Evaluation of Supervised Machine Learning Algorithms and Computational Structural Validation of Single Nucleotide Polymorphisms Related to Acute Liver Injury with Paracetamol.

IF 2.1 4区 医学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Kannan Sridharan, Ambritha Balasundaram, D Thirumal Kumar, C George Priya Doss
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引用次数: 0

Abstract

Aims: To identify single nucleotide polymorphisms (SNPs) of paracetamol-metabolizing enzymes that can predict acute liver injury.

Background: Paracetamol is a commonly administered analgesic/antipyretic in critically ill and chronic renal failure patients and several SNPs influence the therapeutic and toxic effects.

Objective: To evaluate the role of machine learning algorithms (MLAs) and bioinformatics tools to delineate the predictor SNPs as well as to understand their molecular dynamics.

Methods: A cross-sectional study was undertaken by recruiting critically ill patients with chronic renal failure and administering intravenous paracetamol as a standard of care. Serum concentrations of paracetamol and the principal metabolites were estimated. Following SNPs were evaluated: CYP2E1*2, CYP2E1_-1295G>C, CYP2D6*10, CYP3A4*1B, CYP3A4*2, CYP1A2*1K, CYP1A2*6, CYP3A4*3, and CYP3A5*7. MLAs were used to identify the predictor genetic variable for acute liver failure. Bioinformatics tools such as Predict SNP2 and molecular docking (MD) were undertaken to evaluate the impact of the above SNPs with binding affinity to paracetamol.

Results: CYP2E1*2 and CYP1A2*1C genotypes were identified by MLAs to significantly predict hepatotoxicity. The predictSNP2 revealed that CYP1A2*3 was highly deleterious in all the tools. MD revealed binding energy of -5.5 Kcal/mol, -6.9 Kcal/mol, and -6.8 Kcal/mol for CYP1A2, CYP1A2*3, and CYP1A2*6 against paracetamol. MD simulations revealed that CYP1A2*3 and CYP1A2*6 missense variants in CYP1A2 affect the binding ability with paracetamol. In-silico techniques found that CYP1A2*2 and CYP1A2*6 are highly harmful. MD simulations revealed CYP3A4*2 (A>G) had decreased binding energy with paracetamol than CYP3A4, and CYP3A4*2(A>T) and CYP3A4*3 both have greater binding energy with paracetamol.

Conclusion: Polymorphisms in CYP2E1, CYP1A2, CYP3A4, and CYP3A5 significantly influence paracetamol's clinical outcomes or binding affinity. Robust clinical studies are needed to identify these polymorphisms' clinical impact on the pharmacokinetics or pharmacodynamics of paracetamol.

监督机器学习算法的评估和与对乙酰氨基酚急性肝损伤相关的单核苷酸多态性的计算结构验证。
目的:鉴定可预测急性肝损伤的对乙酰氨基酚代谢酶单核苷酸多态性(SNPs)。背景:对乙酰氨基酚是危重和慢性肾功能衰竭患者常用的镇痛药/退烧药,几种SNPs影响其治疗和毒性作用。目的:评估机器学习算法(MLA)和生物信息学工具在描述预测SNPs以及了解其分子动力学方面的作用。方法:通过招募患有慢性肾功能衰竭的危重患者,并将静脉注射扑热息痛作为护理标准,进行横断面研究。估计了对乙酰氨基酚和主要代谢产物的血清浓度。评估了以下SNPs:CYP2E1*2、CYP2E1_-1295G>C、CYP2D6*10、CYP3A4*1B、CYP3A2*2、CYP1A2*1K、CYP1A2*6、CYP3A 4*3和CYP3A5*7。MLA用于确定急性肝功能衰竭的预测遗传变量。生物信息学工具,如Predict SNP2和分子对接(MD),用于评估上述SNPs与对乙酰氨基酚结合亲和力的影响。结果:通过MLA鉴定CYP2E1*2和CYP1A2*1C基因型可显著预测肝毒性。预测SNP2显示CYP1A2*3在所有工具中都是高度有害的。MD显示CYP1A2、CYP1A2*3和CYP1A2*6对扑热息痛的结合能分别为-5.5、-6.9和-6.8千卡/摩尔。MD模拟显示,CYP1A2中的CYP1A2*3和CYP1A2*6错义变体影响与扑热息痛的结合能力。在计算机技术中发现CYP1A2*2和CYP1A2*6是高度有害的。MD模拟显示,与CYP3A4相比,CYP3A4*2(A>G)与对乙酰氨基酚的结合能降低,CYP3A2*2(A>T)和CYP3A4*3都与对乙酰氨酚具有更大的结合能。结论:CYP2E1、CYP1A2、CYP3A4和CYP3A5的多态性显著影响对乙酰氨基酚的临床疗效或结合亲和力。需要进行强有力的临床研究来确定这些多态性对扑热息痛的药代动力学或药效学的临床影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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