Analysis and Visualization of Gene Expression Microarray Data in Human Cancer Using Self-Organizing Maps

被引:0
作者
Sampsa Hautaniemi
Olli Yli-Harja
Jaakko Astola
Päivikki Kauraniemi
Anne Kallioniemi
Maija Wolf
Jimmy Ruiz
Spyro Mousses
Olli-P. Kallioniemi
机构
[1] Tampere University of Technology,Institute of Signal Processing
[2] University of Tampere and Tampere University Hospital,Laboratory of Cancer Genetics, Institute of Medical Technology
[3] National Human Genome Research Institute,Cancer Genetics Branch
[4] National Institutes of Health,Medical Biotechnology Group
[5] VTT Technical Research Centre of Finland and University of Turku,undefined
来源
Machine Learning | 2003年 / 52卷
关键词
bioinformatics; gene expression in human cancer; self-organizing map;
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学科分类号
摘要
cDNA microarrays permit massively parallel gene expression analysis and have spawned a new paradigm in the study of molecular biology. One of the significant challenges in this genomic revolution is to develop sophisticated approaches to facilitate the visualization, analysis, and interpretation of the vast amounts of multi-dimensional gene expression data. We have applied self-organizing map (SOM) in order to meet these challenges. In essence, we utilize U-matrix and component planes in microarray data visualization and introduce general procedure for assessing significance for a cluster detected from U-matrix. Our case studies consist of two data sets. First, we have analyzed a data set containing 13,824 genes in 14 breast cancer cell lines. In the second case we show an example of the SOM in drug treatment of prostate cancer cells. Our results indicate that (1) SOM is capable of helping finding certain biologically meaningful clusters, (2) clustering algorithms could be used for finding a set of potential predictor genes for classification purposes, and (3) comparison and visualization of the effects of different drugs is straightforward with the SOM. In summary, the SOM provides an excellent format for visualization and analysis of gene microarray data, and is likely to facilitate extraction of biologically and medically useful information.
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页码:45 / 66
页数:21
相关论文
共 122 条
[1]  
Chen D.-R.(2000)Breast cancer diagnosis using self-organizing maps for sonog-raphy Ultrasound in Medicine and Biology 26 405-411
[2]  
Chang R.-F.(2002)Evaluation and comparison of clustering algorithms in analyzing ES cell gene expression data Statistica Sinica 12 241-262
[3]  
Huang Y.-L.(1998)Cluster analysis and display of genome-wide expression patterns Proceedings of the National Academy of Sciences, USA 95 14863-14868
[4]  
Chen G.(2002)Judging the quality of gene expression-based clustering methods using gene annotation Genome Research 12 1574-1581
[5]  
Jaradat S.(2001)Gene-expression profiles in hereditary breast cancer The New England Journal of Medicine 344 539-548
[6]  
Banerjee N.(2000)Genomic analysis of gene expression in C. elegans Science 290 809-812
[7]  
Tanaka T.(1992)Comparative genomic hybridization for molecular cytogenetic analysis of solid tumors Science 258 818-882
[8]  
Ko M.(1998)Bibliography of self-organizing map (SOM) papers: 1981–1997 Neural Computing Surveys 1 102-350
[9]  
Zhang M.(2002)Clustering based on conditional distributions in an auxiliary space Neural Computation 14 217-239
[10]  
Eisen M.(2001)New amplified and highly expressed genes discovered in the ERBB2 amplicon in breast cancer by cDNA microarrays Cancer Research 61 8235-8240