基于相关性的基因表达数据线性判别分类。

M. Pan, J. Zhang
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引用次数: 3

摘要

微阵列基因表达技术为患者分类提供了一种系统的方法。然而,微阵列数据由于其大维度、小样本量和基因之间的潜在相关性而带来了巨大的计算挑战。最近的一项研究表明,与之前的一些结果相反,基因-基因相关性对分类模型的准确性有积极的影响。在本研究中,使用了一种最新发展的基于相关的分类器——随机子空间(RS) Fisher线性判别器(FLDs)。利用模拟数据集和真实数据集研究了基因-基因相关性对该分类器和其他分类器性能的影响。使用交叉验证框架评估每个分类器使用模拟数据集或真实数据集的性能,并计算误分类率(MRs)。使用模拟数据,当有更多的相关基因时,基于相关性的分类器的平均MRs随着相关性的增加而降低。使用真实数据,基于相关性的分类器优于非基于相关性的分类器,特别是当基因-基因相关性较高时。集成RS-FLD分类器是一种潜在的先进计算方法。基于相关性的集合RS-FLD分类器是有效的,并受益于基因-基因相关性,特别是当相关性高时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Correlation-based linear discriminant classification for gene expression data.
Microarray gene expression technology provides a systematic approach to patient classification. However, microarray data pose a great computational challenge owing to their large dimensionality, small sample sizes, and potential correlations among genes. A recent study has shown that gene-gene correlations have a positive effect on the accuracy of classification models, in contrast to some previous results. In this study, a recently developed correlation-based classifier, the ensemble of random subspace (RS) Fisher linear discriminants (FLDs), was utilized. The impact of gene-gene correlations on the performance of this classifier and other classifiers was studied using simulated datasets and real datasets. A cross-validation framework was used to evaluate the performance of each classifier using the simulated datasets or real datasets, and misclassification rates (MRs) were computed. Using the simulated data, the average MRs of the correlation-based classifiers decreased as the correlations increased when there were more correlated genes. Using real data, the correlation-based classifiers outperformed the non-correlation-based classifiers, especially when the gene-gene correlations were high. The ensemble RS-FLD classifier is a potential state-of-the-art computational method. The correlation-based ensemble RS-FLD classifier was effective and benefited from gene-gene correlations, particularly when the correlations were high.
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