An Edge Based Framework for Risk Assessment of Communicable Disease

Ruocheng Huang, Yong Li, Wei Feng, Xin Zhang, Tao Shan, Yun Liu
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Abstract

Along with the development of edge computing and Artificial Intelligence (AI), there has been an explosion of health-care system. As COVID-19 spread globally, the pandemic created significant challenges for the global health system. Therefore, we proposed an edge-based framework for risk assessment of communicable disease called CDM-FL. The CDM-FL consists of two modules, the common data model (CDM) and federated learning (FL). The CDM can process and store multi-source heterogeneous data with standardized semantics and schema. This provides more data for model training using medical data globally. The model is deployed on edge nodes that can measure patients' status locally and with low latency. It also keeps patient privacy from being disclosed that patient are more likely to share their medical data. The results based on real-world data show that CDM-FL can help physicians to evaluate the risk of communicable disease as well as save lives during severe epidemic situations.
基于边缘的传染病风险评估框架
随着边缘计算和人工智能(AI)的发展,医疗保健系统出现了爆炸式增长。随着COVID-19在全球蔓延,这场大流行给全球卫生系统带来了重大挑战。因此,我们提出了一个基于边缘的传染病风险评估框架,称为CDM-FL。该模型由公共数据模型(CDM)和联邦学习(FL)两个模块组成。CDM可以使用标准化的语义和模式处理和存储多源异构数据。这为使用全球医疗数据进行模型训练提供了更多数据。该模型部署在边缘节点上,可以本地测量患者的状态,并且具有低延迟。它还可以防止患者隐私被泄露,因为患者更有可能分享他们的医疗数据。基于真实世界数据的结果表明,CDM-FL可以帮助医生评估传染病的风险,并在严重的流行病情况下挽救生命。
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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