Penalized Reduced Rank Regression for Multi‐Outcome Survival Data Supports a Common Metabolic Risk Score for Age‐Related Diseases
Marije H. Sluiskes, Hein Putter, Marian Beekman, Jelle J. Goeman, Mar Rodríguez‐Girondo

TL;DR
This paper introduces a new statistical model to analyze how metabolic factors relate to multiple age-related diseases and mortality using data from 78,553 UK Biobank participants.
Contribution
The novel penalized reduced rank regression model (penalized survRRR) identifies shared factors in multi-outcome survival data.
Findings
A rank 1 model best fits the data, suggesting a single metabolic risk score explains age-related disease susceptibility.
The model uses over 200 metabolic variables to predict seven age-related diseases and mortality.
Penalized survRRR provides insights into the relationship between metabolomics and aging-related health outcomes.
Abstract
The increasing availability of multi‐outcome data in health research presents new opportunities for understanding complex health processes, such as aging. Aging is a multifaceted process, encompassing both lifespan and health span, as well as the onset of age‐related diseases. To model this complexity, we propose the penalized reduced rank regression model for multi‐outcome survival data (penalized survRRR), which identifies shared latent factors driving multiple outcomes. The model imposes a rank constraint on the coefficient matrix to capture underlying mechanisms of aging while accommodating high‐dimensional and correlated predictors and outcomes by introducing penalization. We discuss the statistical properties of this doubly regularized approach and show how the optimal number of ranks can be estimated from the data. We apply a lasso‐penalized reduced rank regression model to…
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Taxonomy
TopicsNutritional Studies and Diet · Nutrition and Health in Aging · Genetic Associations and Epidemiology
