Brennan H. Baker, Sheela Sathyanarayana, Adam A. Szpiro, James W. MacDonald, Alison G. Paquette
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引用次数: 0
摘要
协变量数据缺失是基因表达观测研究中尚未解决的一个常见问题。在这里,我们提出了一种多重估算方法,通过将转录组的主成分分析纳入多重估算预测模型来避免偏差,从而适应高维基因表达数据。使用三个数据集进行的模拟研究表明,该方法在发现真正的阳性差异表达基因、限制误发现率和最小化偏倚方面优于完全情况分析和单一归因分析。这种方法可通过 R Bioconductor 软件包 RNAseqCovarImpute 轻松实现,该软件包可与 limma-voom 差异表达分析管道集成。
RNAseqCovarImpute: a multiple imputation procedure that outperforms complete case and single imputation differential expression analysis
Missing covariate data is a common problem that has not been addressed in observational studies of gene expression. Here, we present a multiple imputation method that accommodates high dimensional gene expression data by incorporating principal component analysis of the transcriptome into the multiple imputation prediction models to avoid bias. Simulation studies using three datasets show that this method outperforms complete case and single imputation analyses at uncovering true positive differentially expressed genes, limiting false discovery rates, and minimizing bias. This method is easily implemented via an R Bioconductor package, RNAseqCovarImpute that integrates with the limma-voom pipeline for differential expression analysis.
Genome BiologyBiochemistry, Genetics and Molecular Biology-Genetics
CiteScore
21.00
自引率
3.30%
发文量
241
审稿时长
2 months
期刊介绍:
Genome Biology stands as a premier platform for exceptional research across all domains of biology and biomedicine, explored through a genomic and post-genomic lens.
With an impressive impact factor of 12.3 (2022),* the journal secures its position as the 3rd-ranked research journal in the Genetics and Heredity category and the 2nd-ranked research journal in the Biotechnology and Applied Microbiology category by Thomson Reuters. Notably, Genome Biology holds the distinction of being the highest-ranked open-access journal in this category.
Our dedicated team of highly trained in-house Editors collaborates closely with our esteemed Editorial Board of international experts, ensuring the journal remains on the forefront of scientific advances and community standards. Regular engagement with researchers at conferences and institute visits underscores our commitment to staying abreast of the latest developments in the field.