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Pseudo Dual Energy CT Imaging using Deep Learning Based Framework: Basic Material Estimation

机译:使用基于深度学习的框架的伪双能CT成像:基本材料估计

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Dual energy computed tomography (DECT) usually scans the object twice using different energy spectrum, and then DECT is able to get two unprecedented material decompositions by directly performing signal decomposition. In general, one is the water equivalent fraction and other is the bone equivalent fraction. It is noted that the material decomposition often depends on two or more different energy spectrum. In this study, we present a deep learning-based framework to obtain basic material images directly form single energy CT images via cascade deep convolutional neural networks (CD-ConvNet). We denote this imaging procedure as pseudo DECT imaging. The CD-ConvNet is designed to learn the non-linear mapping from the measured energy-specific CT images to the desired basic material decomposition images. Specifically, the output of the former convolutional neural networks (ConvNet) in the CD-ConvNet is used as part of inputs for the following ConvNet to produce high quality material decomposition images. Clinical patient data was used to validate and evaluate the performance of the presented CD-ConvNet. Experimental results demonstrate that the presented CD-ConvNet can yield qualitatively and quantitatively accurate results when compared against gold standard. We conclude that the presented CD-ConvNet can help to improve research utility of CT in quantitative imaging, especially in single energy CT.
机译:双能计算机断层扫描(DECT)通常使用不同的能谱对对象进行两次扫描,然后DECT可以通过直接执行信号分解来获得两次空前的材料分解。通常,一个是水当量分数,另一个是骨当量分数。注意,材料分解通常取决于两个或更多个不同的能谱。在这项研究中,我们提出了一个基于深度学习的框架,以通过级联深度卷积神经网络(CD-ConvNet)直接从单能CT图像中获取基本的材料图像。我们将这种成像过程称为伪DECT成像。 CD-ConvNet旨在学习从所测量的能量特定的CT图像到所需的基本材料分解图像的非线性映射。具体来说,CD-ConvNet中的前卷积神经网络(ConvNet)的输出用作后续ConvNet的输入的一部分,以生成高质量的材料分解图像。临床患者数据用于验证和评估所提供CD-ConvNet的性能。实验结果表明,与金标准相比,本文提出的CD-ConvNet可以定性和定量地获得准确的结果。我们得出的结论是,提出的CD-ConvNet可以帮助提高CT在定量成像中的研究效用,尤其是在单能CT中。

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