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基于支架感知变分自编码器的多目标药物设计。

Multi-objective drug design with a scaffold-aware variational autoencoder.

作者信息

Dong Tiejun, You Linlin, Chen Calvin Yu-Chian

机构信息

Intelligent Medical Research Center, School of Intelligent Systems Engineering, Sun Yat-sen University Shenzhen 518107 China

School of AI for Science, Peking University Shenzhen Graduate School Shenzhen Guangdong 518055 China

出版信息

Chem Sci. 2025 Jun 25. doi: 10.1039/d4sc08736d.

Abstract

Designing molecules with multiple properties of interest is a fundamental challenge in drug development. To tackle this, we have developed ScafVAE, an innovative scaffold-aware variational autoencoder designed for the graph-based generation of multi-objective drug candidates. By integrating our proposed bond scaffold-based generation with perplexity-inspired fragmentation, we expand the accessible chemical space of the conventional fragment-based approach while preserving its high chemical validity. ScafVAE was pre-trained on a large dataset of molecules and further augmented through contrastive learning and molecular fingerprint reconstruction, resulting in high accuracy in predicting various computationally and experimentally measured molecular properties. Only a few of its parameters are task-specific, facilitating easy adaptation to new desired properties. ScafVAE was employed to generate dual-target drug candidates against drug resistance in cancer therapy, considering four distinct resistance mechanisms, with or without additional properties such as drug-likeness or toxicity. The generated molecules exhibited strong binding strength to target proteins using molecular docking or experimentally measured affinity while maintaining optimized extra properties. Further molecular dynamics simulations confirmed the stable binding interactions between the generated molecules and target proteins. These findings position ScafVAE as a promising alternative to conventional generation approaches.

摘要

设计具有多种目标特性的分子是药物研发中的一项基本挑战。为应对这一挑战,我们开发了ScafVAE,这是一种创新的、具有支架感知能力的变分自编码器,专为基于图的多目标候选药物生成而设计。通过将我们提出的基于键支架的生成方法与受困惑度启发的碎片化方法相结合,我们在保持传统基于片段方法的高化学有效性的同时,扩展了其可及的化学空间。ScafVAE在一个大型分子数据集上进行了预训练,并通过对比学习和分子指纹重建进一步增强,从而在预测各种计算和实验测量的分子特性方面具有高精度。其只有少数参数是特定于任务的,便于轻松适应新的期望特性。考虑到四种不同的耐药机制,无论有无诸如类药性或毒性等其他特性,ScafVAE被用于生成针对癌症治疗中耐药性的双靶点候选药物。使用分子对接或实验测量的亲和力时,生成的分子对靶蛋白表现出很强的结合强度,同时保持了优化的其他特性。进一步的分子动力学模拟证实了生成的分子与靶蛋白之间稳定的结合相互作用。这些发现使ScafVAE成为传统生成方法的一个有前景的替代方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5f1f/12284969/46b7c23a15c2/d4sc08736d-f1.jpg

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