Literature DB >> 34893922

Comparison of Predictions by BCS, rDCS and Machine Learning for the Effect of Food on Oral Drug Absorption Based on Features Calculated In silico.

Yusuke Hoshino1,2, Hideki Yoshioka3, Akihiro Hisaka4.   

Abstract

In this study, observed food effects of 473 drugs were categorized into positive, negative, or no effects and compared with the predictions made by machine learning (ML), the Biopharmaceutics Classification System (BCS) and refined Developability Classification System (rDCS). All methods used primarily in silico estimates for prediction, and for ML, four algorithms were evaluated using nested cross-validation to select important information from 371 features calculated based on the chemical structure. Approximately 18 features, including estimated solubility in biorelevant media, were selected as important, and the random forest classifier was the best among four algorithms with 36.6% error rate (ER) and 10.8% opposite prediction rate (OPR). The prediction by rDCS utilizing solubility in a biorelevant medium was somewhat inferior, but not by much; 41.0% ER and 11.4% OPR. Compared with these two methods, the prediction by BCS was inferior; 54.5% ER and 21.4% OPR. ER was improved modestly by using measured features instead of in silico estimates when BCS was applied to a subset of 151 drugs (46.4% from 55.0%). ML and rDCS predicted the food effects of the same subset using in silico estimates with ERs of 37.7% and 42.4%, respectively, suggesting that the predictions by ML and rDCS using in silico features are similar or more accurate than those by BCS using measured features. These results suggest that ML was useful in revealing essential features from complex information and, together with rDCS, is effective in predicting food effects during drug development, including early drug discovery.
© 2021. The Author(s), under exclusive licence to American Association of Pharmaceutical Scientists.

Entities:  

Keywords:  Biopharmaceutics Classification System; Food effect; In silico; Machine learning; Refined Developability Classification System

Mesh:

Year:  2021        PMID: 34893922     DOI: 10.1208/s12248-021-00664-z

Source DB:  PubMed          Journal:  AAPS J        ISSN: 1550-7416            Impact factor:   4.009


  1 in total

1.  Effect of food on the oral bioavailability of UFT and leucovorin in cancer patients.

Authors:  B Damle; F Ravandi; S Kaul; D Sonnichsen; I Ferreira; D Brooks; D Stewart; D Alberts; R Pazdur
Journal:  Clin Cancer Res       Date:  2001-03       Impact factor: 12.531

  1 in total

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