Prediction of chemical compounds properties using a deep learning model

被引:0
|
作者
Mykola Galushka
Chris Swain
Fiona Browne
Maurice D. Mulvenna
Raymond Bond
Darren Gray
机构
[1] AUROMIND Ltd.,School of Computing
[2] Cambridge MedChem Consulting,undefined
[3] Datactics Ltd.,undefined
[4] Ulster University,undefined
[5] Almac Sciences Ltd.,undefined
来源
关键词
Machine learning; Deep neural networks; chemical compounds Properties;
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学科分类号
摘要
The discovery of new medications in a cost-effective manner has become the top priority for many pharmaceutical companies. Despite decades of innovation, many of their processes arguably remain relatively inefficient. One such process is the prediction of biological activity. This paper describes a new deep learning model, capable of conducting a preliminary screening of chemical compounds in-silico. The model has been constructed using a variation autoencoder to generate chemical compound fingerprints, which have been used to create a regression model to predict their LogD property and a classification model to predict binding in selected assays from the ChEMBL dataset. The conducted experiments demonstrate accurate prediction of the properties of chemical compounds only using structural definitions and also provide several opportunities to improve upon this model in the future.
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页码:13345 / 13366
页数:21
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