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首页> 外文期刊>Frontiers in Molecular Biosciences >Longitudinal omics modeling and integration in clinical metabonomics research: challenges in childhood metabolic health research
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Longitudinal omics modeling and integration in clinical metabonomics research: challenges in childhood metabolic health research

机译:纵向代谢组学建模和临床代谢组学研究中的整合:儿童代谢健康研究中的挑战

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Systems biology is an important approach for deciphering the complex processes in health maintenance and the etiology of metabolic diseases. Such integrative methodologies will help better understand the molecular mechanisms involved in growth and development throughout childhood, and consequently will result in new insights about metabolic and nutritional requirements of infants, children and adults. To achieve this, a better understanding of the physiological processes at anthropometric, cellular and molecular level for any given individual is needed. In this respect, novel omics technologies in combination with sophisticated data modelling techniques are key. Due to the highly complex network of influential factors determining individual trajectories, it becomes imperative to develop proper tools and solutions that will comprehensively model biological information related to growth and maturation of our body functions. The aim of this review and perspective is to evaluate, succinctly, promising data analysis approaches to enable data integration for clinical research, with an emphasis on the longitudinal component. Approaches based on empirical and mechanistic modelling of omics data are essential to leverage findings from high dimensional omics datasets and enable biological interpretation and clinical translation. On the one hand, empirical methods, which provide quantitative descriptions of patterns in the data, are mostly used for exploring and mining datasets. On the other hand, mechanistic models are based on an understanding of the behavior of a system’s components and condense information about the known functions, allowing robust and reliable analyses to be performed by bioinformatics pipelines and similar tools. Herein, we will illustrate current examples, challenges and perspectives in the applications of empirical and mechanistic modelling in the context of childhood metabolic health research.
机译:系统生物学是破解健康维护和代谢疾病病因的复杂过程的重要方法。这样的综合方法将有助于更好地了解整个童年时期生长和发育所涉及的分子机制,因此将对婴儿,儿童和成人的代谢和营养需求产生新的见解。为了实现这一点,需要对任何给定个体的人体测量,细胞和分子水平的生理过程有更好的了解。在这方面,新颖的组学技术与复杂的数据建模技术相结合是关键。由于决定各个轨迹的影响因素网络高度复杂,因此必须开发适当的工具和解决方案,以对与我们身体功能的增长和成熟有关的生物学信息进行全面建模。这篇综述和观点的目的是简洁地评估有前途的数据分析方法,以实现临床研究的数据集成,并着重于纵向成分。基于经验和机理学组学数据建模的方法对于利用高维组学数据集的发现并实现生物学解释和临床翻译至关重要。一方面,提供定量描述数据模式的经验方法主要用于探索和挖掘数据集。另一方面,机械模型基于对系统组件行为的理解,并压缩有关已知功能的信息,从而允许通过生物信息学管道和类似工具执行可靠而可靠的分析。在这里,我们将说明在儿童代谢健康研究的背景下,在经验模型和机械模型应用中的当前示例,挑战和观点。

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