Cell Type Differentiation Using Network Clustering Algorithms

Guardado en:
書目詳細資料
發表在:bioRxiv (Dec 7, 2024)
主要作者: Fatemeh Sadat Fatemi Nasrollahi
其他作者: Filipi Nascimento Silva, Liu, Shiwei, Chaudhuri, Soumilee, Yu, Meichen, Wang, Juexin, Nho, Kwangsik, Saykin, Andrew J, Bennett, David A, Sporns, Olaf, Fortunato, Santo
出版:
Cold Spring Harbor Laboratory Press
主題:
在線閱讀:Citation/Abstract
Full Text - PDF
Full text outside of ProQuest
標簽: 添加標簽
沒有標簽, 成為第一個標記此記錄!
實物特徵
Resumen:Single cell RNA-seq (scRNA-seq) technologies provide unprecedented resolution representing transcriptomics at the level of single cell. One of the biggest challenges in scRNA-seq data analysis is the cell type annotation, which is usually inferred by cell separation approaches. In-silico algorithms that accurately identify individual cell types in ongoing single-cell sequencing studies are crucial for unlocking cellular heterogeneity and understanding the biological basis of diseases. In this study, we focus on robustly identifying cell types in single-cell RNA sequencing data; we conduct a comparative analysis using methods established in biology, like Seurat, Leiden, and WGCNA, as well as Infomap, statistical inference via Stochastic Block Models (SBM), and single-cell Graph Neural Networks (scGNN). We also analyze preprocessing pipelines to identify and optimize key components in the process. Leveraging two independent datasets, PBMC and ROSMAP, we employ clustering algorithms on cell-cell networks derived from gene expression data. Our findings reveal that while clusters detected by WGCNA exhibit limited correspondence with cell types, those identified by multiresolution Infomap and Leiden, and SBM show a closer alignment, with Infomap standing out as a particularly effective approach. Infomap notably offers valuable insights for the precise characterization of cellular landscapes related to neurodegenration and immunology in scRNA-seq.Competing Interest StatementThe authors have declared no competing interest.
ISSN:2692-8205
DOI:10.1101/2024.12.04.626793
Fuente:Biological Science Database