Prediction of Actinide-Ligand Complex Stability Constants by Machine Learning.

J Phys Chem A

State Key Laboratory of Fine Chemicals, Liaoning Key Laboratory for Catalytic Conversion of Carbon Resources, School of Chemistry, Dalian University of Technology, Dalian 116024, China.

Published: May 2025


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Article Abstract

Sustainable application of nuclear energy requires efficient sequestration of actinides, which relies on extensive understanding of actinide-ligand interactions to guide rational design of ligands. Currently, the design of novel ligands adopts mainly the time-consuming and labor-intensive trial-and-error strategy and is impeded by the heavy-metal toxicity and radioactivity of actinides. The advancement of machine learning techniques brings new opportunities given a sensible choice of appropriate descriptors. In this study, by using the binding equilibrium constant (log ) to represent the binding affinity of ligand with metal ion, 14 typical algorithms were used to train machine learning models toward accurate predictions of log  between actinide ions and ligands, among which the Gradient Boosting model outperforms the others, and the most relevant 15 out of the 282 descriptors of ligands, metals, and solvents were identified, encompassing key physicochemical properties of ligands, solvents, and metals. The Gradient Boosting model achieved values of 0.98 and 0.93 on the training and test sets, respectively, showing its ability to establish qualitative correlations between the features and log  for accurate prediction of log  values. The impact of these properties on log  values was discussed, and a quantitative correlation was derived using the SISSO model. The model was then applied to eight recently reported ligands for Am, Cm, and Th outside of the training set, and the predicted values agreed with the experimental ones. This study enriches the understanding of the fundamental properties of actinide-ligand interactions and demonstrates the feasibility of machine-learning-assisted discovery and design of ligands for actinides.

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http://dx.doi.org/10.1021/acs.jpca.5c01743DOI Listing

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