a heart failure which may be associated with dyssynchrony of contraction of right and left ventricle. Chance for group of patients whose pharmacotherapy is not enough is cardiac resynchronisation therapy (CRT). Effectiveness of CRT has been proven in various multicenter clinical studies. The challenge limiting CRT usage is it relative low effectiveness - with significant group of patients that do not respond to this method of therapy. The device itself does not always show the true level of stimulation during interrogation; then invalid functioning is often not detected, which presents a real danger to patient's health and life. The main challenge for today's researchers is to develop new technologies, which may help to improve diagnosis of CVD, thereby reducing healthcare costs and quality of patients' lives. Smart computed systems of ECG analysis and interpretation offer new capabilities for the diagnosis and management of patients with CRT. Several reports with intelligent machine-based learning algorithms have been published, in which achieved very positive results in detecting various ECG abnormalities. Aim of our study is to show utility of ECG interpretation software in patients with CRT to assess the CRT response using Cardiomatics system.
Status | Completed |
Enrollment | 547 |
Est. completion date | July 30, 2020 |
Est. primary completion date | July 30, 2020 |
Accepts healthy volunteers | No |
Gender | All |
Age group | 18 Years to 100 Years |
Eligibility | Inclusion Criteria: - State after CRT implantation with cardiac defibrillation function (CRT-D) - State after CRT implantation with pacing function (CRT-P) - State after implantation of cardiac pacemaker - State after ICD implantation with indications for periodic heart stimulation - Signed written informed consent Exclusion Criteria: - Patient's lack of consent - Pacemaker dependency with patient's own rhythm insufficient for appropriate perfusion of central nervous system |
Country | Name | City | State |
---|---|---|---|
Poland | 1st Department of Cariology of Medcial University of Warsaw | Warsaw | Mazowieckie |
Lead Sponsor | Collaborator |
---|---|
Medical University of Warsaw | National Center for Research and Development, Poland |
Poland,
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | Number of correctly assessed ECG signals by the automatic recognition of resynchronization in CRT-mediated therapy. | Evaluating the effectiveness of CRT therapy based on the record from an implantable device Assessment of the rationale for the use of machine based learning algorithms in detecting ECG abnormalities to determine which clinical conditions have impact on long-term effectiveness of cardiac resynchronization therapy using both standard 12-lead ECG and 24-hour Holter monitoring . The study might identify which clinical parameters in patients with CRT indicate the most benefit and the least benefit from CRT.
It is planned to reach 99% sensitivity of automatized recognizing resynchronization in CRT-mediated therapy |
14 months | |
Primary | Correctly recognized ECG signals after adding each cycle of 20 new ECG recordings from patients with electrical heart function disturbances. | To achieve this goal we will collect representative base of ECG recordings containing both paced rhythm in subjects undergoing therapy and those in qualification process in order to use the software to predict CRT response. The final model assumes fully automatized diagnosis of CRT-therapy response based on machine learning. Using this feature in connection with new methods of digital signal processing will constantly increase system's efficacy measured by simultaneous achievement of high test specificity and sensitivity.
Increase by 1% of test sensitivity withholding high specificity after adding each cycle of 20 new ECG recordings from patients with electrical heart function disturbances is planned. |
7 months | |
Secondary | Number of registered ECG signals from patients holding a CIED. | Creation of an database of ECG and Holter monitoring acquired signal from patients with cardiac implantable electronic devices (CIED).
Reaching more than 258 ECG recordings in the database to qualify and discriminate signal patterns that can be qualified as certain arrhythmia. |
14 months |
Status | Clinical Trial | Phase | |
---|---|---|---|
Active, not recruiting |
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