Detection of Hyperperfusion on Arterial Spin Labeling using Deep Learning.

Nicholas Vincent, Noah Stier, Songlin Yu, David S Liebeskind, Danny Jj Wang, Fabien Scalzo
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引用次数: 7

Abstract

Hyperperfusion detected on arterial spin labeling (ASL) images acquired after acute stroke onset has been shown to correlate with development of subsequent intracerebral hemorrhage. We present in this study a quantitative hyperperfusion detection model that can provide an objective decision support for the interpretation of ASL cerebral blood flow (CBF) maps and rapidly delineate hyperperfusion regions. The detection problem is solved using Deep Learning such that the model relates ASL image patches to the corresponding label (normal or hyperperfused). Our method takes into account the regional intensity values of contralateral hemisphere during the labeling of a pixel. Each input vector is associated to a label corresponding to the presence of hyperperfusion that was manually established by a clinical researcher in Neurology. When compared to the manually established hyperperfusion, the predicted maps reached an accuracy of 97.45 ± 2.49% after crossvalidation. Pattern recognition based on deep learning can provide an accurate and objective measure of hyperperfusion on ASL CBF images and could therefore improve the detection of hemorrhagic transformation in acute stroke patients.

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利用深度学习检测动脉自旋标记的高灌注。
急性卒中发作后动脉自旋标记(ASL)图像检测到的高灌注与随后脑出血的发展相关。在这项研究中,我们提出了一个定量的高灌注检测模型,可以为ASL脑血流(CBF)图的解释提供客观的决策支持,并快速描绘高灌注区域。使用深度学习解决检测问题,使模型将ASL图像补丁与相应的标签(正常或过度灌注)联系起来。我们的方法在标记像素时考虑了对侧半球的区域强度值。每个输入向量都与一个标签相关联,该标签对应于神经病学临床研究人员手动建立的过度灌注的存在。与人工建立的高灌注相比,交叉验证后预测图谱的准确率为97.45±2.49%。基于深度学习的模式识别可以准确、客观地测量ASL CBF图像的高灌注,从而提高对急性脑卒中患者出血转化的检测。
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