LGAIJun 9, 2021

Artificial Intelligence in Drug Discovery: Applications and Techniques

arXiv:2106.05386v4159 citationsHas Code
Originality Synthesis-oriented
AI Analysis

It serves as a guide for researchers interested in AI and drug discovery, but it is incremental as it summarizes existing work rather than introducing novel findings.

This survey paper provides an overview of how artificial intelligence is applied in drug discovery, focusing on tasks like molecular property prediction and molecule generation, without presenting new experimental results or specific numerical improvements.

Artificial intelligence (AI) has been transforming the practice of drug discovery in the past decade. Various AI techniques have been used in a wide range of applications, such as virtual screening and drug design. In this survey, we first give an overview on drug discovery and discuss related applications, which can be reduced to two major tasks, i.e., molecular property prediction and molecule generation. We then discuss common data resources, molecule representations and benchmark platforms. Furthermore, to summarize the progress of AI in drug discovery, we present the relevant AI techniques including model architectures and learning paradigms in the papers surveyed. We expect that this survey will serve as a guide for researchers who are interested in working at the interface of artificial intelligence and drug discovery. We also provide a GitHub repository (https://github.com/dengjianyuan/Survey_AI_Drug_Discovery) with the collection of papers and codes, if applicable, as a learning resource, which is regularly updated.

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