Detecting atrial fibrillation in the polysomnography-derived electrocardiogram: a software validation study.Open Access

van Kempen J; Glatz C; Wolfes J; Frommeyer G; Boentert M

Research article (journal) | Peer reviewed

Abstract

The present study validated a software-based electrocardiogram (ECG) analysis tool for detection of atrial fibrillation (AF) and risk for AF using polysomnography (PSG)-derived ECG recordings.; The Stroke Risk Analysis® (SRA®) software was applied to 3-channel ECG tracings from diagnostic PSG performed in enrolled subjects including a subgroup of subjects with previously documented AF. No subjects used positive airway pressure therapy. All ECG recordings were visually analyzed by a blinded cardiologist.; Of subjects enrolled in the study, 93 had previously documented AF and 178 of 186 had an ECG that could be analyzed by either method. In subjects with known history of AF, automated analysis using SRA® classified 47 out of 87 ECG as either manifest AF or showing increased risk for paroxysmal AF (PAF) by SRA® (sensitivity 0.54, specificity 0.86). On visual analysis, 36/87 ECG showed manifest AF and 51/87 showed sinus rhythm. Among the latter subgroup, an increased risk for PAF was ascribed by SRA® in 11 cases (sensitivity 0.22, specificity 0.78) and by expert visual analysis in 5 cases (sensitivity 0.1, specificity 0.90). Among 36/178 ECG with manifest AF on visual analysis, 33 were correctly identified by the SRA® software (sensitivity and specificity 0.92).; Sleep studies provide a valuable source of ECG recordings that can be easily subjected to software-based analysis in order to identify manifest AF and automatically assess the risk of PAF. For optimal evaluability of data, multiple channel ECG tracings are desirable. For assessment of PAF risk, the SRA® analysis probably excels visual analysis, but sensitivity of both methods is low, reflecting that repeated ECG recording remains essential. - PURPOSE - METHODS - RESULTS - CONCLUSION

Details about the publication

JournalSleep and Breathing
Volume27
Issue5
Page range1753-1757
StatusPublished
Release year2023 (21/01/2023)
Language in which the publication is writtenEnglish
DOI10.1007/s11325-023-02779-3
Link to the full texthttps://link.springer.com/article/10.1007/s11325-023-02779-3
KeywordsAtrial fibrillation; Automated ECG analysis; Electrocardiogram; Polysomnography

Authors from the University of Münster

Boentert, Matthias
Department for Neurology