匹配(统计)
计算机科学
片段(逻辑)
生物系统
核磁共振波谱
口译(哲学)
分子动力学
反向
人工智能
分子模型
反问题
分子识别
分子
化学
算法
有机分子
二维核磁共振波谱
计算化学
分子光谱学
核磁共振谱数据库
谱线
共振(粒子物理)
光谱学
数据挖掘
复杂系统
理论计算机科学
实验数据
模式识别(心理学)
作者
Jin, Yongqi,Junjie Wang,Fanjie Xu,Xiaohong Ji,Zhifeng Gao,Linfeng Zhang,Guolin Ke,Rong Zhu,E Weinan
标识
DOI:10.48550/arxiv.2509.00640
摘要
Nuclear Magnetic Resonance (NMR) spectroscopy is one of the most powerful and widely used tools for molecular structure elucidation in organic chemistry. However, the interpretation of NMR spectra to determine unknown molecular structures remains a labor-intensive and expertise-dependent process, particularly for complex or novel compounds. Although recent methods have been proposed for molecular structure elucidation, they often underperform in real-world applications due to inherent algorithmic limitations and limited high-quality data. Here, we present NMR-Solver, a practical and interpretable framework for the automated determination of small organic molecule structures from $^1$H and $^{13}$C NMR spectra. Our method introduces an automated framework for molecular structure elucidation, integrating large-scale spectral matching with physics-guided fragment-based optimization that exploits atomic-level structure-spectrum relationships in NMR. We evaluate NMR-Solver on simulated benchmarks, curated experimental data from the literature, and real-world experiments, demonstrating its strong generalization, robustness, and practical utility in challenging, real-life scenarios. NMR-Solver unifies computational NMR analysis, deep learning, and interpretable chemical reasoning into a coherent system. By incorporating the physical principles of NMR into molecular optimization, it enables scalable, automated, and chemically meaningful molecular identification, establishing a generalizable paradigm for solving inverse problems in molecular science.
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