Evaluation of external RNA controls for the standardisation of gene expression biomarker measurements
Open Access
- 24 November 2010
- journal article
- research article
- Published by Springer Nature in BMC Genomics
- Vol. 11 (1) , 662
- https://doi.org/10.1186/1471-2164-11-662
Abstract
Background: Gene expression profiling is an important approach for detecting diagnostic and prognostic biomarkers, and predicting drug safety. The development of a wide range of technologies and platforms for measuring mRNA expression makes the evaluation and standardization of transcriptomic data problematic due to differences in protocols, data processing and analysis methods. Thus, universal RNA standards, such as those developed by the External RNA Controls Consortium (ERCC), are proposed to aid validation of research findings from diverse platforms such as microarrays and RT-qPCR, and play a role in quality control (QC) processes as transcriptomic profiling becomes more commonplace in the clinical setting. Results: Panels of ERCC RNA standards were constructed in order to test the utility of these reference materials (RMs) for performance characterization of two selected gene expression platforms, and for discrimination of biomarker profiles between groups. The linear range, limits of detection and reproducibility of microarray and RT-qPCR measurements were evaluated using panels of RNA standards. Transcripts of low abundance (≤ 10 copies/ng total RNA) showed more than double the technical variability compared to higher copy number transcripts on both platforms. Microarray profiling of two simulated 'normal' and 'disease' panels, each consisting of eight different RNA standards, yielded robust discrimination between the panels and between standards with varying fold change ratios, showing no systematic effects due to different labelling and hybridization runs. Also, comparison of microarray and RT-qPCR data for fold changes showed agreement for the two platforms. Conclusions: ERCC RNA standards provide a generic means of evaluating different aspects of platform performance, and can provide information on the technical variation associated with quantification of biomarkers expressed at different levels of physiological abundance. Distinct panels of standards serve as an ideal quality control tool kit for determining the accuracy of fold change cut-off threshold and the impact of experimentally-derived noise on the discrimination of normal and disease profiles.This publication has 36 references indexed in Scilit:
- Consolidated strategy for the analysis of microarray spike-in dataNucleic Acids Research, 2008
- Meta-analysis of microarray results: challenges, opportunities, and recommendations for standardizationGene, 2007
- Detection limits of several commercial reverse transcriptase enzymes: impact on the low- and high-abundance transcript levels assessed by quantitative RT-PCRBMC Molecular Biology, 2007
- Relative quantification of mRNA: comparison of methods currently used for real-time PCR data analysisBMC Molecular Biology, 2007
- Robust interlaboratory reproducibility of a gene expression signature measurement consistent with the needs of a new generation of diagnostic toolsBMC Genomics, 2007
- The MicroArray Quality Control (MAQC) project shows inter- and intraplatform reproducibility of gene expression measurementsNature Biotechnology, 2006
- Evaluation of DNA microarray results with quantitative gene expression platformsNature Biotechnology, 2006
- Cross-platform comparability of microarray technology: Intra-platform consistency and appropriate data analysis procedures are essentialBMC Bioinformatics, 2005
- Real-time RT-PCR normalisation; strategies and considerationsGenes & Immunity, 2005
- A Multigene Assay to Predict Recurrence of Tamoxifen-Treated, Node-Negative Breast CancerNew England Journal of Medicine, 2004