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Main Authors: Ozminkowski, Samuel, Hou, Lifang, Jacobs Jr, David R, Jiang, Hongmei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.30577
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author Ozminkowski, Samuel
Hou, Lifang
Jacobs Jr, David R
Jiang, Hongmei
author_facet Ozminkowski, Samuel
Hou, Lifang
Jacobs Jr, David R
Jiang, Hongmei
contents High-throughput sequencing technologies have enabled the collection of large-scale longitudinal -omics data, providing new opportunities for studying co-expression networks among molecular nodes such as genes and proteins. However, the high dimensionality and temporal dependence inherent in such data require specialized statistical methods. We propose a novel approach to infer dynamic co-expression networks among features over time (DCENt), where each node (feature) is modeled with a mixed-effects model, and dependencies among nodes are captured through correlated random effects. We develop two innovative penalized algorithms which harness the state of the art of threshold covariance estimators to estimate the random-effects covariance structure. Simulation studies show improved performance over existing approaches in terms of both mean square error and mean absolute error. We further apply the methods to data from the CARDIA study to investigate how the protein co-expression networks evolve over time as well as the association between protein trajectory patterns.
format Preprint
id arxiv_https___arxiv_org_abs_2605_30577
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Dynamic Co-Expression Network Estimation via Multivariate Mixed-Effects Models
Ozminkowski, Samuel
Hou, Lifang
Jacobs Jr, David R
Jiang, Hongmei
Methodology
Computation
High-throughput sequencing technologies have enabled the collection of large-scale longitudinal -omics data, providing new opportunities for studying co-expression networks among molecular nodes such as genes and proteins. However, the high dimensionality and temporal dependence inherent in such data require specialized statistical methods. We propose a novel approach to infer dynamic co-expression networks among features over time (DCENt), where each node (feature) is modeled with a mixed-effects model, and dependencies among nodes are captured through correlated random effects. We develop two innovative penalized algorithms which harness the state of the art of threshold covariance estimators to estimate the random-effects covariance structure. Simulation studies show improved performance over existing approaches in terms of both mean square error and mean absolute error. We further apply the methods to data from the CARDIA study to investigate how the protein co-expression networks evolve over time as well as the association between protein trajectory patterns.
title Dynamic Co-Expression Network Estimation via Multivariate Mixed-Effects Models
topic Methodology
Computation
url https://arxiv.org/abs/2605.30577