Centre Universitaire Khemis Miliana, Route Teniat el Had, Ain Defla, Algeria.
Med Image Anal. 2010 Apr;14(2):185-94. doi: 10.1016/j.media.2009.12.002. Epub 2009 Dec 16.
In this paper, we propose a new technique for the estimation of contrast enhancement curves of Dynamic Contrast-Enhanced sequences, which takes the most from the interdependence between this estimation problem and the registration problem raised by possible movements occurring in sequences. The technique solves the estimation and registration problems simultaneously in an iterative way. However, unlike previous techniques, a pixel classification scheme is included within the estimation so as to compute enhancement curves on pixel classes instead of single pixels. The classification scheme is designed using a descendant hierarchical approach. Due to this tree approach, the number of classes is set automatically and the whole technique is entirely unsupervised. Moreover, some specific prior information about the shape of enhancement curves are included in the splitting and pruning steps of the classification scheme. Such an information ensures that created classes include pixels having homogeneous and relevant enhancement properties. The technique is applied to DET-CT scan sequences and evaluated using ground truth data. Results show that classifications are anatomically sound and that contrast enhancements are accurately estimated from sequences.
在本文中,我们提出了一种新的技术,用于估计动态对比增强序列的对比增强曲线,该技术充分利用了这一估计问题与序列中可能发生的运动引起的配准问题之间的相互依赖性。该技术以迭代方式同时解决估计和配准问题。然而,与以前的技术不同,在估计中包括了像素分类方案,以便在像素类而不是单个像素上计算增强曲线。分类方案使用从下到上的分层方法设计。由于这种树方法,类的数量是自动设置的,整个技术完全是无监督的。此外,分类方案的分裂和修剪步骤中包含了一些关于增强曲线形状的特定先验信息。该信息确保创建的类包含具有均匀且相关增强特性的像素。该技术应用于 DET-CT 扫描序列,并使用真实数据进行评估。结果表明,分类在解剖学上是合理的,并且可以从序列中准确地估计对比度增强。