Comparing feature selection and machine learning approaches for predicting methylation from genetic variation.

Journal: Frontiers in neuroinformatics

Volume: 17

Issue: 

Year of Publication: 

Affiliated Institutions:  Computational Biology, National University of Singapore, Singapore, Singapore. Singapore Institute for Clinical Sciences (SICS), Agency for Science, Technology and Research (A*STAR), Singapore, Singapore. KK Women's and Children's Hospital, Singapore, Singapore. Yale-NUS College, Singapore, Singapore. Institute of Mental Health,Singapore, Singapore.

Abstract summary 

Pharmacogenetics currently supports clinical decision-making on the basis of a limited number of variants in a few genes and may benefit paediatric prescribing where there is a need for more precise dosing. Integrating genomic information such as methylation into pharmacogenetic models holds the potential to improve their accuracy and consequently prescribing decisions. Cytochrome P450 2D6 () is a highly polymorphic gene conventionally associated with the metabolism of commonly used drugs and endogenous substrates. We thus sought to predict epigenetic loci from single nucleotide polymorphisms (SNPs) related to in children from the GUSTO cohort.Buffy coat DNA methylation was quantified using the Illumina Infinium Methylation EPIC beadchip. CpG sites associated with were used as outcome variables in Linear Regression, Elastic Net and XGBoost models. We compared feature selection of SNPs from GWAS mQTLs, GTEx eQTLs and SNPs within 2 MB of the gene and the impact of adding demographic data. The samples were split into training (75%) sets and test (25%) sets for validation. In Elastic Net model and XGBoost models, optimal hyperparameter search was done using 10-fold cross validation. Root Mean Square Error and R-squared values were obtained to investigate each models' performance. When GWAS was performed to determine SNPs associated with CpG sites, a total of 15 SNPs were identified where several SNPs appeared to influence multiple CpG sites.Overall, Elastic Net models of genetic features appeared to perform marginally better than heritability estimates and substantially better than Linear Regression and XGBoost models. The addition of nongenetic features appeared to improve performance for some but not all feature sets and probes. The best feature set and Machine Learning (ML) approach differed substantially between CpG sites and a number of top variables were identified for each model.The development of SNP-based prediction models for CYP2D6 CpG methylation in Singaporean children of varying ethnicities in this study has clinical application. With further validation, they may add to the set of tools available to improve precision medicine and pharmacogenetics-based dosing.

Authors & Co-authors:  Fong Tan Garg Teh Pan Gupta Krishna Chen Purwanto Yap Tan Chan Chan Goh Rane Tan Jiang Han Meaney Wang Keppo Tan

Study Outcome 

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Statistics
Citations :  Aryee M. J., Jaffe A. E., Corrada-Bravo H., Ladd-Acosta C., Feinberg A. P., Hansen K. D., et al. . (2014). Minfi: a flexible and comprehensive bioconductor package for the analysis of Infinium DNA methylation microarrays. Bioinformatics 30, 1363–1369. doi: 10.1093/bioinformatics/btu049, PMID:
Authors :  22
Identifiers
Doi : 1244336
SSN : 1662-5196
Study Population
Male,Female
Mesh Terms
Other Terms
CYP2D6;epigenetics;genomics;machine-learning;personalised medicine
Study Design
Study Approach
Country of Study
Publication Country
Switzerland