利用线性混合效应模型对各种类型的微阵列数据进行综合分析

Sung-Gon Yi, T. Park
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引用次数: 0

摘要

随着实验规模的增加,将不同类型的微阵列(如来自不同实验室或医院的配对和非配对微阵列)组合在一起是很常见的。因此,在考虑数据集之间的异质性后,对微阵列数据进行综合分析以得出综合结论是很重要的。微阵列实验的主要目的之一是鉴定不同实验组之间的差异表达基因。我们提出了线性混合效应模型,用于异构微阵列数据集的集成分析。所提出的LMe模型是使用从三家不同医院收集的133个微阵列数据来说明的。通过模拟研究,我们将提出的LMe模型方法与meta分析和ANOVA模型方法进行了比较。LMe模型方法被证明比其他方法提供更高的功率。
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Integrated analysis of the various types of microarray data using linear-mixed effects models
As the magnitude of the experiment increases, it is common to combine various types of microarrays such as paired and non-paired microarrays from different laboratories or hospitals. Thus, it is important to analyze microarray data together to derive a combined conclusion after accounting for heterogeneity among data sets. One of the main objectives of the microarray experiment is to identify differentially expressed genes among the different experimental groups. We propose the linear-mixed effect model for the integrated analysis of the heterogeneous microarray data sets. The proposed LMe model was illustrated using the data from 133 microarrays collected at three different hospitals. Though simulation studies, we compared the proposed LMe model approach with the meta-analysis and the ANOVA model approaches. The LMe model approach was shown to provide higher powers than the other approaches.
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