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首页> 外文期刊>Journal of mass spectrometry: JMS >MetFusion: Integration of compound identification strategies
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MetFusion: Integration of compound identification strategies

机译:MetFusion:化合物识别策略的整合

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Mass spectrometry (MS) is an important analytical technique for the detection and identification of small compounds. The main bottleneck in the interpretation of metabolite profiling or screening experiments is the identification of unknown compounds from tandem mass spectra. Spectral libraries for tandem MS, such as MassBank or NIST, contain reference spectra for many compounds, but their limited chemical coverage reduces the chance for a correct and reliable identification of unknown spectra outside the database domain. On the other hand, compound databases like PubChem or ChemSpider have a much larger coverage of the chemical space, but they cannot be queried with spectral information directly. Recently, computational mass spectrometry methods and in silico fragmentation prediction allow users to search such databases of chemical structures. We present a new strategy called MetFusion to combine identification results from several resources, in particular, from the in silico fragmenter MetFrag with the spectral library MassBank to improve compound identification. We evaluate the performance on a set of 1062 spectra and achieve an improved ranking of the correct compound from rank 28 using MetFrag alone, to rank 7 with MetFusion, even if the correct compound and similar compounds are absent from the spectral library. On the basis of the evaluation, we extrapolate the performance of MetFusion to the KEGG compound database.
机译:质谱(MS)是检测和鉴定小化合物的重要分析技术。代谢物分析或筛选实验的主要瓶颈是从串联质谱图中鉴定未知化合物。用于串联MS的质谱库(例如MassBank或​​NIST)包含许多化合物的参考光谱,但是其有限的化学覆盖范围降低了在数据库域之外正确可靠地识别未知光谱的机会。另一方面,PubChem或ChemSpider等化合物数据库对化学空间的覆盖范围更大,但无法直接通过光谱信息查询它们。最近,计算质谱方法和计算机碎片预测允许用户搜索此类化学结构数据库。我们提出了一种称为MetFusion的新策略,它将来自多种资源(尤其是计算机片段化器MetFrag与光谱库MassBank的识别结果)结合起来以改善化合物识别。我们评估了一组1062个光谱的性能,即使单独使用MetFrag,也能将正确化合物的排名从28级提高到MetFusion,从而将排名提高到7级,即使光谱库中没有正确的化合物和类似化合物也是如此。在评估的基础上,我们将MetFusion的性能推算到KEGG复合数据库中。

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