An artificial-intelligence interpretable tool to predict risk of deep vein thrombosis after endovenous thermal ablation
Azadeh Tabari,
Yu Ma,
Jesus Alfonso
et al.
Abstract:IntroductionEndovenous thermal ablation (EVTA) stands as one of the primary treatments for superficial venous insufficiency. Concern exists about the potential for thromboembolic complications following this procedure. Although rare, those complications can be severe, necessitating early identification of patients prone to increased thrombotic risks. This study aims to leverage AI-based algorithms to forecast patients’ likelihood of developing deep vein thrombosis (DVT) within 30 days following EVTA.Materials … Show more
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