Detection of Atrial Fibrillation in a Large Population Using Wearable Devices: The Fitbit Heart Study
Harvard University · Massachusetts General Hospital · +5 more institutions
Abstract
Morbidity from undiagnosed atrial fibrillation (AF) may be preventable with early detection. Many consumer wearables contain optical photoplethysmography (PPG) sensors to measure pulse rate. PPG-based software algorithms that detect irregular heart rhythms may identify undiagnosed AF in large populations using wearables, but minimizing false-positive detections is essential.
We performed a prospective remote clinical trial to examine a novel PPG-based algorithm for detecting undiagnosed AF from a range of wrist-worn devices. Adults aged ≥22 years in the United States without AF, using compatible wearable Fitbit devices and Android or iOS smartphones, were included. PPG data were analyzed using a novel algorithm that examines overlapping 5-minute pulse windows (tachograms). Eligible participants with an irregular heart rhythm detection (IHRD), defined as 11 consecutive irregular tachograms, were invited to schedule a telehealth visit and were mailed a 1-week ambulatory ECG patch monitor. The primary outcome was the positive predictive value of the first IHRD during ECG patch monitoring for concurrent AF.
Citation impact
- FWCI
- 46.55
- Percentile
- 100%
- References
- 20
Authors
10- SASteven A. LubitzCorresponding
Harvard University, Massachusetts General Hospital
- AZAnthony Z. Faranesh
Google (United States)
- CSCaitlin Selvaggi
Massachusetts General Hospital
- SJSteven J. Atlas
Harvard University, Massachusetts General Hospital
- DDDavid D. McManus
University of Massachusetts Chan Medical School
Topics & keywords
- Medicine
- Atrial fibrillation
- Interquartile range
- Photoplethysmogram
- Ambulatory
- Premature atrial contraction
- Wearable computer
- Cardiology
- Good health and well-being