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改进实时流感监测:利用八个拉丁美洲国家的互联网搜索数据

Improved Real-Time Influenza Surveillance: Using Internet Search Data in Eight Latin American Countries.

作者信息

Clemente Leonardo, Lu Fred, Santillana Mauricio

机构信息

School of Engineering and Sciences, Tecnologico de Monterrey, Monterrey, Mexico.

Computational Health Informatics Program, Boston Children's Hospital, Boston, MA, United States.

出版信息

JMIR Public Health Surveill. 2019 Apr 4;5(2):e12214. doi: 10.2196/12214.

Abstract

BACKGROUND

Novel influenza surveillance systems that leverage Internet-based real-time data sources including Internet search frequencies, social-network information, and crowd-sourced flu surveillance tools have shown improved accuracy over the past few years in data-rich countries like the United States. These systems not only track flu activity accurately, but they also report flu estimates a week or more ahead of the publication of reports produced by healthcare-based systems, such as those implemented and managed by the Centers for Disease Control and Prevention. Previous work has shown that the predictive capabilities of novel flu surveillance systems, like Google Flu Trends (GFT), in developing countries in Latin America have not yet delivered acceptable flu estimates.

OBJECTIVE

The aim of this study was to show that recent methodological improvements on the use of Internet search engine information to track diseases can lead to improved retrospective flu estimates in multiple countries in Latin America.

METHODS

A machine learning-based methodology that uses flu-related Internet search activity and historical information to monitor flu activity, named ARGO (AutoRegression with Google search), was extended to generate flu predictions for 8 Latin American countries (Argentina, Bolivia, Brazil, Chile, Mexico, Paraguay, Peru, and Uruguay) for the time period: January 2012 to December of 2016. These retrospective (out-of-sample) Influenza activity predictions were compared with historically observed flu suspected cases in each country, as reported by Flunet, an influenza surveillance database maintained by the World Health Organization. For a baseline comparison, retrospective (out-of-sample) flu estimates were produced for the same time period using autoregressive models that only leverage historical flu activity information.

RESULTS

Our results show that ARGO-like models' predictive power outperform autoregressive models in 6 out of 8 countries in the 2012-2016 time period. Moreover, ARGO significantly improves on historical flu estimates produced by the now discontinued GFT for the time period of 2012-2015, where GFT information is publicly available.

CONCLUSIONS

We demonstrate here that a self-correcting machine learning method, leveraging Internet-based disease-related search activity and historical flu trends, has the potential to produce reliable and timely flu estimates in multiple Latin American countries. This methodology may prove helpful to local public health officials who design and implement interventions aimed at mitigating the effects of influenza outbreaks. Our methodology generally outperforms both the now-discontinued tool GFT, and autoregressive methodologies that exploit only historical flu activity to produce future disease estimates.

摘要

背景

新型流感监测系统利用基于互联网的实时数据源,包括互联网搜索频率、社交网络信息和众包流感监测工具,在过去几年里,在美国等数据丰富的国家已显示出更高的准确性。这些系统不仅能准确追踪流感活动,而且在基于医疗保健的系统(如美国疾病控制与预防中心实施和管理的系统)发布报告前一周或更早时间就能报告流感预测数据。此前的研究表明,新型流感监测系统,如谷歌流感趋势(GFT),在拉丁美洲发展中国家尚未提供可接受的流感预测数据。

目的

本研究旨在表明,近期在利用互联网搜索引擎信息追踪疾病方面的方法改进能够提高拉丁美洲多个国家流感回顾性预测的准确性。

方法

一种基于机器学习的方法,利用与流感相关的互联网搜索活动和历史信息来监测流感活动,名为ARGO(基于谷歌搜索的自回归),被扩展用于生成2012年1月至2016年12月期间8个拉丁美洲国家(阿根廷、玻利维亚、巴西、智利、墨西哥、巴拉圭、秘鲁和乌拉圭)的流感预测。这些回顾性(样本外)流感活动预测与世界卫生组织维护的流感监测数据库Flunet报告的每个国家历史上观察到的流感疑似病例进行比较。作为基线比较,使用仅利用历史流感活动信息的自回归模型生成同一时期的回顾性(样本外)流感预测。

结果

我们的结果表明,在2012 - 2016年期间,类似ARGO的模型在8个国家中的6个国家的预测能力优于自回归模型。此外,在2012 - 2015年GFT信息公开可用的时间段内,ARGO显著改进了现已停用的GFT生成的历史流感预测。

结论

我们在此证明,一种利用基于互联网的疾病相关搜索活动和历史流感趋势的自校正机器学习方法,有潜力在多个拉丁美洲国家生成可靠且及时的流感预测。这种方法可能对设计和实施旨在减轻流感爆发影响的干预措施的当地公共卫生官员有所帮助。我们的方法总体上优于现已停用的工具GFT以及仅利用历史流感活动来生成未来疾病预测的自回归方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e981/6470460/7847fcf401de/publichealth_v5i2e12214_fig1.jpg

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