College of IoT Engineering, Hohai University, Changzhou 213022, China.
Department of Computer Engineering, Gachon University, Seongnam-si 13120, Republic of Korea.
Comput Math Methods Med. 2022 Aug 24;2022:7078764. doi: 10.1155/2022/7078764. eCollection 2022.
Due to the high transmission rate and high pathogenicity of the novel coronavirus (COVID-19), there is an urgent need for the diagnosis and treatment of outbreaks around the world. In order to diagnose quickly and accurately, an auxiliary diagnosis method is proposed for COVID-19 based on federated learning and blockchain, which can quickly and effectively enable collaborative model training among multiple medical institutions. It is beneficial to address data sharing difficulties and issues of privacy and security. This research mainly includes the following sectors: in order to address insufficient medical data and the data silos, this paper applies federated learning to COVID-19's medical diagnosis to achieve the transformation and refinement of big data values. With regard to third-party dependence, blockchain technology is introduced to protect sensitive information and safeguard the data rights of medical institutions. To ensure the model's validity and applicability, this paper simulates realistic situations based on a real COVID-19 dataset and analyses problems such as model iteration delays. Experimental results demonstrate that this method achieves a multiparty participation in training and a better data protection and would help medical personnel diagnose coronavirus disease more effectively.
由于新型冠状病毒(COVID-19)的高传播率和高致病性,全球范围内急需对其进行诊断和治疗。为了快速准确地诊断,提出了一种基于联邦学习和区块链的 COVID-19 辅助诊断方法,能够快速有效地实现多个医疗机构之间的协作模型训练。这有利于解决数据共享困难以及隐私和安全问题。本研究主要包括以下几个方面:为了解决医疗数据不足和数据孤岛的问题,本文将联邦学习应用于 COVID-19 的医学诊断中,实现了大数据价值的转化和细化。针对第三方依赖的问题,引入区块链技术来保护敏感信息,维护医疗机构的数据权利。为了确保模型的有效性和适用性,本文基于真实的 COVID-19 数据集模拟了现实情况,并分析了模型迭代延迟等问题。实验结果表明,该方法实现了多方参与训练,并且更好地保护了数据,有助于医务人员更有效地诊断冠状病毒病。