1 Department of Radiology, Northwestern Memorial Hospital, Northwestern University Feinberg School of Medicine, 676 N St. Clair St, Ste 800, Chicago, IL 60611.
2 Department of Anesthesiology, Rush University Medical Center, Chicago, IL.
AJR Am J Roentgenol. 2018 Dec;211(6):1234-1245. doi: 10.2214/AJR.17.19213. Epub 2018 Sep 21.
The objective of this study was to determine whether quantitative texture analysis of MR images would improve the ability to distinguish papillary renal cell carcinoma (RCC) subtypes, compared with analysis of qualitative MRI features alone.
A total of 47 pathologically proven papillary RCC tumors were retrospectively evaluated, with 31 (66%) classified as type 1 tumors and 16 (34%) classified as type 2 tumors. MR images were reviewed by two readers to determine tumor size, signal intensity, heterogeneity, enhancement pattern, margins, perilesional stranding, vein thrombosis, and metastasis. Quantitative texture analysis of gray-scale images was performed. A logistic regression was derived from qualitative and quantitative features. Model performance was compared with and without texture features.
The significant qualitative MR features noted were necrosis, enhancement appearance, perilesional stranding, and metastasis. A multivariable model based on qualitative features did not identify any factor as an independent predictor of a type 2 tumor. The logistic regression model for predicting papillary RCCs on the basis of qualitative and quantitative analysis identified probability of the 2D volumetric interpolated breath-hold examination (VIBE) sequence (AUC value, 0.87; 95% CI, 0.77-0.98) as an independent predictor of a type 2 tumor. No difference in the model AUC value was noted when texture features were included in the analysis; however, the model had increased sensitivity and an improved predictive value without loss of specificity.
The addition of texture analysis to analysis of conventional qualitative MRI features increased the probability of predicting a type 2 papillary RCC tumor, which may be clinically important.
本研究旨在确定与单独分析定性 MRI 特征相比,MR 图像的定量纹理分析是否能提高鉴别肾细胞癌(RCC)乳头状亚型的能力。
回顾性评估了 47 例经病理证实的乳头状 RCC 肿瘤,其中 31 例(66%)为 1 型肿瘤,16 例(34%)为 2 型肿瘤。两位读者对 MR 图像进行了评估,以确定肿瘤大小、信号强度、异质性、增强模式、边缘、瘤周条索状影、静脉血栓形成和转移。对灰度图像进行了定量纹理分析。从定性和定量特征中推导出逻辑回归。比较有无纹理特征的模型性能。
坏死、增强表现、瘤周条索状影和转移是显著的定性 MR 特征。基于定性特征的多变量模型未识别出任何因素是 2 型肿瘤的独立预测因子。基于定性和定量分析预测乳头状 RCC 的逻辑回归模型,2D 容积内插屏气检查(VIBE)序列的概率(AUC 值,0.87;95%CI,0.77-0.98)是 2 型肿瘤的独立预测因子。在分析中包含纹理特征时,模型 AUC 值没有差异;但是,该模型的敏感性增加,预测值提高,特异性无损失。
将纹理分析添加到常规定性 MRI 特征分析中可以提高预测 2 型乳头状 RCC 肿瘤的可能性,这可能具有临床意义。