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Statistical integration of heterogeneous omics data: Probabilistic two‐way partial least squares (PO2PLS)

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  • Said el Bouhaddani
  • Hae‐Won Uh
  • Geurt Jongbloed
  • Jeanine Houwing‐Duistermaat

Abstract

The availability of multi‐omics data has revolutionized the life sciences by creating avenues for integrated system‐level approaches. Data integration links the information across datasets to better understand the underlying biological processes. However, high dimensionality, correlations and heterogeneity pose statistical and computational challenges. We propose a general framework, probabilistic two‐way partial least squares (PO2PLS), that addresses these challenges. PO2PLS models the relationship between two datasets using joint and data‐specific latent variables. For maximum likelihood estimation of the parameters, we propose a novel fast EM algorithm and show that the estimator is asymptotically normally distributed. A global test for the relationship between two datasets is proposed, specifically addressing the high dimensionality, and its asymptotic distribution is derived. Notably, several existing data integration methods are special cases of PO2PLS. Via extensive simulations, we show that PO2PLS performs better than alternatives in feature selection and prediction performance. In addition, the asymptotic distribution appears to hold when the sample size is sufficiently large. We illustrate PO2PLS with two examples from commonly used study designs: a large population cohort and a small case–control study. Besides recovering known relationships, PO2PLS also identified novel findings. The methods are implemented in our R‐package PO2PLS.

Suggested Citation

  • Said el Bouhaddani & Hae‐Won Uh & Geurt Jongbloed & Jeanine Houwing‐Duistermaat, 2022. "Statistical integration of heterogeneous omics data: Probabilistic two‐way partial least squares (PO2PLS)," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 71(5), pages 1451-1470, November.
  • Handle: RePEc:bla:jorssc:v:71:y:2022:i:5:p:1451-1470
    DOI: 10.1111/rssc.12583
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    References listed on IDEAS

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    1. Gordan Lauc & Abdelkader Essafi & Jennifer E Huffman & Caroline Hayward & Ana Knežević & Jayesh J Kattla & Ozren Polašek & Olga Gornik & Veronique Vitart & Jodie L Abrahams & Maja Pučić & Mislav Novok, 2010. "Genomics Meets Glycomics—The First GWAS Study of Human N-Glycome Identifies HNF1α as a Master Regulator of Plasma Protein Fucosylation," PLOS Genetics, Public Library of Science, vol. 6(12), pages 1-14, December.
    2. el Bouhaddani, Said & Uh, Hae-Won & Hayward, Caroline & Jongbloed, Geurt & Houwing-Duistermaat, Jeanine, 2018. "Probabilistic partial least squares model: Identifiability, estimation and application," Journal of Multivariate Analysis, Elsevier, vol. 167(C), pages 331-346.
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