DiffMC-Gen: A Dual Denoising Diffusion Model for Multi-Conditional Molecular Generation.

IF 14.3 1区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Yuwei Yang, Shukai Gu, Bo Liu, Xiaoqing Gong, Ruiqiang Lu, Jiayue Qiu, Xiaojun Yao, Huanxiang Liu
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引用次数: 0

Abstract

The precise and efficient design of potential drug molecules with diverse physicochemical properties has long been a critical challenge. In recent years, the emergence of various deep learning-based de novo molecular generation algorithms offered new directions to this issue, among which denoising diffusion models have demonstrated significant potential. However, previous methods often fail to simultaneously optimize multiple properties of candidate compounds, which may stem from directly employing nongeometric graph neural networks (GNNs), rendering them incapable of accurately capturing molecular topologic and geometric information. In this study, a dual denoising diffusion model is developed for multi-conditional molecular generation (DiffMC-Gen), which integrates both discrete and continuous features to enhance its ability to perceive 3D molecular structures. Additionally, it involves a multi-objective optimization strategy to simultaneously optimize multiple properties of the target molecule, including binding affinity, drug-likeness, synthesizability, and toxicity. From the perspectives of both 2D and 3D molecular generation, the molecules generated by DiffMC-Gen exhibit state-of-the-art (SOTA) performance in terms of novelty and uniqueness, meanwhile achieving comparable results to previous methods in drug-likeness and synthesizability. Furthermore, the generated molecules have well-predicted biological activity and druglike properties for three target proteins-LRRK2, HPK1, and GLP-1 receptor, while also maintaining high standards of validity, uniqueness, and novelty. These results underscore its potential for practical applications in drug design.

DiffMC-Gen:多条件分子生成的双重去噪扩散模型。
精确和有效地设计具有不同物理化学性质的潜在药物分子一直是一个关键的挑战。近年来,各种基于深度学习的从头分子生成算法的出现为这一问题提供了新的方向,其中去噪扩散模型显示出很大的潜力。然而,以往的方法往往无法同时优化候选化合物的多种性质,这可能源于直接使用非几何图形神经网络(gnn),导致它们无法准确捕获分子的拓扑和几何信息。在本研究中,针对多条件分子生成(DiffMC-Gen),开发了一种双重去噪扩散模型,该模型融合了离散和连续特征,以增强其对三维分子结构的感知能力。此外,它还涉及一种多目标优化策略,可以同时优化靶分子的多种特性,包括结合亲和力、药物相似性、可合成性和毒性。从二维和三维分子生成的角度来看,DiffMC-Gen生成的分子在新颖性和独特性方面表现出了最先进的SOTA性能,同时在药物相似性和可合成性方面取得了与先前方法相当的结果。此外,所生成的分子对lrrk2、HPK1和GLP-1受体三种靶蛋白具有良好的生物活性和药物样特性,同时保持了高标准的有效性、独特性和新颖性。这些结果强调了它在药物设计中的实际应用潜力。
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来源期刊
Advanced Science
Advanced Science CHEMISTRY, MULTIDISCIPLINARYNANOSCIENCE &-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
18.90
自引率
2.60%
发文量
1602
审稿时长
1.9 months
期刊介绍: Advanced Science is a prestigious open access journal that focuses on interdisciplinary research in materials science, physics, chemistry, medical and life sciences, and engineering. The journal aims to promote cutting-edge research by employing a rigorous and impartial review process. It is committed to presenting research articles with the highest quality production standards, ensuring maximum accessibility of top scientific findings. With its vibrant and innovative publication platform, Advanced Science seeks to revolutionize the dissemination and organization of scientific knowledge.
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