CPIC数据库中ADME基因相关药物的药物基因组学证据评价。

Q2 Pharmacology, Toxicology and Pharmaceutics Drug metabolism and personalized therapy Pub Date : 2023-03-01 DOI:10.1515/dmpt-2022-0123
Anthony Allen Reeves, Robert Hopefl, Subrata Deb
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引用次数: 1

摘要

目的:临床药物遗传学实施联盟(CPIC)是一个通过制定循证指南来推进药物基因组学(PGx)实践的平台。本研究的目的是分析CPIC数据库中ADME相关基因及其对应的药物,以及药物-基因对的证据水平;并确定这些药物基因对在美国死亡率最高的疾病中的存在。方法:对CPIC数据库中与药物吸收、分布、代谢和排泄(ADME)相关的药物基因对进行评估。来自疾病控制和预防中心的国家生命统计数据被用来确定死亡率最高的疾病。根据证据水平的不同,CPIC水平被分配到不同的药物基因对,如A、B、C或D。所有被分配到A/B、B/C或C/D混合水平的药物基因对被排除在本研究之外。采用逐步排除过程来确定I/II期酶或转运体中各种ADME药物基因对的患病率,并对与美国最常见的死亡疾病相关的药物基因对进行分层。结果:从CPIC数据库共442对药物基因对中,剔除a /B、B/C、C/D水平的药物基因对86对,剔除非ADME相关基因211对,得到145对ADME相关药物基因对。145对ADME相关药物基因对的水平分布如下:A: 43对(30%),B: 22对(15%),C: 59对(41%),D: 21对(14%)。CPIC A级分类中最常见的ADME基因是细胞色素P450 2C9 (CYP2C9)(26%),总体而言,CPIC数据库中最常见的ADME基因是CYP2D6(30%)。与CPIC证据相关药物相关的最常见疾病是癌症和抑郁症。结论:我们发现CPIC数据库中存在丰富的ADME相关基因,包括癌症和抑郁症等高死亡率疾病状态。在CPIC中,a级和D级的药物基因对数量最多,因此药物基因组学证据的水平存在差异。CYP2D6是最常见的ADME基因,药物基因对有CPIC证据。CPIC证据的药物基因组学应用可以用于个体化患者治疗和降低不良反应事件。
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Evaluation of pharmacogenomic evidence for drugs related to ADME genes in CPIC database.

Objectives: Clinical Pharmacogenetics Implementation Consortium (CPIC) is a platform that advances the pharmacogenomics (PGx) practice by developing evidence-based guidelines. The purpose of this study was to analyze the CPIC database for ADME related genes and their corresponding drugs, and evidence level for drug-gene pairs; and to determine the presence of these drug-gene pairs in the highest mortality diseases in the United States.

Methods: CPIC database was evaluated for drug-gene pairs related to absorption, distribution, metabolism, and excretion (ADME) properties. National Vital Statistics from Centers for Disease Control and Prevention was used to identify the diseases with the highest mortality. CPIC levels are assigned to different drug-gene pairs based on varying levels of evidence as either A, B, C, or D. All drug-gene pairs assigned with A/B, B/C, or C/D mixed levels were excluded from this study. A stepwise exclusion process was followed to determine the prevalence of various ADME drug-gene pairs among phase I/II enzymes or transporters and stratify the drug-gene pairs relevant to different disease conditions most commonly responsible for death in the United States.

Results: From a total of 442 drug-gene pairs in the CPIC database, after exclusion of 86 drug-gene pairs with levels A/B, B/C, or C/D, and 211 non-ADME related genes, 145 ADME related drug-gene pairs resulted. From the 145 ADME related drug-genes pairs, the following were the distribution of levels: Level A: 43 (30%), Level B: 22 (15%), Level C: 59 (41%), Level D: 21 (14%). The most prevalent ADME gene with CPIC level A classification was cytochrome P450 2C9 (CYP2C9) (26%) and overall, the most prevalent ADME gene in the CPIC database was CYP2D6 (30%). The most prevalent diseases related to the CPIC evidence related drugs were cancer and depression.

Conclusions: We found that there is an abundance of ADME related genes in the CPIC database, including in the high mortality disease states of cancer and depression. There is a differential level of pharmacogenomic evidence in drug-gene pairs enlisted in CPIC where levels A and D having the greatest number of drug-gene pairs. CYP2D6 was the most common ADME gene with CPIC evidence for drug-gene pairs. Pharmacogenomic applications of CPIC evidence can be leveraged to individualize patient therapy and lower adverse effect events.

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来源期刊
Drug metabolism and personalized therapy
Drug metabolism and personalized therapy Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (all)
CiteScore
2.30
自引率
0.00%
发文量
35
期刊介绍: Drug Metabolism and Personalized Therapy (DMPT) is a peer-reviewed journal, and is abstracted/indexed in relevant major Abstracting Services. It provides up-to-date research articles, reviews and opinion papers in the wide field of drug metabolism research, covering established, new and potential drugs, environmentally toxic chemicals, the mechanisms by which drugs may interact with each other and with biological systems, and the pharmacological and toxicological consequences of these interactions and drug metabolism and excretion. Topics: drug metabolizing enzymes, pharmacogenetics and pharmacogenomics, biochemical pharmacology, molecular pathology, clinical pharmacology, pharmacokinetics and drug-drug interactions, immunopharmacology, neuropsychopharmacology.
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