Cancer Classification from Microarray Data using Gene Feature Ranking

Abid Hasan, G. M. Maruf, Shareef, H. A. A. Mamun, Paul Kawn
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引用次数: 1

Abstract

A significant challenge in DNA (Deoxyribo Nucleic Acid) microarray analysis can be attributed to the problem of having a large number of features (genes) but with a small number of samples in the dataset. When applying statistical methods to analyse the microarray data, particular care is required to deal with problem such as the low classification accuracy of models brought about by the small number of features that have predictive capability. To overcome these problems, proper approaches for data normalisation, feature reduction, and identifying the optimal set of genes are critical. In this paper, we apply the Gene Feature Ranking [5] method to select genes with high trust values from high dimensional cancer microarray datasets. Our contribution lies in the use of a different metric for calculating the trust values that are more domain specific for cancer datasets. By choosing a pre-defined threshold based on user's knowledge, only genes that show sufficient trustworthiness to be considered for constructing the classification model are retained. Through experimentation on three microarray datasets, namely Acute Lymphoblastic Leukemia (ALL), lymph node negative primary breast cancer, and High Grade Glioma, we are able to confirm that the classification accuracy obtained by the genes selected by the modified GFR method is consistently higher than when the method was not used.
基于基因特征排序的微阵列数据癌症分类
DNA(脱氧核糖核酸)微阵列分析面临的一个重大挑战可归因于具有大量特征(基因)但数据集中样本数量少的问题。在应用统计方法对微阵列数据进行分析时,需要特别注意处理由于具有预测能力的特征较少而导致的模型分类精度低的问题。为了克服这些问题,数据归一化、特征约简和识别最佳基因集的适当方法至关重要。本文采用基因特征排序[5]方法从高维癌症微阵列数据集中选择具有高信任值的基因。我们的贡献在于使用了一种不同的度量来计算信任值,这种度量对于癌症数据集来说更具有领域特异性。通过根据用户的知识选择一个预定义的阈值,只保留那些表现出足够可信度的基因来构建分类模型。通过在急性淋巴母细胞白血病(Acute Lymphoblastic Leukemia, ALL)、淋巴结阴性原发性乳腺癌(lymph node negative primary breast cancer)和High Grade Glioma三个微阵列数据集上的实验,我们能够证实改良GFR方法所选择的基因所获得的分类准确率始终高于未使用该方法时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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