Applying Artificial Intelligence to the 12 Lead ECG for the Diagnosis of Pulmonary Hypertension: an Observational Study

NCT ID: NCT05942859

Last Updated: 2023-10-05

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

ENROLLING_BY_INVITATION

Total Enrollment

600 participants

Study Classification

OBSERVATIONAL

Study Start Date

2023-10-31

Study Completion Date

2027-08-31

Brief Summary

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The goal of this observational study is to apply Artificial Intelligence (AI) and machine learning technology to the resting 12-lead electrocardiogram (ECG) and assess whether it can assist doctors in the early diagnosis of Pulmonary Hypertension (PH). Early and accurate diagnosis is an important step for patients with PH. It helps provide effective treatments early which improve prognosis and quality of life. The main questions our study aims to answer are:

1. Can AI technology in the 12-lead ECG accurately predict the presence of PH?
2. Can AI technology in the 12-lead ECG identify specific sub-types of PH?
3. Can AI technology in the 12-lead ECG predict mortality in patients with PH?

In this study, the investigators will recruit 12-lead ECGs from consenting participants who have undergone Right heart Catheterisation (RHC) as part of their routine clinical care. AI technology will be applied to these ECGs to assess whether automated technology can predict the presence of PH and it's associated sub-types.

Detailed Description

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This study will be led by Royal United Hospital Bath NHS Trust and Liverpool John Moore's University. The aim of this study is to utilise Artificial Intelligence (AI) and machine learning technology to assist clinicians in the early diagnosis of Pulmonary Hypertension (PH). We hypothesise that the AI technologies can improve the quantification and interpretation of the parameters involved in detecting PH. This is either through highlighting significant abnormalities in the 12-lead ECG, or by rapidly providing fully automated measures of the features on the 12-lead ECG which indicate PH. The combination of these electrocardiographic features with clinical data may provide highly accurate predictive tools.

This observational study will have a retrospective and prospective arm with a 3 year follow-up period. Participants will not require any additional tests or procedures at any point during the study. Any ECGs performed within the 12 months prior to a participant's right heart catheterisation (RHC) will undergo Artificial Intelligence analysis to establish if early indicators of PH are identifiable.

For all recruited participants, an anonymised clinician case report form will be used to capture details relating to their demographics and routine clinical care. Follow-up times and outcomes including mortality and morbidity will also be recorded.

Conditions

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Pulmonary Hypertension (Diagnosis)

Study Design

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Observational Model Type

COHORT

Study Time Perspective

OTHER

Study Groups

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Retrospective Cohort

Patients who have previously been seen by the local Pulmonary Hypertension service, between 2007 and June 2023, for a suspected diagnosis of pulmonary hypertension, and undergone Right Heart Catheterisation (RHC) will be invited to participate in the study by a member of the direct clinical care team. Their ECG will be analysed using AI technology to develop an algorithm to aid the diagnosis of PH.

Artificial Intelligence and Machine Learning technology

Intervention Type DIAGNOSTIC_TEST

Artificial Intelligence describes computer software designed to mimic human cognitive function. Machine learning is a type of artificial intelligence in which the model created is exposed to data, identifies patterns, and recognises relationships between features seen in the data and the 'ground truth'. This technology will be applied to participants ECGs.

Prospective Cohort

Patients who are referred to the local PH service, from July 2023, with a suspected diagnosis of pulmonary hypertension, and undergo Right Heart Catheterisation will be invited to participate in the study by a member of the direct clinical care team. Their ECG will be analysed using AI technology to develop an algorithm to aid the diagnosis of PH.

Artificial Intelligence and Machine Learning technology

Intervention Type DIAGNOSTIC_TEST

Artificial Intelligence describes computer software designed to mimic human cognitive function. Machine learning is a type of artificial intelligence in which the model created is exposed to data, identifies patterns, and recognises relationships between features seen in the data and the 'ground truth'. This technology will be applied to participants ECGs.

Interventions

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Artificial Intelligence and Machine Learning technology

Artificial Intelligence describes computer software designed to mimic human cognitive function. Machine learning is a type of artificial intelligence in which the model created is exposed to data, identifies patterns, and recognises relationships between features seen in the data and the 'ground truth'. This technology will be applied to participants ECGs.

Intervention Type DIAGNOSTIC_TEST

Eligibility Criteria

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Inclusion Criteria

1. prospective cohort: From July 2023, all patients aged 18 or over who are referred to the Bath Pulmonary Hypertension shared care service with clinical suspicion of PH and, who through their routine clinical care, undergo a RHC and 12-lead ECG.
2. Retrospective cohort: All patients aged 18 or over who were referred to the local Pulmonary Hypertension shared care service between 2007 and June 2023, and through their routine clinical care, have undergone RHC within a year of a 12-lead ECG. This cohort will also include patients who are deceased.

Exclusion Criteria

* Patient's less than 18 years-old
* Patients who do not give valid consent (except deceased patients; REC approved)
* Patients who have not undergone RHC to assess for PH
* Patients who have not had an ECG within 12 months of their RHC
Minimum Eligible Age

18 Years

Eligible Sex

ALL

Accepts Healthy Volunteers

Yes

Sponsors

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Liverpool John Moores University

OTHER

Sponsor Role collaborator

Royal United Hospitals Bath NHS Foundation Trust

OTHER

Sponsor Role lead

Responsible Party

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Responsibility Role SPONSOR

Principal Investigators

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Dan Augustine, BSc, MBBS, MRCP

Role: PRINCIPAL_INVESTIGATOR

Royal United Bath NHS Foundation Trust

Locations

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Royal United Hospital Bath NHS Trust

Bath, , United Kingdom

Site Status

Countries

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United Kingdom

Other Identifiers

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RD2651

Identifier Type: -

Identifier Source: org_study_id

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