论文标题
通过非凸正则化检测Covid-19患者的肺超声图像中的线伪像
Detection of Line Artefacts in Lung Ultrasound Images of COVID-19 Patients via Non-Convex Regularization
论文作者
论文摘要
在本文中,我们提出了一种新型方法,用于在19009位患者的肺超声(LUS)图像中定量。我们将其作为一个非凸正式化问题,涉及稀疏性构造,基于库奇的惩罚函数和反向radton变换。我们在ra转换域中采用了一种简单的局部最大检测技术,与已知的线伪像的临床定义有关。尽管是非凸,但该提出的技术可以通过我们提出的Cauchy近端分裂(CPS)方法收敛,并准确地识别了LUS图像中的水平和垂直线伪像。为了减少错误检测的数量,我们的方法包括在ra和图像域中执行的两阶段验证机制。与当前的最新B线识别方法相比,我们评估了所提出的方法的性能,并显示出可观的性能增长,其中87%在9个COVID-19患者的LUS图像中正确检测到了B线。此外,由于其快速收敛,我们提出的方法很容易适用于处理LUS图像序列。
In this paper, we present a novel method for line artefacts quantification in lung ultrasound (LUS) images of COVID-19 patients. We formulate this as a non-convex regularisation problem involving a sparsity-enforcing, Cauchy-based penalty function, and the inverse Radon transform. We employ a simple local maxima detection technique in the Radon transform domain, associated with known clinical definitions of line artefacts. Despite being non-convex, the proposed technique is guaranteed to convergence through our proposed Cauchy proximal splitting (CPS) method and accurately identifies both horizontal and vertical line artefacts in LUS images. In order to reduce the number of false and missed detection, our method includes a two-stage validation mechanism, which is performed in both Radon and image domains. We evaluate the performance of the proposed method in comparison to the current state-of-the-art B-line identification method and show a considerable performance gain with 87% correctly detected B-lines in LUS images of nine COVID-19 patients. In addition, owing to its fast convergence, our proposed method is readily applicable for processing LUS image sequences.