Estimating contact network properties by integrating multiple data sources associated with infectious diseases

Author:

Goyal Ravi1ORCID,Carnegie Nicole2,Slipher Sally3,Turk Philip4,Little Susan J.5,De Gruttola Victor6

Affiliation:

1. Division of Infectious Diseases and Global Public University of California San Diego San Diego California USA

2. The Public Health Company Palo Alto California USA

3. Department of Mathematical Sciences Montana State University Bozeman Montana USA

4. Department of Data Science University of Mississippi Medical Center Jackson Mississippi USA

5. Division of Infectious Diseases and Global Public University of California San Diego La Jolla California USA

6. Department of Biostatistics Harvard T.H. Chan School of Public Health Boston Massachusetts USA

Abstract

To effectively mitigate the spread of communicable diseases, it is necessary to understand the interactions that enable disease transmission among individuals in a population; we refer to the set of these interactions as a contact network. The structure of the contact network can have profound effects on both the spread of infectious diseases and the effectiveness of control programs. Therefore, understanding the contact network permits more efficient use of resources. Measuring the structure of the network, however, is a challenging problem. We present a Bayesian approach to integrate multiple data sources associated with the transmission of infectious diseases to more precisely and accurately estimate important properties of the contact network. An important aspect of the approach is the use of the congruence class models for networks. We conduct simulation studies modeling pathogens resembling SARS‐CoV‐2 and HIV to assess the method; subsequently, we apply our approach to HIV data from the University of California San Diego Primary Infection Resource Consortium. Based on simulation studies, we demonstrate that the integration of epidemiological and viral genetic data with risk behavior survey data can lead to large decreases in mean squared error (MSE) in contact network estimates compared to estimates based strictly on risk behavior information. This decrease in MSE is present even in settings where the risk behavior surveys contain measurement error. Through these simulations, we also highlight certain settings where the approach does not improve MSE.

Funder

National Institutes of Health

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

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