Li Baiqing, Su Shimin, Zhu Chan, Lin Jie, Hu Xinyue, Su Lebin, Yu Zhunzhun, Liao Kuangbiao, Chen Hongming
Guangzhou Laboratory, Guangzhou, 510005, Guangdong, China.
J Cheminform. 2023 Aug 11;15(1):72. doi: 10.1186/s13321-023-00732-w.
In recent years, it has been seen that artificial intelligence (AI) starts to bring revolutionary changes to chemical synthesis. However, the lack of suitable ways of representing chemical reactions and the scarceness of reaction data has limited the wider application of AI to reaction prediction. Here, we introduce a novel reaction representation, GraphRXN, for reaction prediction. It utilizes a universal graph-based neural network framework to encode chemical reactions by directly taking two-dimension reaction structures as inputs. The GraphRXN model was evaluated by three publically available chemical reaction datasets and gave on-par or superior results compared with other baseline models. To further evaluate the effectiveness of GraphRXN, wet-lab experiments were carried out for the purpose of generating reaction data. GraphRXN model was then built on high-throughput experimentation data and a decent accuracy (R of 0.712) was obtained on our in-house data. This highlights that the GraphRXN model can be deployed in an integrated workflow which combines robotics and AI technologies for forward reaction prediction.
近年来,人们发现人工智能(AI)开始给化学合成带来革命性变化。然而,缺乏合适的化学反应表示方法以及反应数据的稀缺限制了AI在反应预测方面的更广泛应用。在此,我们引入一种用于反应预测的新型反应表示方法GraphRXN。它利用基于通用图的神经网络框架,通过直接将二维反应结构作为输入来对化学反应进行编码。GraphRXN模型通过三个公开可用的化学反应数据集进行评估,与其他基线模型相比给出了相当或更优的结果。为了进一步评估GraphRXN的有效性,开展了湿实验室实验以生成反应数据。然后基于高通量实验数据构建GraphRXN模型,并在我们的内部数据上获得了不错的准确率(R为0.712)。这突出表明GraphRXN模型可以部署在一个将机器人技术和AI技术相结合的集成工作流程中,用于正向反应预测。