急性缺血性脑卒中组织命运特征的深度学习。

Noah Stier, Nicholas Vincent, David Liebeskind, Fabien Scalzo
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引用次数: 47

摘要

在急性缺血性卒中治疗中,组织存活结果的预测在临床决策过程中起着重要作用,因为在考虑血管内凝块恢复干预时,它可用于评估风险与可能获益的平衡。我们首次基于在症状发作后立即在MRI观察到的低灌注(Tmax)特征中随机采样的局部斑块构建了组织命运的深度学习模型。我们在干预四天后根据神经学家专家建立的基础事实评估模型。对19例急性脑卒中患者的实验评估了该模型预测组织命运的准确性。结果表明,与基于单体素的回归模型相比,所提出的区域学习框架具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Deep Learning of Tissue Fate Features in Acute Ischemic Stroke.

In acute ischemic stroke treatment, prediction of tissue survival outcome plays a fundamental role in the clinical decision-making process, as it can be used to assess the balance of risk vs. possible benefit when considering endovascular clot-retrieval intervention. For the first time, we construct a deep learning model of tissue fate based on randomly sampled local patches from the hypoperfusion (Tmax) feature observed in MRI immediately after symptom onset. We evaluate the model with respect to the ground truth established by an expert neurologist four days after intervention. Experiments on 19 acute stroke patients evaluated the accuracy of the model in predicting tissue fate. Results show the superiority of the proposed regional learning framework versus a single-voxel-based regression model.

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