DETERMINISTIC AND STOCHASTIC MODELS OFINFECTIOUS DISEASES; SPECIAL STUDY OF COVID-19, DENGUE INFECTION, AND ZIKA INFECTION
Covid-19 infection and DHF are known as endemic diseases in Indonesia which have affected almost all cities in the country. With the same transmitting vectors for dengue and zika, it is important to understand the potential of zika outbreak in Indonesia. Covid-19 is known as a directly infectious...
Saved in:
Main Author: | |
---|---|
Format: | Dissertations |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/71453 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Covid-19 infection and DHF are known as endemic diseases in Indonesia which
have affected almost all cities in the country. With the same transmitting vectors
for dengue and zika, it is important to understand the potential of zika outbreak in
Indonesia. Covid-19 is known as a directly infectious disease that spread among
humans with a high mortality rate during the world pandemic for the last 2 years.
On the other hand, dengue infection is included in the list of the top ten causes of
death in the world. Zika infection and dengue infection have many similarities, both
diseases are caused by viruses and are spread by mosquitoes of the genus Aedes
from human to human. So far, Zika infection is not a disease with a high mortality
rate, but Zika infection can trigger the Guillain-Barr e Syndrome which is a brain
disorder in adults and affect pregnant women at risk of giving birth to babies with
microcephaly defects.
In this dissertation, models of the spread of Covid-19, dengue infection, and Zika
infection are studied with two approaches, namely deterministic and stochastic. The
first model studies the spread of Covid-19 infection by developing the classic SIR
model into SVEIQR. This model includes factors to prevent the spread of disease,
namely the quarantine program and the vaccine program. In addition, the vaccine
efficacy, the immune period due to the vaccine, and the natural immune period from
Covid-19 infection are also temporary. The spread of Covid-19 was studied using
two models, namely the deterministic model and the stochastic model. Analytically,
two thresholds were obtained from these two models. The basic reproduction ratio
as a deterministic model threshold was calculated using the next-generation matrix
method. Meanwhile, the probability of disease extinction as a threshold for the
CTMC stochastic model was calculated using the branching process. Numerical
simulation shows the occurrence of endemic in the long term with the probability
of disease extinction close to zero for the condition R0 > 1. This model study
shows that vaccination programs and quarantine programs can reduce the number
of new infection cases. In addition, efforts to increase vaccine efficacy are important
things that need attention to deal with endemics that will occur in the long term.
The second model studies the SEIR-SEI epidemic model which is suitable for the spread of dengue infection and Zika infection. In this model, analysis is given
for preventing disease transmission, namely by using mosquito repellent solutions
and fogging programs. This model was developed using two approaches, namely
deterministic and stochastic, where each threshold is the basic reproduction ratio
and the probability of disease extinction. The basic reproduction ratio is obtained
analytically from the spectral radius next generation matrix, while the extinction
probability is obtained analytically from the fixed point of the probability generating
function of the branching process. The results of the model study show
the relationship between the probability of disease extinction and the basic reproduction
ratio. This model study shows that fogging is more effective than the use
of mosquito repellent solutions in terms of decreasing the basic reproduction ratio
and increasing the probability of disease extinction. The third model studies the
coinfection of dengue infection and Zika infection in a population. In this model,
it is assumed that there are two types of infection in one population simultaneously,
namely dengue infection and Zika infection. This model was developed from
the SIR-SI epidemic model with a deterministic approach. In this model, there
are four equilibrium points, where the disease-free equilibrium, dengue boundary
equilibrium, and Zika boundary equilibrium can be calculated explicitly, while the
coinfection point cannot be calculated explicitly. The basic reproduction ratio was
obtained analytically using the next-generation matrix method. In this study, R0
plays an important role in determining the extent of existence and stability of the
four critical points. The complexity of the model limits the analysis of the model,
so the exploration of the stability of coinfection points is carried out numerically
with limited cases. The results showed that in asymmetrical cases, there was a Hopf
bifurcation at the coinfection point and a limit cycle.
|
---|