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Investigating the Minimum Required Number of Genes for the Classification of Neuromuscular Disease Microarray Data

机译:调查用于神经肌肉疾病微阵列数据分类的基因的最小所需数目

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摘要

The discovery of potential microarray markers, which will expedite molecular diagnosis/prognosis and provide reliable results to clinical decision-making and treatment selection for patients, is of paramount importance. Feature selection techniques, which aim at minimizing the dimensionality of the microarray data by keeping the most statistically significant genes, are a powerful approach toward this goal. In this paper, we investigate the minimum required subsets of genes, which best classify neuromuscular disease data. For this purpose, we implemented a methodology pipeline that facilitated the use of multiple feature selection methods and subsequent performance of data classification. Five feature selection methods on datasets from ten different neuromuscular diseases were utilized. Our findings reveal subsets of very small number of genes, which can successfully classify normal/disease samples. Interestingly, we observe that similar classification results may be obtained from different subsets of genes. The proposed methodology can expedite the identification of small gene subsets with high-classification accuracy that could ultimately be used in the genetics clinics for diagnostic, prognostic, and pharmacogenomic purposes.
机译:潜在的微阵列标记物的发现至关重要,这将加速分子诊断/预后并为患者的临床决策和治疗选择提供可靠的结果。特征选择技术旨在通过保留最具有统计意义的基因来最小化微阵列数据的维数,是实现此目标的强大方法。在本文中,我们研究了最少需要的基因子集,该子集对神经肌肉疾病数据进行了最佳分类。为此,我们实施了一种方法流程,以促进多种特征选择方法的使用以及随后的数据分类性能。利用来自十种不同神经肌肉疾病的数据集的五种特征选择方法。我们的发现揭示了极少数基因的子集,可以成功地对正常/疾病样本进行分类。有趣的是,我们观察到可以从基因的不同子集获得相似的分类结果。所提出的方法可以加快分类准确度高的小基因亚群的识别,最终可用于遗传学诊所进行诊断,预后和药物基因组学研究。

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