INKA, Institute of Medical Technology, Otto-von-Guericke-Universität Magdeburg, Magdeburg, Germany.
PLoS One. 2019 Jan 29;14(1):e0211215. doi: 10.1371/journal.pone.0211215. eCollection 2019.
Texture analysis is an important topic in Ultrasound (US) image analysis for structure segmentation and tissue classification. In this work a novel approach for US image texture feature extraction is presented. It is mainly based on parametrical modelling of a signal version of the US image in order to process it as data resulting from a dynamical process. Because of the predictive characteristics of such a model representation, good estimations of texture features can be obtained with less data than generally used methods require, allowing higher robustness to low Signal-to-Noise ratio and a more localized US image analysis. The usability of the proposed approach was demonstrated by extracting texture features for segmenting the thyroid in US images. The obtained results showed that features corresponding to energy ratios between different modelled texture frequency bands allowed to clearly distinguish between thyroid and non-thyroid texture. A simple k-means clustering algorithm has been used for separating US image patches as belonging to thyroid or not. Segmentation of thyroid was performed in two different datasets obtaining Dice coefficients over 85%.
纹理分析是超声(US)图像分析中用于结构分割和组织分类的一个重要课题。在这项工作中,提出了一种用于 US 图像纹理特征提取的新方法。它主要基于对 US 图像信号版本的参数建模,以便将其处理为源自动态过程的数据。由于这种模型表示的预测特性,与通常使用的方法相比,可以用更少的数据获得纹理特征的良好估计,从而允许对低信噪比具有更高的鲁棒性,并实现更局部化的 US 图像分析。通过提取 US 图像中甲状腺的纹理特征来证明所提出方法的可用性。所得到的结果表明,对应于不同模型化纹理频带之间能量比的特征能够清楚地区分甲状腺和非甲状腺纹理。已经使用简单的 k-均值聚类算法来分离 US 图像块,以确定它们是否属于甲状腺。在两个不同的数据集上进行了甲状腺分割,获得了超过 85%的 Dice 系数。