Is NMR Combined with Multivariate Regression Applicable for the Molecular Weight Determination of Randomly Cross-Linked Polymers Such as Lignin?
René BurgerJessica RumpfXuan Tung DoYulia B MonakhovaBernd W K DiehlMatthias RehahnMargit SchulzePublished in: ACS omega (2021)
The molecular weight properties of lignins are one of the key elements that need to be analyzed for a successful industrial application of these promising biopolymers. In this study, the use of 1H NMR as well as diffusion-ordered spectroscopy (DOSY NMR), combined with multivariate regression methods, was investigated for the determination of the molecular weight (M w and M n) and the polydispersity of organosolv lignins (n = 53, Miscanthus x giganteus, Paulownia tomentosa, and Silphium perfoliatum). The suitability of the models was demonstrated by cross validation (CV) as well as by an independent validation set of samples from different biomass origins (beech wood and wheat straw). CV errors of ca. 7-9 and 14-16% were achieved for all parameters with the models from the 1H NMR spectra and the DOSY NMR data, respectively. The prediction errors for the validation samples were in a similar range for the partial least squares model from the 1H NMR data and for a multiple linear regression using the DOSY NMR data. The results indicate the usefulness of NMR measurements combined with multivariate regression methods as a potential alternative to more time-consuming methods such as gel permeation chromatography.
Keyphrases
- sewage sludge
- solid state
- high resolution
- heavy metals
- magnetic resonance
- anaerobic digestion
- electronic health record
- mass spectrometry
- big data
- emergency department
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- tandem mass spectrometry
- high performance liquid chromatography
- deep learning
- ms ms
- artificial intelligence
- solid phase extraction
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- hyaluronic acid
- simultaneous determination
- cell wall
- molecularly imprinted