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A data mining framework based on boundary-points for gene selection from DNA-microarrays: Pancreatic Ductal Adenocarcinoma as a case study

机译:一个基于边界点的数据挖掘框架,用于从DNA微阵列中选择基因:胰腺导管腺癌为例

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摘要

Gene selection (or feature selection) from DNA-microarray data can be focused on different techniques, which generally involve statistical tests, data mining and machine learning. In recent years there has been an increasing interest in using hybrid-technique sets to face the problem of meaningful gene selection; nevertheless, this issue remains a challenge. In an effort to address the situation, this paper proposes a novel hybrid framework based on data mining techniques and tuned to select gene subsets, which are meaningfully related to the target disease conducted in DNA-microarray experiments. For this purpose, the framework above deals with approaches such as statistical significance tests, cluster analysis, evolutionary computation, visual analytics and boundary points. The latter is the core technique of our proposal, allowing the framework to define two methods of gene selection. Another novelty of this work is the inclusion of the age of patients as an additional factor in our analysis, which can leading to gaining more insight into the disease. In fact, the results reached in this research have been very promising and have shown their biological validity. Hence, our proposal has resulted in a methodology that can be followed in the gene selection process from DNA-microarray data.
机译:从DNA微阵列数据中选择基因(或选择特征)可以集中在不同的技术上,这些技术通常涉及统计测试,数据挖掘和机器学习。近年来,人们越来越关注使用混合技术集来解决有意义的基因选择问题。但是,这个问题仍然是一个挑战。为了解决这种情况,本文提出了一种基于数据挖掘技术的新型混合框架,并对其进行了调整以选择基因子集,这些子集与在DNA微阵列实验中进行的目标疾病有意义地相关。为此,上述框架处理诸如统计显着性检验,聚类分析,进化计算,视觉分析和边界点之类的方法。后者是我们建议的核心技术,允许框架定义两种基因选择方法。这项工作的另一个新颖之处在于,将患者的年龄作为我们分析中的附加因素,可以使人们对该疾病有更多的了解。实际上,在这项研究中获得的结果是非常有希望的,并且已经显示出它们的生物学有效性。因此,我们的建议提出了一种可以从DNA微阵列数据中进行基因选择的方法。

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