Training data, trained models and other required files for 'A User-Tunable Machine Learning Framework for Step-Wise Synthesis Planning'.
收藏Figshare2025-12-16 更新2026-04-08 收录
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https://figshare.com/articles/dataset/Training_data_trained_models_and_other_required_files_for_A_User-Tunable_Machine_Learning_Framework_for_Step-Wise_Synthesis_Planning_/28673540/4
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资源简介:
We introduce MHNpath, a machine learning-driven retrosynthetic tool designed for computer-aided synthesis planning. Leveraging modern Hopfield networks and novel comparative metrics, MHNpath efficiently prioritizes reaction templates, improving the scalability and accuracy of retrosynthetic predictions. The tool incorporates a tunable scoring system that allows users to prioritize pathways based on cost, reaction temperature, and toxicity, thereby facilitating the design of greener and cost-effective reaction routes. We demonstrate its effectiveness through case studies involving complex molecules from ChemByDesign, showcasing its ability to predict novel synthetic and enzymatic pathways. Furthermore, we benchmark MHNpath against existing frameworks, replicating experimentally validated "gold-standard" pathways from PaRoutes. Our case studies reveal that the tool can generate shorter, cheaper, moderate-temperature routes employing green solvents, as exemplified by compounds such as dronabinol, arformoterol, and lupinine.<br>Paper: https://arxiv.org/abs/2504.02191<br>Code and instructions to use this data: https://github.com/MSRG/mhnpath
提供机构:
Prakash, Shivesh; Prasad, Viki Kumar; Jacobsen, Hans-Arno
创建时间:
2025-12-16



