Status and Prospects of Research on Deep Learning-based De Novo Generation of Drug Molecules

深度学习 人工智能 计算机科学 钥匙(锁) 机器学习 药物发现 药物开发 药品 生物信息学 生物 药理学 计算机安全
作者
Huanghao Shi,Zhichao Wang,Litao Zhou,Zhiwang Xu,Liangxu Xie,Ren Kong,Shan Chang
出处
期刊:Current Computer - Aided Drug Design [Bentham Science]
卷期号:20 被引量:1
标识
DOI:10.2174/0115734099287389240126072433
摘要

Abstract: Traditional molecular de novo generation methods, such as evolutionary algorithms, generate new molecules mainly by linking existing atomic building blocks. The challenging issues in these methods include difficulty in synthesis, failure to achieve desired properties, and structural optimization requirements. Advances in deep learning offer new ideas for rational and robust de novo drug design. Deep learning, a branch of machine learning, is more efficient than traditional methods for processing problems, such as speech, image, and translation. This study provides a comprehensive overview of the current state of research in de novo drug design based on deep learning and identifies key areas for further development. Deep learning-based de novo drug design is pivotal in four key dimensions. Molecular databases form the basis for model training, while effective molecular representations impact model performance. Common DL models (GANs, RNNs, VAEs, CNNs, DMs) generate drug molecules with desired properties. The evaluation metrics guide research directions by determining the quality and applicability of generated molecules. This abstract highlights the foundational aspects of DL-based de novo drug design, offering a concise overview of its multifaceted contributions. Consequently, deep learning in de novo molecule generation has attracted more attention from academics and industry. As a result, many deep learning-based de novo molecule generation types have been actively proposed.
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