比较科学机器学习与群体药代动力学和经典机器学习方法预测药物浓度。

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Diego Valderrama, Olga Teplytska, Luca Marie Koltermann, Elena Trunz, Eduard Schmulenson, Achim Fritsch, Ulrich Jaehde, Holger Fröhlich
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引用次数: 0

摘要

在过去的十年中,人们开发了各种经典的机器学习(ML)方法,旨在根据测量的血浆浓度来个性化药物剂量。然而,这些模型的可解释性是具有挑战性的,因为它们没有纳入药代动力学(PK)药物处置的信息。在这项工作中,我们比较了众所周知的人群PK (PopPK)模型与经典机器学习模型和新提出的科学机器学习(MMPK-SciML)框架的药物血浆浓度预测。MMPK-SciML允许使用每个患者的多模态协变量数据估计PopPK参数及其个体间变异性(iv),并且不需要假设潜在的协变量关系。使用541个氟尿嘧啶(5FU)血浆浓度数据集(作为静脉给药的例子)和302个舒尼替尼及其活性代谢物浓度数据集(作为口服给药的例子)进行分析。尽管经典的ML模型不能充分描述数据,但MMPK-SciML使我们能够获得测试患者准确的药物血浆浓度预测。在5FU的情况下,拟合优度表明MMPK-SciML方法比PopPK模型更准确地预测药物血浆浓度。对于舒尼替尼,我们观察到与PopPK相比,药物浓度预测的准确性略低。总的来说,MMPK-SciML已经显示出有希望的结果,因此应该进一步研究作为经典PopPK建模的有价值的替代方法,前提是有足够的训练数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comparing Scientific Machine Learning With Population Pharmacokinetic and Classical Machine Learning Approaches for Prediction of Drug Concentrations

Comparing Scientific Machine Learning With Population Pharmacokinetic and Classical Machine Learning Approaches for Prediction of Drug Concentrations

A variety of classical machine learning (ML) approaches has been developed over the past decade aiming to individualize drug dosages based on measured plasma concentrations. However, the interpretability of these models is challenging as they do not incorporate information on pharmacokinetic (PK) drug disposition. In this work we compare drug plasma concentraton predictions of well-known population PK (PopPK) modeling with classical machine learning models and a newly proposed scientific machine learning (MMPK-SciML) framework. MMPK-SciML allows to estimate PopPK parameters and their inter-individual variability (IIV) using multimodal covariate data of each patient and does not require assumptions about the underlying covariate relationships. A dataset of 541 fluorouracil (5FU) plasma concentrations as example for an intravenously administered drug and a dataset of 302 sunitinib and its active metabolite concentrations each as example for an orally administered drug were used for analysis. Whereas classical ML models were not able to describe the data sufficiently, MMPK-SciML allowed us to obtain accurate drug plasma concentration predictions for test patients. In case of 5FU, goodness-of-fit shows that the MMPK-SciML approach predicts drug plasma concentrations more accurately than PopPK models. For sunitinib, we observed slightly less accurate drug concentration predictions compared to PopPK. Overall, MMPK-SciML has shown promising results and should therefore be further investigated as a valuable alternative to classical PopPK modeling, provided there is sufficient training data.

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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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