» Articles » PMID: 26822911

Evaluation of O2PLS in Omics Data Integration

Overview
Publisher Biomed Central
Specialty Biology
Date 2016 Jan 30
PMID 26822911
Citations 66
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Rapid computational and technological developments made large amounts of omics data available in different biological levels. It is becoming clear that simultaneous data analysis methods are needed for better interpretation and understanding of the underlying systems biology. Different methods have been proposed for this task, among them Partial Least Squares (PLS) related methods. To also deal with orthogonal variation, systematic variation in the data unrelated to one another, we consider the Two-way Orthogonal PLS (O2PLS): an integrative data analysis method which is capable of modeling systematic variation, while providing more parsimonious models aiding interpretation.

Results: A simulation study to assess the performance of O2PLS showed positive results in both low and higher dimensions. More noise (50 % of the data) only affected the systematic part estimates. A data analysis was conducted using data on metabolomics and transcriptomics from a large Finnish cohort (DILGOM). A previous sequential study, using the same data, showed significant correlations between the Lipo-Leukocyte (LL) module and lipoprotein metabolites. The O2PLS results were in agreement with these findings, identifying almost the same set of co-varying variables. Moreover, our integrative approach identified other associative genes and metabolites, while taking into account systematic variation in the data. Including orthogonal components enhanced overall fit, but the orthogonal variation was difficult to interpret.

Conclusions: Simulations showed that the O2PLS estimates were close to the true parameters in both low and higher dimensions. In the presence of more noise (50 %), the orthogonal part estimates could not distinguish well between joint and unique variation. The joint estimates were not systematically affected. Simultaneous analysis with O2PLS on metabolome and transcriptome data showed that the LL module, together with VLDL and HDL metabolites, were important for the metabolomic and transcriptomic relation. This is in agreement with an earlier study. In addition more gene expression and metabolites are identified being important for the joint covariation.

Citing Articles

Integrative analysis of the transcriptome, proteomics and metabolomics reveals key genes involved in the regulation of breast muscle metabolites in capons.

Ye F, Deng Z, Liu K, Yao X, Zheng W, Yin Q BMC Genomics. 2024; 25(1):1239.

PMID: 39716077 PMC: 11667886. DOI: 10.1186/s12864-024-11142-z.


Low blood S-methyl-5-thioadenosine is associated with postoperative delayed neurocognitive recovery.

Zhang L, Mao H, Zhou R, Zhu J, Wang H, Miao Z Commun Biol. 2024; 7(1):1356.

PMID: 39428444 PMC: 11491466. DOI: 10.1038/s42003-024-07086-5.


Targeted regulation of 5-aminolevulinic acid enhances flavonoids, anthocyanins and proanthocyanidins accumulation in Vitis davidii callus.

Lai C, Zhang J, Lai G, He L, Xu H, Li S BMC Plant Biol. 2024; 24(1):944.

PMID: 39385100 PMC: 11465859. DOI: 10.1186/s12870-024-05667-4.


Metabolomic and Transcriptomic Analyses Reveal the Potential Mechanisms of Dynamic Ovarian Development in Goats during Sexual Maturation.

Wang Y, Chao T, Li Q, He P, Zhang L, Wang J Int J Mol Sci. 2024; 25(18).

PMID: 39337386 PMC: 11432265. DOI: 10.3390/ijms25189898.


Joint modeling of an outcome variable and integrated omics datasets using GLM-PO2PLS.

Gu Z, Uh H, Houwing-Duistermaat J, El Bouhaddani S J Appl Stat. 2024; 51(13):2627-2651.

PMID: 39290359 PMC: 11404385. DOI: 10.1080/02664763.2024.2313458.


References
1.
Lock E, Hoadley K, Marron J, Nobel A . JOINT AND INDIVIDUAL VARIATION EXPLAINED (JIVE) FOR INTEGRATED ANALYSIS OF MULTIPLE DATA TYPES. Ann Appl Stat. 2013; 7(1):523-542. PMC: 3671601. DOI: 10.1214/12-AOAS597. View

2.
Schouteden M, Van Deun K, Wilderjans T, Van Mechelen I . Performing DISCO-SCA to search for distinctive and common information in linked data. Behav Res Methods. 2013; 46(2):576-87. DOI: 10.3758/s13428-013-0374-6. View

3.
Inouye M, Kettunen J, Soininen P, Silander K, Ripatti S, Kumpula L . Metabonomic, transcriptomic, and genomic variation of a population cohort. Mol Syst Biol. 2010; 6:441. PMC: 3018170. DOI: 10.1038/msb.2010.93. View

4.
Inouye M, Silander K, Hamalainen E, Salomaa V, Harald K, Jousilahti P . An immune response network associated with blood lipid levels. PLoS Genet. 2010; 6(9):e1001113. PMC: 2936545. DOI: 10.1371/journal.pgen.1001113. View

5.
Bylesjo M, Eriksson D, Kusano M, Moritz T, Trygg J . Data integration in plant biology: the O2PLS method for combined modeling of transcript and metabolite data. Plant J. 2007; 52(6):1181-91. DOI: 10.1111/j.1365-313X.2007.03293.x. View