Morehouse, Nicholas J., et al. “Annotation of Natural Product Compound Families Using Molecular Networking Topology and Structural Similarity Fingerprinting”. Nature Communications, vol. 14, no. 1, 2023, https://doi.org/10.1038/s41467-022-35734-z.

Genre

  • Journal Article
Contributors
Author: Morehouse, Nicholas J.
Author: Haeckl, F. P. Jake
Author: Linington, Roger G.
Author: van Santen, Jeffrey A.
Author: McMann, Emily J.
Author: Gray, Christopher A.
Author: Clark, Trevor N.
Date Issued
2023
Date Published Online
2023-01-19
Abstract

Spectral matching of MS2 fragmentation spectra has become a popular method for characterizing natural products libraries but identification remains challenging due to differences in MS2 fragmentation properties between instruments and the low coverage of current spectral reference libraries. To address this bottleneck we present Structural similarity Network Annotation Platform for Mass Spectrometry (SNAP-MS) which matches chemical similarity grouping in the Natural Products Atlas to grouping of mass spectrometry features from molecular networking. This approach assigns compound families to molecular networking subnetworks without the need for experimental or calculated reference spectra. We demonstrate SNAP-MS can accurately annotate subnetworks built from both reference spectra and an in-house microbial extract library, and correctly predict compound families from published molecular networks acquired on a range of MS instrumentation. Compound family annotations for the microbial extract library are validated by co-injection of standards or isolation and spectroscopic analysis. SNAP-MS is freely available at www.npatlas.org/discover/snapms.

Language

  • English
Rights
CC-BY
Host Title
Nature Communications
Host Abbreviated Title
Nat Commun
Volume
14
Issue
1
ISSN
2041-1723

Department

Rights

  • CC BY