Abstract
Polygenic risk scores (PRS) continue to improve with novel methods and expanding genome-wide association studies. Healthcare and commercial laboratories are increasingly deploying PRS reports to patients, but it is unknown how the classification of high polygenic risk changes across individual PRS. Here, we assessed association and classification performance of cataloged PRS for three complex traits. We chronologically ordered all trait-related publications (Pub n ) and identified the single PRS Best(Pub n ) for each Pub n that had the strongest association with the target outcome. While each Best(Pub n ) demonstrated generally consistent population-level strengths of associations, classification of individuals in the top 10% of each Best(Pub n ) distribution varied widely. Using the PRSmix framework, which integrates information across several PRS to improve prediction, we generate corresponding ChronoAdd(Pub n ) scores for each Pub n that combine all polygenic scores from all publications up to and including Pub n . When compared with Best(Pub n ), ChronoAdd(Pub n ) scores demonstrated more consistent high-risk classification amongst themselves. This integrative scoring approach provides stable and reliable classification of high-risk individuals, and is an adaptable framework into which new scores can be incorporated as they are introduced, integrating easily with current PRS implementation strategies.
Full Text Availability
The license terms selected by the author(s) for this preprint version do not permit archiving in PMC. The full text is available from the preprint server.