<p>Background: Identifying large vessel occlusion (LVO) patients in the prehospital triage stage to avoid unnecessary and costly delays is important but still challenging. We aim to develop an artificial neural network (ANN) algorithm to predict LVO using prehospital accessible data including demographics, National Institutes of Health Stroke Scale (NIHSS) items and vascular risk factors.</p><p>Methods: Consecutive acute ischemic stroke patients who underwent CT angiography (CTA) or time of flight MR angiography (TOF-MRA) and received reperfusion therapy within 8 h from symptom onset were included. The diagnosis of LVO was defined as occlusion of the intracranial internal carotid artery (ICA), M1 and M2 segments of the middle cerebral arter...
The Hunter-8 prehospital stroke scale predicts large vessel occlusion in hyperacute ischemic stroke ...
International audienceBackground: In acute stroke, large vessel occlusion (LVO) should be promptly i...
Purpose: Recently developed machine-learning algorithms have demonstrated strong performance in the ...
<p>Background: Identifying large vessel occlusion (LVO) patients in the prehospital triage stage to ...
<p>Background: Identifying large vessel occlusion (LVO) patients in the prehospital triage stage to ...
Background: Identifying large vessel occlusion (LVO) patients in the prehospital triage stage to avo...
BackgroundPrehospital automated large vessel occlusion (LVO) detection in Mobile Stroke Units (MSUs)...
The early detection of large-vessel occlusion (LVO) strokes is increasingly important as these patie...
Background Patients with large vessel occlusion stroke (LVOS) need to be rapidly identified and tran...
Background Machine learning algorithms hold the potential to contribute to fast and accurate detecti...
PurposeDespite the availability of commercial artificial intelligence (AI) tools for large vessel oc...
Background: Early identification of patients with acute ischemic strokes due to large vessel occlusi...
Stroke is the fifth leading cause of death in the United States, with approximately 795,000 new case...
IntroductionWe studied a registry of Emergency Medical Systems (EMS) identified prehospital suspecte...
Background: Computed tomography perfusion (CTP) is the mainstay to determine possible eligibility fo...
The Hunter-8 prehospital stroke scale predicts large vessel occlusion in hyperacute ischemic stroke ...
International audienceBackground: In acute stroke, large vessel occlusion (LVO) should be promptly i...
Purpose: Recently developed machine-learning algorithms have demonstrated strong performance in the ...
<p>Background: Identifying large vessel occlusion (LVO) patients in the prehospital triage stage to ...
<p>Background: Identifying large vessel occlusion (LVO) patients in the prehospital triage stage to ...
Background: Identifying large vessel occlusion (LVO) patients in the prehospital triage stage to avo...
BackgroundPrehospital automated large vessel occlusion (LVO) detection in Mobile Stroke Units (MSUs)...
The early detection of large-vessel occlusion (LVO) strokes is increasingly important as these patie...
Background Patients with large vessel occlusion stroke (LVOS) need to be rapidly identified and tran...
Background Machine learning algorithms hold the potential to contribute to fast and accurate detecti...
PurposeDespite the availability of commercial artificial intelligence (AI) tools for large vessel oc...
Background: Early identification of patients with acute ischemic strokes due to large vessel occlusi...
Stroke is the fifth leading cause of death in the United States, with approximately 795,000 new case...
IntroductionWe studied a registry of Emergency Medical Systems (EMS) identified prehospital suspecte...
Background: Computed tomography perfusion (CTP) is the mainstay to determine possible eligibility fo...
The Hunter-8 prehospital stroke scale predicts large vessel occlusion in hyperacute ischemic stroke ...
International audienceBackground: In acute stroke, large vessel occlusion (LVO) should be promptly i...
Purpose: Recently developed machine-learning algorithms have demonstrated strong performance in the ...