1. Con-AAE: contrastive cycle adversarial autoencoders for single-cell multi-omics alignment and integration.
- Author
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Wang, Xuesong, Hu, Zhihang, Yu, Tingyang, Wang, Yixuan, Wang, Ruijie, Wei, Yumeng, Shu, Juan, Ma, Jianzhu, and Li, Yu
- Subjects
MULTIOMICS ,RNA sequencing ,NOISE ,MOTIVATION (Psychology) - Abstract
Motivation: We have entered the multi-omics era and can measure cells from different aspects. Hence, we can get a more comprehensive view by integrating or matching data from different spaces corresponding to the same object. However, it is particularly challenging in the single-cell multi-omics scenario because such data are very sparse with extremely high dimensions. Though some techniques can be used to measure scATAC-seq and scRNA-seq simultaneously, the data are usually highly noisy due to the limitations of the experimental environment. Results: To promote single-cell multi-omics research, we overcome the above challenges, proposing a novel framework, contrastive cycle adversarial autoencoders, which can align and integrate single-cell RNA-seq data and single-cell ATAC-seq data. Con-AAE can efficiently map the above data with high sparsity and noise from different spaces to a coordinated subspace, where alignment and integration tasks can be easier. We demonstrate its advantages on several datasets. Availability and implementation: Zenodo link: https://zenodo.org/badge/latestdoi/368779433. github: https://github.com/kakarotcq/Con-AAE. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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