基因组信息系统的智能数据:sil方法

Ana León Palacio, O. P. López
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引用次数: 9

摘要

在过去的二十年中,下一代测序技术产生的数据彻底改变了我们对人类生物学的理解,并改进了对DNA变化(变异)如何与患某种疾病的风险相关的研究。大量的基因组数据是公开的,并且经常被研究界用来提取有意义和可靠的基因与疾病的关系。然而,管理这种指数增长的数据已经成为生物学家面临的挑战。在这种大数据问题的视角下,他们被迫深入研究分布在数千个异构存储库中的复杂数据湖,这些存储库以多种格式表示,质量水平不一;但当数据被用来解决具体问题时,“数据湖”中只有一小部分是真正重要的;这就是我们所说的“智能”数据视角。通过使用适用于基因组领域的概念模型和数据质量管理原则,我们提出了一种从大数据到智能数据视角的系统方法,称为SILE方法。这种方法的目的是用基因组数据填充一个信息系统,这些数据是可访问的,信息丰富的,可操作的,足以提取有价值的知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Data for Genomic Information Systems: the SILE Method
During the last two decades, data generated by Next Generation Sequencing Technologies have revolutionized our understanding of human biology and improved the study on how changes (variations) in the DNA are involved in the risk of suffering a certain disease. A huge amount of genomic data is publicly available and frequently used by the research community in order to extract meaningful and reliable gene-disease relationships. However, the management of this exponential growth of data has become a challenge for biologists. Under such a Big Data problem perspective, they are forced to delve into a lake of complex data spread in over thousand heterogeneous repositories, represented in multiple formats and with different levels of quality; but when data are used to solve a concrete problem only a small part of that “data lake” is really significant; this is what we call the “smart” data perspective. By using conceptual models and the principles of data quality management, adapted to the genomic domain, we propose a systematic approach called SILE method to move from a Big Data to a Smart Data perspective. The aim of this approach is to populate an Information System with genomic data which are accessible, informative and actionable enough to extract valuable knowledge.
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