scLiverDB: a Database of Human and Mouse Liver Transcriptome Landscapes at Single-Cell Resolution

Small Methods. 2023 Sep;7(9):e2201421. doi: 10.1002/smtd.202201421. Epub 2023 May 31.

Abstract

The liver is critical for the digestive and immune systems. Although the physiology and pathology of liver have been well studied and many scRNA-seq data are generated, a database and landscape for characterizing cell types and gene expression in different liver diseases or developmental stages at single-cell resolution are lacking. Hence, scLiverDB is developed, a specialized database for human and mouse liver transcriptomes to unravel the landscape of liver cell types, cell heterogeneity and gene expression at single-cell resolution across various liver diseases/cell types/developmental stages. To date, 62 datasets including 9,050 samples and 1,741,734 cells is curated. A uniform workflow is used, which included quality control, dimensional reduction, clustering, and cell-type annotation to analyze datasets on the same platform; integrated manual and automatic methods for accurate cell-type identification and provided a user-friendly web interface with multiscale functions. There are two case studies to show the usefulness of scLiverDB, which identified the LTB (lymphotoxin Beta) gene as a potential biomarker of lymphoid cells differentiation and showed the expression changes of Foxa3 (forkhead box A3) in liver chronic progressive diseases. This work provides a crucial resource to resolve molecular and cellular information in normal, diseased, and developing human and mouse livers.

Keywords: analysis pipelines; cellular heterogeneity; database; liver cells; single cell RNA-seq.

MeSH terms

  • Animals
  • Cell Differentiation
  • Cluster Analysis
  • Databases, Factual
  • Humans
  • Liver*
  • Mice
  • Transcriptome* / genetics