论文标题
使用轨迹大数据检测可疑的流行病例
Detecting Suspected Epidemic Cases Using Trajectory Big Data
论文作者
论文摘要
新兴的传染病是对人类健康和全球稳定的存在威胁。新型冠状病毒Covid-19的最近爆发迅速形成了全球大流行,引起了数十万种感染和巨大的经济损失。世卫组织宣布,更精确的措施可以追踪,检测和隔离感染者,是快速遏制爆发的最有效手段。基于大数据和平均场理论提供的轨迹,我们建立了一个汇总的风险平均场,其中包含所有分散风险粒子的信息,通过提出一个名为“雇用风险图”的时空模型。它具有动态的良好空间分辨率和高计算效率,以实现快速更新。然后,我们提出了一个基于雇用风险图的客观个体流行病风险评分模型,名为雇员 - P,并使用它来开发统计推断和机器学习方法来检测可疑的流行病感染者。我们通过应用所提出的方法来研究中国Covid-19的早期爆发,进行数值实验。结果表明,雇用风险图具有捕获全球趋势和流行风险的局部变异性的能力,因此可以应用于国家,省,城市和社区层面以及在医院和医院和医院和车站等特定的高风险地点的流行风险。雇员-P评分似乎是对个人流行风险的有效衡量。当种群感染率低于20 \%时,两种检测方法的准确性都高于90 \%,这表明在预防和控制习惯的流行风险风险中的巨大应用潜力。
Emerging infectious diseases are existential threats to human health and global stability. The recent outbreaks of the novel coronavirus COVID-19 have rapidly formed a global pandemic, causing hundreds of thousands of infections and huge economic loss. The WHO declares that more precise measures to track, detect and isolate infected people are among the most effective means to quickly contain the outbreak. Based on trajectory provided by the big data and the mean field theory, we establish an aggregated risk mean field that contains information of all risk-spreading particles by proposing a spatio-temporal model named HiRES risk map. It has dynamic fine spatial resolution and high computation efficiency enabling fast update. We then propose an objective individual epidemic risk scoring model named HiRES-p based on HiRES risk maps, and use it to develop statistical inference and machine learning methods for detecting suspected epidemic-infected individuals. We conduct numerical experiments by applying the proposed methods to study the early outbreak of COVID-19 in China. Results show that the HiRES risk map has strong ability in capturing global trend and local variability of the epidemic risk, thus can be applied to monitor epidemic risk at country, province, city and community levels, as well as at specific high-risk locations such as hospital and station. HiRES-p score seems to be an effective measurement of personal epidemic risk. The accuracy of both detecting methods are above 90\% when the population infection rate is under 20\%, which indicates great application potential in epidemic risk prevention and control practice.