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Deep Convolutional Approach for Low-Dose CT Image Noise Reduction

机译:低剂量CT图像降噪的深度卷积方法

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An essential objective in medical low-dose Computed Tomography (CT) imaging is how best to preserve the quality of the image. While, reducing the X-ray radiation dose is desired, in general, the image quality lowers by reducing the dose. Therefore, improving image quality is remarkably crucial for diagnostic purposes. A novel method to denoise low-dose CT images has been presented in this study. Different from the prevalent and traditional algorithms which utilize similar shared features of CT images in the spatial or transform domain, the deep learning approach is suggested for low-dose CT denoising. In this paper, a fully convolutional neural network architecture consisting of five parts, namely-Feature extraction, Compressing, Mapping, Enlarging, and Assembling, are introduced to directly map the low-dose CT images onto the corresponding normal-dose CT images. The results of the proposed technique were compared with three state-of-the-art algorithms. To illustrate the superiority of our proposed technique, three performance measures, including root mean squared error, peak signal to noise ratio, and structural similarity index are presented.
机译:医疗低剂量计算机断层扫描(CT)成像的必要目标是最好保持图像的质量。虽然,期望减少X射线辐射剂量,通常通过减少剂量来降低图像质量。因此,改善图像质量对于诊断目的非常重要。本研究提出了一种新的去脱脂CT图像的方法。不同于利用空间或变换域中CT图像的类似共享特征的普遍存在和传统算法,建议低剂量CT去噪提出了深度学习方法。本文将引入由五个部分,即特征提取,压缩,映射,放大和组装组成的完全卷积神经网络架构,以将低剂量CT图像直接映射到相应的正常剂量CT图像上。将所提出的技术的结果与三种最先进的算法进行比较。为了说明我们所提出的技术的优越性,提出了三种性能测量,包括根均匀误差,峰值信号到噪声比和结构相似度指数。

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