Jahangiri Amir, Han Xiao, Lesovoy Dmitry, Agback Tatiana, Agback Peter, Achour Adnane, Orekhov Vladislav
Department of Chemistry and Molecular Biology, Swedish NMR Centre, University of Gothenburg, Box 465, Gothenburg 40530, Sweden.
Science for Life Laboratory, Department of Medicine, Karolinska Institute, and Division of Infectious Diseases, Karolinska University Hospital, Stockholm 17176, Sweden.
J Magn Reson. 2023 Jan;346:107342. doi: 10.1016/j.jmr.2022.107342. Epub 2022 Nov 24.
A new deep neural network based on the WaveNet architecture (WNN) is presented, which is designed to grasp specific patterns in the NMR spectra. When trained at a fixed non-uniform sampling (NUS) schedule, the WNN benefits from pattern recognition of the corresponding point spread function (PSF) pattern produced by each spectral peak resulting in the highest quality and robust reconstruction of the NUS spectra as demonstrated in simulations and exemplified in this work on 2D H-N correlation spectra of three representative globular proteins with different sizes: Ubiquitin (8.6 kDa), Azurin (14 kDa), and Malt1 (44 kDa). The pattern recognition by WNN is also demonstrated for successful virtual homo-decoupling in a 2D methyl H-C - HMQC spectrum of MALT1. We demonstrate using WNN that prior knowledge about the NUS schedule, which so far was not been fully exploited, can be used for designing new powerful NMR processing techniques that surpass the existing algorithmic methods.
提出了一种基于WaveNet架构的新型深度神经网络(WNN),其旨在捕捉核磁共振(NMR)谱中的特定模式。当按照固定的非均匀采样(NUS)方案进行训练时,WNN受益于对每个光谱峰产生的相应点扩散函数(PSF)模式的模式识别,从而实现了NUS谱的最高质量和稳健重建,如模拟所示,并在这项工作中以三种不同大小的代表性球状蛋白质的二维H-N相关谱为例进行了说明:泛素(8.6 kDa)、天青蛋白(14 kDa)和麦芽1(44 kDa)。WNN的模式识别在MALT1的二维甲基H-C - HMQC谱中成功进行虚拟同核去耦方面也得到了证明。我们使用WNN证明,迄今为止尚未得到充分利用的关于NUS方案的先验知识可用于设计超越现有算法方法的新型强大NMR处理技术。