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Neural-ODE for pharmacokinetics modeling and its advantage to alternative machine learning models in predicting new dosing regimens

James Lu, Kaiwen Deng, Xinyuan Zhang, Gengbo Liu, Yuanfang Guan

2021iScience117 citationsDOIOpen Access PDF

Abstract

Forecasting pharmacokinetics (PK) for individual patients is a fundamental problem in clinical pharmacology. One key challenge is that PK models constructed using data from one dosing regimen must predict PK data for different dosing regimen(s). We propose a deep learning approach based on neural ordinary differential equations (neural-ODE) and tested its generalizability against a variety of alternative models. Specifically, we used the PK data from two different treatment regimens of trastuzumab emtansine. The models performed similarly when the training and the test sets come from the same dosing regimen. However, for predicting a new treatment regimen, the neural-ODE model showed substantially better performance. To date, neural-ODE is the most accurate PK model in predicting untested treatment regimens. This study represents the first time neural-ODE has been applied to PK modeling and the results suggest it is a widely applicable algorithm with the potential to impact future studies.

Topics & Concepts

DosingPharmacokineticsOdeComputer scienceArtificial neural networkMachine learningArtificial intelligencePharmacologyComputational biologyMedicineApplied mathematicsBiologyMathematicsStatistical Methods in Clinical TrialsStatistical and Computational ModelingInnovative Microfluidic and Catalytic Techniques Innovation
Neural-ODE for pharmacokinetics modeling and its advantage to alternative machine learning models in predicting new dosing regimens | Litcius