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Differentiating Bladder Carcinoma from Bladder Wall Using 3D Textural Features: An Initial Study

机译:使用3D纹理特征区分膀胱癌和膀胱壁的初步研究

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Differentiating bladder tumors from wall tissues is of critical importance for the detection of invasion depth and cancer staging. The textural features embedded in bladder images have demonstrated their potentials in carcinomas detection and classification. The purpose of this study was to investigate the feasibility of differentiating bladder carcinoma from bladder wall using three-dimensional (3D) textural features extracted from MR bladder images. The widely used 2D Tamura features were firstly wholly extended to 3D, and then different types of 3D textural features including 3D features derived from gray level co-occurrence matrices (GLCM) and grey level-gradient co-occurrence matrix (GLGCM), as well as 3D Tamura features, were extracted from 23 volumes of interest (VOIs) of bladder tumors and 23 VOIs of patients' bladder wall. Statistical results show that 30 out of 47 features are significantly different between cancer tissues and wall tissues. Using these features with significant differences between these two types of tissues, classification performance with a supported vector machine (SVM) classifier demonstrates that the combination of three types of selected 3D features outperform that of using only one type of features. All the observations demonstrate that significant textural differences exist between carcinomatous tissues and bladder wall, and 3D textural analysis may be an effective way for noninvasive staging of bladder cancer.
机译:将膀胱肿瘤与壁组织区分开来对于检测浸润深度和癌症分期至关重要。膀胱图像中嵌入的纹理特征已经证明了其在癌症检测和分类中的潜力。这项研究的目的是研究使用从MR膀胱图像中提取的三维(3D)纹理特征区分膀胱癌和膀胱壁的可行性。广泛使用的2D Tamura特征首先完全扩展到3D,然后是不同类型的3D纹理特征,包括从灰度共生矩阵(GLCM)和灰度梯度共生矩阵(GLGCM)派生的3D特征。从23份膀胱肿瘤标本(VOI)和23例患者膀胱壁VOI中提取了3D Tamura特征。统计结果表明,癌组织和壁组织之间47个特征中有30个存在显着差异。通过使用在这两种类型的组织之间存在显着差异的这些特征,支持向量机(SVM)分类器的分类性能表明,三种类型的所选3D特征的组合性能优于仅使用一种类型的特征。所有观察结果表明,癌组织与膀胱壁之间存在明显的质地差异,而3D质地分析可能是膀胱癌无创分期的有效方法。

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