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首页> 外文期刊>Journal of neurointerventional surgery >Deep learning guided stroke management: a review of clinical applications
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Deep learning guided stroke management: a review of clinical applications

机译:深度学习引导行程管理:临床应用综述

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Stroke is a leading cause of long-term disability, and outcome is directly related to timely intervention. Not all patients benefit from rapid intervention, however. Thus a significant amount of attention has been paid to using neuroimaging to assess potential benefit by identifying areas of ischemia that have not yet experienced cellular death. The perfusion-diffusion mismatch, is used as a simple metric for potential benefit with timely intervention, yet penumbral patterns provide an inaccurate predictor of clinical outcome. Machine learning research in the form of deep learning (artificial intelligence) techniques using deep neural networks (DNNs) excel at working with complex inputs. The key areas where deep learning may be imminently applied to stroke management are image segmentation, automated featurization (radiomics), and multimodal prognostication. The application of convolutional neural networks, the family of DNN architectures designed to work with images, to stroke imaging data is a perfect match between a mature deep learning technique and a data type that is naturally suited to benefit from deep learning's strengths. These powerful tools have opened up exciting opportunities for data-driven stroke management for acute intervention and for guiding prognosis. Deep learning techniques are useful for the speed and power of results they can deliver and will become an increasingly standard tool in the modern stroke specialist's arsenal for delivering personalized medicine to patients with ischemic stroke.
机译:中风是长期残疾的主要原因,结果与及时干预直接相关。然而,并非所有患者都受益于快速干预。因此,通过鉴定尚未经历蜂窝死亡的缺血区域来评估潜在的益处,已经支付了大量关注。灌注扩散失配,用作潜在益处的简单度量,及时干预,但是Penumbral模式提供了临床结果的不准确预测因子。深度神经网络(DNNS)excel与复杂输入的深度学习(人工智能)技术的机器学习研究。深度学习可能正常应用于中风管理的关键区域是图像分割,自动化细胞和辐射瘤)和多模式预后。卷积神经网络的应用,旨在使用图像的DNN架构系列,以便描绘成像数据是成熟的深度学习技术与自然而合受益于深度学习优势的数据类型之间的完美匹配。这些强大的工具已经为急性干预和引导预后的数据驱动行程管理开辟了令人兴奋的机会。深度学习技术对于他们可以提供的结果的速度和力量是有用的,并且将成为现代中风专家的历时的标准工具,用于向缺血性卒中患者提供个性化药物。

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