Statistical Integration of Heterogeneous Omics Data: Probabilistic Two-Way Partial Least Squares (PO2PLS)

Author:

el Bouhaddani Said12,Uh Hae-Won12,Jongbloed Geurt34,Houwing-Duistermaat Jeanine125678

Affiliation:

1. Department of Data Science and Biostatistics , Utrecht , The Netherlands

2. UMC Utrecht , Utrecht , The Netherlands

3. Delft Institute of Applied Mathematics , Delft , The Netherlands

4. TU Delft , Delft , The Netherlands

5. Department of Statistics , Leeds , UK

6. University of Leeds , Leeds , UK

7. Department of Statistical Sciences , Bologna , Italy

8. University of Bologna , Bologna , Italy

Abstract

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.

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

Reference33 articles.

1. A retrospective likelihood approach for efficient integration of multiple omics factors in case-control association studies;Balliu;Genetic Epidemiology,2015

2. Evaluation of O2PLS in omics data integration;el Bouhaddani;BMC Bioinformatics,2016

3. Probabilistic partial least squares model: identifiability, estimation and application;el Bouhaddani;Journal of Multivariate Analysis,2018

4. Integrating omics datasets with the omicsPLS package;el Bouhaddani;BMC Bioinformatics,2018

5. Simultaneous envelopes for multivariate linear regression;Cook;Technometrics,2015

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