McEvoy Fintan J, Pongvittayanon Panida, Vedel Tanja, Holst Pernille, Müller Anna V
Department of Veterinary Clinical Sciences, Faculty of Health and Medical Sciences, University of Copenhagen, Frederiksberg, Denmark.
Front Vet Sci. 2023 Aug 11;10:1206916. doi: 10.3389/fvets.2023.1206916. eCollection 2023.
Computer-based texture analysis provides objective data that can be extracted from medical images, including ultrasound images. One popular methodology involves the generation of a gray-level co-occurrence matrix (GLCM) from the image, and from that matrix, texture fractures can be extracted.
We performed texture analysis on 280 ultrasound testicular images obtained from 70 dogs and explored the resulting texture data, by means of principal component analysis (PCA).
Various abnormal lesions were identified subjectively in 35 of the 280 cropped images. In 16 images, pinpoint-to-small, well-defined, hyperechoic foci were identified without acoustic shadowing. These latter images were classified as having "microliths." The remaining 19 images with other lesions and areas of non-homogeneous testicular parenchyma were classified as "other." In the PCA scores plot, most of the images with lesions were clustered. These clustered images represented by those scores had higher values for the texture features entropy, dissimilarity, and contrast, and lower values for the angular second moment and energy in the first principal component. Other data relating to the dogs, including age and history of treatment for prostatomegaly or chemical castration, did not show clustering on the PCA.
This study illustrates that objective texture analysis in testicular ultrasound correlates to some of the visual features used in subjective interpretation and provides quantitative data for parameters that are highly subjective by human observer analysis. The study demonstrated a potential for texture analysis in prediction models in dogs with testicular abnormalities.
基于计算机的纹理分析可提供从医学图像(包括超声图像)中提取的客观数据。一种常用方法是从图像生成灰度共生矩阵(GLCM),并从该矩阵中提取纹理特征。
我们对从70只狗身上获取的280张睾丸超声图像进行了纹理分析,并通过主成分分析(PCA)探索了所得的纹理数据。
在280张裁剪图像中的35张中主观识别出各种异常病变。在16张图像中,发现了针尖至小的、边界清晰的高回声灶,且无声影。后一组图像被分类为有“微石症”。其余19张有其他病变和睾丸实质不均匀区域的图像被分类为“其他”。在PCA得分图中,大多数有病变的图像聚集在一起。这些由这些得分代表的聚集图像在第一主成分中的纹理特征熵、差异度和对比度值较高,而角二阶矩和能量值较低。与狗有关的其他数据,包括年龄以及前列腺肿大或化学去势的治疗史,在PCA上未显示聚集。
本研究表明,睾丸超声中的客观纹理分析与主观解释中使用的一些视觉特征相关,并为人类观察者分析中高度主观的参数提供了定量数据。该研究证明了纹理分析在睾丸异常犬预测模型中的潜力。