Bayesian modelling of non–gaussian time series of serve acute respiratory illness.
Date
2019
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Respiratory syncytial virus (RSV), Human metapneumovirus (HMPV) and Influenza are
some of the major causes of acute lower respiratory tract infections (ALRTI) in children.
Children younger than 1 year are the most susceptible to these infections. RSV and influenza
infections occur seasonally in temperate climate regions. We developed statistical models that
were assessed and compared to predict the relationship between weather and RSV incidence
in chapter 2.
Human metapneumovirus (HMPV) have similar symptoms to those caused by
respiratory syncytial virus (RSV). Currently, only a few models satisfactorily capture the
dynamics of time series data of these two viruses. In chapter 3, we used a negative binomial
model to investigate the relationship between RSV and HMPV while adjusting for climatic
factors. In chapter 4, we considered multiple viruses incorporating the time varying effects of
these components.The occurrence of different diseases in time contributes to multivariate
time series data. In this chapter, we describe an approach to analyze multivariate time series
of disease counts and model the contemporaneous relationship between pathogens namely,
RSV, HMPV and Flu. The use of the models described in this study, could help public health
officials predict increases in each pathogen infection incidence among children and help them
prepare and respond more swiftly to increasing incidence in low-resource regions or
communities. We conclude that, preventing and controlling RSV infection subsequently
reduces the incidence of HMPV.
Respiratory syncytial virus (RSV) is one of the major causes of acute lower respiratory tract
infections (ALRTI) in children. Children younger than 1 year are the most susceptible to RSV
infection. RSV infections occur seasonally in temperate climate regions. Based on RSV
surveillance and climatic data, we developed statistical models that were assessed and
compared to predict the relationship between weather and RSV incidence among refugee
children younger than 5 years in Dadaab refugee camp in Kenya. Most time-series analyses
rely on the assumption of Gaussian-distributed data. However, surveillance data often do not
have a Gaussian distribution. We used a generalised linear model (GLM) with a sinusoidal
component over time to account for seasonal variation and extended it to a generalised
additive model (GAM) with smoothing cubic splines. Climatic factors were included as
covariates in the models before and after timescale decompositions, and the results were
compared. Models with decomposed covariates fit RSV incidence data better than those
without. The Poisson GAM with decomposed covariates of climatic factors fit the data well and had a higher explanatory and predictive power than GLM. The best model predicted the
relationship between atmospheric conditions and RSV infection incidence among children
younger than 5 years.
Human metapneumovirus (HMPV) have similar symptoms to those caused by
respiratory syncytial virus (RSV). The modes of transmission and dynamics of these
epidemics still remain poorly understood. Climatic factors have long been suspected to be
implicated in impacting on the number of cases for these epidemics. Currently, only a few
models satisfactorily capture the dynamics of time series data of these two viruses. In this
study, we used a negative binomial model to investigate the relationship between RSV and
HMPV while adjusting for climatic factors. We specifically aimed at establishing the heterogeneity in the autoregressive effect to account for the influence between these viruses.
Our findings showed that RSV contributed to the severity of HMPV. This was achieved
through comparison of 12 models of various structures, including those with and without
interaction between climatic cofactors.
Most models do not consider multiple viruses nor incorporate the time varying effects of these
components. Common ARIs etiologies identified in developing countries include respiratory
syncytial virus (RSV), human metapneumovirus (HMPV), influenza viruses (Flu),
parainfluenza viruses (PIV) and rhinoviruses with mixed co-infections in the respiratory tracts
which make the etiology of Acute Respiratory Illness (ARI) complex. The occurrence of
different diseases in time contributes to multivariate time series data. In this work, the
surveillance data are aggregated by month and are not available at an individual level. This
may lead to over-dispersion; hence the use of the negative binomial distribution. In this paper, we describe an approach to analyze multivariate time series of disease counts. A previously
used model in the literature to address dependence between two different disease pathogens is
extended. We model the contemporaneous relationship between pathogens, namely; RSV,
HMPV and Flu from surveillance data in a refugee camp (Dadaab) for children under 5 years
to investigate for serial correlation. The models evaluate for the presence of heterogeneity in
the autoregressive effect for the different pathogens and whether after adjusting for
seasonality, an epidemic component could be isolated within or between the pathogens. The
model helps in distinguishing between an endemic and epidemic component of the time series
that would allow the separation of the regular pattern from irregularities and outbreaks. The
use of the models described in this study, can help public health officials predict increases in
each pathogen infection incidence among children and help them prepare and respond more
swiftly to increasing incidence in low-resource regions or communities. This knowledge helps public health officials to prepare for, and respond more effectively to increasing RSV incidence in low-resource regions or communities. The study has improved our understanding of the dynamics of RSV and HMPV in relation to climatic cofactors; thereby, setting a
platform to devise better intervention measures to combat the epidemics. We conclude that,
preventing and controlling RSV infection subsequently reduces the incidence of HMPV.
Description
Doctoral Degree. University of KwaZulu-Natal, Pietermaritzburg.