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Exploiting marker genes for robust classification and characterization of single-cell chromatin accessibility

View ORCID ProfileRisa Karakida Kawaguchi, View ORCID ProfileZiqi Tang, View ORCID ProfileStephan Fischer, View ORCID ProfileRohit Tripathy, View ORCID ProfilePeter K. Koo, View ORCID ProfileJesse Gillis
doi: https://doi.org/10.1101/2021.04.01.438068
Risa Karakida Kawaguchi
1Cold Spring Harbor Laboratory, 1 Bungtown Rd, Cold Spring Harbor, New York, 11724, USA
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  • ORCID record for Risa Karakida Kawaguchi
Ziqi Tang
1Cold Spring Harbor Laboratory, 1 Bungtown Rd, Cold Spring Harbor, New York, 11724, USA
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Stephan Fischer
1Cold Spring Harbor Laboratory, 1 Bungtown Rd, Cold Spring Harbor, New York, 11724, USA
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Rohit Tripathy
1Cold Spring Harbor Laboratory, 1 Bungtown Rd, Cold Spring Harbor, New York, 11724, USA
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Peter K. Koo
1Cold Spring Harbor Laboratory, 1 Bungtown Rd, Cold Spring Harbor, New York, 11724, USA
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Jesse Gillis
1Cold Spring Harbor Laboratory, 1 Bungtown Rd, Cold Spring Harbor, New York, 11724, USA
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  • ORCID record for Jesse Gillis
  • For correspondence: JGillis@cshl.edu
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Abstract

Background Single-cell Assay for Transposase Accessible Chromatin using sequencing (scATAC-seq) measures genome-wide chromatin accessibility for the discovery of cell-type specific regulatory networks. ScATAC-seq combined with single-cell RNA sequencing (scRNA-seq) offers important avenues for ongoing research, such as novel cell-type specific activation of enhancer and transcription factor binding sites as well as chromatin changes specific to cell states. On the other hand, scATAC-seq data is known to be challenging to interpret due to its high number of zeros as well as the heterogeneity derived from different protocols. Because of the stochastic lack of marker gene activities, cell type identification by scATAC-seq remains difficult even at a cluster level.

Results In this study, we exploit reference knowledge obtained from external scATAC-seq or scRNA-seq datasets to define existing cell types and uncover the genomic regions which drive cell-type specific gene regulation. To investigate the robustness of existing cell-typing methods, we collected 7 scATAC-seq datasets targeting mouse brain for a meta-analytic comparison of neuronal cell-type annotation, including a reference atlas generated by the BRAIN Initiative Cell Census Network (BICCN). By comparing the area under the receiver operating characteristics curves (AUROCs) for the three major cell types (inhibitory, excitatory, and non-neuronal cells), cell-typing performance by single markers is found to be highly variable even for known marker genes due to study-specific biases. How-ever, the signal aggregation of a large and redundant marker gene set, optimized via multiple scRNA-seq data, achieves the highest cell-typing performances among 5 existing marker gene sets, from the individual cell to cluster level. That gene set also shows a high consistency with the cluster-specific genes from inhibitory subtypes in two well-annotated datasets, suggesting applicability to rare cell types. Next, we demonstrate a comprehensive assessment of scATAC-seq cell typing using exhaustive combinations of the marker gene sets with supervised learning methods including machine learning classifiers and joint clustering methods. Our results show that the combinations using robust marker gene sets systematically ranked at the top, not only with model based prediction using a large reference data but also with a simple summation of expression strengths across markers. To demonstrate the utility of this robust cell typing approach, we trained a deep neural network to predict chromatin accessibility in each subtype using only DNA sequence. Through model interpretation methods, we identify key motifs enriched about robust gene sets for each neuronal subtype.

Conclusions Through the meta-analytic evaluation of scATACseq cell-typing methods, we develop a novel method set to exploit the BICCN reference atlas. Our study strongly supports the value of robust marker gene selection as a feature selection tool and cross-dataset comparison between scATAC-seq datasets to improve alignment of scATAC-seq to known biology. With this novel, high quality epigenetic data, genomic analysis of regulatory regions can reveal sequence motifs that drive cell type-specific regulatory programs.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • https://github.com/carushi/Catactor

  • Abbreviations

    scATAC-seq
    single-cell assay for transposase accessible chromatin using sequencing,
    sci-ATAC-seq
    single-cell combinatorial indexing ATAC-seq,
    dscATAC-seq
    droplet single-cell assay for transposase-accessible chromatin using sequencing,
    dsciATAC-seq
    dscATAC-seq with combinatorial indexing,
    BICCN
    BRAIN initiative cell census network,
    IN
    inhibitory neuron,
    EX
    excitatory neuron,
    NN
    non-neuronal cell,
    ROC
    receiver operating characteristics,
    AUROC
    area under the receiver operating characteristics curve,
    AUPR
    area under the precision-recall curve,
    TSS
    transcriptional start site,
    TF
    transcription factor,
    SVM
    support vector machine,
    ML
    machine learning,
    CNN
    convolutional neural network, and
    GEO
    gene expression omnibus.
  • Copyright 
    The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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    Posted April 03, 2021.
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    Exploiting marker genes for robust classification and characterization of single-cell chromatin accessibility
    Risa Karakida Kawaguchi, Ziqi Tang, Stephan Fischer, Rohit Tripathy, Peter K. Koo, Jesse Gillis
    bioRxiv 2021.04.01.438068; doi: https://doi.org/10.1101/2021.04.01.438068
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    Exploiting marker genes for robust classification and characterization of single-cell chromatin accessibility
    Risa Karakida Kawaguchi, Ziqi Tang, Stephan Fischer, Rohit Tripathy, Peter K. Koo, Jesse Gillis
    bioRxiv 2021.04.01.438068; doi: https://doi.org/10.1101/2021.04.01.438068

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