SeroTracker-RoB: a decision rule-based algorithm for reproducible risk of bias assessment of seroprevalence studies
<p>Risk of bias (RoB) assessments are a core element of evidence synthesis but can be time consuming and subjective. We aimed to develop a decision rule-based algorithm for RoB assessment of seroprevalence studies. We developed the SeroTracker-RoB algorithm. The algorithm derives seven objecti...
Main Authors: | Bobrovitz, N, Noël, K, Li, Z, Cao, C, Deveaux, G, Selemon, A, Clifton, DA, Yanes-Lane, M, Yan, T, Arora, RK |
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Format: | Journal article |
Language: | English |
Published: |
Wiley
2023
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