The outbreak of COVID-19 Disease due to the novel coronavirus has caused a shortage of medical resources. To aid and accelerate the diagnosis process, automatic diagnosis of COVID-19 via deep learning models has recently been explored by researchers across the world. While different data-driven deep learning models have been developed to mitigate the diagnosis of COVID-19, the data itself is still scarce due to patient privacy concerns. Federated Learning (FL) is a natural solution because it allows different organizations to cooperatively learn an effective deep learning model without sharing raw data. However, recent studies show that FL still lacks privacy protection and may cause data leakage. We investigate this challenging problem by proposing a simple yet effective algorithm, named \textbf{F}ederated \textbf{L}earning \textbf{o}n Medical Datasets using \textbf{P}artial Networks (FLOP), that shares only a partial model between the server and clients. Extensive experiments on benchmark data and real-world healthcare tasks show that our approach achieves comparable or better performance while reducing the privacy and security risks. Of particular interest, we conduct experiments on the COVID-19 dataset and find that our FLOP algorithm can allow different hospitals to collaboratively and effectively train a partially shared model without sharing local patients' data.
翻译:COVID-19疾病由于新型冠状病毒而爆发,导致医疗资源短缺。为了帮助和加快诊断过程,世界各地研究人员最近探索了通过深学习模型自动诊断COVID-19的自动诊断方法。虽然已经开发了不同数据驱动的深层次学习模型来减轻对COVID-19的诊断,但由于病人隐私问题,数据本身仍然稀缺。联邦学习(FL)是一种自然解决方案,因为它允许不同组织在不分享原始数据的情况下合作学习有效的深层次学习模型。然而,最近的研究表明,FL仍然缺乏隐私保护,并可能导致数据泄漏。我们通过提出简单而有效的算法来调查这个具有挑战性的问题,名为\ textbf{F}F}ederateded leadated slead resultbf{L}Textbf{O}n 医疗数据集, 使用\ textbf{P}artalNetwork (FLOP), 只能分享服务器和客户之间的部分模型。关于基准数据和现实世界保健任务的广泛实验表明,我们的方法在减少隐私和安全风险的同时取得了可比或更好的业绩。 我们特别感兴趣的一个合作性的数据,我们可以进行不同的COVI的实验,我们对不同的实验室进行不同的数据。