摘要
减少制药行业先导化合物开发的时间和成本比以往任何时候都更加紧迫。高通量筛选的进步和深度学习 (DL) 的兴起共同出现,使得用于虚拟药物筛选的大规模多模态预测模型的开发成为可能。最近,深度生成模型已成为探索化学空间并提高加快药物发现过程的希望的有力工具。随着生成化学以化学为中心的方法取得这一进展,下一个挑战是建立多模态条件生成模型,在将生化特性映射到目标结构时利用不同的知识源。在这里,我们呼吁社区在设计深度生成模型时将药物发现与系统生物学更紧密地联系起来。作为对 DL 在化学信息学中作用的大量评论的补充,我们特别关注药物发现的预测模型和生成模型的接口。通过在 PubMed 和预印本服务器(arXiv、biorXiv、chemRxiv 和 medRxiv)上进行系统的出版物关键字搜索,我们量化了该领域的趋势,发现分子图和 VAE 已成为生成中最广泛采用的分子表示和架构模型,分别。我们讨论了 DL 在毒性、药物靶标亲和力和药物敏感性预测方面的进展,并特别关注包含多模态预测模型的条件分子生成模型。此外,我们概述了该领域的未来前景,并确定了诸如以闭环方式将深度学习系统集成到实验工作流程中或采用联合机器学习技术来克服数据共享障碍等挑战。其他挑战包括但不限于生成模型的可解释性、用于评估分子生成模型的更复杂的指标,以及随后的社区接受的多模式药物特性预测和特性驱动分子设计的基准。
关键词: 深度学习、药物发现、生成模型、评论、QSAR 建模、机器学习、药物设计。
Current Medicinal Chemistry
Title:Trends in Deep Learning for Property-driven Drug Design
Volume: 28 Issue: 38
关键词: 深度学习、药物发现、生成模型、评论、QSAR 建模、机器学习、药物设计。
摘要:
It is more pressing than ever to reduce the time and costs for the development of lead compounds in the pharmaceutical industry. The co-occurrence of advances in high-throughput screening and the rise of deep learning (DL) have enabled the development of large-scale multimodal predictive models for virtual drug screening. Recently, deep generative models have emerged as a powerful tool to explore the chemical space and raise hopes to expedite the drug discovery process. Following this progress in chemocentric approaches for generative chemistry, the next challenge is to build multimodal conditional generative models that leverage disparate knowledge sources when mapping biochemical properties to target structures.
Here, we call the community to bridge drug discovery more closely with systems biology when designing deep generative models. Complementing the plethora of reviews on the role of DL in chemoinformatics, we specifically focus on the interface of predictive and generative modelling for drug discovery. Through a systematic publication keyword search on PubMed and a selection of preprint servers (arXiv, biorXiv, chemRxiv, and medRxiv), we quantify trends in the field and find that molecular graphs and VAEs have become the most widely adopted molecular representations and architectures in generative models, respectively. We discuss progress on DL for toxicity, drug-target affinity, and drug sensitivity prediction and specifically focus on conditional molecular generative models that encompass multimodal prediction models. Moreover, we outline future prospects in the field and identify challenges such as the integration of deep learning systems into experimental workflows in a closed-loop manner or the adoption of federated machine learning techniques to overcome data sharing barriers. Other challenges include, but are not limited to interpretability in generative models, more sophisticated metrics for the evaluation of molecular generative models, and, following up on that, community-accepted benchmarks for both multimodal drug property prediction and property-driven molecular design.
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Cite this article as:
Trends in Deep Learning for Property-driven Drug Design, Current Medicinal Chemistry 2021; 28 (38) . https://dx.doi.org/10.2174/0929867328666210729115728
DOI https://dx.doi.org/10.2174/0929867328666210729115728 |
Print ISSN 0929-8673 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-533X |
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