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Differential Network Analysis with Multiply Imputed Lipidomic Data

机译:差分插补脂质数据的差分网络分析

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摘要

The importance of lipids for cell function and health has been widely recognized, e.g., a disorder in the lipid composition of cells has been related to atherosclerosis caused cardiovascular disease (CVD). Lipidomics analyses are characterized by large yet not a huge number of mutually correlated variables measured and their associations to outcomes are potentially of a complex nature. Differential network analysis provides a formal statistical method capable of inferential analysis to examine differences in network structures of the lipids under two biological conditions. It also guides us to identify potential relationships requiring further biological investigation. We provide a recipe to conduct permutation test on association scores resulted from partial least square regression with multiple imputed lipidomic data from the LUdwigshafen RIsk and Cardiovascular Health (LURIC) study, particularly paying attention to the left-censored missing values typical for a wide range of data sets in life sciences. Left-censored missing values are low-level concentrations that are known to exist somewhere between zero and a lower limit of quantification. To make full use of the LURIC data with the missing values, we utilize state of the art multiple imputation techniques and propose solutions to the challenges that incomplete data sets bring to differential network analysis. The customized network analysis helps us to understand the complexities of the underlying biological processes by identifying lipids and lipid classes that interact with each other, and by recognizing the most important differentially expressed lipids between two subgroups of coronary artery disease (CAD) patients, the patients that had a fatal CVD event and the ones who remained stable during two year follow-up.
机译:脂质对于细胞功能和健康的重要性已被广泛认可,例如,细胞脂质组成的紊乱与动脉粥样硬化引起的心血管疾病(CVD)有关。脂质组学分析的特点是所测量的相互关联的变量很大但数量不多,与结果的关联可能具有复杂性。差异网络分析提供了一种正式的统计方法,该方法能够进行推论分析,以检查两种生物学条件下脂质网络结构的差异。它还指导我们确定需要进一步生物学研究的潜在关系。我们提供了一种方法,可以对部分最小二乘回归与来自LUdwigshafen RIsk和心血管健康(LURIC)研究的多个估算脂质组学数据进行的关联评分进行排列检验,尤其要注意在广泛范围内典型的左删失值生命科学中的数据集。左删失值是已知存在于零和定量下限之间的低浓度浓度。为了充分利用缺失值的LURIC数据,我们利用最先进的多种插补技术并提出解决方案,以解决不完整的数据集给差分网络分析带来的挑战。定制的网络分析通过识别彼此相互作用的脂质和脂质类别,并通过识别冠状动脉疾病(CAD)患者的两个亚组之间最重要的差异表达脂质,来帮助我们了解基础生物学过程的复杂性发生致命的CVD事件,并且在两年的随访期间保持稳定。

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