比较高维基因组数据整合中线性和非线性主成分的性能。

IF 0.8 4区 数学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY Statistical Applications in Genetics and Molecular Biology Pub Date : 2017-07-26 DOI:10.1515/sagmb-2016-0066
Shofiqul Islam, Sonia Anand, Jemila Hamid, Lehana Thabane, Joseph Beyene
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引用次数: 0

摘要

线性主成分分析(PCA)是一种广泛使用的方法,用于降低基因或miRNA表达数据集的维数。这种方法依赖于线性假设,往往无法捕捉数据中固有的模式和关系。因此,像核主成分分析这样的非线性方法可能是最优的。我们开发了一种基于copula的仿真算法,该算法考虑了在这些数据集中观察到的依赖程度和非线性。使用该算法,我们进行了广泛的模拟,以比较线性和核主成分分析方法在数据集成和死亡分类方面的性能。我们还使用肺癌患者基因和miRNA表达的真实数据集来比较这些方法。在这种情况下,与线性主成分相比,前几个核主成分表现出较差的性能。使用线性PCA和逻辑回归模型进行分类的降维似乎足以满足此目的。使用这两种方法中的任何一种来集成来自多个数据集的信息,可以提高结果的分类精度。
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Comparing the performance of linear and nonlinear principal components in the context of high-dimensional genomic data integration.

Linear principal component analysis (PCA) is a widely used approach to reduce the dimension of gene or miRNA expression data sets. This method relies on the linearity assumption, which often fails to capture the patterns and relationships inherent in the data. Thus, a nonlinear approach such as kernel PCA might be optimal. We develop a copula-based simulation algorithm that takes into account the degree of dependence and nonlinearity observed in these data sets. Using this algorithm, we conduct an extensive simulation to compare the performance of linear and kernel principal component analysis methods towards data integration and death classification. We also compare these methods using a real data set with gene and miRNA expression of lung cancer patients. First few kernel principal components show poor performance compared to the linear principal components in this occasion. Reducing dimensions using linear PCA and a logistic regression model for classification seems to be adequate for this purpose. Integrating information from multiple data sets using either of these two approaches leads to an improved classification accuracy for the outcome.

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来源期刊
Statistical Applications in Genetics and Molecular Biology
Statistical Applications in Genetics and Molecular Biology BIOCHEMISTRY & MOLECULAR BIOLOGY-MATHEMATICAL & COMPUTATIONAL BIOLOGY
自引率
11.10%
发文量
8
期刊介绍: Statistical Applications in Genetics and Molecular Biology seeks to publish significant research on the application of statistical ideas to problems arising from computational biology. The focus of the papers should be on the relevant statistical issues but should contain a succinct description of the relevant biological problem being considered. The range of topics is wide and will include topics such as linkage mapping, association studies, gene finding and sequence alignment, protein structure prediction, design and analysis of microarray data, molecular evolution and phylogenetic trees, DNA topology, and data base search strategies. Both original research and review articles will be warmly received.
期刊最新文献
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