He Ying, Liu Fang, Min Weicui, Liu Guohong, Wu Yinbao, Wang Yan, Yan Xiliang, Yan Bing
Institute of Environmental Research at Greater Bay Area, Key Laboratory for Water Quality and Conservation of the Pearl River Delta, Ministry of Education, Guangzhou University, Guangzhou 510006, China.
Department of Plastic Surgery, The First Affiliated Hospital of Shandong First Medical University and Shandong Provincial Qianfoshan Hospital, Jinan, Shandong 250014, PR China.
ACS Appl Mater Interfaces. 2024 Dec 4;16(48):66367-66376. doi: 10.1021/acsami.4c15600. Epub 2024 Nov 20.
Screening nanomaterials (NMs) with desired properties from the extensive chemical space presents significant challenges. The potential toxicity of NMs further limits their applications in biological systems. Traditional methods struggle with these complexities, but generative models offer a possible solution to producing new molecules without prior knowledge. However, converting complex 3D nanostructures into computer-readable formats remains a critical prerequisite. To overcome these challenges, we proposed an innovative deep-learning framework for the design of biocompatible NMs. This framework comprises two predictive models and a generative model, utilizing a Quasi-SMILES representation to encode three-dimensional structural information on NMs. Our generative model successfully created 289 new NMs not previously seen in the training set. The predictive models identified a particularly promising NM characterized by high cellular uptake and low toxicity. This NM was successfully synthesized, and its predicted properties were experimentally validated. Our approach advances the application of artificial intelligence in NM design and provides a practical solution for balancing functionality and toxicity in NMs.
从广阔的化学空间中筛选具有所需特性的纳米材料(NMs)面临着重大挑战。纳米材料的潜在毒性进一步限制了它们在生物系统中的应用。传统方法难以应对这些复杂性,但生成模型为在没有先验知识的情况下生产新分子提供了一种可能的解决方案。然而,将复杂的三维纳米结构转换为计算机可读格式仍然是一个关键前提。为了克服这些挑战,我们提出了一种用于设计生物相容性纳米材料的创新深度学习框架。该框架由两个预测模型和一个生成模型组成,利用准SMILES表示法对纳米材料的三维结构信息进行编码。我们的生成模型成功创建了289种在训练集中未曾出现过的新型纳米材料。预测模型确定了一种特别有前景的纳米材料,其特点是细胞摄取率高且毒性低。这种纳米材料已成功合成,其预测特性也得到了实验验证。我们的方法推动了人工智能在纳米材料设计中的应用,并为平衡纳米材料的功能和毒性提供了切实可行的解决方案。