Early Detecting of Infectious Disease Outbreaks: AI Potentials for Public Health Systems

Hamidreza Rasouli Panah
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Abstract

The world is increasingly connected through technology, bringing people closer despite vast distances. However, this has led to urbanization, population growth, and a complex global economy. Climate change is also a consequence of our consumerist lifestyle. These changes have also increased the risk of global outbreaks and pandemics (Haileamlak, 2022). Fortunately, technological advancements offer tools such as digital surveillance, data analytics, and Artificial Intelligence (AI) to help manage such crises. AI models excel at analysing large amounts of data quickly, revealing complex trends and patterns beyond human capability (Aleixo et al., 2022; Sylvestre et al., 2022). The objective of this presentation is to introduce a comprehensive framework integrating AI with the public health system to harness its strong analytical capabilities and support the early detection of infectious diseases. The proposed framework involves data collection from various sources, cloud-based or centralized repository data storing and pre-processing, AI model development, and data analysis, resulting in an effective early warning system to inform public health authorities promptly. Integrating AI into the public health system enhances response efforts and swift tackling of challenges for better health outcomes. However, effectively harnessing AI's potential and integrating it into existing systems presents significant challenges, requiring the retention of technical expertise and a comprehensive understanding of AI functionalities among healthcare professionals. Addressing these obstacles is vital for enhancing public health resilience and effectively responding to future outbreaks, as demonstrated during the recent use of AI in the COVID-19 response.
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传染病暴发的早期检测:人工智能在公共卫生系统中的潜力
世界越来越多地通过技术联系在一起,使人们在遥远的地方走得更近。然而,这导致了城市化、人口增长和复杂的全球经济。气候变化也是我们消费主义生活方式的结果。这些变化也增加了全球爆发和大流行的风险(Haileamlak, 2022)。幸运的是,技术进步提供了数字监控、数据分析和人工智能(AI)等工具来帮助管理此类危机。人工智能模型擅长快速分析大量数据,揭示超出人类能力的复杂趋势和模式(Aleixo等人,2022;Sylvestre et al., 2022)。本次演讲的目的是介绍一个将人工智能与公共卫生系统相结合的综合框架,以利用其强大的分析能力并支持传染病的早期发现。拟议的框架涉及从各种来源收集数据、基于云或集中存储库的数据存储和预处理、人工智能模型开发以及数据分析,从而形成一个有效的预警系统,及时通知公共卫生当局。将人工智能纳入公共卫生系统可加强应对工作和迅速应对挑战,以获得更好的卫生结果。然而,有效利用人工智能的潜力并将其集成到现有系统中存在重大挑战,这需要医疗保健专业人员保留技术专业知识并全面了解人工智能功能。正如最近在COVID-19应对中使用人工智能所证明的那样,解决这些障碍对于增强公共卫生复原力和有效应对未来疫情至关重要。
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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