The texture analysis of computed tomography studies in clear cell renal cell carcinoma: reproducibility of 2D and 3D segmentation

S. V. Khromova, G. G. Karmazanovsky, Natalia A. Karelskaya, I. Gruzdev
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Abstract

Background: Differentiation of tumor grade at the preoperative stage is of utmost importance for the modification of the treatment strategy and the extent of operation. However, the routine analysis of computed tomography (CT) data in clear cell renal cell carcinoma (ccRCC) does not allow for reliable determination of the tumor grade. Aim: To assess the reproducibility of the results of 2D and 3D segmentation of a kidney tumor in the cortico-medullary and nephrographic phases of CT studies, as well as the reproducibility of the first order texture parameters for 2D and 3D tumor segmentation in patients with verified ccRCC. Materials and methods: This retrospective study included the CT data of 50 patients with morphologically verified ccRCC obtained before their surgical treatment. The first patient group included the patients with the renal tumor size in the axial plane of ≥ 4 cm (28 patients, 29 CT studies), and the second patient group included those with the renal tumor size in axial plane of 4 cm (22 patients, 23 CT studies). Two radiologists independently performed segmentation of the renal tumor in the cortico-medullary and nephrographic phases of CT procedures done under a standard protocol with the bolus intravenous contrast enhancement. A two-dimensional region of interest (2D ROI) was selected by the investigators on a subjectively selected axial slice, where the tumor had the largest size. When forming a three-dimensional region of interest (3D ROI), the entire tumor volume was segmented. Next, the statistical analysis of the segmentation results and the results of calculation of the first order texture indices was performed with calculation of the intra-class correlation coefficient (ICC) to assess the strength of the data correlation. The ICC of ≥ 0.75 demonstrated the reproducibility of the segmentation results and the first order texture indices. Results: The 3D segmentation method for ccRCC demonstrated the best ROI reproducibility results, regardless of the tumor size and the phase of contrast enhancement, with the ICC values of 0.961 (95% confidence interval: 0.946–0.971) for the cortico-medullary phase and 0.969 (95% CI: 0.958–0.977) for the nephrographic phase. The 2D tumor segmentation method showed unsatisfactory ROI reproducibility, with the ICC values of ≤ 0.058; however, the unsatisfactory reproducibility of the segmentation results in the patients with ccRCC tumor size of ≥ 4 cm did not significantly affect the reproducibility of the Entropy and Energy texture indices (good to excellent correlation). With the 3D segmentation of ccRCC, most first-order texture metrics were reproducible, with the exception of the Kurtosis parameter. The Entropy and Energy scores in both patient groups demonstrated a high degree of reproducibility. In the 2D tumor segmentation, high reproducibility of the first order texture metrics was obtained for the Entropy and Energy indices. Conclusion: The 3D segmentation of the CT data for ccRCC has high reproducibility, the most first-order textural features were excellently reproducible when segmentations were performed in 3D. The 2D CT data segmentation method for ccRCC demonstrated low reproducibility; however, some of the first order texture indices were reproducible. Both segmentation methods can be used for the texture analysis of CT images.
透明细胞肾细胞癌计算机断层扫描研究的纹理分析:二维和三维分割的再现性
背景:在术前阶段区分肿瘤分级对治疗策略和手术范围的调整至关重要。然而,对透明细胞肾细胞癌(ccRCC)的计算机断层扫描(CT)数据进行常规分析并不能可靠地确定肿瘤分级。目的:评估 CT 研究中肾肿瘤皮质髓质期和肾造影期二维和三维分割结果的可重复性,以及已验证 ccRCC 患者二维和三维肿瘤分割一阶纹理参数的可重复性。材料和方法:这项回顾性研究收集了 50 名形态学已证实的 ccRCC 患者在手术治疗前获得的 CT 数据。第一组患者包括肾脏肿瘤轴平面大小≥4厘米的患者(28例患者,29次CT检查),第二组患者包括肾脏肿瘤轴平面大小为4厘米的患者(22例患者,23次CT检查)。两名放射科医生按照标准方案,在静脉注射对比剂增强的情况下,独立完成了肾肿瘤的皮质髓质期和肾造影期的 CT 图像分割。研究人员在主观选定的轴切片上选择肿瘤最大的二维感兴趣区(2D ROI)。在形成三维感兴趣区(3D ROI)时,对整个肿瘤体积进行分割。接下来,对分割结果和一阶纹理指数的计算结果进行统计分析,计算类内相关系数(ICC),以评估数据相关性的强度。ICC ≥ 0.75 表明分割结果和一阶纹理指数具有可重复性。结果ccRCC的三维分割方法显示出最佳的ROI重现性结果,与肿瘤大小和对比度增强阶段无关,皮质髓质阶段的ICC值为0.961(95%置信区间:0.946-0.971),肾图阶段的ICC值为0.969(95% CI:0.958-0.977)。二维肿瘤分割方法的ROI再现性不尽人意,ICC值≤0.058;但是,ccRCC肿瘤大小≥4厘米的患者的分割结果再现性不尽人意,并没有明显影响熵和能量纹理指数的再现性(相关性良好至极佳)。在对 ccRCC 进行三维分割时,除峰度参数外,大多数一阶纹理指标都具有可重复性。两组患者的熵和能量评分均显示出高度的可重复性。在二维肿瘤分割中,熵指数和能量指数的一阶纹理指标具有很高的可重复性。结论ccRCC的CT数据三维分割具有很高的重现性,在三维分割时,大多数一阶纹理特征都具有很好的重现性。ccRCC的二维CT数据分割方法可重复性较低;不过,一些一阶纹理指数具有可重复性。这两种分割方法都可用于 CT 图像的纹理分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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