4.6 Article

MRlogP: Transfer Learning Enables Accurate logP Prediction Using Small Experimental Training Datasets

期刊

PROCESSES
卷 9, 期 11, 页码 -

出版社

MDPI
DOI: 10.3390/pr9112029

关键词

lipophilicity prediction; logP prediction; transfer learning; physicochemical property prediction

资金

  1. Scottish Universities Life Sciences Alliance
  2. Wellcome Trust [201531/Z/16/Z & ISSF3-SimilarityLab]
  3. Medical Research Council (MRC) [J54359]

向作者/读者索取更多资源

By utilizing transfer learning techniques and a combination of predicted data and a small dataset, this study has developed a neural network predictor, MRlogP, that outperforms current state of the art logP prediction methods. This predictor can enhance efficiency in drug research and is freely available for use online.
Small molecule lipophilicity is often included in generalized rules for medicinal chemistry. These rules aim to reduce time, effort, costs, and attrition rates in drug discovery, allowing the rejection or prioritization of compounds without the need for synthesis and testing. The availability of high quality, abundant training data for machine learning methods can be a major limiting factor in building effective property predictors. We utilize transfer learning techniques to get around this problem, first learning on a large amount of low accuracy predicted logP values before finally tuning our model using a small, accurate dataset of 244 druglike compounds to create MRlogP, a neural network-based predictor of logP capable of outperforming state of the art freely available logP prediction methods for druglike small molecules. MRlogP achieves an average root mean squared error of 0.988 and 0.715 against druglike molecules from Reaxys and PHYSPROP. We have made the trained neural network predictor and all associated code for descriptor generation freely available. In addition, MRlogP may be used online via a web interface.

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