Litcius/Paper detail

Asc-Seurat: analytical single-cell Seurat-based web application

Wendell J. Pereira, Felipe Marques de Almeida, Daniel Conde, K. M. Balmant, Paolo M. Triozzi, Henry W. Schmidt, Christopher Dervinis, Γεώργιος Παππάς, Matias Kirst

2021BMC Bioinformatics64 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Single-cell RNA sequencing (scRNA-seq) has revolutionized the study of transcriptomes, arising as a powerful tool for discovering and characterizing cell types and their developmental trajectories. However, scRNA-seq analysis is complex, requiring a continuous, iterative process to refine the data and uncover relevant biological information. A diversity of tools has been developed to address the multiple aspects of scRNA-seq data analysis. However, an easy-to-use web application capable of conducting all critical steps of scRNA-seq data analysis is still lacking. We present Asc-Seurat, a feature-rich workbench, providing an user-friendly and easy-to-install web application encapsulating tools for an all-encompassing and fluid scRNA-seq data analysis. Asc-Seurat implements functions from the Seurat package for quality control, clustering, and genes differential expression. In addition, Asc-Seurat provides a pseudotime module containing dozens of models for the trajectory inference and a functional annotation module that allows recovering gene annotation and detecting gene ontology enriched terms. We showcase Asc-Seurat's capabilities by analyzing a peripheral blood mononuclear cell dataset. CONCLUSIONS: Asc-Seurat is a comprehensive workbench providing an accessible graphical interface for scRNA-seq analysis by biologists. Asc-Seurat significantly reduces the time and effort required to analyze and interpret the information in scRNA-seq datasets.

Topics & Concepts

WorkbenchComputer scienceAnnotationCluster analysisInferenceData miningInformation retrievalVisualizationArtificial intelligenceSingle-cell and spatial transcriptomicsGenomics and Phylogenetic StudiesCell Image Analysis Techniques