完成部分化学方程式

F. Zipoli, Zeineb Ayadi, P. Schwaller, Teodoro Laino, A. Vaucher
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引用次数: 0

摘要

推断化学方程式中缺失的分子是化学和药物发现领域的一项重要任务。事实上,用必要的试剂完成化学方程式对于通过检测缺失化合物来改进现有数据集非常重要,这使得它们与深度学习模型兼容,而深度学习模型需要化学方程式中反应物、产物和试剂的完整信息才能提高性能。在这里,我们提出了一种使用多任务方法预测缺失分子的深度学习模型,该模型最终可被视为正向反应预测模型和逆合成模型的泛化,因为这两种模型都可以用不完整的化学方程式来表示。我们说明,基于转换器架构并作用于反应 SMILES 字符串的单一训练模型可以处理产物(正向)、前体(逆向)或任意位置的任何其他分子(如溶剂、催化剂或试剂)(完成)的预测。我们的目的是评估,与针对每个应用单独训练的模型相比,针对不同任务同时训练的统一模型能否有效利用化学领域内各种预测任务的不同知识。多任务模型在正向、复古和完成任务方面的性能分别为 72.4%、16.1% 和 30.5%。对于同一模型,我们计算出的往返准确率为 83.4%。由于采用了多任务方法,完成任务的性能有所提高。
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Completion of Partial Chemical Equations
Inferring missing molecules in chemical equations is an important task in chemistry and drug discovery. In fact, the completion of chemical equations with necessary reagents is important for improving existing datasets by detecting missing compounds, making them compatible with deep learning models that require complete information about reactants, products, and reagents in a chemical equation for increased performance. Here, we present a deep learning model to predict missing molecules using a multi-task approach, which can ultimately be viewed as a generalization of the forward reaction prediction and retrosynthesis models, since both can be expressed in terms of incomplete chemical equations. We illustrate that a single trained model, based on the transformer architecture and acting on reaction SMILES strings, can address the prediction of products (forward), precursors (retro) or any other molecule in arbitrary positions such as solvents, catalysts or reagents (completion). Our aim is to assess whether a unified model trained simultaneously on different tasks can effectively leverage diverse knowledge from various prediction tasks within the chemical domain, compared to models trained individually on each application. The multi-task models demonstrate top-1 performance of 72.4 %, 16.1 %, and 30.5 % for the forward, retro, and completion tasks, respectively. For the same model we computed round-trip accuracy of 83.4 %. The completion task exhibiting improvements due to the multi-task approach.
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