» Articles » PMID: 36709340

Improved Downstream Functional Analysis of Single-cell RNA-sequence Data Using DGAN

Overview
Journal Sci Rep
Specialty Science
Date 2023 Jan 28
PMID 36709340
Authors
Affiliations
Soon will be listed here.
Abstract

The dramatic increase in the number of single-cell RNA-sequence (scRNA-seq) investigations is indeed an endorsement of the new-fangled proficiencies of next generation sequencing technologies that facilitate the accurate measurement of tens of thousands of RNA expression levels at the cellular resolution. Nevertheless, missing values of RNA amplification persist and remain as a significant computational challenge, as these data omission induce further noise in their respective cellular data and ultimately impede downstream functional analysis of scRNA-seq data. Consequently, it turns imperative to develop robust and efficient scRNA-seq data imputation methods for improved downstream functional analysis outcomes. To overcome this adversity, we have designed an imputation framework namely deep generative autoencoder network [DGAN]. In essence, DGAN is an evolved variational autoencoder designed to robustly impute data dropouts in scRNA-seq data manifested as a sparse gene expression matrix. DGAN principally reckons count distribution, besides data sparsity utilizing a gaussian model whereby, cell dependencies are capitalized to detect and exclude outlier cells via imputation. When tested on five publicly available scRNA-seq data, DGAN outperformed every single baseline method paralleled, with respect to downstream functional analysis including cell data visualization, clustering, classification and differential expression analysis. DGAN is executed in Python and is accessible at https://github.com/dikshap11/DGAN .

Citing Articles

Refining the optimal CAF cluster marker for predicting TME-dependent survival expectancy and treatment benefits in NSCLC patients.

Li K, Wang R, Liu G, Peng Z, Wang J, Xiao G Sci Rep. 2024; 14(1):16766.

PMID: 39034310 PMC: 11271481. DOI: 10.1038/s41598-024-55375-0.


scMGCN: A Multi-View Graph Convolutional Network for Cell Type Identification in scRNA-seq Data.

Sun H, Qu H, Duan K, Du W Int J Mol Sci. 2024; 25(4).

PMID: 38396909 PMC: 10889820. DOI: 10.3390/ijms25042234.


Improved meta-analysis pipeline ameliorates distinctive gene regulators of diabetic vasculopathy in human endothelial cell (hECs) RNA-Seq data.

Pandey D, Perumal P O PLoS One. 2023; 18(11):e0293939.

PMID: 37943808 PMC: 10635490. DOI: 10.1371/journal.pone.0293939.


A scoping review on deep learning for next-generation RNA-Seq. data analysis.

Pandey D, Onkara Perumal P Funct Integr Genomics. 2023; 23(2):134.

PMID: 37084004 DOI: 10.1007/s10142-023-01064-6.

References
1.
Bao S, Li K, Yan C, Zhang Z, Qu J, Zhou M . Deep learning-based advances and applications for single-cell RNA-sequencing data analysis. Brief Bioinform. 2021; 23(1). DOI: 10.1093/bib/bbab473. View

2.
Ding B, Zheng L, Zhu Y, Li N, Jia H, Ai R . Normalization and noise reduction for single cell RNA-seq experiments. Bioinformatics. 2015; 31(13):2225-7. PMC: 4481848. DOI: 10.1093/bioinformatics/btv122. View

3.
Allen M, Poggiali D, Whitaker K, Marshall T, van Langen J, Kievit R . Raincloud plots: a multi-platform tool for robust data visualization. Wellcome Open Res. 2023; 4:63. PMC: 6480976. DOI: 10.12688/wellcomeopenres.15191.2. View

4.
Ziegenhain C, Vieth B, Parekh S, Reinius B, Guillaumet-Adkins A, Smets M . Comparative Analysis of Single-Cell RNA Sequencing Methods. Mol Cell. 2017; 65(4):631-643.e4. DOI: 10.1016/j.molcel.2017.01.023. View

5.
Brennecke P, Anders S, Kim J, Kolodziejczyk A, Zhang X, Proserpio V . Accounting for technical noise in single-cell RNA-seq experiments. Nat Methods. 2013; 10(11):1093-5. DOI: 10.1038/nmeth.2645. View