Oleg Gaidai , Vladimir Yakimov , Eric-Jan van Loon
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Influenza-type epidemic risks by spatio-temporal Gaidai-Yakimov method
Background
Global public health was recently hampered by reported widespread spread of new coronavirus illness, although morbidity and fatality rates were low. Future coronavirus infection rates may be accurately predicted over a long-time horizon, using novel bio-reliability approach, being especially well suitable for environmental multi-regional health and biological systems. The high regional dimensionality along with cross-correlations between various regional datasets being challenging for conventional statistical tools to manage.
Methods
To assess future risks of epidemiological outbreak in any province of interest, novel spatio-temporal technique has been proposed. In a multicenter, population-based environment, assess raw clinical data using state-of-the-art, cutting-edge statistical methodologies.
Results
Authors have developed novel reliable long-term risk assessment methodology for future coronavirus infection outbreaks.
Conclusions
Based on national clinical patient monitoring raw dataset, it is concluded that although underlying data set data quality is questionable, the proposed method may be still applied.