2022
DOI: 10.1136/neurintsurg-2021-018142
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Machine learning and acute stroke imaging

Abstract: BackgroundIn recent years, machine learning (ML) has had notable success in providing automated analyses of neuroimaging studies, and its role is likely to increase in the future. Thus, it is paramount for clinicians to understand these approaches, gain facility with interpreting ML results, and learn how to assess algorithm performance.ObjectiveTo provide an overview of ML, present its role in acute stroke imaging, discuss methods to evaluate algorithms, and then provide an assessment of existing approaches.M… Show more

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Cited by 32 publications
(23 citation statements)
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“…16 CMR is also being used for myocardial tissue characterization and prediction of risk of sudden cardiac death from ventricular late gadolinium CMR and to help plan treatment strategies, such as guiding ablation for ventricular tachycardia (VT) by analyzing patterns of late gadolinium CMR indicative of fibrosis that may indicate critical isthmuses for reentrant VT circuits. 17,18 CMR is also being used to assess ischemic stroke risk from automated atrial chamber morphology and fibrosis burden measurements. 10 Nuclear imaging applications of AI are also increasing with use in myocardial blood flow and flow reserve quantification and associated prognostication of cardiovascular mortality.…”
Section: Ai/ml Application On Different Modalities In Cardiac Diagnos...mentioning
confidence: 99%
“…16 CMR is also being used for myocardial tissue characterization and prediction of risk of sudden cardiac death from ventricular late gadolinium CMR and to help plan treatment strategies, such as guiding ablation for ventricular tachycardia (VT) by analyzing patterns of late gadolinium CMR indicative of fibrosis that may indicate critical isthmuses for reentrant VT circuits. 17,18 CMR is also being used to assess ischemic stroke risk from automated atrial chamber morphology and fibrosis burden measurements. 10 Nuclear imaging applications of AI are also increasing with use in myocardial blood flow and flow reserve quantification and associated prognostication of cardiovascular mortality.…”
Section: Ai/ml Application On Different Modalities In Cardiac Diagnos...mentioning
confidence: 99%
“…4). 76,77 Prompt identification of AIS is crucial for effective triaging and making time-sensitive treatment decisions. Though noncontrast CT (NCCT) is the most widely used initial imaging modality for evaluation of suspected stroke and is highly sensitive for hemorrhage, the ability to capture early ischemic changes on CT is challenging due to subtle infarct delineation.…”
Section: Ischemic Strokementioning
confidence: 99%
“…Sheth et al, 14 introduced and applied several key terms and concepts related to machine learning (ML) that neurointerventionalists need to be aware of. Particularly since the use of ML allows physicians to significantly shorten current acute stroke workflow practices by processing a large amount of information with minimal latency along with immediate notification, the value is obvious.…”
Section: Machine Learning and Acute Stroke Imagingmentioning
confidence: 99%