Litcius/Paper detail

PM6-ML: The Synergy of Semiempirical Quantum Chemistry and Machine Learning Transformed into a Practical Computational Method

Martin Nováček, Jan Řezáč

2025Journal of Chemical Theory and Computation20 citationsDOIOpen Access PDF

Abstract

Machine learning (ML) methods offer a promising route to the construction of universal molecular potentials with high accuracy and low computational cost. It is becoming evident that integrating physical principles into these models, or utilizing them in a Δ-ML scheme, significantly enhances their robustness and transferability. This paper introduces PM6-ML, a Δ-ML method that synergizes the semiempirical quantum-mechanical (SQM) method PM6 with a state-of-the-art ML potential applied as a universal correction. The method demonstrates superior performance over standalone SQM and ML approaches and covers a broader chemical space than its predecessors. It is scalable to systems with thousands of atoms, which makes it applicable to large biomolecular systems. Extensive benchmarking confirms PM6-ML's accuracy and robustness. Its practical application is facilitated by a direct interface to MOPAC. The code and parameters are available at https://github.com/Honza-R/mopac-ml.

Topics & Concepts

TransferabilityRobustness (evolution)BenchmarkingComputer scienceScalabilityQuantum chemistryQuantum chemicalQuantumComputational scienceMachine learningArtificial intelligenceAlgorithmChemistryMoleculeQuantum mechanicsPhysicsDatabaseBusinessOrganic chemistryGeneLogitMarketingSupramolecular chemistryBiochemistryMachine Learning in Materials ScienceComputational Drug Discovery MethodsProtein Structure and Dynamics