Skip to main page content
U.S. flag

An official website of the United States government

Dot gov

The .gov means it’s official.
Federal government websites often end in .gov or .mil. Before sharing sensitive information, make sure you’re on a federal government site.

Https

The site is secure.
The https:// ensures that you are connecting to the official website and that any information you provide is encrypted and transmitted securely.

Access keys NCBI Homepage MyNCBI Homepage Main Content Main Navigation
Observational Study
. 2024;25(2):128-139.
doi: 10.2174/0113892002289238240222072027.

Comparative Analysis of Machine Learning Algorithms Evaluating the Single Nucleotide Polymorphisms of Metabolizing Enzymes with Clinical Outcomes Following Intravenous Paracetamol in Preterm Neonates with Patent Ductus Arteriosus

Affiliations
Observational Study

Comparative Analysis of Machine Learning Algorithms Evaluating the Single Nucleotide Polymorphisms of Metabolizing Enzymes with Clinical Outcomes Following Intravenous Paracetamol in Preterm Neonates with Patent Ductus Arteriosus

Kannan Sridharan et al. Curr Drug Metab. 2024.

Abstract

Aims: Pharmacogenomics has been identified to play a crucial role in determining drug response. The present study aimed to identify significant genetic predictor variables influencing the therapeutic effect of paracetamol for new indications in preterm neonates.

Background: Paracetamol has recently been preferred as a first-line drug for managing Patent Ductus Arteriosus (PDA) in preterm neonates. Single Nucleotide Polymorphisms (SNPs) in CYP1A2, CYP2A6, CYP2D6, CYP2E1, and CYP3A4 have been observed to influence the therapeutic concentrations of paracetamol.

Objectives: The purpose of this study was to evaluate various Machine Learning Algorithms (MLAs) and bioinformatics tools for identifying the key genotype predictor of therapeutic outcomes following paracetamol administration in neonates with PDA.

Methods: Preterm neonates with hemodynamically significant PDA were recruited in this prospective, observational study. The following SNPs were evaluated: CYP2E1*5B, CYP2E1*2, CYP3A4*1B, CYP3A4*2, CYP3A4*3, CYP3A5*3, CYP3A5*7, CYP3A5*11, CYP1A2*1C, CYP1A2*1K, CYP1A2*3, CYP1A2*4, CYP1A2*6, and CYP2D6*10. Amongst the MLAs, Artificial Neural Network (ANN), C5.0 algorithm, Classification and Regression Tree analysis (CART), discriminant analysis, and logistic regression were evaluated for successful closure of PDA. Generalized linear regression, ANN, CART, and linear regression were used to evaluate maximum serum acetaminophen concentrations. A two-step cluster analysis was carried out for both outcomes. Area Under the Curve (AUC) and Relative Error (RE) were used as the accuracy estimates. Stability analysis was carried out using in silico tools, and Molecular Docking and Dynamics Studies were carried out for the above-mentioned enzymes.

Results: Two-step cluster analyses have revealed CYP2D6*10 and CYP1A2*1C to be the key predictors of the successful closure of PDA and the maximum serum paracetamol concentrations in neonates. The ANN was observed with the maximum accuracy (AUC = 0.53) for predicting the successful closure of PDA with CYP2D6*10 as the most important predictor. Similarly, ANN was observed with the least RE (1.08) in predicting maximum serum paracetamol concentrations, with CYP2D6*10 as the most important predictor. Further MDS confirmed the conformational changes for P34A and P34S compared to the wildtype structure of CYP2D6 protein for stability, flexibility, compactness, hydrogen bond analysis, and the binding affinity when interacting with paracetamol, respectively. The alterations in enzyme activity of the mutant CYP2D6 were computed from the molecular simulation results.

Conclusion: We have identified CYP2D6*10 and CYP1A2*1C polymorphisms to significantly predict the therapeutic outcomes following the administration of paracetamol in preterm neonates with PDA. Prospective studies are required for confirmation of the findings in the vulnerable population.

Keywords: Acetaminophen; CYP2D6.; MLA; PDA; genetic polymorphisms; paracetamol.

PubMed Disclaimer

References

    1. Sridharan K.; Ansari E.A.; Mulubwa M.; Raju A.P.; Madhoob A.A.; Jufairi M.A.; Hubail Z.; Marzooq R.A.; Hasan S.J.R.; Mallaysamy S.; Population pharmacokinetic-pharmacodynamic modeling of acetaminophen in preterm neonates with hemodynamically significant patent ductus arteriosus. Eur J Pharm Sci 2021,167,106023 - DOI - PubMed
    1. Zhao L.; Pickering G.; Paracetamol metabolism and related genetic differences. Drug Metab Rev 2011,43(1),41-52 - DOI - PubMed
    1. Mazaleuskaya L.L.; Sangkuhl K.; Thorn C.F.; FitzGerald G.A.; Altman R.B.; Klein T.E.; PharmGKB summary. Pharmacogenet Genom 2015,25(8),416-426 - DOI - PubMed
    1. Bardanzellu F.; Neroni P.; Dessì A.; Fanos V.; Paracetamol in patent ductus arteriosus treatment: Efficacious and safe? BioMed Res Int 2017,2017,1-25 - DOI - PubMed
    1. Sridharan K.; Qader A.M.; Hammad M.; Jassim A.; Diab D.E.; Abraham B.; Hasan H.M.S.N.; Pasha S.A.A.; Shah S.; Evaluation of the association between single nucleotide polymorphisms of metabolizing enzymes with the serum concentration of paracetamol and its metabolites. Metabolites 2022,12(12),1235 - DOI - PubMed

Publication types

MeSH terms

Grants and funding