小分子生物标志物发现:基于LC MS的临床研究项目的拟议工作流程

IF 3.1 4区 医学 Q2 MEDICAL LABORATORY TECHNOLOGY Journal of Mass Spectrometry and Advances in the Clinical Lab Pub Date : 2023-04-01 DOI:10.1016/j.jmsacl.2023.02.003
S. Rischke , L. Hahnefeld , B. Burla , F. Behrens , R. Gurke , T.J. Garrett
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引用次数: 5

摘要

专注于内源性小分子的质谱法已成为生物标志物发现的一个组成部分,以深入了解各种疾病的病理生理学,最终实现个性化医学的应用。虽然LC-MS方法允许研究人员从数百或数千个样本中收集大量数据,但作为临床研究的一部分,研究的成功实施还需要与临床医生进行知识转移、数据科学家的参与以及与各种利益相关者的互动。临床研究项目的初始规划阶段包括明确范围和设计,并聘请来自不同领域的相关专家。招募受试者和设计试验在很大程度上取决于研究的总体目标和流行病学考虑,而适当的分析前样本处理对分析数据的质量有直接影响。随后的LC-MS测量可以以有针对性、半针对性或非针对性的方式进行,从而产生不同大小和精度的数据集。数据处理进一步提高了数据的质量,是进行计算机分析的先决条件。如今,对此类复杂数据集的评估依赖于经典统计学和机器学习应用的结合,以及其他工具,如路径分析和基因集富集。最后,在将生物标志物用作预后或诊断决策工具之前,必须验证结果。在整个研究过程中,应采用质量控制措施来提高数据的可靠性并增加对结果的信心。这篇图表综述的目的是概述在进行基于LC-MS的临床研究项目以寻找小分子生物标志物时要采取的步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Small molecule biomarker discovery: Proposed workflow for LC-MS-based clinical research projects

Mass spectrometry focusing on small endogenous molecules has become an integral part of biomarker discovery in the pursuit of an in-depth understanding of the pathophysiology of various diseases, ultimately enabling the application of personalized medicine. While LC-MS methods allow researchers to gather vast amounts of data from hundreds or thousands of samples, the successful execution of a study as part of clinical research also requires knowledge transfer with clinicians, involvement of data scientists, and interactions with various stakeholders.

The initial planning phase of a clinical research project involves specifying the scope and design, and engaging relevant experts from different fields. Enrolling subjects and designing trials rely largely on the overall objective of the study and epidemiological considerations, while proper pre-analytical sample handling has immediate implications on the quality of analytical data. Subsequent LC-MS measurements may be conducted in a targeted, semi-targeted, or non-targeted manner, resulting in datasets of varying size and accuracy. Data processing further enhances the quality of data and is a prerequisite for in-silico analysis. Nowadays, the evaluation of such complex datasets relies on a mix of classical statistics and machine learning applications, in combination with other tools, such as pathway analysis and gene set enrichment. Finally, results must be validated before biomarkers can be used as prognostic or diagnostic decision-making tools. Throughout the study, quality control measures should be employed to enhance the reliability of data and increase confidence in the results.

The aim of this graphical review is to provide an overview of the steps to be taken when conducting an LC-MS-based clinical research project to search for small molecule biomarkers.

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来源期刊
Journal of Mass Spectrometry and Advances in the Clinical Lab
Journal of Mass Spectrometry and Advances in the Clinical Lab Health Professions-Medical Laboratory Technology
CiteScore
4.30
自引率
18.20%
发文量
41
审稿时长
81 days
期刊最新文献
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