Despite the indispensable role of X-ray computed tomography (CT) in diagnostic medicine field, the associated ionizing radiation is still a major concern considering that it may cause genetic and cancerous diseases. Decreasing the exposure can reduce the dose and hence the radiation-related risk, but will also induce higher quantum noise. Supervised deep learning can be used to train a neural network to denoise the low-dose CT (LDCT). However, its success requires massive pixel-wise paired LDCT and normal-dose CT (NDCT) images, which are rarely available in real practice. To alleviate this problem, in this paper, a shift-invariant property based neural network was devised to learn the inherent pixel correlations and also the noise distribution by only using the LDCT images, shaping into our probabilistic self-learning framework. Experimental results demonstrated that the proposed method outperformed the competitors, producing an enhanced LDCT image that has similar image style as the routine NDCT which is highly-preferable in clinic practice.
翻译:尽管X射线计算断层摄影(CT)在诊断医学领域发挥着不可或缺的作用,但相关的电离辐射仍然是引起遗传和癌症疾病的一个主要问题。降低接触可减少剂量,从而降低辐射相关风险,但也将引发更高的量的噪音。可以利用经过监督的深层次学习来训练神经网络,以抑制低剂量CT(LDCT ) 。然而,它的成败需要大量的像素配对的LDCT和正常剂量CT(NDCT)图像,而这些图像在实际实践中是很少得到的。为了缓解这一问题,本文设计了一个基于变换的地产神经网络,仅通过使用LDCT图像来学习内在的像素相关性和噪音分布,形成我们的概率性自我学习框架。实验结果表明,拟议的方法比竞争者高,产生一种与临床实践中非常常见的常规NDCT类似的增强的LDCT图像风格。