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Automatic lumbar vertebrae segmentation in fluoroscopic images via optimised concurrent Hough transform

机译:通过优化并发霍夫变换自动腰椎椎骨椎骨分段

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Low back pain is a very common problem in the industrialised countries and its associated cost is enormous. Diagnosis of the underlying causes can be extremely difficult. Many studies have focused on mechanical disorders of the spine. Digital videofluoroscopy (DVF) was widely used to obtain images for motion studies. This can provide motion sequences of the lumbar spine, but the images obtained often suffer due to noise, exacerbated by the very low radiation dosage. Thus determining vertebrae position within the image sequence presents a considerable challenge. In this paper, we show how our new approach can automatically detect the positions and borders of vertebrae concurrently, relieving many of the problems experienced in other approaches. First, we use phase congruency to relieve difficulty associated with threshold selection in edge detection of the illumination variant DVF images. Then, our new Hough transform approach is applied to determine the moving vertebrae, concurrently. We include optimisation via a genetic algorithm as without it the extraction of moving multiple vertebrae is computationally daunting. Our results show 4hat this new approach can indeed provide extractions of position and rotation which appear to be of sufficient quality to aid therapy and diagnosis of spinal disorders.
机译:腰痛是工业化国家的一个非常普遍的问题,其相关成本是巨大的。诊断潜在原因可能非常困难。许多研究专注于脊柱的机械障碍。数字视频氟镜(DVF)被广泛用于获得运动研究的图像。这可以提供腰椎的运动序列,但是由于噪声而获得的图像经常受到噪声,通过非常低的辐射剂量加剧。从而确定图像序列内的椎骨位置具有相当大的挑战。在本文中,我们展示了我们的新方法同时可以自动检测椎骨的位置和边界,从其他方法中缓解许多所经历的问题。首先,我们使用相位通过在边缘检测中释放与照明变体DVF图像的边缘检测中的阈值选择相关的困难。然后,我们的新霍夫变换方法应用于同时测定移动椎骨。我们通过遗传算法包括优化,因为没有它,移动多个椎骨的提取是计算令人生畏的。我们的结果表明,这一新方法确实可以提供似乎足够质量的位置和旋转的提取,以援助治疗和诊断脊髓障碍。

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