Tabesh Ali, Teverovskiy Mikhail, Pang Ho-Yuen, Kumar Vinay P, Verbel David, Kotsianti Angeliki, Saidi Olivier
Aureon Laboratories, Inc., Yonkers, NY 10701, USA.
IEEE Trans Med Imaging. 2007 Oct;26(10):1366-78. doi: 10.1109/TMI.2007.898536.
We present a study of image features for cancer diagnosis and Gleason grading of the histological images of prostate. In diagnosis, the tissue image is classified into the tumor and nontumor classes. In Gleason grading, which characterizes tumor aggressiveness, the image is classified as containing a low- or high-grade tumor. The image sets used in this paper consisted of 367 and 268 color images for the diagnosis and Gleason grading problems, respectively, and were captured from representative areas of hematoxylin and eosin-stained tissue retrieved from tissue microarray cores or whole sections. The primary contribution of this paper is to aggregate color, texture, and morphometric cues at the global and histological object levels for classification. Features representing different visual cues were combined in a supervised learning framework. We compared the performance of Gaussian, k-nearest neighbor, and support vector machine classifiers together with the sequential forward feature selection algorithm. On diagnosis, using a five-fold cross-validation estimate, an accuracy of 96.7% was obtained. On Gleason grading, the achieved accuracy of classification into low- and high-grade classes was 81.0%.
我们展示了一项关于前列腺组织学图像的癌症诊断和 Gleason 分级的图像特征研究。在诊断中,组织图像被分类为肿瘤和非肿瘤类别。在表征肿瘤侵袭性的 Gleason 分级中,图像被分类为包含低级别或高级别肿瘤。本文使用的图像集分别由 367 张和 268 张彩色图像组成,用于诊断和 Gleason 分级问题,这些图像是从组织微阵列芯块或整个切片中获取的苏木精和伊红染色组织的代表性区域采集的。本文的主要贡献在于在全局和组织学对象层面聚合颜色、纹理和形态测量线索以进行分类。在监督学习框架中组合了代表不同视觉线索的特征。我们将高斯、k 近邻和支持向量机分类器的性能与顺序前向特征选择算法进行了比较。在诊断方面,使用五折交叉验证估计,获得了 96.7%的准确率。在 Gleason 分级方面,将图像分类为低级别和高级别类别的准确率为 81.0%。