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Methods for biological data integration: perspectives and challenges

机译:生物数据整合方法:观点和挑战

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摘要

Rapid technological advances have led to the production of different types of biological data and enabled construction of complex networks with various types of interactions between diverse biological entities. Standard network data analysis methods were shown to be limited in dealing with such heterogeneous networked data and consequently, new methods for integrative data analyses have been proposed. The integrative methods can collectively mine multiple types of biological data and produce more holistic, systems-level biological insights. We survey recent methods for collective mining (integration) of various types of networked biological data. We compare different state-of-the-art methods for data integration and highlight their advantages and disadvantages in addressing important biological problems. We identify the important computational challenges of these methods and provide a general guideline for which methods are suited for specific biological problems, or specific data types. Moreover, we propose that recent non-negative matrix factorization-based approaches may become the integration methodology of choice, as they are well suited and accurate in dealing with heterogeneous data and have many opportunities for further development.
机译:快速的技术进步导致产生了不同类型的生物数据,并使得能够构建具有不同生物实体之间各种类型相互作用的复杂网络。结果表明,标准的网络数据分析方法在处理此类异构网络数据方面受到限制,因此,提出了用于集成数据分析的新方法。这些综合方法可以共同挖掘多种类型的生物学数据,并产生更全面,系统级的生物学见解。我们调查了各种类型的网络生物数据的集体挖掘(集成)的最新方法。我们比较了数据集成的不同最新技术,并强调了它们在解决重要生物学问题上的优缺点。我们确定了这些方法的重要计算挑战,并提供了适用于特定生物学问题或特定数据类型的方法的一般指导。此外,我们建议基于非负矩阵分解的最新方法可能会成为首选的集成方法,因为它们非常适合并准确地处理异构数据,并且有很多进一步发展的机会。

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