Data processing optimization in untargeted metabolomics of urine using voigt lineshape model non-linear regression analysis

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Abstract

Nuclear magnetic resonance (NMR) spectroscopy is well-established to address questions in large-scale untargeted metabolomics. Although several approaches in data processing and analysis are available, significant issues remain. NMR spectroscopy of urine generates information-rich but complex spectra in which signals often overlap. Furthermore, slight changes in pH and salt concentrations cause peak shifting, which introduces, in combination with baseline irregularities, un-informative noise in statistical analysis. Within this work, a straight-forward data processing tool addresses these problems by applying a non-linear curve fitting model based on Voigt function line shape and integration of the underlying peak areas. This method allows a rapid untargeted analysis of urine metabolomics datasets without relying on time-consuming 2D-spectra based deconvolution or information from spectral libraries. The approach is validated with spiking experiments and tested on a human urine 1H dataset compared to conventionally used methods and aims to facilitate metabolomics data analysis.

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Haslauer, K. E., Schmitt-Kopplin, P., & Heinzmann, S. S. (2021). Data processing optimization in untargeted metabolomics of urine using voigt lineshape model non-linear regression analysis. Metabolites, 11(5). https://doi.org/10.3390/metabo11050285

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