This study is a single-group feasibility study evaluating decision aid visualizations which display common post-ablation symptom patterns as a tool for shared decision-making. The specific aim of the clinical trial is to evaluate the feasibility of putting the visualizations into clinical practice (n=75). The hypothesis is that patients will report low decisional conflict and decision regret and high satisfaction with their decision about whether to undergo an ablation or not.
Atrial fibrillation (AF) is the most common heart rhythm disorder, and nearly 90% of patients experience symptoms such as shortness of breath that directly impair their health-related quality of life (HRQoL). Catheter ablation is a minimally invasive, surgical procedure that is routinely performed to treat AF and associated symptoms with the goal of improving HRQOL, but also carries potentially serious risks. Shared decision-making (SDM), in which treatment decisions are aligned based on high quality evidence and patient values and goals of care, is a widely encouraged practice for navigating complex healthcare decisions such as these. However, SDM around rhythm and symptom management does not routinely occur due to a lack of detailed evidence about symptom improvement post-ablation, and a lack of decision aids to communicate evidence to patients. The overarching goal of this award is to create an interactive patient decision aid composed of established evidence from clinical trials together with novel "real world" evidence about symptom improvement post ablation mined from electronic health records (EHRs). The investigators propose to use "real-world evidence" drawn from electronic health records (EHRs) to characterize post-ablation symptom patterns, and display them in decision-aid visualizations to support shared decision-making (SDM). In this project, the investigators will first use natural language processing (NLP) and machine learning (ML) to extract and analyze symptom data from narrative notes in EHRs. The investigators will also employ a rigorous, user-centered design protocol created during the Principal Investigator's post-doctoral work to develop decision-aid visualizations. In the clinical trial, the investigators will evaluate the feasibility of implementing these interactive decision-aid visualizations in clinical practice.
Study Type
INTERVENTIONAL
Allocation
NA
Purpose
OTHER
Masking
NONE
Enrollment
75
Participants will use an interactive web page intended to aid patient decision-making (i.e., a decision aid) while undergoing consultation for atrial fibrillation ablation.
Weill Cornell Medicine
New York, New York, United States
Columbia University Irving Medical Center
New York, New York, United States
Decisional conflict assessed using the Decisional Conflict Scale
Conflict about the decision to undergo atrial fibrillation will be assessed using the Decisional Conflict Scale on a scale of 0 (no decisional conflict) to 100 (extremely high decisional conflict).
Time frame: Baseline
Decision regret assessed using the Decisional Regret Scale
Regret about the decision to undergo atrial fibrillation will be assessed using the Decision Regret Scale on a scale of 0 (no decision regret) to 100 (extremely high decision regret).
Time frame: 12 weeks
Decision satisfaction assessed using the Satisfaction with Decision Scale
Satisfaction about the decision to undergo atrial fibrillation will be assessed using the Satisfaction with Decision Scale on a scale of 1 (low satisfaction) to 5 (high satisfaction).
Time frame: 12 weeks
Post-ablation symptom burden assessed using the Atrial Fibrillation severity Scale (AFSS)
The severity of atrial fibrillation symptoms after an ablation will be assessed using the AFSS on a scale of 0 (no symptom burden) to 35 (extremely high symptom burden).
Time frame: 12 weeks
Post-ablation health-related quality of life assessed using the Atrial Fibrillation Effect on QualiTy-of-Life (AFEQT) questionnaire
Health-related quality of life after an ablation will be assessed using the AFEQT on a scale of 0 (complete disability) to 100 (high quality of life).
Time frame: 12 weeks
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