Comparison of Methods for Feature Selection in Clustering of High-Dimensional RNA-Sequencing Data to Identify Cancer Subtypes

被引:10
|
作者
Kallberg, David [1 ,2 ]
Vidman, Linda [2 ,3 ]
Ryden, Patrik [2 ]
机构
[1] Umea Univ, Dept Stat, USBE, Umea, Sweden
[2] Umea Univ, Dept Math & Math Stat, Umea, Sweden
[3] Umea Univ, Dept Radiat Sci, Oncol, Umea, Sweden
基金
瑞典研究理事会;
关键词
feature selection; gene selection; RNA-seq; cancer subtypes; high-dimensional;
D O I
10.3389/fgene.2021.632620
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Cancer subtype identification is important to facilitate cancer diagnosis and select effective treatments. Clustering of cancer patients based on high-dimensional RNA-sequencing data can be used to detect novel subtypes, but only a subset of the features (e.g., genes) contains information related to the cancer subtype. Therefore, it is reasonable to assume that the clustering should be based on a set of carefully selected features rather than all features. Several feature selection methods have been proposed, but how and when to use these methods are still poorly understood. Thirteen feature selection methods were evaluated on four human cancer data sets, all with known subtypes (gold standards), which were only used for evaluation. The methods were characterized by considering mean expression and standard deviation (SD) of the selected genes, the overlap with other methods and their clustering performance, obtained comparing the clustering result with the gold standard using the adjusted Rand index (ARI). The results were compared to a supervised approach as a positive control and two negative controls in which either a random selection of genes or all genes were included. For all data sets, the best feature selection approach outperformed the negative control and for two data sets the gain was substantial with ARI increasing from (-0.01, 0.39) to (0.66, 0.72), respectively. No feature selection method completely outperformed the others but using the dip-rest statistic to select 1000 genes was overall a good choice. The commonly used approach, where genes with the highest SDs are selected, did not perform well in our study.
引用
收藏
页数:17
相关论文
共 50 条
  • [21] Feature selection for high-dimensional imbalanced data
    Yin, Liuzhi
    Ge, Yong
    Xiao, Keli
    Wang, Xuehua
    Quan, Xiaojun
    NEUROCOMPUTING, 2013, 105 : 3 - 11
  • [22] A filter feature selection for high-dimensional data
    Janane, Fatima Zahra
    Ouaderhman, Tayeb
    Chamlal, Hasna
    JOURNAL OF ALGORITHMS & COMPUTATIONAL TECHNOLOGY, 2023, 17
  • [23] Feature selection for high-dimensional temporal data
    Michail Tsagris
    Vincenzo Lagani
    Ioannis Tsamardinos
    BMC Bioinformatics, 19
  • [24] Feature Selection with High-Dimensional Imbalanced Data
    Van Hulse, Jason
    Khoshgoftaar, Taghi M.
    Napolitano, Amri
    Wald, Randall
    2009 IEEE INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOPS (ICDMW 2009), 2009, : 507 - 514
  • [25] Feature selection for high-dimensional temporal data
    Tsagris, Michail
    Lagani, Vincenzo
    Tsamardinos, Ioannis
    BMC BIOINFORMATICS, 2018, 19
  • [26] FEATURE SELECTION FOR HIGH-DIMENSIONAL DATA ANALYSIS
    Verleysen, Michel
    ECTA 2011/FCTA 2011: PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON EVOLUTIONARY COMPUTATION THEORY AND APPLICATIONS AND INTERNATIONAL CONFERENCE ON FUZZY COMPUTATION THEORY AND APPLICATIONS, 2011,
  • [27] Clustering and classification methods for single-cell RNA-sequencing data
    Qi, Ren
    Ma, Anjun
    Ma, Qin
    Zou, Quan
    BRIEFINGS IN BIOINFORMATICS, 2020, 21 (04) : 1196 - 1208
  • [28] Feature Selection for Clustering on High Dimensional Data
    Zeng, Hong
    Cheung, Yiu-ming
    PRICAI 2008: TRENDS IN ARTIFICIAL INTELLIGENCE, 2008, 5351 : 913 - 922
  • [29] A Fast Clustering-Based Feature Subset Selection Algorithm for High-Dimensional Data
    Song, Qinbao
    Ni, Jingjie
    Wang, Guangtao
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2013, 25 (01) : 1 - 14
  • [30] High-dimensional data clustering using k-means subspace feature selection
    Wang, Xiao-Dong
    Chen, Rung-Ching
    Yan, Fei
    Journal of Network Intelligence, 2019, 4 (03): : 80 - 87