| Literature DB >> 31631216 |
Abstract
Identifying biomarkers as surrogates for clinical endpoints in randomized vaccine trials is useful for reducing study duration and costs, relieving participants of unnecessary discomfort, and understanding vaccine-effect mechanism. In this article, we use risk models with multiple vaccine-induced immune response biomarkers to measure the causal association between a vaccine's effects on these biomarkers and that on the clinical endpoint. In this setup, our main objective is to combine and select markers with high surrogacy from a list of many candidate markers, allowing us to get a more parsimonious model which can potentially increase the predictive quality of the true markers. To address the missing "potential" biomarker value if a subject receives placebo, we utilize the baseline immunogenicity predictor design augmented with a "closeout placebo vaccination" group. We then impute the missing potential marker values and conduct marker selection through a stepwise resampling and imputation method called stability selection. We test our proposed strategy under relevant simulation settings and on (partially simulated) biomarker data from a HIV vaccine trial (RV144).Entities:
Keywords: BIP + CPV design; BIP design; Biomarkers; Identifiability; Stability selection
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Year: 2021 PMID: 31631216 PMCID: PMC8035998 DOI: 10.1093/biostatistics/kxz039
Source DB: PubMed Journal: Biostatistics ISSN: 1465-4644 Impact factor: 5.279