对通过 LC/HRMS 非靶向筛选检测到的化学品结构注释的硅学方法进行严格审查。

IF 3.8 2区 化学 Q1 BIOCHEMICAL RESEARCH METHODS
Henrik Hupatz, Ida Rahu, Wei-Chieh Wang, Pilleriin Peets, Emma H Palm, Anneli Kruve
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引用次数: 0

摘要

液相色谱-高分辨质谱(LC/HRMS)非靶向筛选越来越多地利用包括机器学习在内的硅学方法来获得候选结构,以便对 LC/HRMS 特征进行结构注释并进一步确定其优先级。候选结构通常是基于光谱数据库或结构数据库中的串联质谱信息检索出来的;然而,绝大多数检测到的 LC/HRMS 特征仍然没有标注,构成了我们所说的未知化学空间的一部分。最近,我们可以通过生成模型来探索这一化学空间。此外,候选结构的评估还得益于保留时间、碰撞截面值和电离类型等经验分析信息的补充。在这篇重要综述中,我们概述了当前检索和优先排序候选结构的方法。这些方法都有各自的优势和局限性,我们将以十个已知和十个未知 LC/HRMS 特征的结构注释为例加以说明。我们强调,这些局限性源于实验和计算两方面的考虑。最后,我们强调了硅学方法未来发展的三个关键考虑因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Critical review on in silico methods for structural annotation of chemicals detected with LC/HRMS non-targeted screening.

Critical review on in silico methods for structural annotation of chemicals detected with LC/HRMS non-targeted screening.

Non-targeted screening with liquid chromatography coupled to high-resolution mass spectrometry (LC/HRMS) is increasingly leveraging in silico methods, including machine learning, to obtain candidate structures for structural annotation of LC/HRMS features and their further prioritization. Candidate structures are commonly retrieved based on the tandem mass spectral information either from spectral or structural databases; however, the vast majority of the detected LC/HRMS features remain unannotated, constituting what we refer to as a part of the unknown chemical space. Recently, the exploration of this chemical space has become accessible through generative models. Furthermore, the evaluation of the candidate structures benefits from the complementary empirical analytical information such as retention time, collision cross section values, and ionization type. In this critical review, we provide an overview of the current approaches for retrieving and prioritizing candidate structures. These approaches come with their own set of advantages and limitations, as we showcase in the example of structural annotation of ten known and ten unknown LC/HRMS features. We emphasize that these limitations stem from both experimental and computational considerations. Finally, we highlight three key considerations for the future development of in silico methods.

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来源期刊
CiteScore
8.00
自引率
4.70%
发文量
638
审稿时长
2.1 months
期刊介绍: Analytical and Bioanalytical Chemistry’s mission is the rapid publication of excellent and high-impact research articles on fundamental and applied topics of analytical and bioanalytical measurement science. Its scope is broad, and ranges from novel measurement platforms and their characterization to multidisciplinary approaches that effectively address important scientific problems. The Editors encourage submissions presenting innovative analytical research in concept, instrumentation, methods, and/or applications, including: mass spectrometry, spectroscopy, and electroanalysis; advanced separations; analytical strategies in “-omics” and imaging, bioanalysis, and sampling; miniaturized devices, medical diagnostics, sensors; analytical characterization of nano- and biomaterials; chemometrics and advanced data analysis.
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