公共卫生监测的创新:数据和分析方法的新用途概述。

Heather Rilkoff, Shannon Struck, Chelsea Ziegler, Laura Faye, Dana Paquette, David Buckeridge
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引用次数: 0

摘要

在过去 10 年中,用于公共卫生监测(PHS)的创新数据源和方法发展迅速,这表明有必要对其在现实世界中使用的科学成熟度、可行性和实用性进行更深入的研究。本文概述了公共卫生服务领域的最新创新,包括来自社交媒体、互联网搜索引擎、物联网(IoT)、废水监测、参与式监测、人工智能(AI)和即时预测的数据。已确定的实例表明,新的数据源和分析方法有可能通过改善疾病估计、促进疾病爆发预警以及为公共卫生行动提供更多和/或更及时的信息来加强公共卫生服务。例如,废水监测已重新成为早期检测 2019 年冠状病毒病(COVID-19)和其他病原体的实用工具,人工智能也越来越多地被用于处理大量数字数据。实施新方法所面临的挑战包括缺乏科学成熟度、在现实世界公共卫生环境中实施的实例有限、隐私和安全风险以及对健康公平的影响。改进数据治理、制定使用人工智能技术的明确政策以及发展公共卫生人才队伍是下一步在公共卫生部门推进创新应用的重要步骤。
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Innovations in public health surveillance: An overview of novel use of data and analytic methods.

Innovative data sources and methods for public health surveillance (PHS) have evolved rapidly over the past 10 years, suggesting the need for a closer look at the scientific maturity, feasibility, and utility of use in real-world situations. This article provides an overview of recent innovations in PHS, including data from social media, internet search engines, the Internet of Things (IoT), wastewater surveillance, participatory surveillance, artificial intelligence (AI), and nowcasting. Examples identified suggest that novel data sources and analytic methods have the potential to strengthen PHS by improving disease estimates, promoting early warning for disease outbreaks, and generating additional and/or more timely information for public health action. For example, wastewater surveillance has re-emerged as a practical tool for early detection of the coronavirus disease 2019 (COVID-19) and other pathogens, and AI is increasingly used to process large amounts of digital data. Challenges to implementing novel methods include lack of scientific maturity, limited examples of implementation in real-world public health settings, privacy and security risks, and health equity implications. Improving data governance, developing clear policies for the use of AI technologies, and public health workforce development are important next steps towards advancing the use of innovation in PHS.

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