Prediction of Cerebral Hemorrhagic Transformation after Thrombectomy Using a Deep Learning of Dual-Energy CT.

EUROPEAN RADIOLOGY(2024)

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摘要
To develop and validate a deep learning model for predicting hemorrhagic transformation after endovascular thrombectomy using dual-energy computed tomography (CT). This was a retrospective study from a prospective registry of acute ischemic stroke. Patients admitted between May 2019 and February 2023 who underwent endovascular thrombectomy for acute anterior circulation occlusions were enrolled. Hemorrhagic transformation was defined using follow-up magnetic resonance imaging or CT. The deep learning model was developed using post-thrombectomy dual-energy CT to predict hemorrhagic transformation within 72 h. Temporal validation was performed with patients who were admitted after July 2022. The deep learning model’s performance was compared with a logistic regression model developed from clinical variables using the area under the receiver operating characteristic curve (AUC). Total of 202 patients (mean age 71.4 years ± 14.5 [standard deviation], 92 men) were included, with 109 (54.0
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关键词
Mechanical thrombolysis,Computed tomography,Cerebral hemorrhage,Ischemic stroke,Deep learning
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