Multi-Modal COVID-19 Discovery With Collaborative Federated Learning

Xiaomeng Chen, Yingxia Shao, Zhe Xue, Ziqiang Yu
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引用次数: 9

Abstract

An effective and accurate method of detecting COVID-19 infection is to analyze medical diagnostic images (e.g. CT scans). However, patients’ information is privacy, and it is illegal to share diagnostic images among medical institutions. In this case, a critical issue faced by the model that detects the CT images is lacking enough training images dataset, then the features of COVID-19 cannot be accurately obtained. The data privacy attracts extensive attentions recently and is particularly important for the fast-developing medical institution database and. Considering this point, this paper presents a blockchain federated learning model, which overcomes the burden of centralized collection of large amounts of sensitive data. The model uses a trained model to recognize CT scans, and shares data between hospitals with privacy protection mechanism. This model is able to learn from shared resources or data between different hospital repositories to discover patients with new coronary pneumonia by detecting the computed tomography (CT) images. Finally, we conduct extensive experiments to verify the performance of the model.
基于协同联邦学习的多模式COVID-19发现
分析医学诊断图像(如CT扫描)是检测COVID-19感染的有效而准确的方法。然而,患者的信息属于隐私,医疗机构之间共享诊断图像是违法的。在这种情况下,CT图像检测模型面临的一个关键问题是缺乏足够的训练图像数据集,无法准确获取COVID-19的特征。近年来,数据隐私问题引起了广泛的关注,对于快速发展的医疗机构数据库和数据库来说尤为重要。考虑到这一点,本文提出了一种区块链联邦学习模型,克服了集中收集大量敏感数据的负担。该模型使用经过训练的模型识别CT扫描,并具有隐私保护机制的医院间数据共享。该模型能够从不同医院存储库之间的共享资源或数据中学习,通过检测计算机断层扫描(CT)图像来发现新冠肺炎患者。最后,我们进行了大量的实验来验证模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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