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Use of Twitter data to improve Zika virus surveillance in the United States during the 2016 epidemic

机译:推特数据在2016年流行病中使用Zika病毒监视

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Zika virus (ZIKV) is an emerging mosquito-borne arbovirus that can produce serious public health consequences. In 2016, ZIKV caused an epidemic in many countries around the world, including the United States. ZIKV surveillance and vector control is essential to combating future epidemics. However, challenges relating to the timely publication of case reports significantly limit the effectiveness of current surveillance methods. In many countries with poor infrastructure, established systems for case reporting often do not exist. Previous studies investigating the H1N1 pandemic, general influenza and the recent Ebola outbreak have demonstrated that time- and geo-tagged Twitter data, which is immediately available, can be utilized to overcome these limitations. In this study, we employed a recently developed system called Cloudberry to filter a random sample of Twitter data to investigate the feasibility of using such data for ZIKV epidemic tracking on a national and state (Florida) level. Two auto-regressive models were calibrated using weekly ZIKV case counts and zika tweets in order to estimate weekly ZIKV cases 1 week in advance. While models tended to over-predict at low case counts and under-predict at extreme high counts, a comparison of predicted versus observed weekly ZIKV case counts following model calibration demonstrated overall reasonable predictive accuracy, with an R2 of 0.74 for the Florida model and 0.70 for the U.S. Time-series analysis of predicted and observed ZIKV cases following internal cross-validation exhibited very similar patterns, demonstrating reasonable model performance. Spatially, the distribution of cumulative ZIKV case counts (local- & travel-related) and zika tweets across all 50?U.S. states showed a high correlation (r?=?0.73) after adjusting for population. This study demonstrates the value of utilizing Twitter data for the purposes of disease surveillance. This is of high value to epidemiologist and public health officials charged with protecting the public during future outbreaks.
机译:Zika病毒(ZIKV)是一个新兴的蚊子,可以产生严重的公共卫生后果。 2016年,ZIKV在世界各国在包括美国的许多国家引起了流行病。 ZIKV监控和矢量控制对于打击未来的流行病至关重要。但是,与案例报告及时出版的挑战显着限制了当前监测方法的有效性。在基础设施不良的许多国家,案例报告的建立系统通常不存在。以前的研究调查了H1N1大流行,一般流感和最近的埃博拉疫情已表明,立即可用的时间和地理标记的Twitter数据可以用于克服这些限制。在这项研究中,我们雇用了一个名为Cloudberry的最近开发的系统来过滤Twitter数据的随机样本,以研究在国家和州(佛罗里达州)水平上使用Zikv疫情追踪这些数据的可行性。使用每周ZIKV案例计数和Zika推文进行校准两种自动回归模型,以提前1周估算每周ZIKV案例。虽然在低案例计数和极高计数下进行的模型趋于过度预测,但是预测与观察到的每周ZIKV案例的比较按照模型校准,在模型校准下表现出总体合理的预测精度,佛罗里达州模型的R2为0.74对于预测和观察到的ZIKV病例的美国时间序列分析表现出非常相似的模式,展示了合理的模型性能。在空间上,累积Zikv案例的分布(当地与旅行相关)和Zika推文所有50?U.S。在调整人口后,各种表现出高相关(R?= 0.73)。本研究表明,利用Twitter数据以疾病监测的目的的价值。这对流行病学家和公共卫生官员负责保护公众在未来爆发期间的高价值。

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