Center for Bioimage Informatics, Department of Biomedical Engineering, Carnegie Mellon University, Pittsburgh, Pennsylvania 15213, USA.
Cytometry A. 2010 May;77(5):485-94. doi: 10.1002/cyto.a.20853.
Follicular lesions of the thyroid are traditionally difficult and tedious challenges in diagnostic surgical pathology in part due to lack of obvious discriminatory cytological and microarchitectural features. We describe a computerized method to detect and classify follicular adenoma of the thyroid, follicular carcinoma of the thyroid, and normal thyroid based on the nuclear chromatin distribution from digital images of tissue obtained by routine histological methods. Our method is based on determining whether a set of nuclei, obtained from histological images using automated image segmentation, is most similar to sets of nuclei obtained from normal or diseased tissues. This comparison is performed utilizing numerical features, a support vector machine, and a simple voting strategy. We also describe novel methods to identify unique and defining chromatin patterns pertaining to each class. Unlike previous attempts in detecting and classifying these thyroid lesions using computational imaging, our results show that our method can automatically classify the data pertaining to 10 different human cases with 100% accuracy after blind cross validation using at most 43 nuclei randomly selected from each patient. We conclude that nuclear structure alone contains enough information to automatically classify the normal thyroid, follicular carcinoma, and follicular adenoma, as long as groups of nuclei (instead of individual ones) are used. We also conclude that the distribution of nuclear size and chromatin concentration (how tightly packed it is) seem to be discriminating features between nuclei of follicular adenoma, follicular carcinoma, and normal thyroid.
甲状腺滤泡性病变在诊断外科病理学中一直是一个困难且繁琐的挑战,部分原因是缺乏明显的具有鉴别意义的细胞学和微观结构特征。我们描述了一种基于常规组织学方法获得的组织数字图像的核染色质分布来检测和分类甲状腺滤泡性腺瘤、甲状腺滤泡癌和正常甲状腺的计算机方法。我们的方法基于确定一组从组织学图像中使用自动图像分割获得的核是否与从正常或患病组织中获得的核集最相似。这种比较是使用数值特征、支持向量机和简单的投票策略来完成的。我们还描述了识别与每个类别相关的独特和定义性染色质模式的新方法。与以前使用计算成像检测和分类这些甲状腺病变的尝试不同,我们的结果表明,我们的方法可以在盲交叉验证后,仅使用从每个患者中随机选择的最多 43 个核,自动分类涉及 10 个不同人类病例的 100%的数据。我们得出结论,只要使用核(而不是单个核),核结构本身就包含足够的信息来自动分类正常甲状腺、滤泡癌和滤泡性腺瘤。我们还得出结论,核大小和染色质浓度(其紧密程度)的分布似乎是滤泡性腺瘤、滤泡癌和正常甲状腺之间核的鉴别特征。