Leveraging contact network structure in the design of cluster randomized trials
Authored by Rui Wang, Guy Harling, Jukka-Pekka Onnela, Gruttola Victor De
Date Published: 2017
DOI: 10.1177/1740774516673355
Sponsors:
United States National Institutes of Health (NIH)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Model Code URLs:
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Abstract
Background: In settings like the Ebola epidemic, where
proof-of-principle trials have provided evidence of efficacy but
questions remain about the effectiveness of different possible modes of
implementation, it may be useful to conduct trials that not only
generate information about intervention effects but also themselves
provide public health benefit. Cluster randomized trials are of
particular value for infectious disease prevention research by virtue of
their ability to capture both direct and indirect effects of
intervention, the latter of which depends heavily on the nature of
contact networks within and across clusters. By leveraging information
about these networksin particular the degree of connection across
randomized units, which can be obtained at study baselinewe propose a
novel class of connectivity-informed cluster trial designs that aim both
to improve public health impact (speed of epidemic control) and to
preserve the ability to detect intervention effects.
Methods: We several designs for cluster randomized trials with staggered
enrollment, in each of which the order of enrollment is based on the
total number of ties (contacts) from individuals within a cluster to
individuals in other clusters. Our designs can accommodate connectivity
based either on the total number of external connections at baseline or
on connections only to areas yet to receive the intervention. We further
consider a holdback version of the designs in which control clusters are
held back from re-randomization for some time interval. We investigate
the performance of these designs in terms of epidemic control outcomes
(time to end of epidemic and cumulative incidence) and power to detect
intervention effect, by simulating vaccination trials during an
SEIR-type epidemic outbreak using a network-structured agent-based
model. We compare results to those of a traditional Stepped Wedge trial.
Results: In our simulation studies, connectivity-informed designs lead
to a 20\% reduction in cumulative incidence compared to comparable
traditional study designs, but have little impact on epidemic length.
Power to detect intervention effect is reduced in all
connectivity-informed designs, but holdback versions provide power that
is very close to that of a traditional Stepped Wedge approach.
Conclusion: Incorporating information about cluster connectivity in the
design of cluster randomized trials can increase their public health
impact, especially in acute outbreak settings. Using this information
helps control outbreaksby minimizing the number of cross-cluster
infectionswith very modest cost in terms of power to detect
effectiveness.
Tags
Network
Power
disease
Vaccination
Interventions
Efficacy
Vaccine
Ebola
Cluster randomized trial
Epidemic control