论文标题
Noige2Context:上下文辅助学习3D薄层低剂量CT没有干净的数据
Noise2Context: Context-assisted Learning 3D Thin-layer Low Dose CT Without Clean Data
论文作者
论文摘要
计算机断层扫描(CT)在临床实践中在医学诊断,评估和治疗计划等中发挥了至关重要的作用,对X射线辐射暴露的增加的担忧引起了越来越多的关注。为了降低X射线辐射,在某些情况下经常使用低剂量CT,同时会诱导CT图像质量的降解。在本文中,我们提出了一种培训方法,该方法训练了deno deno deno网络,而无需任何配对的干净数据。我们训练了deno的神经网络,以将一个噪声LDCT图像映射到其两个相邻的LDCT图像中,在一个奇数3D薄薄层低剂量CT扫描中,同时用一些潜在的假设,我们提出了一种潜在的假设,我们提出了一种无用的损失,与3D少量的CT型较低的slose sline snection nectuer the nectuer the the contuer的相似性相似,在3d dd dd dd dd dd dd slose中的相似性, 方式。对于3D薄片CT扫描,当单个扫描中不同切片中的噪声不相关并且零均值时,提出的虚拟监督损失函数等于有监督的损失函数,并带有配对的噪声和干净的样品。对Mayo LDCT数据集和逼真的猪头进行了进一步的实验,并证明了与现有无监督方法相比的性能优越。
Computed tomography (CT) has played a vital role in medical diagnosis, assessment, and therapy planning, etc. In clinical practice, concerns about the increase of X-ray radiation exposure attract more and more attention. To lower the X-ray radiation, low-dose CT is often used in certain scenarios, while it will induce the degradation of CT image quality. In this paper, we proposed a training method that trained denoising neural networks without any paired clean data. we trained the denoising neural network to map one noise LDCT image to its two adjacent LDCT images in a singe 3D thin-layer low-dose CT scanning, simultaneously In other words, with some latent assumptions, we proposed an unsupervised loss function with the integration of the similarity between adjacent CT slices in 3D thin-layer lowdose CT to train the denoising neural network in an unsupervised manner. For 3D thin-slice CT scanning, the proposed virtual supervised loss function was equivalent to a supervised loss function with paired noisy and clean samples when the noise in the different slices from a single scan was uncorrelated and zero-mean. Further experiments on Mayo LDCT dataset and a realistic pig head were carried out and demonstrated superior performance over existing unsupervised methods.