Department of Computer Science, Wake Forest University, Winston-Salem, NC 27109, USA.
BMC Immunol. 2010 Aug 3;11:41. doi: 10.1186/1471-2172-11-41.
Dendritic cells (DC) play a central role in primary immune responses and become potent stimulators of the adaptive immune response after undergoing the critical process of maturation. Understanding the dynamics of DC maturation would provide key insights into this important process. Time course microarray experiments can provide unique insights into DC maturation dynamics. Replicate experiments are necessary to address the issues of experimental and biological variability. Statistical methods and averaging are often used to identify significant signals. Here a novel strategy for filtering of replicate time course microarray data, which identifies consistent signals between the replicates, is presented and applied to a DC time course microarray experiment.
The temporal dynamics of DC maturation were studied by stimulating DC with poly(I:C) and following gene expression at 5 time points from 1 to 24 hours. The novel filtering strategy uses standard statistical and fold change techniques, along with the consistency of replicate temporal profiles, to identify those differentially expressed genes that were consistent in two biological replicate experiments. To address the issue of cluster reproducibility a consensus clustering method, which identifies clusters of genes whose expression varies consistently between replicates, was also developed and applied. Analysis of the resulting clusters revealed many known and novel characteristics of DC maturation, such as the up-regulation of specific immune response pathways. Intriguingly, more genes were down-regulated than up-regulated. Results identify a more comprehensive program of down-regulation, including many genes involved in protein synthesis, metabolism, and housekeeping needed for maintenance of cellular integrity and metabolism.
The new filtering strategy emphasizes the importance of consistent and reproducible results when analyzing microarray data and utilizes consistency between replicate experiments as a criterion in both feature selection and clustering, without averaging or otherwise combining replicate data. Observation of a significant down-regulation program during DC maturation indicates that DC are preparing for cell death and provides a path to better understand the process. This new filtering strategy can be adapted for use in analyzing other large-scale time course data sets with replicates.
树突状细胞(DC)在初级免疫反应中发挥核心作用,并在经历关键的成熟过程后成为适应性免疫反应的有力刺激物。了解 DC 成熟的动态将为这一重要过程提供关键的见解。时间过程微阵列实验可以提供对 DC 成熟动态的独特见解。为了解决实验和生物学变异性的问题,需要进行重复实验。统计方法和平均值通常用于识别显著信号。本文提出了一种用于过滤重复时间过程微阵列数据的新策略,该策略可识别重复之间的一致信号,并将其应用于 DC 时间过程微阵列实验。
通过用 Poly(I:C)刺激 DC 并在 1 至 24 小时的 5 个时间点上跟踪基因表达,研究了 DC 成熟的时间动态。新的过滤策略使用标准的统计和倍数变化技术,以及重复时间曲线的一致性,来识别在两个生物学重复实验中一致的差异表达基因。为了解决聚类可重复性的问题,还开发并应用了一种共识聚类方法,该方法可识别表达在重复实验中变化一致的基因簇。对生成的聚类进行分析揭示了 DC 成熟的许多已知和新颖特征,例如特定免疫反应途径的上调。有趣的是,下调的基因比上调的基因多。结果确定了一个更全面的下调程序,包括许多参与蛋白质合成、代谢和细胞完整性和代谢所需的维持的管家基因。
新的过滤策略强调了在分析微阵列数据时一致性和可重复性结果的重要性,并将重复实验之间的一致性用作特征选择和聚类的标准,而无需对重复数据进行平均或其他组合。在 DC 成熟过程中观察到显著的下调程序表明,DC 正在为细胞死亡做准备,并为更好地理解这一过程提供了途径。这种新的过滤策略可以适用于分析具有重复的其他大规模时间过程数据集。