cDNA微阵列数据的目标驱动分析

Youlian Pan, Jitao Zou, Yi Huang, Ziying Liu, Sieu Phan, Fazel Famili
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引用次数: 4

摘要

微阵列技术已广泛应用于高通量基因表达研究。许多生物信息学工具可用于分析微阵列数据。在数据挖掘过程中,必须明确目标,以便为有针对性的知识发现过程装配一套合适的工具。在本文中,我们通过使用来自芸苔属胚乳的微阵列数据集和EST数据来验证我们的过程来解决这个问题。我们最感兴趣的是哪些基因在芸苔属胚乳中高度表达,以及它们在胚胎发育不同阶段的变化和功能。我们还基于基因本体分析进行了基因表征。我们的研究结果表明,设计一个同时考虑对数比和信号强度的特定数据挖掘工作流可以提高知识发现过程。通过这种方法,我们发现了甘蓝型油菜胚乳中两个最重要的转录因子LEC1和WRI1之间的调控关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Goal Driven Analysis of cDNA Microarray Data
Microarray technology has been used extensively for high throughput gene expression studies. Many bioinformatics tools are available for analysis of microarray data. In the data mining process, it is important to be goal oriented so that a set of proper tools can be assembled for the targeted knowledge discovery process. In this paper, we tackle this issue by using a microarray dataset from Brassica endosperm together with EST data to validate our process. We were most interested in which genes are highly expressed in Brassica endosperm and their variations and functions over various stages in embryo development. We also performed gene characterization based on gene ontology analysis. Our results indicate that designing a specific data mining workflow that considers both the log ratio and signal intensity enhances knowledge discovery process. Through this approach, we were able to find the regulatory relationship between two most important transcription factors, LEC1 and WRI1 in the endosperm of Brassica napus.
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