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Classical and Bayesian random-effects meta-analysis models with sample quality weights in gene expression studies

机译:古典和贝叶斯随机效应元分析模型,具有基因表达研究的质量体重

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Random-effects (RE) models are commonly applied to account for heterogeneity in effect sizes in gene expression meta-analysis. The degree of heterogeneity may differ due to inconsistencies in sample quality. High heterogeneity can arise in meta-analyses containing poor quality samples. We applied sample-quality weights to adjust the study heterogeneity in the DerSimonian and Laird (DSL) and two-step DSL (DSLR2) RE models and the Bayesian random-effects (BRE) models with unweighted and weighted data, Gibbs and Metropolis-Hasting (MH) sampling algorithms, weighted common effect, and weighted between-study variance. We evaluated the performance of the models through simulations and illustrated application of the methods using Alzheimer's gene expression datasets. Sample quality adjusting within study variance (wP6) models provided an appropriate reduction of differentially expressed (DE) genes compared to other weighted functions in classical RE models. The BRE model with a uniform(0,1) prior was appropriate for detecting DE genes as compared to the models with other prior distributions. The precision of DE gene detection in the heterogeneous data was increased with the DSLR2wP6 weighted model compared to the DSLwP6 weighted model. Among the BRE weighted models, the wP6weighted- and unweighted-data models and both Gibbs- and MH-based models performed similarly. The wP6 weighted common-effect model performed similarly to the unweighted model in the homogeneous data, but performed worse in the heterogeneous data. The wP6weighted data were appropriate for detecting DE genes with high precision, while the wP6weighted between-study variance models were appropriate for detecting DE genes with high overall accuracy. Without the weight, when the number of genes in microarray increased, the DSLR2 performed stably, while the overall accuracy of the BRE model was reduced. When applying the weighted models in the Alzheimer's gene expression data, the number of DE genes decreased in all metadata sets with the DSLR2wP6weighted and the wP6weighted between study variance models. Four hundred and forty-six DE genes identified by the wP6weighted between study variance model could be potentially down-regulated genes that may contribute to good classification of Alzheimer's samples. The application of sample quality weights can increase precision and accuracy of the classical RE and BRE models; however, the performance of the models varied depending on data features, levels of sample quality, and adjustment of parameter estimates.
机译:通常适用于随机效应(RE)模型以考虑基因表达META分析中效果大小的异质性。由于样品质量不一致,异质性程度可能不同。在含有差的质量样品的荟萃分析中可能出现高异质性。我们应用了样品质量的重量,以调整狄奥尼昂和莱尔德(DSL)和两步DSL(DSLR2)RE模型和贝叶斯随机效应(BRE)模型的研究异质性,具有未加权和加权数据,GIBBS和Metropolis-Hasting (MH)采样算法,加权常见效果,研究与研究方差之间的加权。我们通过模拟评估模型的性能,并使用Alzheimer的基因表达数据集显示了该方法的应用。在研究方差(WP6)模型内调整的样本质量提供了与经典RE模型中的其他加权功能相比的适当减少差异表达(DE)基因。具有均匀(0,1)的BRE模型适用于与其他现有分布的模型相比检测DE基因。与DSLR66加权模型相比,DSLR2WP6加权模型与DSLR2WP6加权模型相比,DE基因检测的精度增加。在BRE加权模型中,类似的WP6和未加权数据模型以及基于GIBBS和MH的模型。 WP6加权共同效应模型与均匀数据中的未加权模型类似地执行,但在异构数据中表现差。 WP6重量数据适合于检测高精度的DE基因,而WP6重量之间的研究方差模型适合检测具有高总体精度的DE基因。如果没有重量,当微阵列中的基因数增加时,DSLR2稳定地进行,而BRE模型的整体精度降低。在Alzheimer的基因表达数据中应用加权模型时,所有元数据集中的DE基因的数量减少,DSLR2WP6重量和研究方差模型之间的WP6重量。通过研究方差模型的WP6重量鉴定的四百四十六个基因可能是可能的下调基因,可能有助于良好的阿尔茨海默样品分类。样品质量重量的应用可以提高经典RE和BRE模型的精度和准确性;然而,模型的性能根据数据特征,样本质量水平和参数估计的调整而变化。

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