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Deep learning-based white matter lesion volume on CT is associated with outcome after acute ischemic stroke.

Henk van VoorstJohanna PitkänenLaura van PoppelLucas de VriesMahsa MojtahediLaura MartouBart J EmmerYvo B W E M RoosRobert van OostenbruggeAlida A PostmaHenk A MarqueringCharles B L M MajoieSami CurtzeSusanna MelkasPaul BentleyMatthan W A Caannull null
Published in: European radiology (2024)
White matter damage is a predisposing risk factor for intracranial hemorrhage in patients with acute ischemic stroke but remains difficult to measure on CT. White matter lesion volume on CT measured with deep learning had a similar association with symptomatic intracerebral hemorrhages and worse functional outcome as the Fazekas scale. A patient-level meta-analysis is required to study the benefit of white matter lesion severity-based selection for intravenous thrombolysis before endovascular treatment.
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