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Enhancing Clinical MRI Perfusion Maps with Data-Driven Maps of Complementary Nature for Lesion Outcome Prediction

机译:利用数据驱动的互补性病变特征预测图增强临床MRI灌注图

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Stroke is the second most common cause of death in developed countries, where rapid clinical intervention can have a major impact on a patient's life. To perform the revascularization procedure, the decision making of physicians considers its risks and benefits based on multi-modal MRI and clinical experience. Therefore, automatic prediction of the ischemic stroke lesion outcome has the potential to assist the physician towards a better stroke assessment and information about tissue outcome. Typically, automatic methods consider the information of the standard kinetic models of diffusion and perfusion MRI (e.g. Tmax, TTP, MTT, rCBF, rCBV) to perform lesion outcome prediction. In this work, we propose a deep learning method to fuse this information with an automated data selection of the raw 4D PWI image information, followed by a data-driven deep-learning modeling of the underlying blood flow hemodynamics. We demonstrate the ability of the proposed approach to improve prediction of tissue at risk before therapy, as compared to only using the standard clinical perfusion maps, hence suggesting on the potential benefits of the proposed data-driven raw perfusion data modelling approach.
机译:在发达国家,中风是第二大最常见的死亡原因,在这些国家中,快速的临床干预可能会对患者的生活产生重大影响。为了执行血运重建程序,医生的决策应基于多模式MRI和临床经验来考虑其风险和收益。因此,缺血性中风病灶预后的自动预测有可能帮助医师进行更好的中风评估和有关组织预后的信息。通常,自动方法会考虑扩散和灌注MRI的标准动力学模型(例如Tmax,TTP,MTT,rCBF,rCBV)的信息,以进行病变结果预测。在这项工作中,我们提出了一种深度学习方法,将这种信息与原始4D PWI图像信息的自动数据选择融合在一起,然后进行基础血流血液动力学的数据驱动的深度学习建模。与仅使用标准的临床灌注图相比,我们证明了所提出的方法能够改善治疗前风险组织的预测能力,从而暗示了所提出的数据驱动的原始灌注数据建模方法的潜在优势。

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