Literature DB >> 34758626

Machine Learning Models for Human In Vivo Pharmacokinetic Parameters with In-House Validation.

Filip Miljković1, Anton Martinsson1, Olga Obrezanova2, Beth Williamson3, Martin Johnson4, Andy Sykes4, Andreas Bender2,5, Nigel Greene6.   

Abstract

Prior to clinical development, a comprehensive pharmacokinetic characterization of a novel drug is required to understand its exposure at the site of action and elimination. Accordingly, in vitro assays and animal pharmacokinetic studies are regularly employed to predict drug exposure in humans, which is often costly and time-consuming. For this reason, the prediction of human pharmacokinetics at the point of design would be of high value for drug discovery. Therefore, we have established a comprehensive data curation protocol that enables machine learning evaluation of 12 human in vivo pharmacokinetic parameters using only chemical structure information and available doses for 1001 unique compounds. These machine learning models were thoroughly investigated and validated using both an independent hold-out test set and AstraZeneca clinical data. In addition, the availability of preclinical predictions for a subset of internal clinical candidates allowed us to compare our in silico approach with state-of-the-art pharmacokinetic predictions. Based on this evaluation, three fit-for-purpose models for AUC PO (Rtest2 = 0.63; RMSEtest = 0.76), Cmax PO (Rtest2 = 0.68; RMSEtest = 0.62), and Vdss IV (Rtest2 = 0.47; RMSEtest = 0.50) were identified. Based on the findings, our machine learning models have considerable potential for practical applications in drug discovery, such as influencing decision-making in drug discovery projects and progression of drug candidates toward the clinic.

Entities:  

Keywords:  clinical data; compound design; human pharmacokinetics; machine learning; pharmacokinetic modeling; structure−property relationships

Mesh:

Year:  2021        PMID: 34758626     DOI: 10.1021/acs.molpharmaceut.1c00718

Source DB:  PubMed          Journal:  Mol Pharm        ISSN: 1543-8384            Impact factor:   4.939


  2 in total

1.  Multi-task convolutional neural networks for predicting in vitro clearance endpoints from molecular images.

Authors:  Andrés Martínez Mora; Vigneshwari Subramanian; Filip Miljković
Journal:  J Comput Aided Mol Des       Date:  2022-05-27       Impact factor: 4.179

2.  Predicting Total Drug Clearance and Volumes of Distribution Using the Machine Learning-Mediated Multimodal Method through the Imputation of Various Nonclinical Data.

Authors:  Hiroaki Iwata; Tatsuru Matsuo; Hideaki Mamada; Takahisa Motomura; Mayumi Matsushita; Takeshi Fujiwara; Kazuya Maeda; Koichi Handa
Journal:  J Chem Inf Model       Date:  2022-08-22       Impact factor: 6.162

  2 in total

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