Partition Markov Model for Covid-19 Virus
Título
Partition Markov Model for Covid-19 Virus
Autor
González-López Verónica Andrea, García Jesús Enrique, Tasca Gustavo Henrique
Descripción
In this paper, we investigate a specific structure within the theoretical framework of Partition Markov Models (PMM) [see García Jesús and González-López, Entropy 19, 160 (2017)]. The structure of interest lies in the formulation of the underlying partition, which defines the process, in which, in addition to a finite memory o associated with the process, a parameter G is introduced, allowing an extra dependence on the past complementing the dependence given by the usual memory o. We show, by simulations, how algorithms designed for the classic version of the PMM can have difficulties in recovering the structure investigated here. This specific structure is efficient for modeling a complete genome sequence, coming from the newly decoded Coronavirus Covid-19 in humans [see Wu et al., Nature 579, 265–269 (2020)]. The sequence profile is represented by 13 units (parts of the state space’s partition), for each of the 13 units, their respective transition probabilities are computed for any element of the genetic alphabet. Also, the structure proposed here allows us to develop a comparison study with other genomic sequences of Coronavirus, collected in the last 25 years, through which we conclude that Covid-19 is shown next to SARS-like Coronaviruses (SL-CoVs) from bats specimens in Zhoushan [see Hu et al., Emerg Microb Infect 7, 1–10 (2018)].
Fecha
2020
Materia
Bayesian information criterion, partition markov models, metric between markov processes
Identificador
10.1051/fopen/2020013
Fuente
Epidemiology and Health
Editor
Korean Society of Epidemiology
Cobertura
Science, Medicine
Colección
Citación
González-López Verónica Andrea, García Jesús Enrique, Tasca Gustavo Henrique, “Partition Markov Model for Covid-19 Virus,” SOCICT Open, consulta 17 de abril de 2026, https://www.socictopen.socict.org/items/show/5980.
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