2020
DOI: 10.1161/str.51.suppl_1.wp395
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Abstract WP395: Detection of Hemorrhagic Expansion With Ai

Abstract: Background and Purpose: Intracerebral hemorrhage (ICH) expansion is an independent predictor of mortality and functional outcome with each milliliter of expansion increasing the chance of functional dependence by up to 7%. Unfortunately, detection of ICH expansion is often subjective, inaccurate, and may misguide treatment pathways. Artificial intelligence with convolutional neural networks (CNNs) represents a powerful new technology for image analysis and quantification. This study compares the ac… Show more

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“…Researchers have applied AI for detecting neurovascular conditions. Nagamine et al, [120] implement CNN based model to segment out the region of interest for Intracerebral Hemorrhage detection. Bentley et al, [121] develop a proof-of-concept using SVM to automate stroke prediction using brain CT images while Fernandez-Lozano et al, [122] implement a random forest based model to estimate the mortality/morbidity outcome over a time period.…”
Section: ) Neurologymentioning
confidence: 99%
“…Researchers have applied AI for detecting neurovascular conditions. Nagamine et al, [120] implement CNN based model to segment out the region of interest for Intracerebral Hemorrhage detection. Bentley et al, [121] develop a proof-of-concept using SVM to automate stroke prediction using brain CT images while Fernandez-Lozano et al, [122] implement a random forest based model to estimate the mortality/morbidity outcome over a time period.…”
Section: ) Neurologymentioning
confidence: 99%