Adaptive sequential surveillance with network and temporal dependence

Author:

Malenica Ivana12ORCID,Coyle Jeremy R3,van der Laan Mark J2,Petersen Maya L2ORCID

Affiliation:

1. Department of Statistics, Harvard University , Cambridge, MA 02138 , United States

2. Division of Biostatistics , Berkeley, CA 94704 , United States

3. Preva Group , Seattle, WA, 98104 , United States

Abstract

Abstract Strategic test allocation is important for control of both emerging and existing pandemics (eg, COVID-19, HIV). It supports effective epidemic control by (1) reducing transmission via identifying cases and (2) tracking outbreak dynamics to inform targeted interventions. However, infectious disease surveillance presents unique statistical challenges. For instance, the true outcome of interest (positive infection status) is often a latent variable. In addition, presence of both network and temporal dependence reduces data to a single observation. In this work, we study an adaptive sequential design, which allows for unspecified dependence among individuals and across time. Our causal parameter is the mean latent outcome we would have obtained, if, starting at time t given the observed past, we had carried out a stochastic intervention that maximizes the outcome under a resource constraint. The key strength of the method is that we do not have to model network and time dependence: a short-term performance Online Super Learner is used to select among dependence models and randomization schemes. The proposed strategy learns the optimal choice of testing over time while adapting to the current state of the outbreak and learning across samples, through time, or both. We demonstrate the superior performance of the proposed strategy in an agent-based simulation modeling a residential university environment during the COVID-19 pandemic.

Funder

National Institute of Allergy and Infectious Diseases

Bill and Melinda Gates Foundation

Publisher

Oxford University Press (OUP)

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