使用三维纹理特征的计算机化肾细胞癌核分级

T. Kim, H. Choi
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引用次数: 6

摘要

肿瘤细胞图像分析中重要特征的提取是肾细胞癌分级的关键过程。在本研究中,我们将三维(3D)纹理特征提取方法应用于癌细胞细胞核图像,并评估其用于计算机细胞核分级的有效性。采用共聚焦激光扫描显微镜(CLSM)对8类肾细胞癌(RCCs)组织的1800个细胞核进行了单独的图像提取。首先,我们通过计算三维灰度共生矩阵(3D GLCM)和三维运行长度矩阵(3D GLRLM)来定量提取染色质纹理。为了证明三维纹理特征对分级的适用性,我们首先进行了主成分分析来降低特征维数,然后进行了判别分析作为统计分类器。最后,将该结果与逐步特征选择中提取的多个优化特征的分类结果进行比较。此外,对2级和3级细胞图像进行AUC(曲线下面积)分析。三维结构特征有可能作为开发新的核分级系统的基础要素,用于准确诊断和预测预后。
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Computerized Renal Cell Carcinoma Nuclear Grading Using 3D Textural Features
An extraction of important features in cancer cell image analysis is a key process in grading renal cell carcinoma. In this study, we applied three-dimensional (3D) texture feature extraction methods to cancer cell nuclei images and evaluated the validity of them for computerized cell nuclei grading. Individual images of 1,800 cell nuclei were extracted from 8 classes of renal cell carcinomas (RCCs) tissues using confocal laser scanning microscopy (CLSM). First, we extracted the chromatin texture quantitatively by calculating 3D gray-level co-occurrence matrices (3D GLCM) and 3D run length matrices (3D GLRLM). To demonstrate the suitability of 3D texture features for grading, we had performed a principal component analysis to reduce feature dimensionality, then, we also performed discriminant analysis as statistical classifier. Finally this result was compared with the result of classification using several optimized features that extracted from stepwise features selection. Additionally AUC (area under curve) analysis was performed for the grade 2 and 3 cell images. Three dimensional texture features have potential for use as fundamental elements in developing a new nuclear grading system with accurate diagnosis and predicting prognosis.
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