A unified model-based framework for doublet or multiplet detection in single-cell multiomics data Journal Article


Authors: Hu, H.; Wang, X.; Feng, S.; Xu, Z.; Liu, J.; Heidrich-O’Hare, E.; Chen, Y.; Yue, M.; Zeng, L.; Rong, Z.; Chen, T.; Billiar, T.; Ding, Y.; Huang, H.; Duerr, R. H.; Chen, W.
Article Title: A unified model-based framework for doublet or multiplet detection in single-cell multiomics data
Abstract: Droplet-based single-cell sequencing techniques rely on the fundamental assumption that each droplet encapsulates a single cell, enabling individual cell omics profiling. However, the inevitable issue of multiplets, where two or more cells are encapsulated within a single droplet, can lead to spurious cell type annotations and obscure true biological findings. The issue of multiplets is exacerbated in single-cell multiomics settings, where integrating cross-modality information for clustering can inadvertently promote the aggregation of multiplet clusters and increase the risk of erroneous cell type annotations. Here, we propose a compound Poisson model-based framework for multiplet detection in single-cell multiomics data. Leveraging experimental cell hashing results as the ground truth for multiplet status, we conducted trimodal DOGMA-seq experiments and generated 17 benchmarking datasets from two tissues, involving a total of 280,123 droplets. We demonstrated that the proposed method is an essential tool for integrating cross-modality multiplet signals, effectively eliminating multiplet clusters in single-cell multiomics data—a task at which the benchmarked single-omics methods proved inadequate. © The Author(s) 2024.
Keywords: controlled study; mouse; animal; animals; mice; cluster analysis; algorithms; poisson distribution; algorithm; benchmarking; experimental study; cell; etiology; single cell analysis; single-cell analysis; procedures; detection method; humans; human; article; multiomics; droplet
Journal Title: Nature Communications
Volume: 15
ISSN: 2041-1723
Publisher: Nature Publishing Group  
Date Published: 2024-07-02
Start Page: 5562
Language: English
DOI: 10.1038/s41467-024-49448-x
PUBMED: 38956023
PROVIDER: scopus
PMCID: PMC11220103
DOI/URL:
Notes: The MSK Cancer Center Support Grant (P30 CA008748) is acknowledge in the PDF -- Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors
  1. Xinjun Wang
    14 Wang