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Comparison of Beta-value and M-value methods for quantifying methylation levels by microarray analysis
Pan Du, Xiao Zhang, Chiang‐Ching Huang, Nadereh Jafari, Warren A. Kibbe, Lifang Hou, Simon Lin
BMC Bioinformatics · 2010 · ▲ 2,301 citations
Abstract
BACKGROUND: High-throughput profiling of DNA methylation status of CpG islands is crucial to understand the epigenetic regulation of genes. The microarray-based Infinium methylation assay by Illumina is one platform for low-cost high-throughput methylation profiling. Both Beta-value and M-value statistics have been used as metrics to measure methylation levels. However, there are no detailed studies of their relations and their strengths and limitations. RESULTS: We demonstrate that the relationship between the Beta-value and M-value methods is a Logit transformation, and show that the Beta-value method has severe heteroscedasticity for highly methylated or unmethylated CpG sites. In order to evaluate the performance of the Beta-value and M-value methods for identifying differentially methylated CpG sites, we designed a methylation titration experiment. The evaluation results show that the M-value method provides much better performance in terms of Detection Rate (DR) and True Positive Rate (TPR) for both highly methylated and unmethylated CpG sites. Imposing a minimum threshold of difference can improve the performance of the M-value method but not the Beta-value method. We also provide guidance for how to select the threshold of methylation differences. CONCLUSIONS: The Beta-value has a more intuitive biological interpretation, but the M-value is more statistically valid for the differential analysis of methylation levels. Therefore, we recommend using the M-value method for conducting differential methylation analysis and including the Beta-value statistics when reporting the results to investigators.
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- DOI
- 10.1186/1471-2105-11-587
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- 2026-06-12 MST
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APA
Du, P., Zhang, X., Huang, C., Jafari, N., Kibbe, W.A., Hou, L., & Lin, S. (2010). Comparison of Beta-value and M-value methods for quantifying methylation levels by microarray analysis. <em>BMC Bioinformatics</em>. https://doi.org/10.1186/1471-2105-11-587
Vancouver
Du P, Zhang X, Huang C, Jafari N, Kibbe WA, Hou L, et al. Comparison of Beta-value and M-value methods for quantifying methylation levels by microarray analysis. BMC Bioinformatics. 2010. doi:10.1186/1471-2105-11-587.
BibTeX
@article{pan2010Compar,
title = {Comparison of Beta-value and M-value methods for quantifying methylation levels by microarray analysis},
author = {Pan Du and Xiao Zhang and Chiang‐Ching Huang and Nadereh Jafari and Warren A. Kibbe and Lifang Hou and Simon Lin},
journal = {BMC Bioinformatics},
year = {2010},
doi = {10.1186/1471-2105-11-587},
}
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