Viewing Study NCT06511505



Ignite Creation Date: 2024-10-26 @ 3:35 PM
Last Modification Date: 2024-10-26 @ 3:35 PM
Study NCT ID: NCT06511505
Status: NOT_YET_RECRUITING
Last Update Posted: None
First Post: 2024-07-16

Brief Title: NOrthwestern Tempus AI-enaBLed Electrocardiography NOTABLE Trial
Sponsor: None
Organization: None

Study Overview

Official Title: NOrthwestern Tempus AI-enaBLed Electrocardiography NOTABLE Trial A Pragmatic Real-world Study of an Artificial-intelligence Enabled Electrocardiogram Algorithms to Improve the Diagnosis of Cardiovascular Disease
Status: NOT_YET_RECRUITING
Status Verified Date: 2024-07
Last Known Status: None
Delayed Posting: No
If Stopped, Why?: Not Stopped
Has Expanded Access: No
If Expanded Access, NCT#: N/A
Has Expanded Access, NCT# Status: N/A
Acronym: NOTABLE
Brief Summary: The goal of this clinical trial is to determine if a machine learningartificial intelligence AI-based electrocardiogram ECG algorithm Tempus Next software can identify undiagnosed cardiovascular disease in patients It will also examine the safety and effectiveness of using this AI-based tool in a clinical setting The main questions it aims to answer are

1 Can the AI-based ECG algorithm improve the detection of atrial fibrillation and structural heart disease
2 How does the use of this algorithm affect clinical decision-making and patient outcomes Researchers will compare the outcomes of healthcare providers who receive the AI-based ECG results to those who do not

Participants healthcare providers will

Be randomized into two groups one that receives AI-based ECG results and one that does not

In the intervention group receive an assessment of their patients risk of atrial fibrillation or structural heart disease with each ordered ECG

Decide whether to perform further clinical evaluation based on the AI-generated risk assessment as part of routine clinical care
Detailed Description: There is a large burden of undiagnosed treatable cardiovascular disease CVD encompassing various heart conditions such as arrhythmias eg atrial fibrillation and structural heart diseases eg valvular disease Early detection and accurate diagnosis can significantly improve patient outcomes by enabling timely guideline-based interventions or therapies

The goal of this study is to leverage machine learning approaches to enhance the detection and diagnosis of CVD By identifying patients at risk of undiagnosed CVD and referring them for further clinical evaluation we aim to improve health outcomes

Study Overview

The NOTABLE study will compare the rates of new disease diagnoses therapeutic interventions and cardiovascular outcomes between two groups of patients managed by clinicians at Northwestern Medicine

Patients whose clinicians use ECG predictive models Patients whose clinicians do not use ECG predictive models

Intervention Details

This study utilizes the Tempus Next software which includes AI algorithms for analyzing 12-lead ECGs Clinicians randomized to the intervention group will automatically receive an ECG with Risk-Based Assessment for Cardiac Dysfunction when ordering a 12-lead ECG within EPIC during the study period If a high-risk result is identified clinicians will receive an EHR inbox message recommending a follow-up diagnostic test such as echocardiography andor ambulatory ECG monitoring

Outcome Tracking

A monthly report will track and provide data on

The proportion of patients with a high-risk result The proportion of patients receiving the follow-up diagnostic test The proportion of patients receiving guideline-recommended therapies This report will be sent to the study participants and clinicians randomized to the intervention group Clinicians in the usual care group will not receive any communication from the study investigators

Study Oversight

Has Oversight DMC: None
Is a FDA Regulated Drug?: None
Is a FDA Regulated Device?: None
Is an Unapproved Device?: None
Is a PPSD?: None
Is a US Export?: None
Is an FDA AA801 Violation?: None