Sahoo Gyana Ranjan, Roy Aritro Sinha, Srivastava Madhur
Department of Chemistry and Chemical Biology, Cornell University, Ithaca, New York 14853, United States.
National Biomedical Resources for Advanced ESR Technologies (ACERT), Ithaca, New York 14853, United States.
J Phys Chem A. 2023 Sep 21;127(37):7793-7801. doi: 10.1021/acs.jpca.3c02708. Epub 2023 Sep 12.
Two-dimensional electron spin resonance (2D ESR) spectroscopy is a unique experimental technique for probing protein structure and dynamics, including processes that occur at the microsecond time scale. While it provides significant resolution enhancement over the one-dimensional experimental setup, spectral broadening and noise make extraction of spectral information highly challenging. Traditionally, two-dimensional Fourier transform (2D FT) is applied for the analysis of 2D ESR signals, although its efficiency is limited to stationary signals. In addition, it often fails to resolve overlapping peaks in 2D ESR. In this work, we propose a time-frequency analysis of 2D time-domain signals, which identifies all frequency peaks by decoupling a signal into its distinct constituent components via projection on the time-frequency plane. The method utilizes 2D undecimated discrete wavelet transform (2D UDWT) as an intermediate step in the analysis, followed by signal reconstruction and 2D FT. We have applied the method to a simulated 2D double quantum coherence (DQC) signal for validation and a set of experimental 2D ESR signals, demonstrating its efficiency in resolving overlapping peaks in the frequency domain, while displaying frequency evolution with time in case of non-stationary data.
二维电子自旋共振(2D ESR)光谱是一种用于探测蛋白质结构和动力学的独特实验技术,包括在微秒时间尺度上发生的过程。虽然与一维实验装置相比,它能显著提高分辨率,但光谱展宽和噪声使得光谱信息的提取极具挑战性。传统上,二维傅里叶变换(2D FT)用于分析二维电子自旋共振信号,但其效率仅限于平稳信号。此外,它常常无法分辨二维电子自旋共振中重叠的峰。在这项工作中,我们提出了一种对二维时域信号的时频分析方法,该方法通过将信号投影到时间频率平面上,将其分解为不同的组成成分,从而识别出所有频率峰。该方法利用二维非下采样离散小波变换(2D UDWT)作为分析的中间步骤,随后进行信号重建和二维傅里叶变换。我们已将该方法应用于一个模拟的二维双量子相干(DQC)信号进行验证,并应用于一组实验二维电子自旋共振信号,证明了它在频域中分辨重叠峰的效率,同时在非平稳数据的情况下能够显示频率随时间的演变。