Title :
A Composite Framework for the Statistical Analysis of Epidemiological DNA Methylation Data with the Infinium Human Methylation 450K BeadChip
Author :
Valavanis, Ioannis ; Sifakis, Emmanouil G. ; Georgiadis, Panagiotis ; Kyrtopoulos, Soterios ; Chatziioannou, Aristotelis A.
Author_Institution :
Inst. of Biol., Medicinal Chem. & Biotechnol., Nat. Hellenic Res. Found., Athens, Greece
Abstract :
High-throughput DNA methylation profiling exploits microarray technologies thus providing a wealth of data, which however solicits rigorous, generic, and analytical pipelines for an efficient systems level analysis and interpretation. In this study, we utilize the Illumina´s Infinium Human Methylation 450K BeadChip platform in an epidemiological cohort, targeting to associate interesting methylation patterns with breast cancer predisposition. The computational framework proposed here extends the-established in transcriptomic microarrays-logarithmic ratio of the methylated versus the unmethylated signal intensities, quoted as M -value. Moreover, intensity-based correction of the M-signal distribution is introduced in order to correct for batch effects and probe-specific errors in intensity measurements. This is accomplished through the estimation of intensity-related error measures from quality control samples included in each chip. Moreover, robust statistical measures exploiting the coefficient variation of DNA methylation measurements between control and case samples alleviate the impact of technical variation. The results presented here are juxtaposed to those derived by applying classical preprocessing and statistical selection methodologies. Overall, in comparison to traditional approaches, the superior performance of the proposed framework in terms of technical bias correction, along with its generic character, support its suitability for various microarray technologies.
Keywords :
DNA; biochemistry; biological organs; biomedical equipment; biomedical measurement; cancer; intensity measurement; lab-on-a-chip; molecular biophysics; statistical analysis; DNA methylation measurements; M-signal distribution; analytical pipelines; breast cancer predisposition; composite framework; epidemiological DNA methylation data; epidemiological cohort; generic pipelines; high-throughput DNA methylation profiling; infinium human methylation beadchip; intensity-based correction; intensity-related error measurements; methylation patterns; probe-specific errors; quality control samples; statistical analysis; temperature 450 K; transcriptomic microarray-logarithm; unmethylated signal intensities; Biomedical measurement; Breast cancer; DNA; Informatics; Measurement uncertainty; Probes; Semiconductor device measurement; Bootstrap correction; DNA methylation profiling; epigenomic analysis; intensity-based normalization; microarrays; statistical selection;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2014.2298351