RawECGNet: Deep Learning Generalization for Atrial Fibrillation Detection From the Raw ECG

Noam Ben-Moshe, Kenta Tsutsui, Shany Biton, Eran Zvuloni, Leif Sornmo, Joachim A. Behar

Forskningsoutput: TidskriftsbidragArtikel i vetenskaplig tidskriftPeer review

Sammanfattning

Introduction Deep learning models for detecting episodes of atrial fibrillation (AF) using rhythm information in long-term ambulatory ECG recordings have shown high performance. However, the rhythm-based approach does not take advantage of the morphological information conveyed by the different ECG waveforms, particularly the f-waves. As a result, the performance of such models may be inherently limited. Methods: To address this limitation, we have developed a deep learning model, named RawECGNet, to detect episodes of AF and atrial flutter (AFl) using the raw, single-lead ECG. We compare the generalization performance of RawECGNet on two external data sets that account for distribution shifts in geography, ethnicity, and lead position. RawECGNet is further benchmarked against a state-of-the-art deep learning model, named ArNet2, which utilizes rhythm information as input. Results: Using RawECGNet, the results for the different leads in the external test sets in terms of the F1 score were 0.91–0.94 in RBDB and 0.93 in SHDB, compared to 0.89–0.91 in RBDB and 0.91 in SHDB for ArNet2. The results highlight RawECGNet as a high-performance, generalizable algorithm for detection of AF and AFl episodes, exploiting information on both rhythm and morphology.

Originalspråkengelska
Sidor (från-till)5180-5188
Antal sidor10
TidskriftIEEE Journal of Biomedical and Health Informatics
Volym28
Nummer9
DOI
StatusPublished - 2024

Ämnesklassifikation (UKÄ)

  • Annan data- och informationsvetenskap

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