2022
DOI: 10.1038/s41598-022-22939-x
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Automatic identification of early ischemic lesions on non-contrast CT with deep learning approach

Abstract: Early ischemic lesion on non-contrast computed tomogram (NCCT) in acute stroke can be subtle and need confirmation with magnetic resonance (MR) image for treatment decision-making. We retrospectively included the NCCT slices of 129 normal subjects and 546 ischemic stroke patients (onset < 12 h) with corresponding MR slices as reference standard from a prospective registry of Chang Gung Research Databank. In model selection, NCCT slices were preprocessed and fed into five different pre-trained convolutional … Show more

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Cited by 9 publications
(1 citation statement)
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“…79 Similarly, an advanced CNN model using a larger dataset demonstrated the ability to detect AIS within 12 hours on NCCT with considerable accuracy (83%), sensitivity (85%), and specificity (82%). 80 If these results are consistent in further studies, they could significantly improve AIS detection, particularly in resource-limited settings where NCCT is available but advanced imaging is inaccessible.…”
Section: Ischemic Strokementioning
confidence: 72%
“…79 Similarly, an advanced CNN model using a larger dataset demonstrated the ability to detect AIS within 12 hours on NCCT with considerable accuracy (83%), sensitivity (85%), and specificity (82%). 80 If these results are consistent in further studies, they could significantly improve AIS detection, particularly in resource-limited settings where NCCT is available but advanced imaging is inaccessible.…”
Section: Ischemic Strokementioning
confidence: 72%