Artificial intelligence modeling of biomarker-based physiological age: Impact on phase 1 drug-metabolizing enzyme phenotypes.

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Amruta Gajanan Bhat, Murali Ramanathan
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Abstract

Age and aging are important predictors of health status, disease progression, drug kinetics, and effects. The purpose was to develop ensemble learning-based physiological age (PA) models for evaluating drug metabolism. National Health and Nutrition Examination Survey (NHANES) data were modeled with ensemble learning to obtain two PA models, PA-M1 and PA-M2. PA-M1 included body composition, blood and urine biomarkers, and disease variables as predictors. PA-M2 had blood and urine-derived variables as predictors. Activity phenotypes for cytochrome-P450 (CYP) CYP2E1, CYP1A2, CYP2A6, xanthine oxidase (XO), and N-acetyltransferase-2 (NAT-2) and telomere attrition were assessed. Bayesian networks were used to obtain mechanistic systems pharmacology model structures for PA. The study included n = 22,307 NHANES participants (51.5% female, mean age 46.0 years, range: 18-79 years). The PA-M1 and PA-M2 distributions had greater dispersion across age strata with a right skew for younger age strata and a left skew for older age strata. There was no evidence of algorithmic bias based on sex or race/ethnicity. Klotho, lean body mass, glycohemoglobin, and systolic blood pressure were the top four predictors for PA-M1. Glycohemoglobin, serum creatinine, total cholesterol, and urine creatinine were the top four predictors for PA-M2. The models also performed satisfactorily in independent validation. Model-predicted PA was associated with CYP2E1, CYP1A2, CYP2A6, XO, and NAT-2 activity. Telomere attrition was associated with greater PA-M1 and PA-M2. Ensemble learning models provide robust assessments of PA from easily obtained blood and urine biomarkers. PA is associated with Phase I drug-metabolizing enzyme phenotypes.

基于生物标志物的生理年龄人工智能建模:对第一阶段药物代谢酶表型的影响。
年龄和衰老是健康状况、疾病进展、药物动力学和效果的重要预测因素。我们的目的是开发基于集合学习的生理年龄(PA)模型,用于评估药物代谢。利用集合学习对美国国家健康与营养调查(NHANES)数据进行建模,得到了两个生理年龄模型:PA-M1 和 PA-M2。PA-M1 包括身体成分、血液和尿液生物标志物以及疾病变量作为预测因子。PA-M2 以血液和尿液变量作为预测因子。评估了细胞色素-P450(CYP)CYP2E1、CYP1A2、CYP2A6、黄嘌呤氧化酶(XO)和 N-乙酰转移酶-2(NAT-2)的活性表型以及端粒损耗。贝叶斯网络用于获得 PA 的机理系统药理学模型结构。该研究包括 n = 22,307 名 NHANES 参与者(51.5% 为女性,平均年龄 46.0 岁,年龄范围:18-79 岁)。PA-M1和PA-M2的分布在不同年龄层有更大的分散性,年轻年龄层呈右偏斜,年长年龄层呈左偏斜。没有证据表明存在基于性别或种族/人种的算法偏差。Klotho、瘦体重、糖化血红蛋白和收缩压是预测 PA-M1 的前四项指标。糖化血红蛋白、血清肌酐、总胆固醇和尿肌酐是预测 PA-M2 的前四项指标。这些模型在独立验证中的表现也令人满意。模型预测的 PA 与 CYP2E1、CYP1A2、CYP2A6、XO 和 NAT-2 活性有关。端粒损耗与 PA-M1 和 PA-M2 的增加有关。集合学习模型可以通过容易获得的血液和尿液生物标记物对 PA 进行稳健的评估。PA与I期药物代谢酶表型有关。
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
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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