离子迁移光谱法
代谢组
代谢组学
化学
质谱法
概率逻辑
计算生物学
计算机科学
色谱法
人工智能
生物
作者
Corey D. Broeckling,Linxing Yao,Giorgis Isaac,Marisa M. Gioioso,Valentin Ianchis,Johannes P.C. Vissers
标识
DOI:10.1021/jasms.0c00375
摘要
Metabolomics is a powerful phenotyping platform with potential for high-throughput analyses. The primary technology for metabolite profiling is mass spectrometry. In recent years, the coupling of mass spectrometry with ion mobility spectrometry (IMS) has offered the promise of faster analysis time and greater resolving power. Our understanding of the potential impact of IMS on the field of metabolomics is limited by availability of comprehensive experimental data. In this analysis, we use a probabilistic approach to enumerate the strengths and limitations, the present and future, of this technology. This is accomplished through use of "model" metabolomes, predicted physicochemical properties, and probabilistic descriptions of resolving power. This analysis advances our understanding of the importance of orthogonality in resolving (separation) dimensions, describes the impact of the metabolome composition on resolution demands, and offers a system resolution landscape that may serve to guide practitioners in the coming years.
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