BackgroundPrevention is highly involved in reducing the incidence of post-thrombotic syndrome (PTS). We aimed to develop accurate models with machine learning (ML) algorithms to predict whether PTS would occur within 24 months.Materials and methodsThe clinical data used for model building were obtained from the Acute Venous Thrombosis: Thrombus Removal with Adjunctive Catheter-Directed Thrombolysis study and the external validation cohort was acquired from the Sun Yat-sen Memorial Hospital in China. The main outcome was defined as the occurrence of PTS events (Villalta score ≥5). Twenty-three clinical variables were included, and four ML algorithms were applied to build the models. For discrimination and calibration, F scores were used to e...
Background Post-thrombotic syndrome (PTS) is a common chronic consequence of deep vein thrombosis th...
PurposeThe aim of the study was to develop and validate machine learning models to predict the perso...
Background: Based on the literature and data on its clinical trials, the incidence of venous thrombo...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
Not all patients carry the same risk of developing a post-thrombotic syndrome (PTS), we therefore a...
IntroductionMachine learning (ML) methods are being increasingly applied to prognostic prediction fo...
Objective: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastati...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
(1) Objective: This study aimed to construct a machine learning model for predicting the prognosis o...
Hemorrhagic complication (HC) is the most severe complication of intravenous thrombolysis (IVT) in p...
INTRODUCTION: Novel machine learning (ML) methods are being investigated across medicine for their p...
Background Post-thrombotic syndrome (PTS) is a common chronic consequence of deep vein thrombosis th...
PurposeThe aim of the study was to develop and validate machine learning models to predict the perso...
Background: Based on the literature and data on its clinical trials, the incidence of venous thrombo...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
Not all patients carry the same risk of developing a post-thrombotic syndrome (PTS), we therefore a...
IntroductionMachine learning (ML) methods are being increasingly applied to prognostic prediction fo...
Objective: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastati...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
(1) Objective: This study aimed to construct a machine learning model for predicting the prognosis o...
Hemorrhagic complication (HC) is the most severe complication of intravenous thrombolysis (IVT) in p...
INTRODUCTION: Novel machine learning (ML) methods are being investigated across medicine for their p...
Background Post-thrombotic syndrome (PTS) is a common chronic consequence of deep vein thrombosis th...
PurposeThe aim of the study was to develop and validate machine learning models to predict the perso...
Background: Based on the literature and data on its clinical trials, the incidence of venous thrombo...