Availability of large, diverse, and multi-national datasets is crucial for the development of effective and clinically applicable AI systems in the medical imaging domain. However, forming a global model by bringing these datasets together at a central location, comes along with various data privacy and ownership problems. To alleviate these problems, several recent studies focus on the federated learning paradigm, a distributed learning approach for decentralized data. Federated learning leverages all the available data without any need for sharing collaborators' data with each other or collecting them on a central server. Studies show that federated learning can provide competitive performance with conventional central training, while having a good generalization capability. In this work, we have investigated several federated learning approaches on the brain tumor segmentation problem. We explore different strategies for faster convergence and better performance which can also work on strong Non-IID cases.
翻译:为了在医疗成像领域发展有效和临床上适用的AI系统,提供大量、多样和多国数据集至关重要。然而,通过将这些数据集集中到一个中心地点,形成全球模式,从而形成一种全球模式,同时存在各种数据隐私和所有权问题。为了缓解这些问题,最近的一些研究侧重于联合学习模式,即分散数据的分散式学习方法。联邦学习利用所有可用数据,而无需彼此分享合作者的数据或在中央服务器上收集这些数据。研究表明,联合学习可以提供具有竞争力的成绩,同时提供常规的中央培训,同时具有良好的普及能力。我们在此工作中调查了有关脑肿瘤分解问题的若干联合学习方法。我们探索了加快趋同和更好业绩的不同战略,这些战略也可以用于处理强大的非IID案件。