Federated Learning is the most promising way to train robust Deep Learning models for the segmentation of Covid-19-related findings in chest CTs. By learning in a decentralized fashion, heterogeneous data can be leveraged from a variety of sources and acquisition protocols whilst ensuring patient privacy. It is, however, crucial to continuously monitor the performance of the model. Yet when it comes to the segmentation of diffuse lung lesions, a quick visual inspection is not enough to assess the quality, and thorough monitoring of all network outputs by expert radiologists is not feasible. In this work, we present an array of lightweight metrics that can be calculated locally in each hospital and then aggregated for central monitoring of a federated system. Our linear model detects over 70% of low-quality segmentations on an out-of-distribution dataset and thus reliably signals a decline in model performance.
翻译:联邦学习组织是培养扎实的深学习模型,将Covid-19相关结果分解成胸腔CT的最有希望的方式。通过分散化学习,可以从各种来源和获取协议中获取不同数据,同时确保患者隐私。然而,持续监测模型的性能至关重要。然而,当涉及到扩散肺损伤的分解时,快速直观检查不足以评估质量,专家放射学家对所有网络产出的彻底监测不可行。在这项工作中,我们展示了一系列轻量级指标,可以在每家医院中本地计算,然后汇总,用于对联邦系统进行中央监测。我们的线性模型检测出70%以上分布外数据集的低质量部分,从而可靠地显示模型性能的下降。