Utilising AI Analysis of Sounds To prEdict heaRt failurE decOmpensation

NCT ID: NCT06555757

Last Updated: 2024-08-15

Study Results

Results pending

The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.

Basic Information

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Recruitment Status

NOT_YET_RECRUITING

Total Enrollment

250 participants

Study Classification

OBSERVATIONAL

Study Start Date

2024-08-15

Study Completion Date

2027-08-15

Brief Summary

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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.

Detailed Description

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Heart failure is a common condition in which the heart is unable to deliver the desired cardiac output either due to a weakened or stiff heart muscle. It affects more than 2% of the UK population (the incidence is around 200,000 cases per annum) resulting in 5% of all the emergency hospital admissions and it consumes approximately 2% of the annual NHS budget (approximately £2 billion per annum). Therefore, heart failure is not only a major driver for hospitalisation but provides the leading opportunity to reduce preventable admissions.

Acute decompensated heart failure (ADHF) is a medical emergency requiring urgent attention. It usually results in inpatient hospitalisation and is a major driver for associated healthcare costs. ADHF is usually characterised by rapid deterioration of breathlessness at rest or exertion because of pulmonary oedema (pulmonary venous congestion), and fluid retention resulting in swollen legs as well as a myriad of other symptoms including fatigue, lack of appetite, and so on.

The patient normally presents with gradual or sudden onset of typical symptoms (breathlessness, fatigue, and fluid accumulation in the legs). After stabilisation and the initial treatment of ADHF, patients enter a plateau phase where the heart remains stable. However, over time, most patients experience multiple episodes of ADHF which typically become longer and separated by shorter intervals. The congestion is related to underlying increased cardiac pressure usually secondary to volume overload which plays a central role in the pathophysiology, presentation, and prognosis of heart failure. Pulmonary congestion is one of the most important diagnostic and therapeutic targets in heart failure. Detecting pulmonary congestion earlier on due to volume overload is key to preventing impending rehospitalisation and presents an ideal opportunity to optimise heart failure treatment in the community.

Early community detection of ADHF is ultimately the first step in providing effective patient care. Poor recognition of HF due to its multitude of vague/non-specific symptomatology of presentations often leads to delays in diagnosis and treatment. The delay between a patient developing symptoms of HF decompensation and seeking medical attention is often considerable and is influenced by the speed of onset and severity of the symptoms. Therefore, a reliable and easily accessible means of assessing chronic fluid status in ambulatory outpatients is needed to detect early decompensation when appropriate intervention is possible. The sudden development of breathlessness (dyspnoea) from the accumulation of fluid in the lungs (acute pulmonary oedema) usually prompts rapid contact with medical services, whereas the gradual appearance of swollen legs and ankles (peripheral oedema) is more likely to be associated with delays in seeking care. The average delay between symptom onset and hospital admission ranged from 2 hours to 7 days. The symptoms of heart failure often develop gradually and appear non-threatening, potentially explaining some of the observed delays in seeking care.

In recent years, several pilot studies demonstrated a relationship between speech biomarkers and the extent of systemic and/or pulmonary congestion in heart failure patients. For example, in 2017, a study of 10 (8 M, 2F) patients with acute decompensated heart failure undergoing inpatient treatment with intravenous diuretic therapy showed that after treatment, patients displayed a higher proportion of automatically identified creaky voice, increased fundamental frequency, and decreased cepstral peak prominence variation, suggesting that speech biomarkers can be early indicators of HF. The study also showed that the severity of HF-related oedema required to measurably change the voice is small compared to the severity needed to increase body weight, suggesting that speech biomarkers could become a more effective non-invasive tool to monitor HF patients than daily weights. In 2021, another study evaluated the feasibility of remote speech analysis in the evaluation of dynamic fluid overload in heart failure patients undergoing hemodynamic treatment. They performed serial speech/voice measurements in 5 patients undergoing haemodialysis. The analysis was done with an app that does not share its AI algorithm. They demonstrated statistically significant differences in select speech biomarkers at different fluid status levels as the patients progressed through the treatment. Subsequently, in 2022, a comparison of sound recordings for patients admitted with ADHF on the day of admission and the day of discharge with a sample of 40 patients who were admitted with acute decompensated heart failure identified significant differences in all 5 tested speech measures of wet (admission) vs dry (discharge) recordings.

