Calibration of AlgoRithm for Detection of Cardiac Decompensation Via Parametric Objects (CARDCOP)
NCT ID: NCT06661161
Last Updated: 2024-10-28
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
Get a concise snapshot of the trial, including recruitment status, study phase, enrollment targets, and key timeline milestones.
NOT_YET_RECRUITING
640 participants
OBSERVATIONAL
2024-11-30
2026-05-31
Brief Summary
Review the sponsor-provided synopsis that highlights what the study is about and why it is being conducted.
Related Clinical Trials
Explore similar clinical trials based on study characteristics and research focus.
Precision of AI-Based Cardiac Ultrasound for LVEF in the Elderly
NCT06478901
Feasibility of AI-based Heart Function Prediction Model Using CXR
NCT04996381
Prospective Evaluation of AI-ECG for SHD Detection
NCT07057466
Implementation for Heart Failure Therapies Post-discharge Followed by CardiOSIgnal at HOME
NCT06944405
Automated Phonocardiography Analysis in Adults
NCT03600051
Detailed Description
Dive into the extended narrative that explains the scientific background, objectives, and procedures in greater depth.
After the age of 80, approximately 25% of heart failure patients die within three months of a decompensation episode, and nearly 40% within a year. Despite significant progress, the therapeutic management of patients remains complex, and hospitalizations are difficult to anticipate. It is even estimated that nearly 400,000 to 700,000 people with HF remain undiagnosed in France. Avoidable hospitalizations contribute to a deterioration in the quality of life for these patients and sometimes result in death.
Heart failure is a condition characterized by gradual worsening. Initially, the patient may be asymptomatic but progressively start to experience several, if not all, of the following symptoms: marked shortness of breath (dyspnea), edema, difficulty breathing when lying down (orthopnea), rapid weight gain, chronic fatigue, heart palpitations, and a drop in blood pressure upon standing. Monitoring the evolution of these symptoms is crucial to identifying the risk of heart failure decompensation and allowing for early and appropriate intervention to avoid hospitalization.
The progression of these symptoms can be tracked through the monitoring of physiological (clinical) variables such as weight, blood pressure, heart rate, and oxygen saturation. These are widely recognized parameters as indicators of health status and are frequently used in heart failure patient monitoring algorithms, as shown by systematic reviews.
Weight is one of the mandatory parameters to be collected according to HAS recommendations. The American Heart Failure Association (HFSA) and the guidelines of the European Society of Cardiology (ESC) also recommend daily weight monitoring. Blood pressure is also among the recommended clinical symptoms to monitor, as it is a precursor sign of heart failure decompensation.
The four warning signals-shortness of breath, rapid weight gain, lower limb edema, and fatigue (EPOF)-must be monitored, especially after the age of 60, to promote early diagnosis and prevent hospitalizations.
Resting and exercise heart rates can predict the risk of cardiovascular disease. A high resting heart rate is associated with an increased risk of coronary heart disease and all-cause mortality and is also considered a predictive factor for decompensation in HF patients. Respiratory rate has been found to be significantly lower in patients with heart failure decompensation. However, physical activity is linked to better cardiovascular health and reduced mortality . Recommended by the American Heart Association (AHA) as one of the "8 Simple Measures for a Healthy Life", physical activity helps promote heart health.
Continuous and real-time collection of all these physiological (clinical) parameters in heart failure patients at risk of decompensation could improve patient follow-up and help predict the risk of acute heart failure decompensation. Indeed, a better understanding of these parameters, their variations, and their correlations would allow for better characterization of heart failure patients and early identification of decompensation.
This study aims to identify predictive factors of heart failure decompensation to develop and train an early detection algorithm that will be used in telemonitoring after the algorithm's calibration. To collect this data stream, heart failure patients will be equipped with three connected devices (watch, scale, blood pressure monitor) linked to the TakeCoeur AI device. The early detection algorithm for heart failure decompensation will be built based on variations in the physiological parameters collected and the occurrence of heart failure decompensation during the study period.
The patient's clinical data will be collected by the cardiologist at inclusion, and the physiological parameters will be passively and actively collected through connected devices. A baseline for each patient will be established at inclusion, reflecting their initial status. Throughout the study, any deviation or variation from this baseline will be detected. In case of a heart failure decompensation, a link between this decompensation and the variations in digitally collected parameters will be established.
The investigators hypothesize that the early detection of heart failure decompensation by the TakeCoeur AI device will align with the actual occurrence of heart failure decompensation, as recorded through healthcare utilization during this study, with good sensitivity and a low rate of false negatives.
Conditions
See the medical conditions and disease areas that this research is targeting or investigating.
Study Design
Understand how the trial is structured, including allocation methods, masking strategies, primary purpose, and other design elements.
COHORT
PROSPECTIVE
Eligibility Criteria
Check the participation requirements, including inclusion and exclusion rules, age limits, and whether healthy volunteers are accepted.
Inclusion Criteria
* Patient diagnosed with chronic heart failure, confirmed by a cardiologist/cardio-geriatrician (regardless of the type and etiology of the disease), meeting at least one of the following two conditions:
* Hospitalization in the past 12 months for a heart failure exacerbation.
* NYHA class II to IV (New York Heart Association) at the time of inclusion, with elevated natriuretic peptide levels (BNP \> 100 pg/mL or NT-proBNP \> 1000 pg/mL).
* French speaking patient
* Patient equipped with a smartphone, computer, or tablet with internet/cellular access (of with the help of a caregiver)
* Patient affiliated with a social security scheme
Exclusion Criteria
* Patient who has received or is scheduled to receive a heart transplant or circulatory assistance within the next 12 months
* Patient with a left ventricular ejection fraction ≥ 50% (for non-diastolic heart failure)
* Obese patient with a body mass index ≥ 40 kg/m²
* Patient with severe aortic stenosis who is contraindicated for surgery or TAVI
* Patient with a life expectancy of \< 1 year due to a condition other than heart failure (cancer, cirrhosis, respiratory failure, etc.)
* Patient already benefiting from a telemonitoring device
* Physical or psychological inability (dementia, schizophrenia, substance-related disorder) of the patient or caregiver to use the digital data collection device, as judged by the physician
* Patient refusal to allow the transmission of the data necessary for monitoring the effective use of the device and obtaining individualized or national real-world usage results
* Patient under guardianship, curatorship, or any other administrative or judicial measure restricting rights and freedoms
* Patient unable to wear the watch for the duration of the study due to skin conditions
18 Years
ALL
No
Sponsors
Meet the organizations funding or collaborating on the study and learn about their roles.
University Hospital, Brest
OTHER
Responsible Party
Identify the individual or organization who holds primary responsibility for the study information submitted to regulators.
Locations
Explore where the study is taking place and check the recruitment status at each participating site.
Chu Brest
Brest, , France
CH Morlaix
Morlaix, , France
CH Vannes
Vannes, , France
Countries
Review the countries where the study has at least one active or historical site.
Central Contacts
Reach out to these primary contacts for questions about participation or study logistics.
Facility Contacts
Find local site contact details for specific facilities participating in the trial.
Other Identifiers
Review additional registry numbers or institutional identifiers associated with this trial.
29BRC24.0222 - CARDCOP
Identifier Type: -
Identifier Source: org_study_id
More Related Trials
Additional clinical trials that may be relevant based on similarity analysis.