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EagleEye: A Worldwide Disease-Related Topic Extraction System Using a Deep Learning Based Ranking Algorithm and Internet-Sourced Data

机译:EAGLEEYE:使用基于深度学习的排名算法和互联网源数据的全球疾病相关主题提取系统

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摘要

Due to the prevalence of globalization and the surge in people’s traffic, diseases are spreading more rapidly than ever and the risks of sporadic contamination are becoming higher than before. Disease warnings continue to rely on censored data, but these warning systems have failed to cope with the speed of disease proliferation. Due to the risks associated with the problem, there have been many studies on disease outbreak surveillance systems, but existing systems have limitations in monitoring disease-related topics and internationalization. With the advent of online news, social media and search engines, social and web data contain rich unexplored data that can be leveraged to provide accurate, timely disease activities and risks. In this study, we develop an infectious disease surveillance system for extracting information related to emerging diseases from a variety of Internet-sourced data. We also propose an effective deep learning-based data filtering and ranking algorithm. This system provides nation-specific disease outbreak information, disease-related topic ranking, a number of reports per district and disease through various visualization techniques such as a map, graph, chart, correlation and coefficient, and word cloud. Our system provides an automated web-based service, and it is free for all users and live in operation.
机译:由于全球化的普遍性和人们的交通激增,疾病比以往任何时候都更快地蔓延,散发性污染的风险越来越高。疾病警告继续依靠被审查的数据,但这些警告系统未能应对疾病增殖的速度。由于与问题相关的风险,有很多关于疾病爆发监测系统的研究,但现有系统对监测疾病相关的主题和国际化的局限性。随着在线新闻,社交媒体和搜索引擎的出现,社交和Web数据包含丰富的未开发数据,可以利用,以提供准确,及时的疾病活动和风险。在这项研究中,我们开发了一种传染病监测系统,用于提取与各种互联网源数据的新兴疾病相关的信息。我们还提出了一种有效的基于深度学习的数据滤波和排序算法。该系统通过各种可视化技术提供全国特异性疾病爆发信息,疾病相关的主题排名,每种地区和疾病的报告,如地图,图形,图表,相关性和系数,以及Word云。我们的系统提供了自动化的基于Web的服务,并且可以为所有用户提供免费,并在操作中实现。

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