Clinical binary end-point traits are often governed by quantitative precursors. Hence it may be a prudent strategy to analyze a clinical end-point trait by considering a multivariate phenotype vector, possibly including both quantitative and qualitative phenotypes. A major statistical challenge lies in integrating the constituent phenotypes into a reduced univariate phenotype for association analyses. We assess the performances of certain reduced phenotypes using analysis of variance and a model-free quantile-based approach. We find that analysis of variance is more powerful than the quantile-based approach in detecting association, particularly for rare variants. We also find that using a principal component of the quantitative phenotypes and the residual of a logistic regression of the binary phenotype on the quantitative phenotypes may be an optimal method for integrating a binary phenotype with quantitative phenotypes to define a reduced univariate phenotype.
CITATION STYLE
Mukhopadhyay, I., Saha, S., & Ghosh, S. (2011). Integrating binary traits with quantitative phenotypes for association mapping of multivariate phenotypes. BMC Proceedings, 5(S9). https://doi.org/10.1186/1753-6561-5-s9-s73
Mendeley helps you to discover research relevant for your work.