Background The inherent difficulty of identifying and monitoring emerging outbreaks caused by novel pathogens can lead to their rapid spread; and if left unchecked, they may become major public health threats to the planet. The ongoing coronavirus disease (COVID-19) outbreak, which has infected over 2,300,000 individuals and caused over 150,000 deaths, is an example of one of these catastrophic events. Objective We present a timely and novel methodology that combines disease estimates from mechanistic models and digital traces, via interpretable machine learning methodologies, to reliably forecast COVID-19 activity in Chinese provinces in real time. Methods Our method uses the following as inputs: (a) official health reports, (b) COVID-19–related internet search activity, (c) news media activity, and (d) daily forecasts of COVID-19 activity from a metapopulation mechanistic model. Our machine learning methodology uses a clustering technique that enables the exploitation of geospatial synchronicities of COVID-19 activity across Chinese provinces and a data augmentation technique to deal with the small number of historical disease observations characteristic of emerging outbreaks. Results Our model is able to produce stable and accurate forecasts 2 days ahead of the current time and outperforms a collection of baseline models in 27 out of 32 Chinese provinces. Conclusions Our methodology could be easily extended to other geographies currently affected by COVID-19 to aid decision makers with monitoring and possibly prevention.
【저자키워드】 COVID-19, coronavirus, machine learning, Forecasting, Simulation, modeling, digital epidemiology, Precision public health, digital data, Mechanistic model, Hybrid model, modeling disease outbreaks, emerging outbreak, machine learning in public health, hybrid simulation, 【초록키워드】 coronavirus disease, media, Outbreaks, Health, pathogen, outbreak, Clustering, methodology, estimate, characteristic, disease, real time, deaths, observation, individual, Chinese, public health threat, objective, catastrophic, Result, affected, caused, example, events, inherent, baseline, outperform, 【제목키워드】 Model, Digital, novel, estimate, Chinese,