Litcius/Paper detail

scGMAAE: Gaussian mixture adversarial autoencoders for diversification analysis of scRNA-seq data

Haiyun Wang, Jianping Zhao, Chun-Hou Zheng, Yansen Su

2023Briefings in Bioinformatics19 citationsDOIOpen Access PDF

Abstract

The progress of single-cell RNA sequencing (scRNA-seq) has led to a large number of scRNA-seq data, which are widely used in biomedical research. The noise in the raw data and tens of thousands of genes pose a challenge to capture the real structure and effective information of scRNA-seq data. Most of the existing single-cell analysis methods assume that the low-dimensional embedding of the raw data belongs to a Gaussian distribution or a low-dimensional nonlinear space without any prior information, which limits the flexibility and controllability of the model to a great extent. In addition, many existing methods need high computational cost, which makes them difficult to be used to deal with large-scale datasets. Here, we design and develop a depth generation model named Gaussian mixture adversarial autoencoders (scGMAAE), assuming that the low-dimensional embedding of different types of cells follows different Gaussian distributions, integrating Bayesian variational inference and adversarial training, as to give the interpretable latent representation of complex data and discover the statistical distribution of different types of cells. The scGMAAE is provided with good controllability, interpretability and scalability. Therefore, it can process large-scale datasets in a short time and give competitive results. scGMAAE outperforms existing methods in several ways, including dimensionality reduction visualization, cell clustering, differential expression analysis and batch effect removal. Importantly, compared with most deep learning methods, scGMAAE requires less iterations to generate the best results.

Topics & Concepts

Diversification (marketing strategy)Adversarial systemArtificial intelligenceComputer scienceMixture modelGaussianPattern recognition (psychology)BusinessChemistryMarketingComputational chemistrySingle-cell and spatial transcriptomicsCancer-related molecular mechanisms researchMicroRNA in disease regulation