Although deep federated learning has received much attention in recent years, progress has been made mainly in the context of natural images and barely for computational pathology. However, deep federated learning is an opportunity to create datasets that reflect the data diversity of many laboratories. Further, the effort of dataset construction can be divided among many. Unfortunately, existing algorithms cannot be easily applied to computational pathology since previous work presupposes that data distributions of laboratories must be similar. This is an unlikely assumption, mainly since different laboratories have different staining styles. As a solution, we propose BottleGAN, a generative model that can computationally align the staining styles of many laboratories and can be trained in a privacy-preserving manner to foster federated learning in computational pathology. We construct a heterogenic multi-institutional dataset based on the PESO segmentation dataset and improve the IOU by 42\% compared to existing federated learning algorithms. An implementation of BottleGAN is available at https://github.com/MECLabTUDA/BottleGAN
翻译:尽管近些年来,深入联谊学习受到了很多关注,但主要在自然图像方面已取得进展,而且很少用于计算病理学,然而,深入联谊学习是创造反映许多实验室数据多样性的数据集的机会,此外,数据集的构建工作可以分成许多方面,不幸的是,现有的算法无法轻易应用于计算病理学,因为以前的工程假设实验室的数据分配必须相似,这是不太可能的假设,主要因为不同的实验室有不同的污点风格。作为一个解决方案,我们提议采用BottleGAN,这是一个基因化模型,可以计算与许多实验室的污点风格保持一致,并且可以以保密方式进行培训,促进计算病理学中的联邦化学习。我们根据PESO分解数据集建立一个具有遗传性的多机构数据集,并比现有的进化学习算法改进IOU42 ⁇ 。在https://github.com/MECLABTTDA/BottleGAN上可以使用BottleGAN。