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Texture analysis of tissues in Gleason grading of prostate cancer

机译:纹理分析治疗前列腺癌的Glason分级

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Prostate cancer is a common malignancy among maturing men and the second leading cause of cancer death in USA. Histopathological grading of prostate cancer is based on tissue structural abnormalities. Gleason grading system is the gold standard and is based on the organization features of prostatic glands. Although Gleason score has contributed on cancer prognosis and on treatment planning, its accuracy is about 58%, with this percentage to be lower in GG2, GG3 and GG5 grading. On the other hand it is strongly affected by "inter- and intra observer variations", making the whole process very subjective. Therefore, there is need for the development of grading tools based on imaging and computer vision techniques for a more accurate prostate cancer prognosis. The aim of this paper is the development of a novel method for objective grading of biopsy specimen in order to support histopathological prognosis of the tumor. This new method is based on texture analysis techniques, and particularly on Gray Level Co-occurrence Matrix (GLCM) that estimates image properties related to second order statistics. Histopathological images of prostate cancer, from Gleason grade2 to Gleason grade 5, were acquired and subjected to image texture analysis. Thirteen texture characteristics were calculated from this matrix as they were proposed by Haralick. Using stepwise variable selection, a subset of four characteristics were selected and used for the description and classification of each image field. The selected characteristics profile was used for grading the specimen with the multiparameter statistical method of multiple logistic discrimination analysis. The subset of these characteristics provided 87% correct grading of the specimens. The addition of any of the remaining characteristics did not improve significantly the diagnostic ability of the method. This study demonstrated that texture analysis techniques could provide valuable grading decision support to the pathologists, concerning prostate cancer prognosis.
机译:前列腺癌是成熟的男性和美国癌症死亡的第二个主要原因的常见恶性肿瘤。前列腺癌的组织病理学分级基于组织结构异常。 GLEASES分级系统是黄金标准,是基于前列腺的组织特征。虽然Gleason评分对癌症预后和治疗规划有贡献,但其精度约为58%,百分比较低,GG2,GG3和GG5分级较低。另一方面,它受到“和内部观察者的变化”的强烈影响,使整个过程非常主观。因此,需要基于成像和计算机视觉技术的分级工具的开发,以进行更准确的前列腺癌预后。本文的目的是发展活检标本的客观分级的新方法,以支持肿瘤的组织病理学预后。这种新方法基于纹理分析技术,特别是灰色级共发生矩阵(GLCM),其估计与二阶统计相关的图像属性。从Glason癌的前列腺癌的组织病理学图像被获取并进行图像纹理分析。从该基质计算十三个纹理特征,因为它们由Haralick提出。使用逐步变量选择,选择了四个特征的子集,并用于每个图像字段的描述和分类。所选特性曲线用于用多个逻辑辨别分析的多次统计方法进行分级样本。这些特征的子集提供了87%的标本分级。添加任何剩余特性并未显着提高方法的诊断能力。本研究表明,纹理分析技术可以为病理学家提供有价值的分级决策支持,涉及前列腺癌预后。

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