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Data-dependent normalization strategies for untargeted metabolomics-a case study

机译:无预算代谢组织的数据相关标准化策略 - 以案例研究为例

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Despite the recent advances in the standardization of untargeted metabolomics workflows, there is still a lack of attention to specific data treatment strategies that require deep knowledge of the biological problem and need to be applied after a well-thought out process to understand the effect of the practice. One of those strategies is data normalization. Data-driven assumptions are critical especially addressing unwanted variation present in the biological model as it can be the case in heterogeneous tissues, cells with different sizes or biofluids with different concentrations. Chronic kidney disease (CKD) is a widespread disorder affecting kidney structure and function. Animal models are being developed to be able to get valuable insights into the etiopathogenesis of the condition and effect of the treatments. Moreover, diagnosis and disease staging still require defining appropriate biomarkers. Untargeted metabolomics has the potential to deal with those challenges. Renal fibrosis is one of the consequences of kidney injury which greatly affects the concentration of metabolites in the same quantity of sample. To overcome this challenge, several data normalization strategies have been applied, following a multilevel normalization method with the overall aim of focussing on the relevant biological information and reducing the influence of disturbing factors. A comprehensive evaluation of the performance of the normalization strategies, both on methods assessing the intragroup variation and on the impact on differential analysis, is provided. Finally, we present evidence of the importance of biological-model-driven guided normalization methods and discuss multiple criteria that need to be taken into consideration to obtain robust and reliable data. Special concern is transmitted on the misleading conclusions that might be the consequence of inappropriate data pre-treatment solutions applied for untargeted methods.
机译:尽管近期在未标准的代谢组合工作流程的标准化进展情况下,仍然缺乏对特定数据治疗策略的关注,需要深入了解生物问题,并且需要在一个明确的过程中以理解的效果来应用实践。其中一个策略是数据标准化。数据驱动的假设至关重要,特别是解决生物模型中存在的不需要的变化,因为在异质组织中,具有不同尺寸或生物流体具有不同浓度的细胞的情况。慢性肾病(CKD)是一种影响肾结构结构和功能的广泛疾病。正在开发动物模型能够让有价值的见解进入治疗病症的病症和效果的精神病症。此外,诊断和疾病分期仍然需要定义合适的生物标志物。未明确的代谢组学有可能处理这些挑战。肾纤维化是肾损伤的后果之一,这极大地影响了相同量的样品中代谢物的浓度。为了克服这一挑战,在多级归一化方法之后已经应用了几种数据标准化策略,其旨在侧重于相关的生物信息并降低干扰因素的影响。提供了对评估Intrage Count变化和对差分分析的影响的方法进行归一化策略性能的综合评价。最后,我们提出了生物模型驱动的指导标准化方法的重要性的证据,并讨论了需要考虑的多种标准,以获得强大和可靠的数据。特别关注的是在误导性结论中传播,这可能是不适当的数据预处理解决方案的后果施加针对未确定的方法。

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