Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/97798
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Title: Using machine learning to predict partition coefficient (Log P) and distribution coefficient (Log D) with molecular descriptors and liquid chromatography retention time
Authors: Win, ZM 
Cheong, AMY 
Hopkins, WS
Issue Date: 10-Apr-2023
Source: Journal of chemical information and modeling, 10 Apr. 2023, v. 63, no. 7, p. 1906-1913
Abstract: During preclinical evaluations of drug candidates, several physicochemical (p-chem) properties are measured and employed as metrics to estimate drug efficacy in vivo. Two such p-chem properties are the octanol–water partition coefficient, Log P, and distribution coefficient, Log D, which are useful in estimating the distribution of drugs within the body. Log P and Log D are traditionally measured using the shake-flask method and high-performance liquid chromatography. However, it is challenging to measure these properties for species that are very hydrophobic (or hydrophilic) owing to the very low equilibrium concentrations partitioned into octanol (or aqueous) phases. Moreover, the shake-flask method is relatively time-consuming and can require multistep dilutions as the range of analyte concentrations can differ by several orders of magnitude. Here, we circumvent these limitations by using machine learning (ML) to correlate Log P and Log D with liquid chromatography (LC) retention time (RT). Predictive models based on four ML algorithms, which used molecular descriptors and LC RTs as features, were extensively tested and compared. The inclusion of RT as an additional descriptor improves model performance (MAE = 0.366 and R2 = 0.89), and Shapley additive explanations analysis indicates that RT has the highest impact on model accuracy.
Publisher: American Chemical Society
Journal: Journal of chemical information and modeling 
ISSN: 1549-9596
EISSN: 1549-960X
DOI: 10.1021/acs.jcim.2c01373
Rights: © 2023 American Chemical Society
This document is the Accepted Manuscript version of a Published Work that appeared in final form in Journal of chemical information and modeling, copyright © American Chemical Society after peer review and technical editing by the publisher. To access the final edited and published work see https://doi.org/10.1021/acs.jcim.2c01373.
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