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Deriving Lung Perfusion Directly from CT Image Using Deep Convolutional Neural Network: A Preliminary Study

机译:深度卷积神经网络直接从CT图像获得肺灌注的初步研究

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Functional avoidance radiation therapy for lung cancer patients aims to limit dose delivery to highly functional lung. However, the clinical functional imaging suffers from many shortcomings, including the need of exogenous contrasts, longer processing time, etc. In this study, we present a new approach to derive the lung functional images, using a deep convolutional neural network to learn and exploit the underlying functional information in the CT image and generate functional perfusion image. In this study, ~(99m)Tc MAA SPECT/CT scans of 30 lung cancer patients were retrospectively analyzed. The CNN model was trained using randomly selected dataset of 25 patients and tested using the remaining 5 subjects. Our study showed that it is feasible to derive perfusion images from CT image. Using the deep neural network with discrete labels, the main defect regions can be predicted. This technique holds the promise to provide lung function images for image guided functional lung avoidance radiation therapy.
机译:肺癌患者的功能回避放疗旨在限制向高功能肺的剂量输送。但是,临床功能成像存在许多缺点,包括需要外部对比,处理时间更长等。在这项研究中,我们提出了一种使用深层卷积神经网络来学习和利用肺功能图像的新方法。 CT图像中的基础功能信息,并生成功能灌注图像。在这项研究中,对30例肺癌患者的〜(99m)Tc MAA SPECT / CT扫描进行了回顾性分析。使用随机选择的25位患者的数据集训练CNN模型,并使用其余5位受试者进行测试。我们的研究表明,从CT图像导出灌注图像是可行的。使用带有离散标签的深度神经网络,可以预测主要缺陷区域。该技术有望为影像引导的功能性肺回避放射治疗提供肺功能图像。

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