Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in Malta

Information about infectious disease outbreaks is often gathered indirectly, from doctor's reports and health board records. It also typically underestimates the actual number of cases, but the relationship between the observed proxies and the numbers that drive the diseases is complicated, non...

Full description

Bibliographic Details
Main Authors: V. Marmara, A. Cook, A. Kleczkowski
Format: Article
Language:English
Published: Elsevier 2014-12-01
Series:Epidemics
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1755436514000590
id doaj-4770bf0c993d4245a5c653bbeb545afc
record_format Article
spelling doaj-4770bf0c993d4245a5c653bbeb545afc2020-11-24T21:47:51ZengElsevierEpidemics1755-43651878-00672014-12-019C526110.1016/j.epidem.2014.09.010Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in MaltaV. Marmara0A. Cook1A. Kleczkowski2University of Stirling, Stirling FK9 4LA, United KingdomNational University of Singapore, Singapore 119246, SingaporeUniversity of Stirling, Stirling FK9 4LA, United KingdomInformation about infectious disease outbreaks is often gathered indirectly, from doctor's reports and health board records. It also typically underestimates the actual number of cases, but the relationship between the observed proxies and the numbers that drive the diseases is complicated, nonlinear and potentially time- and state-dependent. We use a combination of data collection from the 2009–2010 H1N1 outbreak in Malta, compartmental modelling and Bayesian inference to explore the effect of using various sources of information (consultations, doctor's diagnose, swabbing and molecular testing) on estimation of the effective basic reproduction ratio, Rt. Different proxies and different sampling rates (daily and weekly) lead to similar behaviour of Rt as the epidemic unfolds, although individual parameters (force of infection, length of latent and infectious period) vary. We also demonstrate that the relationship between different proxies varies as epidemic progresses, with the first period characterised by high ratio of consultations and influenza diagnoses to actual confirmed cases of H1N1. This has important consequences for modelling that is based on reconstructing influenza cases from doctor's reports.http://www.sciencedirect.com/science/article/pii/S1755436514000590EpidemiologyCompartmental modellingBayesian inferenceMarkov chain methodsReproduction ratio
collection DOAJ
language English
format Article
sources DOAJ
author V. Marmara
A. Cook
A. Kleczkowski
spellingShingle V. Marmara
A. Cook
A. Kleczkowski
Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in Malta
Epidemics
Epidemiology
Compartmental modelling
Bayesian inference
Markov chain methods
Reproduction ratio
author_facet V. Marmara
A. Cook
A. Kleczkowski
author_sort V. Marmara
title Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in Malta
title_short Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in Malta
title_full Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in Malta
title_fullStr Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in Malta
title_full_unstemmed Estimation of force of infection based on different epidemiological proxies: 2009/2010 Influenza epidemic in Malta
title_sort estimation of force of infection based on different epidemiological proxies: 2009/2010 influenza epidemic in malta
publisher Elsevier
series Epidemics
issn 1755-4365
1878-0067
publishDate 2014-12-01
description Information about infectious disease outbreaks is often gathered indirectly, from doctor's reports and health board records. It also typically underestimates the actual number of cases, but the relationship between the observed proxies and the numbers that drive the diseases is complicated, nonlinear and potentially time- and state-dependent. We use a combination of data collection from the 2009–2010 H1N1 outbreak in Malta, compartmental modelling and Bayesian inference to explore the effect of using various sources of information (consultations, doctor's diagnose, swabbing and molecular testing) on estimation of the effective basic reproduction ratio, Rt. Different proxies and different sampling rates (daily and weekly) lead to similar behaviour of Rt as the epidemic unfolds, although individual parameters (force of infection, length of latent and infectious period) vary. We also demonstrate that the relationship between different proxies varies as epidemic progresses, with the first period characterised by high ratio of consultations and influenza diagnoses to actual confirmed cases of H1N1. This has important consequences for modelling that is based on reconstructing influenza cases from doctor's reports.
topic Epidemiology
Compartmental modelling
Bayesian inference
Markov chain methods
Reproduction ratio
url http://www.sciencedirect.com/science/article/pii/S1755436514000590
work_keys_str_mv AT vmarmara estimationofforceofinfectionbasedondifferentepidemiologicalproxies20092010influenzaepidemicinmalta
AT acook estimationofforceofinfectionbasedondifferentepidemiologicalproxies20092010influenzaepidemicinmalta
AT akleczkowski estimationofforceofinfectionbasedondifferentepidemiologicalproxies20092010influenzaepidemicinmalta
_version_ 1725895200690143232