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Exploring the lipoprotein composition using Bayesian regression on serum lipidomic profiles

机译:使用贝叶斯回归对血清脂质组学谱研究脂蛋白组成

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Motivation: Serum lipids have been traditionally studied in the context of lipoprotein particles. Today's emerging lipidomics technologies afford sensitive detection of individual lipid molecular species, i.e. to a much greater detail than the scale of lipoproteins. However, such global serum lipidomic profiles do not inherently contain any information on where the detected lipid species are coming from. Since it is too laborious and time consuming to routinely perform serum fractionation and lipidomics analysis on each lipoprotein fraction separately, this presents a challenge for the interpretation of lipidomic profile data. An exciting and medically important new bioinformatics challenge today is therefore how to build on extensive knowledge of lipid metabolism at lipoprotein levels in order to develop better models and bioinformatics tools based on high-dimensional lipidomic data becoming available today. Results: We developed a hierarchical Bayesian regression model to study lipidomic profiles in serum and in different lipoprotein classes. As a background data for the model building, we utilized lipidomic data for each of the lipoprotein fractions from 5 subjects with metabolic syndrome and 12 healthy controls. We clustered the lipid profiles and applied a regression model within each cluster separately. We found that the amount of a lipid in serum can be adequately described by the amounts of lipids in the lipoprotein classes. In addition to improved ability to interpret lipidomic data, we expect that our approach will also facilitate dynamic modelling of lipid metabolism at the individual molecular species level.
机译:动机:传统上已经在脂蛋白颗粒的背景下研究了血清脂质。当今新兴的脂质组学技术提供了对单个脂质分子种类的灵敏检测,即比脂蛋白的规模要详细得多。但是,这样的总体血清脂质组学概况固有地不包含关于检测到的脂质种类来自何处的任何信息。由于要分别对每个脂蛋白组分分别进行血清分离和脂质组学分析非常费力且费时,因此这对脂质组谱数据的解释提出了挑战。因此,当今激动人心且医学上重要的新生物信息学挑战是如何基于脂蛋白水平的脂质代谢的广泛知识,以便基于当今可获得的高维脂质组学数据开发更好的模型和生物信息学工具。结果:我们开发了一个分级贝叶斯回归模型,以研究血清和不同脂蛋白类别中的脂质组学概况。作为建立模型的背景数据,我们利用了来自5名患有代谢综合征的受试者和12名健康对照者的每个脂蛋白组分的脂质组学数据。我们将脂质分布图聚类,并在每个聚类中分别应用回归模型。我们发现血清中脂质的量可以通过脂蛋白类别中脂质的量来充分描述。除了提高解释脂质组学数据的能力外,我们希望我们的方法还将有助于在单个分子种类水平上对脂质代谢进行动态建模。

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