Dynamic social networks and the implications for the spread of infectious disease

Author:

Read Jonathan M1,Eames Ken T.D12,Edmunds W. John3

Affiliation:

1. Mathematics Institute and Department of Biological Sciences, University of WarwickCoventry CV4 7AL, UK

2. Department of Applied Mathematics and Theoretical Physics, University of CambridgeCambridge CB2 3EJ, UK

3. Statistics, Modelling and Bioinformatics Department, Health Protection Agency Centre for InfectionsLondon NW9 5EQ, UK

Abstract

Understanding the nature of human contact patterns is crucial for predicting the impact of future pandemics and devising effective control measures. However, few studies provide a quantitative description of the aspects of social interactions that are most relevant to disease transmission. Here, we present the results from a detailed diary-based survey of casual (conversational) and close contact (physical) encounters made by a small peer group of 49 adults who recorded 8661 encounters with 3528 different individuals over 14 non-consecutive days. We find that the stability of interactions depends on the intimacy of contact and social context. Casual contact encounters mostly occur in the workplace and are predominantly irregular, while close contact encounters mostly occur at home or in social situations and tend to be more stable. Simulated epidemics of casual contact transmission involve a large number of non-repeated encounters, and the social network is well captured by a random mixing model. However, the stability of the social network should be taken into account for close contact infections. Our findings have implications for the modelling of human epidemics and planning pandemic control policies based on social distancing methods.

Publisher

The Royal Society

Subject

Biomedical Engineering,Biochemistry,Biomaterials,Bioengineering,Biophysics,Biotechnology

Reference28 articles.

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5. Contacts and influence

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