IRCYJul 23, 2020

Providing early indication of regional anomalies in COVID19 case counts in England using search engine queries

arXiv:2007.11821v1
Originality Incremental advance
AI Analysis

This provides a tool for public health officials to plan responses to COVID-19 and potentially other pathogens, though it is incremental as it builds on existing methods for influenza-like illnesses.

The study tackled the problem of early detection of regional COVID-19 outbreaks in England by analyzing search engine queries for symptoms like fever and cough, finding that unexpected rises in these searches could predict future case counts multiplying by 2.5 or more within a week with an AUC of 0.64.

COVID19 was first reported in England at the end of January 2020, and by mid-June over 150,000 cases were reported. We assume that, similarly to influenza-like illnesses, people who suffer from COVID19 may query for their symptoms prior to accessing the medical system (or in lieu of it). Therefore, we analyzed searches to Bing from users in England, identifying cases where unexpected rises in relevant symptom searches occurred at specific areas of the country. Our analysis shows that searches for "fever" and "cough" were the most correlated with future case counts, with searches preceding case counts by 16-17 days. Unexpected rises in search patterns were predictive of future case counts multiplying by 2.5 or more within a week, reaching an Area Under Curve (AUC) of 0.64. Similar rises in mortality were predicted with an AUC of approximately 0.61 at a lead time of 3 weeks. Thus, our metric provided Public Health England with an indication which could be used to plan the response to COVID19 and could possibly be utilized to detect regional anomalies of other pathogens.

Foundations

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