Department of Physiology, Institute of Biomedicine and Translational Medicine, University of Tartu, Tartu, Estonia, Quretec Ltd, Tartu, Estonia, Centre for Excellence in Translational Medicine, University of Tartu, Tartu, Estonia, Department of Neuroscience and Pharmacology, Faculty of Health Sciences, University of Copenhagen, Copenhagen, Denmark and Department of Computer Science, University of Tartu, Tartu, Estonia.
Nucleic Acids Res. 2014 Apr;42(8):e72. doi: 10.1093/nar/gku158. Epub 2014 Feb 27.
Regardless of the advent of high-throughput sequencing, microarrays remain central in current biomedical research. Conventional microarray analysis pipelines apply data reduction before the estimation of differential expression, which is likely to render the estimates susceptible to noise from signal summarization and reduce statistical power. We present a probe-level framework, which capitalizes on the high number of concurrent measurements to provide more robust differential expression estimates. The framework naturally extends to various experimental designs and target categories (e.g. transcripts, genes, genomic regions) as well as small sample sizes. Benchmarking in relation to popular microarray and RNA-sequencing data-analysis pipelines indicated high and stable performance on the Microarray Quality Control dataset and in a cell-culture model of hypoxia. Experimental-data-exhibiting long-range epigenetic silencing of gene expression was used to demonstrate the efficacy of detecting differential expression of genomic regions, a level of analysis not embraced by conventional workflows. Finally, we designed and conducted an experiment to identify hypothermia-responsive genes in terms of monotonic time-response. As a novel insight, hypothermia-dependent up-regulation of multiple genes of two major antioxidant pathways was identified and verified by quantitative real-time PCR.
尽管高通量测序已经问世,但微阵列在当前的生物医学研究中仍然是核心技术。传统的微阵列分析流程在估计差异表达之前应用数据缩减,这可能会使估计值容易受到信号汇总噪声的影响,并降低统计能力。我们提出了一种探针级别的框架,该框架利用大量并发测量来提供更稳健的差异表达估计。该框架自然适用于各种实验设计和目标类别(例如转录本、基因、基因组区域)以及小样本量。与流行的微阵列和 RNA 测序数据分析流程的基准测试表明,在 Microarray Quality Control 数据集和缺氧细胞培养模型中具有高且稳定的性能。具有长程表观遗传沉默基因表达的实验数据被用于证明检测基因组区域差异表达的功效,这是常规工作流程不包括的分析水平。最后,我们设计并进行了一项实验,以确定在单调时间反应方面的低温反应性基因。作为一个新的见解,确定并通过定量实时 PCR 验证了两个主要抗氧化途径的多个基因的低温依赖性上调。