The Lucia App detected atrial fibrillation in 98.3% of cases and recommended guideline-consistent anticoagulation in 98.3% versus 78.5% for physicians.
Observational (n=297)
No
Does a machine learning clinical decision support tool (Lucia App) improve the detection of atrial fibrillation and adherence to anticoagulation guidelines in emergency department patients?
A machine learning ECG application demonstrated high accuracy for detecting atrial fibrillation and outperformed emergency department physicians in recommending guideline-directed anticoagulation.
Tasa de eventos absoluta: 98.3% vs 78.5%
OBJECTIVE: Advanced machine learning technology provides an opportunity to improve clinical electrocardiogram (ECG) interpretation, allowing non-cardiology clinicians to initiate care for atrial fibrillation (AF). The Lucia Atrial Fibrillation Application (Lucia App) photographs the ECG to determine rhythm detection, calculates CHA2DS2-VASc and HAS-BLED scores, and then provides guideline-recommended anticoagulation. Our purpose was to determine the rate of accurate AF identification and appropriate anticoagulation recommendations in emergency department (ED) patients ultimately diagnosed with AF. METHODS: We performed a single-center, observational retrospective chart review in an urban California ED, with an annual census of 70,000 patients. A convenience sample of hospitalized patients with AF as a primary or secondary discharge diagnosis were evaluated for accurate ED AF diagnosis and ED anticoagulation rates. This was done by comparing the Lucia App against a gold standard board-certified cardiologist diagnosis and using the American College of Emergency Physicians AF anticoagulation guidelines. RESULTS: Two hundred and ninety seven patients were enrolled from January 2016 until December 2019. The median age was 79 years and 44.1% were female. Compared to the gold standard diagnosis, the Lucia App detected AF in 98.3% of the cases. Physicians recommended guideline-consistent anticoagulation therapy in 78.5% versus 98.3% for the Lucia App. Of the patients with indications for anticoagulation and discharged from the ED, only 25.0% were started at discharge. CONCLUSION: Use of a cloud-based ECG identification tool can allow non-cardiologists to achieve similar rates of AF identification as board-certified cardiologists and achieve higher rates of guideline-recommended anticoagulation therapy in the ED.
Schwab et al. (Sun,) conducted a observational in Atrial fibrillation (n=297). Lucia Atrial Fibrillation Application vs. Emergency department physicians and board-certified cardiologists was evaluated on Guideline-consistent anticoagulation therapy recommendation. The Lucia App detected atrial fibrillation in 98.3% of cases and recommended guideline-consistent anticoagulation in 98.3% versus 78.5% for physicians.
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