DAILY REPORT – APRIL 15
It is expected that the number of cases will continue to grow in the different provinces of Andalusia. The provinces with the highest number of cases will be Seville, Granada and Malaga.
HISTORICAL AND PREDICTION OF INFECTED CASES
PREDICTION OF NEW INFECTED CASES
PEAK UCI ESTIMATION
COMPARISON BETWEEN HEALT PROTOCOLS AND UCI CASES ESTIMATION
If the 9,000 Plan had been maintained, it would probably have been necessary to strengthen the ICUs available in some provinces. This justifies the activation of Plan 15,000 on 8 April, which will allow the Andalusian Health System (SAS) to cover all the cases of infected people foreseen by the mathematical model with sufficient notice and guarantees.
SUMMARY REPORT – APRIL 16
The provinces most infected are Malaga, Seville and Granada. In the following table can be consulted the official data provided by the Regional Government of Andalusia .
PROVINCE | INFECTED | ICU | DEATHS | RECOVERED |
ALMERIA | 428 | 35 | 38 | 90 |
CADIZ | 1,072 | 71 | 68 | 264 |
CORDOBA | 1,247 | 62 | 63 | 301 |
GRANADA | 1,926 | 117 | 187 | 480 |
HUELVA | 337 | 30 | 28 | 73 |
JAEN | 1,201 | 62 | 128 | 252 |
MALAGA | 2,363 | 156 | 211 | 772 |
SEVILLE | 2,2223 | 138 | 189 | 402 |
APPLIED MODEL
SIR MODEL
The SIR (Susceptible-Infected-Recovered) model is a mathematical model commonly used in epidemiology since it is capable of capturing many of the typical characteristics of epidemic outbreaks. The simplicity of this model is based on three assumptions. Firstly, the population is fixed during the analysis. Secondly, there is no any socioeconomic characteristic that could influence in the probability of being infected. Thirdly, there is no inherited immunity.
Monte Carlo Database Generation: In order to obtain a set of SIR models that can be approximated to the real curves, a set of data is generated by altering the model’s β , γ and porcentaje of population variables. In this manner, with a random set of parameters is drawn from a uniform distribution, which is used to develop a unique SIR model that can be identified that correspond to the real curves of the pandemic in the different regions of Andalusia.
Deep Neural Network: The purpose of the development of the DNN is to estimate the optimal parameters for the data of infected people in the different regions of Andalusia. For the development of the DNN, the period between 03/03/2020 and 03/04/2020 was considered as the period in which the growth of infected people in Andalusia was observed.
SIR MODEL MONTE CARLO DATABASE DEEP NEURAL NETWORK
CONTACT INFORMATION
Team:
Pedro Rodríguez Cortés, Head of LOYOLATECH. [email protected]
Nicholas Gregory Baltas, PhD Fellow. [email protected]
Laura Ríos Pena, Senior Research. [email protected]
Francisco A. Prieto, PhD Fellow. [email protected]
Acknowledgements:
M. Frantzi – German Research Center Mosaiques Diagnostics & Therapeutics.
Carlos García – Vice-Rector of Research at Loyola University
Address:
Universidad Loyola Andalucía. Avda. de las Universidades s/n Dos Hermanas, Sevilla, España.
LINKS OF INTEREST
World Health Organization – Latest updates and recommendations
COVID-19 evolution dashboard around the world
Protein Data Bank – Structure of COVID-19 main protease
National Institute of Allergy and Infectious Diseases