scDTL : enhancing single-cell RNA-seq imputation through deep transfer learning with bulk cell information

Liuyang ZHAO, Landu JIANG, Yufeng XIE, JianHao HUANG, Haoran XIE, Jun TIAN*, Dian ZHANG*

*Corresponding author for this work

Research output: Journal PublicationsJournal Article (refereed)peer-review

Abstract

The increasing single-cell RNA sequencing (scRNA-seq) data enable researchers to explore cellular heterogeneity and gene expression profiles, offering a high-resolution view of the transcriptome at the single-cell level. However, the dropout events, which are often present in scRNA-seq data, remaining challenges for downstream analysis. Although a number of studies have been developed to recover single-cell expression profiles, their performance may be hindered due to not fully exploring the inherent relations between genes. To address the issue, we propose scDTL, a deep transfer learning based approach for scRNA-seq data imputation by harnessing the bulk RNA-sequencing information. We firstly employ a denoising autoencoder trained on bulk RNA-seq data as the initial imputation model, and then leverage a domain adaptation framework that transfers the knowledge learned by the bulk imputation model to scRNA-seq learning task. In addition, scDTL employs a parallel operation with a 1D U-Net denoising model to provide gene representations of varying granularity, capturing both coarse and fine features of the scRNA-seq data. Finally, we utilize a cross-channel attention mechanism to fuse the features learned from the transferred bulk imputation model and U-Net model. In the evaluation, we conduct extensive experiments to demonstrate that scDTL could outperform other state-of-the-art methods in the quantitative comparison and downstream analyses.
Original languageEnglish
Article numberbbae555
Number of pages11
JournalBriefings in Bioinformatics
Volume25
Issue number6
Early online date30 Oct 2024
DOIs
Publication statusPublished - 1 Nov 2024

Bibliographical note

Author contributions: L.Z., L.J., J.T., and D.Z. participated in the design and execution of the study. Y.X., J.H., and H.X. performed the data curation and analysis. L.Z., L.J., and J.T. wrote the original draft, with all authors contributing to writing and providing feedback. L.J., J.T., and D.Z. supervised all aspects of the research.

Publisher Copyright:
© The Author(s) 2024. Published by Oxford University Press.

Funding

This work is supported by Stable Support Project of Shenzhen (Project No.20231122145548001), JCYJ20220531091407016, Futian Healthcare Research Project (No.FTWS055, FTWS069), Shenzhen Hospital (Futian) of Guangzhou University of Chinese Medicine Research Project (No.GZYSY2024010), Guangdong Province Key Laboratory of Popular High Performance Computers 2017B030314073, and Guangdong Provincial Department of Education Youth Talent Project (No.2024KQNCX052).

Keywords

  • transfer learning
  • gene imputation
  • single-cell RNA-sequencing
  • bulk RNA sequencing

Fingerprint

Dive into the research topics of 'scDTL : enhancing single-cell RNA-seq imputation through deep transfer learning with bulk cell information'. Together they form a unique fingerprint.

Cite this