Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

SCInter

General information

URL: https://bio.liclab.net/SCInter/index
Full name: SCInter
Description: SCInter is a comprehensive Single-Cell transcriptome integration database for human and mouse, providing manually curated gene expression profiles across various cell types at the sample level. The current version includes 115 integrated datasets and 1016 samples, covering nearly 150 tissues/cell lines and 8016,646 cell markers in 457 identified cell types.
Year founded: 2023
Last update: 2023-6-30
Version: v1.0
Accessibility:
Accessible
Country/Region: China

Classification & Tag

Data type:
RNA
Data object:
Database category:
Major species:
Keywords:

Contact information

University/Institution: University of South China
Address: The First Affiliated Hospital, Cardiovascular Lab of Big Data and Imaging Artificial Intelligence, Hengyang Medical School, University of South China, Hengyang, Hunan, 421001, China
City: Hengyang
Province/State: Hunan
Country/Region: China
Contact name (PI/Team): Chunquan Li
Contact email (PI/Helpdesk): lcqbio@163.com

Publications

38125297
SCInter: A comprehensive single-cell transcriptome integration database for human and mouse. [PMID: 38125297]
Jun Zhao, Yuezhu Wang, Chenchen Feng, Mingxue Yin, Yu Gao, Ling Wei, Chao Song, Bo Ai, Qiuyu Wang, Jian Zhang, Jiang Zhu, Chunquan Li

Single-cell RNA sequencing (scRNA-seq), which profiles gene expression at the cellular level, has effectively explored cell heterogeneity and reconstructed developmental trajectories. With the increasing research on diseases and biological processes, scRNA-seq datasets are accumulating rapidly, highlighting the urgent need for collecting and processing these data to support comprehensive and effective annotation and analysis. Here, we have developed a comprehensive ingle-ell transcriptome gration database fo human and mouse (SCInter, https://bio.liclab.net/SCInter/index.php), which aims to provide a manually curated database that supports the provision of gene expression profiles across various cell types at the sample level. The current version of SCInter includes 115 integrated datasets and 1016 samples, covering nearly 150 tissues/cell lines. It contains 8016,646 cell markers in 457 identified cell types. SCInter enabled comprehensive analysis of cataloged single-cell data encompassing quality control (QC), clustering, cell markers, multi-method cell type automatic annotation, predicting cell differentiation trajectories and so on. At the same time, SCInter provided a user-friendly interface to query, browse, analyze and visualize each integrated dataset and single cell sample, along with comprehensive QC reports and processing results. It will facilitate the identification of cell type in different cell subpopulations and explore developmental trajectories, enhancing the study of cell heterogeneity in the fields of immunology and oncology.

Comput Struct Biotechnol J. 2024:23() | 1 Citations (from Europe PMC, 2025-12-13)

Ranking

All databases:
5305/6895 (23.075%)
Expression:
1074/1347 (20.341%)
5305
Total Rank
1
Citations
1
z-index

Community reviews

Not Rated
Data quality & quantity:
Content organization & presentation
System accessibility & reliability:

Word cloud

Related Databases

Citing
Cited by

Record metadata

Created on: 2024-07-15
Curated by:
Shiting Wang [2024-08-30]
Shiting Wang [2024-08-29]
Miaomiao Wang [2024-07-18]
Haochen Liu [2024-07-15]