reviewBioData MiningOct 2, 2024GOLD OA

Deep learning-based approaches for multi-omics data integration and analysis

University of Pennsylvania · University of the Sciences · +1 more institution

PubMed
Indexed incrossrefdoajpubmed

Abstract

Background

The rapid growth of deep learning, as well as the vast and ever-growing amount of available data, have provided ample opportunity for advances in fusion and analysis of complex and heterogeneous data types. Different data modalities provide complementary information that can be leveraged to gain a more complete understanding of each subject. In the biomedical domain, multi-omics data includes molecular (genomics, transcriptomics, proteomics, epigenomics, metabolomics, etc.) and imaging (radiomics, pathomics) modalities which, when combined, have the potential to improve performance on prediction, classification, clustering and other tasks. Deep learning encompasses a wide variety of methods, each of which have certain strengths and weaknesses for multi-omics integration. METHOD: In this review, we categorize recent deep learning-based approaches by their basic architectures and discuss their unique capabilities in relation to one another. We also discuss some emerging themes advancing the field of multi-omics integration.

Results

Deep learning-based multi-omics integration methods were categorized broadly into non-generative (feedforward neural networks, graph convolutional neural networks, and autoencoders) and generative (variational methods, generative adversarial models, and a generative pretrained model). Generative methods have the advantage of being able to impose constraints on the shared representations to enforce certain properties or incorporate prior knowledge. They can also be used to generate or impute missing modalities. Recent advances achieved by these methods include the ability to handle incomplete data as well as going beyond the traditional molecular omics data types to integrate other modalities such as imaging data.

Citation impact

175
total citations
FWCI
36.79
Percentile
100%
References
88
Citations per year

Authors

5

Topics & keywords

Keywords
  • Computer science
  • Deep learning
  • Artificial intelligence
  • Data integration
  • Modalities
  • Generative grammar
  • Machine learning
  • Data science
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Funding