Univariate-Guided Sparse Regression for Biobank-Scale High-Dimensional -omics Data
By: Joshua Richland , Tuomo Kiiskinen , William Wang and more
Potential Business Impact:
Finds disease risks from your genes better.
We present a scalable framework for computing polygenic risk scores (PRS) in high-dimensional genomic settings using the recently introduced Univariate-Guided Sparse Regression (uniLasso). UniLasso is a two-stage penalized regression procedure that leverages univariate coefficients and magnitudes to stabilize feature selection and enhance interpretability. Building on its theoretical and empirical advantages, we adapt uniLasso for application to the UK Biobank, a population-based repository comprising over one million genetic variants measured on hundreds of thousands of individuals from the United Kingdom. We further extend the framework to incorporate external summary statistics to increase predictive accuracy. Our results demonstrate that the adapted uniLasso attains predictive performance comparable to standard Lasso while selecting substantially fewer variants, yielding sparser and more interpretable models. Moreover, it exhibits superior performance in estimating PRS relative to its competitors, such as PRS-CS. Integrating external scores further improves prediction while maintaining sparsity.
Similar Papers
Penalized Linear Models for Highly Correlated High-Dimensional Immunophenotyping Data
Applications
Finds hidden health clues in complex body data.
Detecting gene-environment interactions to guide personalized intervention: boosting distributional regression for polygenic scores
Applications
Finds who benefits most from medicine or lifestyle changes.
A PLS-Integrated LASSO Method with Application in Index Tracking
Machine Learning (Stat)
Makes predicting stock prices more accurate.