Bezerra George B, Cançado Geraldo M A, Menossi Marcelo, Castro Leandro N de, Von Zuben Fernando J
Laboratório de Bioinformática e Computação Bio-Inspirada (LBiC/DCA/FEEC), UNICAMP, Caixa Postal 6101, 13083-852 Campinas, SP, Brazil.
Genet Mol Res. 2005 Sep 30;4(3):514-24.
Several advanced techniques have been proposed for data clustering and many of them have been applied to gene expression data, with partial success. The high dimensionality and the multitude of admissible perspectives for data analysis of gene expression require additional computational resources, such as hierarchical structures and dynamic allocation of resources. We present an immune-inspired hierarchical clustering device, called hierarchical artificial immune network (HaiNet), especially devoted to the analysis of gene expression data. This technique was applied to a newly generated data set, involving maize plants exposed to different aluminum concentrations. The performance of the algorithm was compared with that of a self-organizing map, which is commonly adopted to deal with gene expression data sets. More consistent and informative results were obtained with HaiNet.
已经提出了几种用于数据聚类的先进技术,其中许多技术已应用于基因表达数据,但仅取得了部分成功。基因表达数据分析的高维度和众多可允许的视角需要额外的计算资源,例如层次结构和资源的动态分配。我们提出了一种受免疫启发的层次聚类装置,称为层次人工免疫网络(HaiNet),特别致力于基因表达数据的分析。该技术应用于一个新生成的数据集,该数据集涉及暴露于不同铝浓度的玉米植株。将该算法的性能与常用于处理基因表达数据集的自组织映射算法的性能进行了比较。使用HaiNet获得了更一致且更具信息量的结果。