Dynamic Factor Analysis with Dependent Gaussian Processes for High-Dimensional Gene Expression Trajectories
Jiachen Cai, Robert J. B. Goudie, Colin Starr, Brian D. M. Tom

TL;DR
This paper introduces a Bayesian method using Dependent Gaussian Processes and Sparse Factor Analysis to model high-dimensional gene expression trajectories, capturing pathway interactions and improving prediction accuracy.
Contribution
It is the first to relax the assumption of independent factors in longitudinal data, enhancing pathway trajectory recovery and gene expression prediction.
Findings
Superior performance in recovering pathway trajectories
Improved gene expression prediction accuracy
Demonstrated through simulations and real data
Abstract
The increasing availability of high-dimensional, longitudinal measures of gene expression can facilitate understanding of biological mechanisms, as required for precision medicine. Biological knowledge suggests that it may be best to describe complex diseases at the level of underlying pathways, which may interact with one another. We propose a Bayesian approach that allows for characterising such correlation among different pathways through Dependent Gaussian Processes (DGP) and mapping the observed high-dimensional gene expression trajectories into unobserved low-dimensional pathway expression trajectories via Bayesian Sparse Factor Analysis. Our proposal is the first attempt to relax the classical assumption of independent factors for longitudinal data and has demonstrated a superior performance in recovering the shape of pathway expression trajectories, revealing the relationships…
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Taxonomy
TopicsGene Regulatory Network Analysis · Metabolomics and Mass Spectrometry Studies · Gaussian Processes and Bayesian Inference
