2019
DOI: 10.1136/neurintsurg-2018-014381
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Using machine learning to optimize selection of elderly patients for endovascular thrombectomy

Abstract: BackgroundEndovascular thrombectomy (ET) is the standard of care for treatment of acute ischemic stroke (AIS) secondary to large vessel occlusion. The elderly population has been under-represented in clinical trials on ET, and recent studies have reported higher morbidity and mortality in elderly patients than in their younger counterparts.ObjectiveTo use machine learning algorithms to develop a clinical decision support tool that can be used to select elderly patients for ET.MethodsWe used a retrospectively i… Show more

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Cited by 23 publications
(21 citation statements)
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“…Various techniques such as robotics, machine learning, and natural language processing have been applied to the study of these cardiovascular diseases. Some cutting edge applications of machine learning models include: predicting the presence of a high-risk plaque or an absence of coronary atherosclerosis, using biomarkers in patients with suspected coronary artery disease [4], selecting suitable elderly patients for endovascular therapy to reduce intracerebral hemorrhage after thrombectomy [5], grading of coronary artery stenosis and extent of myocardial ischemia [6,7,8,9,10], as well as stroke lesion outcome prediction [11,12,13,14,15,16,17,18]. Some authors have explored the potential of image-based AI applications in the scoring of non-contrast computerized tomography scans [19,20] as well as machine learning in the prediction of mortality in coronary artery disease and heart failure patients based on echocardiography [21].…”
Section: Introductionmentioning
confidence: 99%
“…Various techniques such as robotics, machine learning, and natural language processing have been applied to the study of these cardiovascular diseases. Some cutting edge applications of machine learning models include: predicting the presence of a high-risk plaque or an absence of coronary atherosclerosis, using biomarkers in patients with suspected coronary artery disease [4], selecting suitable elderly patients for endovascular therapy to reduce intracerebral hemorrhage after thrombectomy [5], grading of coronary artery stenosis and extent of myocardial ischemia [6,7,8,9,10], as well as stroke lesion outcome prediction [11,12,13,14,15,16,17,18]. Some authors have explored the potential of image-based AI applications in the scoring of non-contrast computerized tomography scans [19,20] as well as machine learning in the prediction of mortality in coronary artery disease and heart failure patients based on echocardiography [21].…”
Section: Introductionmentioning
confidence: 99%
“…4,5 Current stroke guidelines are based on data from these randomized controlled trials including highly selected patients. Their encouraging results led to more widespread use of endovascular treatment; therefore, broader criteria than those recommended are now used in current practice to treat, for example, elderly patients, 6 patients with minimal stroke symptoms, 7 or patients in late time windows up to 24 hours after stroke onset. 8 On the other hand, the Highly Effective Reperfusion using Multiple Endovascular Devices (HERMES) meta-analysis of the main trials also highlighted that half of all patients have poor clinical outcomes despite successful technical recanalization.…”
mentioning
confidence: 99%
“…Using technologies to improve triaging during the acute phase has been more productive in recent years in the cerebrovascular field. ML has been used for recognition and differentiation of ischemic stroke using clinical data [ 42 ] and to predict the 90-day mRS score to aid with thrombectomy [ 59 ]. MRI data has been used for the classification of ischemic stroke onset time [ 60 ] and segmentation and phenotyping of acute ischemic lesions [ 55 ].…”
Section: Resultsmentioning
confidence: 99%