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Discovering relational-based association rules with multiple minimum supports on microarray datasets

机译:在微阵列数据集上发现具有多个最小支持的基于关系的关联规则

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Motivation: Association rule analysis methods are important techniques applied to gene expression data for finding expression relationships between genes. However, previous methods implicitly assume that all genes have similar importance, or they ignore the individual importance of each gene. The relation intensity between any two items has never been taken into consideration. Therefore, we proposed a technique named REMMAR (RElational-based Multiple Minimum supports Association Rules) algorithm to tackle this problem. This method adjusts the minimum relation support (MRS) for each gene pair depending on the regulatory relation intensity to discover more important association rules with stronger biological meaning.Results: In the actual case study of this research, REMMAR utilized the shortest distance between any two genes in the Saccharomyces cerevisiae gene regulatory network (GRN) as the relation intensity to discover the association rules from two S.cerevisiae gene expression datasets. Under experimental evaluation, REMMAR can generate more rules with stronger relation intensity, and filter out rules without biological meaning in the protein-protein interaction network (PPIN). Furthermore, the proposed method has a higher precision (100%) than the precision of reference Apriori method (87.5%) for the discovered rules use a literature survey. Therefore, the proposed REMMAR algorithm can discover stronger association rules in biological relationships dissimilated by traditional methods to assist biologists in complicated genetic exploration.
机译:动机:关联规则分析方法是应用于基因表达数据以发现基因之间表达关系的重要技术。但是,以前的方法隐式地假定所有基因都具有相似的重要性,或者它们忽略了每个基因的个别重要性。从未考虑过任何两个项目之间的关系强度。因此,我们提出了一种名为REMMAR(基于关系的多重最小支持关联规则)算法的技术来解决此问题。该方法根据调节相关强度调节每个基因对的最小关联支持(MRS),以发现更重要的,具有更强生物学意义的关联规则。结果:在本研究的实际案例研究中,REMMAR利用了任意两个之间的最短距离酿酒酵母基因调控网络(GRN)中的两个基因作为关联强度,以从两个酿酒酵母基因表达数据集中发现关联规则。在实验评估下,REMMAR可以生成更多具有更强关联强度的规则,并过滤掉蛋白质-蛋白质相互作用网络(PPIN)中没有生物学意义的规则。此外,对于发现的规则使用文献调查,所提出的方法比参考先验方法的精度(87.5%)具有更高的精度(100%)。因此,提出的REMMAR算法可以发现传统方法所异化的生物学关系中更强的关联规则,以协助生物学家进行复杂的遗传探索。

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