Predictive Models for Forecasting Public Health Scenarios: Practical Experiences Applied during the First Wave of the COVID-19 Pandemic
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- @Article{martin-moreno:2022:IJERPH,
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author = "Jose M. Martin-Moreno and Antoni Alegre-Martinez and
Victor Martin-Gorgojo and Jose Luis Alfonso-Sanchez and
Ferran Torres and Vicente Pallares-Carratala",
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title = "Predictive Models for Forecasting Public Health
Scenarios: Practical Experiences Applied during the
First Wave of the {COVID-19} Pandemic",
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journal = "International Journal of Environmental Research and
Public Health",
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year = "2022",
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volume = "19",
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number = "9",
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pages = "Article No. 5546",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "1660-4601",
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URL = "https://www.mdpi.com/1660-4601/19/9/5546",
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DOI = "doi:10.3390/ijerph19095546",
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abstract = "Background: Forecasting the behaviour of epidemic
outbreaks is vital in public health. This makes it
possible to anticipate the planning and organization of
the health system, as well as possible restrictive or
preventive measures. During the COVID-19 pandemic, this
need for prediction has been crucial. This paper
attempts to characterise the alternative models that
were applied in the first wave of this pandemic
context, trying to shed light that could help to
understand them for future practical applications.
Methods: A systematic literature search was performed
in standardized bibliographic repertoires, using
keywords and Boolean operators to refine the findings,
and selecting articles according to the main PRISMA
2020 statement recommendations. Results: After
identifying models used throughout the first wave of
this pandemic (between March and June 2020), we begin
by examining standard data-driven epidemiological
models, including studies applying models such as SIR
(Susceptible-Infected-Recovered), SQUIDER, SEIR,
time-dependent SIR, and other alternatives. For
data-driven methods, we identify experiences using
autoregressive integrated moving average (ARIMA),
evolutionary genetic programming machine learning,
short-term memory (LSTM), and global epidemic and
mobility models. Conclusions: The COVID-19 pandemic has
led to intensive and evolving use of alternative
infectious disease prediction models. At this point it
is not easy to decide which prediction method is the
best in a generic way. Moreover, although models such
as the LSTM emerge as remarkably versatile and useful,
the practical applicability of the alternatives depends
on the specific context of the underlying variable and
on the information of the target to be prioritized. In
addition, the robustness of the assessment is
conditioned by heterogeneity in the quality of
information sources and differences in the
characteristics of disease control interventions.
Further comprehensive comparison of the performance of
models in comparable situations, assessing their
predictive validity, is needed. This will help
determine the most reliable and practical methods for
application in future outbreaks and eventual
pandemics.",
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notes = "also known as \cite{ijerph19095546}",
- }
Genetic Programming entries for
Jose M Martin-Moreno
Antoni Alegre-Martinez
Victor Martin-Gorgojo
Jose Luis Alfonso-Sanchez
Ferran Torres
Vicente Pallares-Carratala
Citations