Literature DB >> 35246015

Permutation-based significance analysis reduces the type 1 error rate in bisulphite sequencing data analysis of human umbilical cord blood samples.

Essi Laajala1,2,3,4, Viivi Halla-Aho4, Toni Grönroos1,2, Ubaid Ullah Kalim1,2, Mari Vähä-Mäkilä5, Mirja Nurmio5, Henna Kallionpää1, Niina Lietzén1, Juha Mykkänen6,7, Omid Rasool1,2, Jorma Toppari5,7,8, Matej Orešič1,2,9, Mikael Knip10,11,12, Riikka Lund1, Riitta Lahesmaa1,2,13, Harri Lähdesmäki4.   

Abstract

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.

Entities:  

Keywords:  DNA methylation; RRBS; analysis workflow; bisulphite sequencing; differential methylation; pregnancy; sex; spatial correlation; type 1 error; umbilical cord blood

Year:  2022        PMID: 35246015     DOI: 10.1080/15592294.2022.2044127

Source DB:  PubMed          Journal:  Epigenetics        ISSN: 1559-2294            Impact factor:   4.528


  2 in total

1.  Early DNA methylation changes in children developing beta cell autoimmunity at a young age.

Authors:  Inna Starskaia; Essi Laajala; Toni Grönroos; Taina Härkönen; Sini Junttila; Roosa Kattelus; Henna Kallionpää; Asta Laiho; Veronika Suni; Vallo Tillmann; Riikka Lund; Laura L Elo; Harri Lähdesmäki; Mikael Knip; Ubaid Ullah Kalim; Riitta Lahesmaa
Journal:  Diabetologia       Date:  2022-02-10       Impact factor: 10.122

2.  Umbilical cord blood DNA methylation in children who later develop type 1 diabetes.

Authors:  Essi Laajala; Ubaid Ullah Kalim; Toni Grönroos; Omid Rasool; Viivi Halla-Aho; Mikko Konki; Roosa Kattelus; Juha Mykkänen; Mirja Nurmio; Mari Vähä-Mäkilä; Henna Kallionpää; Niina Lietzén; Bishwa R Ghimire; Asta Laiho; Heikki Hyöty; Laura L Elo; Jorma Ilonen; Mikael Knip; Riikka J Lund; Matej Orešič; Riitta Veijola; Harri Lähdesmäki; Jorma Toppari; Riitta Lahesmaa
Journal:  Diabetologia       Date:  2022-06-18       Impact factor: 10.460

  2 in total

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