Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlusion (LVO) of the anterior circulation. To further improve personalized stroke care, it is essential to accurately predict outcome after EVT. Machine learning might outperform classical prediction methods as it is capable of addressing complex interactions and non-linear relations between variables.Methods: We included patients from the Multicenter Randomized Clinical Trial of Endovascular Treatment for Acute Ischemic Stroke in the Netherlands (MR CLEAN) Registry, an observational cohort of LVO patients treated with EVT. We applied the following machine learning algorithms: Random Forests, Support Vector Machine, Neural Network, and Super Lear...
BACKGROUND Clinical outcome varies substantially between individuals with large vessel occlusion ...
BackgroundTimely and accurate outcome prediction plays a critical role in guiding clinical decisions...
PurposeTo establish an ensemble machine learning (ML) model for predicting the risk of futile recana...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
INTRODUCTION: Stroke is a major cause of death and disability. Accurately predicting stroke outcome ...
Background: Although endovascular treatment (EVT) has greatly improved outcomes in acute ischemic st...
Background: Although endovascular treatment (EVT) has greatly improved outcomes in acute ischemic st...
Background Clinical outcome varies substantially between individuals with large vessel occlusion ...
Whether endovascular thrombectomy (EVT) improves functional outcome in patients with large-vessel oc...
BACKGROUND Clinical outcome varies substantially between individuals with large vessel occlusion ...
BackgroundTimely and accurate outcome prediction plays a critical role in guiding clinical decisions...
PurposeTo establish an ensemble machine learning (ML) model for predicting the risk of futile recana...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
Background: Endovascular treatment (EVT) is effective for stroke patients with a large vessel occlus...
INTRODUCTION: Stroke is a major cause of death and disability. Accurately predicting stroke outcome ...
Background: Although endovascular treatment (EVT) has greatly improved outcomes in acute ischemic st...
Background: Although endovascular treatment (EVT) has greatly improved outcomes in acute ischemic st...
Background Clinical outcome varies substantially between individuals with large vessel occlusion ...
Whether endovascular thrombectomy (EVT) improves functional outcome in patients with large-vessel oc...
BACKGROUND Clinical outcome varies substantially between individuals with large vessel occlusion ...
BackgroundTimely and accurate outcome prediction plays a critical role in guiding clinical decisions...
PurposeTo establish an ensemble machine learning (ML) model for predicting the risk of futile recana...