Potential reduction in transmission of COVID-19 by digital contact tracing systems

M. Plank, A. James, Audrey Lustig, N. Steyn, Rachelle N. Binny, S. Hendy
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引用次数: 9

Abstract

Digital tools are being developed to support contact tracing as part of the global effort to control the spread of COVID-19. These include smartphone apps, Bluetooth-based proximity detection, location tracking, and automatic exposure notification features. Evidence on the effectiveness of alternative approaches to digital contact tracing is so far limited. We use an age-structured branching process model of the transmission of COVID-19 in different settings to estimate the potential of manual contact tracing and digital tracing systems to help control the epidemic. We investigate the effect of the uptake rate and proportion of contacts recorded by the digital system on key model outputs: the effective reproduction number, the mean outbreak size after 30 days, and the probability of elimination. We show that effective manual contact tracing can reduce the effective reproduction number from 2.4 to around 1.5. The addition of a digital tracing system with a high uptake rate over 75% could further reduce the effective reproduction number to around 1.1. Fully automated digital tracing without manual contact tracing is predicted to be much less effective. We conclude that, for digital tracing systems to make a significant contribution to the control of COVID-19, they need be designed in close conjunction with public health agencies to support and complement manual contact tracing by trained professionals.
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通过数字接触者追踪系统可能减少COVID-19的传播
作为控制COVID-19传播的全球努力的一部分,正在开发数字工具以支持接触者追踪。其中包括智能手机应用程序、基于蓝牙的接近检测、位置跟踪和自动曝光通知功能。迄今为止,关于数字接触者追踪替代方法有效性的证据有限。我们使用不同环境下COVID-19传播的年龄结构分支过程模型来估计人工接触者追踪和数字追踪系统帮助控制疫情的潜力。我们研究了数字系统记录的接触率和比例对关键模型输出的影响:有效繁殖数、30天后的平均爆发规模和消除概率。我们发现,有效的人工接触追踪可以将有效复制数从2.4减少到1.5左右。增加一个吸收率超过75%的数字跟踪系统可以进一步将有效繁殖数降低到1.1左右。没有人工接触跟踪的全自动数字跟踪预计效率会低得多。我们的结论是,要使数字追踪系统为控制COVID-19做出重大贡献,就需要与公共卫生机构密切合作设计这些系统,以支持和补充训练有素的专业人员进行的人工接触者追踪。
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来源期刊
CiteScore
2.20
自引率
0.00%
发文量
15
审稿时长
>12 weeks
期刊介绍: Formerly the IMA Journal of Mathematics Applied in Medicine and Biology. Mathematical Medicine and Biology publishes original articles with a significant mathematical content addressing topics in medicine and biology. Papers exploiting modern developments in applied mathematics are particularly welcome. The biomedical relevance of mathematical models should be demonstrated clearly and validation by comparison against experiment is strongly encouraged. The journal welcomes contributions relevant to any area of the life sciences including: -biomechanics- biophysics- cell biology- developmental biology- ecology and the environment- epidemiology- immunology- infectious diseases- neuroscience- pharmacology- physiology- population biology
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