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.

IF 2.1 4区 医学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Kannan Sridharan, George Priya Doss C, Hephzibah Cathryn R, Thirumal Kumar D, Muna Al Jufairi
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引用次数: 0

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.

评估患有动脉导管未闭的早产新生儿体内代谢酶单核苷酸多态性的机器学习算法与静脉注射扑热息痛临床结果的比较分析
目的:药物基因组学被认为在决定药物反应方面发挥着至关重要的作用。本研究旨在确定影响扑热息痛对早产新生儿新适应症治疗效果的重要遗传预测变量:背景:最近,扑热息痛已成为治疗早产新生儿动脉导管未闭(PDA)的一线药物。据观察,CYP1A2、CYP2A6、CYP2D6、CYP2E1 和 CYP3A4 中的单核苷酸多态性(SNPs)会影响扑热息痛的治疗浓度:本研究旨在评估各种机器学习算法(MLA)和生物信息学工具,以确定预测 PDA 新生儿服用扑热息痛后治疗效果的关键基因型:这项前瞻性观察研究招募了患有血流动力学显著性 PDA 的早产新生儿。对以下 SNPs 进行了评估: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 和 CYP2D6*10。在这些工作重点中,人工神经网络(ANN)、C5.0 算法、分类和回归树分析(CART)、判别分析和逻辑回归被用来评估 PDA 的成功关闭。广义线性回归、ANN、CART 和线性回归用于评估血清对乙酰氨基酚的最大浓度。对这两种结果进行了两步聚类分析。曲线下面积(AUC)和相对误差(RE)被用作准确度估计值。使用硅学工具进行了稳定性分析,并对上述酶进行了分子对接研究(MDS):结果:两步聚类分析显示,CYP2D6*10 和 CYP1A2*1C 是预测新生儿 PDA 成功关闭和血清中扑热息痛最大浓度的关键因素。ANN 预测 PDA 成功关闭的准确率最高(AUC = 0.53),CYP2D6*10 是最重要的预测因子。同样,在预测血清中扑热息痛的最高浓度时,ANN 的 RE 最低(1.08),而 CYP2D6*10 是最重要的预测因子。进一步的 MDS 证实,与 CYP2D6 蛋白的野生型结构相比,P34A 和 P34S 在稳定性、灵活性、紧凑性、氢键分析以及与扑热息痛相互作用时的结合亲和力方面分别发生了构象变化。根据分子模拟结果计算了突变体 CYP2D6 酶活性的变化:我们发现 CYP2D6*10 和 CYP1A2*1C 多态性可显著预测患有 PDA 的早产新生儿服用扑热息痛后的治疗效果。要在易感人群中证实这些发现,还需要进行前瞻性研究。
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来源期刊
Current drug metabolism
Current drug metabolism 医学-生化与分子生物学
CiteScore
4.30
自引率
4.30%
发文量
81
审稿时长
4-8 weeks
期刊介绍: Current Drug Metabolism aims to cover all the latest and outstanding developments in drug metabolism, pharmacokinetics, and drug disposition. The journal serves as an international forum for the publication of full-length/mini review, research articles and guest edited issues in drug metabolism. Current Drug Metabolism is an essential journal for academic, clinical, government and pharmaceutical scientists who wish to be kept informed and up-to-date with the most important developments. The journal covers the following general topic areas: pharmaceutics, pharmacokinetics, toxicology, and most importantly drug metabolism. More specifically, in vitro and in vivo drug metabolism of phase I and phase II enzymes or metabolic pathways; drug-drug interactions and enzyme kinetics; pharmacokinetics, pharmacokinetic-pharmacodynamic modeling, and toxicokinetics; interspecies differences in metabolism or pharmacokinetics, species scaling and extrapolations; drug transporters; target organ toxicity and interindividual variability in drug exposure-response; extrahepatic metabolism; bioactivation, reactive metabolites, and developments for the identification of drug metabolites. Preclinical and clinical reviews describing the drug metabolism and pharmacokinetics of marketed drugs or drug classes.
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