The performance of deep generative models for learning joint embeddings of single-cell multi-omics data

11Citations
Citations of this article
46Readers
Mendeley users who have this article in their library.
Get full text

Abstract

Recent extensions of single-cell studies to multiple data modalities raise new questions regarding experimental design. For example, the challenge of sparsity in single-omics data might be partly resolved by compensating for missing information across modalities. In particular, deep learning approaches, such as deep generative models (DGMs), can potentially uncover complex patterns via a joint embedding. Yet, this also raises the question of sample size requirements for identifying such patterns from single-cell multi-omics data. Here, we empirically examine the quality of DGM-based integrations for varying sample sizes. We first review the existing literature and give a short overview of deep learning methods for multi-omics integration. Next, we consider eight popular tools in more detail and examine their robustness to different cell numbers, covering two of the most common multi-omics types currently favored. Specifically, we use data featuring simultaneous gene expression measurements at the RNA level and protein abundance measurements for cell surface proteins (CITE-seq), as well as data where chromatin accessibility and RNA expression are measured in thousands of cells (10x Multiome). We examine the ability of the methods to learn joint embeddings based on biological and technical metrics. Finally, we provide recommendations for the design of multi-omics experiments and discuss potential future developments.

References Powered by Scopus

Unpaired Image-to-Image Translation Using Cycle-Consistent Adversarial Networks

14598Citations
N/AReaders
Get full text

Probabilistic topic models

3961Citations
N/AReaders
Get full text

Variational Inference: A Review for Statisticians

3087Citations
N/AReaders
Get full text

Cited by Powered by Scopus

Panpipes: a pipeline for multiomic single-cell and spatial transcriptomic data analysis

3Citations
N/AReaders
Get full text

Leveraging attention-enhanced variational autoencoders: Novel approach for investigating latent space of aptamer sequences

2Citations
N/AReaders
Get full text

Contrastively generative self-expression model for single-cell and spatial multimodal data

2Citations
N/AReaders
Get full text

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Cite

CITATION STYLE

APA

Brombacher, E., Hackenberg, M., Kreutz, C., Binder, H., & Treppner, M. (2022, October 26). The performance of deep generative models for learning joint embeddings of single-cell multi-omics data. Frontiers in Molecular Biosciences. Frontiers Media S.A. https://doi.org/10.3389/fmolb.2022.962644

Readers' Seniority

Tooltip

PhD / Post grad / Masters / Doc 11

48%

Researcher 6

26%

Professor / Associate Prof. 4

17%

Lecturer / Post doc 2

9%

Readers' Discipline

Tooltip

Biochemistry, Genetics and Molecular Bi... 7

32%

Agricultural and Biological Sciences 6

27%

Computer Science 5

23%

Medicine and Dentistry 4

18%

Article Metrics

Tooltip
Mentions
News Mentions: 1

Save time finding and organizing research with Mendeley

Sign up for free