Romo-Bucheli David, Janowczyk Andrew, Gilmore Hannah, Romero Eduardo, Madabhushi Anant
Engineering Faculty, Universidad Nacional de Colombia, Bogotá, DC, Colombia.
Biomedical Engineering Department, Case Western Reserve University, Cleveland, Ohio.
Cytometry A. 2017 Jun;91(6):566-573. doi: 10.1002/cyto.a.23065. Epub 2017 Feb 13.
The treatment and management of early stage estrogen receptor positive (ER+) breast cancer is hindered by the difficulty in identifying patients who require adjuvant chemotherapy in contrast to those that will respond to hormonal therapy. To distinguish between the more and less aggressive breast tumors, which is a fundamental criterion for the selection of an appropriate treatment plan, Oncotype DX (ODX) and other gene expression tests are typically employed. While informative, these gene expression tests are expensive, tissue destructive, and require specialized facilities. Bloom-Richardson (BR) grade, the common scheme employed in breast cancer grading, has been shown to be correlated with the Oncotype DX risk score. Unfortunately, studies have also shown that the BR grade determined experiences notable inter-observer variability. One of the constituent categories in BR grading is the mitotic index. The goal of this study was to develop a deep learning (DL) classifier to identify mitotic figures from whole slides images of ER+ breast cancer, the hypothesis being that the number of mitoses identified by the DL classifier would correlate with the corresponding Oncotype DX risk categories. The mitosis detector yielded an average F-score of 0.556 in the AMIDA mitosis dataset using a 6-fold validation setup. For a cohort of 174 whole slide images with early stage ER+ breast cancer for which the corresponding Oncotype DX score was available, the distributions of the number of mitoses identified by the DL classifier was found to be significantly different between the high vs low Oncotype DX risk groups (P < 0.01). Comparisons of other risk groups, using both ODX score and histological grade, were also found to present significantly different automated mitoses distributions. Additionally, a support vector machine classifier trained to separate low/high Oncotype DX risk categories using the mitotic count determined by the DL classifier yielded a 83.19% classification accuracy. © 2017 International Society for Advancement of Cytometry.
与那些对激素疗法有反应的患者相比,早期雌激素受体阳性(ER+)乳腺癌的治疗和管理因难以识别需要辅助化疗的患者而受到阻碍。为了区分侵袭性较强和较弱的乳腺肿瘤(这是选择合适治疗方案的基本标准),通常采用Oncotype DX(ODX)和其他基因表达检测方法。虽然这些基因表达检测方法提供了有用信息,但它们价格昂贵、具有组织破坏性且需要专门的设备。Bloom-Richardson(BR)分级是乳腺癌分级中常用的方案,已被证明与Oncotype DX风险评分相关。不幸的是,研究还表明,所确定的BR分级在观察者之间存在显著的变异性。BR分级中的一个组成类别是有丝分裂指数。本研究的目的是开发一种深度学习(DL)分类器,从ER+乳腺癌的全切片图像中识别有丝分裂图,假设是DL分类器识别的有丝分裂数量将与相应的Oncotype DX风险类别相关。在AMIDA有丝分裂数据集中,使用6倍交叉验证设置,有丝分裂检测器的平均F分数为0.556。对于一组174张具有早期ER+乳腺癌的全切片图像,其对应的Oncotype DX评分可用,发现DL分类器识别的有丝分裂数量在高Oncotype DX风险组和低Oncotype DX风险组之间分布显著不同(P < 0.01)。使用ODX评分和组织学分级对其他风险组进行比较,也发现自动有丝分裂分布存在显著差异。此外,使用DL分类器确定的有丝分裂计数训练的支持向量机分类器来区分低/高Oncotype DX风险类别,其分类准确率为83.19%。© 2017国际细胞计量学促进协会。