Chen Chin-Fu, Feng Xin, Szeto Jack
Department of Genetics and Biochemistry, 100 Jordan Hall, Clemson University, Clemson, South Carolina 29634, USA.
Comput Biol Chem. 2006 Oct;30(5):372-81. doi: 10.1016/j.compbiolchem.2006.08.004. Epub 2006 Sep 20.
Gene expression profiling by microarray technology is usually difficult to interpret into a simpler pattern. One approach to resolve the complexity of gene expression profiles is the application of artificial neural networks (ANNs). A potential difficulty in this strategy, however, is that the non-linear nature of ANN makes it essentially a 'black-box' computation process. Addition of a fuzzy logic approach is useful because it can complement ANN by explicitly specifying membership function during computation. We employed a hybrid approach of neural network and fuzzy logic to further analyze a published microarray study of gene responses to eight bacteria in human macrophages. The original analysis by hierarchical clustering found common gene responses to all bacteria but did not address individual responses. Our method allowed exploration of the gene response of the host to individual bacterium. We implemented a two-layer, feed-forward neural network containing the principle of 'competitive learning' (i.e. 'winner-take-all'). The weights of the trained neural network were fed into a fuzzy logic inference system. A new measurement, called the impact rating (IR) was also introduced to explore the degree of importance of each gene. To assess the reliability of the IR value, a bootstrap re-sampling method was applied to the dataset and a confidence level for each IR was obtained. Our approach has successfully uncovered the unique features of host response to individual bacterium. Further, application of gene ontology (GO) annotation to the genes of high IR values in each response has suggested new biological pathways for individual host-pathogen interactions.
通过微阵列技术进行基因表达谱分析通常难以简化为更简单的模式。解决基因表达谱复杂性的一种方法是应用人工神经网络(ANN)。然而,这种策略的一个潜在困难是,ANN的非线性性质使其本质上成为一个“黑箱”计算过程。添加模糊逻辑方法很有用,因为它可以在计算过程中通过明确指定隶属函数来补充ANN。我们采用神经网络和模糊逻辑的混合方法,进一步分析了一项已发表的关于人类巨噬细胞对八种细菌基因反应的微阵列研究。最初通过层次聚类分析发现了对所有细菌的共同基因反应,但没有涉及个体反应。我们的方法允许探索宿主对单个细菌的基因反应。我们实现了一个包含“竞争学习”(即“胜者全得”)原则的两层前馈神经网络。将训练好的神经网络的权重输入到模糊逻辑推理系统中。还引入了一种新的测量方法,称为影响评分(IR),以探索每个基因的重要程度。为了评估IR值的可靠性,对数据集应用了自助重采样方法,并获得了每个IR的置信水平。我们的方法成功地揭示了宿主对单个细菌反应的独特特征。此外,将基因本体(GO)注释应用于每个反应中高IR值的基因,为个体宿主-病原体相互作用提出了新的生物学途径。