Conde-Sousa Eduardo, Vale João, Feng Ming, Xu Kele, Wang Yin, Della Mea Vincenzo, La Barbera David, Montahaei Ehsan, Baghshah Mahdieh, Turzynski Andreas, Gildenblat Jacob, Klaiman Eldad, Hong Yiyu, Aresta Guilherme, Araújo Teresa, Aguiar Paulo, Eloy Catarina, Polónia Antonio
I3S-Instituto de Investigação e Inovação em Saúde, Universidade Do Porto, 4200-135 Porto, Portugal.
INEB-Instituto de Engenharia Biomédica, Universidade Do Porto, 4200-135 Porto, Portugal.
J Imaging. 2022 Jul 31;8(8):213. doi: 10.3390/jimaging8080213.
Breast cancer is the most common malignancy in women worldwide, and is responsible for more than half a million deaths each year. The appropriate therapy depends on the evaluation of the expression of various biomarkers, such as the human epidermal growth factor receptor 2 (HER2) transmembrane protein, through specialized techniques, such as immunohistochemistry or in situ hybridization. In this work, we present the HER2 on hematoxylin and eosin (HEROHE) challenge, a parallel event of the 16th European Congress on Digital Pathology, which aimed to predict the HER2 status in breast cancer based only on hematoxylin-eosin-stained tissue samples, thus avoiding specialized techniques. The challenge consisted of a large, annotated, whole-slide images dataset (509), specifically collected for the challenge. Models for predicting HER2 status were presented by 21 teams worldwide. The best-performing models are presented by detailing the network architectures and key parameters. Methods are compared and approaches, core methodologies, and software choices contrasted. Different evaluation metrics are discussed, as well as the performance of the presented models for each of these metrics. Potential differences in ranking that would result from different choices of evaluation metrics highlight the need for careful consideration at the time of their selection, as the results show that some metrics may misrepresent the true potential of a model to solve the problem for which it was developed. The HEROHE dataset remains publicly available to promote advances in the field of computational pathology.
乳腺癌是全球女性中最常见的恶性肿瘤,每年导致超过50万人死亡。合适的治疗方法取决于通过免疫组织化学或原位杂交等专业技术对各种生物标志物的表达进行评估,例如人类表皮生长因子受体2(HER2)跨膜蛋白。在这项工作中,我们介绍了苏木精和伊红染色下的HER2(HEROHE)挑战赛,这是第16届欧洲数字病理学大会的一个并行活动,其目的是仅基于苏木精 - 伊红染色的组织样本预测乳腺癌中的HER2状态,从而避免使用专业技术。该挑战赛包括一个专门为此次挑战赛收集的大型、带注释的全切片图像数据集(509个)。来自全球21个团队展示了预测HER2状态的模型。通过详细介绍网络架构和关键参数展示了表现最佳的模型。对方法进行了比较,并对比了方法、核心方法和软件选择。讨论了不同的评估指标,以及所展示模型在每个指标上的性能。不同评估指标选择导致的排名潜在差异凸显了在选择时需要仔细考虑,因为结果表明某些指标可能会误判模型解决其开发目的问题的真正潜力。HEROHE数据集仍然公开可用,以促进计算病理学领域的进展。