Variant Specific Treatment Effects with Applications in Vaccine Studies
Pathogens usually exist in heterogeneous variants, like subtypes and strains. Quantifying treatment effects on the different variants is important for guiding prevention policies and treatment development. Here we ground analyses of variant-specific effects on a formal framework for causal inference...
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Zusammenfassung: | Pathogens usually exist in heterogeneous variants, like subtypes and strains.
Quantifying treatment effects on the different variants is important for
guiding prevention policies and treatment development. Here we ground analyses
of variant-specific effects on a formal framework for causal inference. This
allows us to clarify the interpretation of existing methods and define new
estimands. Unlike most of the existing literature, we explicitly consider the
(realistic) setting with interference in the target population: even if
individuals can be sensibly perceived as iid in randomized trial data, there
will often be interference in the target population where treatments, like
vaccines, are rolled out. Thus, one of our contributions is to derive explicit
conditions guaranteeing that commonly reported vaccine efficacy parameters
quantify well-defined causal effects, also in the presence of interference.
Furthermore, our results give alternative justifications for reporting
estimands on the relative, rather than absolute, scale. We illustrate the
findings with an analysis of a large HIV1 vaccine trial, where there is
interest in distinguishing vaccine effects on viruses with different genome
sequences. |
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DOI: | 10.48550/arxiv.2408.07560 |