Literature DB >> 29236955

Clustering single cells: a review of approaches on high-and low-depth single-cell RNA-seq data.

Vilas Menon1.   

Abstract

Advances in single-cell RNA-sequencing technology have resulted in a wealth of studies aiming to identify transcriptomic cell types in various biological systems. There are multiple experimental approaches to isolate and profile single cells, which provide different levels of cellular and tissue coverage. In addition, multiple computational strategies have been proposed to identify putative cell types from single-cell data. From a data generation perspective, recent single-cell studies can be classified into two groups: those that distribute reads shallowly over large numbers of cells and those that distribute reads more deeply over a smaller cell population. Although there are advantages to both approaches in terms of cellular and tissue coverage, it is unclear whether different computational cell type identification methods are better suited to one or the other experimental paradigm. This study reviews three cell type clustering algorithms, each representing one of three broad approaches, and finds that PCA-based algorithms appear most suited to low read depth data sets, whereas gene clustering-based and biclustering algorithms perform better on high read depth data sets. In addition, highly related cell classes are better distinguished by higher-depth data, given the same total number of reads; however, simultaneous discovery of distinct and similar types is better served by lower-depth, higher cell number data. Overall, this study suggests that the depth of profiling should be determined by initial assumptions about the diversity of cells in the population, and that the selection of clustering algorithm(s) subsequently based on the depth of profiling will allow for better identification of putative transcriptomic cell types.

Mesh:

Year:  2018        PMID: 29236955      PMCID: PMC6063268          DOI: 10.1093/bfgp/elx044

Source DB:  PubMed          Journal:  Brief Funct Genomics        ISSN: 2041-2649            Impact factor:   4.241


  34 in total

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6.  Neuronal subtypes and diversity revealed by single-nucleus RNA sequencing of the human brain.

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10.  Low-coverage single-cell mRNA sequencing reveals cellular heterogeneity and activated signaling pathways in developing cerebral cortex.

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Journal:  Nat Biotechnol       Date:  2014-08-03       Impact factor: 54.908

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Review 2.  Tutorial: guidelines for annotating single-cell transcriptomic maps using automated and manual methods.

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Review 4.  Single-Cell Sequencing of T cell Receptors: A Perspective on the Technological Development and Translational Application.

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5.  A hybrid deep clustering approach for robust cell type profiling using single-cell RNA-seq data.

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6.  SCALE method for single-cell ATAC-seq analysis via latent feature extraction.

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7.  Species-Specific miRNAs in Human Brain Development and Disease.

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8.  Contrastive self-supervised clustering of scRNA-seq data.

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9.  Identification of cell types in a mouse brain single-cell atlas using low sampling coverage.

Authors:  Aparna Bhaduri; Tomasz J Nowakowski; Alex A Pollen; Arnold R Kriegstein
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10.  A systematic performance evaluation of clustering methods for single-cell RNA-seq data.

Authors:  Angelo Duò; Mark D Robinson; Charlotte Soneson
Journal:  F1000Res       Date:  2018-07-26
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