Seasonal influenza is a worldwide infectious disease estimated to be the cause of 3 to 5 million cases of severe illness and up to half a million deaths.
It is frequent for hospital emergency rooms and health care centres to become overcrowded during the flu season, placing a high burden both on health services and on patients. A study from Instituto Gulbenkian de Ciencia (IGC; Portugal), led by Joana Goncalves-Sa, presents a new method to identify the onset of the epidemic, anticipating current official alerts by several weeks. This method, combined with the current surveillance system, may help health services to anticipate, prepare, and respond more promptly to the flu peak. This study was now published in the scientific journal PLoS Computational Biology.
‘Seasonal influenza is a worldwide infectious disease estimated to be the cause of 3 to 5 million cases of severe illness and up to half a million deaths every year.’
In Europe, the European Centre for Disease Control weekly reports an estimated number of influenza cases, based on data collected from sentinel medical doctors. Despite being a very efficient surveillance mechanism, this system has known limitations and entails an inevitable delay between the actual onset of the seasonal epidemic and its detection. The method developed by Joana Goncalves-Sa's group tries to overcome some of the official surveillance mechanisms limitations and offers close to real time identification of the flu season onset. It integrates information from different sources, namely the official influenza incidence rates, the close to real-time searches for flu-related terms on Google, and an on-call triage phone service. This information is then used to feed a mathematical and computational model that can identify changes in number of cases, thus signalling the beginning of the epidemic. The research team analysed data from several European countries and used their new method to show that, in at least 8 countries -- Belgium, Czech Republic, Hungary, Italy, Ireland, Norway, Portugal, and Spain- it is possible to anticipate current official alerts by several weeks.
Joana Goncalves-Sa says: "Our method has two main advantages. First, it can be used with a diversity of data sources, some of them close to real-time, reducing sampling biased and delays in detection of the flu season onset. Second, the system is simple and reliable enough to be used by decision-makers. It basically offers a probability that the flu season has already started. When this probability crosses a certain threshold, health services should start preparing for the peak."
Results of this study also show that this system can be used in different countries and, eventually, be applied to other seasonal diseases. The coordinator of the study adds: "We believe that with our method, complementary to the current system, public health services could significantly improve their response and timely respond to the upcoming flu peak. This could be done by anticipating the provision or reinforcement of health professionals and facilities, and by providing better advice to the population. We also found that the on-call triage service has a unique potential that should be further explored: it can become a very efficient and relatively low-cost system to track and anticipate epidemics."
Seasonal influenza is a worldwide infectious disease estimated to be the cause of 3 to 5 million cases of severe illness and up to half a million deaths every year.
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