Deep Learning Methodology for Obtaining Ultraclean Pure Shift Proton Nuclear Magnetic Resonance Spectra.
Zhengxian YangXiaoxu ZhengXinjing GaoQing ZengChuang YangJie LuoChaoqun ZhanYanqin LinPublished in: The journal of physical chemistry letters (2023)
Nuclear magnetic resonance (NMR) is one of the most powerful analytical techniques. In order to obtain high-quality NMR spectra, a real-time Zangger-Sterk (ZS) pulse sequence is employed to collect low-quality pure shift NMR data with high efficiency. Then, a neural network named AC-ResNet and a loss function named SM-CDMANE are developed to train a network model. The model with excellent abilities of suppressing noise, reducing line widths, discerning peaks, and removing artifacts is utilized to process the acquired NMR data. The processed spectra with noise and artifact suppression and small line widths are ultraclean and high-resolution. Peaks overlapped heavily can be resolved. Weak peaks, even hidden in the noise, can be discerned from noise. Artifacts, even as high as spectral peaks, can be removed completely while not suppressing peaks. Eliminating perfectly noise and artifacts and smoothing baseline make spectra ultraclean. The proposed methodology would greatly promote various NMR applications.
Keyphrases
- magnetic resonance
- high resolution
- air pollution
- solid state
- high efficiency
- neural network
- density functional theory
- deep learning
- image quality
- contrast enhanced
- electronic health record
- mass spectrometry
- signaling pathway
- blood pressure
- magnetic resonance imaging
- artificial intelligence
- optical coherence tomography
- convolutional neural network
- data analysis