Low dose computed tomography (LDCT) is desirable for both diagnostic imaging and image guided interventions. Denoisers are openly used to improve the quality of LDCT. Deep learning (DL)-based denoisers have shown state-of-the-art performance and are becoming one of the mainstream methods. However, there exists two challenges regarding the DL-based denoisers: 1) a trained model typically does not generate different image candidates with different noise-resolution tradeoffs which sometimes are needed for different clinical tasks; 2) the model generalizability might be an issue when the noise level in the testing images is different from that in the training dataset. To address these two challenges, in this work, we introduce a lightweight optimization process at the testing phase on top of any existing DL-based denoisers to generate multiple image candidates with different noise-resolution tradeoffs suitable for different clinical tasks in real-time. Consequently, our method allows the users to interact with the denoiser to efficiently review various image candidates and quickly pick up the desired one, and thereby was termed as deep interactive denoiser (DID). Experimental results demonstrated that DID can deliver multiple image candidates with different noise-resolution tradeoffs, and shows great generalizability regarding various network architectures, as well as training and testing datasets with various noise levels.
翻译:低剂量计算断层仪(LDCT)对于诊断成像和图像引导干预都是可取的。Denoisers公开被用来提高LDCT的质量。深度学习(DL)基底底底栖生物已经展示出最先进的性能,并正在成为主流方法之一。但是,DL基底底栖生物存在两个挑战:(1) 一个经过培训的模型通常不会产生不同的图像对象,具有不同的噪音解析取舍,而不同的临床任务有时需要这种取舍;(2) 当测试图像中的噪音水平不同于培训数据集中的噪音水平时,模型一般可是一个问题。为了应对这两项挑战,在任何现有的DL基底底栖生物试验阶段,我们在任何基于底底栖生物的测试阶段都引入了轻度优化进程,以产生多种图像候选人,而不同的噪音解析取舍适合实时的不同临床任务。因此,我们的方法允许用户与消音师互动,以便有效地审查各种图像候选人,并迅速取回所期望的,从而被称为深度交互消音器(DID)。实验结果表明,在任何DL基实验结果中,DLDD可以提供多种图像的可及高分辨率测试。