Bridging the Worlds of Pharmacometrics and Machine Learning

被引:0
|
作者
Kamilė Stankevičiūtė
Jean-Baptiste Woillard
Richard W. Peck
Pierre Marquet
Mihaela van der Schaar
机构
[1] University of Cambridge,Department of Computer Science and Technology
[2] University of Limoges,INSERM U1248 P&T
[3] CHU Limoges,Department of Pharmacology and Toxicology
[4] University of Liverpool,Department of Pharmacology and Therapeutics
[5] Pharma Research and Development,Department of Applied Mathematics and Theoretical Physics
[6] Roche Innovation Center,undefined
[7] University of Cambridge,undefined
[8] The Alan Turing Institute,undefined
来源
Clinical Pharmacokinetics | 2023年 / 62卷
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摘要
Precision medicine requires individualized modeling of disease and drug dynamics, with machine learning-based computational techniques gaining increasing popularity. The complexity of either field, however, makes current pharmacological problems opaque to machine learning practitioners, and state-of-the-art machine learning methods inaccessible to pharmacometricians. To help bridge the two worlds, we provide an introduction to current problems and techniques in pharmacometrics that ranges from pharmacokinetic and pharmacodynamic modeling to pharmacometric simulations, model-informed precision dosing, and systems pharmacology, and review some of the machine learning approaches to address them. We hope this would facilitate collaboration between experts, with complementary strengths of principled pharmacometric modeling and flexibility of machine learning leading to synergistic effects in pharmacological applications.
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页码:1551 / 1565
页数:14
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