Literature DB >> 33384718

Sc-GPE: A Graph Partitioning-Based Cluster Ensemble Method for Single-Cell.

Xiaoshu Zhu1,2, Jian Li1, Hong-Dong Li2, Miao Xie1, Jianxin Wang2.   

Abstract

Clustering is an efficient way to analyze single-cell RNA sequencing data. It is commonly used to identify cell types, which can help in understanding cell differentiation processes. However, different clustering results can be obtained from different single-cell clustering methods, sometimes including conflicting conclusions, and biologists will often fail to get the right clustering results and interpret the biological significance. The cluster ensemble strategy can be an effective solution for the problem. As the graph partitioning-based clustering methods are good at clustering single-cell, we developed Sc-GPE, a novel cluster ensemble method combining five single-cell graph partitioning-based clustering methods. The five methods are SNN-cliq, PhenoGraph, SC3, SSNN-Louvain, and MPGS-Louvain. In Sc-GPE, a consensus matrix is constructed based on the five clustering solutions by calculating the probability that the cell pairs are divided into the same cluster. It solved the problem in the hypergraph-based ensemble approach, including the different cluster labels that were assigned in the individual clustering method, and it was difficult to find the corresponding cluster labels across all methods. Then, to distinguish the different importance of each method in a clustering ensemble, a weighted consensus matrix was constructed by designing an importance score strategy. Finally, hierarchical clustering was performed on the weighted consensus matrix to cluster cells. To evaluate the performance, we compared Sc-GPE with the individual clustering methods and the state-of-the-art SAME-clustering on 12 single-cell RNA-seq datasets. The results show that Sc-GPE obtained the best average performance, and achieved the highest NMI and ARI value in five datasets.
Copyright © 2020 Zhu, Li, Li, Xie and Wang.

Entities:  

Keywords:  cluster ensemble; consensus matrix; graph partitioning; importance score; single-cell clustering

Year:  2020        PMID: 33384718      PMCID: PMC7770236          DOI: 10.3389/fgene.2020.604790

Source DB:  PubMed          Journal:  Front Genet        ISSN: 1664-8021            Impact factor:   4.599


  35 in total

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7.  A Gene Rank Based Approach for Single Cell Similarity Assessment and Clustering.

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8.  M3Drop: dropout-based feature selection for scRNASeq.

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

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10.  Network enhancement as a general method to denoise weighted biological networks.

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1.  scCAN: single-cell clustering using autoencoder and network fusion.

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Review 3.  scMelody: An Enhanced Consensus-Based Clustering Model for Single-Cell Methylation Data by Reconstructing Cell-to-Cell Similarity.

Authors:  Qi Tian; Jianxiao Zou; Jianxiong Tang; Liang Liang; Xiaohong Cao; Shicai Fan
Journal:  Front Bioeng Biotechnol       Date:  2022-02-23
  3 in total

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