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A new classification method using array Comparative Genome Hybridization data, based on the concept of Limited Jumping Emerging Patterns

机译:一种新的分类方法,使用阵列比较基因组杂交数据,基于有限跳跃新兴模式的概念

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BackgroundClassification using aCGH data is an important and insufficiently investigated problem in bioinformatics. In this paper we propose a new classification method of DNA copy number data based on the concept of limited Jumping Emerging Patterns. We present the comparison of our limJEPClassifier to SVM which is considered the most successful classifier in the case of high-throughput data.ResultsOur results revealed that the classification performance using limJEPClassifier is significantly higher than other methods. Furthermore, we show that application of the limited JEP's can significantly improve classification, when strongly unbalanced data are given.ConclusionNowadays, aCGH has become a very important tool, used in research of cancer or genomic disorders. Therefore, improving classification of aCGH data can have a great impact on many medical issues such as the process of diagnosis and finding disease-related genes. The performed experiment shows that the application of Jumping Emerging Patterns can be effective in the classification of high-dimensional data, including these from aCGH experiments.
机译:使用ACGH数据的背景是生物信息学中的重要且不足的问题。在本文中,我们提出了一种基于有限跳跃新兴模式的概念的DNA拷贝数数据的新分类方法。我们将Limjepclassifier与SVM的比较进行了比较,该SVM被认为是高吞吐量数据的情况下最成功的分类器。结果表明,使用Limjepclassififer的分类性能显着高于其他方法。此外,我们表明,在给予了强烈不平衡的数据时,JEP的应用程序可以显着提高分类.ConclusionnaMAdays,Acgh已成为一种非常重要的工具,用于研究癌症或基因组疾病的研究。因此,改善ACGH数据的分类可能对许多医学问题产生很大影响,例如诊断和发现疾病相关基因的过程。所进行的实验表明,跳跃的新兴图案的应用可以在高维数据的分类中有效,包括来自ACGH实验的高维数据。

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