Evaluation of Different Normalization and Analysis Procedures for Illumina Gene Expression Microarray Data Involving Small Changes.

Daniel M Johnstone, Carlos Riveros, Moones Heidari, Ross M Graham, Debbie Trinder, Regina Berretta, John K Olynyk, Rodney J Scott, Pablo Moscato, Elizabeth A Milward
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引用次数: 12

Abstract

While Illumina microarrays can be used successfully for detecting small gene expression changes due to their high degree of technical replicability, there is little information on how different normalization and differential expression analysis strategies affect outcomes. To evaluate this, we assessed concordance across gene lists generated by applying different combinations of normalization strategy and analytical approach to two Illumina datasets with modest expression changes. In addition to using traditional statistical approaches, we also tested an approach based on combinatorial optimization. We found that the choice of both normalization strategy and analytical approach considerably affected outcomes, in some cases leading to substantial differences in gene lists and subsequent pathway analysis results. Our findings suggest that important biological phenomena may be overlooked when there is a routine practice of using only one approach to investigate all microarray datasets. Analytical artefacts of this kind are likely to be especially relevant for datasets involving small fold changes, where inherent technical variation-if not adequately minimized by effective normalization-may overshadow true biological variation. This report provides some basic guidelines for optimizing outcomes when working with Illumina datasets involving small expression changes.

Abstract Image

Abstract Image

涉及微小变化的Illumina基因表达微阵列数据的不同归一化和分析方法的评价。
虽然Illumina微阵列由于其高度的技术可重复性,可以成功地用于检测小的基因表达变化,但关于不同的归一化和差异表达分析策略如何影响结果的信息很少。为了评估这一点,我们对两个表达变化不大的Illumina数据集应用不同的归一化策略和分析方法组合产生的基因列表进行了一致性评估。除了使用传统的统计方法外,我们还测试了一种基于组合优化的方法。我们发现,标准化策略和分析方法的选择对结果都有很大影响,在某些情况下,导致基因列表和随后的通路分析结果存在实质性差异。我们的研究结果表明,当只使用一种方法来研究所有微阵列数据集的常规做法时,重要的生物学现象可能会被忽视。这类分析人工制品可能特别适用于涉及小折叠变化的数据集,其中固有的技术变化-如果没有通过有效的归一化充分最小化-可能会掩盖真正的生物变化。本报告提供了一些基本的指导方针,用于在处理涉及小表达变化的Illumina数据集时优化结果。
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来源期刊
自引率
0.00%
发文量
0
审稿时长
11 weeks
期刊介绍: High-Throughput (formerly Microarrays, ISSN 2076-3905) is a multidisciplinary peer-reviewed scientific journal that provides an advanced forum for the publication of studies reporting high-dimensional approaches and developments in Life Sciences, Chemistry and related fields. Our aim is to encourage scientists to publish their experimental and theoretical results based on high-throughput techniques as well as computational and statistical tools for data analysis and interpretation. The full experimental or methodological details must be provided so that the results can be reproduced. There is no restriction on the length of the papers. High-Throughput invites submissions covering several topics, including, but not limited to: Microarrays, DNA Sequencing, RNA Sequencing, Protein Identification and Quantification, Cell-based Approaches, Omics Technologies, Imaging, Bioinformatics, Computational Biology/Chemistry, Statistics, Integrative Omics, Drug Discovery and Development, Microfluidics, Lab-on-a-chip, Data Mining, Databases, Multiplex Assays.
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