LogD7.4 prediction enhanced by transferring knowledge from chromatographic retention time, microscopic pKa and logP.

J Cheminform

Drug Discovery and Design Center, State Key Laboratory of Drug Research, Shanghai Institute of Materia Medica, Chinese Academy of Sciences, 555 Zuchongzhi Road, Shanghai, 201203, China.

Published: September 2023

AI Article Synopsis

  • Lipophilicity plays a critical role in drug behavior, influencing factors like solubility, absorption, and toxicity; thus, predicting its value (logD7.4) is essential for effective drug development.
  • Developing a new prediction model called RTlogD helps tackle the data shortage problem by utilizing chromatographic retention time, pKa values, and logP within a multitask learning framework.
  • The RTlogD model shows improved accuracy and effectiveness over existing tools, enhancing the precision of logD predictions, which could be valuable for real-world drug discovery applications.

Article Abstract

Lipophilicity is a fundamental physical property that significantly affects various aspects of drug behavior, including solubility, permeability, metabolism, distribution, protein binding, and toxicity. Accurate prediction of lipophilicity, measured by the logD7.4 value (the distribution coefficient between n-octanol and buffer at physiological pH 7.4), is crucial for successful drug discovery and design. However, the limited availability of data for logD modeling poses a significant challenge to achieving satisfactory generalization capability. To address this challenge, we have developed a novel logD7.4 prediction model called RTlogD, which leverages knowledge from multiple sources. RTlogD combines pre-training on a chromatographic retention time (RT) dataset since the RT is influenced by lipophilicity. Additionally, microscopic pKa values are incorporated as atomic features, providing valuable insights into ionizable sites and ionization capacity. Furthermore, logP is integrated as an auxiliary task within a multitask learning framework. We conducted ablation studies and presented a detailed analysis, showcasing the effectiveness and interpretability of RT, pKa, and logP in the RTlogD model. Notably, our RTlogD model demonstrated superior performance compared to commonly used algorithms and prediction tools. These results underscore the potential of the RTlogD model to improve the accuracy and generalization of logD prediction in drug discovery and design. In summary, the RTlogD model addresses the challenge of limited data availability in logD modeling by leveraging knowledge from RT, microscopic pKa, and logP. Incorporating these factors enhances the predictive capabilities of our model, and it holds promise for real-world applications in drug discovery and design scenarios.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10478446PMC
http://dx.doi.org/10.1186/s13321-023-00754-4DOI Listing

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LogD7.4 prediction enhanced by transferring knowledge from chromatographic retention time, microscopic pKa and logP.

J Cheminform

September 2023

Drug Discovery and Design Center, State Key Laboratory of Drug Research, Shanghai Institute of Materia Medica, Chinese Academy of Sciences, 555 Zuchongzhi Road, Shanghai, 201203, China.

Article Synopsis
  • Lipophilicity plays a critical role in drug behavior, influencing factors like solubility, absorption, and toxicity; thus, predicting its value (logD7.4) is essential for effective drug development.
  • Developing a new prediction model called RTlogD helps tackle the data shortage problem by utilizing chromatographic retention time, pKa values, and logP within a multitask learning framework.
  • The RTlogD model shows improved accuracy and effectiveness over existing tools, enhancing the precision of logD predictions, which could be valuable for real-world drug discovery applications.
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