化学空间
生成语法
转化式学习
生成设计
计算机科学
药物发现
生成模型
人工智能
过程(计算)
深度学习
数据科学
认知科学
工程类
生物信息学
生物
心理学
操作系统
运营管理
公制(单位)
教育学
作者
Rıza Özçelik,Helena Brinkmann,Emanuele Criscuolo,Francesca Grisoni
标识
DOI:10.1021/acs.jcim.5c00641
摘要
In recent years, generative deep learning has emerged as a transformative approach in drug design, promising to explore the vast chemical space and generate novel molecules with desired biological properties. This perspective examines the challenges and opportunities of applying generative models to drug discovery, focusing on the intricate tasks related to small molecule generation, evaluation, and prioritization. Central to this process is navigating conflicting information from diverse sources─balancing chemical diversity, synthesizability, and bioactivity. We discuss the current state of generative methods, their optimization, and the critical need for robust evaluation protocols. By mapping this evolving landscape, we outline key building blocks, inherent dilemmas, and future directions in the journey to fully harness generative deep learning in the "chemical odyssey" of drug design.
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