scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]

Single-cell RNA sequencing (scRNAseq) represents a new kind of microscope that can measure the transcriptome profiles of thousands of individual cells from complex cellular mixtures, such as in a tissue, in a single experiment. This technology is particularly valuable for characterization of tissue...

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Main Authors: Brendan T. Innes, Gary D. Bader
Format: Article
Language:English
Published: F1000 Research Ltd 2019-03-01
Series:F1000Research
Online Access:https://f1000research.com/articles/7-1522/v2
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spelling doaj-d29a886a967a4defb76e2cab6ccb91832020-11-25T03:48:05ZengF1000 Research LtdF1000Research2046-14022019-03-01710.12688/f1000research.16198.220249scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]Brendan T. Innes0Gary D. Bader1Molecular Genetics, University of Toronto, Toronto, Ontario, M5S3E1, CanadaThe Donnelly Centre, University of Toronto, Toronto, Ontario, M5S3E1, CanadaSingle-cell RNA sequencing (scRNAseq) represents a new kind of microscope that can measure the transcriptome profiles of thousands of individual cells from complex cellular mixtures, such as in a tissue, in a single experiment. This technology is particularly valuable for characterization of tissue heterogeneity because it can be used to identify and classify all cell types in a tissue. This is generally done by clustering the data, based on the assumption that cells of a particular type share similar transcriptomes, distinct from other cell types in the tissue. However, nearly all clustering algorithms have tunable parameters which affect the number of clusters they will identify in data. The R Shiny software tool described here, scClustViz, provides a simple interactive graphical user interface for exploring scRNAseq data and assessing the biological relevance of clustering results. Given that cell types are expected to have distinct gene expression patterns, scClustViz uses differential gene expression between clusters as a metric for assessing the fit of a clustering result to the data at multiple cluster resolution levels. This helps select a clustering parameter for further analysis. scClustViz also provides interactive visualisation of: cluster-specific distributions of technical factors, such as predicted cell cycle stage and other metadata; cluster-wise gene expression statistics to simplify annotation of cell types and identification of cell type specific marker genes; and gene expression distributions over all cells and cell types. scClustViz provides an interactive interface for visualisation, assessment, and biological interpretation of cell-type classifications in scRNAseq experiments that can be easily added to existing analysis pipelines, enabling customization by bioinformaticians while enabling biologists to explore their results without the need for computational expertise. It is available at https://baderlab.github.io/scClustViz/.https://f1000research.com/articles/7-1522/v2
collection DOAJ
language English
format Article
sources DOAJ
author Brendan T. Innes
Gary D. Bader
spellingShingle Brendan T. Innes
Gary D. Bader
scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]
F1000Research
author_facet Brendan T. Innes
Gary D. Bader
author_sort Brendan T. Innes
title scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]
title_short scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]
title_full scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]
title_fullStr scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]
title_full_unstemmed scClustViz – Single-cell RNAseq cluster assessment and visualization [version 2; peer review: 2 approved]
title_sort scclustviz – single-cell rnaseq cluster assessment and visualization [version 2; peer review: 2 approved]
publisher F1000 Research Ltd
series F1000Research
issn 2046-1402
publishDate 2019-03-01
description Single-cell RNA sequencing (scRNAseq) represents a new kind of microscope that can measure the transcriptome profiles of thousands of individual cells from complex cellular mixtures, such as in a tissue, in a single experiment. This technology is particularly valuable for characterization of tissue heterogeneity because it can be used to identify and classify all cell types in a tissue. This is generally done by clustering the data, based on the assumption that cells of a particular type share similar transcriptomes, distinct from other cell types in the tissue. However, nearly all clustering algorithms have tunable parameters which affect the number of clusters they will identify in data. The R Shiny software tool described here, scClustViz, provides a simple interactive graphical user interface for exploring scRNAseq data and assessing the biological relevance of clustering results. Given that cell types are expected to have distinct gene expression patterns, scClustViz uses differential gene expression between clusters as a metric for assessing the fit of a clustering result to the data at multiple cluster resolution levels. This helps select a clustering parameter for further analysis. scClustViz also provides interactive visualisation of: cluster-specific distributions of technical factors, such as predicted cell cycle stage and other metadata; cluster-wise gene expression statistics to simplify annotation of cell types and identification of cell type specific marker genes; and gene expression distributions over all cells and cell types. scClustViz provides an interactive interface for visualisation, assessment, and biological interpretation of cell-type classifications in scRNAseq experiments that can be easily added to existing analysis pipelines, enabling customization by bioinformaticians while enabling biologists to explore their results without the need for computational expertise. It is available at https://baderlab.github.io/scClustViz/.
url https://f1000research.com/articles/7-1522/v2
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