Epidemics (Mar 2019)

Transmission on empirical dynamic contact networks is influenced by data processing decisions

  • Daniel E. Dawson,
  • Trevor S. Farthing,
  • Michael W. Sanderson,
  • Cristina Lanzas

Journal volume & issue
Vol. 26
pp. 32 – 42

Abstract

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Dynamic contact data can be used to inform disease transmission models, providing insight into the dynamics of infectious diseases. Such data often requires extensive processing for use in models or analysis. Therefore, processing decisions can potentially influence the topology of the contact network and the simulated disease transmission dynamics on the network. In this study, we examine how four processing decisions, including temporal sampling window (TSW), spatial threshold of contact (SpTh), minimum contact duration (MCD), and temporal aggregation (daily or hourly) influence the information content of contact data (indicated by changes in entropy) as well as disease transmission model dynamics. We found that changes made to information content by processing decisions translated to significant impacts to the transmission dynamics of disease models using the contact data. In particular, we found that SpTh had the largest independent influence on information content, and that some output metrics (R0, time to peak infection) were more sensitive to changes in information than others (epidemic extent). These findings suggest that insights gained from transmission modeling using dynamic contact data can be influenced by processing decisions alone, emphasizing the need to carefully consideration them prior to using contact-based models to conduct analyses, compare different datasets, or inform policy decisions. Keywords: Dynamic contact data, Data processing, Entropy, Contact networks, Transmission dynamics, Disease transmission model