Institute of Electronics, Lodz University of Technology, ul. Wólczańska 211/215, 90-924 Lodz, Poland.
Department of Diagnostic Imaging, Jagiellonian University Medical College, ul Kopernika 19, 31-501, Cracow Poland.
Comput Med Imaging Graph. 2020 Apr;81:101716. doi: 10.1016/j.compmedimag.2020.101716. Epub 2020 Mar 6.
Image texture is a very important component in many types of images, including medical images. Medical images are often corrupted by noise and affected by artifacts. Some of the texture-based features that should describe the structure of the tissue under examination may also reflect, for example, the uneven sensitivity of the scanner within the tissue region. This in turn may lead to an inappropriate description of the tissue or incorrect classification. To limit these phenomena, the analyzed regions of interest are normalized. In texture analysis methods, image intensity normalization is usually followed by a reduction in the number of levels coding the intensity. The aim of this work was to analyze the impact of different image normalization methods and the number of intensity levels on texture classification, taking into account noise and artifacts related to uneven background brightness distribution. Analyses were performed on four sets of images: modified Brodatz textures, kidney images obtained by means of dynamic contrast-enhanced magnetic resonance imaging, shoulder images acquired as T2-weighted magnetic resonance images and CT heart and thorax images. The results will be of use for choosing a particular method of image normalization, based on the types of noise and distortion present in the images.
图像纹理是许多类型图像的一个非常重要的组成部分,包括医学图像。医学图像常常受到噪声的干扰,并且受到伪影的影响。一些基于纹理的特征本应描述所检查组织的结构,但也可能反映例如组织区域内扫描仪的不均匀灵敏度。这反过来可能导致对组织的不适当描述或错误分类。为了限制这些现象,分析的感兴趣区域被归一化。在纹理分析方法中,通常在对强度进行编码的级别数量减少之前进行图像强度归一化。本工作的目的是分析不同的图像归一化方法和强度级别的数量对纹理分类的影响,同时考虑到与不均匀背景亮度分布相关的噪声和伪影。在四组图像上进行了分析:修改后的布罗达茨纹理、通过动态对比增强磁共振成像获得的肾脏图像、作为 T2 加权磁共振成像获得的肩部图像以及心脏和胸部 CT 图像。这些结果将有助于根据图像中存在的噪声和失真类型选择特定的图像归一化方法。