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Main Authors: Shutta, Katherine H., Scholtens, Denise M., Lowe Jr., William L., Balasubramanian, Raji, De Vito, Roberta
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2210.12837
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author Shutta, Katherine H.
Scholtens, Denise M.
Lowe Jr., William L.
Balasubramanian, Raji
De Vito, Roberta
author_facet Shutta, Katherine H.
Scholtens, Denise M.
Lowe Jr., William L.
Balasubramanian, Raji
De Vito, Roberta
contents Network models are powerful tools for gaining new insights from complex biological data. Most lines of investigation in biology involve comparing datasets in the setting where the same predictors are measured across multiple studies or conditions (multi-study data). Consequently, the development of statistical tools for network modeling of multi-study data is a highly active area of research. Multi-study factor analysis (MSFA) is a method for estimation of latent variables (factors) in multi-study data. In this work, we generalize MSFA by adding the capacity to estimate Gaussian graphical models (GGMs). Our new tool, MSFA-X, is a framework for latent variable-based graphical modeling of shared and study-specific signals in multi-study data. We demonstrate through simulation that MSFA-X can recover shared and study-specific GGMs and outperforms a graphical lasso benchmark. We apply MSFA-X to analyze maternal response to an oral glucose tolerance test in targeted metabolomic profiles from the Hyperglycemia and Adverse Pregnancy Outcomes (HAPO) Study, identifying network-level differences in glucose metabolism between women with and without gestational diabetes mellitus.
format Preprint
id arxiv_https___arxiv_org_abs_2210_12837
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Estimating Gaussian graphical models of multi-study data with Multi-Study Factor Analysis
Shutta, Katherine H.
Scholtens, Denise M.
Lowe Jr., William L.
Balasubramanian, Raji
De Vito, Roberta
Methodology
Network models are powerful tools for gaining new insights from complex biological data. Most lines of investigation in biology involve comparing datasets in the setting where the same predictors are measured across multiple studies or conditions (multi-study data). Consequently, the development of statistical tools for network modeling of multi-study data is a highly active area of research. Multi-study factor analysis (MSFA) is a method for estimation of latent variables (factors) in multi-study data. In this work, we generalize MSFA by adding the capacity to estimate Gaussian graphical models (GGMs). Our new tool, MSFA-X, is a framework for latent variable-based graphical modeling of shared and study-specific signals in multi-study data. We demonstrate through simulation that MSFA-X can recover shared and study-specific GGMs and outperforms a graphical lasso benchmark. We apply MSFA-X to analyze maternal response to an oral glucose tolerance test in targeted metabolomic profiles from the Hyperglycemia and Adverse Pregnancy Outcomes (HAPO) Study, identifying network-level differences in glucose metabolism between women with and without gestational diabetes mellitus.
title Estimating Gaussian graphical models of multi-study data with Multi-Study Factor Analysis
topic Methodology
url https://arxiv.org/abs/2210.12837