Actively Recruiting
Utilising AI Analysis of Sounds To prEdict heaRt failurE decOmpensation
Led by Cambridge University Hospitals NHS Foundation Trust · Updated on 2026-05-12
250
Participants Needed
1
Research Sites
151 weeks
Total Duration
On this page
Sponsors
C
Cambridge University Hospitals NHS Foundation Trust
Lead Sponsor
U
University of Cambridge
Collaborating Sponsor
AI-Summary
What this Trial Is About
Heart failure impacts more than 2% of people in the UK (United Kingdom) and leads to about 5% of emergency hospital visits. Patients might have slowly worsening symptoms or suddenly face acute decompensated heart failure (ADHF), marked by intense difficulty in breathing due to fast-developing lung congestion. This is a serious emergency requiring in-hospital treatment and monitoring. Once stable, patients usually have a phase where symptoms remain constant. But as time goes on, those with heart failure often face more frequent and prolonged episodes of ADHF. Fluid build-up (pulmonary congestion) in the lungs is a key issue in heart failure, and catching it early helps avoid unexpected hospital stays. Spotting these early signs outside the hospital can be tough, as symptoms aren't always clear. Study investigators are working on a new, non-invasive way to identify these early signs using AI (artificial intelligence) to analyse subtle changes in a patient's voice, cough, and breathing sounds. This tool will act as an early warning for patients and their heart care teams, allowing quicker treatment. This could make heart failure episodes less severe and reduce the need for hospital visits. This research has two parts. First, a small pilot trial with up to 50 patients. The findings will guide and inform a larger study involving up to 200 patients. From this larger study, investigators will develop the final version of the AI algorithm. The results from the Part A and Part B of this research will guide the investigators in planning a future clinical trial. This trial will confirm if the AI algorithm can be effectively used as a medical tool for heart failure care within the NHS (National Health Service). Study investigators will seek the necessary ethical approval before starting this trial.
CONDITIONS
Official Title
Utilising AI Analysis of Sounds To prEdict heaRt failurE decOmpensation
Who Can Participate
Eligibility Criteria
You may qualify if you...
- Male or Female, aged 18 years or above
- Diagnosed with chronic stable heart failure NYHA Class 3 or 4
- Willing and able to give informed consent
- Has a smartphone or willing to use a loaned smartphone for sound recordings
You will not qualify if you...
- Unable to provide consent
- Requires continuous oxygen therapy at flow rates not deliverable by nasal cannula
- Has current pneumonia
- Has significant pulmonary disease including asthma, COPD, pulmonary fibrosis, interstitial lung disease, or pulmonary hemorrhage
- Has current pulmonary embolus
- Has other acute symptomatic illness at time of recording
- Has tracheostomy or surgical procedure affecting vocal cords
- Is aphasic
- Excluded at principal investigator's discretion
AI-Screening
AI-Powered Screening
Complete this quick 3-step screening to check your eligibility
Trial Site Locations
Total: 1 location
1
Cambridge University Hospitals NHS Foundation Trust
Cambridge, Cambridgeshire, United Kingdom, CB2 0QQ
Actively Recruiting
Research Team
E
Erdem Demir
CONTACT
H
Heike Templin
CONTACT
How is the study designed?
Study Type
OBSERVATIONAL
Masking
N/A
Allocation
N/A
Model
N/A
Primary Purpose
N/A
Number of Arms
1
Not the Right Trial for You?
Explore thousands of other clinical trials that might be a better match.
Sign up to get personalized trial recommendations delivered to your inbox.
Already have an account? Log in here