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Activity Number: 514 - Advancements in Multi-Omics Integration Techniques
Type: Topic Contributed
Date/Time: Thursday, August 11, 2022 : 8:30 AM to 10:20 AM
Sponsor: Section on Statistics in Epidemiology
Abstract #322367
Title: IntegratedLearner: An Integrated Bayesian Framework for Multi-Omics Prediction and Classification
Author(s): Anupreet Porwal* and Himel Mallick and Erina Paul and Satabdi Saha and Vladimir Svetnik
Companies: University of Washington and Merck Research Laboratories and Merck & Co., Inc. and Michigan State University and Merck Research Labs
Keywords: Biomarker discovery; Multi-omics; Data integration; Bayesian analysis; Ensemble learning; Longitudinal analysis
Abstract:

With the growing commonality of multi-omics datasets, there is now increasing evidence that integrated omics profiles lead to more efficient discovery of clinically actionable biomarkers that enable better disease outcome prediction and patient stratification. Several methods exist to perform host phenotype prediction from cross-sectional, single-omics data modalities but decentralized frameworks that jointly analyze multiple time-dependent omics data to highlight the integrative and dynamic impact of repeatedly measured biomarkers is currently limited. In this article, we propose a novel Bayesian ensemble method to consolidate prediction by borrowing information across several longitudinal and cross-sectional omics data layers. Unlike existing frequentist paradigms, our approach enables uncertainty quantification in prediction as well as interval estimation for a variety of quantities of interest based on posterior summaries. We apply our method to four published multi-omics datasets and demonstrate that it recapitulates known biology in addition to providing novel insights while also outperforming existing methods in estimation, prediction, and uncertainty quantification.


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