DeepMech: A Machine Learning Framework for Chemical Reaction Mechanism Prediction
- URL: http://arxiv.org/abs/2509.15872v1
- Date: Fri, 19 Sep 2025 11:14:46 GMT
- Title: DeepMech: A Machine Learning Framework for Chemical Reaction Mechanism Prediction
- Authors: Manajit Das, Ajnabiul Hoque, Mayank Baranwal, Raghavan B. Sunoj,
- Abstract summary: We present DeepMech, an interpretable graph-based deep learning framework to generate chemical reaction mechanisms.<n>DeepMech achieves 98.98 +/-0.12% accuracy in predicting elementary steps and 95.94 +/-0.21% in complete CRM tasks.
- Score: 2.15242029196761
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Prediction of complete step-by-step chemical reaction mechanisms (CRMs) remains a major challenge. Whereas the traditional approaches in CRM tasks rely on expert-driven experiments or costly quantum chemical computations, contemporary deep learning (DL) alternatives ignore key intermediates and mechanistic steps and often suffer from hallucinations. We present DeepMech, an interpretable graph-based DL framework employing atom- and bond-level attention, guided by generalized templates of mechanistic operations (TMOps), to generate CRMs. Trained on our curated ReactMech dataset (~30K CRMs with 100K atom-mapped and mass-balanced elementary steps), DeepMech achieves 98.98+/-0.12% accuracy in predicting elementary steps and 95.94+/-0.21% in complete CRM tasks, besides maintaining high fidelity even in out-of-distribution scenarios as well as in predicting side and/or byproducts. Extension to multistep CRMs relevant to prebiotic chemistry, demonstrates the ability of DeepMech in effectively reconstructing pathways from simple primordial substrates to complex biomolecules such as serine and aldopentose. Attention analysis identifies reactive atoms/bonds in line with chemical intuition, rendering our model interpretable and suitable for reaction design.
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