Separately, in 2022, a study evaluated speech and pause alterations in voice recordings of acute (N=68) and stable (N=36) patients and found that the pause ratio was a 14.9% increase in patients of acute HF. They also found a positive correlation with NT-Pro-BNP level. Another study in 2022 examined both Mel-Frequency cepstral coefficient (MFCC) features and glottal speech features, comparing a sample of 25 healthy speakers (7F, 18M) and 20 patients with HF of any aetiology (regardless of LVEF). Following feature selection, they developed predictive models using four different classification methods (SVM, ET, Adaboost, and FFNN). Based on a combination of MFCC and Glottal speech features, they were able to predict ADHF with accuracies ranging from 88-94%, with a true positive rate of 79.47% and true negative rate 82.69%.

By performing an extensive panel of clinical assessments, investigations as well as symptom-based questionnaires in a study involving up to 250 heart failure patients, the investigators aim to build upon recent work and develop a novel AI-based application deployed on a smart device, which can detect an increase in pulmonary congestion from subtle changes in a patient's cough, voice, breathing, and chest sounds. This will provide key information for patients with heart failure and their clinical teams, by correctly detecting progressive fluid accumulation in a patient's lungs prior to the patient developing significant symptoms. Detecting early-phase pulmonary congestion will enable clinicians to target therapy more effectively. It is hoped that this will help minimise and ultimately prevent the need for recurrent emergency hospital admission by alerting the patient to contact their (community) heart failure team and enable earlier outpatient treatment prior to the need to be re-hospitalised entering the acute phase.

Subject to the successful outcome of this research, a prospective interventional clinical trial will then be undertaken, to test the clinical and operational benefits of the AI tool derived from this research on NHS heart failure care, paving the way for the eventual adoption of such solutions in routine clinical practice.

Conditions

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Heart Failure

Study Design

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Observational Model Type

COHORT

Study Time Perspective

PROSPECTIVE

Study Groups

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Patients with heart failure

Diagnosed with chronic stable heart failure NYHA Class 3 or 4 (either during most recent cardiology/heart failure clinic visit, or ADHF during recent/current hospitalization).

Height, weight, and BMI

Intervention Type OTHER

Height, weight measurement and BMI calculation

Medical history

Intervention Type OTHER

Brief medical history including medications/allergies and heart failure related healthcare utilisation over previous 12 months

Physical examination

Intervention Type OTHER

Brief physical examination

Venous blood samples

Intervention Type DIAGNOSTIC_TEST

Venous blood samples, to include WCC, HB, CRP and NTproBNP

Resting vital signs

Intervention Type OTHER

HR, BP, RR, oxygen saturations on air)

Transthoracic echocardiogram

Intervention Type DIAGNOSTIC_TEST

LVEF, IVC collapsibility, LV filling pressure, PA pressure

Sound recordings

Intervention Type OTHER

Sound recordings (voice/cough/chest) recorded with the in-built microphone in a smartphone

Lung ultrasound

Intervention Type DIAGNOSTIC_TEST

Lung ultrasound

KCCQ questionnaire

Intervention Type OTHER

Kansas City Cardiomyopathy Questionnaire

ASCEND-HF score

Intervention Type OTHER

An in-hospital congestion score which risk stratifies patients admitted with worsening heart failure, developed for the Acute study of clinical effectiveness of Nesiritide in decompensated heart failure trial

