Tambasco Mauro, Magliocco Anthony M
Department of Oncology, University of Calgary and Tom Baker Cancer Centre, Calgary, Alberta, Canada T2N 4N2.
Hum Pathol. 2008 May;39(5):740-6. doi: 10.1016/j.humpath.2007.10.001.
Breast cancer is the leading form of cancer diagnosed in women, and the second leading cause of cancer mortality in this group. A commonly accepted grading system for breast cancer that has proven useful for guiding treatment strategy is the modified Bloom-Richardson system. However, this system is subject to interobserver variability, which can affect patient management and outcome. Hence, there is a need for an independent objective and reproducible breast cancer-grading tool to reduce interobserver variability. In this work, we hypothesized that architectural complexity of epithelial structures increases with decreasing differentiation in ductal carcinoma of the breast. To test this hypothesis, we explored the potential of a computer-based approach using fractal image analysis to quantitatively measure the complexity of breast histology specimens and investigate the relationship between increasing fractal dimension and tumor grade. More specifically, we developed an optimal staining and computational technique to compute the fractal dimensions of breast sections of grades 1, 2, and 3 tumors, assigned by a breast cancer pathologist, and compared the mean fractal dimensions between the tumor grades. We found that significant differences (P < .0005) exist between the mean fractal dimensions corresponding to the 3 tumor grades, and that the mean fractal dimension increases with increasing tumor grade. These results indicate that breast tumor differentiation can be characterized by the degree of architectural complexity of epithelial structures. They also indicate that fractal dimension has potential as an objective, reproducible, and automated measure of architectural complexity that may help reduce interobserver variability in grading.
乳腺癌是女性中诊断出的主要癌症形式,也是该群体中癌症死亡的第二大原因。一种已被证明对指导治疗策略有用的乳腺癌常用分级系统是改良的布卢姆 - 理查森系统。然而,该系统存在观察者间差异,这可能会影响患者管理和治疗结果。因此,需要一种独立、客观且可重复的乳腺癌分级工具来减少观察者间差异。在这项研究中,我们假设乳腺导管癌中上皮结构的结构复杂性随着分化程度的降低而增加。为了验证这一假设,我们探索了一种基于计算机的方法,即使用分形图像分析来定量测量乳腺组织学标本的复杂性,并研究分形维数增加与肿瘤分级之间的关系。更具体地说,我们开发了一种最佳染色和计算技术,以计算由乳腺癌病理学家指定的1级、2级和3级肿瘤乳腺切片的分形维数,并比较不同肿瘤分级之间的平均分形维数。我们发现,对应于这3个肿瘤分级的平均分形维数之间存在显著差异(P <.0005),并且平均分形维数随着肿瘤分级的增加而增加。这些结果表明,乳腺肿瘤的分化可以通过上皮结构的结构复杂程度来表征。它们还表明,分形维数有潜力作为一种客观、可重复且自动化的结构复杂性测量方法,这可能有助于减少分级过程中的观察者间差异。