| Literature DB >> 34716833 |
Samar Mahmoud1, Benedict Irwin2, Dmitriy Chekmarev3, Shyam Vyas3, Jeff Kattas3, Thomas Whitehead4, Tamsin Mansley2, Jack Bikker3, Gareth Conduit4,5, Matthew Segall2.
Abstract
Predicting the sensory properties of compounds is challenging due to the subjective nature of the experimental measurements. This testing relies on a panel of human participants and is therefore also expensive and time-consuming. We describe the application of a state-of-the-art deep learning method, Alchemite™, to the imputation of sparse physicochemical and sensory data and compare the results with conventional quantitative structure-activity relationship methods and a multi-target graph convolutional neural network. The imputation model achieved a substantially higher accuracy of prediction, with improvements in R2 between 0.26 and 0.45 over the next best method for each sensory property. We also demonstrate that robust uncertainty estimates generated by the imputation model enable the most accurate predictions to be identified and that imputation also more accurately predicts activity cliffs, where small changes in compound structure result in large changes in sensory properties. In combination, these results demonstrate that the use of imputation, based on data from less expensive, early experiments, enables better selection of compounds for more costly studies, saving experimental time and resources.Entities:
Keywords: Deep learning; Imputation; In silico model; Quantitative structure–activity relationship; Sensory properties
Mesh:
Year: 2021 PMID: 34716833 DOI: 10.1007/s10822-021-00424-3
Source DB: PubMed Journal: J Comput Aided Mol Des ISSN: 0920-654X Impact factor: 3.686