English

Accelerating Bayesian inference of dependency between complex biological traits

Methodology 2022-09-09 v3 Populations and Evolution Computation

Abstract

Inferring dependencies between complex biological traits while accounting for evolutionary relationships between specimens is of great scientific interest yet remains infeasible when trait and specimen counts grow large. The state-of-the-art approach uses a phylogenetic multivariate probit model to accommodate binary and continuous traits via a latent variable framework, and utilizes an efficient bouncy particle sampler (BPS) to tackle the computational bottleneck -- integrating many latent variables from a high-dimensional truncated normal distribution. This approach breaks down as the number of specimens grows and fails to reliably characterize conditional dependencies between traits. Here, we propose an inference pipeline for phylogenetic probit models that greatly outperforms BPS. The novelty lies in 1) a combination of the recent Zigzag Hamiltonian Monte Carlo (Zigzag-HMC) with linear-time gradient evaluations and 2) a joint sampling scheme for highly correlated latent variables and correlation matrix elements. In an application exploring HIV-1 evolution from 535 viruses, the inference requires joint sampling from an 11,235-dimensional truncated normal and a 24-dimensional covariance matrix. Our method yields a 5-fold speedup compared to BPS and makes it possible to learn partial correlations between candidate viral mutations and virulence. Computational speedup now enables us to tackle even larger problems: we study the evolution of influenza H1N1 glycosylations on around 900 viruses. For broader applicability, we extend the phylogenetic probit model to incorporate categorical traits, and demonstrate its use to study Aquilegia flower and pollinator co-evolution.

Keywords

Cite

@article{arxiv.2201.07291,
  title  = {Accelerating Bayesian inference of dependency between complex biological traits},
  author = {Zhenyu Zhang and Akihiko Nishimura and Nídia S. Trovão and Joshua L. Cherry and Andrew J. Holbrook and Xiang Ji and Philippe Lemey and Marc A. Suchard},
  journal= {arXiv preprint arXiv:2201.07291},
  year   = {2022}
}

Comments

39 pages, 5 figures, 3 tables

R2 v1 2026-06-24T08:54:30.788Z