Xiaobo QuYihui HuangHengfa LuTianyu QiuDi GuoTatiana AgbackVladislav OrekhovZhong Chen
Abstract Nuclear magnetic resonance (NMR) spectroscopy serves as an indispensable tool in chemistry and biology but often suffers from long experimental times. We present a proof‐of‐concept of the application of deep learning and neural networks for high‐quality, reliable, and very fast NMR spectra reconstruction from limited experimental data. We show that the neural network training can be achieved using solely synthetic NMR signals, which lifts the prohibiting demand for a large volume of realistic training data usually required for a deep learning approach.
Xiaobo QuYihui HuangHengfa LuTianyu QiuDi GuoTatiana AgbackVladislav OrekhovZhong Chen
Yihui HuangYuncheng GaoZhangren TuTatiana AgbackVladislav OrekhovSven G. HybertsGerhard WagnerYanqin LinZhong ChenDi GuoXiaobo Qu
Seegoolam, Krishna Gavindrajee
Dávid MaHortense LeScott A. SmallJia Guo
Xiaobo QuJiaxi YingJian‐Feng CaiZhong Chen