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Recent advances and prospects of computational methods for metabolite identification: a review with emphasis on machine learning approaches

机译:代谢物识别的近期进展和展望:重点对机器学习方法的综述

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Motivation: Metabolomics involves studies of a great number of metabolites, which are small molecules present in biological systems. They play a lot of important functions such as energy transport, signaling, building block of cells and inhibition/catalysis. Understanding biochemical characteristics of the metabolites is an essential and significant part of metabolomics to enlarge the knowledge of biological systems. It is also the key to the development of many applications and areas such as biotechnology, biomedicine or pharmaceuticals. However, the identification of the metabolites remains a challenging task in metabolomics with a huge number of potentially interesting but unknown metabolites. The standard method for identifying metabolites is based on the mass spectrometry (MS) preceded by a separation technique. Over many decades, many techniques with different approaches have been proposed for MS-based metabolite identification task, which can be divided into the following four groups: mass spectra database, in silico fragmentation, fragmentation tree and machine learning. In this review paper, we thoroughly survey currently available tools for metabolite identification with the focus on in silico fragmentation, and machine learning-based approaches.We also give an intensive discussion on advanced machine learning methods, which can lead to further improvement on this task.
机译:动机:代谢组学涉及对大量代谢物的研究,这些代谢物是生物系统中存在的小分子。它们发挥了许多重要的功能,例如能量传输,信号,结构块和抑制/催化。理解代谢物的生化特征是扩大生物系统知识的代谢组科的重要和重要部分。它也是发展许多应用和生物医学,生物医学或药物等领域的关键。然而,代谢物的鉴定仍然是代谢组科的挑战性任务,具有大量潜在的潜在有趣但未知的代谢物。用于识别代谢物的标准方法基于分离技术之前的质谱(MS)。多十年来,已经提出了许多具有不同方法的技术,用于基于MS的代谢物识别任务,可分为以下四组:质谱数据库,在硅碎片,碎片树和机器学习中。在本文中,我们彻底调查了目前用于代谢物识别的可用工具,专注于硅碎片,以及基于机器学习的方法。我们还对先进的机器学习方法进行了密集的讨论,这可能导致此任务进一步改进。

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