Litcius/Paper detail

SC1: A Tool for Interactive Web-Based Single-Cell RNA-Seq Data Analysis

Marmar R. Moussa, Ion Măndoiu

2021Journal of Computational Biology18 citationsDOI

Abstract

Single-cell RNA-Seq (scRNA-Seq) is critical for studying cellular function and phenotypic heterogeneity as well as the development of tissues and tumors. In this study, we present SC1 a web-based highly interactive scRNA-Seq data analysis tool publicly accessible at https://sc1.engr.uconn.edu. The tool presents an integrated workflow for scRNA-Seq analysis, implements a novel method of selecting informative genes based on term-frequency inverse-document-frequency scores, and provides a broad range of methods for clustering, differential expression analysis, gene enrichment, interactive visualization, and cell cycle analysis. The tool integrates other single-cell omics data modalities such as T-cell receptor (TCR)-Seq and supports several single-cell sequencing technologies. In just a few steps, researchers can generate a comprehensive analysis and gain powerful insights from their scRNA-Seq data.

Topics & Concepts

WorkflowRNA-SeqComputational biologyComputer scienceWeb applicationCluster analysisSingle-cell analysisInteractive visualizationVisualizationBiologyData miningCellGeneDatabaseWorld Wide WebTranscriptomeGene expressionGeneticsMachine learningSingle-cell and spatial transcriptomicsGene expression and cancer classificationCancer-related molecular mechanisms research