2021
DOI: 10.1101/2021.01.24.21250406
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On mobility trends analysis of COVID-19 dissemination in Mexico City

Abstract: This work presents a forecast of the spread of the new coronavirus in Mexico City based on a mathematical model with metapopulation structure by using Bayesian Statistics inspired in a data-driven approach. The mobility of humans on a daily basis in Mexico City is mathematically represented by a origin-destination matrix using the open mobility data from Google and a Transportation Mexican Survey. This matrix, is incorporated in a compartmental model. We calibrate the model against borough-level incidence data… Show more

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Cited by 4 publications
(2 citation statements)
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“…I show trace plots, credible intervals, bands projections with medians and a MAP curve (for the t-walk case) and the joint crosstab The model has many implicit assumptions which may be incorrect, e.g., it assumes that the transmission rate is constant and homogeneous through the whole country, which is by far incorrect [34], that is, we can certainly say that every region state in Mexico has its own pandemic, and it is not true that mobility from the North to the South in Mexico is the same as in a specific state of Mexico. A better projection for Mexico City, which has a considerable percentage of coronavirus in the whole country can be found in [69]. Also, the model does not take into account the government interventions, which in each state were announced by a color of the traffic light, red meaning almost all the activities had to be suspended, yellow, some of the activities could reactivate, and green, a considerable percentage of activities could reactivate, depending of each state government.…”
Section: Plos Onementioning
confidence: 99%
“…I show trace plots, credible intervals, bands projections with medians and a MAP curve (for the t-walk case) and the joint crosstab The model has many implicit assumptions which may be incorrect, e.g., it assumes that the transmission rate is constant and homogeneous through the whole country, which is by far incorrect [34], that is, we can certainly say that every region state in Mexico has its own pandemic, and it is not true that mobility from the North to the South in Mexico is the same as in a specific state of Mexico. A better projection for Mexico City, which has a considerable percentage of coronavirus in the whole country can be found in [69]. Also, the model does not take into account the government interventions, which in each state were announced by a color of the traffic light, red meaning almost all the activities had to be suspended, yellow, some of the activities could reactivate, and green, a considerable percentage of activities could reactivate, depending of each state government.…”
Section: Plos Onementioning
confidence: 99%
“…In [20] in 2021 they found a high incidence of comorbidities in deaths that occurred up to August 2020. In and another analysis, [21] in 2021 give predictions on the spread of the pandemic using Bayesian inference. However, as far as we know, there is no study that uses our methodology that has analyzed the Mexican case.…”
Section: Introductionmentioning
confidence: 99%