2020
DOI: 10.1161/strokeaha.119.028101
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Deep Learning–Derived High-Level Neuroimaging Features Predict Clinical Outcomes for Large Vessel Occlusion

Abstract: Background and Purpose— For patients with large vessel occlusion, neuroimaging biomarkers that evaluate the changes in brain tissue are important for determining the indications for mechanical thrombectomy. In this study, we applied deep learning to derive imaging features from pretreatment diffusion-weighted image data and evaluated the ability of these features in predicting clinical outcomes for patients with large vessel occlusion. Methods— This mul… Show more

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Cited by 57 publications
(65 citation statements)
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“…age, sex, stroke severity and comorbidities) to generate predictions for 204 patients, and achieved a test set accuracy of 74%. Nishi and colleagues 147 relied on diffusion-weighted MRI (DWI) of 324 patients to predict favourable outcomes, and demonstrated superior test set performance of their deep learning model compared to simpler baseline models (deep learning model: AUC = 0.81 versus ASPECTS: AUC = 0.63). Several further studies considered imaging data from a database of a 132 first-time ischaemic and haemorrhagic stroke patients.…”
Section: Stroke Outcome Studiesmentioning
confidence: 99%
“…age, sex, stroke severity and comorbidities) to generate predictions for 204 patients, and achieved a test set accuracy of 74%. Nishi and colleagues 147 relied on diffusion-weighted MRI (DWI) of 324 patients to predict favourable outcomes, and demonstrated superior test set performance of their deep learning model compared to simpler baseline models (deep learning model: AUC = 0.81 versus ASPECTS: AUC = 0.63). Several further studies considered imaging data from a database of a 132 first-time ischaemic and haemorrhagic stroke patients.…”
Section: Stroke Outcome Studiesmentioning
confidence: 99%
“…In this study, for model derivation, we adopted 5-fold cross-validation, which is a standard way of optimizing the model with inner test data and has been used in a previous study ( 16 ). During modeling, the grid search algorithm which is a greedy algorithm was combined to tune and optimize the model hyperparameters.…”
Section: Methodsmentioning
confidence: 99%
“…Nishi et al 30 developed a U-Net model to predict clinical posttreatment outcomes using pretreatment diffusion-weighted imaging on patients who underwent mechanical thrombectomy. Clinical outcome was defined using the modified Rankin Scale (mRS) at 90 days after the stroke.…”
Section: Infarct Prognosticationmentioning
confidence: 99%