形态学特征对数字病理图像中前列腺癌分类的贡献

Nicholas McCarthy, P. Cunningham, Gillian O'Hurley
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引用次数: 1

摘要

在本文中,我们介绍了一个系统的开发工作,用于前列腺癌(PCa)的数字化H&E组织病理学图像的自动分类。在我们的系统中,图像被转换成一个平铺网格,从中提取各种纹理和形态特征。我们评估了高级形态学特征的贡献,例如那些来自组织分割算法的形态学特征,因为它们与我们的分类器模型的准确性有关。我们还研究了一种图像块中的组织分割算法,并引入了一种新的组织类特征向量表示。最后,我们展示了我们的系统在执行三个任务时的分类准确性、灵敏度和特异性结果:区分癌症和非癌症瓷砖,区分低级别和高级别癌症,区分Gleason分级3、4和5。我们的研究结果表明,新的组织表示在很大程度上优于由组织分割得到的形态学特征,但这两种特征集都没有提高由低级纹理方法获得的特征的准确性。
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The Contribution of Morphological Features in the Classification of Prostate Carcinoma in Digital Pathology Images
In this paper we present work on the development of a system for automated classification of digitized H&E histopathology images of prostate carcinoma (PCa). In our system, images are transformed into a tiled grid from which various texture and morphological features are extracted. We evaluate the contribution of high-level morphological features such as those derived from tissue segmentation algorithms as they relate to the accuracy of our classifier models. We also present work on an algorithm for tissue segmentation in image tiles, and introduce a novel feature vector representation of tissue classes in same. Finally, we present the classification accuracy, sensitivity and specificity results of our system when performing three tasks: distinguishing between cancer and non-cancer tiles, between low and high-grade cancer and between Gleason grades 3, 4 and 5. Our results show that the novel tissue representation outperforms the morphological features derived from tissue segmentation by a significant margin, but that neither feature sets improve on the accuracy gained by features from low-level texture methods.
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