Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group
  • Applied Spectroscopy
  • Vol. 55,
  • Issue 9,
  • pp. 1214-1224
  • (2001)

Quantitative Investigation of Probabilistic Spectral Processing Methods Using Simulated NMR Data

Not Accessible

Your library or personal account may give you access

Abstract

We have investigated the performance of two approaches for Bayesian processing of NMR data: Memsys5 - a maximum entropy algorithm - and Massive Inference (MassInf). Spectra were simulated at two different noise levels to assess the algorithms' reconstruction of signals with close doublets, linewidth variation, high dynamic range, variable line shapes, and nonuniform baselines. The resulting reconstructions were analyzed in terms of efficacy of deconvolution, reconstruction of mock data, and accuracy of line positions and integrals. In the majority of the tests performed, the residuals between the simulated input and reconstruction were below the input noise. MassInf showed greater robustness than Memsys5 at rejecting noise peaks in regions where there was genuinely no signal, thus producing more visually impressive noise-suppressed spectra. Doublets with splittings down to 0.7 of the line width were resolved, even at relatively low signal to root mean square (rms) noise ratios (~10), and large relative intensities (e.g., 10:1). Where multiplets were correctly resolved, both algorithms were accurate in their inferred line positions with errors seldom above 0.2 linewidths. At high signal to rms noise ratios (e.g., 100:1), line integrals were comparable with those obtained by directly integrating the input spectrum. However, the relative performance of the Bayesian algorithms improved as the noise level was increased. Finally, it was found that any curvature of the baseline significantly decreased both of the algorithms' noise suppression abilities as well as increasing their processing time requirements.

PDF Article
More Like This
Quantitative bioluminescence tomography using spectral derivative data

Hamid Dehghani, James A. Guggenheim, Shelley L. Taylor, Xiangkun Xu, and Ken Kang-Hsin Wang
Biomed. Opt. Express 9(9) 4163-4174 (2018)

Probabilistic method for integrating multiple sources of range data

V. Michael Bove
J. Opt. Soc. Am. A 7(12) 2193-2198 (1990)

Baseline correction for Raman spectra using a spectral estimation-based asymmetrically reweighted penalized least squares method

Yixin Guo, Weiqi Jin, Weilin Wang, Yuqing He, and Su Qiu
Appl. Opt. 62(18) 4766-4776 (2023)

Cited By

You do not have subscription access to this journal. Cited by links are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.