Pharmacogenetic Testing or Therapeutic Drug Monitoring: A Quantitative Framework.

IF 4.6 2区 医学 Q1 PHARMACOLOGY & PHARMACY
Clinical Pharmacokinetics Pub Date : 2024-06-01 Epub Date: 2024-06-06 DOI:10.1007/s40262-024-01382-3
Maddalena Centanni, Niels Reijnhout, Abel Thijs, Mats O Karlsson, Lena E Friberg
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引用次数: 0

Abstract

Background: Pharmacogenetic profiling and therapeutic drug monitoring (TDM) have both been proposed to manage inter-individual variability (IIV) in drug exposure. However, determining the most effective approach for estimating exposure for a particular drug remains a challenge. This study aimed to quantitatively assess the circumstances in which pharmacogenetic profiling may outperform TDM in estimating drug exposure, under three sources of variability (IIV, inter-occasion variability [IOV], and residual unexplained variability [RUV]).

Methods: Pharmacokinetic models were selected from the literature corresponding to drugs for which pharmacogenetic profiling and TDM are both clinically considered approaches for dose individualization. The models were used to simulate relevant drug exposures (trough concentration or area under the curve [AUC]) under varying degrees of IIV, IOV, and RUV.

Results: Six drug cases were selected from the literature. Model-based simulations demonstrated that the percentage of patients for whom pharmacogenetic exposure prediction is superior to TDM differs for each drug case: tacrolimus (11.0%), tamoxifen (12.7%), efavirenz (49.2%), vincristine (49.6%), risperidone (48.1%), and 5-fluorouracil (5-FU) (100%). Generally, in the presence of higher unexplained IIV in combination with lower RUV and IOV, exposure was best estimated by TDM, whereas, under lower unexplained IIV in combination with higher IOV or RUV, pharmacogenetic profiling was preferred.

Conclusions: For the drugs with relatively low RUV and IOV (e.g., tamoxifen and tacrolimus), TDM estimated true exposure the best. Conversely, for drugs with similar or lower unexplained IIV (e.g., efavirenz or 5-FU, respectively) combined with relatively high RUV, pharmacogenetic profiling provided the most accurate estimate for most patients. However, genotype prevalence and the relative influence of genotypes on the PK, as well as the ability of TDM to accurately estimate AUC with a limited number of samples, had an impact. The results could be used to support clinical decision making when considering other factors, such as the probability for severe side effects.

Abstract Image

药物基因检测或治疗药物监测:定量框架。
背景:药物基因分析和治疗药物监测(TDM)都被提议用于管理药物暴露的个体间变异性(IIV)。然而,确定估算特定药物暴露量的最有效方法仍是一项挑战。本研究旨在定量评估在三种变异性来源(个体间变异性、事件间变异性[IOV]和无法解释的残余变异性[RUV])条件下,药物基因图谱在估算药物暴露量方面可能优于TDM的情况:方法:从文献中选取了药物基因分析和 TDM 都是临床上考虑的剂量个体化方法的相应药物的药代动力学模型。这些模型用于模拟不同程度的 IIV、IOV 和 RUV 条件下的相关药物暴露量(谷浓度或曲线下面积 [AUC]):结果:从文献中选取了六种药物。基于模型的模拟结果表明,药物基因暴露预测优于 TDM 的患者比例因药物而异:他克莫司(11.0%)、他莫昔芬(12.7%)、依非韦伦(49.2%)、长春新碱(49.6%)、利培酮(48.1%)和 5-氟尿嘧啶(5-FU)(100%)。一般来说,在不明原因的 IIV 较高、RUV 和 IOV 较低的情况下,最好通过 TDM 估算暴露量,而在不明原因的 IIV 较低、IOV 或 RUV 较高的情况下,最好进行药物基因分析:对于RUV和IOV相对较低的药物(如他莫昔芬和他克莫司),TDM对真实暴露量的估计效果最好。相反,对于具有相似或较低的不明原因 IIV 的药物(如依非韦伦或 5-FU)以及相对较高的 RUV,药物基因分析可为大多数患者提供最准确的估计值。然而,基因型流行率和基因型对 PK 的相对影响,以及 TDM 在样本数量有限的情况下准确估计 AUC 的能力都会产生影响。在考虑其他因素(如出现严重副作用的概率)时,这些结果可用于支持临床决策。
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
8.80
自引率
4.40%
发文量
86
审稿时长
6-12 weeks
期刊介绍: Clinical Pharmacokinetics promotes the continuing development of clinical pharmacokinetics and pharmacodynamics for the improvement of drug therapy, and for furthering postgraduate education in clinical pharmacology and therapeutics. Pharmacokinetics, the study of drug disposition in the body, is an integral part of drug development and rational use. Knowledge and application of pharmacokinetic principles leads to accelerated drug development, cost effective drug use and a reduced frequency of adverse effects and drug interactions.
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