Propagating annotations of molecular networks using in silico fragmentation.
Ricardo R da SilvaMingxun WangLouis-Felix NothiasJustin Johan Jozias van der HooftAndrés Mauricio Caraballo-RodriguezEvan FoxMarcy J BalunasJonathan L KlassenNorberto Peporine LopesPieter C DorresteinPublished in: PLoS computational biology (2018)
The annotation of small molecules is one of the most challenging and important steps in untargeted mass spectrometry analysis, as most of our biological interpretations rely on structural annotations. Molecular networking has emerged as a structured way to organize and mine data from untargeted tandem mass spectrometry (MS/MS) experiments and has been widely applied to propagate annotations. However, propagation is done through manual inspection of MS/MS spectra connected in the spectral networks and is only possible when a reference library spectrum is available. One of the alternative approaches used to annotate an unknown fragmentation mass spectrum is through the use of in silico predictions. One of the challenges of in silico annotation is the uncertainty around the correct structure among the predicted candidate lists. Here we show how molecular networking can be used to improve the accuracy of in silico predictions through propagation of structural annotations, even when there is no match to a MS/MS spectrum in spectral libraries. This is accomplished through creating a network consensus of re-ranked structural candidates using the molecular network topology and structural similarity to improve in silico annotations. The Network Annotation Propagation (NAP) tool is accessible through the GNPS web-platform https://gnps.ucsd.edu/ProteoSAFe/static/gnps-theoretical.jsp.
Keyphrases
- ms ms
- liquid chromatography
- mass spectrometry
- tandem mass spectrometry
- molecular docking
- high performance liquid chromatography
- ultra high performance liquid chromatography
- gas chromatography
- high resolution mass spectrometry
- rna seq
- optical coherence tomography
- single molecule
- high throughput
- gas chromatography mass spectrometry
- machine learning
- capillary electrophoresis
- single cell
- magnetic resonance
- molecular dynamics
- density functional theory
- deep learning