iCellR is an interactive R package designed to facilitate the analysis and visualization of high-throughput single-cell sequencing data. It supports a variety of single-cell technologies, including scRNA-Seq, scVDJ-Seq, scATAC-Seq, CITE-Seq, and Spatial Transcriptomics (ST).
Use the latest version of iCellR (v1.6.4) for scATAC-seq and Spatial Transcriptomics (ST) analyses. Leverage the i.score function for scoring cells based on gene signatures using methods such as Tirosh, Mean, Sum, GSVA, ssgsea, Zscore, and Plage.
News (July 2020)
Explore iCellR version 1.5.5, now featuring tools for cell cycle analysis (phases G0, G1S, G2M, M, G1M, and S). See example phase, New Pseudotime Abstract KNetL (PAK map) functionality added – visualize pseudotime progression (PAK map). Perform gene-gene correlation analysis using updated visualization tools. correlations.
News (May 2020)
Explore the KNetL map, an advanced adjustable and dynamic dimensionality reduction method KNetL map KNetL (pronounced “nettle”) offers enhanced zooming capabilities KNetL to show significantly more detail compared to tSNE and UMAP.
News (April 2020)
Introducing imputation and coverage correction (CC) methods for improved gene-gene correlation analysis. (CC). Perform batch alignment using iCellR's CPCA and CCCA tools (CCCA and CPCA) methods. Expanded databases for cell type prediction now include ImmGen and MCA.
News (Sep. 2018)
scSeqR has been renamed to iCellR, and scSeqR has been discontinued. Please use iCellR moving forward, as scSeqR is no longer supported. UMAP is added to iCellR. Interactive cell gating has been added, allowing users to select cells directly within HTML plots using Plotly.
Tutorials and manual
Link to manualManual and Comprehensive R Archive Network (CRAN).
Gor getting started and tutorials go to our Wiki page.
Link to a video tutorial for CITE-Seq and scRNA-Seq analysis: Video
Single (i) Cell R package (iCellR)
iCellR is an interactive R package designed to facilitate the analysis and visualization of high-throughput single-cell sequencing data. It supports a variety of single-cell technologies, including
scRNA-Seq,scVDJ-Seq,scATAC-Seq,CITE-Seq, andSpatial Transcriptomics(ST).Maintainer: Alireza Khodadadi-Jamayran
News (April 2021)
Use the latest version of iCellR (v1.6.4) for scATAC-seq and Spatial Transcriptomics (ST) analyses. Leverage the i.score function for
scoring cells based on gene signaturesusing methods such asTirosh, Mean, Sum, GSVA, ssgsea, Zscore, and Plage.News (July 2020)
Explore iCellR version 1.5.5, now featuring tools for cell cycle analysis
(phases G0, G1S, G2M, M, G1M, and S). See example phase, New Pseudotime Abstract KNetL (PAK map) functionality added – visualize pseudotime progression (PAK map). Perform gene-gene correlation analysis using updated visualization tools. correlations.News (May 2020)
Explore the
KNetL (pronounced “nettle”) offers enhanced zooming capabilities KNetL to show significantly more detail compared to tSNE and UMAP.
KNetL map, an advanced adjustable and dynamic dimensionality reduction method KNetL mapNews (April 2020)
Introducing
imputation and coverage correction (CC)methods for improved gene-gene correlation analysis. (CC). Performbatch alignment using iCellR's CPCAand CCCA tools (CCCA and CPCA) methods. Expanded databases for cell type prediction now include ImmGen and MCA.News (Sep. 2018)
scSeqRhas been renamed toiCellR, and scSeqR has been discontinued. Please use iCellR moving forward, as scSeqR is no longer supported.UMAPis added to iCellR. Interactivecell gatinghas been added, allowing users to select cells directly within HTML plots using Plotly.Tutorials and manual
manualManual and Comprehensive R Archive Network (CRAN).getting startedandtutorialsgo to our Wiki page.FlowJoorSeqGeq, they offer plugins for iCellR and other single-cell analysis tools. You can find the list of all plugins here: https://www.flowjo.com/exchange/#/ . Specifically, the iCellR plugin can be found here: https://www.flowjo.com/exchange/#/plugin/profile?id=34. Additionally, a SeqGeq Differential Expression (DE) tutorial is available to guide you through the process: SeqGeq DE tutorialFor
citing iCellRuse this PMID: 34353854iCellR publications: PMID: 35660135 (scRNA-seq/KNetL) PMID: 35180378 (CITE-seq/KNetL), PMID: 34911733 (i.score and cell ranking), PMID: 34963055 (scRNA-seq), PMID 31744829 (scRNA-seq), PMID: 31934613 (bulk RNA-seq from TCGA), PMID: 32550269 (scVDJ-seq), PMID: 34135081, PMID: 33593073, PMID: 34634466, PMID: 35302059, PMID: 34353854
Single (i) Cell R package (iCellR)
For
getting startedandtutorialsgo to our Wiki page.