肺癌早期诊断的可喜结果

A. El-Baz, G. Gimel'farb, R. Falk, M. El-Ghar, H. Refaie
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引用次数: 23

摘要

我们的长期研究目标是开发一种全自动的、基于图像的诊断系统,用于早期诊断可能导致肺癌的肺结节。本文的重点是监测在连续胸部低剂量(LD) CT扫描中发现的肺结节的发展。我们提出了一种用于3D LDCT数据配准的新方法,该方法是非刚性的,涉及两个步骤:(i)使用学习的先验外观模型将一个扫描(目标)全局对齐到另一个扫描(参考或原型),然后(ii)局部对齐以纠正复杂的变形。在对随后两次胸部扫描的信号进行均衡化后,这些胸部图像的视觉外观用具有两两相互作用的马尔可夫-吉布斯随机场建模。我们通过一个特殊的Gibbs能量函数的梯度下降最大化来估计将目标全局注册到原型的仿射变换。为了处理局部变形,我们在进化的封闭等间距表面(iso-surfaces)上变形目标的每个体素,以紧密匹配原型。在两个数据集中,等值面的演化由指数速度函数引导,其方向是使等值面的对应体素对之间的距离最小。来自27例患者的135个LDCT数据集的初步结果表明,我们正确的登记可以导致准确的诊断和识别检测到的肺结节的发展。
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Promising results for early diagnosis of lung cancer
Our long term research goal is to develop a fully automated, image- based diagnostic system for early diagnosis of pulmonary nodules that may lead to lung cancer. This paper focuses on monitoring the development of lung nodules detected in successive chest low dose (LD) CT scans of a patient. We propose a new methodology for 3D LDCT data registration which is non-rigid and involves two steps: (i) global alignment of one scan (target) to another scan (reference or prototype) using the learned prior appearance model followed by (ii) local alignment in order to correct for intricate deformations. After equalizing signals for two subsequent chest scans, visual appearance of these chest images is modeled with a Markov-Gibbs random field with pairwise interaction. We estimate the affine transformation that globally register the target to the prototype by gradient descent maximization of a special Gibbs energy function. To handle local deformations, we deform each voxel of the target over evolving closed equi-spaced surfaces (iso-surfaces) to closely match the prototype. The evolution of the iso-surfaces is guided by an exponential speed function in the directions that minimize distances between the corresponding voxel pairs on the iso-surfaces in both the data sets. Preliminary results on the 135 LDCT data sets from 27 patients show that our proper registration could lead to precise diagnosis and identification of the development of the detected pulmonary nodules.
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