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Secuer: Ultrafast, scalable and accurate clustering of single-cell RNA-seq data

Nana Wei, Yating Nie, Lin Liu, Xiaoqi Zheng, Hua‐Jun Wu

2022PLoS Computational Biology17 citationsDOIOpen Access PDF

Abstract

Identifying cell clusters is a critical step for single-cell transcriptomics study. Despite the numerous clustering tools developed recently, the rapid growth of scRNA-seq volumes prompts for a more (computationally) efficient clustering method. Here, we introduce Secuer, a Scalable and Efficient speCtral clUstERing algorithm for scRNA-seq data. By employing an anchor-based bipartite graph representation algorithm, Secuer enjoys reduced runtime and memory usage over one order of magnitude for datasets with more than 1 million cells. Meanwhile, Secuer also achieves better or comparable accuracy than competing methods in small and moderate benchmark datasets. Furthermore, we showcase that Secuer can also serve as a building block for a new consensus clustering method, Secuer-consensus, which again improves the runtime and scalability of state-of-the-art consensus clustering methods while also maintaining the accuracy. Overall, Secuer is a versatile, accurate, and scalable clustering framework suitable for small to ultra-large single-cell clustering tasks.

Topics & Concepts

Cluster analysisScalabilityComputer scienceData miningBenchmark (surveying)BiclusteringBipartite graphSpectral clusteringRepresentation (politics)Correlation clusteringGraphCURE data clustering algorithmTheoretical computer scienceArtificial intelligenceDatabasePolitical scienceGeodesyLawGeographyPoliticsSingle-cell and spatial transcriptomicsExtracellular vesicles in diseaseNeuroinflammation and Neurodegeneration Mechanisms
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