New artificial intelligence prediction model using serial prothrombin time international normalized ratio measurements in atrial fibrillation patients on vitamin K antagonists: GARFIELD-AF
European Heart Journal - Cardiovascular Pharmacotherapy

Abstract
Most clinical risk stratification models are based on measurement at a single time-point rather than serial measurements. Artificial intelligence (AI) is able to predict one-dimensional outcomes from multi-dimensional datasets. Using data from Global Anticoagulant Registry in the Field (GARFIELD)-AF registry, a new AI model was developed for predicting clinical outcomes in atrial fibrillation (AF) patients up to 1 year based on sequential measures of prothrombin time international normalized ratio (PT-INR) within 30 days of enrolment.
Patients with newly diagnosed AF who were treated with vitamin K antagonists (VKAs) and had at least three measurements of PT-INR taken over the first 30 days after prescription were analysed. The AI model was constructed with multilayer neural network including long short-term memory and one-dimensional convolution layers. The neural network was trained using PT-INR measurements within days 0–30 after starting treatment and clinical outcomes over days 31–365 in a derivation cohort (cohorts 1–3;
Using serial PT-INR values collected within 1 month after starting VKA, the new AI model performed better than time in therapeutic range at predicting clinical outcomes occurring up to 12 months thereafter. Serial PT-INR values contain important information that can be analysed by computer to help predict adverse clinical outcomes.
Contributors

Shinichi Goto
Author

Karen S Pieper
Author

Jean-Pierre Bassand
Author

Alan John Camm
Author

David A Fitzmaurice
Author

Samuel Z Goldhaber
Author

Sylvia Haas
Author

Alexander Parkhomenko
Author

Ali Oto
Author

Frank Misselwitz
Author

Alexander G G Turpie
Author

Freek W A Verheugt
Author

Keith A A Fox
Author

Bernard J Gersh
Author

Ajay K Kakkar
Author
