Generative chemistry: drug discovery with deep learning generative
models
- URL: http://arxiv.org/abs/2008.09000v1
- Date: Thu, 20 Aug 2020 14:38:21 GMT
- Title: Generative chemistry: drug discovery with deep learning generative
models
- Authors: Yuemin Bian and Xiang-Qun Xie
- Abstract summary: This paper reviews the latest advances in generative chemistry which relies on generative modeling to expedite the drug discovery process.
The detailed discussions on utilizing cutting-edge generative architectures, including recurrent neural network, variational autoencoder, adversarial autoencoder, and generative adversarial network for compound generation are focused.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The de novo design of molecular structures using deep learning generative
models introduces an encouraging solution to drug discovery in the face of the
continuously increased cost of new drug development. From the generation of
original texts, images, and videos, to the scratching of novel molecular
structures, the incredible creativity of deep learning generative models
surprised us about the height machine intelligence can achieve. The purpose of
this paper is to review the latest advances in generative chemistry which
relies on generative modeling to expedite the drug discovery process. This
review starts with a brief history of artificial intelligence in drug discovery
to outline this emerging paradigm. Commonly used chemical databases, molecular
representations, and tools in cheminformatics and machine learning are covered
as the infrastructure for the generative chemistry. The detailed discussions on
utilizing cutting-edge generative architectures, including recurrent neural
network, variational autoencoder, adversarial autoencoder, and generative
adversarial network for compound generation are focused. Challenges and future
perspectives follow.
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