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BMC bioinformatics. 2018 Mar 9;19(1):93. doi: 10.1186/s12859-018-2092-7 Q13.32025

An interpretable framework for clustering single-cell RNA-Seq datasets

单细胞RNA序列数据集的可解释聚类框架 翻译改进

Jesse M Zhang  1, Jue Fan  2, H Christina Fan  2, David Rosenfeld  2, David N Tse  3

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作者单位

  • 1 Department of Electrical Engineering, Stanford, Stanford, 94305, California, USA.
  • 2 BD Genomics, California, 94025, Menlo Park, USA.
  • 3 Department of Electrical Engineering, Stanford, Stanford, 94305, California, USA. dntse@stanford.edu.
  • DOI: 10.1186/s12859-018-2092-7 PMID: 29523077

    摘要 Ai翻译

    Background: With the recent proliferation of single-cell RNA-Seq experiments, several methods have been developed for unsupervised analysis of the resulting datasets. These methods often rely on unintuitive hyperparameters and do not explicitly address the subjectivity associated with clustering.

    Results: In this work, we present DendroSplit, an interpretable framework for analyzing single-cell RNA-Seq datasets that addresses both the clustering interpretability and clustering subjectivity issues. DendroSplit offers a novel perspective on the single-cell RNA-Seq clustering problem motivated by the definition of "cell type", allowing us to cluster using feature selection to uncover multiple levels of biologically meaningful populations in the data. We analyze several landmark single-cell datasets, demonstrating both the method's efficacy and computational efficiency.

    Conclusion: DendroSplit offers a clustering framework that is comparable to existing methods in terms of accuracy and speed but is novel in its emphasis on interpretabilty. We provide the full DendroSplit software package at https://github.com/jessemzhang/dendrosplit .

    Keywords: Clustering; Feature selection; Interpretability; Single-cell RNA-seq.

    Keywords:single-cell RNA-Seq; clustering; interpretability

    Copyright © BMC bioinformatics. 中文内容为AI机器翻译,仅供参考!

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    期刊名:Bmc bioinformatics

    缩写:BMC BIOINFORMATICS

    ISSN:1471-2105

    e-ISSN:1471-2105

    IF/分区:3.3/Q1

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