Clinical validation of an artificial intelligence algorithm offering cross-platform detection of atrial fibrillation using smart device electrocardiograms - 25/05/23

Graphical abstract |
Highlights |
• | Inconclusive single-lead ECGs generated by smart devices can cause discomfort. |
• | Rate of inconclusive single-lead ECG can be reduced by a DNN-based algorithm. |
• | This technology needs to be incorporated in a simple and convenient way. |
Abstract |
Background |
Several smart devices are able to detect atrial fibrillation automatically by recording a single-lead electrocardiogram, and have created a work overload at the hospital level as a result of the need for over-reads by physicians.
Aim |
To compare the atrial fibrillation detection performances of the manufacturers’ algorithms of five smart devices and a novel deep neural network-based algorithm.
Methods |
We compared the rate of inconclusive tracings and the diagnostic accuracy for the detection of atrial fibrillation between the manufacturers’ algorithms and the deep neural network-based algorithm on five smart devices, using a physician-interpreted 12-lead electrocardiogram as the reference standard.
Results |
Of the 117 patients (27% female, median age 65 years, atrial fibrillation present at time of recording in 30%) included in the final analysis (resulting in 585 analyzed single-lead electrocardiogram tracings), the deep neural network-based algorithm exhibited a higher conclusive rate relative to the manufacturer algorithm for all five models: 98% vs. 84% for Apple; 99% vs. 81% for Fitbit; 96% vs. 77% for AliveCor; 99% vs. 85% for Samsung; and 97% vs. 74% for Withings (P<0.01, for each model). When applying our deep neural network-based algorithm, sensitivity and specificity to correctly identify atrial fibrillation were not significantly different for all assessed smart devices.
Conclusion |
In this clinical validation, the deep neural network-based algorithm significantly reduced the number of tracings labeled inconclusive, while demonstrating similarly high diagnostic accuracy for the detection of atrial fibrillation, thereby providing a possible solution to the data surge created by these smart devices.
Le texte complet de cet article est disponible en PDF.Keywords : Atrial fibrillation, Smartwatch, Artificial intelligence, Deep neural network, Digital health
Abbreviations : AF, AI, CI, DNN, PDF, SR
Plan
☆ | Tweet: The inconclusive rate of commercially available smartwatches is as high as 25%. Is AI able to improve AF detection? Check out your device agnostic AI algorithm offering cross-platform detection of AF #EPeeps #Smartwatches #AF #Wearables #AI. Twitter handle: @BadertscherPat, @Manndie. |
Vol 116 - N° 5
P. 249-257 - mai 2023 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
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