This manuscript describes the first challenge on Federated Learning, namely the Federated Tumor Segmentation (FeTS) challenge 2021. International challenges have become the standard for validation of biomedical image analysis methods. However, the actual performance of participating (even the winning) algorithms on "real-world" clinical data often remains unclear, as the data included in challenges are usually acquired in very controlled settings at few institutions. The seemingly obvious solution of just collecting increasingly more data from more institutions in such challenges does not scale well due to privacy and ownership hurdles. Towards alleviating these concerns, we are proposing the FeTS challenge 2021 to cater towards both the development and the evaluation of models for the segmentation of intrinsically heterogeneous (in appearance, shape, and histology) brain tumors, namely gliomas. Specifically, the FeTS 2021 challenge uses clinically acquired, multi-institutional magnetic resonance imaging (MRI) scans from the BraTS 2020 challenge, as well as from various remote independent institutions included in the collaborative network of a real-world federation (https://www.fets.ai/). The goals of the FeTS challenge are directly represented by the two included tasks: 1) the identification of the optimal weight aggregation approach towards the training of a consensus model that has gained knowledge via federated learning from multiple geographically distinct institutions, while their data are always retained within each institution, and 2) the federated evaluation of the generalizability of brain tumor segmentation models "in the wild", i.e. on data from institutional distributions that were not part of the training datasets.
翻译:这份手稿描述了联邦学习联合会的第一个挑战,即Federal Tumor sectionation (Fets) 挑战 2021年。国际挑战已经成为生物医学图像分析方法验证的标准,然而,“现实世界”临床数据参与(甚至获胜)算法的实际表现往往仍然不清楚,因为挑战中所包含的数据通常是在少数机构非常受控制的环境下获得的。从更多机构收集更多此类挑战数据似乎显而易见的解决方案由于隐私和所有权障碍而规模不高。为缓解这些关切,我们建议Fets 挑战 2021年既满足生物医学图像分析方法的开发和评价,也满足内在差异(外观、形状和历史学)脑肿瘤分解模型的开发与评价。具体来说,Fets 2021挑战使用临床获得的多机构磁共振动成像(MRI) 扫描了更多机构在此类挑战中收集的数据,以及来自现实世界联合会协作网络(http://www.fetts.ai/) 的远程独立机构提出了挑战。FetS 2021年的模型在结构结构分类分析方面的目标不是直接体现其结构结构结构结构结构结构分析的双重数据,而通过统计分析的每个数据都包括了一种不同的统计数据。