Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.

Social contact patterns among individuals encode the transmission route of infectious diseases and are a key ingredient in the realistic characterization and modeling of epidemics. Unfortunately, the gathering of high quality experimental data on contact patterns in human populations is a very diffi...

Full description

Bibliographic Details
Main Authors: Laura Fumanelli, Marco Ajelli, Piero Manfredi, Alessandro Vespignani, Stefano Merler
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3441445?pdf=render
id doaj-ab41e1a767714aa1be0c6d7b245a8514
record_format Article
spelling doaj-ab41e1a767714aa1be0c6d7b245a85142020-11-25T01:12:25ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582012-01-0189e100267310.1371/journal.pcbi.1002673Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.Laura FumanelliMarco AjelliPiero ManfrediAlessandro VespignaniStefano MerlerSocial contact patterns among individuals encode the transmission route of infectious diseases and are a key ingredient in the realistic characterization and modeling of epidemics. Unfortunately, the gathering of high quality experimental data on contact patterns in human populations is a very difficult task even at the coarse level of mixing patterns among age groups. Here we propose an alternative route to the estimation of mixing patterns that relies on the construction of virtual populations parametrized with highly detailed census and demographic data. We present the modeling of the population of 26 European countries and the generation of the corresponding synthetic contact matrices among the population age groups. The method is validated by a detailed comparison with the matrices obtained in six European countries by the most extensive survey study on mixing patterns. The methodology presented here allows a large scale comparison of mixing patterns in Europe, highlighting general common features as well as country-specific differences. We find clear relations between epidemiologically relevant quantities (reproduction number and attack rate) and socio-demographic characteristics of the populations, such as the average age of the population and the duration of primary school cycle. This study provides a numerical approach for the generation of human mixing patterns that can be used to improve the accuracy of mathematical models in the absence of specific experimental data.http://europepmc.org/articles/PMC3441445?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Laura Fumanelli
Marco Ajelli
Piero Manfredi
Alessandro Vespignani
Stefano Merler
spellingShingle Laura Fumanelli
Marco Ajelli
Piero Manfredi
Alessandro Vespignani
Stefano Merler
Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.
PLoS Computational Biology
author_facet Laura Fumanelli
Marco Ajelli
Piero Manfredi
Alessandro Vespignani
Stefano Merler
author_sort Laura Fumanelli
title Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.
title_short Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.
title_full Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.
title_fullStr Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.
title_full_unstemmed Inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.
title_sort inferring the structure of social contacts from demographic data in the analysis of infectious diseases spread.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2012-01-01
description Social contact patterns among individuals encode the transmission route of infectious diseases and are a key ingredient in the realistic characterization and modeling of epidemics. Unfortunately, the gathering of high quality experimental data on contact patterns in human populations is a very difficult task even at the coarse level of mixing patterns among age groups. Here we propose an alternative route to the estimation of mixing patterns that relies on the construction of virtual populations parametrized with highly detailed census and demographic data. We present the modeling of the population of 26 European countries and the generation of the corresponding synthetic contact matrices among the population age groups. The method is validated by a detailed comparison with the matrices obtained in six European countries by the most extensive survey study on mixing patterns. The methodology presented here allows a large scale comparison of mixing patterns in Europe, highlighting general common features as well as country-specific differences. We find clear relations between epidemiologically relevant quantities (reproduction number and attack rate) and socio-demographic characteristics of the populations, such as the average age of the population and the duration of primary school cycle. This study provides a numerical approach for the generation of human mixing patterns that can be used to improve the accuracy of mathematical models in the absence of specific experimental data.
url http://europepmc.org/articles/PMC3441445?pdf=render
work_keys_str_mv AT laurafumanelli inferringthestructureofsocialcontactsfromdemographicdataintheanalysisofinfectiousdiseasesspread
AT marcoajelli inferringthestructureofsocialcontactsfromdemographicdataintheanalysisofinfectiousdiseasesspread
AT pieromanfredi inferringthestructureofsocialcontactsfromdemographicdataintheanalysisofinfectiousdiseasesspread
AT alessandrovespignani inferringthestructureofsocialcontactsfromdemographicdataintheanalysisofinfectiousdiseasesspread
AT stefanomerler inferringthestructureofsocialcontactsfromdemographicdataintheanalysisofinfectiousdiseasesspread
_version_ 1725166461625827328