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Automated Prostate Cancer Diagnosis and Gleason Grading of Tissue Microarrays

机译:自动前列腺癌诊断和组织微阵列的GLEASIN分级

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We present the results on the development of an automated system for prostate cancer diagnosis and Gleason grading. Images of representative areas of the original Hematoxylin-and-Eosin (H&E)-stained tissue retrieved from each patient, either from a tissue microarray (TMA) core or whole section, were captured and analyzed. The image sets consisted of 367 and 268 color images for the diagnosis and Gleason grading problems, respectively. In diagnosis, the goal is to classify a tissue image into tumor versus non-tumor classes. In Gleason grading, which characterizes tumor aggressiveness, the objective is to classify a tissue image as being from either a low- or high-grade tumor. Several feature sets were computed from the image. The feature sets considered were: (i) color channel histograms, (ii) fractal dimension features, (iii) fractal code features, (iv) wavelet features, and (v) color, shape and texture features computed using Aureon Biosciences' MAGIC? system. The linear and quadratic Gaussian classifiers together with a greedy search feature selection algorithm were used. For cancer diagnosis, a classification accuracy of 94.5% was obtained on an independent test set. For Gleason grading, the achieved accuracy of classification into low- and high-grade classes of an independent test set was 77.6%.
机译:我们展示了前列腺癌诊断和GLEASOSES分级的自动化系统的发展结果。捕获并分析从组织微阵列(TMA)核心或整个截面的每位患者检出的原始血毒素和eosin(H&E)染色组织的代表性区域的图像。图像集分别由367和268个彩色图像组成,分别为诊断和格林赛分级问题。在诊断中,目标是将组织图像分类为肿瘤与非肿瘤类别。在格里森分级中,其表征肿瘤侵略性,目标是将组织图像分类为来自低级或高级肿瘤的组织图像。从图像计算了几个特征集。所考虑的特征集是:(i)颜色通道直方图,(ii)分形维数特征,(iii)分形代码特征,(iv)小波功能,(v)颜色,形状和纹理特征使用aureon biosciences的魔法计算?系统。使用线性和二次高斯分类与贪婪的搜索特征选择算法一起使用。对于癌症诊断,在独立的测试集中获得了94.5%的分类精度。对于Glason分级,将分类的准确性分为低级和高档类别的独立测试套装为77.6%。

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