Literature DB >> 31928011

Guiding Lead Optimization for Solubility Improvement with Physics-Based Modeling.

Yuriy A Abramov1,2, Guangxu Sun3, Qiao Zeng3, Qun Zeng3, Mingjun Yang3.   

Abstract

Although there are a number of computational approaches available for the aqueous solubility prediction, a majority of those models rely on the existence of a training set of thermodynamic solubility measurements or/and fail to accurately account for the lattice packing contribution to the solubility. The main focus of this study is the validation of the application of a physics-based aqueous solubility approach, which does not rely on any prior knowledge and explicitly describes the solid-state contribution, in order to guide the improvement of poor solubility during the lead optimization. A superior performance of a quantum mechanical (QM)-based thermodynamic cycle approach relative to a molecular mechanical (MM)-based one in application to the optimization of two pharmaceutical series was demonstrated. The QM-based model also provided insights into the source of poor solubility of the lead compounds, allowing the selection of the optimal strategies for chemical modification and formulation. It is concluded that the application of that approach to guide solubility improvement at the late discovery and/or early development stages of the drug design proves to be highly attractive.

Keywords:  brick dust; crystal structure prediction; formulation design; grease ball; intrinsic aqueous solubility; lead optimization; quantum mechanics; sublimation enthalpy; thermodynamic solubility cycle

Mesh:

Substances:

Year:  2020        PMID: 31928011     DOI: 10.1021/acs.molpharmaceut.9b01138

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


  4 in total

1.  Boosting the predictive performance with aqueous solubility dataset curation.

Authors:  Jintao Meng; Peng Chen; Mohamed Wahib; Mingjun Yang; Liangzhen Zheng; Yanjie Wei; Shengzhong Feng; Wei Liu
Journal:  Sci Data       Date:  2022-03-03       Impact factor: 6.444

2.  Solubility prediction in the bRo5 chemical space: where are we right now?

Authors:  Giuseppe Ermondi; Vasanthanathan Poongavanam; Maura Vallaro; Jan Kihlberg; Giulia Caron
Journal:  ADMET DMPK       Date:  2020-07-08

3.  Three machine learning models for the 2019 Solubility Challenge.

Authors:  John B O Mitchell
Journal:  ADMET DMPK       Date:  2020-06-15

4.  Designing Soluble PROTACs: Strategies and Preliminary Guidelines.

Authors:  Diego García Jiménez; Matteo Rossi Sebastiano; Maura Vallaro; Valentina Mileo; Daniela Pizzirani; Elisa Moretti; Giuseppe Ermondi; Giulia Caron
Journal:  J Med Chem       Date:  2022-04-25       Impact factor: 8.039

  4 in total

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