Acute stress reduces population-level metabolic and proteomic variation

Abstract Background Variation in omics data due to intrinsic biological stochasticity is often viewed as a challenging and undesirable feature of complex systems analyses. In fact, numerous statistical methods are utilized to minimize the variation among biological replicates. Results We demonstrate...

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Published in:BMC Bioinformatics
Main Authors: Katherine F. Steward, Mohammed Refai, William E. Dyer, Valérie Copié, Jennifer Lachowiec, Brian Bothner
Format: Article
Language:English
Published: BMC 2023-03-01
Subjects:
Online Access:https://doi.org/10.1186/s12859-023-05185-4
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author Katherine F. Steward
Mohammed Refai
William E. Dyer
Valérie Copié
Jennifer Lachowiec
Brian Bothner
author_facet Katherine F. Steward
Mohammed Refai
William E. Dyer
Valérie Copié
Jennifer Lachowiec
Brian Bothner
author_sort Katherine F. Steward
collection DOAJ
container_title BMC Bioinformatics
description Abstract Background Variation in omics data due to intrinsic biological stochasticity is often viewed as a challenging and undesirable feature of complex systems analyses. In fact, numerous statistical methods are utilized to minimize the variation among biological replicates. Results We demonstrate that the common statistics relative standard deviation (RSD) and coefficient of variation (CV), which are often used for quality control or part of a larger pipeline in omics analyses, can also be used as a metric of a physiological stress response. Using an approach we term Replicate Variation Analysis (RVA), we demonstrate that acute physiological stress leads to feature-wide canalization of CV profiles of metabolomes and proteomes across biological replicates. Canalization is the repression of variation between replicates, which increases phenotypic similarity. Multiple in-house mass spectrometry omics datasets in addition to publicly available data were analyzed to assess changes in CV profiles in plants, animals, and microorganisms. In addition, proteomics data sets were evaluated utilizing RVA to identify functionality of reduced CV proteins. Conclusions RVA provides a foundation for understanding omics level shifts that occur in response to cellular stress. This approach to data analysis helps characterize stress response and recovery, and could be deployed to detect populations under stress, monitor health status, and conduct environmental monitoring.
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spelling doaj-art-8e83f0cf2c2d488c842c3e0e09c5fc712025-08-19T22:21:03ZengBMCBMC Bioinformatics1471-21052023-03-0124111610.1186/s12859-023-05185-4Acute stress reduces population-level metabolic and proteomic variationKatherine F. Steward0Mohammed Refai1William E. Dyer2Valérie Copié3Jennifer Lachowiec4Brian Bothner5Department of Chemistry and Biochemistry, Montana State UniversityDepartment of Chemistry and Biochemistry, Montana State UniversityDepartment of Chemistry and Biochemistry, Montana State UniversityDepartment of Chemistry and Biochemistry, Montana State UniversityDepartment of Plant Sciences and Plant Pathology, Montana State UniversityDepartment of Chemistry and Biochemistry, Montana State UniversityAbstract Background Variation in omics data due to intrinsic biological stochasticity is often viewed as a challenging and undesirable feature of complex systems analyses. In fact, numerous statistical methods are utilized to minimize the variation among biological replicates. Results We demonstrate that the common statistics relative standard deviation (RSD) and coefficient of variation (CV), which are often used for quality control or part of a larger pipeline in omics analyses, can also be used as a metric of a physiological stress response. Using an approach we term Replicate Variation Analysis (RVA), we demonstrate that acute physiological stress leads to feature-wide canalization of CV profiles of metabolomes and proteomes across biological replicates. Canalization is the repression of variation between replicates, which increases phenotypic similarity. Multiple in-house mass spectrometry omics datasets in addition to publicly available data were analyzed to assess changes in CV profiles in plants, animals, and microorganisms. In addition, proteomics data sets were evaluated utilizing RVA to identify functionality of reduced CV proteins. Conclusions RVA provides a foundation for understanding omics level shifts that occur in response to cellular stress. This approach to data analysis helps characterize stress response and recovery, and could be deployed to detect populations under stress, monitor health status, and conduct environmental monitoring.https://doi.org/10.1186/s12859-023-05185-4ProteomicsMetabolomicsCellular stressCanalization
spellingShingle Katherine F. Steward
Mohammed Refai
William E. Dyer
Valérie Copié
Jennifer Lachowiec
Brian Bothner
Acute stress reduces population-level metabolic and proteomic variation
Proteomics
Metabolomics
Cellular stress
Canalization
title Acute stress reduces population-level metabolic and proteomic variation
title_full Acute stress reduces population-level metabolic and proteomic variation
title_fullStr Acute stress reduces population-level metabolic and proteomic variation
title_full_unstemmed Acute stress reduces population-level metabolic and proteomic variation
title_short Acute stress reduces population-level metabolic and proteomic variation
title_sort acute stress reduces population level metabolic and proteomic variation
topic Proteomics
Metabolomics
Cellular stress
Canalization
url https://doi.org/10.1186/s12859-023-05185-4
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