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感染还是康复?基于社交媒体的传染病检测优化与疫情防控

Infectious or Recovered? Optimizing the Infectious Disease Detection Process for Epidemic Control and Prevention Based on Social Media.

机构信息

School of Economics and Management, Beihang University, Beijing 100191, China.

Beijing Key Laboratory of Emergency Support Simulation Technologies for City Operation, Beijing 100191, China.

出版信息

Int J Environ Res Public Health. 2020 Sep 19;17(18):6853. doi: 10.3390/ijerph17186853.

Abstract

Detecting the period of a disease is of great importance to building information management capacity in disease control and prevention. This paper aims to optimize the disease surveillance process by further identifying the infectious or recovered period of flu cases through social media. Specifically, this paper explores the potential of using public sentiment to detect flu periods at word level. At text level, we constructed a deep learning method to classify the flu period and improve the classification result with sentiment polarity. Three important findings are revealed. Firstly, bloggers in different periods express significantly different sentiments. Blogger sentiments in the recovered period are more positive than in the infectious period when measured by the interclass distance. Secondly, the optimized disease detection process can substantially improve the classification accuracy of flu periods from 0.876 to 0.926. Thirdly, our experimental results confirm that sentiment classification plays a crucial role in accuracy improvement. Precise identification of disease periods enhances the channels for the disease surveillance processes. Therefore, a disease outbreak can be predicted credibly when a larger population is monitored. The research method proposed in our work also provides decision making reference for proactive and effective epidemic control and prevention in real time.

摘要

疾病周期的检测对于构建疾病防控信息管理能力具有重要意义。本研究旨在通过社交媒体进一步识别流感病例的感染期或恢复期,优化疾病监测流程。具体而言,本研究探索了利用公众情绪在单词层面检测流感周期的潜力。在文本层面,我们构建了一种深度学习方法来对流感周期进行分类,并通过情绪极性来提高分类结果。研究揭示了三个重要发现。首先,不同时期的博主表达的情绪显著不同。通过类间距离衡量,恢复期博主的情绪比感染期更为积极。其次,优化后的疾病检测流程可以将流感周期的分类准确率从 0.876 显著提高到 0.926。第三,实验结果证实情绪分类在提高准确性方面发挥了关键作用。准确识别疾病周期增强了疾病监测流程的渠道。因此,当监测更大的人群时,可以可靠地预测疾病爆发。我们工作中提出的研究方法也为实时主动、有效防控疫情提供了决策参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1c74/7559250/53e3178074e5/ijerph-17-06853-g001.jpg

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