采用有限采样策略,应用机器学习模型预测儿童的更昔洛韦和缬更昔洛韦暴露量。

IF 4.1 2区 医学 Q2 MICROBIOLOGY
Laure Ponthier, Bénédicte Franck, Julie Autmizguine, Marc Labriffe, Philippe Ovetchkine, Pierre Marquet, Anders Åsberg, Jean-Baptiste Woillard
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引用次数: 0

摘要

静脉注射更昔洛韦和口服缬更昔洛韦在更昔洛韦的药代动力学方面存在显著差异,尤其是在儿童中。治疗药物监测目前依赖于浓度-时间(AUC)下面积。机器学习(ML)算法是 AUC 估计中最大后验贝叶斯估计法的一种有趣的替代方法。我们的研究目标是开发并验证一种基于 ML 的有限采样策略(LSS)方法,以确定儿童静脉注射更昔洛韦或口服缬更昔洛韦后更昔洛韦的 AUC0-24。在 mrgsolve R 软件包中使用了四个已发表的群体药代动力学模型中的药代动力学参数以及世界卫生组织的儿童生长曲线,模拟了 10,800 份儿童药代动力学曲线。根据两个或三个样本的不同组合,训练了不同的 ML 算法来预测 AUC0-24。在模拟测试集和真实患者的外部数据集中对其性能进行了评估。在测试集中,使用 Xgboost 算法对口服伐昔洛韦进行服药后 2 小时和 6 小时的 LSS 预测(相对平均预测误差 [rMPE] = 0.4%,相对均方根误差 [rRMSE] = 5.7%),对静脉注射更昔洛韦进行服药后 0 小时和 2 小时的 LSS 预测(相对平均预测误差 [rMPE] = 0.9%,相对均方根误差 [rRMSE] = 12.4%),获得了最佳的估计性能。在外部数据集中,基于这两个样本 LSS 的性能是可以接受的:缬更昔洛韦的 rMPE = 0.2%,rRMSE = 16.5%;静脉注射更昔洛韦的 rMPE = -9.7%,rRMSE = 17.2%。所开发的 Xgboost 算法仅使用两份血样就能得出与临床相关的个体估计值。这将改善以 AUC 为目标的更昔洛韦儿童治疗药物监测的实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of machine-learning models to predict the ganciclovir and valganciclovir exposure in children using a limited sampling strategy.

Intravenous ganciclovir and oral valganciclovir display significant variability in ganciclovir pharmacokinetics, particularly in children. Therapeutic drug monitoring currently relies on the area under the concentration-time (AUC). Machine-learning (ML) algorithms represent an interesting alternative to Maximum-a-Posteriori Bayesian-estimators for AUC estimation. The goal of our study was to develop and validate an ML-based limited sampling strategy (LSS) approach to determine ganciclovir AUC0-24 after administration of either intravenous ganciclovir or oral valganciclovir in children. Pharmacokinetic parameters from four published population pharmacokinetic models, in addition to the World Health Organization growth curve for children, were used in the mrgsolve R package to simulate 10,800 pharmacokinetic profiles of children. Different ML algorithms were trained to predict AUC0-24 based on different combinations of two or three samples. Performances were evaluated in a simulated test set and in an external data set of real patients. The best estimation performances in the test set were obtained with the Xgboost algorithm using a 2 and 6 hours post dose LSS for oral valganciclovir (relative mean prediction error [rMPE] = 0.4% and relative root mean square error [rRMSE] = 5.7%) and 0 and 2 hours post dose LSS for intravenous ganciclovir (rMPE = 0.9% and rRMSE = 12.4%). In the external data set, the performance based on these two sample LSS was acceptable: rMPE = 0.2% and rRMSE = 16.5% for valganciclovir and rMPE = -9.7% and rRMSE = 17.2% for intravenous ganciclovir. The Xgboost algorithm developed resulted in a clinically relevant individual estimation using only two blood samples. This will improve the implementation of AUC-targeted ganciclovir therapeutic drug monitoring in children.

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来源期刊
CiteScore
10.00
自引率
8.20%
发文量
762
审稿时长
3 months
期刊介绍: Antimicrobial Agents and Chemotherapy (AAC) features interdisciplinary studies that build our understanding of the underlying mechanisms and therapeutic applications of antimicrobial and antiparasitic agents and chemotherapy.
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