对乙酰氨基酚诱导丙氨酸氨基转移酶升高的多基因镶嵌模型。

IF 2.5 4区 医学 Q3 TOXICOLOGY
Journal of Medical Toxicology Pub Date : 2023-07-01 Epub Date: 2023-05-25 DOI:10.1007/s13181-023-00951-5
Andrew A Monte, Alexis Vest, Julie A Reisz, Danielle Berninzoni, Claire Hart, Layne Dylla, Angelo D'Alessandro, Kennon J Heard, Cheyret Wood, Jack Pattee
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引用次数: 0

摘要

背景:对乙酰氨基酚(APAP)是美国患者酒精中毒后最常见的肝损伤原因。使用代谢组学和基因组学等新的组学方法,预测服用治疗剂量APAP的患者的肝损伤和随后的肝再生可能是可能的。多功能技术提高了我们发现新的损伤和再生机制的能力。方法:我们使用了一项随机对照试验的代谢组学和基因组数据,该试验对每天服用4g APAP 14天或更长时间的患者进行,并在0(基线)、4、7、10、13和16天采集血样。我们在综合分析中使用最高ALT作为预测的临床结果。我们使用惩罚回归来模拟遗传变异与第0天代谢产物水平之间的关系,然后进行全代谢产物共定位扫描,将代谢产物表达的遗传调节成分与ALT升高联系起来。使用线性回归对ALT升高和代谢物水平进行全基因组关联研究(GWAS)分析,将年龄、性别和前五个主要成分作为协变量。通过加权和检验来检验共定位。结果:在建模的164种代谢产物中,120种符合预测准确性标准,并保留用于遗传分析。经过基因组检查,发现8种代谢产物处于基因控制之下,可预测治疗性对乙酰氨基酚引起的ALT升高。代谢产物为:3-草酸、尿囊酸、二磷酸、L-肉碱、L-脯氨酸、麦芽糖和鸟氨酸。这些基因在三羧酸循环(TCA)、尿素分解途径、谷胱甘肽产生、线粒体能量产生和麦芽糖代谢中很重要。结论:这种多组学方法可用于整合代谢组学和基因组数据,从而鉴定控制下游代谢产物的基因。这些发现证实了先前的工作,即线粒体能量产生对APAP诱导的肝损伤至关重要,并证实了我们之前的工作,证明了尿素循环在治疗APAP肝损伤中的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Multi-Omic Mosaic Model of Acetaminophen Induced Alanine Aminotransferase Elevation.

A Multi-Omic Mosaic Model of Acetaminophen Induced Alanine Aminotransferase Elevation.

A Multi-Omic Mosaic Model of Acetaminophen Induced Alanine Aminotransferase Elevation.

Background: Acetaminophen (APAP) is the most common cause liver injury following alcohol in US patients. Predicting liver injury and subsequent hepatic regeneration in patients taking therapeutic doses of APAP may be possible using new 'omic methods such as metabolomics and genomics. Multi'omic techniques increase our ability to find new mechanisms of injury and regeneration.

Methods: We used metabolomic and genomic data from a randomized controlled trial of patients administered 4 g of APAP per day for 14 days or longer with blood samples obtained at 0 (baseline), 4, 7, 10, 13 and 16 days. We used the highest ALT as the clinical outcome to be predicted in our integrated analysis. We used penalized regression to model the relationship between genetic variants and day 0 metabolite level, and then performed a metabolite-wide colocalization scan to associate the genetically regulated component of metabolite expression with ALT elevation. Genome-wide association study (GWAS) analyses were conducted for ALT elevation and metabolite level using linear regression, with age, sex, and the first five principal components included as covariates. Colocalization was tested via a weighted sum test.

Results: Out of the 164 metabolites modeled, 120 met the criteria for predictive accuracy and were retained for genetic analyses. After genomic examination, eight metabolites were found to be under genetic control and predictive of ALT elevation due to therapeutic acetaminophen. The metabolites were: 3-oxalomalate, allantoate, diphosphate, L-carnitine, L-proline, maltose, and ornithine. These genes are important in the tricarboxylic acid cycle (TCA), urea breakdown pathway, glutathione production, mitochondrial energy production, and maltose metabolism.

Conclusions: This multi'omic approach can be used to integrate metabolomic and genomic data allowing identification of genes that control downstream metabolites. These findings confirm prior work that have identified mitochondrial energy production as critical to APAP induced liver injury and have confirmed our prior work that demonstrate the importance of the urea cycle in therapeutic APAP liver injury.

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来源期刊
CiteScore
5.40
自引率
10.30%
发文量
46
期刊介绍: Journal of Medical Toxicology (JMT) is a peer-reviewed medical journal dedicated to advances in clinical toxicology, focusing on the diagnosis, management, and prevention of poisoning and other adverse health effects resulting from medications, chemicals, occupational and environmental substances, and biological hazards. As the official journal of the American College of Medical Toxicology (ACMT), JMT is managed by an editorial board of clinicians as well as scientists and thus publishes research that is relevant to medical toxicologists, emergency physicians, critical care specialists, pediatricians, pre-hospital providers, occupational physicians, substance abuse experts, veterinary toxicologists, and policy makers.       JMT articles generate considerable interest in the lay media, with 2016 JMT articles cited by various social media sites, the Boston Globe, and the Washington Post among others.     For questions or comments about the journal, please contact jmtinfo@acmt.net.    For questions or comments about the journal, please contact jmtinfo@acmt.net.
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