药物发现及其他领域变压器模型综述。

Journal of pharmaceutical analysis Pub Date : 2025-06-01 Epub Date: 2024-08-30 DOI:10.1016/j.jpha.2024.101081
Jian Jiang, Long Chen, Lu Ke, Bozheng Dou, Chunhuan Zhang, Hongsong Feng, Yueying Zhu, Huahai Qiu, Bengong Zhang, Guo-Wei Wei
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引用次数: 0

摘要

Transformer模型已经成为药物发现领域的关键工具,其独特的架构特征和管理复杂数据环境的卓越性能使其与众不同。利用变压器架构的固有能力来理解序列数据中固有的复杂层次依赖关系,这些模型在各种任务中显示出卓越的功效,包括新药设计和药物靶点识别。预训练的基于变压器的模型的适应性使它们成为推动药物发现、化学和生物学中以数据为中心的进步不可或缺的资产,提供了一个强大的框架,加速了这些领域的创新和发现。除了技术实力之外,基于转换器的模型在药物发现、化学和生物学方面的成功扩展到了其跨学科的潜力,无缝地结合了生物学、物理学、化学和药理学的见解,弥合了不同学科之间的差距。这种综合方法不仅提高了研究工作的深度和广度,而且促进了不同领域之间的协同合作和思想交流。在我们的综述中,我们阐述了转换器在药物发现以及化学和生物学中的无数应用,从蛋白质设计和蛋白质工程到分子动力学(MD)、药物靶点鉴定、转换器支持的药物虚拟筛选(VS)、药物先导优化、药物成瘾、小数据集挑战、化学和生物图像分析、化学语言理解和单细胞数据。最后,我们通过在药物发现和其他科学的背景下审议变压器模型的有希望的趋势来结束调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review of transformer models in drug discovery and beyond.

Transformer models have emerged as pivotal tools within the realm of drug discovery, distinguished by their unique architectural features and exceptional performance in managing intricate data landscapes. Leveraging the innate capabilities of transformer architectures to comprehend intricate hierarchical dependencies inherent in sequential data, these models showcase remarkable efficacy across various tasks, including new drug design and drug target identification. The adaptability of pre-trained transformer-based models renders them indispensable assets for driving data-centric advancements in drug discovery, chemistry, and biology, furnishing a robust framework that expedites innovation and discovery within these domains. Beyond their technical prowess, the success of transformer-based models in drug discovery, chemistry, and biology extends to their interdisciplinary potential, seamlessly combining biological, physical, chemical, and pharmacological insights to bridge gaps across diverse disciplines. This integrative approach not only enhances the depth and breadth of research endeavors but also fosters synergistic collaborations and exchange of ideas among disparate fields. In our review, we elucidate the myriad applications of transformers in drug discovery, as well as chemistry and biology, spanning from protein design and protein engineering, to molecular dynamics (MD), drug target identification, transformer-enabled drug virtual screening (VS), drug lead optimization, drug addiction, small data set challenges, chemical and biological image analysis, chemical language understanding, and single cell data. Finally, we conclude the survey by deliberating on promising trends in transformer models within the context of drug discovery and other sciences.

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