Low-dimensional neural ODEs and their application in pharmacokinetics.

IF 2.2 4区 医学 Q3 PHARMACOLOGY & PHARMACY Journal of Pharmacokinetics and Pharmacodynamics Pub Date : 2024-04-01 Epub Date: 2023-10-14 DOI:10.1007/s10928-023-09886-4
Dominic Stefan Bräm, Uri Nahum, Johannes Schropp, Marc Pfister, Gilbert Koch
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Abstract

Machine Learning (ML) is a fast-evolving field, integrated in many of today's scientific disciplines. With the recent development of neural ordinary differential equations (NODEs), ML provides a new tool to model dynamical systems in the field of pharmacology and pharmacometrics, such as pharmacokinetics (PK) or pharmacodynamics. The novel and conceptionally different approach of NODEs compared to classical PK modeling creates challenges but also provides opportunities for its application. In this manuscript, we introduce the functionality of NODEs and develop specific low-dimensional NODE structures based on PK principles. We discuss two challenges of NODEs, overfitting and extrapolation to unseen data, and provide practical solutions to these problems. We illustrate concept and application of our proposed low-dimensional NODE approach with several PK modeling examples, including multi-compartmental, target-mediated drug disposition, and delayed absorption behavior. In all investigated scenarios, the NODEs were able to describe the data well and simulate data for new subjects within the observed dosing range. Finally, we briefly demonstrate how NODEs can be combined with mechanistic models. This research work enhances understanding of how NODEs can be applied in PK analyses and illustrates the potential for NODEs in the field of pharmacology and pharmacometrics.

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低维神经ODEs及其在药代动力学中的应用。
机器学习(ML)是一个快速发展的领域,集成在当今的许多科学学科中。随着神经常微分方程(NODE)的最新发展,ML为药理学和药效学领域的动力学系统建模提供了一种新的工具,如药代动力学(PK)或药效学。与经典PK建模相比,NODE的新颖且概念上不同的方法带来了挑战,但也为其应用提供了机会。在本文中,我们介绍了NODE的功能,并基于PK原理开发了特定的低维NODE结构。我们讨论了NODE的两个挑战,过拟合和对未知数据的外推,并为这些问题提供了实用的解决方案。我们用几个PK建模示例说明了我们提出的低维NODE方法的概念和应用,包括多室、靶向介导的药物处置和延迟吸收行为。在所有研究的场景中,NODE能够很好地描述数据,并在观察到的给药范围内模拟新受试者的数据。最后,我们简要演示了NODE如何与机械模型相结合。这项研究工作加深了对NODE如何应用于PK分析的理解,并说明了NODE在药理学和药效学领域的潜力。
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来源期刊
CiteScore
4.90
自引率
4.00%
发文量
39
审稿时长
6-12 weeks
期刊介绍: Broadly speaking, the Journal of Pharmacokinetics and Pharmacodynamics covers the area of pharmacometrics. The journal is devoted to illustrating the importance of pharmacokinetics, pharmacodynamics, and pharmacometrics in drug development, clinical care, and the understanding of drug action. The journal publishes on a variety of topics related to pharmacometrics, including, but not limited to, clinical, experimental, and theoretical papers examining the kinetics of drug disposition and effects of drug action in humans, animals, in vitro, or in silico; modeling and simulation methodology, including optimal design; precision medicine; systems pharmacology; and mathematical pharmacology (including computational biology, bioengineering, and biophysics related to pharmacology, pharmacokinetics, orpharmacodynamics). Clinical papers that include population pharmacokinetic-pharmacodynamic relationships are welcome. The journal actively invites and promotes up-and-coming areas of pharmacometric research, such as real-world evidence, quality of life analyses, and artificial intelligence. The Journal of Pharmacokinetics and Pharmacodynamics is an official journal of the International Society of Pharmacometrics.
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