利用关联规则挖掘深入了解酵母组蛋白修饰的组合效应

Jiang-Hai Wang, X. Dai, Qian Xiang, Yangyang Deng, Jihua Feng, Zhiming Dai, Caisheng He
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引用次数: 0

摘要

真核生物基因组被组蛋白包装成染色质,组蛋白的化学修饰可以深刻地影响基因的表达。组蛋白修饰通常以组合方式作用,对基因表达产生不同的影响。尽管已经开发了许多实验技术和数据分析方法来研究组蛋白修饰,但在全基因组范围内确定组蛋白修饰之间的关系仍然非常困难。我们提出了一种通过关联规则挖掘来识别组蛋白修饰组合效应的方法。该方法首先识别功能修饰交易(FMTs),然后利用关联规则挖掘算法和统计方法识别组蛋白修饰模式。我们的方法成功地在两个不同的数据集上揭示了组蛋白修饰景观的两种不同的全局视图,并确定了一些修饰模式,其中一些模式得到了先前研究的支持。我们专注于组蛋白修饰的组合效应,它显著影响基因表达。我们的方法成功地确定了组蛋白修饰之间已知的相互作用,并揭示了许多以前未知的模式。我们的结果也证明了几种组蛋白修饰模式,显示酵母和人类细胞之间有显著的对应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Insights into the combinatorial effects of histone modifications in yeast using association rule mining
Eukaryotic genomes are packaged into chromatin by histone proteins whose chemical modification can profoundly influence gene expression. The histone modifications often act in combinations, which exert different effects on gene expression. Although a number of experimental techniques and data analysis methods have been developed to study histone modifications, it is still very difficult to identify the relationships among histone modifications on a genome-wide scale. We proposed a method to identify the combinatorial effects of histone modifications by association rule mining. The method first identified Functional Modification Transactions (FMTs) and then employed association rule mining algorithm and statistics methods to identify histone modification patterns. Our method succeeds in revealing two different global views of histone modification landscapes on two distinct datasets and identifying a number of modification patterns some of which are supported by previous studies. We concentrate on combinatorial effects of histone modifications which significantly affect gene expression. Our method succeeds in identifying known interactions among histone modifications and uncovering many previously unknown patterns. Our results also demonstrate several histone modification patterns which show significant correspondence between yeast and human cells.
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