Bassani Davide, Pavan Matteo, Moro Stefano
Molecular Modeling Section (MMS), Department of Pharmaceutical and Pharmacological Sciences, University of Padova, Padova, Italy.
Expert Opin Drug Discov. 2025 Jun;20(6):711-720. doi: 10.1080/17460441.2025.2499122. Epub 2025 May 2.
Drug discovery is a long and expensive process characterized by a high failure rate. To make this process more rational and efficient, scientists always look for new and better ways to design novel ligands for a target of interest. Among different approaches, de novo ones gained popularity in the last decade, thanks to their ability to efficiently explore the chemical space and their increasing reliability in generating high-quality compounds. Autogrow4 is open-source software for de novo drug design that generates ligands for a given target by exploiting a combination of a genetic algorithm and molecular docking calculations.
In the present paper, the authors dissect this program's usefulness and limitations in generating new compounds from a pharmacodynamic and pharmacokinetic perspective. Specifically, this article examines all reported applications of the Autogrow code in the literature (as retrieved from the Scopus database) from the release of its first version in 2009 to the present.
In the hands of an expert molecular modeler, Autogrow4 is a useful tool for de novo ligand design. Its modular and open-source codebase offers many protocol customization features. The main downsides are limited control over the pharmacokinetic features of generated ligands and the bias toward high molecular weight compounds.
药物发现是一个漫长且昂贵的过程,其特点是失败率高。为了使这个过程更加合理和高效,科学家们一直在寻找新的、更好的方法来设计针对感兴趣靶点的新型配体。在不同的方法中,从头设计方法在过去十年中受到欢迎,这得益于它们能够有效地探索化学空间以及在生成高质量化合物方面日益提高的可靠性。Autogrow4是一款用于从头药物设计的开源软件,它通过结合遗传算法和分子对接计算为给定靶点生成配体。
在本文中,作者从药效学和药代动力学的角度剖析了该程序在生成新化合物方面的有用性和局限性。具体而言,本文考察了从2009年Autogrow代码的第一个版本发布到目前为止,文献(从Scopus数据库检索)中所有报道的Autogrow代码的应用。
在专业分子建模人员手中,Autogrow4是从头配体设计的一个有用工具。其模块化和开源的代码库提供了许多协议定制功能。主要缺点是对生成配体的药代动力学特征控制有限,以及偏向于高分子量化合物。