Department of Biological Sciences, University of New Brunswick, Saint John, NB, Canada.
Department of Chemistry, Simon Fraser University, Burnaby, BC, Canada.
Nat Commun. 2023 Jan 19;14(1):308. doi: 10.1038/s41467-022-35734-z.
Spectral matching of MS fragmentation spectra has become a popular method for characterizing natural products libraries but identification remains challenging due to differences in MS 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 .
MS 碎片光谱的光谱匹配已成为表征天然产物文库的一种流行方法,但由于仪器之间 MS 碎片特性的差异以及当前光谱参考文库的覆盖范围有限,因此鉴定仍然具有挑战性。为了解决这一瓶颈问题,我们提出了用于质谱的结构相似性网络注释平台(SNAP-MS),它将天然产物图谱中的化学相似性分组与分子网络的质谱特征分组进行匹配。这种方法无需实验或计算参考光谱即可将化合物家族分配给分子网络子网。我们证明,SNAP-MS 可以准确注释来自参考光谱和内部微生物提取物库构建的子网,并可以从在一系列 MS 仪器上获取的已发表的分子网络中正确预测化合物家族。微生物提取物库的化合物家族注释通过标准品共注射或分离和光谱分析进行验证。SNAP-MS 可在 www.npatlas.org/discover/snapms 上免费获得。