Environmental Genomics and Systems Biology Division & The Joint Genome Institute Lawrence Berkeley National Laboratory, One Cyclotron Road, Berkeley, CA, 94720, United States.
Collaborative Mass Spectrometry Innovation Center, Skagss school of Pharmacy and Pharmaceutical Sciences, Departments of Pharmacology and Pediatrics, University of California, San Diego, 9500 Gilman Drive, La Jolla, CA, 92093, United States.
Nat Commun. 2022 May 6;13(1):2510. doi: 10.1038/s41467-022-30118-9.
Interrelating small molecules according to their aligned fragmentation spectra is central to tandem mass spectrometry-based untargeted metabolomics. Current alignment algorithms do not provide statistical significance and compounds that have multiple delocalized structural differences and therefore often fail to have their fragment ions aligned. Here we align fragmentation spectra with both statistical significance and allowance for multiple chemical differences using Significant Interrelation of MS/MS Ions via Laplacian Embedding (SIMILE). SIMILE yields spectral alignment inferred structural connections in molecular networks that are not found with cosine-based scoring algorithms. In addition, it is now possible to rank spectral alignments based on p-values in the exploration of structural relationships between compounds and enhance the chemical connectivity that can be obtained with molecular networking.
根据小分子的碎片谱排列关系是基于串联质谱的非靶向代谢组学的核心。目前的对齐算法没有提供统计学意义,并且化合物具有多个离域结构差异,因此它们的碎片离子通常无法对齐。在这里,我们使用通过拉普拉斯嵌入(SIMILE)进行 MS/MS 离子的显著关联,对碎片谱进行具有统计学意义和允许多个化学差异的对齐。SIMILE 产生了在分子网络中推断结构连接的光谱对齐,这是基于余弦评分算法无法发现的。此外,现在可以根据 p 值对光谱对齐进行排序,以探索化合物之间的结构关系,并增强通过分子网络获得的化学连接性。