Permutation-based significance analysis reduces the type 1 error rate in bisulfite sequencing data analysis of human umbilical cord blood samples
Kuvaus
DNA methylation patterns are largely established in-utero and might mediate the impacts of in-utero conditions on later health outcomes. Associations between perinatal DNA methylation marks and pregnancy-related variables, such as maternal age and gestational weight gain, have been earlier studied with methylation microarrays, which typically cover less than 2% of human CpG sites. To detect such associations outside these regions, we chose the bisulphite sequencing approach. We collected and curated clinical data on 200 newborn infants; whose umbilical cord blood samples were analysed with the reduced representation bisulphite sequencing (RRBS) method. A generalized linear mixed-effects model was fit for each high coverage CpG site, followed by spatial and multiple testing adjustment of P values to identify differentially methylated cytosines (DMCs) and regions (DMRs) associated with clinical variables, such as maternal age, mode of delivery, and birth weight. Type 1 error rate was then evaluated with a permutation analysis. We discovered a strong inflation of spatially adjusted P values through the permutation analysis, which we then applied for empirical type 1 error control. The inflation of P values was caused by a common method for spatial adjustment and DMR detection, implemented in tools comb-p and RADMeth. Based on empirically estimated significance thresholds, very little differential methylation was associated with any of the studied clinical variables, other than sex. With this analysis workflow, the sex-associated differentially methylated regions were highly reproducible across studies, technologies, and statistical models.
Näytä enemmänJulkaisuvuosi
2022
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Department of Computer Science
Essi Laajala - Tekijä
Harri Lähdesmäki - Tekijä
Henna Kallionpää - Tekijä
Jorma Toppari - Tekijä
Juha Mykkänen - Tekijä
Mari Vähä-Mäkilä - Tekijä
Matej University - Tekijä
Mikael Knip - Tekijä
Mirja Nurmio - Tekijä
Niina Lietzén - Tekijä
Omid Rasool - Tekijä
Riikka Lund - Tekijä
Riitta Lahesmaa - Tekijä
Toni Grönroos - Tekijä
Ubaid Ullah Kalim - Tekijä
Tampere University Hospital - Muu tekijä
Turku Bioscience Centre - Muu tekijä
University of Helsinki - Muu tekijä
University of Turku - Muu tekijä
figshare - Julkaisija
Örebro University - Muu tekijä
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