Bruland Torunn, Anderssen Endre, Doseth Berit, Bergum Hallgeir, Beisvag Vidar, Laegreid Astrid
Department of Cancer Research and Molecular Medicine, Faculty of Medicine, Norwegian University of Science and Technology (NTNU), N-7489 Trondheim, Norway.
BMC Genomics. 2007 Oct 18;8:377. doi: 10.1186/1471-2164-8-377.
The measurement of gene expression using microarray technology is a complicated process in which a large number of factors can be varied. Due to the lack of standard calibration samples such as are used in traditional chemical analysis it may be a problem to evaluate whether changes done to the microarray procedure actually improve the identification of truly differentially expressed genes. The purpose of the present work is to report the optimization of several steps in the microarray process both in laboratory practices and in data processing using criteria that do not rely on external standards.
We performed a cDNA microarry experiment including RNA from samples with high expected differential gene expression termed "high contrasts" (rat cell lines AR42J and NRK52E) compared to self-self hybridization, and optimized a pipeline to maximize the number of genes found to be differentially expressed in the "high contrasts" RNA samples by estimating the false discovery rate (FDR) using a null distribution obtained from the self-self experiment. The proposed high-contrast versus self-self method (HCSSM) requires only four microarrays per evaluation. The effects of blocking reagent dose, filtering, and background corrections methodologies were investigated. In our experiments a dose of 250 ng LNA (locked nucleic acid) dT blocker, no background correction and weight based filtering gave the largest number of differentially expressed genes. The choice of background correction method had a stronger impact on the estimated number of differentially expressed genes than the choice of filtering method. Cross platform microarray (Illumina) analysis was used to validate that the increase in the number of differentially expressed genes found by HCSSM was real.
The results show that HCSSM can be a useful and simple approach to optimize microarray procedures without including external standards. Our optimizing method is highly applicable to both long oligo-probe microarrays which have become commonly used for well characterized organisms such as man, mouse and rat, as well as to cDNA microarrays which are still of importance for organisms with incomplete genome sequence information such as many bacteria, plants and fish.
使用微阵列技术测量基因表达是一个复杂的过程,其中大量因素可能会有所不同。由于缺乏传统化学分析中使用的标准校准样品,评估对微阵列程序所做的更改是否真的改善了对真正差异表达基因的识别可能会成为一个问题。本研究的目的是报告在实验室操作和数据处理中,使用不依赖外部标准的标准对微阵列过程中的几个步骤进行优化。
我们进行了一项cDNA微阵列实验,将来自具有高预期差异基因表达的样品(称为“高对比度”,大鼠细胞系AR42J和NRK52E)的RNA与自身杂交进行比较,并优化了一个流程,通过使用从自身杂交实验获得的空分布估计错误发现率(FDR),以最大化在“高对比度”RNA样品中发现的差异表达基因的数量。所提出的高对比度与自身杂交方法(HCSSM)每次评估仅需要四个微阵列。研究了封闭试剂剂量、过滤和背景校正方法的影响。在我们的实验中,250 ng锁核酸(LNA) dT封闭剂的剂量、不进行背景校正和基于权重的过滤产生了最多的差异表达基因。背景校正方法的选择对差异表达基因估计数量的影响比过滤方法的选择更大。使用跨平台微阵列(Illumina)分析来验证通过HCSSM发现的差异表达基因数量的增加是真实的。
结果表明,HCSSM可以是一种有用且简单的方法,用于在不包括外部标准的情况下优化微阵列程序。我们的优化方法高度适用于长寡核苷酸探针微阵列(已广泛用于人类、小鼠和大鼠等特征明确的生物体)以及cDNA微阵列(对于许多细菌、植物和鱼类等基因组序列信息不完整的生物体仍然很重要)。