利用人工智能收集社交媒体,用于绘制医疗威胁地图和分析

Walter David, Michelle King-Okoye, A. Capone, Gianluca Sensidoni, S. Piovan
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引用次数: 0

摘要

摘要2019冠状病毒病大流行暴露了国家和组织在传染病面前的脆弱性,并对许多商业部门造成了破坏性影响。作者已经确定,迫切需要有效地规划未来的威胁,方法是利用新兴技术在战略、业务和地方层面预测、预测和预测行动,从而加强国家和国际反应者的能力。为了做到这一点,我们需要一种方法来提高有关行动者的认识。本研究的目的是调查如何改进医疗智能,从社交媒体、科学文献和其他资源(如当地媒体)中获取大数据,提高态势感知,从而在保护和保护人口免受医疗威胁的背景下做出更明智的决策。本文的重点是利用来自微博服务Twitter的大量非结构化数据来绘制和分析健康和情绪状况。作者通过对GIS地图上的推文进行处理和可视化,在特大城市场景中测试了可解释的人工智能(AI)支持的医疗智能工具。结果表明,可解释的人工智能为测量和跟踪疾病的演变提供了一个有前途的解决方案,以提供健康、情绪和情绪情境感知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harvesting social media with artificial intelligence for medical threats mapping and analytics
Abstract. The COVID-19 pandemic has exposed both national and organizational vulnerabilities to infectious diseases and has impacted, with devastating effects, many business sectors. Authors have identified an urgent need to effectively plan for future threats, by exploiting emerging technologies to forecast, predict and anticipate action at the strategic, operational and local level thus strengthening the capacity of national and international responders. In order to do this, we need an approach to increase awareness of actors involved. The purpose of this study is to investigate how improved medical intelligence, harvesting from big data available from social media, scientific literature and other resources such as local press, can improve situational awareness to take more informed decision in the context of safeguarding and protecting populations from medical threats. This paper focuses on the exploitation of large unstructured data available from microblogging service Twitter for mapping and analytics of health and sentiment situation. Authors tested an explainable artificial intelligence (AI) supported medical intelligence tool on a scenario of a megacity by processing and visualizing tweets on a GIS map. Results indicate that explainable AI provides a promising solution for measuring and tracking the evolution of disease to provide health, sentiment and emotion situational awareness.
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