2024
DOI: 10.1161/jaha.123.032100
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Robust Artificial Intelligence Tool for Atrial Fibrillation Diagnosis: Novel Development Approach Incorporating Both Atrial Electrograms and Surface ECG and Evaluation by Head‐to‐Head Comparison With Hospital‐Based Physician ECG Readers

Yuji Zhang,
Shusheng Xu,
Wenhui Xing
et al.

Abstract: Background Atrial fibrillation (AF) increases risk of embolic stroke, and in postoperative patients, increases cost of care. Consequently, ECG screening for AF in high‐risk patients is important but labor‐intensive. Artificial intelligence (AI) may reduce AF detection workload, but AI development presents challenges. Methods and Results We used a novel approach to AI development for AF detection using both surface ECG recordings and atrial epicardial el… Show more

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“…In January 2024, a paper was published in JAHA, developing robust deep learning algorithms for automated ECG detection of postoperative AF and its burden using both atrial and surface ECGs. This finding has an important impact on the subsequent management of patients with newly diagnosed AF [ 233 ]. Overall, ML models show promise for detecting AF in a stroke population for secondary stroke prevention and for accurately predicting AF in a healthy population for primary prevention.…”
Section: Literature Reviewmentioning
confidence: 99%
“…In January 2024, a paper was published in JAHA, developing robust deep learning algorithms for automated ECG detection of postoperative AF and its burden using both atrial and surface ECGs. This finding has an important impact on the subsequent management of patients with newly diagnosed AF [ 233 ]. Overall, ML models show promise for detecting AF in a stroke population for secondary stroke prevention and for accurately predicting AF in a healthy population for primary prevention.…”
Section: Literature Reviewmentioning
confidence: 99%