脂质组学研究中预防和消除不必要变异的挑战和机遇

IF 14 1区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Progress in lipid research Pub Date : 2022-07-01 DOI:10.1016/j.plipres.2022.101177
Gavriel Olshansky , Corey Giles , Agus Salim , Peter J. Meikle
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引用次数: 7

摘要

大型组学研究对人口和临床研究特别感兴趣,因为它们允许阐明其他方法通常无法达到的生物学途径。通常,这些信息丰富的数据集是由多个协调的分析研究产生的,这些研究可能包括脂质组学、代谢组学、蛋白质组学或其他产生高维数据的策略。在脂质组学中,此类数据的生成提出了一系列独特的技术和后勤挑战;最大限度地提高数据集的功率(样本数量)和覆盖率(分析物数量),同时最大限度地减少不必要变化的来源。分析平台的技术进步,以及计算方法,导致了数据质量的提高-特别是在仪器变化方面。在小范围内,可以从头到尾控制系统偏差。然而,随着数据集的规模和复杂性的增长,不可避免地会出现来自多个来源的不必要的变化,其中一些可能是未知的,并且超出了研究人员的控制。队列规模和复杂性的增加导致了样品收集、处理、储存和制备方面的新挑战。如果不考虑和处理得当,这种不需要的变化可能会破坏数据的质量和任何后续分析的可靠性。在这里,我们回顾了不同的实验阶段,可能会引入不必要的变异,并回顾了处理这种变异的一般策略和方法,特别是解决与脂质组学研究相关的问题。
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Challenges and opportunities for prevention and removal of unwanted variation in lipidomic studies

Large ‘omics studies are of particular interest to population and clinical research as they allow elucidation of biological pathways that are often out of reach of other methodologies. Typically, these information rich datasets are produced from multiple coordinated profiling studies that may include lipidomics, metabolomics, proteomics or other strategies to generate high dimensional data. In lipidomics, the generation of such data presents a series of unique technological and logistical challenges; to maximize the power (number of samples) and coverage (number of analytes) of the dataset while minimizing the sources of unwanted variation. Technological advances in analytical platforms, as well as computational approaches, have led to improvement of data quality – especially with regard to instrumental variation. In the small scale, it is possible to control systematic bias from beginning to end. However, as the size and complexity of datasets grow, it is inevitable that unwanted variation arises from multiple sources, some potentially unknown and out of the investigators control. Increases in cohort size and complexity have led to new challenges in sample collection, handling, storage, and preparation. If not considered and dealt with appropriately, this unwanted variation may undermine the quality of the data and reliability of any subsequent analysis. Here we review the various experimental phases where unwanted variation may be introduced and review general strategies and approaches to handle this variation, specifically addressing issues relevant to lipidomics studies.

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来源期刊
Progress in lipid research
Progress in lipid research 生物-生化与分子生物学
CiteScore
24.50
自引率
2.20%
发文量
37
审稿时长
14.6 weeks
期刊介绍: The significance of lipids as a fundamental category of biological compounds has been widely acknowledged. The utilization of our understanding in the fields of biochemistry, chemistry, and physiology of lipids has continued to grow in biotechnology, the fats and oils industry, and medicine. Moreover, new aspects such as lipid biophysics, particularly related to membranes and lipoproteins, as well as basic research and applications of liposomes, have emerged. To keep up with these advancements, there is a need for a journal that can evaluate recent progress in specific areas and provide a historical perspective on current research. Progress in Lipid Research serves this purpose.
期刊最新文献
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