Department of Electrical, Electronic, and Information Engineering (DEI), University of Bologna, 40136, Bologna, Italy.
Advanced Research Center on Electronic Systems (ARCES), University of Bologna, 40125, Bologna, Italy.
Sci Rep. 2021 Jun 2;11(1):11542. doi: 10.1038/s41598-021-90985-y.
Computed Tomography (CT) is widely used in oncology for morphological evaluation and diagnosis, commonly through visual assessments, often exploiting semi-automatic tools as well. Well-established automatic methods for quantitative imaging offer the opportunity to enrich the radiologist interpretation with a large number of radiomic features, which need to be highly reproducible to be used reliably in clinical practice. This study investigates feature reproducibility against noise, varying resolutions and segmentations (achieved by perturbing the regions of interest), in a CT dataset with heterogeneous voxel size of 98 renal cell carcinomas (RCCs) and 93 contralateral normal kidneys (CK). In particular, first order (FO) and second order texture features based on both 2D and 3D grey level co-occurrence matrices (GLCMs) were considered. Moreover, this study carries out a comparative analysis of three of the most commonly used interpolation methods, which need to be selected before any resampling procedure. Results showed that the Lanczos interpolation is the most effective at preserving original information in resampling, where the median slice resolution coupled with the native slice spacing allows the best reproducibility, with 94.6% and 87.7% of features, in RCC and CK, respectively. GLCMs show their maximum reproducibility when used at short distances.
计算机断层扫描(CT)在肿瘤学中被广泛用于形态评估和诊断,通常通过视觉评估,并且经常利用半自动工具。成熟的定量成像自动方法为放射科医生的解释提供了丰富的放射组学特征的机会,这些特征需要具有高度可重复性,才能在临床实践中可靠使用。本研究针对具有异质体素大小的 98 个肾细胞癌(RCC)和 93 个对侧正常肾脏(CK)的 CT 数据集,研究了特征对噪声、不同分辨率和分割(通过对感兴趣区域进行干扰来实现)的可重复性。特别考虑了基于二维和三维灰度共生矩阵(GLCM)的一阶(FO)和二阶纹理特征。此外,本研究对三种最常用的插值方法进行了比较分析,这些方法在任何重采样过程之前都需要进行选择。结果表明,在重采样中,Lanczos 插值是最有效地保留原始信息的方法,其中中位切片分辨率结合原始切片间距可分别在 RCC 和 CK 中实现最佳的可重复性,其特征分别为 94.6%和 87.7%。当使用短距离时,GLCM 显示出其最大的可重复性。