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Clinical Trial Details — Status: Recruiting

Administrative data

NCT number NCT05371405
Other study ID # 54679
Secondary ID
Status Recruiting
Phase
First received
Last updated
Start date February 12, 2020
Est. completion date December 2026

Study information

Verified date November 2023
Source Stanford University
Contact Sanjiv Narayan, MD
Phone 650-724-1850
Email sanjiv1@stanford.edu
Is FDA regulated No
Health authority
Study type Observational

Clinical Trial Summary

Atrial fibrillation is a serious public health issue that affects over 5 million Americans (Miyazaka, Circulation 2006) in whom it may cause skipped beats, dizziness, stroke and even death. Therapy for AF is currently suboptimal, in part because AF represents several disease states of which few have been delineated or used to successfully guide management. This study seeks to clarify this delineation of AF types using machine learning (ML).


Description:

This project tests the novel hypothesis that "Machine learning (ML) in AF patients can integrate physiological data across biological scales stratified by labeled outcomes, and use explainability analyses to identify electrical, structural and clinical determinants of ablation outcome in individual patients to guide personalized therapy". We address this hypothesis using a combined computational/clinical approach. The project will recruit 120 patients to address 3 Specific Aims. Aim 1. To identify components of AF electrograms that indicate depolarization, repolarization or other mechanisms at the tissue level, using ML trained to monophasic action potentials (MAP). For this prospective protocol, we will collect electrograms using a MAP catheter at multiple atrial sites in patients undergoing AF ablation. We will then test if our algorithms developed previously from our registry, can predict MAP timings from AF electrograms. Aim 2. To identify electrical and structural features of the acute response of AF to ablation near and remote from PVs at the individual heart level using machine learning and biostatistical approaches. For this prospective protocol, we will recruit patients undergoing their standard-of-care ablation and test if an ML classifier developed previously in a registry dataset prospectively predicts acute response to specific ablation strategies. Aim 3. To identify patients in whom ablation is unsuccessful or successful long-term using ML and biostatistics. For this prospective protocol, we will recruit patients undergoing their standard-of-care ablation and test if an ML classifier developed previously in a registry dataset prospectively predicts 1 year freedom from atrial arrhythmias. This project is significant because it will establish a deeper understanding of AF and might reveal novel mechanisms of AF maintenance. Our results can be translated directly to practice and may enable the development of better treatment options.


Recruitment information / eligibility

Status Recruiting
Enrollment 120
Est. completion date December 2026
Est. primary completion date December 2025
Accepts healthy volunteers No
Gender All
Age group 22 Years to 80 Years
Eligibility Inclusion Criteria: - undergoing ablation at Stanford of (a) paroxysmal AF (self-terminates < 7 days), or (b) persistent AF (requires cardioversion to terminate). - Per our clinical practice and guidelines (Calkins et al, Heart Rhythm 2012), patients will have failed or be intolerant of = 1 anti-arrhythmic drug. Exclusion Criteria: - active coronary ischemia or decompensated heart failure - atrial or ventricular clot on trans-esophageal echocardiography - pregnancy (to minimize fluoroscopic exposure) - inability or unwillingness to provide informed consent - rheumatic valve disease (results in a unique AF phenotype) - thrombotic disease or venous filters

Study Design


Related Conditions & MeSH terms


Locations

Country Name City State
United States Stanford University Stanford California

Sponsors (1)

Lead Sponsor Collaborator
Stanford University

Country where clinical trial is conducted

United States, 

Outcome

Type Measure Description Time frame Safety issue
Primary Machine Learning Prediction of Ablation Outcome To compare success of AF ablation in each patient at 1 year (defined as absence of AF or atrial tachycardia on outpatient monitoring) to predicted success by the machine learning algorithm developed in this project. The outcome compares observed success at 1 year (Yes, No) to (a) a binary predictor and (b) a continuous variable of success from the algorithm. The machine learning algorithm is trained on clinical and electrophysiological data to predict if certain lesion sets will or will not be successful. 1 year.
Secondary Machine Learning to Identify Ablation targets To determine if AF ablation success at 1 year (defined as absence of AF or atrial tachycardia on outpatient monitoring) correlates with the ablation of regions predicted by the machine learning algorithm in this project to be successful ablation targets. 1 year
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