肿瘤预测的基因表达和全基因组DNA甲基化综合分析:一种基于关联规则挖掘的方法

Saurav Mallik, A. Mukhopadhyay, U. Maulik, S. Bandyopadhyay
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引用次数: 34

摘要

统计分析和关联规则挖掘是两种最有效的技术,其中第一个用于识别不同类型样本或实验条件下差异表达/甲基化基因,第二个用于确定它们之间的表达/甲基化关系。在本文中,我们对mRNA表达和DNA甲基化数据集进行了统计方法和关联规则挖掘的综合分析,以预测子宫平滑肌瘤。此外,我们还提出了一种新的基于规则的分类器。根据16种不同的规则兴趣度度量,我们对Apriori关联规则挖掘算法从训练数据中生成的关联规则应用了基于遗传算法的秩聚合技术。在确定规则的等级后,我们对每个测试点进行了多数投票技术,通过加权和法确定其类别标签(即肿瘤或正常类别标签)。我们使用k-fold交叉验证在组合数据集上运行了这个分类器,并与其他流行的基于规则的分类器进行了性能比较分析。最后,我们预测了在子宫平滑肌瘤肿瘤形成中起主要作用的一些重要基因的状态(分别通过肿瘤和正常类别标签关联规则中的频率分析)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated analysis of gene expression and genome-wide DNA methylation for tumor prediction: An association rule mining-based approach
Statistical analysis and association rule mining are two most efficient techniques, where the first one is used to identify differentially expressed/methylated genes across different types of samples or experimental conditions and the second one is used to determine expression/methylation relationships among them. In this article, we have performed an integrated analysis of statistical methods and association rule mining on mRNA expression and DNA methylation datasets for the prediction of Uterine Leiomyoma. Moreover, we have proposed a novel rule-base classifier. Depending on 16 different rule-interestingness measures, we have applied a Genetic Algorithm based rank aggregation technique on the association rules which are generated from the training data by Apriori association rule mining algorithm. After determining the ranks of the rules, we have conducted a majority voting technique on each test point to determine its class-label (i.e. tumor or normal class-label) through weighted-sum method. We have run this classifier on the combined dataset using k-fold cross-validation and also performed a comparative performance analysis with other popular rule-base classifiers. Finally, we have predicted the status of some important genes (through frequency analysis in association rules for tumor and normal class-labels individually) that have a major role for tumor formation in Uterine Leiomyoma.
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