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Review
. 2021 Feb:88:102580.
doi: 10.1016/j.drugpo.2019.10.006. Epub 2019 Nov 15.

A review of network simulation models of hepatitis C virus and HIV among people who inject drugs

Affiliations
Review

A review of network simulation models of hepatitis C virus and HIV among people who inject drugs

Meghan Bellerose et al. Int J Drug Policy. 2021 Feb.

Abstract

Network modelling is a valuable tool for simulating hepatitis C virus (HCV) and HIV transmission among people who inject drugs (PWID) and assessing the potential impact of treatment and harm-reduction interventions. In this paper, we review literature on network simulation models, highlighting key structural considerations and questions that network models are well suited to address. We describe five approaches (Erdös-Rényi, Stochastic Block, Watts-Strogatz, Barabási-Albert, and Exponential Random Graph Model) used to model partnership formation with emphasis on the strengths of each approach in simulating different features of real-world PWID networks. We also review two important structural considerations when designing or interpreting results from a network simulation study: (1) dynamic vs. static network and (2) injection only vs. both injection and sexual networks. Dynamic network simulations allow partnerships to evolve and disintegrate over time, capturing corresponding shifts in individual and population-level risk behaviour; however, their high level of complexity and reliance on difficult-to-observe data has driven others to develop static network models. Incorporating both sexual and injection partnerships increases model complexity and data demands, but more accurately represents HIV transmission between PWID and their sexual partners who may not also use drugs. Network models add the greatest value when used to investigate how leveraging network structure can maximize the effectiveness of health interventions and optimize investments. For example, network models have shown that features of a given network and epidemic influence whether the greatest community benefit would be achieved by allocating hepatitis C or HIV treatment randomly, versus to those with the most partners. They have also demonstrated the potential for syringe services and "buddy sharing" programs to reduce disease transmission.

Keywords: HIV; Hepatitis C; Network modelling; People who inject drugs; Review.

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Conflict of interest statement

Declaration of Interests The authors declare no conflicts of interest.

Figures

Figure 1.
Figure 1.
Flow diagram of studies assessed for review *Other sources include reference lists of eligible studies and personal databases of collaborators involved in network modelling

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