Knowledge discovery of gene functions and metabolic pathways

Su-shing Chen
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引用次数: 2

Abstract

In the biosphere, biological phenomena manifest as gene functions and metabolic pathways. A challenging problem is the representation, learning and reasoning about these biochemical reactions, relationships between genotypes and phenotypes, and their interplay. Building knowledge bases of gene functions and metabolic pathways often requires integrating various different kinds of knowledge into a single hierarchical framework. On one hand, the knowledge of metabolic pathways consists of kinetic simulation, graphical representation and databases. On the other hand, the complexity of gene functions includes QTL (quantitative trait locus) mappings and higher-level data mining analysis. This paper describes a hierarchical model of cognitive maps for representing signaling and metabolism knowledge as well as genotype-to-phenotype mappings. Cognitive maps are bi-directional graphs that can learn and reason quantitatively and qualitatively. This knowledge representation scheme, coupled with numerical and statistical packages, becomes a useful tool for understanding genomics and metabolism.
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基因功能和代谢途径的知识发现
在生物圈中,生物现象表现为基因功能和代谢途径。一个具有挑战性的问题是表征,学习和推理这些生化反应,基因型和表型之间的关系,以及它们之间的相互作用。建立基因功能和代谢途径的知识库通常需要将各种不同类型的知识整合到一个单一的层次框架中。一方面,代谢途径的知识由动力学模拟、图形表示和数据库组成。另一方面,基因功能的复杂性包括QTL(数量性状位点)映射和更高层次的数据挖掘分析。本文描述了表征信号和代谢知识以及基因型到表型映射的认知地图的层次模型。认知地图是双向图形,可以定量和定性地学习和推理。这种知识表示方案,加上数值和统计包,成为理解基因组学和代谢的有用工具。
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