R

E. Vlachavas, Jonas Bohn, F. Ückert, Sylvia Nürnberg
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引用次数: 0

Abstract

Recent advances in sequencing and biotechnological methodologies have led to the generation of large volumes of molecular data of different omics layers, such as genomics, transcriptomics, proteomics and metabolomics. Integration of these data with clinical information provides new opportunities to discover how perturbations in biological processes lead to disease. Using datadriven approaches for the integration and interpretation of multi-omics data could stably identify links between structural and functional information and propose causal molecular networks with potential impact on cancer pathophysiology. This knowledge can then be used to improve disease diagnosis, prognosis, prevention, and therapy. This review will summarize and categorize the most current computational methodologies and tools for integration of distinct molecular layers in the context of translational cancer research and personalized therapy. Additionally, the bioinformatics tools Multi-Omics Factor Analysis (MOFA) and netDX will be tested using omics data from public cancer resources, to assess their overall robustness, provide reproducible workflows for gaining biological knowledge from multi-omics data, and to comprehensively understand the significantly perturbed biological entities in distinct cancer types. We show that the performed supervised and unsupervised analyses result in meaningful and novel findings.
R
测序和生物技术方法的最新进展导致了不同组学层的大量分子数据的产生,如基因组学、转录组学、蛋白质组学和代谢组学。这些数据与临床信息的整合为发现生物过程中的扰动如何导致疾病提供了新的机会。使用数据驱动的方法整合和解释多组学数据可以稳定地识别结构和功能信息之间的联系,并提出对癌症病理生理有潜在影响的因果分子网络。这些知识可以用来改善疾病的诊断、预后、预防和治疗。这篇综述将总结和分类最新的计算方法和工具,用于在转化性癌症研究和个性化治疗的背景下整合不同的分子层。此外,生物信息学工具多组学因子分析(MOFA)和netDX将使用来自公共癌症资源的组学数据进行测试,以评估其整体稳健性,为从多组学数据中获取生物学知识提供可重复的工作流程,并全面了解不同癌症类型中显著受干扰的生物实体。我们表明,执行监督和非监督分析结果有意义的和新颖的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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