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Multi-omics data integration considerations and study design for biological systems and disease

机译:生物系统与疾病的多OMICS数据集成考虑与研究设计

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摘要

With the advancement of next-generation sequencing and mass spectrometry, there is a growing need for the ability to merge biological features in order to study a system as a whole. Features such as the transcriptome, methylome, proteome, histone post-translational modifications and the microbiome all influence the host response to various diseases and cancers. Each of these platforms have technological limitations due to sample preparation steps, amount of material needed for sequencing, and sequencing depth requirements. These features provide a snapshot of one level of regulation in a system. The obvious next step is to integrate this information and learn how genes, proteins, and/or epigenetic factors influence the phenotype of a disease in context of the system. In recent years, there has been a push for the development of data integration methods. Each method specifically integrates a subset of omics data using approaches such as conceptual integration, statistical integration, model-based integration, networks, and pathway data integration. In this review, we discuss considerations of the study design for each data feature, the limitations in gene and protein abundance and their rate of expression, the current data integration methods, and microbiome influences on gene and protein expression. The considerations discussed in this review should be regarded when developing new algorithms for integrating multi-omics data.
机译:随着下一代测序和质谱的进步,越来越需要合并生物学特征的能力,以便整体研究系统。转录组,甲基汞,蛋白质组,组蛋白后翻译修饰和微生物组的特征都影响到各种疾病和癌症的宿主反应。这些平台中的每一个由于样品制备步骤,测序所需的材料量和测序深度要求而具有技术限制。这些功能在系统中提供了一个调节级别的快照。明显的下一步是整合这些信息并学习基因,蛋白质和/或表观遗传因素如何影响系统背景下疾病的表型。近年来,已经推动了数据集成方法的发展。每个方法使用概念集成,统计集成,基于模型的集成,网络和路径数据集成等方法具体集成OMICS数据的子集。在本综述中,我们讨论了对每个数据特征的研究设计的考虑,基因和蛋白质丰富的局限性及其表达率,目前数据集成方法和对基因和蛋白质表达的微生物组影响。在开发用于集成多OMIC数据的新算法时,应考虑本次审查中讨论的考虑因素。

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  • 来源
    《Molecular BioSystems》 |2021年第2期|170-185|共16页
  • 作者单位

    Department of Biochemistry and Molecular Biology University of Arkansas for Medical Sciences 4301 West Markham Street (slot 516) Little Rock AR 72205-7199 USA;

    Department of Biochemistry and Molecular Biology University of Arkansas for Medical Sciences 4301 West Markham Street (slot 516) Little Rock AR 72205-7199 USA;

    Department of Biochemistry and Molecular Biology University of Arkansas for Medical Sciences 4301 West Markham Street (slot 516) Little Rock AR 72205-7199 USA Arkansas Children’s Research Institute 13 Children’s Way Little Rock AR 72202 USA;

    Department of Biochemistry and Molecular Biology University of Arkansas for Medical Sciences 4301 West Markham Street (slot 516) Little Rock AR 72205-7199 USA;

    Department of Biochemistry and Molecular Biology University of Arkansas for Medical Sciences 4301 West Markham Street (slot 516) Little Rock AR 72205-7199 USA;

    Department of Biomedical Informatics University of Arkansas for Medical Sciences Little Rock AR 72205 USA;

    Department of Biochemistry and Molecular Biology University of Arkansas for Medical Sciences 4301 West Markham Street (slot 516) Little Rock AR 72205-7199 USA Arkansas Children’s Research Institute 13 Children’s Way Little Rock AR 72202 USA;

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