Composite Everest congestion score

Intervention Type OTHER

A shortened version of the original 18-point score from the EVEREST trial

Bio impedance and total body water measurement

Intervention Type DIAGNOSTIC_TEST

Bio impedance and total body water measurement using TANITA device

Interventions

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Height, weight, and BMI

Height, weight measurement and BMI calculation

Intervention Type OTHER

Medical history

Brief medical history including medications/allergies and heart failure related healthcare utilisation over previous 12 months

Intervention Type OTHER

Physical examination

Brief physical examination

Intervention Type OTHER

Venous blood samples

Venous blood samples, to include WCC, HB, CRP and NTproBNP

Intervention Type DIAGNOSTIC_TEST

Resting vital signs

HR, BP, RR, oxygen saturations on air)

Intervention Type OTHER

Transthoracic echocardiogram

LVEF, IVC collapsibility, LV filling pressure, PA pressure

Intervention Type DIAGNOSTIC_TEST

Sound recordings

Sound recordings (voice/cough/chest) recorded with the in-built microphone in a smartphone

Intervention Type OTHER

Lung ultrasound

Lung ultrasound

Intervention Type DIAGNOSTIC_TEST

KCCQ questionnaire

Kansas City Cardiomyopathy Questionnaire

Intervention Type OTHER

ASCEND-HF score

An in-hospital congestion score which risk stratifies patients admitted with worsening heart failure, developed for the Acute study of clinical effectiveness of Nesiritide in decompensated heart failure trial

Intervention Type OTHER

Composite Everest congestion score

A shortened version of the original 18-point score from the EVEREST trial

Intervention Type OTHER

Bio impedance and total body water measurement

Bio impedance and total body water measurement using TANITA device

Intervention Type DIAGNOSTIC_TEST

Eligibility Criteria

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Inclusion Criteria

* Male or Female, aged 18 years or above.
* Diagnosed with chronic stable heart failure NYHA Class 3 or 4 (either during most recent cardiology/heart failure clinic visit, or ADHF during recent/current hospitalization).
* Participant is willing and able to give informed consent for participation in the study.
* Participant has a smartphone device and can download a purposely designed mobile application on their phone (with guidance from the study investigators) or is willing to have sound recordings via a smartphone device loaned for the purpose of the study.

Exclusion Criteria

* Unable to provide consent
* Patients requiring continuous oxygen therapy at flow rates that cannot be provided through nasal cannula
* Patients with currently known pneumonia
* Patients with known significant pulmonary disease including asthma, COPD, pulmonary fibrosis/interstitial lung disease, pulmonary hemorrhage.
* Patients with current Pulmonary embolus
* Patients with other intercurrent acute symptomatic illness (e.g., viral/bacterial infection) at time of recording
* Patients requiring continuous oxygen therapy at flow rates that cannot be provided through nasal cannula
* Patients with tracheostomy or who have undergone a surgical procedure to the head/neck/larynx which would affect the normal functioning of the vocal cords.
* Aphasic
* Patients excluded at PI discretion
Minimum Eligible Age

18 Years

Eligible Sex

ALL

Accepts Healthy Volunteers

No

Sponsors

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University of Cambridge

OTHER

Sponsor Role collaborator

Cambridge University Hospitals NHS Foundation Trust

OTHER

Sponsor Role lead

Responsible Party

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Joseph Cheriyan, MBChB, MA, FRCP, FESC, FACC

Consultant Clinical Pharmacologist/Affiliated Associate Professor

Responsibility Role PRINCIPAL_INVESTIGATOR

Principal Investigators

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Joseph Cheriyan

Role: PRINCIPAL_INVESTIGATOR

Cambridge University Hospitals NHS Foundation Trust

Central Contacts

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Erdem Demir

Role: CONTACT

01223 256621

Heike Templin

Role: CONTACT

01223 250874

Other Identifiers

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STEREO (A096862)

Identifier Type: -

Identifier Source: org_study_id

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