2021
DOI: 10.1161/str.52.suppl_1.mp32
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Abstract MP32: Machine Learning Models Identify Predictors of Poor Outcome in Patients Undergoing Mechanical Thrombectomy for Acute Ischemic Stroke

Abstract: Introduction: Predicting outcome after mechanical thrombectomy (MT) for ischemic stroke due to LVO can inform prognosis and guide early management. Prior studies report heterogeneity in risk factors for poor outcome. Machine learning may identify patterns of poor outcome from diverse variables that are difficult to discern with conventional statistical methods. Methods: Using a retrospective database of 233 stroke patients (2015-20) who had MT for LVO, … Show more

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