Determination of the minimum sample size in microarray experiments to cluster genes using K-means clustering

被引:0
|
作者
Wu, FX [1 ]
Zhang, WJ [1 ]
Kusalik, AJ [1 ]
机构
[1] Univ Saskatchewan, Div Biomed Engn, Saskatoon, SK S7N 5A9, Canada
关键词
D O I
暂无
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Gene expression profiles obtained from time-series microarray experiments can reveal important information about biological processes. However, conducting such experiments is costly and time consuming. The cost and time required are linearly proportional to sample size. Therefore, it is worthwhile to provide a way to determine the minimal number of samples or trials required in a microarray experiment. One of the uses of microarray hybridization experiments is to group together genes with similar patterns of the expression using clustering techniques. In this paper, the k -means clustering technique is used. The basic idea of our approach is an incremental process in which testing, analysis and evaluation are integrated and iterated. The process is terminated when the evaluation of the results of two consecutive experiments shows they are sufficiently close. Two measures of "closeness" are proposed and two real microarray datasets are used to validate our approach. The results show that the sample size required to cluster genes in these two datasets can be reduced; i.e. the same results can be achieved with less cost. The approach can be used with other clustering techniques as well.
引用
收藏
页码:401 / 406
页数:6
相关论文
共 50 条
  • [31] Selection of cluster hierarchy depth in hierarchical clustering using K-means algorithm
    Lee, Shinwon
    Lee, Wonhee
    Chung, Sungjong
    An, Dongun
    Bok, Ingeun
    Ryu, Hongjin
    2007 INTERNATIONAL SYMPOSIUM ON INFORMATION TECHNOLOGY CONVERGENCE, PROCEEDINGS, 2007, : 27 - +
  • [32] A Fast K-Means Clustering Using Prototypes for Initial Cluster Center Selection
    Kumar, K. Mahesh
    Reddy, A. Rama Mohan
    PROCEEDINGS OF 2015 IEEE 9TH INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS AND CONTROL (ISCO), 2015,
  • [33] K-means Clustering and Principal Components Analysis of Microarray Data of L1000 Landmark Genes
    Clayman, Carly L.
    Srinivasan, Satish M.
    Sangwan, Raghvinder S.
    COMPLEX ADAPTIVE SYSTEMS, 2020, 168 : 97 - 104
  • [34] Comparative Functional Classification of Plasmodium falciparum Genes Using k-means Clustering
    Osamor, Victor
    Adebiyi, Ezekiel
    Doumbia, Seydou
    IACSIT-SC 2009: INTERNATIONAL ASSOCIATION OF COMPUTER SCIENCE AND INFORMATION TECHNOLOGY - SPRING CONFERENCE, 2009, : 491 - +
  • [35] On finding the best parameters of fuzzy k-means for clustering microarray data
    Yang, Wei
    Rueda, Luis
    Ngom, Alioune
    JOURNAL OF MULTIPLE-VALUED LOGIC AND SOFT COMPUTING, 2007, 13 (1-2) : 145 - 177
  • [36] An improved K-means clustering method for cDNA microarray image segmentation
    Wang, T. N.
    Li, T. J.
    Shao, G. F.
    Wu, S. X.
    GENETICS AND MOLECULAR RESEARCH, 2015, 14 (03) : 7771 - 7781
  • [37] LPOCSIN With K-Means: An Overlapping Clustering Technique with Cluster Information
    Sarker, Partho Sarathi
    Showrov, Md. Imran Hossain
    2018 3RD INTERNATIONAL CONFERENCE ON ELECTRICAL, ELECTRONICS, COMMUNICATION, COMPUTER, AND OPTIMIZATION TECHNIQUES (ICEECCOT - 2018), 2018, : 21 - 25
  • [38] Improved initial cluster center selection in K-means clustering
    Zhu, Minchen
    Wang, Weizhi
    Huang, Jingshan
    ENGINEERING COMPUTATIONS, 2014, 31 (08) : 1661 - 1667
  • [39] Rough K-means clustering based on unbalanced degree of cluster
    Zhang, T.-F. (tfzhang@126.com), 1600, Northeast University (28):
  • [40] Spectral Comparison Using k-Means Clustering
    Ramachandran, Vignesh R.
    Mitchell, Herbert J.
    Jacobs, Samantha K.
    Tzeng, Nigel H.
    Firpi, Alexer H.
    Rodriguez, Benjamin M.
    2014 IEEE AEROSPACE CONFERENCE, 2014,